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15 रिपॉजिटरी

Awesome GitHub RepositoriesData Plotting Workflows

Methodologies for creating high-quality scientific 2D and 3D graphical representations.

Distinct from Plotting and Visualization: Focuses on the workflow and quality of publication-ready plots, which is broader than specific 2D histogram visualizers.

Explore 15 awesome GitHub repositories matching graphics & multimedia · Data Plotting Workflows. Refine with filters or upvote what's useful.

Awesome Data Plotting Workflows GitHub Repositories

AI के साथ बेहतरीन रिपॉजिटरी खोजें।हम AI का उपयोग करके सबसे सटीक रिपॉजिटरी खोजेंगे।
  • donnemartin/data-science-ipython-notebooksdonnemartin का अवतार

    donnemartin/data-science-ipython-notebooks

    29,166GitHub पर देखें↗

    This project is a collection of interactive Python notebooks and educational resources designed for mastering data science, machine learning, and numerical computing. It provides a series of practical guides and tutorials covering deep learning, big data processing, and statistical analysis. The repository features specialized instructional suites for implementing classical machine learning algorithms, building deep learning model architectures, and managing AWS cloud infrastructure. It includes dedicated notebooks for data visualization and numerical computing exercises. The project covers

    Provides a workflow for creating publication-quality 2D and 3D plots and maps using matplotlib.

    Pythonawsbig-datacaffe
    GitHub पर देखें↗29,166
  • cxli233/friendsdontletfriendscxli233 का अवतार

    cxli233/FriendsDontLetFriends

    6,994GitHub पर देखें↗

    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

    Implements a methodology for selecting appropriate distribution plots and color scales for complex scientific data.

    Rdata-visualizationr
    GitHub पर देखें↗6,994
  • haifengl/smilehaifengl का अवतार

    haifengl/smile

    6,387GitHub पर देखें↗

    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

    Generates interactive 2D and 3D scatter plots and histograms for scientific data exploration.

    Java
    GitHub पर देखें↗6,387
  • scottplot/scottplotScottPlot का अवतार

    ScottPlot/ScottPlot

    6,417GitHub पर देखें↗

    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

    Export the current chart to a PNG file at a specified size for sharing or storage.

    C#chartchartingcharts
    GitHub पर देखें↗6,417
  • flot/flotflot का अवतार

    flot/flot

    5,911GitHub पर देखें↗

    Flot is an interactive charting library for jQuery that renders line, bar, pie, and time-series plots with zooming and panning. It provides interactive plots for engineering and scientific data with customizable axes, scales, and series styles, and supports real-time data updates. The library is built as a jQuery plugin with a canvas-based rendering pipeline and a plugin extension system that allows third-party code to add new chart types, interactions, and data transformations. The library distinguishes itself through a broad range of specialized chart types, including candlestick, bubble, r

    Creates interactive line, scatter, and image plots for scientific and engineering data.

    JavaScript
    GitHub पर देखें↗5,911
  • epezent/implotepezent का अवतार

    epezent/implot

    5,923GitHub पर देखें↗

    Saves the current plot view as a raster image file for sharing or embedding in reports.

    C++guiimguiimplot
    GitHub पर देखें↗5,923
  • stdlib-js/stdlibstdlib-js का अवतार

    stdlib-js/stdlib

    5,735GitHub पर देखें↗

    Provides a constructor for creating 2D plots with configurable axes and styling.

    JavaScriptjavascriptjslibrary
    GitHub पर देखें↗5,735
  • alandefreitas/matplotplusplusalandefreitas का अवतार

    alandefreitas/matplotplusplus

    4,894GitHub पर देखें↗

    यह C++ डेटा विज़ुअलाइज़ेशन लाइब्रेरी एक वैज्ञानिक प्लॉटिंग फ्रेमवर्क है जिसका उपयोग 2D और 3D चार्ट, नेटवर्क ग्राफ और भौगोलिक मानचित्र बनाने के लिए किया जाता है। यह एक मल्टी-बैकएंड ग्राफिक्स लाइब्रेरी के रूप में कार्य करती है, जो विभिन्न आउटपुट बैकएंड का समर्थन करने के लिए निम्न-स्तरीय रेंडरिंग इंजन से उच्च-स्तरीय प्लॉटिंग लॉजिक को अलग करती है। यह प्रोजेक्ट अपने दोहरे-इंटरफेस API के साथ खुद को अलग करता है, जो तेजी से प्रोटोटाइपिंग के लिए एक वैश्विक कार्यात्मक इंटरफेस और सटीक नियंत्रण के लिए एक ऑब्जेक्ट-ओरिएंटेड इंटरफेस दोनों प्रदान करता है। इसमें टाइल वाले ग्रिड और सबप्लॉट्स को प्रबंधित करने के लिए एक कंपोनेंट-आधारित लेआउट इंजन है, साथ ही एक लेयर्ड प्लॉट स्टेट है जो कुल्हाड़ियों (axes) को साफ किए बिना कई डेटा सीरीज़ को ओवरले करने की अनुमति देता है। यह लाइब्रेरी गणितीय फ़ंक्शन प्लॉटिंग, वेक्टर फील्ड्स और हीटमैप व समानांतर निर्देशांक के माध्यम से बहुआयामी डेटा विश्लेषण सहित विज़ुअलाइज़ेशन क्षमताओं की एक विस्तृत श्रृंखला को कवर करती है। इसमें भौगोलिक डेटा विज़ुअलाइज़ेशन के लिए विशेष टूल्स शामिल हैं, जैसे कि जियोबबल और जियोडेंसिटी प्लॉट्स, साथ ही निर्देशित और अनिर्देशित ग्राफ नेटवर्क को रेंडर करने के लिए टूल्स। सामान्य क्षमताओं में एक्सिस प्रबंधन, कलरमैप के साथ सौंदर्यपरक स्टाइलिंग और उच्च-गुणवत्ता वाले ग्राफिक्स का निर्यात शामिल है। यह प्रोजेक्ट विभिन्न ऑपरेटिंग सिस्टमों में इंस्टॉलेशन की सुविधा के लिए बिल्ड ऑटोमेशन और डिपेंडेंसी पुनर्प्राप्ति के लिए CMake का उपयोग करता है।

    Generates publication-quality figures featuring error bars, logarithmic scales, and contour plots.

    C++charting-librarychartscontour-plots
    GitHub पर देखें↗4,894
  • lava/matplotlib-cpplava का अवतार

    lava/matplotlib-cpp

    4,760GitHub पर देखें↗

    matplotlib-cpp एक हेडर-ओनली C++ लाइब्रेरी और रैपर है जो सीधे C++ कोड से Matplotlib फंक्शन्स को कॉल करके 2D और 3D विज़ुअलाइज़ेशन के निर्माण को सक्षम बनाता है। यह Python-आधारित बैकएंड का उपयोग करके लाइन प्लॉट, बार ग्राफ़ और सरफेस चार्ट उत्पन्न करने के लिए एक प्लॉटिंग इंटरफ़ेस के रूप में कार्य करता है। लाइब्रेरी को एक हल्के एकीकरण के रूप में डिज़ाइन किया गया है जो जटिल बिल्ड प्रक्रिया या कंपाइल किए गए बाइनरी की आवश्यकता के बिना प्लॉटिंग क्षमताएं प्रदान करता है। यह मल्टी-डायमेंशनल डेटा रेंडरिंग, वेक्टर फ़ील्ड प्लॉटिंग और कई सबप्लॉट्स की व्यवस्था सहित विज़ुअलाइज़ेशन क्षमताओं की एक श्रृंखला को कवर करती है। टूलकिट डायनामिक एनिमेशन के उत्पादन और उत्पन्न विज़ुअलाइज़ेशन को छवि फ़ाइलों के रूप में एक्सपोर्ट करने का भी सपोर्ट करती है।

    Provides programmatic construction of 2D and 3D charts, including line, surface, and quiver plots.

    C++
    GitHub पर देखें↗4,760
  • plotters-rs/plottersplotters-rs का अवतार

    plotters-rs/plotters

    4,581GitHub पर देखें↗

    Plotters is a data visualization library for the Rust programming language used to create 2D and 3D charts, plots, and mathematical visualizations. It functions as a multi-backend rendering engine and coordinate mapping framework that translates raw data values into pixel coordinates through customizable chart contexts. The library distinguishes itself through its ability to export graphics to multiple formats, including SVG, BitMap, and HTML5 canvas. It provides specific capabilities for 3D graphics plotting, featuring adjustable camera viewpoints and projection matrices to manage spatial da

    Provides programmatic construction of 2D plots with configurable axes, data series, and labels.

    Rustdata-plottinggraphingplot
    GitHub पर देखें↗4,581
  • briefercloud/brieferbriefercloud का अवतार

    briefercloud/briefer

    4,308GitHub पर देखें↗

    Briefer is an interactive data notebook platform and business intelligence dashboard tool used for collaborative data analysis and reporting. It provides a containerized environment for building reports that combine SQL, Python, and Markdown with native visualizations. The platform features an integrated code assistant that uses large language models to generate SQL and Python snippets from natural language prompts. It is designed as a Kubernetes data application, deploying via Helm charts to manage isolated compute environments and ensure separate resources per page through pod-based isolati

    Saves data plots and visualizations generated by code or blocks as PNG image files.

    TypeScriptanalyticsbibigquery
    GitHub पर देखें↗4,308
  • pyqtgraph/pyqtgraphpyqtgraph का अवतार

    pyqtgraph/pyqtgraph

    4,297GitHub पर देखें↗

    PyQtGraph is a scientific plotting and graphics framework built for PyQt and PySide applications, providing fast, interactive 2D and 3D visualizations with GPU-accelerated rendering. It serves as both a real-time signal monitoring system for streaming time-series data and a toolkit for constructing interactive data dashboards with dockable panels, parameter trees, and custom widgets. The library also includes a node-based visual flowchart tool for building data processing pipelines and a scientific graphics export system that saves plots as PNG, SVG, or CSV and converts items to Matplotlib for

    Creates interactive line, scatter, and image plots for real-time exploration of scientific and engineering data.

    Pythonhacktoberfestnumpypython
    GitHub पर देखें↗4,297
  • bloomberg/bqplotbloomberg का अवतार

    bloomberg/bqplot

    3,693GitHub पर देखें↗

    bqplot is an interactive data visualization library for Jupyter notebooks. It implements a grammar of graphics model, allowing users to build complex 2D charts by combining marks, scales, and axes. The library distinguishes itself with specialized toolkits for financial charting, such as OHLC candlesticks and time-series analysis, and geographic data visualization, including choropleths and custom map projections for TopoJSON and GeoJSON data. It enables deep interaction through tools like lasso selection, rectangular brushing, and the ability to manually manipulate plot points or line data.

    Programmatically constructs interactive 2D plots using a grammar of marks, scales, and axes.

    TypeScript
    GitHub पर देखें↗3,693
  • mne-tools/mne-pythonmne-tools का अवतार

    mne-tools/mne-python

    3,243GitHub पर देखें↗

    MNE-Python is an open-source Python library for processing, visualizing, and analyzing human neurophysiological data, including MEG, EEG, sEEG, ECoG, and NIRS recordings. It provides a comprehensive framework for loading data from over 30 proprietary file formats into a common hierarchical FIF data structure, and represents all time-series data as NumPy arrays for seamless integration with the scientific Python ecosystem. The library is built around object-oriented data containers that encapsulate raw, epoched, evoked, and source data with built-in preprocessing and visualization methods. The

    Provides specialized butterfly-style evoked response plotting with channel-type grouping and global field power overlay.

    Pythonecogeegelectrocorticography
    GitHub पर देखें↗3,243
  • makieorg/makie.jlMakieOrg का अवतार

    MakieOrg/Makie.jl

    2,778GitHub पर देखें↗

    Makie.jl is a high-performance Julia data visualization library and hardware-accelerated plotting engine used to create interactive 2D and 3D visualizations. It functions as a reactive visualization framework where plots update automatically via observables and compute graphs, and as a vector graphics generator for high-resolution academic output. The system is distinguished by its backend-agnostic rendering pipeline, which supports OpenGL, WebGL, and ray-traced scenes. It employs a grammar-of-graphics approach to map variables to aesthetic attributes and utilizes a hierarchical scene graph t

    Generates high-performance 2D and 3D plots including lines and surfaces to visualize complex datasets.

    Juliagpugraphicsjulia
    GitHub पर देखें↗2,778
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सब-टैग एक्सप्लोर करें

  • 2D Plot Constructors1 सब-टैगConstructs a plot instance with configurable axes, data series, labels, and visual styling for two-dimensional data visualization. **Distinct from Data Plotting Workflows:** Distinct from Data Plotting Workflows: focuses on the programmatic construction of plot instances, not the workflow of creating publication-ready plots.
  • Image ExportsSaves charts as PNG or other image files without opening a GUI window. **Distinct from Data Plotting Workflows:** Distinct from Data Plotting Workflows: focuses on file export rather than the workflow of creating publication-ready plots.
  • XY Signal Plots1 सब-टैगRendering X/Y pairs with ascending X values at high performance, supporting generic types. **Distinct from Data Plotting Workflows:** Distinct from Data Plotting Workflows: specifically handles X/Y signal data with performance optimizations.