Reverse engineer your pytorch vision models, in style

Related tags

Deep Learningrover
Overview

🔍 Rover

Reverse engineer your CNNs, in style

Open In Colab

Rover will help you break down your CNN and visualize the features from within the model. No need to write weirdly abstract code to visualize your model's features anymore.

💻 Usage

git clone https://github.com/Mayukhdeb/rover.git; cd rover

install requirements:

pip install -r requirements.txt
from rover import core
from rover.default_models import models_dict

core.run(models_dict = models_dict)

and then run the script with streamlit as:

$ streamlit run your_script.py

if everything goes right, you'll see something like:

You can now view your Streamlit app in your browser.

  Local URL: http://localhost:8501

🧙 Custom models

rover supports pretty much any PyTorch model with an input of shape [N, 3, H, W] (even segmentation models/VAEs and all that fancy stuff) with imagenet normalization on input.

import torchvision.models as models 
model = models.resnet34(pretrained= True)  ## or any other model (need not be from torchvision.models)

models_dict = {
    'my model': model,  ## add in any number of models :)
}

core.run(
    models_dict = models_dict
)

🖼️ Channel objective

Optimizes a single channel from one of the layer(s) selected.

  • layer index: specifies which layer you want to use out of the layers selected.
  • channel index: specifies the exact channel which needs to be visualized.

🧙‍♂️ Writing your own objective

This is for the smarties who like to write their own objective function. The only constraint is that the function should be named custom_func.

Here's an example:

def custom_func(layer_outputs):
    '''
    layer_outputs is a list containing 
    the outputs (torch.tensor) of each layer you selected

    In this example we'll try to optimize the following:
    * the entire first layer -> layer_outputs[0].mean()
    * 20th channel of the 2nd layer -> layer_outputs[1][20].mean()
    '''
    loss = layer_outputs[0].mean() + layer_outputs[1][20].mean()
    return -loss

Running on google colab

Check out this notebook. I'll also include the instructions here just in case.

Clone the repo + install dependencies

!git clone https://github.com/Mayukhdeb/rover.git
!pip install torch-dreams --quiet
!pip install streamlit --quiet

Navigate into the repo

import os 
os.chdir('rover')

Write your file into a script from a cell. Here I wrote it into test.py

%%writefile  test.py

from rover import core
from rover.default_models import models_dict

core.run(models_dict = models_dict)

Run script on a thread

import threading

proc = threading.Thread(target= os.system, args=['streamlit run test.py'])
proc.start()

Download ngrok:

!wget https://bin.equinox.io/c/4VmDzA7iaHb/ngrok-stable-linux-amd64.zip
!unzip -o ngrok-stable-linux-amd64.zi

More ngrok stuff

get_ipython().system_raw('./ngrok http 8501 &')

Get your URL where rover is hosted

!curl -s http://localhost:4040/api/tunnels | python3 -c \
    "import sys, json; print(json.load(sys.stdin)['tunnels'][0]['public_url'])"

💻 Args

  • width (int, optional): Width of image to be optimized
  • height (int, optional): Height of image to be optimized
  • iters (int, optional): Number of iterations, higher -> stronger visualization
  • lr (float, optional): Learning rate
  • rotate (deg) (int, optional): Max rotation in default transforms
  • scale max (float, optional): Max image size factor.
  • scale min (float, optional): Minimum image size factor.
  • translate (x) (float, optional): Maximum translation factor in x direction
  • translate (y) (float, optional): Maximum translation factor in y direction
  • weight decay (float, optional): Weight decay for default optimizer. Helps prevent high frequency noise.
  • gradient clip (float, optional): Maximum value of the norm of gradient.

Run locally

Clone the repo

git clone https://github.com/Mayukhdeb/rover.git

install requirements

pip install -r requirements.txt

showtime

streamlit run test.py
Owner
Mayukh Deb
Learning about life, one epoch at a time
Mayukh Deb
Stochastic Tensor Optimization for Robot Motion - A GPU Robot Motion Toolkit

STORM Stochastic Tensor Optimization for Robot Motion - A GPU Robot Motion Toolkit [Install Instructions] [Paper] [Website] This package contains code

NVIDIA Research Projects 101 Dec 12, 2022
Rethinking Transformer-based Set Prediction for Object Detection

Rethinking Transformer-based Set Prediction for Object Detection Here are the code for the ICCV paper. The code is adapted from Detectron2 and AdelaiD

Zhiqing Sun 62 Dec 03, 2022
Asymmetric Bilateral Motion Estimation for Video Frame Interpolation, ICCV2021

ABME (ICCV2021) Junheum Park, Chul Lee, and Chang-Su Kim Official PyTorch Code for "Asymmetric Bilateral Motion Estimation for Video Frame Interpolati

Junheum Park 86 Dec 28, 2022
Official Code For TDEER: An Efficient Translating Decoding Schema for Joint Extraction of Entities and Relations (EMNLP2021)

TDEER 🦌 🦒 Official Code For TDEER: An Efficient Translating Decoding Schema for Joint Extraction of Entities and Relations (EMNLP2021) Overview TDEE

33 Dec 23, 2022
Codes for AAAI 2022 paper: Context-aware Health Event Prediction via Transition Functions on Dynamic Disease Graphs

Context-Aware-Healthcare Codes for AAAI 2022 paper: Context-aware Health Event Prediction via Transition Functions on Dynamic Disease Graphs Download

LuChang 9 Dec 26, 2022
Telegram chatbot created with deep learning model (LSTM) and telebot library.

Telegram chatbot Telegram chatbot created with deep learning model (LSTM) and telebot library. Description This program will allow you to create very

1 Jan 04, 2022
Continuum Learning with GEM: Gradient Episodic Memory

Gradient Episodic Memory for Continual Learning Source code for the paper: @inproceedings{GradientEpisodicMemory, title={Gradient Episodic Memory

Facebook Research 360 Dec 27, 2022
A python interface for training Reinforcement Learning bots to battle on pokemon showdown

The pokemon showdown Python environment A Python interface to create battling pokemon agents. poke-env offers an easy-to-use interface for creating ru

Haris Sahovic 184 Dec 30, 2022
A paper using optimal transport to solve the graph matching problem.

GOAT A paper using optimal transport to solve the graph matching problem. https://arxiv.org/abs/2111.05366 Repo structure .github: Files specifying ho

neurodata 8 Jan 04, 2023
Cancer-and-Tumor-Detection-Using-Inception-model - In this repo i am gonna show you how i did cancer/tumor detection in lungs using deep neural networks, specifically here the Inception model by google.

Cancer-and-Tumor-Detection-Using-Inception-model In this repo i am gonna show you how i did cancer/tumor detection in lungs using deep neural networks

Deepak Nandwani 1 Jan 01, 2022
Interactive Image Segmentation via Backpropagating Refinement Scheme

Won-Dong Jang and Chang-Su Kim, Interactive Image Segmentation via Backpropagating Refinement Scheme, CVPR 2019

Won-Dong Jang 85 Sep 15, 2022
PiCIE: Unsupervised Semantic Segmentation using Invariance and Equivariance in clustering (CVPR2021)

PiCIE: Unsupervised Semantic Segmentation using Invariance and Equivariance in Clustering Jang Hyun Cho1, Utkarsh Mall2, Kavita Bala2, Bharath Harihar

Jang Hyun Cho 164 Dec 30, 2022
NLMpy - A Python package to create neutral landscape models

NLMpy is a Python package for the creation of neutral landscape models that are widely used by landscape ecologists to model ecological patterns

Manaaki Whenua – Landcare Research 1 Oct 08, 2022
Continuous Time LiDAR odometry

CT-ICP: Elastic SLAM for LiDAR sensors This repository implements the SLAM CT-ICP (see our article), a lightweight, precise and versatile pure LiDAR o

385 Dec 29, 2022
Official implementation of NPMs: Neural Parametric Models for 3D Deformable Shapes - ICCV 2021

NPMs: Neural Parametric Models Project Page | Paper | ArXiv | Video NPMs: Neural Parametric Models for 3D Deformable Shapes Pablo Palafox, Aljaz Bozic

PabloPalafox 109 Nov 22, 2022
Codebase for the paper titled "Continual learning with local module selection"

This repository contains the codebase for the paper Continual Learning via Local Module Composition. Setting up the environemnt Create a new conda env

Oleksiy Ostapenko 20 Dec 10, 2022
Frigate - NVR With Realtime Object Detection for IP Cameras

A complete and local NVR designed for HomeAssistant with AI object detection. Uses OpenCV and Tensorflow to perform realtime object detection locally for IP cameras.

Blake Blackshear 6.4k Dec 31, 2022
Drslmarkov - Distributionally Robust Structure Learning for Discrete Pairwise Markov Networks

Distributionally Robust Structure Learning for Discrete Pairwise Markov Networks

1 Nov 24, 2022
Additional environments compatible with OpenAI gym

Decentralized Control of Quadrotor Swarms with End-to-end Deep Reinforcement Learning A codebase for training reinforcement learning policies for quad

Zhehui Huang 40 Dec 06, 2022