explaingit

kailashahirwar/cheatsheets-ai

Analysis updated 2026-06-24

15,401Audience · dataComplexity · 1/5LicenseSetup · easy

TLDR

Collection of single-page visual cheat sheets for machine learning and deep learning. Covers TensorFlow, Keras, Numpy, Pandas, Scikit-learn, and more.

Mindmap

mindmap
  root((cheatsheets-ai))
    Inputs
      Library names
      Topic queries
    Outputs
      PDF cheat sheets
      Combined PDF
      Reference images
    Use Cases
      Quick syntax lookup
      Study aid
      Interview prep
    Tech Stack
      Python
      TensorFlow
      Pandas
      Scikit-learn
Click or tap to explore — scroll the page freely

Code map

Detail Auto

An interactive map of this repo's files and how they connect — its source is parsed live in your browser. Click Visualize to build it.

filefunction / class

What do people build with it?

USE CASE 1

Keep a printable cheat sheet next to your keyboard while learning a new ML library

USE CASE 2

Use the combined PDF as quick interview prep for a data science role

USE CASE 3

Share specific sheets with teammates onboarding to Pandas or Scikit-learn

What is it built with?

PythonTensorFlowKerasPandasScikit-learnR

How does it compare?

kailashahirwar/cheatsheets-aisparanoid/chinese-copywriting-guidelineshammerspoon/hammerspoon
Stars15,40115,40515,406
LanguageObjective-C
Setup difficultyeasyeasyeasy
Complexity1/51/53/5
Audiencedatawriterdeveloper

Figures from each repo's GitHub metadata at analysis time.

How do you get it running?

Difficulty · easy Time to first run · 5min
Use freely for any purpose including commercial use, as long as you keep the copyright notice.

In plain English

This repository is a collection of reference cheat sheets for machine learning and deep learning practitioners. Cheat sheets are single-page visual summaries of the most commonly used commands, functions, and concepts for a particular tool, designed to be kept handy while working rather than reading full documentation from scratch. The collection covers the core Python libraries used in data science and machine learning work: Tensorflow and Keras for building neural networks, Numpy and Scipy for numerical computing, Pandas for working with tabular data, Scikit-learn for traditional machine learning algorithms, Matplotlib and Seaborn for creating charts and visualizations, and ggplot2 for R users. It also includes cheat sheets for PySpark (a tool for processing large datasets across multiple machines), Dask (a library for parallel computing in Python), and R Studio's dplyr and tidyr packages for data wrangling. For those new to neural networks, there are also visual reference sheets showing the "Neural Networks Zoo" (a diagram of different neural network architectures), neural network cells, and neural network graphs. All sheets are available individually or as a single combined PDF download. The repository is MIT licensed.

Copy-paste prompts

Prompt 1
Pull the Pandas cheat sheet from cheatsheets-ai and turn it into a printable one-pager
Prompt 2
Build me an interactive web version of the Scikit-learn cheat sheet with clickable examples
Prompt 3
Use the Neural Network Zoo image to teach a 20-minute intro to deep learning architectures
Prompt 4
Extract the TensorFlow shortcuts from the combined PDF and convert them into Markdown notes

Frequently asked questions

What is cheatsheets-ai?

Collection of single-page visual cheat sheets for machine learning and deep learning. Covers TensorFlow, Keras, Numpy, Pandas, Scikit-learn, and more.

What license does cheatsheets-ai use?

Use freely for any purpose including commercial use, as long as you keep the copyright notice.

How hard is cheatsheets-ai to set up?

Setup difficulty is rated easy, with roughly 5min to a first successful run.

Who is cheatsheets-ai for?

Mainly data.

Open on GitHub → Explain another repo

This repo across BitVibe Labs

Scan in gitsafehub Deploy in gitdeployhub kailashahirwar on gitmyhub

Verify against the repo before relying on details.