---
product_id: 113758849
title: "Data Science from Scratch: First Principles with Python"
price: "€ 78.60"
currency: EUR
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reviews_count: 10
url: https://www.desertcart.pt/products/113758849-data-science-from-scratch-first-principles-with-python
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region: Portugal
---

# Data Science from Scratch: First Principles with Python

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Review: The BEST book for learning how many data science functions work under the hood - START HERE! - Did you see something on the news about ChatGPT, Stable Diffusion, or some other big development that made you want to look into machine learning? Maybe you truly plan on entering data science as a field but don't know where to start? Or perhaps you've seen one of the author's brilliant/hilarious talks about why he doesn't like Jupyter Notebooks or how to answer the infamous "FizzBuzz" programming interview question using Tensorflow neural networks (seriously, look up Joel Grus on YouTube). If you know a little bit of Python, a little bit of relevant math, and want to go into any data science or machine learning path, then this book is a must-have. It certainly won't be the only resource you'll need, but it helps you get the most out of other content you'll likely look into later (like how to code up a machine learning pipeline, or maybe a large language model if you're really adventurous). Far too many machine learning lessons out there just tell you to import certain Python libraries (scikit-learn for example) and start using them without giving you any basic understanding of how those imported functions even work to begin with. Even to this day there are still college courses and coding bootcamps that ask you to download a Jupyter Notebook file and just hit "Shift + Enter" and look at the output. You're not going to learn how to code that way!!! Joel Grus does an excellent job of filling in this gap by teaching you more Python than what a statistics professional would usually know and more math than what a typical software developer would know. And that's key if you want to go into a field that relies on both. All the information for Python and math that you need to get started is here. It's 27 chapters that get you familiar with Python and how to use it, as well as the math used in data science and ML (linear algebra, probability and statistics, algorithms, etc). You eventually learn enough of both as you go through the chapters to start applying what you learn for some real-world usage. I've had this book for years and it's still as useful as when it first came out, but the only exception I've seen is that the Twitter API tutorial in the book no longer applies to the paid format that Twitter now uses to access that feature. The tutorial is still good for learning how API's get put to use. Once you've read this book and have gotten familiar with all it has to offer, your next step will probably involve looking into a book about how to actually use pre-built data science libraries (like what you find in the Anaconda distribution of Python). This book may turn out to be heavily responsible for my first startup, but that's a story for later.
Review: Amazing introduction to Data Science - Let me start this review by explaining clearly who this book is for: anyone who has had some form of introduction (even if concise) to programming in Python, algebra, statistics, and probability will find this book a great introduction to Data Science. While the author does a great job at having a crash course on these topics (and I even learned a thing or two here and there), I can see the contents being a bit overwhelming if this is your first point of contact with these subjects. However, should you meet the requirements I mentioned above, you'll find this book a breeze! Joel does a good job at explaining the topics using his signature brand of humor, keeping the read entertaining even in the most advanced areas. I'd even say that this is a must read if you are considering going into machine learning, since it teaches you a thing or two in the topic as well. Please keep in mind that the book is monochrome. If that bothers you, consider viewing the electronic version. TLDR: If you're looking for a concise introduction to data science and have a bit of knowledge of basic Python, algebra, statistics and probability, look no further than this book! Otherwise, come back once you've picked up those tools and you'll feel right at home :)

## Technical Specifications

| Specification | Value |
|---------------|-------|
| Best Sellers Rank | #70,293 in Books ( See Top 100 in Books ) #17 in Data Processing #19 in Data Mining (Books) #39 in Python Programming |
| Customer Reviews | 4.4 4.4 out of 5 stars (774) |
| Dimensions  | 6.9 x 0.9 x 9.1 inches |
| Edition  | 2nd |
| ISBN-10  | 1492041130 |
| ISBN-13  | 978-1492041139 |
| Item Weight  | 1.57 pounds |
| Language  | English |
| Print length  | 403 pages |
| Publication date  | June 11, 2019 |
| Publisher  | O'Reilly Media |

## Images

![Data Science from Scratch: First Principles with Python - Image 1](https://m.media-amazon.com/images/I/812I0mhF0DL.jpg)

## Customer Reviews

### ⭐⭐⭐⭐⭐ The BEST book for learning how many data science functions work under the hood - START HERE!
*by C***T on April 17, 2023*

Did you see something on the news about ChatGPT, Stable Diffusion, or some other big development that made you want to look into machine learning? Maybe you truly plan on entering data science as a field but don't know where to start? Or perhaps you've seen one of the author's brilliant/hilarious talks about why he doesn't like Jupyter Notebooks or how to answer the infamous "FizzBuzz" programming interview question using Tensorflow neural networks (seriously, look up Joel Grus on YouTube). If you know a little bit of Python, a little bit of relevant math, and want to go into any data science or machine learning path, then this book is a must-have. It certainly won't be the only resource you'll need, but it helps you get the most out of other content you'll likely look into later (like how to code up a machine learning pipeline, or maybe a large language model if you're really adventurous). Far too many machine learning lessons out there just tell you to import certain Python libraries (scikit-learn for example) and start using them without giving you any basic understanding of how those imported functions even work to begin with. Even to this day there are still college courses and coding bootcamps that ask you to download a Jupyter Notebook file and just hit "Shift + Enter" and look at the output. You're not going to learn how to code that way!!! Joel Grus does an excellent job of filling in this gap by teaching you more Python than what a statistics professional would usually know and more math than what a typical software developer would know. And that's key if you want to go into a field that relies on both. All the information for Python and math that you need to get started is here. It's 27 chapters that get you familiar with Python and how to use it, as well as the math used in data science and ML (linear algebra, probability and statistics, algorithms, etc). You eventually learn enough of both as you go through the chapters to start applying what you learn for some real-world usage. I've had this book for years and it's still as useful as when it first came out, but the only exception I've seen is that the Twitter API tutorial in the book no longer applies to the paid format that Twitter now uses to access that feature. The tutorial is still good for learning how API's get put to use. Once you've read this book and have gotten familiar with all it has to offer, your next step will probably involve looking into a book about how to actually use pre-built data science libraries (like what you find in the Anaconda distribution of Python). This book may turn out to be heavily responsible for my first startup, but that's a story for later.

### ⭐⭐⭐⭐⭐ Amazing introduction to Data Science
*by G***I on May 15, 2020*

Let me start this review by explaining clearly who this book is for: anyone who has had some form of introduction (even if concise) to programming in Python, algebra, statistics, and probability will find this book a great introduction to Data Science. While the author does a great job at having a crash course on these topics (and I even learned a thing or two here and there), I can see the contents being a bit overwhelming if this is your first point of contact with these subjects. However, should you meet the requirements I mentioned above, you'll find this book a breeze! Joel does a good job at explaining the topics using his signature brand of humor, keeping the read entertaining even in the most advanced areas. I'd even say that this is a must read if you are considering going into machine learning, since it teaches you a thing or two in the topic as well. Please keep in mind that the book is monochrome. If that bothers you, consider viewing the electronic version. TLDR: If you're looking for a concise introduction to data science and have a bit of knowledge of basic Python, algebra, statistics and probability, look no further than this book! Otherwise, come back once you've picked up those tools and you'll feel right at home :)

### ⭐⭐⭐⭐ Good book for startes on AI/ML
*by V***A on December 26, 2020*

Good book for someone starting on learning basics of AI/ML

## Frequently Bought Together

- Data Science from Scratch: First Principles with Python
- Essential Math for Data Science: Take Control of Your Data with Fundamental Linear Algebra, Probability, and Statistics
- Python for Data Analysis: Data Wrangling with pandas, NumPy, and Jupyter

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*Last updated: 2026-04-25*