Foundations

ML Fundamentals

Neural networks, backpropagation, gradient descent — the maths behind AI

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ML Maths Basics
beginner
Manipulate vectors and matrices
Supervised Learning
beginner
Train decision trees, random forests, and neural nets
Unsupervised Learning
intermediate
Apply k-means and DBSCAN clustering
ML Pipelines
intermediate
Engineer features and handle missing data
AlphaFold2 - Quick Thoughts on 3D Spatial Graphs and Graph Neural Networks
ML Fundamentals
AlphaFold2 - Quick Thoughts on 3D Spatial Graphs and Graph Neural Networks
Connor Shorten Beginner 5y ago
Manolis Kellis: Meaning of Life, the Universe, and Everything | Lex Fridman Podcast #142
ML Fundamentals ⚡ AI Lesson
Manolis Kellis: Meaning of Life, the Universe, and Everything | Lex Fridman Podcast #142
Lex Fridman Beginner 5y ago
NVAITC Webinar: Deploying Models with TensorRT
ML Fundamentals
NVAITC Webinar: Deploying Models with TensorRT
NVIDIA Developer Beginner 5y ago
NVAITC Webinar: Automatic Mixed Precision Training in PyTorch
ML Fundamentals
NVAITC Webinar: Automatic Mixed Precision Training in PyTorch
NVIDIA Developer Beginner 5y ago
Big Data, Hadoop and Machine Learning Explained using Dams
ML Fundamentals ⚡ AI Lesson
Big Data, Hadoop and Machine Learning Explained using Dams
Imaad Mohamed Khan Beginner 5y ago
Predictive Coding Approximates Backprop along Arbitrary Computation Graphs (Paper Explained)
ML Fundamentals
Predictive Coding Approximates Backprop along Arbitrary Computation Graphs (Paper Explained)
Yannic Kilcher Beginner 5y ago
Getting ready to learn Python, Windows edition #7: git for repository management
ML Fundamentals
Getting ready to learn Python, Windows edition #7: git for repository management
Brandon Rohrer Beginner 5y ago
Getting ready to learn Python, Windows edition #6: pip for package management
ML Fundamentals
Getting ready to learn Python, Windows edition #6: pip for package management
Brandon Rohrer Beginner 5y ago
How to get software engineering internship | How to get programming Job
ML Fundamentals
How to get software engineering internship | How to get programming Job
codebasics Beginner 5y ago
Credit Risk Modeling in Python Course
ML Fundamentals
Credit Risk Modeling in Python Course
365 Data Science Beginner 5y ago
10 things I'm grateful for this Thanksgiving
ML Fundamentals
10 things I'm grateful for this Thanksgiving
Lex Fridman Beginner 5y ago
Solving Nintendo HireMe!!! with "Basic" Math
ML Fundamentals ⚡ AI Lesson
Solving Nintendo HireMe!!! with "Basic" Math
LiveOverflow Beginner 5y ago
Level Up Your Data Science Skills #shorts
ML Fundamentals ⚡ AI Lesson
Level Up Your Data Science Skills #shorts
Data Professor Beginner 5y ago
Machine Learning Tutorial Python - 17: L1 and L2 Regularization | Lasso, Ridge Regression
ML Fundamentals ⚡ AI Lesson
Machine Learning Tutorial Python - 17: L1 and L2 Regularization | Lasso, Ridge Regression
codebasics Beginner 5y ago
W&B Reports: Take notes, save snapshots, and collaborate on ML projects
ML Fundamentals
W&B Reports: Take notes, save snapshots, and collaborate on ML projects
Weights & Biases Beginner 5y ago
Ep#4 - Are Privacy-enchancing technologies a myth?
ML Fundamentals
Ep#4 - Are Privacy-enchancing technologies a myth?
MLOps.community Beginner 5y ago
Private AI Education Series Announcement | PyTorch Developer Day 2020
ML Fundamentals
Private AI Education Series Announcement | PyTorch Developer Day 2020
PyTorch Beginner 5y ago
PyTorch/XLA Internal | PyTorch Developer Day 2020
ML Fundamentals
PyTorch/XLA Internal | PyTorch Developer Day 2020
PyTorch Beginner 5y ago
W&B Deep Learning Salon - SafeLife & DeepForm
ML Fundamentals ⚡ AI Lesson
W&B Deep Learning Salon - SafeLife & DeepForm
Weights & Biases Beginner 5y ago
11.6 Nested CV for Algorithm Selection Code Example (L11 Model Eval. Part 4)
ML Fundamentals
11.6 Nested CV for Algorithm Selection Code Example (L11 Model Eval. Part 4)
Sebastian Raschka Beginner 5y ago
11.5 Nested CV for Algorithm Selection (L11 Model Eval. Part 4)
ML Fundamentals
11.5 Nested CV for Algorithm Selection (L11 Model Eval. Part 4)
Sebastian Raschka Beginner 5y ago
create-ml-app - Machine Learning Project Template that Handle Dependencies
ML Fundamentals
create-ml-app - Machine Learning Project Template that Handle Dependencies
1littlecoder Beginner 5y ago
Data Science and Predictive Vehicle Maintenance with Jen | 365 Data Use Cases
ML Fundamentals
Data Science and Predictive Vehicle Maintenance with Jen | 365 Data Use Cases
365 Data Science Beginner 5y ago
Support Vector Machines : Data Science Concepts
ML Fundamentals ⚡ AI Lesson
Support Vector Machines : Data Science Concepts
ritvikmath Beginner 5y ago
Kite: Free AI Coding Assistant + Giveaway
ML Fundamentals
Kite: Free AI Coding Assistant + Giveaway
Data Professor Beginner 5y ago
Neural Networks Pt. 3: ReLU In Action!!!
ML Fundamentals
Neural Networks Pt. 3: ReLU In Action!!!
StatQuest with Josh Starmer Beginner 5y ago
Leaf Disease Classification Using PyTorch
ML Fundamentals
Leaf Disease Classification Using PyTorch
Abhishek Thakur Beginner 5y ago
PyTorch Basics and Gradient Descent | Deep Learning with PyTorch: Zero to GANs | Part 1 of 6
ML Fundamentals
PyTorch Basics and Gradient Descent | Deep Learning with PyTorch: Zero to GANs | Part 1 of 6
freeCodeCamp.org Beginner 5y ago
Build Your Own PyTorch Trainer!
ML Fundamentals
Build Your Own PyTorch Trainer!
Abhishek Thakur Beginner 5y ago
Supervised vs Unsupervised vs Reinforcement Learning | Machine Learning Tutorial | Simplilearn
6:27
ML Fundamentals ⚡ AI Lesson
Supervised vs Unsupervised vs Reinforcement Learning | Machine Learning Tutorial | Simplilearn
Simplilearn Beginner 5y ago
NVAITC Webinar: Introduction to Convolutional Neural Networks
ML Fundamentals
NVAITC Webinar: Introduction to Convolutional Neural Networks
NVIDIA Developer Beginner 5y ago
Getting ready to learn Python, Mac edition #7: Build repositories with git
ML Fundamentals
Getting ready to learn Python, Mac edition #7: Build repositories with git
Brandon Rohrer Beginner 5y ago
Getting ready to learn Python, Mac edition #6: Download packages with pip
ML Fundamentals
Getting ready to learn Python, Mac edition #6: Download packages with pip
Brandon Rohrer Beginner 5y ago
MLPerf & PyTorch | PyTorch Developer Day 2020
ML Fundamentals
MLPerf & PyTorch | PyTorch Developer Day 2020
PyTorch Beginner 5y ago
Model Interpretability | PyTorch Developer Day 2020
ML Fundamentals
Model Interpretability | PyTorch Developer Day 2020
PyTorch Beginner 5y ago
Torch for R & Hasktorch: Bringing Torch to New Programming Languages | PyTorch Developer Day 2020
ML Fundamentals ⚡ AI Lesson
Torch for R & Hasktorch: Bringing Torch to New Programming Languages | PyTorch Developer Day 2020
PyTorch Beginner 5y ago
PyTorch on Windows | PyTorch Developer Day 2020
ML Fundamentals
PyTorch on Windows | PyTorch Developer Day 2020
PyTorch Beginner 5y ago
Open Challenges in Deep Learning Systems | PyTorch Developer Day 2020
ML Fundamentals
Open Challenges in Deep Learning Systems | PyTorch Developer Day 2020
PyTorch Beginner 5y ago
11.4 Statistical Tests for Algorithm Comparison (L11 Model Eval. Part 4)
ML Fundamentals
11.4 Statistical Tests for Algorithm Comparison (L11 Model Eval. Part 4)
Sebastian Raschka Beginner 5y ago
11.3 Multiple Pairwise Comparisons (L11 Model Eval. Part 4)
ML Fundamentals
11.3 Multiple Pairwise Comparisons (L11 Model Eval. Part 4)
Sebastian Raschka Beginner 5y ago
11.2 McNemar's Test for Pairwise Classifier Comparison (L11 Model Eval. Part 4)
ML Fundamentals
11.2 McNemar's Test for Pairwise Classifier Comparison (L11 Model Eval. Part 4)
Sebastian Raschka Beginner 5y ago
11.1 Lecture Overview (L11 Model Eval. Part 4)
ML Fundamentals
11.1 Lecture Overview (L11 Model Eval. Part 4)
Sebastian Raschka Beginner 5y ago
Transfer Learning | Deep Learning Tutorial 27 (Tensorflow, Keras & Python)
ML Fundamentals
Transfer Learning | Deep Learning Tutorial 27 (Tensorflow, Keras & Python)
codebasics Beginner 5y ago
10.8 K-fold CV 1-Standard Error Method -- Code Example (L10: Model Evaluation 3)
ML Fundamentals
10.8 K-fold CV 1-Standard Error Method -- Code Example (L10: Model Evaluation 3)
Sebastian Raschka Beginner 5y ago
10.7 K-fold CV 1-Standard Error Method (L10: Model Evaluation 3)
ML Fundamentals ⚡ AI Lesson
10.7 K-fold CV 1-Standard Error Method (L10: Model Evaluation 3)
Sebastian Raschka Beginner 5y ago
10.6 K-fold CV for Model Evaluation -- Code Examples (L10: Model Evaluation 3)
ML Fundamentals
10.6 K-fold CV for Model Evaluation -- Code Examples (L10: Model Evaluation 3)
Sebastian Raschka Beginner 5y ago
10.5 K-fold CV for Model Selection (L10: Model Evaluation 3)
ML Fundamentals ⚡ AI Lesson
10.5 K-fold CV for Model Selection (L10: Model Evaluation 3)
Sebastian Raschka Beginner 5y ago
Peter Norvig – Singularity Is in the Eye of the Beholder
ML Fundamentals
Peter Norvig – Singularity Is in the Eye of the Beholder
Weights & Biases Beginner 5y ago
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