Skip to main content
Ctrl+K
Logo image Logo image

Site Navigation

  • Schedule
  • Technical Help
  • Quick links and policies
  • Basics And Pytorch (W1D1)
  • Linear Deep Learning (W1D2)
  • Multi Layer Perceptrons (W1D3)
  • Optimization (W1D4)
  • Regularization (W2D1)
  • Deep Learning: The Basics and Fine Tuning Wrap-up
  • Convnets And Dl Thinking (W2D2)
  • Modern Convnets (W2D3)
  • Generative Models (W2D4)
  • Attention And Transformers (W2D5)
  • Time Series And Natural Language Processing (W3D1)
  • Dl Thinking2 (W3D2)
  • Deep Learning: Convnets and NLP
  • Unsupervised And Self Supervised Learning (W3D3)
  • Basic Reinforcement Learning (W3D4)
  • Reinforcement Learning For Games And Dl Thinking3 (W3D5)
  • Deploy Models (Bonus)
  • Introduction
  • Daily guide for projects
  • Modeling Step-by-Step Guide
  • Project Templates
  • Models and Data sets

Site Navigation

  • Schedule
  • Technical Help
  • Quick links and policies
  • Basics And Pytorch (W1D1)
  • Linear Deep Learning (W1D2)
  • Multi Layer Perceptrons (W1D3)
  • Optimization (W1D4)
  • Regularization (W2D1)
  • Deep Learning: The Basics and Fine Tuning Wrap-up
  • Convnets And Dl Thinking (W2D2)
  • Modern Convnets (W2D3)
  • Generative Models (W2D4)
  • Attention And Transformers (W2D5)
  • Time Series And Natural Language Processing (W3D1)
  • Dl Thinking2 (W3D2)
  • Deep Learning: Convnets and NLP
  • Unsupervised And Self Supervised Learning (W3D3)
  • Basic Reinforcement Learning (W3D4)
  • Reinforcement Learning For Games And Dl Thinking3 (W3D5)
  • Deploy Models (Bonus)
  • Introduction
  • Daily guide for projects
  • Modeling Step-by-Step Guide
  • Project Templates
  • Models and Data sets
Logo image Logo image
Ctrl+K
  • Introduction
  • Schedule
    • General schedule
    • Shared calendars
    • Timezone widget
  • Technical Help
    • Using jupyterbook
      • Using Google Colab
      • Using Kaggle
    • Using Discord
  • Quick links and policies

Basics Module

  • Basics And Pytorch (W1D1)
    • Tutorial 1: PyTorch
  • Linear Deep Learning (W1D2)
    • Tutorial 1: Gradient Descent and AutoGrad
    • Tutorial 2: Learning Hyperparameters
    • Tutorial 3: Deep linear neural networks
    • Bonus Lecture: Yoshua Bengio
  • Multi Layer Perceptrons (W1D3)
    • Tutorial 1: Biological vs. Artificial Neural Networks
    • Tutorial 2: Deep MLPs

Fine Tuning

  • Optimization (W1D4)
    • Tutorial 1: Optimization techniques
  • Regularization (W2D1)
    • Tutorial 1: Regularization techniques part 1
    • Tutorial 2: Regularization techniques part 2
  • Deep Learning: The Basics and Fine Tuning Wrap-up

ConvNets and Generative Models

  • Convnets And Dl Thinking (W2D2)
    • Tutorial 1: Introduction to CNNs
    • Tutorial 2: Deep Learning Thinking 1: Cost Functions
    • Bonus Lecture: Kyunghyun Cho
  • Modern Convnets (W2D3)
    • Tutorial 1: Learn how to use modern convnets
    • Bonus Tutorial: Facial recognition using modern convnets
  • Generative Models (W2D4)
    • Tutorial 1: Variational Autoencoders (VAEs)
    • Tutorial 2: Diffusion models
    • Tutorial 3: Image, Conditional Diffusion and Beyond
    • Bonus Lecture: Geoffrey Hinton

Natural Language Processing

  • Attention And Transformers (W2D5)
    • Tutorial 1: Learn how to work with Transformers
    • Bonus Tutorial: Understanding Pre-training, Fine-tuning and Robustness of Transformers
  • Time Series And Natural Language Processing (W3D1)
    • Tutorial 1: Introduction to processing time series
    • Tutorial 2: Natural Language Processing and LLMs
    • Bonus Tutorial: Multilingual Embeddings
  • Dl Thinking2 (W3D2)
    • Tutorial 1: Deep Learning Thinking 2: Architectures and Multimodal DL thinking
  • Deep Learning: Convnets and NLP

Unsupervised and Reinforcement Learning

  • Unsupervised And Self Supervised Learning (W3D3)
    • Tutorial 1: Un/Self-supervised learning methods
    • Bonus Lecture: Melanie Mitchell
  • Basic Reinforcement Learning (W3D4)
    • Tutorial 1: Basic Reinforcement Learning
    • Bonus Lecture: Chealsea Finn
  • Reinforcement Learning For Games And Dl Thinking3 (W3D5)
    • Tutorial 1: Reinforcement Learning For Games
    • Tutorial 2: Deep Learning Thinking 3
    • Bonus Tutorial: Planning with Monte Carlo Tree Search
    • Bonus Lecture: Amita Kapoor

Deploy Models on the Web

  • Deploy Models (Bonus)
    • Bonus Tutorial: Deploying Neural Networks on the Web

Project Booklet

  • Introduction to projects
  • Daily guide for projects
  • Modeling Step-by-Step Guide
    • Modeling Steps 1 - 2
    • Modeling Steps 3 - 4
    • Modeling Steps 5 - 6
    • Modeling Steps 7 - 9
    • Modeling Steps 10
    • Example Data Project: the Train Illusion
    • Example Model Project: the Train Illusion
    • Example Deep Learning Project
  • Project Templates
    • Computer Vision
      • Slides
      • Ideas
      • Knowledge Extraction from a Convolutional Neural Network
      • Music classification and generation with spectrograms
      • Something Screwy - image recognition, detection, and classification of screws
      • Data Augmentation in image classification models
      • Transfer Learning
    • Reinforcement Learning
      • Slides
      • Ideas
      • NMA Robolympics: Controlling robots using reinforcement learning
      • Performance Analysis of DQN Algorithm on the Lunar Lander task
      • Using RL to Model Cognitive Tasks
    • Natural Language Processing
      • Slides
      • Ideas
      • Twitter Sentiment Analysis
      • Machine Translation
    • Neuroscience
      • Slides
      • Ideas
      • Animal Pose Estimation
      • Segmentation and Denoising
      • Load algonauts videos
      • Vision with Lost Glasses: Modelling how the brain deals with noisy input
      • Moving beyond Labels: Finetuning CNNs on BOLD response
      • Focus on what matters: inferring low-dimensional dynamics from neural recordings
  • Models and Data sets
  • repository
  • open issue
  • .md

Quick links and policies

Contents

  • Quick links
  • Policies

Quick links and policies#

Quick links#

Course materials: https://deeplearning.neuromatch.io/

Portal: https://portal.neuromatchacademy.org/

Website: https://neuromatch.io/deep-learning-course/

Code of Conduct and Code of Conduct Violations Form: NeuromatchAcademy/precourse

Project Exemption Form: https://airtable.com/shrubhlgsWJ8DuA7E

Attendance Policy & Waiver: https://docs.neuromatch.io/p/BI_ssrrHYrfg_E/Academy-Student-Attendance-Policy-and-Waivers

Policies#

See full course attendance policy here.

previous

Using Discord

next

Basics And Pytorch

On this page
  • Quick links
  • Policies

By Neuromatch

Last updated on None.

The contents of this repository are shared under the Creative Commons Attribution 4.0 International License. Software elements are additionally licensed under the BSD (3-Clause) License.