How to become a Data Scientist

Becoming a Data Scientist is an in-demand career path. It requires deep expertise in Data Science and a strong network to carry you along. Here are some resources to help you on your journey.

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Why should you become a 
Data Scientist?

Data Scientist

Demand for experts in Data Science is growing rapidly. Companies are looking for people with deep expertise in the field of Data Science to help them build their products and services.

As a result, Data Scientists are in high demand and command high salaries. According to leading sources, the median salary for a Data Scientist is $120,000 and a senior Data Scientist can earn up to $140,000. Even entry-level positions can command great salaries.

No wonder that interest in a career in Data Science is growing rapidly. Explore the resources below to learn more about how to become a Data Scientist.

Best books to build Data Science understanding.

A well-written and thorough book can be an amazing path to build deeper understanding and also act as a handbook as you discover the internet's vast resources.

These are our and our experts top picks to get started building career-relevant skills.

Python Data Science Handbook

Python Data Science Handbook

For many researchers, Python is a first-class tool mainly because of its libraries for storing, manipulating, and gaining insight from data. Several resources exist for individual pieces of this data science stack, but only with the Python Data Science Handbook do you get them all—IPython, NumPy, Pandas, Matplotlib, Scikit-Learn, and other related tools.

Introduction to Statistical learning

Introduction to Statistical learning

ISL is a fundamental book and popular amongst undergrad and grad students for its clarity and simplicity with explaining concepts. The math required to understand the book is kept to a minimum, making it unique in its format.

Head First Statistics

Head First Statistics

Whether you're a student, a professional, or just curious about statistical analysis, Head First's brain-friendly formula helps you get a firm grasp of statistics so you can understand key points and actually use them. Learn to present data visually with charts and plots; discover the difference between taking the average with mean, median, and mode, and why it's important; learn how to calculate probability and expectation; and much more.

R for Data Science

R for Data Science

This book will teach you how to do data science with R: You’ll learn how to get your data into R, get it into the most useful structure, transform it, visualise it and model it. In this book, you will find a practicum of skills for data science.

Just as a chemist learns how to clean test tubes and stock a lab, you’ll learn how to clean data and draw plots—and many other things besides.

Statistics for Data Scientists

Statistics for Data Scientists

Statistical methods are a key part of data science, yet very few data scientists have any formal statistics training. Courses and books on basic statistics rarely cover the topic from a data science perspective. This practical guide explains how to apply various statistical methods to data science, tells you how to avoid their misuse, and gives you advice on what's important and what's not.

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Courses to deepen your Data Science skills.

These days, courses are no longer a sequence of videos. They are usually accompanied by projects and a learning community, keeping you accountable and on the path.

Our experts recommend these courses, from free selections to paid programs.

Fast.ai

Fast.ai

With the motto "making neural nets uncool again", fast.ai is a straight-to-the-point practical (and free!) course that is valued by Machine Learning enthusiasts and engineers worldwide. Fast.ai comes with a community, many practical projects and great content.

MIT Open: Linear Algebra

MIT Open: Linear Algebra

Math is the foundation of Machine Learning and much needed if you need to work on the inner logic of its systems. Senior engineers are encouraged to propose and submit their own papers – and getting your LinAlg back in order is a must for that.

Data Science A-Z

Data Science A-Z

Learn Data Science step by step through real Analytics examples. Data Mining, Modeling, Tableau Visualization and more!

Successfully perform all steps in a complex Data Science project, read statistical software output for created models and receive professional step-by-step coaching in the space of Data Science

Harvard Online Data Science

Harvard Online Data Science

To become an expert data scientist you need practice and experience. By completing this course you will get an opportunity to apply and gain knowledge in R data analysis. This final project will test your skills in data visualization, probability, inference and modeling, data wrangling, data organization, regression, and machine learning.

Machine Learning A-Z™

Machine Learning A-Z™

Kirill Eremenko's course on Udemy is a classic with almost a million (!) students worldwide. A-Z takes you from a bit of coding knowledge to making your own predictions and building ML models pretty swiftly. At prices between $10 - $20 it's also cheaper than many alternatives.

Lex Fridman's MIT Deep Learning

Lex Fridman's MIT Deep Learning

Lex Fridman is the instructor of an immensely popular and fundamental Deep Learning course at MIT. Together with the other MIT AI courses, this can help polish your skills and get the foundations right.

Get the guidance you need to become a Data Scientist

There is no better source of accountability and motivation than having a personal mentor. What used to be impossible to find is now just two clicks away! All mentors are vetted & hands-on!

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Govind has been working in data science consulting industry for 9+ years and has solved industry problems through building scalable machine learning solutions across multiple domains :- Insurance, banking, telecom and healthcare. He has helped mentees landing their first data science jobs or transition into new roles.

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Data analytics/science manager with technology (eBay, Facebook, Blockchain), consulting (Big Four), enterprise (Morgan Stanley, The World Bank, Altria) and tech startup experience: ● Domain knowledge: fintech, e-commerce, marketplace, social networking ● Extensive managerial and business domains experience ● Tools: SQL, Python, Tableau, R ● INSEAD MBA (no.1 according to Financial …

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Hello! As an established data scientist with 5+ years experience, I've extensively navigated the realms of machine learning and advanced analytics, delivering end-to-end solutions with real-world impact in various sectors. Earlier in my career, I went through my own transition from non-tech marketing analyst to full stack data scientist. The …

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Hello! Check my video first 🙂 I’m a research scientist with a deep-seated passion for making sense of data and a flair for solving complex puzzles in AI 💛. With over 8 years in the field, I’ve tackled challenges in cybersecurity, biology, healthcare, and even manufacturing, transforming data into actionable …

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With an extensive 13-year career in the world of data analytics and data science, I am an accomplished Lead Data Scientist currently spearheading initiatives at Amazon. My career is marked by a deep and persistent dedication to leveraging data to derive actionable insights and build data-driven solutions. After obtaining a …

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As a data scientist with an enriching experience of 10 years, I am skilled in leading analytic practices and methods, designing and leading iterative development and learning cycles, and ultimately producing new and creative analytic solutions that become part of the enterprise. Specializing in Python, SQL, Tableau, SAS & R …

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The Data Science must-reads you shouldn't miss.

Key articles and posts of industry experts can help you get a better picture of what you are getting into.

In our opinion, these are some must-reads you really shouldn't miss.

Simple Reinforcement Learning with Tensorflow

This 8-part series by Arthur Juliani (Deep RL researcher at Unity) is an amazing entry point to the new and mysterious advancements of Reinforcement Learning, perfectly suited for folks coming from other topics in Machine Learning.

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Karpathy on "Software 2.0"

Andrej Karpathy is the Director of AI at Tesla. Before that, though, he authored this blog post in 2017 talking about Deep Learning as "Software 2.0" of some sort. A must-read if you ever want to have another way of thinking about ML.

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Opportunities and projects in the Data Science space.

In the end, advancing your career is all about getting the right opportunities at the right time and a good portion of luck.

These are some interesting things going on in the Data Science space and you probably don't want to miss them.

Specialize with Kaggle

It wouldn't be the first time I've seen someone get hired over good Kaggle results! Kaggle competitions are data science and ML projects that are graded through a public leaderboard. A good place on the leaderboard shows that you know your craft and can apply your knowledge to real-life problems!

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Get into open-source

The world thrives on open-source software and this is no exception. Core contributors to core libraries and fast-growing tech like React, scikit-learn, Bitcoin and TensorFlow prove their abilities by going into the inner workings of a framework to improve it. For many companies, that's a desirable skill!

These projects are always looking for fresh faces. Grab an issue from the issue board or review a PR to get started!

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Tips from the Data Science blog

Learn more about Data Science with our expert advice.

Regex 101 For Data Scientists

Understanding the basics of regular expressions is essential for any data scientist. In this blog post, we'll cover the fundamentals of regex and how to use them in data science applications.

Physicist Turned Data Scientist I: A Path from Academia to Industry

This is my personal story on transitioning from academia as a Physicist to industry as a Data Scientist. If you are on the same boat and want to know the process and every step in the way, this note is for you. I hope you enjoy and find it useful for your career growth.

How to become a self-taught Data Scientist

Data Science is one of the most trending career paths right now, but it’s also one of the most competitive ones to get into. With hundreds of master students and PhDs entering the workforce every year, career changers and starters may get discouraged.

Still not convinced?
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We’ve already delivered 1-on-1 mentorship to thousands of students, professionals, managers and executives. Even better, they’ve left an average rating of 4.9 out of 5 for our mentors.

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  • "Naz is an amazing person and a wonderful mentor. She is supportive and knowledgeable with extensive practical experience. Having been a manager at Netflix, she also knows a ton about working with teams at scale. Highly recommended."

  • "Brandon has been supporting me with a software engineering job hunt and has provided amazing value with his industry knowledge, tips unique to my situation and support as I prepared for my interviews and applications."

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