-
This repository contains a topic-wise curated list of Machine Learning and Deep Learning tutorials, articles and other resources. Other awesome lists can be found in this list.
-
If you want to contribute to this list, please read Contributing Guidelines.
-
Curated list of R tutorials for Data Science, NLP and Machine Learning.
-
Curated list of Python tutorials for Data Science, NLP and Machine Learning.
- Introduction
- Interview Resources
- Artificial Intelligence
- Genetic Algorithms
- Statistics
- Useful Blogs
- Resources on Quora
- Resources on Kaggle
- Cheat Sheets
- Classification
- Linear Regression
- Logistic Regression
- Model Validation using Resampling
- Deep Learning
- Natural Language Processing
- Computer Vision
- Support Vector Machine
- Reinforcement Learning
- Decision Trees
- Random Forest / Bagging
- Boosting
- Ensembles
- Stacking Models
- VC Dimension
- Bayesian Machine Learning
- Semi Supervised Learning
- Optimizations
- Other Useful Tutorials
-
In-depth introduction to machine learning in 15 hours of expert videos
-
A curated list of awesome Machine Learning frameworks, libraries and software
-
A curated list of awesome data visualization libraries and resources.
-
An awesome Data Science repository to learn and apply for real world problems
-
Machine Learning algorithms that you should always have a strong understanding of
-
Difference between Linearly Independent, Orthogonal, and Uncorrelated Variables
-
Twitter's Most Shared #machineLearning Content From The Past 7 Days
-
41 Essential Machine Learning Interview Questions (with answers)
-
How can a computer science graduate student prepare himself for data scientist interviews?
-
Stat Trek Website - A dedicated website to teach yourselves Statistics
-
Learn Statistics Using Python - Learn Statistics using an application-centric programming approach
-
Statistics for Hackers | Slides | @jakevdp - Slides by Jake VanderPlas
-
Online Statistics Book - An Interactive Multimedia Course for Studying Statistics
-
Tutorials
-
OpenIntro Statistics - Free PDF textbook
-
Edwin Chen's Blog - A blog about Math, stats, ML, crowdsourcing, data science
-
The Data School Blog - Data science for beginners!
-
ML Wave - A blog for Learning Machine Learning
-
Andrej Karpathy - A blog about Deep Learning and Data Science in general
-
Colah's Blog - Awesome Neural Networks Blog
-
Alex Minnaar's Blog - A blog about Machine Learning and Software Engineering
-
Statistically Significant - Andrew Landgraf's Data Science Blog
-
Simply Statistics - A blog by three biostatistics professors
-
Yanir Seroussi's Blog - A blog about Data Science and beyond
-
fastML - Machine learning made easy
-
Trevor Stephens Blog - Trevor Stephens Personal Page
-
no free hunch | kaggle - The Kaggle Blog about all things Data Science
-
A Quantitative Journey | outlace - learning quantitative applications
-
r4stats - analyze the world of data science, and to help people learn to use R
-
Variance Explained - David Robinson's Blog
-
AI Junkie - a blog about Artificial Intellingence
-
Deep Learning Blog by Tim Dettmers - Making deep learning accessible
-
J Alammar's Blog- Blog posts about Machine Learning and Neural Nets
-
Adam Geitgey - Easiest Introduction to machine learning
-
Ethen's Notebook Collection - Continuously updated machine learning documentations (mainly in Python3). Contents include educational implementation of machine learning algorithms from scratch and open-source library usage
-
Multicollinearity and VIF
-
Difference between logit and probit models, Logistic Regression Wiki, Probit Model Wiki
-
Pseudo R2 for Logistic Regression, How to calculate, Other Details
- Cross Validation
-
Overfitting and Cross Validation
-
A curated list of awesome Deep Learning tutorials, projects and communities
-
Interesting Deep Learning and NLP Projects (Stanford), Website
-
Understanding Natural Language with Deep Neural Networks Using Torch
-
Introduction to Deep Learning Using Python (GitHub), Good Introduction Slides
-
Video Lectures Oxford 2015, Video Lectures Summer School Montreal
-
Neural Machine Translation
-
Deep Learning Frameworks
-
-
Caffe
-
TensorFlow
-
Feed Forward Networks
- Recurrent and LSTM Networks
-
The Unreasonable effectiveness of RNNs, Torch Code, Python Code
-
Long Short Term Memory (LSTM)
-
Gated Recurrent Units (GRU)
-
Time series forecasting with Sequence-to-Sequence (seq2seq) rnn models
-
Restricted Boltzmann Machine
-
Autoencoders: Unsupervised (applies BackProp after setting target = input)
-
Convolutional Neural Networks
-
A curated list of speech and natural language processing resources
-
Understanding Natural Language with Deep Neural Networks Using Torch
-
word2vec
-
Text Clustering
-
Text Classification
-
Kaggle Tutorial Bag of Words and Word vectors, Part 2, Part 3
-
Comparisons
-
Software
-
Kernels
-
Probabilities post SVM
-
What is entropy and information gain in the context of building decision trees?
-
How do decision tree learning algorithms deal with missing values?
-
Discover structure behind data with decision trees - Grow and plot a decision tree to automatically figure out hidden rules in your data
-
Comparison of Different Algorithms
-
CART
-
CTREE
-
CHAID
-
MARS
-
Probabilistic Decision Trees
-
Evaluating Random Forests for Survival Analysis Using Prediction Error Curve
-
Why doesn't Random Forest handle missing values in predictors?
-
Gradient Boosting Machine
-
xgboost
-
AdaBoost
-
Mean Variance Portfolio Optimization with R and Quadratic Programming
-
Hyperopt tutorial for Optimizing Neural Networks’ Hyperparameters