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.