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✌ - Free Certificate
⚠️ - Note
đź“Ś - Courses


Learn a Language

Language basics (Jet Brains)
HackerRank Practise
HackerEarth Practise
⚠️ Learn the concept daily(maintain consistency)
⚠️ Choose either of the one platform(based on convenience) and practise 1 question per day

Machine Learning Free Courses

📌Machine Learning Foundation (Great Learning)✌
📌Python for Machine Learning (Great Learning)✌
📌Statistics for Machine Learrning (Great Learning)✌
📌Data Visualization using Python (Great Learning)✌
đź“ŚMachine Learning Crash Course (Google)
📌Machine Learning - Linear Regression (LEAPS)✌
đź“ŚGetting started with Decision Trees (Analytics Vidhya)
đź“ŚMachine Learning with Python: A Practical Introduction (Harvard EdX)
đź“ŚMachine Learning Fundamentals (Harvard EdX)
đź“ŚMachine Learning with Python: from Linear Models to Deep Learning (Harvard EdX)
đź“ŚMachine Learning (Harvard EdX)
📌Machine Learning with Python (IBM)✌
📌Machine Learning – Dimensionality Reduction (IBM)✌
📌Data Visualization with Python (IBM)✌
📌Data Analysis with Python (IBM)✌

DataScience Free Courses

đź“ŚIntroduction to Python (Analytics Vidhya)
📌Fundamentals of Data Analytics (LEAPS)✌
đź“ŚPandas for Data Analysis in Python (Analytics Vidhya)
đź“ŚTableau for Beginners (Analytics Vidhya)
đź“ŚTop Data Science Projects for Analysts and Data Scientists (Analytics Vidhya)
đź“ŚMachine Learning for Data Science and Analytics (Harvard EdX)
đź“ŚA data science program for everyone (Harvard EdX)
đź“ŚData Science and Machine Learning Capstone Project (Harvard EdX)
⚠️Below are in R language(Harvard EdX)
đź“ŚR Basics (Harvard EdX)
đź“ŚData Visualisation and EDA (Harvard EdX)
đź“ŚProbability Theory (Harvard EdX)
đź“ŚData Science Inference and Modeling (Harvard EdX)
đź“ŚData Science Productivity Tools (Harvard EdX)
đź“ŚData Science Wrangling (Harvard EdX)
đź“ŚData Science Linear Regression (Harvard EdX)
đź“ŚCapstone Project (Harvard EdX)
📌Introduction to Data Science (IBM)✌ 📌Python for Data Science (IBM)✌
📌SQL and Relational Databases 101 (IBM)✌

Deep Learning

📌Deep Learning Fundamentals (IBM)✌
📌Deep Learning with TensorFlow (IBM)✌
📌Accelerating Deep Learning with GPU (IBM)✌

AI

đź“ŚIntroduction to Artificial Intelligence with Python (Harvard EdX)

APIs

đź“ŚDeep Learning with Tensorflow
đź“ŚDeep Learning Fundamentals with Keras
đź“ŚDeep Learning with Python and PyTorch
đź“ŚPyTorch Basics for Machine Learning

Natural Language Processing

đź“ŚIntroduction to Natural Language Processing
đź“ŚNatural Language Processing (NLP) - Microsoft

Commputer Vision

đź“ŚComputer Vision Fundamentals with Watson and OpenCV
đź“ŚComputer Vision and Image Analysis - Microsoft

Git

đź“ŚGetting Started with Git

Live Sessions

đź“Śsource 1
đź“Śsource 2

⚠️ If any of the link isn't working check out more...

EBooks/Books/CookBooks

What is Machine Learning
Tree Based Algorithms
Natural Language Processing
Data Cleaning with Numpy and Pandas
Data Engineering CookBook
đź“ŚMachine Learning Projects in Python (Compiled)
more...

Cheat Sheets

Python
R
SQL
Machine Learning
Supervised learning
Data Science
Probability Statistics
Data Engineering
Git
Getting your first DataScience job
more...

Exercises

Python
SQL
more...

Interview Questions

Python
Data Science
Variance in Data Science
more...

MATLAB free Courses with Certificate

Matlab Onramp
Machine learning Onramp
Deep learning Onramp

Math and Stats books

1-The Elements of Statistical Learning
2-Statistics and Analysis of Scientific Data
3-Linear Algebra Done Right
4-Statistical Analysis and Data Display
5-Introduction to Statistics and Data Analysis
6-Understanding Statistics Using R
7-An Introduction to Statistical Learning
8-A Modern Introduction to Probability and Statistics

Getting Started with Data Science

Steps in approaching a Machine learning problem:

Below are the steps that I follow while approaching a ML problem.
1)Defining and understanding the problem statement
2)Gathering the Data
3)Initial Exploration of Data
4)In-depth EDA
5)Building the model
6)Analyzing the results with different models and shortlisting the ones which gives good performance measures
7)Fine-tuning the selected model
8)Document the code
9)Deployment
10)Monitoring the deployed model performance in real time.

This is a curated list of tutorials, projects, libraries, videos, papers, books and anything related to the incredible PyTorch. Feel free to make a pull request to contribute to this list.

Tutorials

Visualization

Explainability

Object Detection

Long-Tailed / Out-of-Distribution Recognition

Energy-Based Learning

Missing Data

Architecture Search

Optimization

Quantization

Quantum Machine Learning

Neural Network Compression

Facial, Action and Pose Recognition

Super resolution

Synthetesizing Views

Voice

Medical

3D Segmentation, Classification and Regression

Video Recognition

Recurrent Neural Networks (RNNs)

Convolutional Neural Networks (CNNs)

Segmentation

Geometric Deep Learning: Graph & Irregular Structures

Sorting

Ordinary Differential Equations Networks

Multi-task Learning

GANs, VAEs, and AEs

Unsupervised Learning

Adversarial Attacks

Style Transfer

Image Captioning

Transformers

Similarity Networks and Functions

Reasoning

General NLP

Question and Answering

Speech Generation and Recognition

Document and Text Classification

Text Generation

Translation

Sentiment Analysis

Deep Reinforcement Learning

Deep Bayesian Learning and Probabilistic Programmming

Spiking Neural Networks

Anomaly Detection

Regression Types

Time Series

Synthetic Datasets

Neural Network General Improvements

DNN Applications in Chemistry and Physics

New Thinking on General Neural Network Architecture

Linear Algebra

API Abstraction

Low Level Utilities

PyTorch Utilities

PyTorch Video Tutorials

Datasets

Community

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