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Research Topics & Ideas: Data Science

50 Topic Ideas To Kickstart Your Research Project

Research topics and ideas about data science and big data analytics

If you’re just starting out exploring data science-related topics for your dissertation, thesis or research project, you’ve come to the right place. In this post, we’ll help kickstart your research by providing a hearty list of data science and analytics-related research ideas , including examples from recent studies.

PS – This is just the start…

We know it’s exciting to run through a list of research topics, but please keep in mind that this list is just a starting point . These topic ideas provided here are intentionally broad and generic , so keep in mind that you will need to develop them further. Nevertheless, they should inspire some ideas for your project.

To develop a suitable research topic, you’ll need to identify a clear and convincing research gap , and a viable plan to fill that gap. If this sounds foreign to you, check out our free research topic webinar that explores how to find and refine a high-quality research topic, from scratch. Alternatively, consider our 1-on-1 coaching service .

Research topic idea mega list

Data Science-Related Research Topics

  • Developing machine learning models for real-time fraud detection in online transactions.
  • The use of big data analytics in predicting and managing urban traffic flow.
  • Investigating the effectiveness of data mining techniques in identifying early signs of mental health issues from social media usage.
  • The application of predictive analytics in personalizing cancer treatment plans.
  • Analyzing consumer behavior through big data to enhance retail marketing strategies.
  • The role of data science in optimizing renewable energy generation from wind farms.
  • Developing natural language processing algorithms for real-time news aggregation and summarization.
  • The application of big data in monitoring and predicting epidemic outbreaks.
  • Investigating the use of machine learning in automating credit scoring for microfinance.
  • The role of data analytics in improving patient care in telemedicine.
  • Developing AI-driven models for predictive maintenance in the manufacturing industry.
  • The use of big data analytics in enhancing cybersecurity threat intelligence.
  • Investigating the impact of sentiment analysis on brand reputation management.
  • The application of data science in optimizing logistics and supply chain operations.
  • Developing deep learning techniques for image recognition in medical diagnostics.
  • The role of big data in analyzing climate change impacts on agricultural productivity.
  • Investigating the use of data analytics in optimizing energy consumption in smart buildings.
  • The application of machine learning in detecting plagiarism in academic works.
  • Analyzing social media data for trends in political opinion and electoral predictions.
  • The role of big data in enhancing sports performance analytics.
  • Developing data-driven strategies for effective water resource management.
  • The use of big data in improving customer experience in the banking sector.
  • Investigating the application of data science in fraud detection in insurance claims.
  • The role of predictive analytics in financial market risk assessment.
  • Developing AI models for early detection of network vulnerabilities.

Research topic evaluator

Data Science Research Ideas (Continued)

  • The application of big data in public transportation systems for route optimization.
  • Investigating the impact of big data analytics on e-commerce recommendation systems.
  • The use of data mining techniques in understanding consumer preferences in the entertainment industry.
  • Developing predictive models for real estate pricing and market trends.
  • The role of big data in tracking and managing environmental pollution.
  • Investigating the use of data analytics in improving airline operational efficiency.
  • The application of machine learning in optimizing pharmaceutical drug discovery.
  • Analyzing online customer reviews to inform product development in the tech industry.
  • The role of data science in crime prediction and prevention strategies.
  • Developing models for analyzing financial time series data for investment strategies.
  • The use of big data in assessing the impact of educational policies on student performance.
  • Investigating the effectiveness of data visualization techniques in business reporting.
  • The application of data analytics in human resource management and talent acquisition.
  • Developing algorithms for anomaly detection in network traffic data.
  • The role of machine learning in enhancing personalized online learning experiences.
  • Investigating the use of big data in urban planning and smart city development.
  • The application of predictive analytics in weather forecasting and disaster management.
  • Analyzing consumer data to drive innovations in the automotive industry.
  • The role of data science in optimizing content delivery networks for streaming services.
  • Developing machine learning models for automated text classification in legal documents.
  • The use of big data in tracking global supply chain disruptions.
  • Investigating the application of data analytics in personalized nutrition and fitness.
  • The role of big data in enhancing the accuracy of geological surveying for natural resource exploration.
  • Developing predictive models for customer churn in the telecommunications industry.
  • The application of data science in optimizing advertisement placement and reach.

Recent Data Science-Related Studies

While the ideas we’ve presented above are a decent starting point for finding a research topic, they are fairly generic and non-specific. So, it helps to look at actual studies in the data science and analytics space to see how this all comes together in practice.

Below, we’ve included a selection of recent studies to help refine your thinking. These are actual studies,  so they can provide some useful insight as to what a research topic looks like in practice.

  • Data Science in Healthcare: COVID-19 and Beyond (Hulsen, 2022)
  • Auto-ML Web-application for Automated Machine Learning Algorithm Training and evaluation (Mukherjee & Rao, 2022)
  • Survey on Statistics and ML in Data Science and Effect in Businesses (Reddy et al., 2022)
  • Visualization in Data Science VDS @ KDD 2022 (Plant et al., 2022)
  • An Essay on How Data Science Can Strengthen Business (Santos, 2023)
  • A Deep study of Data science related problems, application and machine learning algorithms utilized in Data science (Ranjani et al., 2022)
  • You Teach WHAT in Your Data Science Course?!? (Posner & Kerby-Helm, 2022)
  • Statistical Analysis for the Traffic Police Activity: Nashville, Tennessee, USA (Tufail & Gul, 2022)
  • Data Management and Visual Information Processing in Financial Organization using Machine Learning (Balamurugan et al., 2022)
  • A Proposal of an Interactive Web Application Tool QuickViz: To Automate Exploratory Data Analysis (Pitroda, 2022)
  • Applications of Data Science in Respective Engineering Domains (Rasool & Chaudhary, 2022)
  • Jupyter Notebooks for Introducing Data Science to Novice Users (Fruchart et al., 2022)
  • Towards a Systematic Review of Data Science Programs: Themes, Courses, and Ethics (Nellore & Zimmer, 2022)
  • Application of data science and bioinformatics in healthcare technologies (Veeranki & Varshney, 2022)
  • TAPS Responsibility Matrix: A tool for responsible data science by design (Urovi et al., 2023)
  • Data Detectives: A Data Science Program for Middle Grade Learners (Thompson & Irgens, 2022)
  • MACHINE LEARNING FOR NON-MAJORS: A WHITE BOX APPROACH (Mike & Hazzan, 2022)
  • COMPONENTS OF DATA SCIENCE AND ITS APPLICATIONS (Paul et al., 2022)
  • Analysis on the Application of Data Science in Business Analytics (Wang, 2022)

As you can see, these research topics are a lot more focused than the generic topic ideas we presented earlier. So, for you to develop a high-quality research topic, you’ll need to get specific and laser-focused on a specific context with specific variables of interest.  In the video below, we explore some other important things you’ll need to consider when crafting your research topic.

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If you’re still unsure about how to find a quality research topic, check out our Research Topic Kickstarter service, which is the perfect starting point for developing a unique, well-justified research topic.

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37 Research Topics In Data Science To Stay On Top Of

Stewart Kaplan

  • February 22, 2024

As a data scientist, staying on top of the latest research in your field is essential.

The data science landscape changes rapidly, and new techniques and tools are constantly being developed.

To keep up with the competition, you need to be aware of the latest trends and topics in data science research.

In this article, we will provide an overview of 37 hot research topics in data science.

We will discuss each topic in detail, including its significance and potential applications.

These topics could be an idea for a thesis or simply topics you can research independently.

Stay tuned – this is one blog post you don’t want to miss!

37 Research Topics in Data Science

1.) predictive modeling.

Predictive modeling is a significant portion of data science and a topic you must be aware of.

Simply put, it is the process of using historical data to build models that can predict future outcomes.

Predictive modeling has many applications, from marketing and sales to financial forecasting and risk management.

As businesses increasingly rely on data to make decisions, predictive modeling is becoming more and more important.

While it can be complex, predictive modeling is a powerful tool that gives businesses a competitive advantage.

predictive modeling

2.) Big Data Analytics

These days, it seems like everyone is talking about big data.

And with good reason – organizations of all sizes are sitting on mountains of data, and they’re increasingly turning to data scientists to help them make sense of it all.

But what exactly is big data? And what does it mean for data science?

Simply put, big data is a term used to describe datasets that are too large and complex for traditional data processing techniques.

Big data typically refers to datasets of a few terabytes or more.

But size isn’t the only defining characteristic – big data is also characterized by its high Velocity (the speed at which data is generated), Variety (the different types of data), and Volume (the amount of the information).

Given the enormity of big data, it’s not surprising that organizations are struggling to make sense of it all.

That’s where data science comes in.

Data scientists use various methods to wrangle big data, including distributed computing and other decentralized technologies.

With the help of data science, organizations are beginning to unlock the hidden value in their big data.

By harnessing the power of big data analytics, they can improve their decision-making, better understand their customers, and develop new products and services.

3.) Auto Machine Learning

Auto machine learning is a research topic in data science concerned with developing algorithms that can automatically learn from data without intervention.

This area of research is vital because it allows data scientists to automate the process of writing code for every dataset.

This allows us to focus on other tasks, such as model selection and validation.

Auto machine learning algorithms can learn from data in a hands-off way for the data scientist – while still providing incredible insights.

This makes them a valuable tool for data scientists who either don’t have the skills to do their own analysis or are struggling.

Auto Machine Learning

4.) Text Mining

Text mining is a research topic in data science that deals with text data extraction.

This area of research is important because it allows us to get as much information as possible from the vast amount of text data available today.

Text mining techniques can extract information from text data, such as keywords, sentiments, and relationships.

This information can be used for various purposes, such as model building and predictive analytics.

5.) Natural Language Processing

Natural language processing is a data science research topic that analyzes human language data.

This area of research is important because it allows us to understand and make sense of the vast amount of text data available today.

Natural language processing techniques can build predictive and interactive models from any language data.

Natural Language processing is pretty broad, and recent advances like GPT-3 have pushed this topic to the forefront.

natural language processing

6.) Recommender Systems

Recommender systems are an exciting topic in data science because they allow us to make better products, services, and content recommendations.

Businesses can better understand their customers and their needs by using recommender systems.

This, in turn, allows them to develop better products and services that meet the needs of their customers.

Recommender systems are also used to recommend content to users.

This can be done on an individual level or at a group level.

Think about Netflix, for example, always knowing what you want to watch!

Recommender systems are a valuable tool for businesses and users alike.

7.) Deep Learning

Deep learning is a research topic in data science that deals with artificial neural networks.

These networks are composed of multiple layers, and each layer is formed from various nodes.

Deep learning networks can learn from data similarly to how humans learn, irrespective of the data distribution.

This makes them a valuable tool for data scientists looking to build models that can learn from data independently.

The deep learning network has become very popular in recent years because of its ability to achieve state-of-the-art results on various tasks.

There seems to be a new SOTA deep learning algorithm research paper on  https://arxiv.org/  every single day!

deep learning

8.) Reinforcement Learning

Reinforcement learning is a research topic in data science that deals with algorithms that can learn on multiple levels from interactions with their environment.

This area of research is essential because it allows us to develop algorithms that can learn non-greedy approaches to decision-making, allowing businesses and companies to win in the long term compared to the short.

9.) Data Visualization

Data visualization is an excellent research topic in data science because it allows us to see our data in a way that is easy to understand.

Data visualization techniques can be used to create charts, graphs, and other visual representations of data.

This allows us to see the patterns and trends hidden in our data.

Data visualization is also used to communicate results to others.

This allows us to share our findings with others in a way that is easy to understand.

There are many ways to contribute to and learn about data visualization.

Some ways include attending conferences, reading papers, and contributing to open-source projects.

data visualization

10.) Predictive Maintenance

Predictive maintenance is a hot topic in data science because it allows us to prevent failures before they happen.

This is done using data analytics to predict when a failure will occur.

This allows us to take corrective action before the failure actually happens.

While this sounds simple, avoiding false positives while keeping recall is challenging and an area wide open for advancement.

11.) Financial Analysis

Financial analysis is an older topic that has been around for a while but is still a great field where contributions can be felt.

Current researchers are focused on analyzing macroeconomic data to make better financial decisions.

This is done by analyzing the data to identify trends and patterns.

Financial analysts can use this information to make informed decisions about where to invest their money.

Financial analysis is also used to predict future economic trends.

This allows businesses and individuals to prepare for potential financial hardships and enable companies to be cash-heavy during good economic conditions.

Overall, financial analysis is a valuable tool for anyone looking to make better financial decisions.

Financial Analysis

12.) Image Recognition

Image recognition is one of the hottest topics in data science because it allows us to identify objects in images.

This is done using artificial intelligence algorithms that can learn from data and understand what objects you’re looking for.

This allows us to build models that can accurately recognize objects in images and video.

This is a valuable tool for businesses and individuals who want to be able to identify objects in images.

Think about security, identification, routing, traffic, etc.

Image Recognition has gained a ton of momentum recently – for a good reason.

13.) Fraud Detection

Fraud detection is a great topic in data science because it allows us to identify fraudulent activity before it happens.

This is done by analyzing data to look for patterns and trends that may be associated with the fraud.

Once our machine learning model recognizes some of these patterns in real time, it immediately detects fraud.

This allows us to take corrective action before the fraud actually happens.

Fraud detection is a valuable tool for anyone who wants to protect themselves from potential fraudulent activity.

fraud detection

14.) Web Scraping

Web scraping is a controversial topic in data science because it allows us to collect data from the web, which is usually data you do not own.

This is done by extracting data from websites using scraping tools that are usually custom-programmed.

This allows us to collect data that would otherwise be inaccessible.

For obvious reasons, web scraping is a unique tool – giving you data your competitors would have no chance of getting.

I think there is an excellent opportunity to create new and innovative ways to make scraping accessible for everyone, not just those who understand Selenium and Beautiful Soup.

15.) Social Media Analysis

Social media analysis is not new; many people have already created exciting and innovative algorithms to study this.

However, it is still a great data science research topic because it allows us to understand how people interact on social media.

This is done by analyzing data from social media platforms to look for insights, bots, and recent societal trends.

Once we understand these practices, we can use this information to improve our marketing efforts.

For example, if we know that a particular demographic prefers a specific type of content, we can create more content that appeals to them.

Social media analysis is also used to understand how people interact with brands on social media.

This allows businesses to understand better what their customers want and need.

Overall, social media analysis is valuable for anyone who wants to improve their marketing efforts or understand how customers interact with brands.

social media

16.) GPU Computing

GPU computing is a fun new research topic in data science because it allows us to process data much faster than traditional CPUs .

Due to how GPUs are made, they’re incredibly proficient at intense matrix operations, outperforming traditional CPUs by very high margins.

While the computation is fast, the coding is still tricky.

There is an excellent research opportunity to bring these innovations to non-traditional modules, allowing data science to take advantage of GPU computing outside of deep learning.

17.) Quantum Computing

Quantum computing is a new research topic in data science and physics because it allows us to process data much faster than traditional computers.

It also opens the door to new types of data.

There are just some problems that can’t be solved utilizing outside of the classical computer.

For example, if you wanted to understand how a single atom moved around, a classical computer couldn’t handle this problem.

You’ll need to utilize a quantum computer to handle quantum mechanics problems.

This may be the “hottest” research topic on the planet right now, with some of the top researchers in computer science and physics worldwide working on it.

You could be too.

quantum computing

18.) Genomics

Genomics may be the only research topic that can compete with quantum computing regarding the “number of top researchers working on it.”

Genomics is a fantastic intersection of data science because it allows us to understand how genes work.

This is done by sequencing the DNA of different organisms to look for insights into our and other species.

Once we understand these patterns, we can use this information to improve our understanding of diseases and create new and innovative treatments for them.

Genomics is also used to study the evolution of different species.

Genomics is the future and a field begging for new and exciting research professionals to take it to the next step.

19.) Location-based services

Location-based services are an old and time-tested research topic in data science.

Since GPS and 4g cell phone reception became a thing, we’ve been trying to stay informed about how humans interact with their environment.

This is done by analyzing data from GPS tracking devices, cell phone towers, and Wi-Fi routers to look for insights into how humans interact.

Once we understand these practices, we can use this information to improve our geotargeting efforts, improve maps, find faster routes, and improve cohesion throughout a community.

Location-based services are used to understand the user, something every business could always use a little bit more of.

While a seemingly “stale” field, location-based services have seen a revival period with self-driving cars.

GPS

20.) Smart City Applications

Smart city applications are all the rage in data science research right now.

By harnessing the power of data, cities can become more efficient and sustainable.

But what exactly are smart city applications?

In short, they are systems that use data to improve city infrastructure and services.

This can include anything from traffic management and energy use to waste management and public safety.

Data is collected from various sources, including sensors, cameras, and social media.

It is then analyzed to identify tendencies and habits.

This information can make predictions about future needs and optimize city resources.

As more and more cities strive to become “smart,” the demand for data scientists with expertise in smart city applications is only growing.

21.) Internet Of Things (IoT)

The Internet of Things, or IoT, is exciting and new data science and sustainability research topic.

IoT is a network of physical objects embedded with sensors and connected to the internet.

These objects can include everything from alarm clocks to refrigerators; they’re all connected to the internet.

That means that they can share data with computers.

And that’s where data science comes in.

Data scientists are using IoT data to learn everything from how people use energy to how traffic flows through a city.

They’re also using IoT data to predict when an appliance will break down or when a road will be congested.

Really, the possibilities are endless.

With such a wide-open field, it’s easy to see why IoT is being researched by some of the top professionals in the world.

internet of things

22.) Cybersecurity

Cybersecurity is a relatively new research topic in data science and in general, but it’s already garnering a lot of attention from businesses and organizations.

After all, with the increasing number of cyber attacks in recent years, it’s clear that we need to find better ways to protect our data.

While most of cybersecurity focuses on infrastructure, data scientists can leverage historical events to find potential exploits to protect their companies.

Sometimes, looking at a problem from a different angle helps, and that’s what data science brings to cybersecurity.

Also, data science can help to develop new security technologies and protocols.

As a result, cybersecurity is a crucial data science research area and one that will only become more important in the years to come.

23.) Blockchain

Blockchain is an incredible new research topic in data science for several reasons.

First, it is a distributed database technology that enables secure, transparent, and tamper-proof transactions.

Did someone say transmitting data?

This makes it an ideal platform for tracking data and transactions in various industries.

Second, blockchain is powered by cryptography, which not only makes it highly secure – but is a familiar foe for data scientists.

Finally, blockchain is still in its early stages of development, so there is much room for research and innovation.

As a result, blockchain is a great new research topic in data science that vows to revolutionize how we store, transmit and manage data.

blockchain

24.) Sustainability

Sustainability is a relatively new research topic in data science, but it is gaining traction quickly.

To keep up with this demand, The Wharton School of the University of Pennsylvania has  started to offer an MBA in Sustainability .

This demand isn’t shocking, and some of the reasons include the following:

Sustainability is an important issue that is relevant to everyone.

Datasets on sustainability are constantly growing and changing, making it an exciting challenge for data scientists.

There hasn’t been a “set way” to approach sustainability from a data perspective, making it an excellent opportunity for interdisciplinary research.

As data science grows, sustainability will likely become an increasingly important research topic.

25.) Educational Data

Education has always been a great topic for research, and with the advent of big data, educational data has become an even richer source of information.

By studying educational data, researchers can gain insights into how students learn, what motivates them, and what barriers these students may face.

Besides, data science can be used to develop educational interventions tailored to individual students’ needs.

Imagine being the researcher that helps that high schooler pass mathematics; what an incredible feeling.

With the increasing availability of educational data, data science has enormous potential to improve the quality of education.

online education

26.) Politics

As data science continues to evolve, so does the scope of its applications.

Originally used primarily for business intelligence and marketing, data science is now applied to various fields, including politics.

By analyzing large data sets, political scientists (data scientists with a cooler name) can gain valuable insights into voting patterns, campaign strategies, and more.

Further, data science can be used to forecast election results and understand the effects of political events on public opinion.

With the wealth of data available, there is no shortage of research opportunities in this field.

As data science evolves, so does our understanding of politics and its role in our world.

27.) Cloud Technologies

Cloud technologies are a great research topic.

It allows for the outsourcing and sharing of computer resources and applications all over the internet.

This lets organizations save money on hardware and maintenance costs while providing employees access to the latest and greatest software and applications.

I believe there is an argument that AWS could be the greatest and most technologically advanced business ever built (Yes, I know it’s only part of the company).

Besides, cloud technologies can help improve team members’ collaboration by allowing them to share files and work on projects together in real-time.

As more businesses adopt cloud technologies, data scientists must stay up-to-date on the latest trends in this area.

By researching cloud technologies, data scientists can help organizations to make the most of this new and exciting technology.

cloud technologies

28.) Robotics

Robotics has recently become a household name, and it’s for a good reason.

First, robotics deals with controlling and planning physical systems, an inherently complex problem.

Second, robotics requires various sensors and actuators to interact with the world, making it an ideal application for machine learning techniques.

Finally, robotics is an interdisciplinary field that draws on various disciplines, such as computer science, mechanical engineering, and electrical engineering.

As a result, robotics is a rich source of research problems for data scientists.

29.) HealthCare

Healthcare is an industry that is ripe for data-driven innovation.

Hospitals, clinics, and health insurance companies generate a tremendous amount of data daily.

This data can be used to improve the quality of care and outcomes for patients.

This is perfect timing, as the healthcare industry is undergoing a significant shift towards value-based care, which means there is a greater need than ever for data-driven decision-making.

As a result, healthcare is an exciting new research topic for data scientists.

There are many different ways in which data can be used to improve healthcare, and there is a ton of room for newcomers to make discoveries.

healthcare

30.) Remote Work

There’s no doubt that remote work is on the rise.

In today’s global economy, more and more businesses are allowing their employees to work from home or anywhere else they can get a stable internet connection.

But what does this mean for data science? Well, for one thing, it opens up a whole new field of research.

For example, how does remote work impact employee productivity?

What are the best ways to manage and collaborate on data science projects when team members are spread across the globe?

And what are the cybersecurity risks associated with working remotely?

These are just a few of the questions that data scientists will be able to answer with further research.

So if you’re looking for a new topic to sink your teeth into, remote work in data science is a great option.

31.) Data-Driven Journalism

Data-driven journalism is an exciting new field of research that combines the best of both worlds: the rigor of data science with the creativity of journalism.

By applying data analytics to large datasets, journalists can uncover stories that would otherwise be hidden.

And telling these stories compellingly can help people better understand the world around them.

Data-driven journalism is still in its infancy, but it has already had a major impact on how news is reported.

In the future, it will only become more important as data becomes increasingly fluid among journalists.

It is an exciting new topic and research field for data scientists to explore.

journalism

32.) Data Engineering

Data engineering is a staple in data science, focusing on efficiently managing data.

Data engineers are responsible for developing and maintaining the systems that collect, process, and store data.

In recent years, there has been an increasing demand for data engineers as the volume of data generated by businesses and organizations has grown exponentially.

Data engineers must be able to design and implement efficient data-processing pipelines and have the skills to optimize and troubleshoot existing systems.

If you are looking for a challenging research topic that would immediately impact you worldwide, then improving or innovating a new approach in data engineering would be a good start.

33.) Data Curation

Data curation has been a hot topic in the data science community for some time now.

Curating data involves organizing, managing, and preserving data so researchers can use it.

Data curation can help to ensure that data is accurate, reliable, and accessible.

It can also help to prevent research duplication and to facilitate the sharing of data between researchers.

Data curation is a vital part of data science. In recent years, there has been an increasing focus on data curation, as it has become clear that it is essential for ensuring data quality.

As a result, data curation is now a major research topic in data science.

There are numerous books and articles on the subject, and many universities offer courses on data curation.

Data curation is an integral part of data science and will only become more important in the future.

businessman

34.) Meta-Learning

Meta-learning is gaining a ton of steam in data science. It’s learning how to learn.

So, if you can learn how to learn, you can learn anything much faster.

Meta-learning is mainly used in deep learning, as applications outside of this are generally pretty hard.

In deep learning, many parameters need to be tuned for a good model, and there’s usually a lot of data.

You can save time and effort if you can automatically and quickly do this tuning.

In machine learning, meta-learning can improve models’ performance by sharing knowledge between different models.

For example, if you have a bunch of different models that all solve the same problem, then you can use meta-learning to share the knowledge between them to improve the cluster (groups) overall performance.

I don’t know how anyone looking for a research topic could stay away from this field; it’s what the  Terminator  warned us about!

35.) Data Warehousing

A data warehouse is a system used for data analysis and reporting.

It is a central data repository created by combining data from multiple sources.

Data warehouses are often used to store historical data, such as sales data, financial data, and customer data.

This data type can be used to create reports and perform statistical analysis.

Data warehouses also store data that the organization is not currently using.

This type of data can be used for future research projects.

Data warehousing is an incredible research topic in data science because it offers a variety of benefits.

Data warehouses help organizations to save time and money by reducing the need for manual data entry.

They also help to improve the accuracy of reports and provide a complete picture of the organization’s performance.

Data warehousing feels like one of the weakest parts of the Data Science Technology Stack; if you want a research topic that could have a monumental impact – data warehousing is an excellent place to look.

data warehousing

36.) Business Intelligence

Business intelligence aims to collect, process, and analyze data to help businesses make better decisions.

Business intelligence can improve marketing, sales, customer service, and operations.

It can also be used to identify new business opportunities and track competition.

BI is business and another tool in your company’s toolbox to continue dominating your area.

Data science is the perfect tool for business intelligence because it combines statistics, computer science, and machine learning.

Data scientists can use business intelligence to answer questions like, “What are our customers buying?” or “What are our competitors doing?” or “How can we increase sales?”

Business intelligence is a great way to improve your business’s bottom line and an excellent opportunity to dive deep into a well-respected research topic.

37.) Crowdsourcing

One of the newest areas of research in data science is crowdsourcing.

Crowdsourcing is a process of sourcing tasks or projects to a large group of people, typically via the internet.

This can be done for various purposes, such as gathering data, developing new algorithms, or even just for fun (think: online quizzes and surveys).

But what makes crowdsourcing so powerful is that it allows businesses and organizations to tap into a vast pool of talent and resources they wouldn’t otherwise have access to.

And with the rise of social media, it’s easier than ever to connect with potential crowdsource workers worldwide.

Imagine if you could effect that, finding innovative ways to improve how people work together.

That would have a huge effect.

crowd sourcing

Final Thoughts, Are These Research Topics In Data Science For You?

Thirty-seven different research topics in data science are a lot to take in, but we hope you found a research topic that interests you.

If not, don’t worry – there are plenty of other great topics to explore.

The important thing is to get started with your research and find ways to apply what you learn to real-world problems.

We wish you the best of luck as you begin your data science journey!

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A data analysis dissertation is a complex and challenging project requiring significant time, effort, and expertise. Fortunately, it is possible to successfully complete a data analysis dissertation with careful planning and execution.

As a student, you must know how important it is to have a strong and well-written dissertation, especially regarding data analysis. Proper data analysis is crucial to the success of your research and can often make or break your dissertation.

To get a better understanding, you may review the data analysis dissertation examples listed below;

  • Impact of Leadership Style on the Job Satisfaction of Nurses
  • Effect of Brand Love on Consumer Buying Behaviour in Dietary Supplement Sector
  • An Insight Into Alternative Dispute Resolution
  • An Investigation of Cyberbullying and its Impact on Adolescent Mental Health in UK

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Types of data analysis for dissertation.

The various types of data Analysis in a Dissertation are as follows;

1.   Qualitative Data Analysis

Qualitative data analysis is a type of data analysis that involves analyzing data that cannot be measured numerically. This data type includes interviews, focus groups, and open-ended surveys. Qualitative data analysis can be used to identify patterns and themes in the data.

2.   Quantitative Data Analysis

Quantitative data analysis is a type of data analysis that involves analyzing data that can be measured numerically. This data type includes test scores, income levels, and crime rates. Quantitative data analysis can be used to test hypotheses and to look for relationships between variables.

3.   Descriptive Data Analysis

Descriptive data analysis is a type of data analysis that involves describing the characteristics of a dataset. This type of data analysis summarizes the main features of a dataset.

4.   Inferential Data Analysis

Inferential data analysis is a type of data analysis that involves making predictions based on a dataset. This type of data analysis can be used to test hypotheses and make predictions about future events.

5.   Exploratory Data Analysis

Exploratory data analysis is a type of data analysis that involves exploring a data set to understand it better. This type of data analysis can identify patterns and relationships in the data.

Time Period to Plan and Complete a Data Analysis Dissertation?

When planning dissertation data analysis, it is important to consider the dissertation methodology structure and time series analysis as they will give you an understanding of how long each stage will take. For example, using a qualitative research method, your data analysis will involve coding and categorizing your data.

This can be time-consuming, so allowing enough time in your schedule is important. Once you have coded and categorized your data, you will need to write up your findings. Again, this can take some time, so factor this into your schedule.

Finally, you will need to proofread and edit your dissertation before submitting it. All told, a data analysis dissertation can take anywhere from several weeks to several months to complete, depending on the project’s complexity. Therefore, starting planning early and allowing enough time in your schedule to complete the task is important.

Essential Strategies for Data Analysis Dissertation

A.   Planning

The first step in any dissertation is planning. You must decide what you want to write about and how you want to structure your argument. This planning will involve deciding what data you want to analyze and what methods you will use for a data analysis dissertation.

B.   Prototyping

Once you have a plan for your dissertation, it’s time to start writing. However, creating a prototype is important before diving head-first into writing your dissertation. A prototype is a rough draft of your argument that allows you to get feedback from your advisor and committee members. This feedback will help you fine-tune your argument before you start writing the final version of your dissertation.

C.   Executing

After you have created a plan and prototype for your data analysis dissertation, it’s time to start writing the final version. This process will involve collecting and analyzing data and writing up your results. You will also need to create a conclusion section that ties everything together.

D.   Presenting

The final step in acing your data analysis dissertation is presenting it to your committee. This presentation should be well-organized and professionally presented. During the presentation, you’ll also need to be ready to respond to questions concerning your dissertation.

Data Analysis Tools

Numerous suggestive tools are employed to assess the data and deduce pertinent findings for the discussion section. The tools used to analyze data and get a scientific conclusion are as follows:

a.     Excel

Excel is a spreadsheet program part of the Microsoft Office productivity software suite. Excel is a powerful tool that can be used for various data analysis tasks, such as creating charts and graphs, performing mathematical calculations, and sorting and filtering data.

b.     Google Sheets

Google Sheets is a free online spreadsheet application that is part of the Google Drive suite of productivity software. Google Sheets is similar to Excel in terms of functionality, but it also has some unique features, such as the ability to collaborate with other users in real-time.

c.     SPSS

SPSS is a statistical analysis software program commonly used in the social sciences. SPSS can be used for various data analysis tasks, such as hypothesis testing, factor analysis, and regression analysis.

d.     STATA

STATA is a statistical analysis software program commonly used in the sciences and economics. STATA can be used for data management, statistical modelling, descriptive statistics analysis, and data visualization tasks.

SAS is a commercial statistical analysis software program used by businesses and organizations worldwide. SAS can be used for predictive modelling, market research, and fraud detection.

R is a free, open-source statistical programming language popular among statisticians and data scientists. R can be used for tasks such as data wrangling, machine learning, and creating complex visualizations.

g.     Python

A variety of applications may be used using the distinctive programming language Python, including web development, scientific computing, and artificial intelligence. Python also has a number of modules and libraries that can be used for data analysis tasks, such as numerical computing, statistical modelling, and data visualization.

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Tips to Compose a Successful Data Analysis Dissertation

a.   Choose a Topic You’re Passionate About

The first step to writing a successful data analysis dissertation is to choose a topic you’re passionate about. Not only will this make the research and writing process more enjoyable, but it will also ensure that you produce a high-quality paper.

Choose a topic that is particular enough to be covered in your paper’s scope but not so specific that it will be challenging to obtain enough evidence to substantiate your arguments.

b.   Do Your Research

data analysis in research is an important part of academic writing. Once you’ve selected a topic, it’s time to begin your research. Be sure to consult with your advisor or supervisor frequently during this stage to ensure that you are on the right track. In addition to secondary sources such as books, journal articles, and reports, you should also consider conducting primary research through surveys or interviews. This will give you first-hand insights into your topic that can be invaluable when writing your paper.

c.   Develop a Strong Thesis Statement

After you’ve done your research, it’s time to start developing your thesis statement. It is arguably the most crucial part of your entire paper, so take care to craft a clear and concise statement that encapsulates the main argument of your paper.

Remember that your thesis statement should be arguable—that is, it should be capable of being disputed by someone who disagrees with your point of view. If your thesis statement is not arguable, it will be difficult to write a convincing paper.

d.   Write a Detailed Outline

Once you have developed a strong thesis statement, the next step is to write a detailed outline of your paper. This will offer you a direction to write in and guarantee that your paper makes sense from beginning to end.

Your outline should include an introduction, in which you state your thesis statement; several body paragraphs, each devoted to a different aspect of your argument; and a conclusion, in which you restate your thesis and summarize the main points of your paper.

e.   Write Your First Draft

With your outline in hand, it’s finally time to start writing your first draft. At this stage, don’t worry about perfecting your grammar or making sure every sentence is exactly right—focus on getting all of your ideas down on paper (or onto the screen). Once you have completed your first draft, you can revise it for style and clarity.

And there you have it! Following these simple tips can increase your chances of success when writing your data analysis dissertation. Just remember to start early, give yourself plenty of time to research and revise, and consult with your supervisor frequently throughout the process.

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Studying the above examples gives you valuable insight into the structure and content that should be included in your own data analysis dissertation. You can also learn how to effectively analyze and present your data and make a lasting impact on your readers.

In addition to being a useful resource for completing your dissertation, these examples can also serve as a valuable reference for future academic writing projects. By following these examples and understanding their principles, you can improve your data analysis skills and increase your chances of success in your academic career.

You may also contact Premier Dissertations to develop your data analysis dissertation.

For further assistance, some other resources in the dissertation writing section are shared below;

How Do You Select the Right Data Analysis

How to Write Data Analysis For A Dissertation?

How to Develop a Conceptual Framework in Dissertation?

What is a Hypothesis in a Dissertation?

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11 Tips For Writing a Dissertation Data Analysis

Since the evolution of the fourth industrial revolution – the Digital World; lots of data have surrounded us. There are terabytes of data around us or in data centers that need to be processed and used. The data needs to be appropriately analyzed to process it, and Dissertation data analysis forms its basis. If data analysis is valid and free from errors, the research outcomes will be reliable and lead to a successful dissertation. 

Considering the complexity of many data analysis projects, it becomes challenging to get precise results if analysts are not familiar with data analysis tools and tests properly. The analysis is a time-taking process that starts with collecting valid and relevant data and ends with the demonstration of error-free results.

So, in today’s topic, we will cover the need to analyze data, dissertation data analysis, and mainly the tips for writing an outstanding data analysis dissertation. If you are a doctoral student and plan to perform dissertation data analysis on your data, make sure that you give this article a thorough read for the best tips!

What is Data Analysis in Dissertation?

Dissertation Data Analysis  is the process of understanding, gathering, compiling, and processing a large amount of data. Then identifying common patterns in responses and critically examining facts and figures to find the rationale behind those outcomes.

Even f you have the data collected and compiled in the form of facts and figures, it is not enough for proving your research outcomes. There is still a need to apply dissertation data analysis on your data; to use it in the dissertation. It provides scientific support to the thesis and conclusion of the research.

Data Analysis Tools

There are plenty of indicative tests used to analyze data and infer relevant results for the discussion part. Following are some tests  used to perform analysis of data leading to a scientific conclusion:

11 Most Useful Tips for Dissertation Data Analysis

Doctoral students need to perform dissertation data analysis and then dissertation to receive their degree. Many Ph.D. students find it hard to do dissertation data analysis because they are not trained in it.

1. Dissertation Data Analysis Services

The first tip applies to those students who can afford to look for help with their dissertation data analysis work. It’s a viable option, and it can help with time management and with building the other elements of the dissertation with much detail.

Dissertation Analysis services are professional services that help doctoral students with all the basics of their dissertation work, from planning, research and clarification, methodology, dissertation data analysis and review, literature review, and final powerpoint presentation.

One great reference for dissertation data analysis professional services is Statistics Solutions , they’ve been around for over 22 years helping students succeed in their dissertation work. You can find the link to their website here .

For a proper dissertation data analysis, the student should have a clear understanding and statistical knowledge. Through this knowledge and experience, a student can perform dissertation analysis on their own. 

Following are some helpful tips for writing a splendid dissertation data analysis:

2. Relevance of Collected Data

If the data is irrelevant and not appropriate, you might get distracted from the point of focus. To show the reader that you can critically solve the problem, make sure that you write a theoretical proposition regarding the selection  and analysis of data.

3. Data Analysis

For analysis, it is crucial to use such methods that fit best with the types of data collected and the research objectives. Elaborate on these methods and the ones that justify your data collection methods thoroughly. Make sure to make the reader believe that you did not choose your method randomly. Instead, you arrived at it after critical analysis and prolonged research.

On the other hand,  quantitative analysis  refers to the analysis and interpretation of facts and figures – to build reasoning behind the advent of primary findings. An assessment of the main results and the literature review plays a pivotal role in qualitative and quantitative analysis.

The overall objective of data analysis is to detect patterns and inclinations in data and then present the outcomes implicitly.  It helps in providing a solid foundation for critical conclusions and assisting the researcher to complete the dissertation proposal. 

4. Qualitative Data Analysis

Qualitative data refers to data that does not involve numbers. You are required to carry out an analysis of the data collected through experiments, focus groups, and interviews. This can be a time-taking process because it requires iterative examination and sometimes demanding the application of hermeneutics. Note that using qualitative technique doesn’t only mean generating good outcomes but to unveil more profound knowledge that can be transferrable.

Presenting qualitative data analysis in a dissertation  can also be a challenging task. It contains longer and more detailed responses. Placing such comprehensive data coherently in one chapter of the dissertation can be difficult due to two reasons. Firstly, we cannot figure out clearly which data to include and which one to exclude. Secondly, unlike quantitative data, it becomes problematic to present data in figures and tables. Making information condensed into a visual representation is not possible. As a writer, it is of essence to address both of these challenges.

          Qualitative Data Analysis Methods

Following are the methods used to perform quantitative data analysis. 

  •   Deductive Method

This method involves analyzing qualitative data based on an argument that a researcher already defines. It’s a comparatively easy approach to analyze data. It is suitable for the researcher with a fair idea about the responses they are likely to receive from the questionnaires.

  •  Inductive Method

In this method, the researcher analyzes the data not based on any predefined rules. It is a time-taking process used by students who have very little knowledge of the research phenomenon.

5. Quantitative Data Analysis

Quantitative data contains facts and figures obtained from scientific research and requires extensive statistical analysis. After collection and analysis, you will be able to conclude. Generic outcomes can be accepted beyond the sample by assuming that it is representative – one of the preliminary checkpoints to carry out in your analysis to a larger group. This method is also referred to as the “scientific method”, gaining its roots from natural sciences.

The Presentation of quantitative data  depends on the domain to which it is being presented. It is beneficial to consider your audience while writing your findings. Quantitative data for  hard sciences  might require numeric inputs and statistics. As for  natural sciences , such comprehensive analysis is not required.

                Quantitative Analysis Methods

Following are some of the methods used to perform quantitative data analysis. 

  • Trend analysis:  This corresponds to a statistical analysis approach to look at the trend of quantitative data collected over a considerable period.
  • Cross-tabulation:  This method uses a tabula way to draw readings among data sets in research.  
  • Conjoint analysis :   Quantitative data analysis method that can collect and analyze advanced measures. These measures provide a thorough vision about purchasing decisions and the most importantly, marked parameters.
  • TURF analysis:  This approach assesses the total market reach of a service or product or a mix of both. 
  • Gap analysis:  It utilizes the  side-by-side matrix  to portray quantitative data, which captures the difference between the actual and expected performance. 
  • Text analysis:  In this method, innovative tools enumerate  open-ended data  into easily understandable data. 

6. Data Presentation Tools

Since large volumes of data need to be represented, it becomes a difficult task to present such an amount of data in coherent ways. To resolve this issue, consider all the available choices you have, such as tables, charts, diagrams, and graphs. 

Tables help in presenting both qualitative and quantitative data concisely. While presenting data, always keep your reader in mind. Anything clear to you may not be apparent to your reader. So, constantly rethink whether your data presentation method is understandable to someone less conversant with your research and findings. If the answer is “No”, you may need to rethink your Presentation. 

7. Include Appendix or Addendum

After presenting a large amount of data, your dissertation analysis part might get messy and look disorganized. Also, you would not be cutting down or excluding the data you spent days and months collecting. To avoid this, you should include an appendix part. 

The data you find hard to arrange within the text, include that in the  appendix part of a dissertation . And place questionnaires, copies of focus groups and interviews, and data sheets in the appendix. On the other hand, one must put the statistical analysis and sayings quoted by interviewees within the dissertation. 

8. Thoroughness of Data

It is a common misconception that the data presented is self-explanatory. Most of the students provide the data and quotes and think that it is enough and explaining everything. It is not sufficient. Rather than just quoting everything, you should analyze and identify which data you will use to approve or disapprove your standpoints. 

Thoroughly demonstrate the ideas and critically analyze each perspective taking care of the points where errors can occur. Always make sure to discuss the anomalies and strengths of your data to add credibility to your research.

9. Discussing Data

Discussion of data involves elaborating the dimensions to classify patterns, themes, and trends in presented data. In addition, to balancing, also take theoretical interpretations into account. Discuss the reliability of your data by assessing their effect and significance. Do not hide the anomalies. While using interviews to discuss the data, make sure you use relevant quotes to develop a strong rationale. 

It also involves answering what you are trying to do with the data and how you have structured your findings. Once you have presented the results, the reader will be looking for interpretation. Hence, it is essential to deliver the understanding as soon as you have submitted your data.

10. Findings and Results

Findings refer to the facts derived after the analysis of collected data. These outcomes should be stated; clearly, their statements should tightly support your objective and provide logical reasoning and scientific backing to your point. This part comprises of majority part of the dissertation. 

In the finding part, you should tell the reader what they are looking for. There should be no suspense for the reader as it would divert their attention. State your findings clearly and concisely so that they can get the idea of what is more to come in your dissertation.

11. Connection with Literature Review

At the ending of your data analysis in the dissertation, make sure to compare your data with other published research. In this way, you can identify the points of differences and agreements. Check the consistency of your findings if they meet your expectations—lookup for bottleneck position. Analyze and discuss the reasons behind it. Identify the key themes, gaps, and the relation of your findings with the literature review. In short, you should link your data with your research question, and the questions should form a basis for literature.

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13 Reasons Why Data Is Important in Decision Making

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Wrapping Up

Writing data analysis in the dissertation involves dedication, and its implementations demand sound knowledge and proper planning. Choosing your topic, gathering relevant data, analyzing it, presenting your data and findings correctly, discussing the results, connecting with the literature and conclusions are milestones in it. Among these checkpoints, the Data analysis stage is most important and requires a lot of keenness.

In this article, we thoroughly looked at the tips that prove valuable for writing a data analysis in a dissertation. Make sure to give this article a thorough read before you write data analysis in the dissertation leading to the successful future of your research.

Oxbridge Essays. Top 10 Tips for Writing a Dissertation Data Analysis.

Emidio Amadebai

As an IT Engineer, who is passionate about learning and sharing. I have worked and learned quite a bit from Data Engineers, Data Analysts, Business Analysts, and Key Decision Makers almost for the past 5 years. Interested in learning more about Data Science and How to leverage it for better decision-making in my business and hopefully help you do the same in yours.

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dissertation topic on data analytics

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Eilertson, Kirsten – "Estimation and inference of random effect models with applications to population genetics and proteomics" 

Dissertation Advisor: Carlos Bustamante 

Initial Job Placement: Biostatistician, The J. David Gladstone Institutes, San Francisco CA

Grabchak, Michael – "Tempered stable distributions: properties and extensions" 

Dissertation Advisor: Gennady Samorodnitsky 

Initial Job Placement: Assistant Professor, UNC Charlotte, Charlotte NC

Li, Yingxing – "Aspects of penalized splines" 

Initial Job Placement: Assistant Professor, The Wang Yanan Institute for Studies in Economics, Xiamen University

Lopez Oliveros, Luis – "Modeling end-user behavior in data networks" 

Dissertation Advisor: Sidney Resnick  

Initial Job Placement: Consultant, Murex North America, New York NY

Ma, Xin – "Statistical Methods for Genome Variant Calling and Population Genetic Inference from Next-Generation Sequencing Data" 

Initial Job Placement: Postdoc, Stanford University, Stanford CA

Kormaksson, Matthias – "Dynamic path analysis and model based clustering of microarray data" 

Dissertation Advisor: James Booth 

Initial Job Placement: Postdoc, Department of Public Health, Weill Cornell Medical College, New York NY

Schifano, Elizabeth – "Topics in penalized estimation" 

Initial Job Placement: Postdoc, Department of Biostatistics, Harvard University, Boston MA

Hanlon, Bret – "High-dimensional data analysis" 

Dissertation Advisor: Anand Vidyashankar 

Shaby, Benjamin – "Tools for hard bayesian computations" 

Initial Job Placement: Postdoc, SAMSI, Durham NC

Zipunnikov, Vadim – "Topics on generalized linear mixed models" 

Initial Job Placement: Postdoc, Department of Biostatistics, Johns Hopkins University, Baltimore MD

Barger, Kathryn Jo-Anne – "Objective bayesian estimation for the number of classes in a population using Jeffreys and reference priors" 

Dissertation Advisor: John Bunge 

Initial Job Placement: Pfizer Incorporated

Chan, Serena Suewei – "Robust and efficient inference for linear mixed models using skew-normal distributions" 

Initial Job Placement: Statistician, Takeda Pharmaceuticles, Deerfield IL

Lin, Haizhi – "Distressed debt prices and recovery rate estimation" 

Dissertation Advisor: Martin Wells  

Initial Job Placement: Associate, Fixed Income Department, Credit Suisse Securities (USA), New York, NY

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  • Introduction
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dissertation topic on data analytics

Getting to the main article

Choosing your route

Setting research questions/ hypotheses

Assessment point

Building the theoretical case

Setting your research strategy

Data collection

Data analysis

Data analysis techniques

In STAGE NINE: Data analysis , we discuss the data you will have collected during STAGE EIGHT: Data collection . However, before you collect your data, having followed the research strategy you set out in this STAGE SIX , it is useful to think about the data analysis techniques you may apply to your data when it is collected.

The statistical tests that are appropriate for your dissertation will depend on (a) the research questions/hypotheses you have set, (b) the research design you are using, and (c) the nature of your data. You should already been clear about your research questions/hypotheses from STAGE THREE: Setting research questions and/or hypotheses , as well as knowing the goal of your research design from STEP TWO: Research design in this STAGE SIX: Setting your research strategy . These two pieces of information - your research questions/hypotheses and research design - will let you know, in principle , the statistical tests that may be appropriate to run on your data in order to answer your research questions.

We highlight the words in principle and may because the most appropriate statistical test to run on your data not only depend on your research questions/hypotheses and research design, but also the nature of your data . As you should have identified in STEP THREE: Research methods , and in the article, Types of variables , in the Fundamentals part of Lærd Dissertation, (a) not all data is the same, and (b) not all variables are measured in the same way (i.e., variables can be dichotomous, ordinal or continuous). In addition, not all data is normal , nor is the data when comparing groups necessarily equal , terms we explain in the Data Analysis section in the Fundamentals part of Lærd Dissertation. As a result, you might think that running a particular statistical test is correct at this point of setting your research strategy (e.g., a statistical test called a dependent t-test ), based on the research questions/hypotheses you have set, but when you collect your data (i.e., during STAGE EIGHT: Data collection ), the data may fail certain assumptions that are important to such a statistical test (i.e., normality and homogeneity of variance ). As a result, you have to run another statistical test (e.g., a Wilcoxon signed-rank test instead of a dependent t-test ).

At this stage in the dissertation process, it is important, or at the very least, useful to think about the data analysis techniques you may apply to your data when it is collected. We suggest that you do this for two reasons:

REASON A Supervisors sometimes expect you to know what statistical analysis you will perform at this stage of the dissertation process

This is not always the case, but if you have had to write a Dissertation Proposal or Ethics Proposal , there is sometimes an expectation that you explain the type of data analysis that you plan to carry out. An understanding of the data analysis that you will carry out on your data can also be an expected component of the Research Strategy chapter of your dissertation write-up (i.e., usually Chapter Three: Research Strategy ). Therefore, it is a good time to think about the data analysis process if you plan to start writing up this chapter at this stage.

REASON B It takes time to get your head around data analysis

When you come to analyse your data in STAGE NINE: Data analysis , you will need to think about (a) selecting the correct statistical tests to perform on your data, (b) running these tests on your data using a statistics package such as SPSS, and (c) learning how to interpret the output from such statistical tests so that you can answer your research questions or hypotheses. Whilst we show you how to do this for a wide range of scenarios in the in the Data Analysis section in the Fundamentals part of Lærd Dissertation, it can be a time consuming process. Unless you took an advanced statistics module/option as part of your degree (i.e., not just an introductory course to statistics, which are often taught in undergraduate and master?s degrees), it can take time to get your head around data analysis. Starting this process at this stage (i.e., STAGE SIX: Research strategy ), rather than waiting until you finish collecting your data (i.e., STAGE EIGHT: Data collection ) is a sensible approach.

Final thoughts...

Setting the research strategy for your dissertation required you to describe, explain and justify the research paradigm, quantitative research design, research method(s), sampling strategy, and approach towards research ethics and data analysis that you plan to follow, as well as determine how you will ensure the research quality of your findings so that you can effectively answer your research questions/hypotheses. However, from a practical perspective, just remember that the main goal of STAGE SIX: Research strategy is to have a clear research strategy that you can implement (i.e., operationalize ). After all, if you are unable to clearly follow your plan and carry out your research in the field, you will struggle to answer your research questions/hypotheses. Once you are sure that you have a clear plan, it is a good idea to take a step back, speak with your supervisor, and assess where you are before moving on to collect data. Therefore, when you are ready, proceed to STAGE SEVEN: Assessment point .

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Home > CCSE > Data Science and Analytics > PhD DSA

Doctor of Data Science and Analytics Dissertations

The PhD Website

The Ph.D. in Data Science and Analytics is an advanced degree with a dual focus of application and research - where students will engage in real world business problems, which will inform and guide their research interests.

We launched the first formal PhD program in Data Science in 2015. Our program sits at the intersection of computer science, statistics, mathematics, and business. Our students engage in relevant research with faculty from across our eleven colleges. As one of the institutions on the forefront of the development of data science as an academic discipline, we are committed to developing the next generation of Data Science leaders, researchers, and educators. Culturally, we are committed to the discipline of Data Science, through ethical practices, attention to fairness, to a diverse student body, to academic excellence, and research which makes positive contributions to our local, regional, and global community. -Sherry Ni, Director, Ph.D. in Data Science and Analytics

This degree will train individuals to translate and facilitate new innovative research, structured and unstructured, complex data into information to improve decision making. This curriculum includes heavy emphasis on programming, data mining, statistical modeling, and the mathematical foundations to support these concepts. Importantly, the program also emphasizes communication skills – both oral and written – as well as application and tying results to business and research problems.

Need to Submit Your Dissertation? Submit Here!

Dissertations from 2024 2024.

A Holistic and Collaborative Behavioral Health Detection Framework Using Sensitive Police Narratives , Martin Keagan Wynne Brown

Multi-Modality Transformer for E-Commerce: Inferring User Purchase Intention to Bridge the Query-Product Gap , Srivatsa Mallapragada

Dissertations from 2023 2023

Quantification of Various Types of Biases in Large Language Models , Sudhashree Sayenju

Dissertations from 2022 2022

Appley: Approximate Shapley Values for Model Explainability in Linear Time , Md Shafiul Alam

Ethical Analytics: A Framework for a Practically-Oriented Sub-Discipline of AI Ethics , Jonathan Boardman

Novel Instance-Level Weighted Loss Function for Imbalanced Learning , Trent Geisler

Debiasing Cyber Incidents – Correcting for Reporting Delays and Under-reporting , Seema Sangari

Dissertations from 2021 2021

Integrated Machine Learning Approaches to Improve Classification performance and Feature Extraction Process for EEG Dataset , Mohammad Masum

A Distance-Based Clustering Framework for Categorical Time Series: A Case Study in Episodes of Care Healthcare Delivery System , Lauren Staples

Dissertations from 2020 2020

A CREDIT ANALYSIS OF THE UNBANKED AND UNDERBANKED: AN ARGUMENT FOR ALTERNATIVE DATA , Edwin Baidoo

Quantitatively Motivated Model Development Framework: Downstream Analysis Effects of Normalization Strategies , Jessica M. Rudd

Data-driven Investment Decisions in P2P Lending: Strategies of Integrating Credit Scoring and Profit Scoring , Yan Wang

A Novel Penalized Log-likelihood Function for Class Imbalance Problem , Lili Zhang

ATTACK AND DEFENSE IN SECURITY ANALYTICS , Yiyun Zhou

Dissertations from 2019 2019

One and Two-Step Estimation of Time Variant Parameters and Nonparametric Quantiles , Bogdan Gadidov

Biologically Interpretable, Integrative Deep Learning for Cancer Survival Analysis , Jie Hao

Deep Embedding Kernel , Linh Le

Ordinal HyperPlane Loss , Bob Vanderheyden

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Main Content

Writing a thesis is the final step in obtaining a Bachelor or Master degree. A thesis is always coupled to a scientific project in some field of expertise. Candidates who want to write their thesis in the Big Data Analytics group should, therefore, be interested and trained in a field related to our research areas .

A thesis is an independent, scientific and practical work. This means that the thesis and its related project are conducted exclusively by the candidate; the execution follows proper scientific practices; and all necessary artifacts, algorithms and evaluations have been physically implemented and submitted as part of the thesis. A proper way of sharing code and evaluation artifacts is the creation of a public GitHub repository, which can, then, be referenced in the thesis. The thesis serves as a documentation for the project and as scientific analysis and reflection of the gathered insights.

For students interested in a thesis, we offer interesting topics and a close, continuous supervision during the entire thesis time. Every thesis is supervised by at least one member of our team, who can give advice and help in critical situations. The condensed results of our best master theses have been published at top scientifc venues, such as VLDB, CIKM, EDBT, etc.

A selection of open thesis topics can be found on this page. We also encourage interested students to suggest own ideas in the context of our research areas and to contact individual members of the group directly. An ideal thesis topic is connected in some form to the research projects of a group member. That group member will then become a supervisor for the thesis. Hence, taking a look at the personal pages and our current projects is a good starter for a thesis project. Recent publications on conferences, such as VLDB or SIGMOD , or open research challenges on, for example, Kaggle are good resources for finding interesting thesis ideas.

Organizational information

  • Exposé : Before starting a thesis, Master students have to write a 2-5 pages long exposé. The exposé is a description of the planned project and includes a motivation for the topic, a literature review on related work, a draft of the research/project idea, and a plan for the final evaluation. Please consider our template with initial instructions when starting your exposé. The exposé can be created in the context of the "Selbstständiges wissenschaftliches Arbeiten" module.
  • Timetable : Once the thesis project is started, it must be finished within six months for Master and four months for Bachelor theses. Only special events, such as times of sickness, can extend this period. If you are working on a regular job or if you need to take further courses during your thesis time, the thesis time can be extended as well. A thesis can be started at any time, which is in alignment with semester times but also asynchronous to semester times.
  • Presentations : The work on a Master thesis requires students to give at least two talks. A mid-term talk serves to get some additional feedback from a larger audience and to practice the final thesis defense; this talk is not graded. The final talk is a proper defense of the thesis and the final results; this talk is graded as one part of the academic performance.

Hints for the thesis

  • Length : A typical thesis is 30-60 pages (Bachelor) and 40-90 pages (Master) long.
  • Language : A thesis can be written in German or English. We recommend English, though.
  • Format : We highly recommend writing a thesis in LaTeX, as in this way many structural defects can easily be avoided.
  • Tips for writing a thesis
  • Tips for writing a paper (short)
  • Tips for writing a paper (long)

Bachelor and Master Theses

  • We aim to translate the batch processing-based Sindy algorithms for the discovery of inclusion dependencies with Akka into a reactive, more efficient data profiling approach.
  • We aim to translate the Many algorithm for inclusion dependency discovery on Web Tables into a partializing IND discovery algorithm that is better suited for data integration scenarios.
  • The data profiling language DPQL is a recently developed metadata profiling interface that serves the discovery of complex metadata patterns.
  • We aim to develop efficient profiling approaches that find these metadata patterns as fast as possible.
  • IoT applications, multi-sensor systems and many distributed software systems record time series in different frequencies, temporal alignments, speeds, and formats, which makes their integrated analysis a technically and algorithmically challenging task. We therefore aim to develop a time series engineering library that assists the integration and preparation of time series for analytical tasks, such as anomaly detection, forecasting, clustering etc.
  • As part of the project, we could generate and measure our own times series with different sensors and aggregate the measurements afterwards with the time series library into a single multivariate time series.
  • Based on the movement events of agents in cities, we aim to plan the placement of info-stations, such that these stations inform as many nearby agents as possible in some fixed time period.
  • The project will be conducted in collaboration with the emergenCity project.
  • We will use the streams of movement data and the Lambda engine that is currently in development at the UMR.
  • Keywords: Lambda queries, lattice search
  • Given non-invasive medical sensor measurements, such as heart beats or temperature curves, we aim to find anomalous recordings that may indicate diseases or body malfunctions via modern anomaly detection, clustering and/or prediction techniques for time series.
  • The project will be conducted in collaboration with the VirtualDoc project.
  • Keywords: time series analytics, machine learning
  • In this project, we aim to slice time series into semantically meaningful subsequences. In contrast to traditional sliding or hopping windows, semantic windows should capture variable-lengths concepts, such as hearth beats in ECG data. These subsequences will then support anomaly detection algorithms or clustering algorithms in creating better results.
  • Discovering anomalies in streaming data is a challenging task; hence, we aim to translate batch anomaly detection algorithm(s) into the streaming scenario.
  • Our goal is to discovery anomalies as fast as possibly by sacrificing as little precision as possible.
  • Keywords: stream processing
  • In film scoring, certain visual scenes are accompanied by appropriate sounds; we plan to automate this process with artificial intelligence.
  • Given a database with already scored films, we first extract the scene-to-sound mappings and, then, train a model to learn the scoring process.
  • The project will be conducted in collaboration with a professional film scorer.
  • Keywords: image processing, machine learning
  • First-Line schema matching produces similarity matrices which indicate how likely two attributes of different schemata represent the same semantic concept.
  • Second-Line schema matching consumes similarity matrices and aims to produce improved similarity matrices.
  • There are two main approaches for second-line matching: 1) similarity matrix boosting and 2) ensemble matching. While the former tries to transform a given similarity matrix into a more valuable one, the latter consumes multiple matrices and combines them to a single new similarity matrix.
  • We aim to improve the Hungarian Method by improving its efficiency in exchange for a bit of fuzzyness/approximation (= reduced correctness)
  • Also interesting: Can we allow (to some extend) 1:n and n:m mappings in the attribute matching?
  • Knowledgebases are a valuable source of publicly available data and data integration scenarios. To make these scenarios usable also for relational data integration systems, this project aims to develop a shredding algorithms that translates linked open data into meaningful relational tables for data integration purposes.
  • Data integration test scenarios are very rare, especially if these scenarios should offer special properties, such as join- and unionable tables, unary and complex attributes matches, a broad selection of data types, schema-based and schema-less data, real-world data values and many other properties. This project, therefore, aims to develop a relation decomposer that takes existing, integrated datasets as input and automatically generates different integration scenarios with specific properties from these seed datasets via relational decomposition.
  • The Web Data Commons Crawl is a large dataset of relational tables that stem from crawled HTML Web tables. These tables often store data about same/similar concepts, but they are due to their crawling completely unconnected. Hence, we aim to integrate the WDC commons corpus in a possibly meaningful and correct way, which is both a technically and conceptually challenging task.
  • Data in data lakes is subject to constant changes. Data lakes, thereby, lack most of the control mechanisms that traditional database systems would use to, for example, standardise schemata, maintain indexes or enforce constraints. In this project, we aim to develop a system named lakehouse that dynamically integrates certain parts of a Data Lake to serve certain user-defined queries.
  • The federated learning technique DataGossip proposes to exchange not only model weights, but also some training data items for better convergence on skewed data distributions; we aim to improve this technique with more intelligent training data selection techniques.
  • Keywords: federated learning, distributed computing
  • The BYTE Challenge is a digital learning platform for computer science that targets children from grade 3 to 13.
  • In this project, we aim to assist the platform development and the assessment and curation of digital learning material, which includes videos, quizzes, papers etc.
  • Efficient Partial Inclusion Dependency Discovery
  • Entwicklung einer Chat-KI für Data Engineering
  • Image2Surface: Predicting Surface Properties of Workpieces from Laserscan Images
  • Image2Surface: Data Engineering for Visual Analytics
  • Erkennung anomaler medizinischer Muster – Analyse nicht invasiver medizinischer Daten mittels maschinellen Lernens (2024)
  • Data Generation and Machine Learning in the Context of Optimizing a Twin Wire Arc Spray Process (2023)
  • A Clustering Approach to Column Type Annotation: Effects of Pre-Clustering (2023)
  • Holistische Integration von WebDaten (2023)
  • User-Centric Explainable Deep Reinforcement Learning for Decision Support Systems (2023)
  • Combining Time Series Anomaly Detection Algorithms (2023)
  • DPQLEngine: Processing the Data Profiling Query Language (2023)
  • Aggregating Machine Learning Models for the Energy Consumption Forecast of Heat Generators (2023)
  • Correlation Anomaly Detection in High-Dimensional Time Series (2023)
  • HYPAAD: Hyper Parameter Optimization in Anomaly Detection (2022)
  • Time Series Anomaly Detection: An Aircraft Turbine Case Study (2022)
  • Distributed Duplicate Detection on Streaming Data (2021)
  • UltraMine - Scalable Analytics on Time Series Data (2021)
  • Distributed Graph Based Approximate Nearest Neighbor Search (2020)
  • A2DB: A Reactive Database for Theta-Joins (2020)
  • Distributed Detection of Sequential Anomalies in Time Related Sequences (2020)
  • Efficient Distributed Discovery of Bidirectional Order Dependencies (2020)
  • Distributed Unique Column Combination Discovery (2019)
  • Reactive Inclusion Dependency Discovery (2019)
  • Inclusion Dependency Discovery on Streaming Data (2019)
  • Generating Data for Functional Dependency Profiling (2018)
  • Efficient Detection of Genuine Approximate Functional Dependencies (2018)
  • Efficient Discovery of Matching Dependencies (2017)
  • Discovering Interesting Conditional Functional Dependencies (2017)
  • Multivalued Dependency Detection (2016)
  • DataRefinery - Scalable Offer Processing with Apache Spark (2016)
  • Spinning a Web of Tables through Inclusion Dependencies (2014)
  • Discovery of Conditional Unique Column Combination (2014)
  • Discovering Matching Dependencies (2013)

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214 Best Big Data Research Topics for Your Thesis Paper

big data research topics

Finding an ideal big data research topic can take you a long time. Big data, IoT, and robotics have evolved. The future generations will be immersed in major technologies that will make work easier. Work that was done by 10 people will now be done by one person or a machine. This is amazing because, in as much as there will be job loss, more jobs will be created. It is a win-win for everyone.

Big data is a major topic that is being embraced globally. Data science and analytics are helping institutions, governments, and the private sector. We will share with you the best big data research topics.

On top of that, we can offer you the best writing tips to ensure you prosper well in your academics. As students in the university, you need to do proper research to get top grades. Hence, you can consult us if in need of research paper writing services.

Big Data Analytics Research Topics for your Research Project

Are you looking for an ideal big data analytics research topic? Once you choose a topic, consult your professor to evaluate whether it is a great topic. This will help you to get good grades.

  • Which are the best tools and software for big data processing?
  • Evaluate the security issues that face big data.
  • An analysis of large-scale data for social networks globally.
  • The influence of big data storage systems.
  • The best platforms for big data computing.
  • The relation between business intelligence and big data analytics.
  • The importance of semantics and visualization of big data.
  • Analysis of big data technologies for businesses.
  • The common methods used for machine learning in big data.
  • The difference between self-turning and symmetrical spectral clustering.
  • The importance of information-based clustering.
  • Evaluate the hierarchical clustering and density-based clustering application.
  • How is data mining used to analyze transaction data?
  • The major importance of dependency modeling.
  • The influence of probabilistic classification in data mining.

Interesting Big Data Analytics Topics

Who said big data had to be boring? Here are some interesting big data analytics topics that you can try. They are based on how some phenomena are done to make the world a better place.

  • Discuss the privacy issues in big data.
  • Evaluate the storage systems of scalable in big data.
  • The best big data processing software and tools.
  • Data mining tools and techniques are popularly used.
  • Evaluate the scalable architectures for parallel data processing.
  • The major natural language processing methods.
  • Which are the best big data tools and deployment platforms?
  • The best algorithms for data visualization.
  • Analyze the anomaly detection in cloud servers
  • The scrutiny normally done for the recruitment of big data job profiles.
  • The malicious user detection in big data collection.
  • Learning long-term dependencies via the Fourier recurrent units.
  • Nomadic computing for big data analytics.
  • The elementary estimators for graphical models.
  • The memory-efficient kernel approximation.

Big Data Latest Research Topics

Do you know the latest research topics at the moment? These 15 topics will help you to dive into interesting research. You may even build on research done by other scholars.

  • Evaluate the data mining process.
  • The influence of the various dimension reduction methods and techniques.
  • The best data classification methods.
  • The simple linear regression modeling methods.
  • Evaluate the logistic regression modeling.
  • What are the commonly used theorems?
  • The influence of cluster analysis methods in big data.
  • The importance of smoothing methods analysis in big data.
  • How is fraud detection done through AI?
  • Analyze the use of GIS and spatial data.
  • How important is artificial intelligence in the modern world?
  • What is agile data science?
  • Analyze the behavioral analytics process.
  • Semantic analytics distribution.
  • How is domain knowledge important in data analysis?

Big Data Debate Topics

If you want to prosper in the field of big data, you need to try even hard topics. These big data debate topics are interesting and will help you to get a better understanding.

  • The difference between big data analytics and traditional data analytics methods.
  • Why do you think the organization should think beyond the Hadoop hype?
  • Does the size of the data matter more than how recent the data is?
  • Is it true that bigger data are not always better?
  • The debate of privacy and personalization in maintaining ethics in big data.
  • The relation between data science and privacy.
  • Do you think data science is a rebranding of statistics?
  • Who delivers better results between data scientists and domain experts?
  • According to your view, is data science dead?
  • Do you think analytics teams need to be centralized or decentralized?
  • The best methods to resource an analytics team.
  • The best business case for investing in analytics.
  • The societal implications of the use of predictive analytics within Education.
  • Is there a need for greater control to prevent experimentation on social media users without their consent?
  • How is the government using big data; for the improvement of public statistics or to control the population?

University Dissertation Topics on Big Data

Are you doing your Masters or Ph.D. and wondering the best dissertation topic or thesis to do? Why not try any of these? They are interesting and based on various phenomena. While doing the research ensure you relate the phenomenon with the current modern society.

  • The machine learning algorithms are used for fall recognition.
  • The divergence and convergence of the internet of things.
  • The reliable data movements using bandwidth provision strategies.
  • How is big data analytics using artificial neural networks in cloud gaming?
  • How is Twitter accounts classification done using network-based features?
  • How is online anomaly detection done in the cloud collaborative environment?
  • Evaluate the public transportation insights provided by big data.
  • Evaluate the paradigm for cancer patients using the nursing EHR to predict the outcome.
  • Discuss the current data lossless compression in the smart grid.
  • How does online advertising traffic prediction helps in boosting businesses?
  • How is the hyperspectral classification done using the multiple kernel learning paradigm?
  • The analysis of large data sets downloaded from websites.
  • How does social media data help advertising companies globally?
  • Which are the systems recognizing and enforcing ownership of data records?
  • The alternate possibilities emerging for edge computing.

The Best Big Data Analysis Research Topics and Essays

There are a lot of issues that are associated with big data. Here are some of the research topics that you can use in your essays. These topics are ideal whether in high school or college.

  • The various errors and uncertainty in making data decisions.
  • The application of big data on tourism.
  • The automation innovation with big data or related technology
  • The business models of big data ecosystems.
  • Privacy awareness in the era of big data and machine learning.
  • The data privacy for big automotive data.
  • How is traffic managed in defined data center networks?
  • Big data analytics for fault detection.
  • The need for machine learning with big data.
  • The innovative big data processing used in health care institutions.
  • The money normalization and extraction from texts.
  • How is text categorization done in AI?
  • The opportunistic development of data-driven interactive applications.
  • The use of data science and big data towards personalized medicine.
  • The programming and optimization of big data applications.

The Latest Big Data Research Topics for your Research Proposal

Doing a research proposal can be hard at first unless you choose an ideal topic. If you are just diving into the big data field, you can use any of these topics to get a deeper understanding.

  • The data-centric network of things.
  • Big data management using artificial intelligence supply chain.
  • The big data analytics for maintenance.
  • The high confidence network predictions for big biological data.
  • The performance optimization techniques and tools for data-intensive computation platforms.
  • The predictive modeling in the legal context.
  • Analysis of large data sets in life sciences.
  • How to understand the mobility and transport modal disparities sing emerging data sources?
  • How do you think data analytics can support asset management decisions?
  • An analysis of travel patterns for cellular network data.
  • The data-driven strategic planning for citywide building retrofitting.
  • How is money normalization done in data analytics?
  • Major techniques used in data mining.
  • The big data adaptation and analytics of cloud computing.
  • The predictive data maintenance for fault diagnosis.

Interesting Research Topics on A/B Testing In Big Data

A/B testing topics are different from the normal big data topics. However, you use an almost similar methodology to find the reasons behind the issues. These topics are interesting and will help you to get a deeper understanding.

  • How is ultra-targeted marketing done?
  • The transition of A/B testing from digital to offline.
  • How can big data and A/B testing be done to win an election?
  • Evaluate the use of A/B testing on big data
  • Evaluate A/B testing as a randomized control experiment.
  • How does A/B testing work?
  • The mistakes to avoid while conducting the A/B testing.
  • The most ideal time to use A/B testing.
  • The best way to interpret results for an A/B test.
  • The major principles of A/B tests.
  • Evaluate the cluster randomization in big data
  • The best way to analyze A/B test results and the statistical significance.
  • How is A/B testing used in boosting businesses?
  • The importance of data analysis in conversion research
  • The importance of A/B testing in data science.

Amazing Research Topics on Big Data and Local Governments

Governments are now using big data to make the lives of the citizens better. This is in the government and the various institutions. They are based on real-life experiences and making the world better.

  • Assess the benefits and barriers of big data in the public sector.
  • The best approach to smart city data ecosystems.
  • The big analytics used for policymaking.
  • Evaluate the smart technology and emergence algorithm bureaucracy.
  • Evaluate the use of citizen scoring in public services.
  • An analysis of the government administrative data globally.
  • The public values are found in the era of big data.
  • Public engagement on local government data use.
  • Data analytics use in policymaking.
  • How are algorithms used in public sector decision-making?
  • The democratic governance in the big data era.
  • The best business model innovation to be used in sustainable organizations.
  • How does the government use the collected data from various sources?
  • The role of big data for smart cities.
  • How does big data play a role in policymaking?

Easy Research Topics on Big Data

Who said big data topics had to be hard? Here are some of the easiest research topics. They are based on data management, research, and data retention. Pick one and try it!

  • Who uses big data analytics?
  • Evaluate structure machine learning.
  • Explain the whole deep learning process.
  • Which are the best ways to manage platforms for enterprise analytics?
  • Which are the new technologies used in data management?
  • What is the importance of data retention?
  • The best way to work with images is when doing research.
  • The best way to promote research outreach is through data management.
  • The best way to source and manage external data.
  • Does machine learning improve the quality of data?
  • Describe the security technologies that can be used in data protection.
  • Evaluate token-based authentication and its importance.
  • How can poor data security lead to the loss of information?
  • How to determine secure data.
  • What is the importance of centralized key management?

Unique IoT and Big Data Research Topics

Internet of Things has evolved and many devices are now using it. There are smart devices, smart cities, smart locks, and much more. Things can now be controlled by the touch of a button.

  • Evaluate the 5G networks and IoT.
  • Analyze the use of Artificial intelligence in the modern world.
  • How do ultra-power IoT technologies work?
  • Evaluate the adaptive systems and models at runtime.
  • How have smart cities and smart environments improved the living space?
  • The importance of the IoT-based supply chains.
  • How does smart agriculture influence water management?
  • The internet applications naming and identifiers.
  • How does the smart grid influence energy management?
  • Which are the best design principles for IoT application development?
  • The best human-device interactions for the Internet of Things.
  • The relation between urban dynamics and crowdsourcing services.
  • The best wireless sensor network for IoT security.
  • The best intrusion detection in IoT.
  • The importance of big data on the Internet of Things.

Big Data Database Research Topics You Should Try

Big data is broad and interesting. These big data database research topics will put you in a better place in your research. You also get to evaluate the roles of various phenomena.

  • The best cloud computing platforms for big data analytics.
  • The parallel programming techniques for big data processing.
  • The importance of big data models and algorithms in research.
  • Evaluate the role of big data analytics for smart healthcare.
  • How is big data analytics used in business intelligence?
  • The best machine learning methods for big data.
  • Evaluate the Hadoop programming in big data analytics.
  • What is privacy-preserving to big data analytics?
  • The best tools for massive big data processing
  • IoT deployment in Governments and Internet service providers.
  • How will IoT be used for future internet architectures?
  • How does big data close the gap between research and implementation?
  • What are the cross-layer attacks in IoT?
  • The influence of big data and smart city planning in society.
  • Why do you think user access control is important?

Big Data Scala Research Topics

Scala is a programming language that is used in data management. It is closely related to other data programming languages. Here are some of the best scala questions that you can research.

  • Which are the most used languages in big data?
  • How is scala used in big data research?
  • Is scala better than Java in big data?
  • How is scala a concise programming language?
  • How does the scala language stream process in real-time?
  • Which are the various libraries for data science and data analysis?
  • How does scala allow imperative programming in data collection?
  • Evaluate how scala includes a useful REPL for interaction.
  • Evaluate scala’s IDE support.
  • The data catalog reference model.
  • Evaluate the basics of data management and its influence on research.
  • Discuss the behavioral analytics process.
  • What can you term as the experience economy?
  • The difference between agile data science and scala language.
  • Explain the graph analytics process.

Independent Research Topics for Big Data

These independent research topics for big data are based on the various technologies and how they are related. Big data will greatly be important for modern society.

  • The biggest investment is in big data analysis.
  • How are multi-cloud and hybrid settings deep roots?
  • Why do you think machine learning will be in focus for a long while?
  • Discuss in-memory computing.
  • What is the difference between edge computing and in-memory computing?
  • The relation between the Internet of things and big data.
  • How will digital transformation make the world a better place?
  • How does data analysis help in social network optimization?
  • How will complex big data be essential for future enterprises?
  • Compare the various big data frameworks.
  • The best way to gather and monitor traffic information using the CCTV images
  • Evaluate the hierarchical structure of groups and clusters in the decision tree.
  • Which are the 3D mapping techniques for live streaming data.
  • How does machine learning help to improve data analysis?
  • Evaluate DataStream management in task allocation.
  • How is big data provisioned through edge computing?
  • The model-based clustering of texts.
  • The best ways to manage big data.
  • The use of machine learning in big data.

Is Your Big Data Thesis Giving You Problems?

These are some of the best topics that you can use to prosper in your studies. Not only are they easy to research but also reflect on real-time issues. Whether in University or college, you need to put enough effort into your studies to prosper. However, if you have time constraints, we can provide professional writing help. Are you looking for online expert writers? Look no further, we will provide quality work at a cheap price.

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List of Best Research and Thesis Topic Ideas for Data Science in 2022

In an era driven by digital and technological transformation, businesses actively seek skilled and talented data science potentials capable of leveraging data insights to enhance business productivity and achieve organizational objectives. In keeping with an increasing demand for data science professionals, universities offer various data science and big data courses to prepare students for the tech industry. Research projects are a crucial part of these programs and a well- executed data science project can make your CV appear more robust and compelling. A  broad range of data science topics exist that offer exciting possibilities for research but choosing data science research topics can be a real challenge for students . After all, a good research project relies first and foremost on data analytics research topics that draw upon both mono-disciplinary and multi-disciplinary research to explore endless possibilities for real –world applications.

As one of the top-most masters and PhD online dissertation writing services , we are geared to assist students in the entire research process right from the initial conception to the final execution to ensure that you have a truly fulfilling and enriching research experience. These resources are also helpful for those students who are taking online classes .

By taking advantage of our best digital marketing research topics in data science you can be assured of producing an innovative research project that will impress your research professors and make a huge difference in attracting the right employers.

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Data science thesis topics

We have compiled a list of data science research topics for students studying data science that can be utilized in data science projects in 2022. our team of professional data experts have brought together master or MBA thesis topics in data science  that cater to core areas  driving the field of data science and big data that will relieve all your research anxieties and  provide a solid grounding for  an interesting research projects . The article will feature data science thesis ideas that can be immensely beneficial for students as they cover a broad research agenda for future data science . These ideas have been drawn from the 8 v’s of big data namely Volume, Value, Veracity, Visualization, Variety, Velocity, Viscosity, and Virility that provide interesting and challenging research areas for prospective researches  in their masters or PhD thesis . Overall, the general big data research topics can be divided into distinct categories to facilitate the research topic selection process.

  • Security and privacy issues
  • Cloud Computing Platforms for Big Data Adoption and Analytics
  • Real-time data analytics for processing of image , video and text
  • Modeling uncertainty

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DATA SCIENCE PHD RESEARCH TOPICS

The article will also guide students engaged in doctoral research by introducing them to an outstanding list of data science thesis topics that can lead to major real-time applications of big data analytics in your research projects.

  • Intelligent traffic control ; Gathering and monitoring traffic information using CCTV images.
  • Asymmetric protected storage methodology over multi-cloud service providers in Big data.
  • Leveraging disseminated data over big data analytics environment.
  • Internet of Things.
  • Large-scale data system and anomaly detection.

What makes us a unique research service for your research needs?

We offer all –round and superb research services that have a distinguished track record in helping students secure their desired grades in research projects in big data analytics and hence pave the way for a promising career ahead. These are the features that set us apart in the market for research services that effectively deal with all significant issues in your research for.

  • Plagiarism –free ; We strictly adhere to a non-plagiarism policy in all our research work to  provide you with well-written, original content  with low similarity index   to maximize  chances of acceptance of your research submissions.
  • Publication; We don’t just suggest PhD data science research topics but our PhD consultancy services take your research to the next level by ensuring its publication in well-reputed journals. A PhD thesis is indispensable for a PhD degree and with our premier best PhD thesis services that  tackle all aspects  of research writing and cater to  essential requirements of journals , we will bring you closer to your dream of being a PhD in the field of data analytics.
  • Research ethics: Solid research ethics lie at the core of our services where we actively seek to protect the  privacy and confidentiality of  the technical and personal information of our valued customers.
  • Research experience: We take pride in our world –class team of computing industry professionals equipped with the expertise and experience to assist in choosing data science research topics and subsequent phases in research including findings solutions, code development and final manuscript writing.
  • Business ethics: We are driven by a business philosophy that‘s wholly committed to achieving total customer satisfaction by providing constant online and offline support and timely submissions so that you can keep track of the progress of your research.

Now, we’ll proceed to cover specific research problems encompassing both data analytics research topics and big data thesis topics that have applications across multiple domains.

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TheresearchGuardian.com providing expert thesis assistance for university students at any sort of level. Our thesis writing service has been serving students since 2011.

Multi-modal Transfer Learning for Cross-Modal Information Retrieval

Aim and objectives.

The research aims to examine and explore the use of CMR approach in bringing about a flexible retrieval experience by combining data across different modalities to ensure abundant multimedia data.

  • Develop methods to enable learning across different modalities in shared cross modal spaces comprising texts and images as well as consider the limitations of existing cross –modal retrieval algorithms.
  • Investigate the presence and effects of bias in cross modal transfer learning and suggesting strategies for bias detection and mitigation.
  • Develop a tool with query expansion and relevance feedback capabilities to facilitate search and retrieval of multi-modal data.
  • Investigate the methods of multi modal learning and elaborate on the importance of multi-modal deep learning to provide a comprehensive learning experience.

The Role of Machine Learning in Facilitating the Implication of the Scientific Computing and Software Engineering

  • Evaluate how machine learning leads to improvements in computational APA reference generator tools and thus aids in  the implementation of scientific computing
  • Evaluating the effectiveness of machine learning in solving complex problems and improving the efficiency of scientific computing and software engineering processes.
  • Assessing the potential benefits and challenges of using machine learning in these fields, including factors such as cost, accuracy, and scalability.
  • Examining the ethical and social implications of using machine learning in scientific computing and software engineering, such as issues related to bias, transparency, and accountability.

Trustworthy AI

The research aims to explore the crucial role of data science in advancing scientific goals and solving problems as well as the implications involved in use of AI systems especially with respect to ethical concerns.

  • Investigate the value of digital infrastructures  available through open data   in  aiding sharing  and inter linking of data for enhanced global collaborative research efforts
  • Provide explanations of the outcomes of a machine learning model  for a meaningful interpretation to build trust among users about the reliability and authenticity of data
  • Investigate how formal models can be used to verify and establish the efficacy of the results derived from probabilistic model.
  • Review the concept of Trustworthy computing as a relevant framework for addressing the ethical concerns associated with AI systems.

The Implementation of Data Science and their impact on the management environment and sustainability

The aim of the research is to demonstrate how data science and analytics can be leveraged in achieving sustainable development.

  • To examine the implementation of data science using data-driven decision-making tools
  • To evaluate the impact of modern information technology on management environment and sustainability.
  • To examine the use of  data science in achieving more effective and efficient environment management
  • Explore how data science and analytics can be used to achieve sustainability goals across three dimensions of economic, social and environmental.

Big data analytics in healthcare systems

The aim of the research is to examine the application of creating smart healthcare systems and   how it can   lead to more efficient, accessible and cost –effective health care.

  • Identify the potential Areas or opportunities in big data to transform the healthcare system such as for diagnosis, treatment planning, or drug development.
  • Assessing the potential benefits and challenges of using AI and deep learning in healthcare, including factors such as cost, efficiency, and accessibility
  • Evaluating the effectiveness of AI and deep learning in improving patient outcomes, such as reducing morbidity and mortality rates, improving accuracy and speed of diagnoses, or reducing medical errors
  • Examining the ethical and social implications of using AI and deep learning in healthcare, such as issues related to bias, privacy, and autonomy.

Large-Scale Data-Driven Financial Risk Assessment

The research aims to explore the possibility offered by big data in a consistent and real time assessment of financial risks.

  • Investigate how the use of big data can help to identify and forecast risks that can harm a business.
  • Categories the types of financial risks faced by companies.
  • Describe the importance of financial risk management for companies in business terms.
  • Train a machine learning model to classify transactions as fraudulent or genuine.

Scalable Architectures for Parallel Data Processing

Big data has exposed us to an ever –growing volume of data which cannot be handled through traditional data management and analysis systems. This has given rise to the use of scalable system architectures to efficiently process big data and exploit its true value. The research aims to analyses the current state of practice in scalable architectures and identify common patterns and techniques to design scalable architectures for parallel data processing.

  • To design and implement a prototype scalable architecture for parallel data processing
  • To evaluate the performance and scalability of the prototype architecture using benchmarks and real-world datasets
  • To compare the prototype architecture with existing solutions and identify its strengths and weaknesses
  • To evaluate the trade-offs and limitations of different scalable architectures for parallel data processing
  • To provide recommendations for the use of the prototype architecture in different scenarios, such as batch processing, stream processing, and interactive querying

Robotic manipulation modelling

The aim of this research is to develop and validate a model-based control approach for robotic manipulation of small, precise objects.

  • Develop a mathematical model of the robotic system that captures the dynamics of the manipulator and the grasped object.
  • Design a control algorithm that uses the developed model to achieve stable and accurate grasping of the object.
  • Test the proposed approach in simulation and validate the results through experiments with a physical robotic system.
  • Evaluate the performance of the proposed approach in terms of stability, accuracy, and robustness to uncertainties and perturbations.
  • Identify potential applications and areas for future work in the field of robotic manipulation for precision tasks.

Big data analytics and its impacts on marketing strategy

The aim of this research is to investigate the impact of big data analytics on marketing strategy and to identify best practices for leveraging this technology to inform decision-making.

  • Review the literature on big data analytics and marketing strategy to identify key trends and challenges
  • Conduct a case study analysis of companies that have successfully integrated big data analytics into their marketing strategies
  • Identify the key factors that contribute to the effectiveness of big data analytics in marketing decision-making
  • Develop a framework for integrating big data analytics into marketing strategy.
  • Investigate the ethical implications of big data analytics in marketing and suggest best practices for responsible use of this technology.

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Take a review of different varieties of thesis topics and samples from our website TheResearchGuardian.com on multiple subjects for every educational level.

Platforms for large scale data computing: big data analysis and acceptance

To investigate the performance and scalability of different large-scale data computing platforms.

  • To compare the features and capabilities of different platforms and determine which is most suitable for a given use case.
  • To identify best practices for using these platforms, including considerations for data management, security, and cost.
  • To explore the potential for integrating these platforms with other technologies and tools for data analysis and visualization.
  • To develop case studies or practical examples of how these platforms have been used to solve real-world data analysis challenges.

Distributed data clustering

Distributed data clustering can be a useful approach for analyzing and understanding complex datasets, as it allows for the identification of patterns and relationships that may not be immediately apparent.

To develop and evaluate new algorithms for distributed data clustering that is efficient and scalable.

  • To compare the performance and accuracy of different distributed data clustering algorithms on a variety of datasets.
  • To investigate the impact of different parameters and settings on the performance of distributed data clustering algorithms.
  • To explore the potential for integrating distributed data clustering with other machine learning and data analysis techniques.
  • To apply distributed data clustering to real-world problems and evaluate its effectiveness.

Analyzing and predicting urbanization patterns using GIS and data mining techniques".

The aim of this project is to use GIS and data mining techniques to analyze and predict urbanization patterns in a specific region.

  • To collect and process relevant data on urbanization patterns, including population density, land use, and infrastructure development, using GIS tools.
  • To apply data mining techniques, such as clustering and regression analysis, to identify trends and patterns in the data.
  • To use the results of the data analysis to develop a predictive model for urbanization patterns in the region.
  • To present the results of the analysis and the predictive model in a clear and visually appealing way, using GIS maps and other visualization techniques.

Use of big data and IOT in the media industry

Big data and the Internet of Things (IoT) are emerging technologies that are transforming the way that information is collected, analyzed, and disseminated in the media sector. The aim of the research is to understand how big data and IoT re used to dictate information flow in the media industry

  • Identifying the key ways in which big data and IoT are being used in the media sector, such as for content creation, audience engagement, or advertising.
  • Analyzing the benefits and challenges of using big data and IoT in the media industry, including factors such as cost, efficiency, and effectiveness.
  • Examining the ethical and social implications of using big data and IoT in the media sector, including issues such as privacy, security, and bias.
  • Determining the potential impact of big data and IoT on the media landscape and the role of traditional media in an increasingly digital world.

Exigency computer systems for meteorology and disaster prevention

The research aims to explore the role of exigency computer systems to detect weather and other hazards for disaster prevention and response

  • Identifying the key components and features of exigency computer systems for meteorology and disaster prevention, such as data sources, analytics tools, and communication channels.
  • Evaluating the effectiveness of exigency computer systems in providing accurate and timely information about weather and other hazards.
  • Assessing the impact of exigency computer systems on the ability of decision makers to prepare for and respond to disasters.
  • Examining the challenges and limitations of using exigency computer systems, such as the need for reliable data sources, the complexity of the systems, or the potential for human error.

Network security and cryptography

Overall, the goal of research is to improve our understanding of how to protect communication and information in the digital age, and to develop practical solutions for addressing the complex and evolving security challenges faced by individuals, organizations, and societies.

  • Developing new algorithms and protocols for securing communication over networks, such as for data confidentiality, data integrity, and authentication
  • Investigating the security of existing cryptographic primitives, such as encryption and hashing algorithms, and identifying vulnerabilities that could be exploited by attackers.
  • Evaluating the effectiveness of different network security technologies and protocols, such as firewalls, intrusion detection systems, and virtual private networks (VPNs), in protecting against different types of attacks.
  • Exploring the use of cryptography in emerging areas, such as cloud computing, the Internet of Things (IoT), and blockchain, and identifying the unique security challenges and opportunities presented by these domains.
  • Investigating the trade-offs between security and other factors, such as performance, usability, and cost, and developing strategies for balancing these conflicting priorities.

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Alliance Manchester Business School - AMBS

Business Analytics Dissertation: what to expect and how to make the most of it

  • Tuesday, June 18, 2019

Juan Felipe Alvarez

  • minute read

My academic year has been filled with numerous activities. Ever since fresher’s week started in September, there have been things going on (both academic and non-academic) and I can assure you that you will have a very intense and gratifying year as an MSc student.

Now that it's June and I have already finished with classes and exams, it is time to focus on the dissertation. I am writing this blog in order to let you know what to expect and my top tips for enjoying the experience.

Let’s start with the basics: what is a dissertation and what are the business school’s expectations? The objective of the dissertation is to provide students with an opportunity to produce an original piece of work and specialize in a particular topic of interest. The typical word count would be between 15,000 and 18,000 words, depending on the topic and needs to be developed between June and September.

The MSc in Business Analytics has a very pragmatical approach to dissertations; they do this, so you can try and solve a real-world problem with real-world data, which I think is exciting and will teach you applied problem-solving skills. You can either propose your own topic or choose to participate in one of the several ongoing research projects that the University has. If you have a very strong interest in one field and have the means to obtain the data, you can propose your own topic before February. However, most students decide to take part in the topics that are proposed by the University, like I did.

By the end of January, we received a list containing more than 60 different projects that were very diverse in terms of research field and industry. Many of them were in collaboration with companies that had proprietary datasets and were interested in analysing them thoroughly, while others dealt with publicly available datasets. In regards of the type of analysis there was plenty to choose from: text mining and natural language processing, machine learning modelling, simulation, operations research, forecasting, optimisation and decision analysis, just to mention a few. One of the ones that really caught my eye was to build a machine learning model to predict the best strategy for goalkeepers during penalty kicks.

Yoda Begun the dissertation has meme

We had to select 7 topics then rank them and the programme director would try to assign you the topic that was highest in your priority. My suggestion that will help you make an informed choice is to read very well the project description and understand what it is about. Don’t choose the dissertation topic only because the company has a well-known name. For me, it is more important to choose a type of analysis that you really like and feel comfortable doing. If you already know the supervisor, you could drop him an email asking for more information about the project and about the required skills.

You will be assigned a topic and a supervisor by the beginning of March and if you selected a topic with a company, some meetings might start taking place during the following months. It is very important to talk early to your supervisor and my tip would be to take the initiative and contact them with plenty of time. Your supervisor will help you to structure the research question, build the appropriate methodology and assess the quality of your work. Make sure you establish clear communication from the beginning in order to make your life easier. Another tip I could give you is to be ordered with your meetings and keep a minute for each one, so you can keep track of the tasks you are supposed to be doing.

After 4 hours of writing your dissertation meme

A little bit about my topic: In case you are interested, I will be working with Europe’s Largest digital healthcare providers and I will be creating a model to optimise their medicine buying strategy. I have already met the company’s representatives and I hope to be able to frame my research question in the following weeks.

In order to close, I would like to add that the dissertation might look a little bit intimidating at the beginning. I just wanted to let you know that as soon as you begin to divide the whole deliverable into smaller sub-parts, you will feel that you are making quick progress. I hope that this article would be useful to level your expectations about this topic and I wish you the best when the time comes for you to start with your dissertation.

Juan Felipe Alvarez

I'm Juan Felipe Alvarez, an MSc Business Analytics student from the class of 2019. Follow my blogs for an insight into life as a student at Alliance MBS.

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Artificial Intelligence Topics for Dissertations

Published by Carmen Troy at January 6th, 2023 , Revised On May 30, 2024

Artificial intelligence (AI) is the process of building machines, robots, and software that are intelligent enough to act like humans. With artificial intelligence, the world will move into a future where machines will be as knowledgeable as humans, and they will be able to work and act as humans.

When completely developed, AI-powered machines will replace a lot of humans in a lot of fields. But would that take away power from humans? Would it cause humans to suffer as these machines will be intelligent enough to carry out daily tasks and perform routine work? Will AI wreak havoc in the coming days? Well, these are questions that can only be answered after thorough research.

To understand how powerful AI machines will be in the future and what sort of world we will witness, here are the best AI topics you can choose for your dissertation.

You may also want to start your dissertation by requesting  a brief research proposal  from our writers on any of these topics, which includes an  introduction  to the topic,  research question ,  aim and objectives ,  literature review , and the proposed  methodology  of research to be conducted.  Let us know  if you need any help in getting started.

Check our  dissertation examples  to get an idea of  how to structure your dissertation .

Review the full list of  dissertation topics for 2022 here.

You may also be interested in technology dissertation topics , computer engineering dissertation topics , networking dissertation topics , and data security dissertation topics .

List Of The Best Dissertation Topics & Ideas On AI

  • How To Balance Transparency and Performance in Deep Learning Models
  • The Ethical Implications of AI in Algorithmic Bias and Decision-Making
  • How to Mitigate Threats and Secure Your Digital Presence Through AI
  • Natural Language Processing for Real-world Applications
  • AI in Substance Use Discovery and Development
  • The Impact of AI on the Future of Transportation
  • How to Enable Smart Cities and Connected Living
  • The Use of AI in Combating Climate Change
  • The Rise of Generative Adversarial Networks (GANs)
  • The Impact of AI on Social Media: Content Moderation and the Challenge of Misinformation
  • Can AI Achieve Artificial General Intelligence (AGI)? Exploring the Path to Human-Level Intelligence
  • The Role of AI in Scientific Discovery
  • AI for Personalised Finance
  • How to Enhance Efficiency and Optimize Logistics through AI in Supply Chain Management
  • Personalized Learning and Adaptive Teaching Systems
  • AI for Fraud Detection and Prevention
  • Automating Content Creation and the Future of News
  • The Need for Human-Centered AI Design
  • The Future of Work in the Age of AI: Automation, Upskilling, and the Evolving Job Market
  • AI and the Creative Industries: Music Composition and Film Production
  • How to Balance Innovation with Data Protection
  • Can AI Achieve Sentience? Exploring the Philosophical and Scientific Implications

Topic 1: Artificial Intelligence (AI) and Supply Chain Management- An Assessment of the Present and Future Role Played by AI in Supply Chain Process: A Case of IBM Corporation in the US

Research Aim: This research aims to find the present, and future role AI plays in supply chain management. It will analyse how AI affects various components of the supply chain process, such as procurement, distribution, etc. It will use the case study of IBM Corporation, which uses AI in the US to make the supply chain process more efficient and reduce losses. Moreover, through various technological and business frameworks, it will recommend changes in the current AI-based supply chain models to improve their efficiency.

Topic 2: Artificial Intelligence (AI) and Blockchain Technology a Transition Towards Decentralised and Automated Finance- A Study to Find the Role of AI and Blockchains in Making Various Segments of Financial Sector Automated and Decentralised

This study will analyse the role of AI and blockchains in making various segments of financial markets (banking, insurance, investment, stock market, etc.) automated and decentralised. It will find how AI and blockchains can eliminate the part of intimidators and commission-charging players such as large banks and corporations to make the economy and financial system more efficient and cheaper. Therefore, it will study the applications of various AI and blockchain models to show how they can affect economic governance.

Topic 3: AI and Healthcare- A Comparative Analysis of the Machine Learning (ML) and Deep Learning Models for Cancer Diagnosis

Research Aim: This study aims to identify the role of AI in modern healthcare. It will analyse the efficacy of the contemporary ML and DL models for cancer diagnosis. It will find out how these models diagnose cancer, which technology, ML or DL, does it better, and how much more efficient. Moreover, it will also discuss criticism of these models and ways to improve them for better results.

Topic 4: Are AI and Big Data Analytics New Tools for Digital Innovation? An Assessment of Available Blockchain and Data Analytics Tools for Startup Development

Research Aim: This study aims to assess the role of present AI and data analytics tools for startup development. It will identify how modern startups use these technologies in their development stages to innovate and increase their effectiveness. Moreover, it will analyse its macroeconomic effects by examining its role in speeding up the startup culture, creating more employment, and raising incomes.

Topic 5: The Role of AI and Robotics in Economic Growth and Development- A Case of Emerging Economies

Research Aim: This study aims to find the impact of AI and Robotics on economic growth and development in emerging economies. It will identify how AI and Robotics speed up production and other business-related processes in emerging economies, create more employment, and raise aggregate income levels. Moreover, it will show how it leads to innovation and increasing attention towards learning modern skills such as web development, data analytics, data science, etc. Lastly, it will use two or three emerging countries as a case study to show the analysis.

Artificial Intelligence Research Topics

Topic 1: machine learning and artificial intelligence in the next generation wearable devices.

Research Aim: This study will aim to understand the role of machine learning and big data in the future of wearables. The research will focus on how an individual’s health and wellbeing can be improved with devices that are powered by AI. The study will first focus on the concept of ML and its implications in various fields. Then, it will be narrowed down to the role of machine learning in the future of wearable devices and how it can help individuals improve their daily routine and lifestyle and move towards a better and healthier life. The research will then conclude how ML will play a role in the future of wearables and help people improve their well-being.

Topic 2: Automation, machine learning and artificial intelligence in the field of medicine

Research Aim: Machine learning and artificial intelligence play a huge role in the field of medicine. From diagnosis to treatment, artificial intelligence is playing a crucial role in the healthcare industry today. This study will highlight how machine learning and automation can help doctors provide the right treatment to patients at the right time. With AI-powered machines, advanced diagnostic tests are being introduced to track diseases much before their occurrence. Moreover, AI is also helping in developing drugs at a faster pace and personalised treatment. All these aspects will be discussed in this study with relevant case studies.

Topic 3: Robotics and artificial intelligence – Assessing the Impact on business and economics

Research Aim: Businesses are changing the way they work due to technological advancements. Robotics and artificial intelligence have paved the way for new technologies and new methods of working. Many people argue that the introduction of robotics and AI will adversely impact humans, as most of them might be replaced by AI-powered machines. While this cannot be denied, this artificial intelligence research topic will aim to understand how much businesses will be impacted by these new technologies and assess the future of robotics and artificial intelligence in different businesses.

Topic 4: Artificial intelligence governance: Ethical, legal and social challenges

Research Aim: With artificial intelligence taking over the world, many people have reservations about the technology tracking people and their activities 24/7. They have called for strict governance of these intelligent systems and demanded that this technology be fair and transparent. This research will address these issues and present the ethical, legal, and social challenges governing AI-powered systems. The study will be qualitative in nature and will talk about the various ways through which artificial intelligence systems can be governed. It will also address the challenges that will hinder fair and transparent governance.

Topic 5: Will quantum computing improve artificial intelligence? An analysis

Research Aim: Quantum computing (QC) is set to revolutionise the field of artificial intelligence. According to experts, quantum computing combined with artificial intelligence will change medicine, business, and the economy. This research will first introduce the concept of quantum computing and will explain how powerful it is. The study will then talk about how quantum computing will change and help increase the efficiency of artificially intelligent systems. Examples of algorithms that quantum computing utilises will also be presented to help explain how this field of computer science will help improve artificial intelligence.

Topic 6: The role of deep learning in building intelligent systems

Research Aim: Deep learning, an essential branch of artificial intelligence, utilises neural networks to assess various factors similar to a human neural system. This research will introduce the concept of deep learning and discuss how it works in artificial intelligence. Deep learning algorithms will also be explored in this study to have a deeper understanding of this artificial intelligence topic. Using case examples and evidence, the research will explore how deep learning assists in creating machines that are intelligent and how they can process information like a human being. The various applications of deep learning will also be discussed in this study.

Topic 7: Evaluating the role of natural language processing in artificial intelligence

Research Aim: Natural language processing (NLP) is an essential element of artificial intelligence. It provides systems and machines with the ability to read, understand and interpret the human language. With the help of natural language processing, systems can even measure sentiments and predict which parts of human language are important. This research will aim to evaluate the role of this language in the field of artificial intelligence. It will further assist in understanding how natural language processing helps build intelligent systems that various organisations can use. Furthermore, the various applications of NLP will also be discussed.

Topic 8: Application of computer vision in building intelligent systems

Research Aim: Computer vision in the field of artificial intelligence makes systems so smart that they can analyse and understand images and pictures. These machines then derive some intelligence from the image that has been fed to the system. This research will first aim to understand computer vision and its role in artificial intelligence. A framework will be presented that will explain the working of computer vision in artificial intelligence. This study will present the applications of computer vision to clarify further how artificial intelligence uses computer vision to build smart systems.

Topic 9: Analysing the use of the IoT in artificial intelligence

Research Aim: The Internet of Things and artificial intelligence are two separate, powerful tools. IoT can connect devices wirelessly, which can perform a set of actions without human intervention. When this powerful tool is combined with artificial intelligence, systems become extremely powerful to simulate human behaviour and make decisions without human interference. This artificial intelligence topic will aim to analyse the use of the Internet of Things in artificial intelligence. Machines that use IoT and AI will be analysed, and the study will present how human behaviour is simulated so accurately.

Topic 10: Recommender systems – exploring its power in e-commerce

Research Aim: Recommender systems use algorithms to offer relevant suggestions to users. Be it a product, a service, a search result, or a movie/TV show/series. Users receive tons of recommendations after searching for a particular product or browsing their favourite TV show list. With the help of AI, recommender systems can offer relevant and accurate suggestions to users. The main aim of this research will be to explore the use of recommender systems in e-commerce. Industry giants use this tool to help customers find the product or service they are looking for and make the right decision. This research will discuss where recommender systems are used, how they are implemented, and their results for e-commerce businesses.

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How to find artificial intelligence dissertation topics.

To find artificial intelligence dissertation topics:

  • Study recent AI advancements.
  • Explore ethical concerns.
  • Investigate AI in specific industries.
  • Analyse AI’s societal impact.
  • Consider human-AI interaction.
  • Select a topic that aligns with your expertise and passion.

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Look at some of the potential healthcare dissertation topics mentioned below to take an idea for starting your dissertation.

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2024 Theses Doctoral

Statistically Efficient Methods for Computation-Aware Uncertainty Quantification and Rare-Event Optimization

He, Shengyi

The thesis covers two fundamental topics that are important across the disciplines of operations research, statistics and even more broadly, namely stochastic optimization and uncertainty quantification, with the common theme to address both statistical accuracy and computational constraints. Here, statistical accuracy encompasses the precision of estimated solutions in stochastic optimization, as well as the tightness or reliability of confidence intervals. Computational concerns arise from rare events or expensive models, necessitating efficient sampling methods or computation procedures. In the first half of this thesis, we study stochastic optimization that involves rare events, which arises in various contexts including risk-averse decision-making and training of machine learning models. Because of the presence of rare events, crude Monte Carlo methods can be prohibitively inefficient, as it takes a sample size reciprocal to the rare-event probability to obtain valid statistical information about the rare-event. To address this issue, we investigate the use of importance sampling (IS) to reduce the required sample size. IS is commonly used to handle rare events, and the idea is to sample from an alternative distribution that hits the rare event more frequently and adjusts the estimator with a likelihood ratio to retain unbiasedness. While IS has been long studied, most of its literature focuses on estimation problems and methodologies to obtain good IS in these contexts. Contrary to these studies, the first half of this thesis provides a systematic study on the efficient use of IS in stochastic optimization. In Chapter 2, we propose an adaptive procedure that converts an efficient IS for gradient estimation to an efficient IS procedure for stochastic optimization. Then, in Chapter 3, we provide an efficient IS for gradient estimation, which serves as the input for the procedure in Chapter 2. In the second half of this thesis, we study uncertainty quantification in the sense of constructing a confidence interval (CI) for target model quantities or prediction. We are interested in the setting of expensive black-box models, which means that we are confined to using a low number of model runs, and we also lack the ability to obtain auxiliary model information such as gradients. In this case, a classical method is batching, which divides data into a few batches and then constructs a CI based on the batched estimates. Another method is the recently proposed cheap bootstrap that is constructed on a few resamples in a similar manner as batching. These methods could save computation since they do not need an accurate variability estimator which requires sufficient model evaluations to obtain. Instead, they cancel out the variability when constructing pivotal statistics, and thus obtain asymptotically valid t-distribution-based CIs with only few batches or resamples. The second half of this thesis studies several theoretical aspects of these computation-aware CI construction methods. In Chapter 4, we study the statistical optimality on CI tightness among various computation-aware CIs. Then, in Chapter 5, we study the higher-order coverage errors of batching methods. Finally, Chapter 6 is a related investigation on the higher-order coverage and correction of distributionally robust optimization (DRO) as another CI construction tool, which assumes an amount of analytical information on the model but bears similarity to Chapter 5 in terms of analysis techniques.

  • Operations research
  • Stochastic processes--Mathematical models
  • Mathematical optimization
  • Bootstrap (Statistics)
  • Sampling (Statistics)

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     Dissertation Topics on Big Data is the battle ground to combat against your discourage to get world’s praise worthy achievements. Our professionals are organized our institution by their hard work with the only main vision of serve students. We provide highly confidential and in-death research topics for students and research intellectuals from various department of information technology, computer science, electrical & electronic engineering, electrical & communication engineering. Our universal celebrated experts are maintaining our confidentiality what you expert from us. We never disclose your research and your identity to third person. If you felt about your dissertation, you can contact our organization by dint of our 24/12 experts service.

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   How do you choose Dissertation topics on Big Data ? There are many dissertation topics and the possibilities while choosing topic is almost endless. This is why choosing dissertation topic is a difficult task for researchers. Here’s we provides some steps for selecting a topics for a dissertation, you can follow these steps and make a good dissertation topic.

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The following are some Dissertation topics on Big Data which we currently working on:

  • Learning Platform for Primary school pupils
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  • Mining the Big Data

 For your every Dissertation Topics on Big Data , you need to concentrate on the following suggestions:

Data Origins

  • Sensors, Internet, Machines, etc.

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  • Programming framework, Processing framework, etc.

Data Analytics

  • Patterns in data, Decision making, Predictive Analytics, etc.

Data Consumers

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Today’s Top Dissertation Topics on Big Data :

  • Opening Up Digital Archives to Identify Sensitive Content Over the Usage of Analytics
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  • Scaling Morphological Tagging Based Character to Fourteen Languages
  • Dynamic Feature Selection and Generation for Music Recommendation on Heterogeneous Graph
  • Research on Large Scale Water Monitoring Application in Spatial-Temporal Data for Identify Dynamic Changes based on Noisy Labels
  • Evaluate Code Level Performance Tuning Impacts on Power Efficiency
  • Efficient Data Access Schemes on HPC Clusters with Heterogeneous Storage for Spark and Hadoop
  • Hierarchical and Hybrid Outlier Detection Strategy for Protect Large Scale Data
  • Rule Based Diagnosis and Hierarchical Correlation Based Performance Analysis for Big Data Paradigms
  • Analyze Data Partitioning and Data Replication Performance using BEOWULF Approach in Cloud
  • Parallel Clustering Method for Spark Paradigm Based Non-Disjoint Large Scale Data Partitioning
  • Rare Failure Events Prediction on Large Scale manufacturing and Complex Interaction Using Classification Trees
  • Labeling Actors by Integrated Information within and Through Multiple Views in Multi-View Social Networks
  • Dynamic Distributed Data Structure Using Spatial Data Mining Algorithms for Efficient Data Distribution between Cluster Nodes

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Women and children of Gaza are killed less frequently as war's toll rises, AP data analysis finds

The true toll in Gaza could have serious repercussions.

AP logo

WASHINGTON -- The proportion of Palestinian women and children being killed in the Israel-Hamas war appears to have declined sharply, an Associated Press analysis of Gaza Health Ministry data has found, a trend that both coincides with Israel's changing battlefield tactics and contradicts the ministry's own public statements.

The trend is significant because the death rate for women and children is the best available proxy for civilian casualties in one of the 21st century's most destructive conflicts. In October, when the war began, it was above 60%. For the month of April, it was below 40%. Yet the shift went unnoticed for months by the U.N. and much of the media, and the Hamas-linked Health Ministry has made no effort to set the record straight.

Israel faces heavy international criticism over unprecedented levels of civilian casualties in Gaza and questions about whether it has done enough to prevent them in an 8-month-old war that shows no sign of ending. Two recent airstrikes in Gaza killed dozens of civilians.

The AP analysis highlights facts that have been overlooked and could help inform the public debate, said Gabriel Epstein, a research assistant at the Washington Institute for Near East policy who has also studied the Health Ministry data.

The declining impact on women and children -- as well as a drop in the overall death rate -- are "definitely due to a change in the way the IDF is acting right now," Epstein said, using an acronym for the Israeli army. "That's an easy conclusion, but I don't think it's been made enough."

Omar Shakir, the Israel and Palestine director for Human Rights Watch, said his group has always found the Health Ministry's numbers to be "generally reliable" because it has direct access to hospitals and morgues.

Whatever the reason for fewer women and child being killed, Shakir said, in the grand scheme, the trend pales when compared with the war's overall devastation. "The death toll may be an undercount," he added, because many bodies are still under rubble and the war has made it difficult for the Health Ministry to comprehensively gather data.

AS THE WAR EVOLVES, A SHIFT OCCURS

When Israel first responded to Hamas' Oct. 7 attack, which killed some 1,200 people, it launched an intense aerial bombardment on the densely populated Gaza Strip. Israel said its goal was to destroy Hamas positions, and the barrage cleared the way for tens of thousands of ground troops, backed by tanks and artillery.

The Gaza death toll rose quickly and by the end of October women and people 17 and younger accounted for 64% of the 6,745 killed who were fully identified by the Health Ministry.

FILE - Palestinians search for bodies and survivors in the rubble of a residential building destroyed in an Israeli airstrike, in Rafah southern Gaza Strip, on Dec. 20, 2023.

After marching across most of Gaza and saying it had achieved many key objectives, Israel then began withdrawing most of its ground forces. It reduced the frequency of aerial bombings and has focused in recent months on smaller drone strikes and limited ground operations.

As the intensity of fighting has scaled back, the death toll has continued to rise, but at a slower rate - and with seemingly fewer civilians caught in the crossfire. In April, women and children made up 38% of the newly and fully identified deaths, the Health Ministry's most recent data shows.

"Historically, airstrikes (kill) a higher ratio of women and children compared to ground operations," said Larry Lewis, an expert on the civilian impacts of war at CNA, a nonprofit research group in Washington. The findings of the AP analysis "make sense," he said.

Another sign that Israel softened its bombing campaign: Beginning in January, there was a sharp slowdown in "new damage" to buildings in Gaza, according to Corey Scher, a satellite mapping expert at City University of New York who has monitored buildings damaged or destroyed since the war began.

DAILY DEATH TOLLS AT ODDS WITH UNDERLYING DATA

The Health Ministry announces a new death toll for the war nearly every day. It also has periodically released the underlying data behind this figure, including detailed lists of the dead.

The AP's analysis looked at these lists, which were shared on social media in late October, early January, late March, and the end of April. Each list includes the names of people whose deaths were attributable to the war, along with other identifying details.

The daily death tolls, however, are provided without supporting data. In February, ministry officials said 75% of the dead were women and children - a level that was never confirmed in the detailed reports. And as recently as March, the ministry's daily reports claimed that 72% of the dead were women and children, even as underlying data clearly showed the percentage was well below that.

Israeli leaders have pointed to such inconsistencies as evidence that the ministry, which is led by medical professionals but reports to Gaza's Hamas government, is inflating the figures for political gain.

Experts say the reality is more complicated, given the scale of devastation that has overwhelmed and badly damaged Gaza's hospital system.

Lewis said while the "beleaguered" Health Ministry has come under heavy scrutiny, Israel has yet to provide credible alternative data. He called on Israel to "put out your numbers."

HIGH CIVILIAN DEATH TOLL IS A LIABILITY FOR ISRAEL

The true toll in Gaza could have serious repercussions. Two international courts in the Hague are examining accusations that Israel has committed war crimes and genocide against Palestinians - allegations it adamantly denies.

Israel has opened a potentially devastating new phase of the war in the southern Gaza city of Rafah, where an estimated 100,000 civilians remain even after mass evacuations. How Israel mitigates civilian deaths there will be closely watched.

Israeli airstrikes in Rafah last month set off a fire that killed dozens of people, and on Thursday an airstrike on a school-turned-shelter in central Gaza killed at least 33 people, including 12 women and children, local health officials said.

Israel says it has tried to avoid civilian casualties throughout the war, including by issuing mass evacuation orders ahead of intense military operations that have displaced some 80% of Gaza's population. It also accuses Hamas of intentionally putting civilians in harm's way as human shields.

The U.N. secretary-general plans to list Israel and Hamas as violating the rights and protection of children in armed conflict in an upcoming annual report to the Security Council.

The fate of women and children is an important indicator of civilian casualties because the Health Ministry does not break out combatant deaths. But it's not a perfect indicator: Many civilian men have died, and some older teenagers may be involved in the fighting.

PARSING GAZA HEALTH MINISTRY DATA

The ministry said publicly on April 30 that 34,622 had died in the war. The AP analysis was based on the 22,961 individuals fully identified at the time by the Health Ministry with names, genders, ages, and Israeli-issued identification numbers.

The ministry says 9,940 of the dead - 29% of its April 30 total - were not listed in the data because they remain "unidentified." These include bodies not claimed by families, decomposed beyond recognition or whose records were lost in Israeli raids on hospitals.

An additional 1,699 records in the ministry's April data were incomplete and 22 were duplicates; they were excluded from AP's analysis.

Among those fully identified, the records show a steady decline in the overall proportion of women and children who have been killed: from 64% in late October, to 62% as of early January, to 57% by the end of March, to 54% by the end of April.

Yet throughout the war, the ministry has claimed that roughly two-thirds of the dead were women and children. This figure has been repeated by international organizations and many in the foreign media, including the AP.

The Health Ministry says it has gone to great lengths to accurately compile information but that its ability to count and identify the dead has been greatly hampered by the war. The fighting has crippled the Gaza health system, knocking out two-thirds of the territory's 36 hospitals, closing morgues and hampering the work of facilities still functioning.

Dr. Moatasem Salah, director of the ministry's emergency center, rejected Israeli assertions that his ministry has intentionally inflated or manipulated the death toll.

"This shows disrespect to the humanity for any person who exists here," he said. "We are not numbers ... These are all human souls."

He insisted that 70% of those killed have been women and children and said the overall death toll is much higher than what has been reported because thousands of people remain missing, are believed to be buried in rubble, or their deaths were not reported by their families.

AS DEATH TOLL RISES, THE DETAILS ARE DEBATED

To be sure, this war's death toll is the highest of any previous Israel-Palestinian conflict. But Israeli leaders say the international media and United Nations have cited Palestinian figures without a critical eye.

Israel last month angrily criticized the U.N.'s use of data from Hamas' media office - a propaganda arm of the militant group - that reported a larger number of women and children killed. The U.N. later lowered its number in line with Health Ministry figures.

Israel's foreign minister, Israel Katz, lashed out on the social platform X: "Anyone who relies on fake data from a terrorist organization in order to promote blood libels against Israel is antisemitic and supports terrorism."

AP's examination of the reports found flaws in the Palestinian record keeping. As Gaza's hospital system collapsed in December and January, the ministry began relying on hard-to-verify "media reports" to register new deaths. Its March report included 531 individuals who were counted twice, and many deaths were self-reported by families, instead of health officials.

Epstein, the Washington Institute researcher, said using different data-collection methodologies and then combining all the numbers gives an inaccurate picture.

"That's probably the biggest problem," he said, adding that he was surprised there hadn't been more scrutiny.

The number of Hamas militants killed in the fighting is also unclear. Hamas has closely guarded this information, though Khalil al-Hayya, a top Hamas official, told the AP in late April that the group had lost no more than 20% of its fighters. That would amount to roughly 6,000 fighters based on Israeli pre-war estimates.

The Israeli military has not challenged the overall death toll released by the Palestinian ministry. But it says the number of dead militants is much higher at roughly 15,000 - or over 40% of all the dead. It has provided no evidence to support the claim, and declined to comment for this story.

Shlomo Mofaz, director of Israel's Meir Amit Intelligence and Terrorism Information Center, said such estimates are typically based on body counts, battlefield intelligence and the interrogations of captured Hamas commanders.

Mofaz, a former Israeli intelligence officer, said his researchers are skeptical of the Palestinian data.

In previous conflicts, he said his researchers found numerous "inconsistencies," such as including natural deaths from disease or car accidents among the war casualties. He expects that to be the case this time as well. The large number of unidentified dead raises further questions, he said.

Michael Spagat, a London-based economics professor who chairs the board of Every Casualty Counts, a nonprofit that tracks armed conflicts, said he continues to trust the Health Ministry and believes it is doing its best in difficult circumstances.

"I think (the data) becomes increasingly flawed," he said. But, he added, "the flaws don't necessarily change the overall picture."

Fenn contributed from New York. AP correspondents Julia Frankel in Jerusalem, Najib Jobain in Cairo and Lujain Jo in Beirut, Lebanon, also contributed to this report.

The image provided by U.S, Central Command shows military members placing the Trident Pier on the coast of Gaza Strip on May 16, 2024.

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