Data Science vs. Statistics (2024)

Data Science vs. Statistics (1)

The fields of data science and statistics have many similarities. Both focus on extracting data and using it to analyze and solve real-world problems.

Data scientists use statistical analysis. However, data scientists need to be familiar with statistics, among other areas.In some cases, people with a background or education in statistics can gain additional knowledge througha degree programor job training and begin a data science career.

The similarities may make it seem like data science and statistics are different names for the same professional specialization; that is not the case. Data science is a multidisciplinary field that requires skills in programming, computer science, machine learning and creating algorithms.

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Basic Concepts

Data science involves the collection, organization, analysis and visualization of large amounts of data. Statisticians, meanwhile, use mathematical models to quantify relationships between variables and outcomes and make predictions based on those relationships. Statisticians do not use computer science, algorithms or machine learning to the same degree as computer scientists.

The basic concepts of each specialty can further illustrate the similarities and differences between data science and statistics.

Data Science

Data scientistssource, organize, extract and analyze data with the goal of addressing specific problems or answering questions. They focus on creating systems that perform these analyses and produce useful results. Data scientists involved with big data use immense amounts of information. Their role includes finding ways to extract relevant data from information warehouses.

Data scientists work with different types of companies. Some analyze data to provide insights that help businesses make decisions. They can also create systems that automate decision making. For example, a data scientist designed a system that collects data from your video viewing history and uses it to make personalized recommendations on Netflix.

In this way, data scientists are more focused on areas such as machine learning and computer science than statisticians. They are also involved in the creation and use of data systems, whereas statisticians focus more on the equations and mathematical models that they use for their analysis.

Because of its focus on computers and databases, many people consider data science a branch of computer science.

Statistics

The main focus of statisticians is using mathematical and statistical models to analyze data.

Like data science, statistics have a broad range of applications. Also, like data scientists, statisticians collect information and use it to perform analyses. Their focus is on analyzing data to provide answers and insights that can inform decision-making.

Statisticians use mathematical equations and statistical models to analyze data and arrive at conclusions.Though they may work on different subjects and with different sets of data, a statistician uses math to perform quantitative analysis.

Informing decision-making is a goal that data science and statistics share. The difference between these two specialties is the way that they handle that information to inform decision-making.

Career Options

Data scientists and statisticians can work in a variety of fields.Demand for computer and information research scientists, which includes data scientists, is spiking as more companies and organizations begin looking to big data to make better decisions and improve operations.

Data Science

  • Data analystsare often entry-level workers in the field of data science. They may have a bachelor’s ormaster’s degree in data scienceor a related field. A data analyst focuses specifically on analyzing data using the tools and methods that a data scientist develops. In many cases, a data analyst is an entry-level employee who wants to gain experience and become a full-fledged data scientist.
  • Data scientistscombine analysis with algorithm creation, machine learning, data mining, and warehousing. In this career, your job duties include ensuring that the entire data pipeline, from data mining operations to finished algorithm or visualization of analysis results, meets the requirements of each project.
  • Data engineerscreate the infrastructure that handles all the data for data scientists. In this career, you manage the nuts and bolts of the data pipeline. You code tools that extract data from warehouses, or your build databases to store relevant information. Data engineers can also troubleshoot when problems arise with databases.
  • Abusiness intelligence analystwith a background in data science can use their expertise to analyze business data and come up with data-driven solutions for strategic and operational issues. Their analysis can also help with decisions related to marketing, human resources, employee training and competitor activities.

Statistics

  • Statisticiansprovide analysis using mathematical models and statistical equations. In this career, you select and analyze data after choosing the proper approach for your study. Your goal is to identify patterns and trends and use them to define relationships and make predictions. Statisticians can work for companies, health care providers, governments, financial institutions and in academic settings.
  • Public health statisticiansuse statistical analysis to make predictions and study public health issues from a mathematical perspective. They can examine health data to find patterns for the spread of illnesses and diseases and define the need for health education or health care services within a community.
  • Econometricianswork in the financial industry. They use statistics to make forecasts about economic growth and to calculate and manage risk. In addition to a degree in statistics or related subjects, econometricians need to know about economics and finance. They may have studied these subjects at the undergraduate or graduate level.

Skill Sets

Manystatistics and data science careersrequire a master’s degree in a relevant field. In addition to technical knowledge (also known as hard skills), professionals in these fields need specific soft skills and personal traits to succeed.

Data Science

Data scientists typically need a degree in data science or a related field.

  • Because they work with databases, data scientists need knowledge of relevant computer languages, such as R, SQL, Python, C++, or Java.
  • This career also requires knowledge of statistical analysis and mathematics.
  • A degree or experience in computer science can give data science professionals the necessary hard skills to manipulate data and write codes and algorithms.
  • Data scientists need to have the skills to work with algorithms. They can gain this experience by studying mathematics, machine learning and artificial intelligence.
  • In data science, you need strong analytical skills. You must analyze data, define problems and questions to address during a study, and come up with methods that give you the data to answer the question.
  • Data scientists work as part of a team with analysts, programmers, data engineers and administrators. You need to be able to work and communicate effectively with these other team members.
  • Problem-solving skills are vital for data scientists. In addition to using these abilities to answer the relevant questions during projects, you also need to be able to adjust your plan and solve technical and algorithmic problems.

Statistics

Statisticians need a degree or equivalent experience in statistics or mathematics.

  • Mathematical skills are essential for statisticians. Your job requires the ability to perform complex calculations and also to select the proper methods for a given project. In addition to understanding statistics, you need to know calculus, linear algebra and probability.
  • Some statisticians need to know computer programming languages such as Python. These languages can help create tools to streamline your statistical analysis.
  • Visualization and reporting programs are helpful for presenting your findings to decision-makers. Often, statistics professionals need to explain their conclusions in a way non-experts will understand.
  • Communication skills are also vital. Not only do statisticians need to present their findings, but they may also need to work with other team members who are sourcing data or performing analysis. Additionally, statisticians need to work with professionals in the area they are analyzing to define problems and come up with relevant variables.
  • Organization skills are vital as well. One mistake in a statistical model could produce flawed results that could damage an entire project.

Real-World Applications

Both data science and statistics have a wide range of applications. However, the concepts that drive these types of analyses can seem abstract to people who are not familiar with them.

Here are some real-world examples of data science and statistics in action.

Data Science

  • Data scientists can use real-time data to improve traffic safety. By collecting data on traffic, incidents and vehicle flows, data scientists can help find patterns of movement or behavior that lead to accidents. Once they define these causes, transportation authorities can address those variables that cause the most accidents.
  • Data science is also prevalent in e-commerce. Companies use customer data and viewing history to recommend relevant products to consumers. Data scientists are behind the artificial intelligence systems that make such recommendations.
  • Data scientists can also work on systems in health care. For example, wearable devices can provide data a medical professional can use to assess a person’s condition and get an early warning about potential health problems. Data scientists can create systems for reading and organizing this information in a way that provides relevant information to physicians.

Statistics

  • Statisticians can create models that provide accurate weather forecasts. Statistics experts use past weather data to develop models that can predict weather conditions. While not perfect, these systems are often remarkably precise for predicting weather patterns.
  • Statisticians are often behind decisions to launch public health initiatives. Public health officials receive reports from statisticians that show the prevalence of disease or issues in a specific area or demographic group. They then focus on prevention and education efforts in these areas.
  • At sporting events, you often see statistics for players and teams. These stats come from past performance in similar situations or conditions. Athletes and teams may even employ statisticians to help with decisions during competitions.
Data Science vs. Statistics (2024)

FAQs

Data Science vs. Statistics? ›

In general, statistics is the study of numerical or quantitative data to make predictions or draw conclusions about a population. Data science is an applied subset of statistics that uses statistical methods to analyze large amounts of data and understand the results better.

Is it better to study data science or statistics? ›

Industry applications: The industries like healthcare, finance, and technology that deal with predictive modeling and machine learning leverage Data Science, while academics, traditional research disciplines, and social sciences require statistics.

Which is better, statistician or data scientist? ›

In this way, data scientists are more focused on areas such as machine learning and computer science than statisticians. They are also involved in the creation and use of data systems, whereas statisticians focus more on the equations and mathematical models that they use for their analysis.

Is data science just glorified statistics? ›

You do not necessarily need to use a computer to do statistics, but you cannot really do data science without one. You can once again see that although data science uses statistics, they are clearly not the same.

Which is better, applied statistics or data science? ›

Data science aims to make accurate predictions of future behaviors and patterns in a given market or industry. Applied statistics is still crucial to solving many real-world problems and drawing essential conclusions for businesses and organizations.

Can a statistician become a data scientist? ›

Yes, a statistician can certainly become a data scientist. While the transition may require learning new skills and adapting to new ways of thinking, the rewards can be significant.

Is data science more math or coding? ›

Overall, while both fields are interdisciplinary and overlap in some areas, data science majors tend to focus on the practical application of math to solve real-world problems, while applied mathematics majors tend to focus more on the theoretical foundations of math.

Is data science a dead field? ›

Overall, Data Science is still a thriving field, and its importance will continue to grow as AI continues to advance. The role of data scientists will shift towards being more strategic and focused on the domain knowledge and mathematical foundations of algorithms.

Is data science becoming obsolete? ›

It's difficult to foresee the future with absolute confidence, but it's reasonable to assume that data science will keep developing and changing to accommodate new technology. As more sectors adopt digital transformation and data-driven strategies, there will probably always be a need for qualified data scientists.

Why data science is overhyped? ›

The Overhyped Trend Debate:

They argue that amidst the data deluge, businesses may struggle to derive actionable insights from vast datasets. Moreover, concerns about data privacy and ethical implications raise questions about the ethical use of data science.

Is a master's in statistics worth it for data science? ›

By obtaining a master's degree in statistics, you can advance from being a data analyst (analyzing and interpreting data) to a data scientist (using data to explore unknowns). This change in title comes with the added benefit of a higher salary. Data scientists visualize, interpret and make data useful.

Is data science worth getting into? ›

The demand for data scientists is extremely high, according to the US Bureau of Labor Statistics. Data scientist openings are expected to grow 36 percent between 2021 and 2031 [2].

Which is more better AI or data science? ›

Whether data science or artificial intelligence (AI) is "better" depends on specific goals and contexts. Data science involves analyzing and interpreting complex data to make informed decisions, while AI focuses on creating machines or systems that can perform tasks requiring human intelligence.

Is math or statistics more important for data science? ›

Math is an important part of data science. It can help you solve problems, optimize model performance, and interpret complex data that answer business questions. You don't need to know how to solve every algebraic equation—Data Scientists use computers for that.

Is statistics hard in data science? ›

Mathematics and Statistics: A strong foundation in statistics is crucial for understanding data analysis techniques and machine learning algorithms. This can be challenging for those who have a quantitative background. Programming: Learning programming languages like Python or R is essential.

Is statistics harder than computer science? ›

The short answer: Yes, computer science is hard.

But… so are statistics, calculus, biology, English literature, social media marketing, and psychology. There's no such thing as an easy subject. There are only people who make it look easy, and people who don't.

What is the difference between statistics major and data science major? ›

Statistics is a mathematically-based field which seeks to collect and interpret quantitative data. In contrast, data science is a multidisciplinary field which uses scientific methods, processes, and systems to extract knowledge from data in a range of forms.

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