21 repositorios
Libraries for statistical plotting and scientific visualization in Python.
Explore 21 awesome GitHub repositories matching part of an awesome list · Python Visualization. Refine with filters or upvote what's useful.
Matplotlib is a Python data visualization library and 2D plotting engine used to generate publication-quality figures and charts from numerical data. It serves as a numerical graphics library and data visualization toolkit for mapping data to visual elements. The library provides capabilities for producing static, animated, and interactive visualizations. This includes creating high-resolution figures for professional documents, generating moving graphics to illustrate data evolution over time, and building dynamic plots for interactive data exploration. The toolkit supports scientific plott
Serves as a primary library for statistical plotting and scientific visualization within the Python ecosystem.
Bokeh is a Python data visualization library and interactive plotting framework used to create high-performance graphics and data dashboards that render in web browsers. It serves as a tool for generating standalone HTML documents, embedded components for digital notebooks, and full-stack web applications powered by a Python backend. The project distinguishes itself through its ability to handle large or streaming datasets while maintaining smooth interactivity. It enables linked brushing across multiple views, allowing data selected in one plot to automatically highlight corresponding data i
Serves as a primary Python library for creating high-performance interactive plots and data dashboards that render in web browsers.
pyecharts is a Python visualization library and wrapper for the Echarts JavaScript engine. It translates Python data and configurations into JSON specifications to generate interactive web-based charts and graphs. The library provides specialized capabilities for geographic data mapping using a comprehensive library of map assets to visualize spatial information. It also includes utilities to capture rasterized snapshots of rendered web visualizations for export as static image files. The tool supports rendering interactive plots directly within data science notebook environments and exporti
Python bindings for the ECharts library.
This project is an exploratory data analysis library and profiling tool for Pandas and Spark DataFrames. It automates the initial investigation of datasets by generating comprehensive descriptive analysis reports, statistical summaries, and data quality warnings. The system functions as a data quality profiler to detect missing values, duplicate rows, and type inconsistencies. It includes a dataset comparison tool for identifying structural and content shifts between different versions of the same data, as well as specialized tools for time-series analysis to calculate auto-correlation and se
Generates statistical analytic reports with integrated visualizations.
Altair is a declarative data visualization library for Python based on the Vega-Lite grammar. It allows users to create statistical visualizations by mapping data fields to visual properties rather than writing imperative drawing code. The library focuses on interactive charting through a system of linked selections and filters that update multiple visualizations based on user input. It renders charts as JSON and HTML for display in web browsers and interactive notebooks. The project covers statistical data analysis and interactive data exploration, providing capabilities to export visuals a
Implements a declarative Python visualization library based on the Vega-Lite grammar for statistical plotting.
Altair is a declarative data visualization library for Python that generates Vega-Lite specifications. It functions as a tool for mapping data to graphical marks using a high-level syntax, allowing users to describe the desired visual outcome instead of writing imperative drawing commands. The framework enables the creation of interactive charts and graphics, including linked views and filtered displays that respond to user input in real time. It supports the design of multi-view dashboards by combining visualizations into layered or faceted layouts. The library provides capabilities for sta
Acts as a Python interface for creating statistical visualizations by generating compatible Vega-Lite specifications.
LearnPython is a programming tutorial consisting of a collection of practical code examples used to demonstrate Python language features and programming patterns. It serves as a comprehensive learning resource that implements core language concepts through functional code. The project provides specialized guides and samples covering several key domains. These include asynchronous network programming with event loops and coroutines, data visualization using numerical datasets for 2D and 3D plots, and web scraping for fetching content and automating login flows. It also features instructions on
Includes code samples for statistical plotting and scientific visualization using Python.
This project is a comprehensive library of practical Python code examples and patterns. It provides a collection of scripts and snippets designed to demonstrate a wide range of programming tasks, from basic syntax to advanced implementation patterns. The repository focuses on several core domains, including the implementation of concurrency and multithreading examples, data analysis snippets for cleaning and manipulating tabular data, and various data visualization examples. It also covers automation scripts for file system management and a variety of general programming patterns. Additional
Implements practical examples of charts, heatmaps, and animated plots using Python visualization libraries.
Smile is a comprehensive JVM machine learning library and statistical computing toolkit. It provides a suite of algorithms for classification, regression, and clustering, implemented natively for Java, Scala, and Kotlin. The project also functions as a deep learning framework, a natural language processing library, and an inference engine for large language models. The library distinguishes itself through GPU acceleration via LibTorch bindings and support for the ONNX model interchange format. It includes specialized capabilities for large language model inference, featuring Byte-Pair Encodin
Produces declarative JSON specifications based on the Vega-Lite grammar for web-based chart rendering.
Livebook is an interactive notebook platform for Elixir that provides a web-based environment for writing and running code cells alongside Markdown content, visualizations, and reproducible workflows. It serves as a multi-cloud auto-clustering tool that automatically discovers and joins Elixir nodes into clusters across Kubernetes, AWS ECS, and Fly.io for distributed execution, and also functions as a notebook deployment tool that packages notebooks into standalone web applications with authentication, secrets, and Docker support. The platform enables real-time collaborative editing, synchron
Renders Vega-Lite charts, tables, maps, and other rich outputs directly within notebook cells.
Lux es una herramienta de análisis exploratorio de datos automatizado diseñada para generar representaciones visuales inteligentes de dataframes de pandas. Identifica patrones y tendencias recomendando tipos de gráficos óptimos y mapeos de ejes basados en los atributos estadísticos de un conjunto de datos. La herramienta funciona como una capa de perfilado de datos interactiva que permite a los usuarios navegar y consultar colecciones de gráficos utilizando filtros y comodines. También sirve como un generador de código de visualización, traduciendo gráficos producidos automáticamente en código programático o HTML para un refinamiento manual en bibliotecas externas. El sistema cubre una amplia gama de capacidades de análisis exploratorio, incluyendo codificación de gráficos automatizada, descubrimiento guiado a través de recomendaciones de pasos y la capacidad de exportar configuraciones visuales como especificaciones declarativas. Este proyecto se integra directamente en pandas para anular la impresión predeterminada de dataframes con componentes de visualización interactivos.
Translates internal visual configurations into declarative Vega-Lite JSON specifications for standard plotting libraries.
Polynote es un entorno de notebook políglota y un sistema de documentos interactivos diseñado para ejecutar código en múltiples lenguajes dentro de un mismo documento. Funciona como una herramienta de análisis de datos multilingüe y un IDE para lenguajes de la JVM, permitiendo a los usuarios combinar código ejecutable, texto enriquecido y visualizaciones de datos para prototipar y documentar flujos de trabajo técnicos. El sistema se distingue por su capacidad para compartir datos y variables entre diferentes tiempos de ejecución de lenguajes, como Python y la JVM. Utiliza la conversión de objetos entre lenguajes y el envoltorio de datos para pasar objetos entre entornos, permitiendo flujos de trabajo de datos multilingües. Además, se integra con Apache Spark para ejecutar tareas de procesamiento de datos distribuidos mediante envíos a clústeres locales o remotos. La plataforma proporciona un conjunto completo de capacidades para el análisis y visualización de datos, incluyendo una tabla de símbolos en tiempo real para el monitoreo del tiempo de ejecución y soporte para el renderizado de especificaciones Vega. Gestiona dependencias para los entornos de JVM y Python utilizando resolución basada en coordenadas y ofrece edición mejorada por IDE con autocompletado y resaltado de errores. Las funciones de gestión de documentos incluyen una tabla de contenidos dinámica, búsqueda de contenido entre notebooks y recuperación de copias de seguridad basadas en navegador para evitar la pérdida de datos por archivos corruptos.
Renders Vega-Lite specifications as interactive visualizations that reference variables from other notebook cells.
missingno es una biblioteca de Python para la visualización y el análisis de patrones de datos faltantes. Proporciona un conjunto de herramientas para perfilar la integridad de los conjuntos de datos, mapear brechas de datos y cuantificar el volumen de valores nulos en todas las variables. La biblioteca se diferencia por un analizador de correlación de nulidad y una herramienta de clustering jerárquico de datos. Estos componentes permiten la detección de dependencias y tendencias sistémicas midiendo cómo la ausencia de una variable se relaciona con la ausencia de otra. El conjunto de herramientas cubre capacidades más amplias de auditoría de calidad de datos y análisis exploratorio. Incluye funciones para el resumen de nulidad de columnas utilizando escalas lineales y logarítmicas, así como mapeo basado en matrices para identificar brechas sistémicas en los registros.
Visual utility for assessing dataset completeness.
PyVista is a scientific 3D plotting framework and visualization library that provides a Python interface for rendering and analyzing spatial datasets using a VTK backend. It functions as a volumetric rendering engine and a 3D mesh analysis tool for computing geometric properties and performing boolean operations on surface and volumetric meshes. The project is distinguished by its ability to operate as a headless 3D renderer, generating high-quality renders and animations on remote servers without a physical display. It also features a lazy-accessor extension mechanism that allows the registr
Streamlined interface for 3D plotting and mesh analysis.
ggpy is a Python library for statistical data visualization based on the grammar of graphics. It functions as a declarative framework for building complex charts by mapping data variables to visual properties through a structured coordinate system. The library enables the construction of composite visualizations by layering geometric shapes and statistical summaries. It utilizes a system of continuous and discrete scales to translate raw data into visual attributes and supports facet-based plotting to segment a single visualization into a grid of subplots based on variable categories. Visual
Python plotting system modeled after R's ggplot2.
Python library that makes it easy for data scientists to create charts.
Bokeh wrapper designed for data scientists.
Python+Numpy+OpenGL: fast, scalable and beautiful scientific visualization
OpenGL-based library for scientific visualizations.
The Point Processing Toolkit (pptk) is a Python package for visualizing and processing 2-d/3-d point clouds.
Tool for visualizing and working with 2D/3D point clouds.
Text mode diagrams using UTF-8 characters and fancy colors
Tool for creating text-based diagrams using UTF-8.
The power of Chart.js with Python
Jupyter Notebook integration for Chart.js.