N2G

Diagram generator

A Python library to generate diagrams in various formats from structured data

Need To Graph

GitHub

157 stars
3 watching
31 forks
Language: Python
last commit: 5 months ago
Linked from 1 awesome list


Backlinks from these awesome lists:

Related projects:

Repository Description Stars
diegma/graph-2-text Implementing a deep learning model to generate text from graph structures 151
legoffloic/nodz A Python library to visualize and create node-based graphs with customizable settings and features. 421
meshpro/dmsh A Python library for generating high-quality 2D meshes 210
wengong-jin/hgraph2graph A framework for generating molecular graphs using structural motifs and chemical properties. 378
amccaugh/phidl A Python-based tool for creating and manipulating 2D GDS layouts and CAD geometries. 198
aspuru-guzik-group/selfies A Python library that provides a robust representation of semantically constrained graphs, specifically for molecules in chemistry. 679
jfeliu007/goplantuml Generates PlantUML diagrams from Go source code to visualize project structure and relationships. 1,857
meshpro/pygalmesh Provides a Python interface to CGAL's meshing tools for generating high-quality meshes from 2D and 3D constraints and shapes. 598
yikang-li/msdn An implementation of a multi-level scene description network in PyTorch for generating scene graphs from object, phrase, and region captions. 227
ludwigcron/undulate A Python-based tool for generating digital timing diagrams in various formats 35
google/sg2im An end-to-end neural network model that generates images from scene graphs by processing input graph information through multiple layers of networks 1,300
mcastorina/graph-cli A command line tool to generate graphs from CSV data using Python 785
saimn/sigal A static gallery generator that processes directories recursively and generates HTML pages using templates. 893
daveray/dorothy A Clojure-based DSL for generating Graphviz graphs with a focus on simplicity and flexibility. 246
pbaylies/stylegan2 Implementation of a generative adversarial network for generating images with conditional variations. 315