- Probability and statistics in data science using python
- Khan Academy for probability
- Khan Academy for statistics
- coursera| Basic statistics
- Machine Learning by Andrew Ng| concept
- statisticsfun|linear regression|concept
- Applied Machine Learning
- Machine Learning fun easy| concept
- Practical ML|sentdex|python
- ML| Udacity
- Machine Learning Recipes with Josh Gordon
- Google |mastering machine learning| Crash course| tensorflow
- ML error metrics
- datcamp|metrics
- AUC and ROC curve
- What's the difference between accuracy and precision?
- Neural network|3Blue 1Brown
- Neural network | hugo
- Keras|edureka
- Keras|udemy
- Getting Started with Keras (AI Adventures)
- Ten steps to keras|
- Deeplearning.ai
Course 1,2,3,4,5 of deep learning specialization - Convolutional Neural Networks
- RNN
- DL|udemy
- DL|RNN
- 7 step to mastering deep learning
- Python for data science
- Transfer Learning
- Lecture 10: Recurrent Neural Networks, Image Captioning, LSTM
- MIT deep Learning
- Deep learning for NLP by Richard
- Deep Learning for NLP
- Intro to NLP with spaCy (1): Detecting programming languages | Episode 1: Data exploration
- Building new NLP solutions with spaCy and Prodigy - Matthew Honnibal
- Advanced NLP with Spacy
- A Code-First Introduction to Natural Language Processing
- coursera
- Andre ng| chapter 16
- How does Netflix recommend movies? Matrix Factorization
- Movie Recommendation System with Collaborative Filtering
- Deep learning| reinforcement Learning
- Simplified Reinforcement learning
- TensorFlow and deep reinforcement learning, without a PhD (Google I/O '18)
- Reinforcement Learning Course
- code camp
- Edureka
- Learn Deep learning fundamental with Keras from IBM
- Python for data science
- Master the skills needed to solve complex data challenges
- Edx| Learn Data Science by doing data science
- Data science course
- Master the skills needed to solve complex data challenges
- Edx| Learn Data Science by doing data science
- Machine Learning Mastery
- Machine Learning is fun series
- Best kaggle kernel tutorials
- Data school
- Getting started with kaggle
- Machine Learning @ Berkeley|crash
- Kaggle
- ML from scratch
- Mlcourse.ai
- Andrew Trask
- Andrej karpathy
- math for ML
- Linear Algebra guide
- Linear Algebra cheatsheet
- A brief introduction to probability and statistics
- review probability
- Probability for ML
- probability ppt
- tensorflow|documentation
- TensorFlow: A primer
- RNNs in Tensorflow
- Implementing a CNN for Text Classification in TensorFlow
- how to run text summarization with tensorflow
- Coursera| NLP
- Standford NLP course
- Stanford deep NLP
- Data Schools|NLP
- OXFORD |DLNLP
- Washington
- The Definitive Guide to Natural Language Processing
- Approaching-almost-any-nlp-problem-on-kaggle
- NLP is fun
- Deep Learning for NLP
- Advanced NLP with Spacy
- A Code-First Introduction to Natural Language Processing
- practitioner guide to NLP
