Home
/
Dsblog
/
DS, AI, ML Online Course, Tutorial, Videos
DS, AI, ML Online Course, Tutorial, Videos
Courses
Machine Learning – Stanford by Andrew Ng in Coursera (2010-2014)
Machine Learning – Caltech by Yaser Abu-Mostafa (2012-2014)
Machine Learning – Carnegie Mellon by Tom Mitchell (Spring 2011)
Neural Networks for Machine Learning by Geoffrey Hinton in Coursera (2012)
Neural networks class by Hugo Larochelle from Université de Sherbrooke (2013)
Deep Learning Course by CILVR lab @ NYU (2014)
A.I – Berkeley by Dan Klein and Pieter Abbeel (2013)
A.I – MIT by Patrick Henry Winston (2010)
Vision and learning – computers and brains by Shimon Ullman, Tomaso Poggio, Ethan Meyers @ MIT (2013)
Convolutional Neural Networks for Visual Recognition – Stanford by Fei-Fei Li, Andrej Karpathy (2017)
Deep Learning for Natural Language Processing – Stanford
Neural Networks – usherbrooke
Machine Learning – Oxford (2014-2015)
Deep Learning – Nvidia (2015)
Graduate Summer School: Deep Learning, Feature Learning by Geoffrey Hinton, Yoshua Bengio, Yann LeCun, Andrew Ng, Nando de Freitas and several others @ IPAM, UCLA (2012)
Deep Learning – Udacity/Google by Vincent Vanhoucke and Arpan Chakraborty (2016)
Deep Learning – UWaterloo by Prof. Ali Ghodsi at University of Waterloo (2015)
Statistical Machine Learning – CMU by Prof. Larry Wasserman
Deep Learning Course by Yann LeCun (2016)
Designing, Visualizing and Understanding Deep Neural Networks-UC Berkeley
UVA Deep Learning Course MSc in Artificial Intelligence for the University of Amsterdam.
MIT 6.S094: Deep Learning for Self-Driving Cars
MIT 6.S191: Introduction to Deep Learning
Berkeley CS 294: Deep Reinforcement Learning
Keras in Motion video course
Practical Deep Learning For Coders by Jeremy Howard – Fast.ai
Introduction to Deep Learning by Prof. Bhiksha Raj (2017)
AI for Everyone by Andrew Ng (2019)
MIT Intro to Deep Learning 7 day bootcamp – A seven day bootcamp designed in MIT to introduce deep learning methods and applications (2019)
Deep Blueberry: Deep Learning – A free five-weekend plan to self-learners to learn the basics of deep-learning architectures like CNNs, LSTMs, RNNs, VAEs, GANs, DQN, A3C and more (2019)
Spinning Up in Deep Reinforcement Learning – A free deep reinforcement learning course by OpenAI (2019)
Deep Learning Specialization – Coursera – Breaking into AI with the best course from Andrew NG.
Deep Learning – UC Berkeley STAT-157 by Alex Smola and Mu Li (2019)
Machine Learning for Mere Mortals video course by Nick Chase
Machine Learning Crash Course with TensorFlow APIs -Google AI
Deep Learning from the Foundations Jeremy Howard – Fast.ai
Deep Reinforcement Learning (nanodegree) – Udacity a 3-6 month Udacity nanodegree, spanning multiple courses (2018)
Grokking Deep Learning in Motion by Beau Carnes (2018)
Face Detection with Computer Vision and Deep Learning by Hakan Cebeci
Presentation skills: Designing Presentation Slides - Coursera
Mathematics for Machine Learning: Multivariate Calculus - Coursera
Machine Learning – Home Coursera
Mathematics for Machine Learning: Multivariate Calculus - Coursera
Data Science Certificates - Coursera
Edureka
Edureka-Cloudera Manager
Udemy Courses
Courses – Online Reiki Course
DataCamp Courses
Byju
udacity
What is Spark – A Comparison Between Spark vs. Hadoop
Microsoft Azure Machine Learning Studio (classic)
Welcome to The Apache Software Foundation!
Making India Employable - Vivid Vision 10 10 10
GpI8H5 – Online Python3 Interpreter & Debugging Tool – Ideone.com
Google I/O 2019 – All Sessions – YouTube
TensorFlow at Google I/O 2019 – YouTube
Quantum Mechanics - BSc Lectures by Prof. H C Verma and Team
Open Pathshala - Your Best Source to Learn Sanskrit
Class Central #1 Search Engine for Free Online Courses & MOOCs
Free Online Course: Mathematics for Machine Learning: Multivariate Calculus from Coursera - Class Central
e Learning for Basic Science and Maths
Online Classes by Skillshare - Start for Free Today
Learn online marketing with free courses – Google Digital Garage
Moz Blog – SEO and Inbound Marketing Blog – Moz
NPTEL Online Courses Mobile
Learn Python, Data Viz, Pandas & More - Tutorials - Kaggle
Data Science Training
Tutorials
UFLDL Tutorial 1
UFLDL Tutorial 2
Deep Learning for NLP (without Magic)
A Deep Learning Tutorial: From Perceptrons to Deep Networks
Deep Learning from the Bottom up
Theano Tutorial
Neural Networks for Matlab
Using convolutional neural nets to detect facial keypoints tutorial
Torch7 Tutorials
The Best Machine Learning Tutorials On The Web
VGG Convolutional Neural Networks Practical
TensorFlow tutorials
More TensorFlow tutorials
TensorFlow Python Notebooks
Keras and Lasagne Deep Learning Tutorials
Classification on raw time series in TensorFlow with a LSTM RNN
Using convolutional neural nets to detect facial keypoints tutorial
TensorFlow-World
Deep Learning with Python
Grokking Deep Learning
Deep Learning for Search
Keras Tutorial: Content Based Image Retrieval Using a Convolutional Denoising Autoencoder
Pytorch Tutorial by Yunjey Choi
Understanding deep Convolutional Neural Networks with a practical use-case in Tensorflow and Keras
Overview and benchmark of traditional and deep learning models in text classification
Hardware for AI: Understanding computer hardware & build your own computer
Programming Community Curated Resources
The Illustrated Self-Supervised Learning
Visual Paper Summary: ALBERT (A Lite BERT)
Videos and Lectures
How To Create A Mind By Ray Kurzweil
Deep Learning, Self-Taught Learning and Unsupervised Feature Learning By Andrew Ng
Recent Developments in Deep Learning By Geoff Hinton
The Unreasonable Effectiveness of Deep Learning by Yann LeCun
Deep Learning of Representations by Yoshua bengio
Principles of Hierarchical Temporal Memory by Jeff Hawkins
Machine Learning Discussion Group – Deep Learning w/ Stanford AI Lab by Adam Coates
Making Sense of the World with Deep Learning By Adam Coates
Demystifying Unsupervised Feature Learning By Adam Coates
Visual Perception with Deep Learning By Yann LeCun
The Next Generation of Neural Networks By Geoffrey Hinton at GoogleTechTalks
The wonderful and terrifying implications of computers that can learn By Jeremy Howard at TEDxBrussels
Unsupervised Deep Learning – Stanford by Andrew Ng in Stanford (2011)
Natural Language Processing By Chris Manning in Stanford
A beginners Guide to Deep Neural Networks By Natalie Hammel and Lorraine Yurshansky
Deep Learning: Intelligence from Big Data by Steve Jurvetson (and panel) at VLAB in Stanford.
Introduction to Artificial Neural Networks and Deep Learning by Leo Isikdogan at Motorola Mobility HQ
NIPS 2016 lecture and workshop videos – NIPS 2016
Deep Learning Crash Course : a series of mini-lectures by Leo Isikdogan on YouTube (2018)
Deep Learning Crash Course By Oliver Zeigermann
Deep Learning with R in Motion : a live video course that teaches how to apply deep learning to text and images using the powerful Keras library and its R language interface.
8 Essential Tips for People starting a Career in Data Science .
Cheatsheet: How to become a data scientist .
The Art of Learning Data Science .
The Periodic Table of Data Science .
Aspiring Data Scientists! Start to learn Statistics with these 6 books !
8 Skills You Need to Be a Data Scientist
Top 10 Essential Books for the Data Enthusiast
Aspiring data scientist? Master these fundamentals .
How to Become a Data Scientist – On your own.
GRETL – Great Statistical software for Beginners
Simple Linear Regression https://lnkd.in/ecfsV9c
Coding Dummy Variables https://lnkd.in/ef7Yd7f
Forecasting New Observations https://lnkd.in/eNKbxbU
Forecasting a Large Number of Observations https://lnkd.in/eHmibGs
Logistic Regression https://lnkd.in/eRfhQ87
Forecasting and Confusion Matrix https://lnkd.in/eaqrFJr
Modeling and Forecasting Time Series Data https://lnkd.in/e6fqKpF
Comparing Time Series Trend Models https://lnkd.in/eKjEUAE
Khan Academy is the best online free resource to learn Math for Data Science. ( https://www.khanacademy.org/math/ ).
Krista King has also done a great job in creating an exceptionally good introductory course. She is too good at designing the course. ( https://www.udemy.com/user/kristaking/ .
3Blue1Brown ( https://www.youtube.com/channel/UCYO_jab_esuFRV4b17AJtAw/playlists ).
Every Intro to Data Science Course on the Internet, Ranked. (https://lnkd.in/fQDMiNX )
What would be useful for aspiring data scientists to know? (https://lnkd.in/fmcFyN7 )
Please enable JavaScript to view the comments powered by Disqus.
You may also enjoy
Navigating the LLM Infrastructure Landscape - November 14, 2024
Exploring GGUF and Other Model Formats - November 12, 2024
Exploring AnythingLLM - November 11, 2024
Navigating Python Ecosystem - November 01, 2024
Processors for HTML CSS JS Code - October 30, 2024
Exploring Popular Web Server - October 29, 2024
Exploring All Dimensions of Application Development - October 28, 2024
Exploring LLM Application Development - October 27, 2024
AI Benchmarks Explained - October 26, 2024
Transfer Learning Key AI Techniques Explained - October 25, 2024
Types of Large Language Models (LLM) - October 24, 2024
Navigating the JavaScript Ecosystem - October 23, 2024
Applications of GenAI - October 22, 2024
Understanding Jekyll Framework - October 21, 2024
Introduction to Container Registry - October 20, 2024
AI/ML with Oracle Cloud - October 19, 2024
SEO Keyword Planning - October 18, 2024
Understanding HTML Templating with Python, Ruby, and PHP - October 17, 2024
Exploring Synthetic Data Generation Capabilities - October 16, 2024
Exploring SQL and GraphQL Commands - October 15, 2024
Exploring Python Package Manager - October 14, 2024
Understanding Linux Distributions - October 13, 2024
Exploring Google Firebase - October 12, 2024
What is Bundler? - October 11, 2024
Exploring Dense Embedding Models in AI - October 10, 2024
Introduction to Perplexity AI - October 08, 2024
Mastering Git: Comprehensive Guide to Git Commands - October 07, 2024
Selecting Database for Project - October 05, 2024
Exploring Apache Hive - October 04, 2024
Machine Learning Key Concepts - October 03, 2024
Exploring Docker and VS Code Integration - October 02, 2024
Automated Machine Learning - October 01, 2024
Python Code Snippnet from Colab - September 30, 2024
Everything About Developer Console - September 29, 2024
Navigating Google Cloud Security: Key Components, Roles, and Best Practices - September 28, 2024
Building AI-Powered Flutter Apps: Best Practices for Folder Structure - September 27, 2024
Python Project Folders and Files - September 26, 2024
GenAI Capabilities from AWS, Azure and GCP - September 25, 2024
Exploring Ollama & LM Studio - September 18, 2024
Exploring Github - September 17, 2024
What is Package Manager? - August 29, 2024
Tensorflow GPU Setup on Local Machine - August 28, 2024
All About AI Hype - August 27, 2024
Variations of Language Model in Huggingface - August 22, 2024
MLOps Tools - August 13, 2024
Programming Resources - August 12, 2024
AI Usecases in Cybersecurity - August 07, 2024
Open Source vs Closed Source AI - August 06, 2024
How Much Memory Needed for LLM - August 05, 2024
LLM Skills and Human Skills - August 04, 2024
LLM Architecture and Training - August 04, 2024
LLM Security and Ethics Considerations - August 02, 2024
Why to Finetune LLM? - July 28, 2024
Software Security Concepts - July 27, 2024
What is Unicode and how does it works? - July 27, 2024
Stanford Alpaca - July 27, 2024
Understanding LLM GAN and Transformers - July 26, 2024
Transformers Demystified A Step-by-Step Guide - July 25, 2024
Dimensionality Reduction and Visualization - July 24, 2024
Serverless databases - July 23, 2024
AI in Health Care - July 22, 2024
All about Hashing - July 11, 2024
Creating Docker Image - July 10, 2024
REST API - July 04, 2024
NLP BenchMarks - July 03, 2024
Decoding Windows User Folder - June 30, 2024
Decoding pip install operations - June 29, 2024
Decoding docker commands - June 28, 2024
Manamath Nath - Ramayana Corpus - January 12, 2024
KM Ganguli Mahabharat Corpus - January 07, 2024
AI Usecases in Government - January 03, 2024
AI in School Education - January 02, 2024
Data Science and Basics of Astrology - December 27, 2023
Summary of Life Changing Selfhelp Books - December 04, 2023
Empowering Language with AI NLP Capabilities - November 18, 2023
Topic Modeling with BERT - November 13, 2023
Graph of Thoughts - November 11, 2023
Basics of Word Embedding - November 11, 2023
My Journey from Master to PhD in Data Science and AI - November 08, 2023
Compressing Large Language Model - November 07, 2023
LaTeX Capabilities - November 06, 2023
What is Pinecone - September 03, 2023
ML Model Development Framework - September 02, 2023
ML Model Respository from Pinto0309 - September 01, 2023
Python APIs for Data - August 28, 2023
Distances in Machine Learning - August 27, 2023
Paper with Code Resources - August 22, 2023
Important AI Paper List - August 22, 2023
Machine Learning Metrics - August 21, 2023
Comprehensive Glossary of LLM, Deep Learning, NLP, and CV Terminology - August 21, 2023
Paper-Summary- A Survey Paper# Pretrained Language Models for Text Generation - August 18, 2023
What is LLM - August 18, 2023
How to do Literature Review - August 17, 2023
NLP Tasks - August 15, 2023
SQL and Relational Algebra - August 14, 2023
Types of Questions - August 11, 2023
Google Cloud APIs - July 28, 2023
Model Tuning with VertexAI - July 24, 2023
Introduction to Prompt Engineering - July 24, 2023
Database and Analytics Product Services from Google Azure AWS - July 21, 2023
AI Product and Services from Google, Azure and AWS - July 20, 2023
Introduction to ML Model Deployment - July 19, 2023
AWS SageMaker Jumpstart Models - July 18, 2023
Major LLM Developers Shaping the AI Landscape - July 15, 2023
Python Decorator Function - July 15, 2023
Embedding with FastText - July 15, 2023
Python Naming Convention - July 11, 2023
Sorting Algorithm A Summary - July 10, 2023
What is CAPTCHA? - July 03, 2023
What is GAN Architecture? - July 03, 2023
A Guide to Model Fine Tuning with OpenAI API - July 02, 2023
Capabilities of AI Transformers - July 01, 2023
Model Garden of VertexAI - June 21, 2023
Demystifying DevOps, MLOps, and DataOps - June 08, 2023
All Resources to Learn Data Science - June 08, 2023
A Comprehensive Guide to 210+ AWS Services - June 06, 2023
Unlocking the Power of Azure- Exploring 300+ Cloud Services and Their Purposes - June 06, 2023
Google Cloud Service Catalog - A Comprehensive Overview of 250+ Google Cloud Services - June 05, 2023
Unraveling the Google Web - Exploring the Purpose of Google's Websites - June 04, 2023
God Fathers of AI - May 05, 2023
Business Usecases of GPT - May 03, 2023
The Interconnectedness of Life and Data - May 01, 2023
Types of Machine Learning - April 27, 2023
Linux OS Directories - April 26, 2023
Types of Technologies - February 24, 2023
Cognitive Biases - February 22, 2023
Podcast Lex Fridman Sam Harris Consciousness Free Will Psychedelics - February 07, 2023
Books on Conciousness - February 06, 2023
Responsible AI - February 03, 2023
Cost Functions and Optimizers in Machine Learning - February 01, 2023
Application of AI in BFSI - January 28, 2023
GPU for Data Science Work - January 26, 2023
Type of Databases - January 25, 2023
Data Lake vs Data Warehouse vs Data Mart - January 25, 2023
AI Usecases in Agriculture Industry - January 23, 2023
AI Use Cases in Food Processing - January 22, 2023
Will AI Replace Human? - January 19, 2023
What is GAN? - January 17, 2023
Introduction to Neural Network - January 17, 2023
Timeseries Interview Questions - January 08, 2023
Linear Regression Interview Questions - January 07, 2023
Statistics Interview Question for Data Scientist - January 06, 2023
GPT Usecases - January 05, 2023
ChatGPT Usecases - January 04, 2023
AI in Energy Management - January 02, 2023
What is Computer Vision - December 28, 2022
The Science of Reasoning - December 21, 2022
What is NLP? - December 19, 2022
Book Review - Data Science in Marketing Analysis - October 26, 2022
Domain Knowledge in Machine Learning - October 15, 2022
Data Science/AI Projects Project Ideas - October 06, 2022
Confusion Matrix Bayesian Theorem - August 22, 2022
Data Science, AI, ML, eBooks, PDF Books - July 20, 2022
Data Science Cheatsheets - July 03, 2022
Python Software Development and Distribution - September 30, 2021
300 Important Statistical Terms - September 29, 2021
Folder Structure for ML Project - September 20, 2021
Generalized AI Model for Prediction - September 17, 2021
20 Reasons Why AI Project Fails - August 20, 2021
What Are Transformers in AI - August 03, 2021
Github Repos for Data Science - July 22, 2021
AI ML Resources from My Diary - July 21, 2021
Basic Statistics for Data Science - July 18, 2021
Data Scientists and AI, ML Researchers - July 17, 2021
Navigating the Data Landscape: Exploring Data Sources, Databases, and ETL Tools for Machine Learning Projects - July 16, 2021
Thousands of Machine Learning Datasets - July 15, 2021
Machine Learning Tasks and Model Evaluation - July 14, 2021
Machine Learning Framework, Library, Tools - July 13, 2021
My Daily Tools - July 12, 2021
AI, ML, DL Blogs Sites - July 12, 2021
My Favorite Chrome Extensions - July 11, 2021
Best Resources to Learn Python - July 10, 2021
AI, ML, Deep Learning, NLP Conferences & Journals - July 08, 2021
Best YouTube Channels to Learn Data Science - July 07, 2021
High School Maths for Data Science - July 06, 2021
Important AI Research Papers - July 05, 2021
Mathematics for Data Scientist - July 04, 2021
How Naive Bayes Classifier Works - March 31, 2021
Top 10 Technologies of Future - March 04, 2021
EDA & Feature Engineering 101 - August 24, 2020
DS, AI, ML Online Course, Tutorial, Videos - July 02, 2020
Data Science Interview Question Answers - July 02, 2020
Reinforcement Learning Git Repositories - July 01, 2020
What is XAI? - May 15, 2020
100+ High Level AI Usecases - May 02, 2020
Dealing with Sensitive Data - March 10, 2020
Please enable JavaScript to view the comments powered by Disqus.