Skip to content

dattv/ML-DL-Lecture-Notes

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

467 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

This repository for noting some resources that may help me in studying ML/DL and applying AI/ML/DL into real world

Basic Courses

[1] CME 323: Distributed Algorithms and Optimization

[2] CME342 - Parallel Methods in Numerical Analysis

[3] Parallel Computer Architecture and Programming (CMU 15-418/618)

ML/DL - Lecture notes

[1] Deep learning for Vision (instructor Yannis Avrithis) - (Univ of Rennes1)

[2] CS231n: Convolutional Neural Networks for Visual Recognition (instructor Fei-Fei Li) - (Stanford Univ)

[3] DEep Learning: Do-It-Yourself (Lecture 1->9) - (instructor Marc Lelarge, Andrei Bursuc, Alexandre Defossesz, Timthee Lacroix, Alexandre Sablayrolles, Pierre Stock, Neil Zeghidour)

[4] EE-559 Deep Learning - 2018 (lecture 4->10) - (instructor Francois Fleuret) (idiap)

[5] CS-498 Introduction to Deep learning (October 2 -> Novermber 8, Novermber 29 -> December 6) (instructor Svetlana Lazebnik) - (Univ illinois)

[6] UVA - Deep learning course (lecture 4 -> 6, 8 -> 14) (Univ of Amsterdam)

[7] Deep learning (lecture 4 -> end) (univ Paris-Saclay)

[8] CSC-2523 Deep Learning in Computer Vision 2016 (instructor Sanja Fidler) - (Univ of Toronto)

[9] Topics Course on Deep Learning 2016 (1st Part) - (Joan Bruna) (UC Berkeley)

[10] COS 598B 2018 Advanced Topics in Computer Science: Visual Recognition (tab outline) (instructor Prof. Olga Russakovsky) (Princeton)

[11] COS 429 - Computer Vision (Outline adn Lecture Notes tab) - (instructor Prof. Olga Russakovsky) - (Princeton)

[12] Computer Science 598F Advanced Topics in Computer Science: Deep Learning for Graphics and Vision (Princeton)

[13] COS 429 - Computer Vision (outline and lecture Notes) - (Princeton)

[14] EE-559 – EPFL – Deep Learning (Spring 2019) (instructor Francois Fleuret) (Ecole Polytecnique Federate De Lausanne)

[15] CS 598/ IE 534, Fall 2018 (instructor Justin Sirignano) - (Univ os illinois)

[16] Machine Learning (instructor Bastian Leibe) - (RWTH AACHEN)

[17] CP8309/CP8315: Deep Learning in Computer Vision (instructor Kosta Derpanis) - (Univ Ryerson)

[18] Machine Learning in Three month (Video)

[19] Deep Learning for Visual Computing (TU WIEN) https://cvl.tuwien.ac.at/course/dlvc/ https://github.com/cpra/dlvc2018

[20] 6.S191: Introduction to Deep Learning (part 1(2, 3, 4), part 2(2), part 3(2, 3) (MIT)

[21] CS 9840 FALL 2015 Machine Learning and Computer Vision (Univ Western Ontario)

[22] Introduction to Computer Vision (UDACITY)

[23] Advanced Topics in Machine Learning MSc - Spring Semester 422828, Lectures and exercises, 5.0 ECTS (instructor (Paolo Favaro) - (Univ of Ben)

[24] (Univ Freiburg)

[25] (Univ of Cambridge)

[26] CS 598 LAZ: Cutting-Edge Trends in Deep Learning and Recognition (instructor Svetlana Lazebnik) - (Univ of illinois)

[27] Convolutional Neural Networks on Graphs (Video)

[28] GAME THEORY AND APPLICATIONS (M2 Course GTA) - (Lecture slides and exercises) - (Patrick maille)

[29] Speed up TensorFlow Inference on GPUs with TensorRT

[30] Optimizing TensorFlow Serving performance with NVIDIA TensorRT

[31] TensorRT for TensorFlow (video)

[32] CS 20: Tensorflow for Deep Learning Research

Specific topics

Image Super-Resolution

[1] Single Image Super-Resolution A collection of high-impact and state-of-the-art SR methods

[2] A collection of Single Image Super-Resolution Methods

[3] Super-Resolution via Deep Learning

Face Detection

[1] MTCNN

[2] SSD

[3] single short learning

Object Detection

[1] Object Detection with Deep Learning: A Review

[2] A Review: Object Detection using Deep Learning

[3] Deep Learning for Generic Object Detection: A Survey

Moving Object Tracking and/or Detecting

[1] New Trends on Moving Object Detection in Video Images Captured by a moving Camera: A Survey

[2] Deep Learning for Moving Object Detection and Tracking from a Single Camera in Unmanned Aerial Vehicles (UAVs)

[3] Optical Flow Based Real-time Moving Object Detection in Unconstrained Scenes

Image Semantic Segmentation

[1] awesome semantic segmentatation

Applications

Self-Driving Vehicle

[1] MIT 6.S094: Deep Learning for Self-Driving Cars (instructor Lex Fridman) https://deeplearning.mit.edu/ https://github.com/dattv/mit-deep-learning

Medical Imaging

[1] achine Learning for medical imaging (Video)

[2] An overview of deep learning in medical imaging focusing on MRI

[3] Deep Learning for Medical Image Processing: Overview, Challenges and Future

[4] Medical Imaging with Deep Learning (MIDL 2018) Conference: Exploring Rejected Extended Abstracts

[5] Deep Learning in Medical Image Analysis

[6] Overview of deep learning in medical imaging

[7] NiftyNet: a deep-learning platform for medical imaging

[8] Efficient multi-scale 3D CNN with fully connected CRF for accurate brain lesion segmentation

[9] Review of MRI-based Brain Tumor Image Segmentation Using Deep Learning Methods

[10] An overview of deep learning in medical imaging focusing on MRI

[11] Clara AI Platform (NVIDIA)

[12] CAP5516-Medical Image Computing (SPRING 2019)

Smart Farm

[1] Deep Learning in Agriculture

[2] The Future of Farming with AI: Truly Organic at Scale (Video) - (AI with Quantum Computing, DWAVE)

[3] Deep Learning for Smart Argriculture

[4] Deep Learning in Agriculture: A Survey

[5] Machine Learning in Agriculture: A Review

[6] Big Data in Smart Farming - A review

[7] Smart drones and deep learning deliver low-cost precision agriculture for Aussie farmers

[8] Smart Farm 2.0 System Architecture

[9] How machine learning is gradually changing modern agricultural practices

[10] A hybrid machine learning approach to automatic plant phenotyping for smart agriculture

[11] DETECTION & PREDICTION OF PESTS/DISEASES USING DEEP LEARNING

[12] Smart farming: How IoT, robotics, and AI are tackling one of the biggest problems of the century

Smart Aquaculture

[1] DeepFish: Accurate underwater live fish recognition with a deep architecture (98,64% of accuracy)

Game

[1] Playing Atari with Deep Reinforcement Learning

[2] Atari - Solving Games with AI 🤖 (Part 1: Reinforcement Learning)

[3] Atari - Solving Games with AI🤖 (Part 2: Neuroevolution)

[4] Atari Project

[5] AlphaGo

ML/DL Detect Cracks on Surfaces

[1] Automated Vision-Based Detection of Cracks on Concrete Surfaces Using a Deep Learning Technique

Financial services

ML/DL- Code References

[1] Browse state-of-the-art

[2] semantic-Segmentation

ML/DL- Book References

[1] Dive into Deep Learning

[2] Learning Python

[3] Python Machine Learning (Sebastian RAschka)utm_source=dzone&utm_medium=referral&utm_campaign=outreach

[4] Advanced Machine Learning with Python (john Hearty)

[5] Think Stats – Probability and Statistics for Programmers ( Allan B. Downey)

[6] Understanding Machine Learning: From Theory to Algorithms (Shai Shalev - Shwartz

[7] Deep Learning

[8] MIT Deep Learning Book (beautiful and flawless PDF version)

[9] Computer Vision Book