TechTarget
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What is a Data Scientist? What Do They Do?
A data scientist collects, analyzes and interprets data to transform it into actionable insights for organizational decision-making. Learn more here.
What do data scientists actually do on their day-to-day?
Drinking coffee, checking reddit and stackoverflow, being in meetings. Joking aside, there is a flaw with your question, and that is that you assume that all data scientists do the same tasks, or have even moderately similar day-to-days. Put differently: you just asked the equivalent of "what do lawyers actually do in their day to day?" I imagine that your day to day looks very different if you're a litigator vs. an IP attorney, vs. an international tax law attorney vs. a forensic attorney vs. a constitutional law attorney. The same is true for data science, but with maybe even looser boundaries. To oversimplify the world, I would say there are going to be 4 types of tasks that data scientists do on some regular cadence: Research: you will have to read up on different ways to solve problems, or different tools/technologies that you can use, or how to tackle specific modeling issues, or how to call a function, etc. It can be as quick as a 5 minute read on a new package in Python, or as long as several weeks to do a comprehensive literature review on modeling methods. Code: once you somewhat know what you have to do, you have do it. Normally you will start by identifying the data that you will need, scoping it, examining it, cleaning it, looking at it some more, do some basic analysis on it, clean it some more, do more advanced analysis, clean it again, put it in a nice format for modeling, more cleaning, and then code up some type of model. Then you clean the data some more, tune your model, debug it, clean, tune, debug, debug debug debug debug debug debug, look at results, they don't make sense, debug debug debug debug debug debug, hey that looks like something that makes sense, oh wait, no, debug debug debug, ok, that looks reasonable. Communicate results: you now have results and you need to convince someone in the organization that those results are good, and that those results are useful. Discuss how to make data science work usable by the organization: once you are able to convince key people that your work is useful, you will need to work with other people across the organization to execute your work in a way that actually drives better outputs. Your usual suspects will be your enterprise development team, a project manager/management team, and the lead business unit responsible for the process that you are working on improving. More on reddit.com
What do data scientists do anyway?
I do build "AI products". That's more like well established machine learning algorithms though - word embeddings with a CNN for text clarification, for example. A lot of the job is setting up the service configuration to run on a kubernetes cluster, setting up alerts and responding to them. Then there's hearing back from stakeholders and tweaking things here and there in the code. Some would maybe call my role data engineering, and maybe that's what you should look for. I can say for myself that I wanted to work with "machine learning products" and I like it very much today. More on reddit.com
What does a data scientist actually do?
A data scientist’s daily work usually includes cleaning and analyzing data, building models, and turning results into useful insights. Some tasks overlap with AI tools, but most of the job is about finding patterns in data and explaining them clearly, not building complex systems like neural networks or NLP models from scratch. If you want to go deeper into AI or machine learning, starting with the basics is really important. A structured course like this article explains the fundamentals step by step, with hands-on exercises that help build a strong foundation before moving into areas like computer vision or NLP. More on reddit.com
Someone explain me what data science is in your own words.
Here's how I think of it: Data Science: using data from the past to try to answer questions about the future. IE based on past performance, what is likely to happen if we do x? Data Analysis: Based on past and current data, what has happened or what is happening? Data Engineering: WHERE'S MY DAMN DATA?!? YOU PROMISED ME A PIPELINE OF CLEAN DATA 6 MONTHS AGO! Why do I even pay you? The DS and DA could do it themselves much quicker. (Grumbling continues...) More on reddit.com
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Microsoft Azure
azure.microsoft.com › en-in › resources › cloud-computing-dictionary › what-is-data-science
What is Data Science? Become a Data Scientist | Microsoft Azure
... The data scientist builds and trains prescriptive or descriptive models, then tests and evaluates the model to make sure it answers the question or addresses the business problem. At its simplest, a model is a piece of code that takes an input and produces output.
Intuit
intuit.com › home › what is a data scientist?
What is a Data Scientist, and What Do They Do? - Intuit Blog
October 24, 2025 - Statistical knowledge and machine learning: From A/B testing to building recommendation systems, data scientists use statistics and algorithms to spot trends and make predictions. Data visualization: Communicating findings clearly matters just as much as the math behind them. Tools like Tableau, Power BI, matplotlib, and Seaborn help turn raw numbers into visuals that tell a compelling story.
AWS
aws.amazon.com › what is cloud computing? › cloud computing concepts hub › analytics › what is data science?
What is Data Science? - Data Science Explained - AWS
1 week ago - A data analyst may spend more time ... Simply put, a data analyst makes sense out of existing data, whereas a data scientist creates new methods and tools to process data for use by analysts....
Northeastern University
graduate.northeastern.edu › home › what does a data scientist do?
What Does a Data Scientist Do? - Role & Responsibilities
January 10, 2025 - Data scientists work closely with ... to achieve those goals. They design data modeling processes, create algorithms and predictive models to extract the data the business needs, and help analyze the data and share meaningful insights with peers....
IBM
ibm.com › think › topics › data-science
What is Data Science? | IBM
May 14, 2026 - Data scientists also gain proficiency in using big data processing platforms, such as Apache Spark, the open source framework Apache Hadoop and NoSQL databases. They are also skilled with a wide range of data visualization tools, including simple graphics tools included with business presentation and spreadsheet applications (such as Microsoft Excel).
TechGig
content.techgig.com › home › career advice
What is Data Science in Simple Words? A Beginner’s Guide
1 week ago - Data Scientist → Builds models and forecasts the future · Machine Learning Engineer → Deploys these models into real-world systems · Tools of the trade: Python, R, SQL, and libraries like Pandas, Scikit-learn, and PyTorch. You can check TechGig for free resources, internships related to tools and new skills. So, what is data science in simple words?
Springboard
springboard.com › blog › data science › what does a data scientist do? [2025 career guide]
What Does a Data Scientist Do? [2025 Career Guide]
On the business side, they wok on LTV and retention modelling, marketing attribution, and sales forecasting. Roger Smeets @ Studocu · In simple terms, a data scientist analyzes large datasets to produce high-impact, actionable insights.
Published January 27, 2025
iSchool
ischool.syracuse.edu › home › articles
What Does a Data Scientist Do? Tasks, Skills & Career Paths
November 27, 2025 - A data scientist at a startup might wear multiple hats, building dashboards, writing SQL queries, and occasionally training a model. At a tech giant like Amazon, the same title could mean working only on deep learning for recommendation systems while other teams manage infrastructure.