Skip to content

gowriaddepalli/ML_DL_Research_collab_base

Repository files navigation

ML_DL_Research_collab_base:

This is a repository of where we are trying to have all the knowledge base collected.

Conferences:

Literature Review:

CV Notes (Dr.Rob fergus):

Reinforcement Learning/ Cognitive Science/ Probabilistic graphical models (Dr. Brenden Lake):

High Performance Machine Learning:

  • HPML, fall 2019 (Drive), Dr. Ulrich Finkler.

Deep Learning (Dr. Yann Le Cunn):

Websites:

Notes:

Probability and statistics

Model implementation code:

Applied ML and Industry Research:

DL CV NLP Tensorflow implementation:

Papers:

Examples:

Blogs:

Courses:

Videos:

Interview Prep:

cheatsheat:

ML Production/Engineering guidelines:

NLP Research:

Mathematics: (3Blue1Brown series)

paper explanations(YouTube):

SOTA code:

Stanford Courses:

floating point deep learning:

Metrics:

Interpretability, biasness and fairness in ML:

ML + Systems:

ML:

AutoEncoders

Graph Convolutional Networks:

Evaluating Model:

GANS:

Energy based models:

Bayesian Machine Learning:

Model Monitoring:

Probability Distributions:

Out of Distribution:

JOBS PROFILE ANALYSIS

Contrastive learning:

ML Codebase techniques:

Pytorch:

AI SUMMER SCHOOL: Deep Learning Production.

DeepLearning:

Experiences from the field:

About

This is a repository of where we are trying to have all the knowledge base collected.

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published