Create animations for the optimization trajectory of neural nets

Overview

Animating the Optimization Trajectory of Neural Nets

PyPi Latest Release Release License

loss-landscape-anim lets you create animated optimization path in a 2D slice of the loss landscape of your neural networks. It is based on PyTorch Lightning, please follow its suggested style if you want to add your own model.

Check out my article Visualizing Optimization Trajectory of Neural Nets for more examples and some intuitive explanations.

0. Installation

From PyPI:

pip install loss-landscape-anim

From source, you need Poetry. Once you cloned this repo, run the command below to install the dependencies.

poetry install

1. Basic Examples

With the provided spirals dataset and the default multilayer perceptron MLP model, you can directly call loss_landscape_anim to get a sample animated GIF like this:

# Use default MLP model and sample spirals dataset
loss_landscape_anim(n_epochs=300)

sample gif 1

Note: if you are using it in a notebook, don't forget to include the following at the top:

%matplotlib notebook

Here's another example – the LeNet5 convolutional network on the MNIST dataset. There are many levers you can tune: learning rate, batch size, epochs, frames per second of the GIF output, a seed for reproducible results, whether to load from a trained model, etc. Check out the function signature for more details.

bs = 16
lr = 1e-3
datamodule = MNISTDataModule(batch_size=bs, n_examples=3000)
model = LeNet(learning_rate=lr)

optim_path, loss_steps, accu_steps = loss_landscape_anim(
    n_epochs=10,
    model=model,
    datamodule=datamodule,
    optimizer="adam",
    giffps=15,
    seed=SEED,
    load_model=False,
    output_to_file=True,
    return_data=True,  # Optional return values if you need them
    gpus=1  # Enable GPU training if available
)

GPU training is supported. Just pass gpus into loss_landscape_anim if they are available.

The output of LeNet5 on the MNIST dataset looks like this:

sample gif 2

2. Why PCA?

To create a 2D visualization, the first thing to do is to pick the 2 directions that define the plane. In the paper Visualizing the Loss Landscape of Neural Nets, the authors argued why 2 random directions don't work and why PCA is much better. In summary,

  1. 2 random vectors in high dimensional space have a high probability of being orthogonal, and they can hardly capture any variation for the optimization path. The path’s projection onto the plane spanned by the 2 vectors will just look like random walk.

  2. If we pick one direction to be the vector pointing from the initial parameters to the final trained parameters, and another direction at random, the visualization will look like a straight line because the second direction doesn’t capture much variance compared to the first.

  3. If we use principal component analysis (PCA) on the optimization path and get the top 2 components, we can visualize the loss over the 2 orthogonal directions with the most variance.

For showing the most motion in 2D, PCA is preferred. If you need a quick recap on PCA, here's a minimal example you can go over under 3 minutes.

3. Random and Custom Directions

Although PCA is a good approach for picking the directions, if you need more control, the code also allows you to set any 2 fixed directions, either generated at random or handpicked.

For 2 random directions, set reduction_method to "random", e.g.

loss_landscape_anim(n_epochs=300, load_model=False, reduction_method="random")

For 2 fixed directions of your choosing, set reduction_method to "custom", e.g.

import numpy as np

n_params = ... # number of parameters your model has
u_gen = np.random.normal(size=n_params)
u = u_gen / np.linalg.norm(u_gen)
v_gen = np.random.normal(size=n_params)
v = v_gen / np.linalg.norm(v_gen)

loss_landscape_anim(
    n_epochs=300, load_model=False, reduction_method="custom", custom_directions=(u, v)
)

Here is an sample GIF produced by two random directions:

sample gif 3

By default, reduction_method="pca".

4. Custom Dataset and Model

  1. Prepare your DataModule. Refer to datamodule.py for examples.
  2. Define your custom model that inherits model.GenericModel. Refer to model.py for examples.
  3. Once you correctly setup your custom DataModule and model, call the function as shown below to train the model and plot the loss landscape animation.
bs = ...
lr = ...
datamodule = YourDataModule(batch_size=bs)
model = YourModel(learning_rate=lr)

loss_landscape_anim(
    n_epochs=10,
    model=model,
    datamodule=datamodule,
    optimizer="adam",
    seed=SEED,
    load_model=False,
    output_to_file=True
)

5. Comparing Different Optimizers

As mentioned in section 2, the optimization path usually falls into a very low-dimensional space, and its projection in other directions may look like random walk. On the other hand, different optimizers can take very different paths in the high dimensional space. As a result, it is difficult to pick 2 directions to effectively compare different optimizers.

In this example, I have adam, sgd, adagrad, rmsprop initialized with the same parameters. The two figures below share the same 2 random directions but are centered around different local minima. The first figure centers around the one Adam finds, the second centers around the one RMSprop finds. Essentially, the planes are 2 parallel slices of the loss landscape.

The first figure shows that when centering on the end of Adam's path, it looks like RMSprop is going somewhere with larger loss value. But that is an illusion. If you inspect the loss values of RMSprop, it actually finds a local optimum that has a lower loss than Adam's.

Same 2 directions centering on Adam's path:

adam

Same 2 directions centering on RMSprop's path:

rmsprop

This is a good reminder that the contours are just a 2D slice out of a very high-dimensional loss landscape, and the projections can't reflect the actual path.

However, we can see that the contours are convex no matter where it centers around in these 2 special cases. It more or less reflects that the optimizers shouldn't have a hard time finding a relatively good local minimum. To measure convexity more rigorously, the paper [1] mentioned a better method – using principal curvature, i.e. the eigenvalues of the Hessian. Check out the end of section 6 in the paper for more details.

Reference

[1] Visualizing the Loss Landscape of Neural Nets

You might also like...
Real-CUGAN - Real Cascade U-Nets for Anime Image Super Resolution

Real Cascade U-Nets for Anime Image Super Resolution 中文 | English 🔥 Real-CUGAN

Genetic Algorithm, Particle Swarm Optimization, Simulated Annealing, Ant Colony Optimization Algorithm,Immune Algorithm, Artificial Fish Swarm Algorithm, Differential Evolution and TSP(Traveling salesman)
Genetic Algorithm, Particle Swarm Optimization, Simulated Annealing, Ant Colony Optimization Algorithm,Immune Algorithm, Artificial Fish Swarm Algorithm, Differential Evolution and TSP(Traveling salesman)

scikit-opt Swarm Intelligence in Python (Genetic Algorithm, Particle Swarm Optimization, Simulated Annealing, Ant Colony Algorithm, Immune Algorithm,A

library for nonlinear optimization, wrapping many algorithms for global and local, constrained or unconstrained, optimization

NLopt is a library for nonlinear local and global optimization, for functions with and without gradient information. It is designed as a simple, unifi

Racing line optimization algorithm in python that uses Particle Swarm Optimization.
Racing line optimization algorithm in python that uses Particle Swarm Optimization.

Racing Line Optimization with PSO This repository contains a racing line optimization algorithm in python that uses Particle Swarm Optimization. Requi

Code + pre-trained models for the paper Keeping Your Eye on the Ball Trajectory Attention in Video Transformers

Motionformer This is an official pytorch implementation of paper Keeping Your Eye on the Ball: Trajectory Attention in Video Transformers. In this rep

Learning trajectory representations using self-supervision and programmatic supervision.
Learning trajectory representations using self-supervision and programmatic supervision.

Trajectory Embedding for Behavior Analysis (TREBA) Implementation from the paper: Jennifer J. Sun, Ann Kennedy, Eric Zhan, David J. Anderson, Yisong Y

A selection of State Of The Art research papers (and code) on human locomotion (pose + trajectory) prediction (forecasting)

A selection of State Of The Art research papers (and code) on human trajectory prediction (forecasting). Papers marked with [W] are workshop papers.

A Planar RGB-D SLAM which utilizes Manhattan World structure to provide optimal camera pose trajectory while also providing a sparse reconstruction containing points, lines and planes, and a dense surfel-based reconstruction.
A Planar RGB-D SLAM which utilizes Manhattan World structure to provide optimal camera pose trajectory while also providing a sparse reconstruction containing points, lines and planes, and a dense surfel-based reconstruction.

ManhattanSLAM Authors: Raza Yunus, Yanyan Li and Federico Tombari ManhattanSLAM is a real-time SLAM library for RGB-D cameras that computes the camera

This is the codebase for the ICLR 2021 paper Trajectory Prediction using Equivariant Continuous Convolution
This is the codebase for the ICLR 2021 paper Trajectory Prediction using Equivariant Continuous Convolution

Trajectory Prediction using Equivariant Continuous Convolution (ECCO) This is the codebase for the ICLR 2021 paper Trajectory Prediction using Equivar

Owner
Logan Yang
Software engineer, machine learning practitioner
Logan Yang
PyTorch CZSL framework containing GQA, the open-world setting, and the CGE and CompCos methods.

Compositional Zero-Shot Learning This is the official PyTorch code of the CVPR 2021 works Learning Graph Embeddings for Compositional Zero-shot Learni

EML Tübingen 70 Dec 27, 2022
Koç University deep learning framework.

Knet Knet (pronounced "kay-net") is the Koç University deep learning framework implemented in Julia by Deniz Yuret and collaborators. It supports GPU

1.4k Dec 31, 2022
A real world application of a Recurrent Neural Network on a binary classification of time series data

What is this This is a real world application of a Recurrent Neural Network on a binary classification of time series data. This project includes data

Josep Maria Salvia Hornos 2 Jan 30, 2022
A Probabilistic End-To-End Task-Oriented Dialog Model with Latent Belief States towards Semi-Supervised Learning

LABES This is the code for EMNLP 2020 paper "A Probabilistic End-To-End Task-Oriented Dialog Model with Latent Belief States towards Semi-Supervised L

17 Sep 28, 2022
Evaluating saliency methods on artificial data with different background types

Evaluating saliency methods on artificial data with different background types This repository contains the relevant code for the MedNeurips 2021 subm

2 Jul 05, 2022
This is the repository for the AAAI 21 paper [Contrastive and Generative Graph Convolutional Networks for Graph-based Semi-Supervised Learning].

CG3 This is the repository for the AAAI 21 paper [Contrastive and Generative Graph Convolutional Networks for Graph-based Semi-Supervised Learning]. R

12 Oct 28, 2022
Predicting Tweet Sentiment Maching Learning and streamlit

Predicting-Tweet-Sentiment-Maching-Learning-and-streamlit (I prefere using Visual Studio Code ) Open the folder in VS Code Run the first cell in requi

1 Nov 20, 2021
SiT: Self-supervised vIsion Transformer

This repository contains the official PyTorch self-supervised pretraining, finetuning, and evaluation codes for SiT (Self-supervised image Transformer).

Sara Ahmed 275 Dec 28, 2022
CIFAR-10_train-test - training and testing codes for dataset CIFAR-10

CIFAR-10_train-test - training and testing codes for dataset CIFAR-10

Frederick Wang 3 Apr 26, 2022
Pytorch Implementation of DiffSinger: Diffusion Acoustic Model for Singing Voice Synthesis (TTS Extension)

DiffSinger - PyTorch Implementation PyTorch implementation of DiffSinger: Diffusion Acoustic Model for Singing Voice Synthesis (TTS Extension). Status

Keon Lee 152 Jan 02, 2023
《Single Image Reflection Removal Beyond Linearity》(CVPR 2019)

Single-Image-Reflection-Removal-Beyond-Linearity Paper Single Image Reflection Removal Beyond Linearity. Qiang Wen, Yinjie Tan, Jing Qin, Wenxi Liu, G

Qiang Wen 51 Jun 24, 2022
Live Hand Tracking Using Python

Live-Hand-Tracking-Using-Python Project Description: In this project, we will be

Hassan Shahzad 2 Jan 06, 2022
3rd Place Solution of the Traffic4Cast Core Challenge @ NeurIPS 2021

3rd Place Solution of Traffic4Cast 2021 Core Challenge This is the code for our solution to the NeurIPS 2021 Traffic4Cast Core Challenge. Paper Our so

7 Jul 25, 2022
Disentangled Face Attribute Editing via Instance-Aware Latent Space Search, accepted by IJCAI 2021.

Instance-Aware Latent-Space Search This is a PyTorch implementation of the following paper: Disentangled Face Attribute Editing via Instance-Aware Lat

67 Dec 21, 2022
PyTorch Implementation of Spatially Consistent Representation Learning(SCRL)

Spatially Consistent Representation Learning (CVPR'21) Official PyTorch implementation of Spatially Consistent Representation Learning (SCRL). This re

Kakao Brain 102 Nov 03, 2022
StocksMA is a package to facilitate access to financial and economic data of Moroccan stocks.

Creating easier access to the Moroccan stock market data What is StocksMA ? StocksMA is a package to facilitate access to financial and economic data

Salah Eddine LABIAD 28 Jan 04, 2023
Car Price Predictor App used to predict the price of the car based on certain input parameters created using python's scikit-learn, fastapi, numpy and joblib packages.

Pricefy Car Price Predictor App used to predict the price of the car based on certain input parameters created using python's scikit-learn, fastapi, n

Siva Prakash 1 May 10, 2022
we propose a novel deep network, named feature aggregation and refinement network (FARNet), for the automatic detection of anatomical landmarks.

Feature Aggregation and Refinement Network for 2D Anatomical Landmark Detection Overview Localization of anatomical landmarks is essential for clinica

aoyueyuan 0 Aug 28, 2022
UnsupervisedR&R: Unsupervised Pointcloud Registration via Differentiable Rendering

UnsupervisedR&R: Unsupervised Pointcloud Registration via Differentiable Rendering This repository holds all the code and data for our recent work on

Mohamed El Banani 118 Dec 06, 2022
Extracts essential Mediapipe face landmarks and arranges them in a sequenced order.

simplified_mediapipe_face_landmarks Extracts essential Mediapipe face landmarks and arranges them in a sequenced order. The default 478 Mediapipe face

Irfan 13 Oct 04, 2022