A list of Learning resouces for machine learning and deep learning. It consists of full learning plan and also have list of research papers, datasets, conference and talk and Projects.
- Learning Plan
- Books
- Other Free Courses
- Talks and Tutorials
- Benchmarks and Datasets
- ML-DL Projects
- Top Github Repositories
- Conferences
- Youtube Channels
- How to Contribute
Categories | Modules |
---|---|
Data Science Tool Kit | 1. Introduction to Python 2. Python for Data Science 3. Visualization in Python 4. Maths for Machine Learning 5. SQL 6. Data Analysis in Excel |
Statistics | 1. Exploratory Data Analysis 2. Inferential Statistics 3. Hypothesis Testing 4. EDA Projects |
Introduction to ML 🌟 | 1. Introduction to Machine Learning 2. Types of Machine Learning 3. Applications of ML 4. Machine Learning Process |
Data Preprocessing 📊 | 1. Data Collection and Cleaning 2. Data Transformation 3. Feature Engineering 4. Handling Missing Data 5. Scaling and Normalization |
Machine Learning Algorithms🧠 | Algorithms |
Python for Data Science and Machine Learning Bootcamp
Python for Data Science - Course for Beginners - duration 12 hours
Data Science With Python - duration 1 hour
- Image and Speech Recognition
- Natural Language Processing
- Recommender Systems
- Fraud Detection
- Autonomous Vehicles
Applications of Machine learning
- Data Collection and Cleaning
- Data Preprocessing
- Feature Selection and Engineering
- Model Selection and Training
- Evaluation and Fine-Tuning
Build Your First Machine Learning Project
Complete Case Analysis
Handling missing numerical data
Handling missing categorical data
Missing indicator
KNN Imputer
MICE
Linear Regression
Gradient Descent
Logistic Regression
Support Vector Machines
Naive Bayes
K Nearest Neighbors
Decision Trees
Random Forest
Bagging
Adaboost
Gradient Boosting
Xgboost
Principle Component Analysis (PCA)
KMeans Clustering
Heirarchical Clustering
DBSCAN
T-sne
Hands-On Machine Learning with Scikit-Learn and TensorFlow: Concepts, Tools, and Techniques for Building Intelligent Systems- Aurélien Géron, O'Reilly Media, Inc.", 2022.
The Hundred-Page Machine Learning Book
Approaching (Almost) Any Machine Learning Problem
Pattern Recognition and Machine Learning
Python Data Science Handbook: Essential Tools for Working with Data
Machine learning by tom mitchell
Machine Learning Specialization by Andrew NG on Coursera
Kaggle Courses
Machine Learning Crash Course
Machine Learning Course by EdX
Machine Learning Specialization University of Washington on Coursera
Introduction to Machine Learning Course by Udacity
Machine Learning with Python by IBM
Gradient Dissent - A Machine Learning Podcast by Weights & Biases
This Week in ML & AI Podcast
Data Skeptic
Linear Digressions
O'Reilly Data Show
The Talking Machines
Practical AI
Lex Fridman Podcast
Talk Python To Me
Kaggle Dataset
UCI Machine Learning Repository
Google Dataset
Microsoft Research Open Data
VisualData Discovery
AWS Registry of Open Data on AWS
AwesomeData GitHub
ML-For-Beginners by Microsoft
ML-YouTube-Courses
Mathematics For Machine Learning
MIT Deep Learning Book
Machine Learning ZoomCamp
Machine Learning Tutorials
Awesome Machine Learning
Machine Learning cheatsheets
Machine learning Interview
Awesome Production Machine Learning
StatQuest with Josh Starmer
deeplearning.ai
Google DeepMind
Sentdex
Data School
Abhishek Thakur
Machine Learning with Phil
send one of the maintainers a pull request.