Foundations

ML Fundamentals

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

8500
lessons
EfficientNet from scratch in Pytorch
📐 ML Fundamentals
EfficientNet from scratch in Pytorch
Aladdin Persson Beginner 5y ago
EfficientNet Paper Walkthrough
📐 ML Fundamentals
EfficientNet Paper Walkthrough
Aladdin Persson Beginner 5y ago
L7.0 GPU resources & Google Colab
📐 ML Fundamentals
L7.0 GPU resources & Google Colab
Sebastian Raschka Beginner 5y ago
2020 PyTorch Summer Hackathon Winners Recap
📐 ML Fundamentals
2020 PyTorch Summer Hackathon Winners Recap
PyTorch Beginner 5y ago
Javier Ideami on Loss Landscapes and the Flatland Perspective
📐 ML Fundamentals
Javier Ideami on Loss Landscapes and the Flatland Perspective
Weights & Biases Beginner 5y ago
IBM Applied AI Professional Certificate: Gain AI Skills on  Coursera
📐 ML Fundamentals
IBM Applied AI Professional Certificate: Gain AI Skills on Coursera
Coursera Beginner 5y ago
Explainable AI explained! | #2 By-design interpretable models with Microsofts InterpretML
📐 ML Fundamentals
Explainable AI explained! | #2 By-design interpretable models with Microsofts InterpretML
DeepFindr Beginner 5y ago
How to get started with Graph ML? (Blog walkthrough)
📐 ML Fundamentals
How to get started with Graph ML? (Blog walkthrough)
Aleksa Gordić - The AI Epiphany Beginner 5y ago
L6.5 A Closer Look at the PyTorch API
📐 ML Fundamentals
L6.5 A Closer Look at the PyTorch API
Sebastian Raschka Beginner 5y ago
An AI software able to detect and count plastic waste in the ocean
📐 ML Fundamentals
An AI software able to detect and count plastic waste in the ocean
What's AI by Louis-François Bouchard Beginner 5y ago
Piero Molino — The Secret Behind Building Successful Open Source Projects
📐 ML Fundamentals
Piero Molino — The Secret Behind Building Successful Open Source Projects
Weights & Biases Beginner 5y ago
The Art of Learning Data Science (How to learn data science)
📐 ML Fundamentals
The Art of Learning Data Science (How to learn data science)
Data Professor Beginner 5y ago
Intel: Machine Learning and the Future of the Data Center w/Intel
📐 ML Fundamentals
Intel: Machine Learning and the Future of the Data Center w/Intel
The New Stack Beginner 5y ago
What is OneAPI? The Software Tool Gap: A Roundtable Discussion
📐 ML Fundamentals
What is OneAPI? The Software Tool Gap: A Roundtable Discussion
The New Stack Beginner 5y ago
Join us at TensorFlow Everywhere
📐 ML Fundamentals
Join us at TensorFlow Everywhere
TensorFlow Beginner 5y ago
What the Heck is Bayesian Stats ?? : Data Science Basics
📐 ML Fundamentals
What the Heck is Bayesian Stats ?? : Data Science Basics
ritvikmath Beginner 5y ago
How does a Data Scientist Fight FRAUD?
📐 ML Fundamentals
How does a Data Scientist Fight FRAUD?
CodeEmporium Beginner 5y ago
Push Notifications from Jupyter Notebook after Code Execution [Python for Data Science]
📐 ML Fundamentals
Push Notifications from Jupyter Notebook after Code Execution [Python for Data Science]
1littlecoder Beginner 5y ago
The SoftMax Derivative, Step-by-Step!!!
📐 ML Fundamentals
The SoftMax Derivative, Step-by-Step!!!
StatQuest with Josh Starmer Beginner 5y ago
Neural Networks Part 5: ArgMax and SoftMax
📐 ML Fundamentals
Neural Networks Part 5: ArgMax and SoftMax
StatQuest with Josh Starmer Beginner 5y ago
Simple Explanation of LSTM | Deep Learning Tutorial 36 (Tensorflow, Keras & Python)
📐 ML Fundamentals
Simple Explanation of LSTM | Deep Learning Tutorial 36 (Tensorflow, Keras & Python)
codebasics Beginner 5y ago
Build a 1D convolutional neural network, part 7: Evaluate the model
📐 ML Fundamentals
Build a 1D convolutional neural network, part 7: Evaluate the model
Brandon Rohrer Beginner 5y ago
Build a 1D convolutional neural network, part 6: Text summary and loss history
📐 ML Fundamentals
Build a 1D convolutional neural network, part 6: Text summary and loss history
Brandon Rohrer Beginner 5y ago
L6.4 Training ADALINE with PyTorch -- Code Example
📐 ML Fundamentals
L6.4 Training ADALINE with PyTorch -- Code Example
Sebastian Raschka Beginner 5y ago
L6.3 Automatic Differentiation in PyTorch -- Code Example
📐 ML Fundamentals
L6.3 Automatic Differentiation in PyTorch -- Code Example
Sebastian Raschka Beginner 5y ago
L6.2 Understanding Automatic Differentiation via Computation Graphs
📐 ML Fundamentals
L6.2 Understanding Automatic Differentiation via Computation Graphs
Sebastian Raschka Beginner 5y ago
L6.1 Learning More About PyTorch
📐 ML Fundamentals
L6.1 Learning More About PyTorch
Sebastian Raschka Beginner 5y ago
L6.0 Automatic Differentiation in PyTorch -- Lecture Overview
📐 ML Fundamentals
L6.0 Automatic Differentiation in PyTorch -- Lecture Overview
Sebastian Raschka Beginner 5y ago
How to solve Santander Kaggle Transaction Competition [Top 1% Solution, No Ensemble]
📐 ML Fundamentals
How to solve Santander Kaggle Transaction Competition [Top 1% Solution, No Ensemble]
Aladdin Persson Beginner 5y ago
L5.8 Adaline Code Example
📐 ML Fundamentals
L5.8 Adaline Code Example
Sebastian Raschka Beginner 5y ago
L5.7 Training an Adaptive Linear Neuron (Adaline)
📐 ML Fundamentals
L5.7 Training an Adaptive Linear Neuron (Adaline)
Sebastian Raschka Beginner 5y ago
L5.6 Understanding Gradient Descent
📐 ML Fundamentals
L5.6 Understanding Gradient Descent
Sebastian Raschka Beginner 5y ago
L5.5 (Optional) Calculus Refresher II: Gradients
📐 ML Fundamentals
L5.5 (Optional) Calculus Refresher II: Gradients
Sebastian Raschka Beginner 5y ago
L5.4 (Optional) Calculus Refresher I: Derivatives
📐 ML Fundamentals
L5.4 (Optional) Calculus Refresher I: Derivatives
Sebastian Raschka Beginner 5y ago
L5.3 An Iterative Training Algorithm for Linear Regression
📐 ML Fundamentals
L5.3 An Iterative Training Algorithm for Linear Regression
Sebastian Raschka Beginner 5y ago
L5.2 Relation Between Perceptron and Linear Regression
📐 ML Fundamentals
L5.2 Relation Between Perceptron and Linear Regression
Sebastian Raschka Beginner 5y ago
L5.1 Online, Batch, and Minibatch Mode
📐 ML Fundamentals
L5.1 Online, Batch, and Minibatch Mode
Sebastian Raschka Beginner 5y ago
L5.0 Gradient Descent -- Lecture Overview
📐 ML Fundamentals
L5.0 Gradient Descent -- Lecture Overview
Sebastian Raschka Beginner 5y ago
How to do the Titanic Kaggle Competition
📐 ML Fundamentals
How to do the Titanic Kaggle Competition
Aladdin Persson Beginner 5y ago
Intel: How Google Health Uses Machine Learning With Intel
📐 ML Fundamentals
Intel: How Google Health Uses Machine Learning With Intel
The New Stack Beginner 5y ago
L4.5 A Fully Connected (Linear) Layer in PyTorch
📐 ML Fundamentals
L4.5 A Fully Connected (Linear) Layer in PyTorch
Sebastian Raschka Beginner 5y ago
L4.4 Notational Conventions for Neural Networks
📐 ML Fundamentals
L4.4 Notational Conventions for Neural Networks
Sebastian Raschka Beginner 5y ago
L4.3 Vectors, Matrices, and Broadcasting
📐 ML Fundamentals
L4.3 Vectors, Matrices, and Broadcasting
Sebastian Raschka Beginner 5y ago
L4.2 Tensors in PyTorch
📐 ML Fundamentals
L4.2 Tensors in PyTorch
Sebastian Raschka Beginner 5y ago
L4.1 Tensors in Deep Learning
📐 ML Fundamentals
L4.1 Tensors in Deep Learning
Sebastian Raschka Beginner 5y ago
L4.0 Linear Algebra for Deep Learning -- Lecture Overview
📐 ML Fundamentals
L4.0 Linear Algebra for Deep Learning -- Lecture Overview
Sebastian Raschka Beginner 5y ago
Build a 1D convolutional neural network, part 5: One Hot, Flatten, and Logging blocks
📐 ML Fundamentals
Build a 1D convolutional neural network, part 5: One Hot, Flatten, and Logging blocks
Brandon Rohrer Beginner 5y ago
Build a 1D convolutional neural network , part 3: Connect the blocks into a network structure
📐 ML Fundamentals
Build a 1D convolutional neural network , part 3: Connect the blocks into a network structure
Brandon Rohrer Beginner 5y ago
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Digital Signal Processing 4: Applications
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Digital Signal Processing 4: Applications
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Machine Learning and Human Learning
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Machine Learning and Human Learning
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Developing Explainable AI (XAI)
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Developing Explainable AI (XAI)
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AI-First Test Automation with Functionize Essentials
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AI-First Test Automation with Functionize Essentials
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Developing Machine Learning Solutions
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Developing Machine Learning Solutions
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ML Concepts, Models & Workflow Essentials
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ML Concepts, Models & Workflow Essentials
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