A library for bridging Python and HTML/Javascript (via Svelte) for creating interactive visualizations

Overview

PySvelte

THIS LIBRARY IS TOTALLY UNSUPPORTED. IT IS PROVIDED AS IS, AS AN EXAMPLE OF ONE WAY TO SOLVE A PROBLEM. MANY FEATURES WILL NOT WORK WITHOUT YOU WRITING YOUR OWN config.py FILE.

If we want to understand neural networks, it's essential that we have effective ways of getting lots of information from the innards of those models into a readable form. Often, this will be a data visualization.

Unfortunately, there's an awkward mismatch between workflows for deep learning research and data visualization. The vast majority of deep learning research is done in Python, where sophisticated libraries make it easy to express neural networks and train them in distributed setups with hardware accelerators. Meanwhile, web standards (HTML/Javascript/CSS) provide a rich environment for data visualization. Trying to use Javascript to train models, or Python for data visualization, takes on a very significant handicap. One wants to use the best tools for each task. But simultaneously working in two ecosystems can also be very challenging.

This library is an attempt at bridging these ecosystems. It encourages a very opinionated workflow of how to integrate visualization into the deep learning research workflow. Our design goals include:

  • To make it easy to create bespoke, custom visualizations based on web standards and Svelte, and use them in Python.
  • To encourage visualizations to be modular and reusable.
  • To make it easy to publish persistent visualizations to standalone, sharable pages.
  • To allow researchers who don't know anything about web technologies to use visualizations their colleagues create.

Set Up

Many features in this library (such as publishing visualiations to GCS/S3/AZ buckets), require you to write several functions specific to your own research setup in config.py.

Basic use

The basic idea is that we create a Svelte component inside the src/ folder, say src/Hello.svelte:

<script>
    export let name;
script>
<h2>Hello {name}!h2>

This visualization automatically becomes available in Python as pysvelte.Hello(). This includes tab completion for argument names.

We can now use it as follows.

import pysvelte
pysvelte.Hello(name="World")

(A few details: (1) This should work without directly running any npm build process; pysvelte will trigger necessary builds for you from Python, in order to make visualizations easily usable by those without web expertise. (2) Argument names are mandatory, since mapping argument names based on order would be very fragile as the svelte component is edited. (3) In addition to objects with clear javascript analogues, NumPy arrays can be passed into components and will be exposed on the javascript side as SciJs NdArrays.)

In a jupyter or colab notebook, the visualization should automatically display if its the last thing computed in a cell. One can also use .show() to show items that aren't the last line:

pysvelte.Hello(name="Alice").show()
pysvelte.Hello(name="Bob").show()

Once you configure config.py you should also be able to use .publish() to publish your visualizations and easily share them. By default, new published visualizations can also be shared on slack to make it easier for your colleagues to discover them, and for convenient sharing when pair programming.

pysvelte.Hello(name="World").publish("~~/hello_world.html")

The objects returned when you use a component are pysvelte.Html() objects, which can be added together. This is useful to create pages.

My Hellos Page

") html += pysvelte.Hello(name="Alice") html += pysvelte.Hello(name="Bob") html.publish("~~/hellos.html")">
html = pysvelte.Html("

My Hellos Page

"
) html += pysvelte.Hello(name="Alice") html += pysvelte.Hello(name="Bob") html.publish("~~/hellos.html")

One final feature we want to highlight is that Svelte components can have companion Python files, like this src/Hello.py. This can be used to add doc strings (which appear in tab completion), argument type signatures, do Python-side validation of data for easier debugging, and even modify data before it is passed to Javascript.

0, "Name can not be empty." assert name[0] == name[0].upper(), "Name must be capitalized."">
def init(name: str):
    """A visualization which says hello to a given name."""
    assert len(name) > 0, "Name can not be empty."
    assert name[0] == name[0].upper(), "Name must be capitalized."

Example component

src/AttentionMulti.svelte contains an example of a component we've developed internally which we use to to visualize attention patterns from Transformer self-attention blocks. You can view a rendered version of (a variant of) this component in our recent paper.

See src/AttentionMulti.py for documentation.

Learn More

On the javascript side, the major things to understand are:

  • Web standards (SVG, Canvas, CSS grid, etc)
  • Svelte
  • ndarray (for JS versions of numpy arrays)

D3 is also helpful!

License

Copyright 2021 Anthropic

Licensed under the Apache License, Version 2.0 (the "License"); you may not use this file except in compliance with the License. You may obtain a copy of the License at

http://www.apache.org/licenses/LICENSE-2.0

Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the specific language governing permissions and limitations under the License.

Owner
Anthropic
Anthropic
3D Vision functions with end-to-end support for deep learning developers, written in Ivy.

Ivy vision focuses predominantly on 3D vision, with functions for camera geometry, image projections, co-ordinate frame transformations, forward warping, inverse warping, optical flow, depth triangul

Ivy 61 Dec 29, 2022
Simple function to plot multiple barplots in the same figure.

Simple function to plot multiple barplots in the same figure. Supports padding and custom color.

Matthias Jakobs 2 Feb 21, 2022
Data Analysis: Data Visualization of Airlines

Data Analysis: Data Visualization of Airlines Anderson Cruz | London-UK | Linkedin | Nowa Capital Project: Traffic Airlines Airline Reporting Carrier

Anderson Cruz 1 Feb 10, 2022
AB-test-analyzer - Python class to perform AB test analysis

AB-test-analyzer Python class to perform AB test analysis Overview This repo con

13 Jul 16, 2022
Visualize tensors in a plain Python REPL using Sparklines

Visualize tensors in a plain Python REPL using Sparklines

Shawn Presser 43 Sep 03, 2022
A small timeseries transformation API built on Flask and Pandas

#Mcflyin ###A timeseries transformation API built on Pandas and Flask This is a small demo of an API to do timeseries transformations built on Flask a

Rob Story 84 Mar 25, 2022
Simple, realtime visualization of neural network training performance.

pastalog Simple, realtime visualization server for training neural networks. Use with Lasagne, Keras, Tensorflow, Torch, Theano, and basically everyth

Rewon Child 416 Dec 29, 2022
daily report of @arkinvest ETF activity + data collection

ark_invest daily weekday report of @arkinvest ETF activity + data collection This script was created to: Extract and save daily csv's from ARKInvest's

T D 27 Jan 02, 2023
An interactive dashboard for visualisation, integration and classification of data using Active Learning.

AstronomicAL An interactive dashboard for visualisation, integration and classification of data using Active Learning. AstronomicAL is a human-in-the-

45 Nov 28, 2022
A small collection of tools made by me, that you can use to visualize atomic orbitals in both 2D and 3D in different aspects.

Orbitals in Python A small collection of tools made by me, that you can use to visualize atomic orbitals in both 2D and 3D in different aspects, and o

Prakrisht Dahiya 1 Nov 25, 2021
Python Data. Leaflet.js Maps.

folium Python Data, Leaflet.js Maps folium builds on the data wrangling strengths of the Python ecosystem and the mapping strengths of the Leaflet.js

6k Jan 02, 2023
The visual framework is designed on the idea of module and implemented by mixin method

Visual Framework The visual framework is designed on the idea of module and implemented by mixin method. Its biggest feature is the mixins module whic

LEFTeyes 9 Sep 19, 2022
Python package to visualize and cluster partial dependence.

partial_dependence A python library for plotting partial dependence patterns of machine learning classifiers. The technique is a black box approach to

NYU Visualization Lab 25 Nov 14, 2022
Rockstar - Makes you a Rockstar C++ Programmer in 2 minutes

Rockstar Rockstar is one amazing library, which will make you a Rockstar Programmer in just 2 minutes. In last decade, people learned C++ in 21 days.

4k Jan 05, 2023
Streamlit dashboard examples - Twitter cashtags, StockTwits, WSB, Charts, SQL Pattern Scanner

streamlit-dashboards Streamlit dashboard examples - Twitter cashtags, StockTwits, WSB, Charts, SQL Pattern Scanner Tutorial Video https://ww

122 Dec 21, 2022
A small tool to test and visualize protein embeddings and amino acid proportions.

polyprotein_stats A small tool to test and visualize protein embeddings and amino acid proportions. Currently deployed on streamlit.io. Given a set of

2 Jan 07, 2023
Extract data from ThousandEyes REST API and visualize it on your customized Grafana Dashboard.

ThousandEyes Grafana Dashboard Extract data from the ThousandEyes REST API and visualize it on your customized Grafana Dashboard. Deploy Grafana, Infl

Flo Pachinger 16 Nov 26, 2022
阴阳师后台全平台(使用网易 MuMu 模拟器)辅助。支持御魂,觉醒,御灵,结界突破,秘闻副本,地域鬼王。

阴阳师后台全平台辅助 Python 版本:Python 3.8.3 模拟器:网易 MuMu | 雷电模拟器 模拟器分辨率:1024*576 显卡渲染模式:兼容(OpenGL) 兼容 Windows 系统和 MacOS 系统 思路: 利用 adb 截图后,使用 opencv 找图找色,模拟点击。使用

简讯 27 Jul 09, 2022
Here are my graphs for hw_02

Let's Have A Look At Some Graphs! Graph 1: State Mentions in Congressperson's Tweets on 10/01/2017 The graph below uses this data set to demonstrate h

7 Sep 02, 2022
flask extension for integration with the awesome pydantic package

Flask-Pydantic Flask extension for integration of the awesome pydantic package with Flask. Installation python3 -m pip install Flask-Pydantic Basics v

249 Jan 06, 2023