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14 Repos

Awesome GitHub RepositoriesPlotting and Visualization

Libraries for rendering charts, graphs, and real-time data.

Explore 14 awesome GitHub repositories matching part of an awesome list · Plotting and Visualization. Refine with filters or upvote what's useful.

Awesome Plotting and Visualization GitHub Repositories

Finde die besten Repos mit KI.Wir suchen mit KI nach den am besten passenden Repositories.
  • nawfalmotii79/plfm_radarAvatar von NawfalMotii79

    NawfalMotii79/PLFM_RADAR

    21,680Auf GitHub ansehen↗

    PLFM_RADAR is a phased array radar system designed for target detection and tracking at a 10.5 GHz operating frequency. It integrates an LFM waveform generator, a radar signal processor, and an electronic beam steer controller to function as a low-cost radar solution. The system differentiates itself through electronic beam steering, which uses phase shifters to adjust antenna elevation and azimuth without physical movement. It also incorporates a geospatial target tracker that fuses GPS and IMU sensor data to provide real-time position and attitude correction for plotting targets. The proje

    Provides a graphical interface for displaying real-time target plots with integrated map support.

    PLSQL
    Auf GitHub ansehen↗21,680
  • bokeh/bokehAvatar von bokeh

    bokeh/bokeh

    20,403Auf GitHub ansehen↗

    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

    Provides a high-level Python programming interface to generate interactive plots and data applications that render in web browsers.

    TypeScriptbokehdata-visualisationinteractive-plots
    Auf GitHub ansehen↗20,403
  • raylockllc/dearpyguiAvatar von RaylockLLC

    RaylockLLC/DearPyGui

    15,478Auf GitHub ansehen↗

    DearPyGui is a hardware-accelerated Python GUI framework and graphics rendering engine. It operates as an immediate mode user interface system, rendering frames from scratch to ensure high performance and minimal state management for desktop applications. The project functions as a GPU-accelerated plotting library capable of rendering millions of data points with high frame rates. It also serves as a node editor toolkit for constructing interactive graph-based interfaces to manage visual data flows. The framework includes capabilities for custom 2D graphics rendering, interface theme customi

    Provides a dedicated interface for creating charts and graphs to visualize large datasets.

    C++
    Auf GitHub ansehen↗15,478
  • kernc/backtesting.pyAvatar von kernc

    kernc/backtesting.py

    8,528Auf GitHub ansehen↗

    backtesting.py is a Python trading backtesting framework used to simulate trading strategies against historical price data to evaluate performance and risk. It includes a technical trade simulator, a quantitative performance analyzer, and a financial strategy optimizer. The framework features a parallel strategy simulator that distributes execution across multiple processor cores to reduce computation time. It also provides tools for strategy parameter optimization, allowing the identification of performant settings through the use of heatmaps and metrics. The system covers trade execution m

    Produces visual plots and equity curves to evaluate the success and stability of a trading system.

    Python
    Auf GitHub ansehen↗8,528
  • amueller/introduction_to_ml_with_pythonAvatar von amueller

    amueller/introduction_to_ml_with_python

    8,025Auf GitHub ansehen↗

    This project is a Python machine learning education kit that provides curated datasets and visualization scripts to teach fundamental machine learning concepts. It functions as both a machine learning visualization library and a collection of educational datasets designed for demonstrating and testing common models and patterns. The toolkit focuses on illustrating the internal logic and operational patterns of machine learning algorithms. It generates figures and datasets that visualize how different models behave and operate on data to aid in the learning process. The implementation utilize

    Implements a plotting engine to create visualizations of mathematical functions and data distributions.

    Jupyter Notebook
    Auf GitHub ansehen↗8,025
  • cxli233/friendsdontletfriendsAvatar von cxli233

    cxli233/FriendsDontLetFriends

    6,994Auf GitHub ansehen↗

    FriendsDontLetFriends is a scientific data visualization guide and framework designed to help users create accurate plots while avoiding common data representation mistakes. It provides a collection of scripts and guidelines for selecting distribution plots, color scales, and layouts that accurately represent complex experimental data. The project distinguishes itself through specialized toolkits for revealing hidden patterns in large datasets. It includes systems for heatmap optimization via dimension reordering and outlier management, as well as spatial layout algorithms to improve the inte

    Provides means and data dispersion visualizations that avoid the use of misleading bar plots.

    Rdata-visualizationr
    Auf GitHub ansehen↗6,994
  • scottplot/scottplotAvatar von ScottPlot

    ScottPlot/ScottPlot

    6,417Auf GitHub ansehen↗

    ScottPlot is a cross-platform, high-performance charting library for .NET that renders interactive plots across desktop and web GUI frameworks including Windows Forms, WPF, MAUI, Avalonia, Blazor, and WinUI. It provides an optimized rendering engine capable of displaying millions of data points with interactive pan, zoom, and live data streaming, while also supporting image export to formats like PNG and SVG for file output, cloud applications, and notebooks. The library distinguishes itself through a comprehensive set of chart types including scatter, line, bar, pie, heatmap, financial, rada

    Displays statistical distributions, regression lines, histograms, box plots, and probability density estimates.

    C#chartchartingcharts
    Auf GitHub ansehen↗6,417
  • vega/vega-liteAvatar von vega

    vega/vega-lite

    5,216Auf GitHub ansehen↗

    Vega-Lite is a high-level declarative language for specifying interactive, multi-view visualizations. It compiles a concise JSON specification into a full Vega visualization, automatically inferring scales, axes, and legends from encoding declarations. The grammar-of-graphics encoding maps data fields to visual channels such as position, color, size, and shape, while a multi-view composition grammar enables layered, faceted, concatenated, and repeated layouts. Reactive parameter binding links named parameters to input widgets, selections, and expressions for dynamic updates. The project suppo

    Generates histograms, box plots, density estimates, and regression lines to reveal data distributions.

    TypeScriptchartsdeclarative-languageplot
    Auf GitHub ansehen↗5,216
  • programthink/opensourceAvatar von programthink

    programthink/opensource

    5,117Auf GitHub ansehen↗

    Dieses Projekt ist eine Open-Source-Discovery-Ressource, die kuratierte Listen wiederverwendbarer Codes und Bibliotheken bereitstellt, um Entwicklern bei der Suche nach technischen Lösungen für spezifische Aufgaben zu helfen. Es nutzt ein kategoriebasiertes Indexierungssystem, um diverse Software-Tools nach ihren funktionalen Fähigkeiten zu organisieren. Das Repository ist als Sammlung von Markdown-basierter Dokumentation und statischen Inhalten strukturiert und dient als Verzeichnis für die manuelle Suche und Referenz. Das Verzeichnis deckt eine breite Palette an Kompetenzbereichen ab, darunter plattformübergreifende Anwendungsentwicklung, Erstellung von Cybersecurity-Tools, Implementierung von Netzwerkprotokollen und Workflows für wissenschaftliches Rechnen. Es enthält zudem Ressourcen für Web-Scraping-Automatisierung, Datenspeicherung und Multimedia-Schnittstellen.

    Provides curated libraries for rendering mathematical plots, charts, and scientific data visualizations.

    Auf GitHub ansehen↗5,117
  • dankamongmen/notcursesAvatar von dankamongmen

    dankamongmen/notcurses

    4,347Auf GitHub ansehen↗

    Notcurses is a terminal graphics engine and TUI library that renders high-fidelity images, video, and rich Unicode graphics directly in terminal emulators. At its core, it provides a layered framebuffer system that composes overlapping planes with independent depth and opacity, enabling complex visual scenes. The library also includes a terminal input processor for capturing and decoding keyboard and mouse events, a data visualization toolkit for histograms and line plots, a multimedia terminal player for images and video, and a TUI widget framework with reusable interface components. The lib

    Draws line plots and histograms directly in the terminal for data visualization.

    Ccclincurses
    Auf GitHub ansehen↗4,347
  • thuml/transfer-learning-libraryAvatar von thuml

    thuml/Transfer-Learning-Library

    3,917Auf GitHub ansehen↗

    Dieses Projekt ist eine umfassende Bibliothek für Transfer Learning und Domain Adaptation im Bereich Computer Vision. Sie dient als Framework für die Angleichung von Feature-Verteilungen zwischen Quell- und Zieldatensätzen, als Toolkit für Domain Generalization und als Bibliothek für semi-überwachtes Lernen unter Verwendung kleiner gelabelter Datensätze und großer ungelabelter Mengen. Die Bibliothek bietet spezialisierte Funktionen für unüberwachte Domain Adaptation, einschließlich der Verwendung von Adversarial Networks, Diskrepanz-basierten Architekturen und Image-to-Image-Translation, um Verteilungs-Mismatch zu reduzieren. Sie enthält zudem Tools für Domain Generalization, um die Modellzuverlässigkeit über ungesehene Ziel-Domains hinweg durch Style-Mixing und Invariant Risk Minimization sicherzustellen. Das Projekt deckt ein breites Funktionsspektrum ab, einschließlich Task Adaptation und Fine-Tuning mit spezialisierter Regularisierung, semi-überwachtem Training durch Pseudo-Labeling und Consistency Learning sowie der Auswahl von Transfer-Learning-Modellen unter Verwendung von Transferability-Metriken. Es enthält zudem einen Datensatz-Manager zur Automatisierung der Akquise und Vorbereitung standardisierter Vision-Benchmarks. Die Bibliothek enthält Dienstprogramme für Monitoring und Observability, wie t-SNE-Visualisierungen und A-Distanz-Metriken, um Feature-Verteilungen und Domain-Diskrepanzen zu analysieren.

    Measures and visualizes the difference between source and target distributions using t-SNE plots.

    Python
    Auf GitHub ansehen↗3,917
  • thoughtworks/build-your-own-radarAvatar von thoughtworks

    thoughtworks/build-your-own-radar

    2,549Auf GitHub ansehen↗

    This project is a technology radar visualization tool and dockerized static site generator. It transforms JSON or CSV datasets into an interactive technology map used to track the adoption status and maturity of tools and techniques across an organization. The tool enables enterprise architecture mapping by organizing portfolios of technologies into categories and maturity levels. It supports custom technical taxonomies, allowing the definition of specialized rings and quadrants to match specific organizational evaluation criteria. The system covers automated radar generation and technology

    Creates a visual map to evaluate and track the adoption status of tools across an organization.

    CSSopensourceradarthoughtworks
    Auf GitHub ansehen↗2,549
  • nnnik/gdichartlibAvatar von nnnik

    nnnik/gdiChartLib

    12Auf GitHub ansehen↗

    a gdip chart lib for autohotkey

    GDI+ based charting library.

    AutoHotkey
    Auf GitHub ansehen↗12
  • capnodin/svgraphAvatar von CapnOdin

    CapnOdin/SVGraph

    10Auf GitHub ansehen↗

    SVGraph bringing graphing and charting to AutoHotkey

    Graphing and charting library.

    JavaScript
    Auf GitHub ansehen↗10
  1. Home
  2. Part of an Awesome List
  3. Developer Tools
  4. Plotting and Visualization

Unter-Tags erkunden

  • Dispersion PlotsVisualizations of means and data variance that avoid misleading aggregated representations. **Distinct from Plotting and Visualization:** Specifically focuses on the representation of data dispersion and means, distinct from general chart rendering.
  • Domain Discrepancy VisualizationsVisual tools used to render the difference between source and target feature distributions. **Distinct from Plotting and Visualization:** Focuses specifically on visualizing the discrepancy between ML domains, not general data plotting.
  • Radar Plotting Interfaces1 Sub-TagGraphical interfaces designed for displaying radar target plots and geospatial map overlays. **Distinct from Plotting and Visualization:** Specific to radar plot visualization and map integration, distinct from general chart plotting.
  • Stacked Bar Plot Optimization1 Sub-TagTechniques for organizing proportional data by abundance or class to improve clarity. **Distinct from Plotting and Visualization:** Focuses on the data organization of stacked bars rather than general plot rendering or axis customization.
  • Statistical VisualizersTools for rendering mathematical functions and data distributions to illustrate statistical patterns. **Distinct from Plotting and Visualization:** Focuses on the mathematical and statistical nature of the plots rather than general-purpose charts or radar interfaces
  • TerminalGenerates histograms and line plots from data series for visual analytics in the terminal. **Distinct from Plotting and Visualization:** Distinct from Plotting and Visualization: specifically targets terminal-based rendering of charts, not general plotting libraries.