20 Repos
Tools for rendering additional data fields alongside price information on charts.
Distinct from Data Visualization: Focuses on custom indicator line rendering, distinct from general data visualization.
Explore 20 awesome GitHub repositories matching data & databases · Custom Data Line Visualization. Refine with filters or upvote what's useful.
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
Demonstrates how to add labels, legends, and colorbars to charts for improved clarity.
Backtrader is a Python framework designed for the development, backtesting, and live execution of algorithmic trading strategies. It provides a comprehensive environment for quantitative finance, allowing users to simulate trading logic against historical market data or connect directly to brokerage platforms for automated real-time trading. The project distinguishes itself through a unified event-driven architecture that treats backtesting and live trading with the same API. This consistency is supported by a flexible data-feed abstraction layer that normalizes diverse financial sources, ena
Renders additional data fields alongside standard price information by attaching indicators to custom lines for plotting.
DearPyGui is a GPU-accelerated, immediate-mode graphical user interface framework for Python. It provides a high-performance toolkit for building interactive desktop applications by leveraging native hardware-accelerated rendering backends across multiple operating systems. By utilizing an immediate-mode execution model, the library offers direct control over the rendering loop and element state, enabling the creation of responsive, dynamic interfaces. The framework distinguishes itself through its ability to handle complex, high-frequency visual updates, making it suitable for real-time data
Allows placing markers and descriptive labels at precise coordinates to highlight data trends.
This project is a client-side data visualization framework and SVG charting library used to render responsive, interactive charts in a web browser. It functions as a lightweight utility for generating scalable vector graphics and data annotations without external dependencies. The library enables the creation of custom SVG charts with adjustable colors and animations to meet specific design requirements. It supports dynamic data updates and the addition of markers, regions, and tooltips to provide context to specific data points. The system covers broad capability areas including responsive
Supports adding markers, regions, and tooltips to specific data points for additional context and clarity.
ApexCharts is a comprehensive JavaScript charting library designed for building interactive, responsive, and data-driven visualizations within web applications. It functions as a versatile data visualization framework that supports a wide range of chart types, including categorical, statistical, and financial plots, enabling developers to construct complex dashboards and real-time monitoring interfaces. The library distinguishes itself through a deep commitment to accessibility and high-performance interactivity. It provides built-in support for keyboard navigation, screen readers, and high-c
Adds custom labels, lines, and shapes to specific chart areas to highlight trends and significant values.
PlantUML is a text-to-diagram generator that translates human-readable markup into structured graphical representations. It functions as a diagram-as-code tool, allowing users to create and maintain technical documentation, architectural models, and flowcharts by decoupling diagram content from visual layout. The project distinguishes itself through a comprehensive rendering pipeline that processes domain-specific markup into various output formats, including vector and raster graphics. It utilizes a graph-based layout engine to calculate spatial positioning, while a declarative styling layer
Adds text labels and pointers to specific chart coordinates to highlight key data points.
fl_chart is a data visualization library and UI component framework for Flutter. It provides a system of reusable graphical widgets for creating interactive, customizable quantitative data visualizations. The framework supports a variety of chart types, including line, bar, pie, donut, scatter, radar, and candlestick views. It allows for the creation of complex visualizations such as layered data segments and financial charts. The library includes capabilities for interactivity and visual refinement, such as touch event handling, data tooltips, and state animations. It also provides tools fo
Allows adding horizontal and vertical lines or range markers to highlight specific values within charts.
This project is a Python data science curriculum and programming tutorial collection. It provides a structured set of educational notebooks and scripts designed to teach data analysis, machine learning, and deep learning. The repository serves as a learning path for building and tuning predictive models, including regression, decision trees, and neural networks. It includes a data visualization guide for creating financial time-series plots and a multiprocessing reference for implementing parallel task execution and shared memory synchronization. The curriculum covers broader capability area
Includes instructions for adding labels and grid lines to enhance the readability of data charts.
charts.css is a CSS-driven framework designed to transform semantic HTML into accessible data visualizations without relying on JavaScript. It functions as a charting library that uses standard HTML structures, such as tables and lists, to render graphs while maintaining full compatibility with screen readers. The project distinguishes itself by using CSS variables to map numeric data to visual dimensions and utility classes to control chart types and layouts. It supports a wide range of visual styles, including 3D effects, reflection effects, and customized color palettes integrated via a br
Adds headings and labels to specific data points using semantic markers to provide visual context.
Rickshaw is a JavaScript library for building interactive, SVG-based time series charts in the browser. It provides a framework for rendering line, area, bar, and scatterplot visualizations from data series, with built-in support for axes, legends, color palettes, and interactive controls. The library distinguishes itself through a plugin-based architecture that allows renderers to be swapped at runtime, such as switching between stacked area and line chart views while preserving chart state. It includes an event-driven interaction layer for hover details, click behaviors, and drag-based rang
Adds toggleable text annotations at specific timestamps on the graph timeline.
billboard.js is a JavaScript charting library built on D3.js that renders interactive data visualizations from a single declarative configuration object. It supports a wide range of chart types including bar, line, pie, scatter, area, spline, step, candlestick, funnel, gauge, heatmap, radar, polar, treemap, bubble, donut, and sparkline charts, and can overlay multiple chart types within a single visualization. The library offers an opt-in Canvas rendering mode for improved performance with large datasets and high-density axis displays, alongside its standard SVG-based rendering. The library d
Displays a configurable text title above the chart for context and labeling.
Provides reference lines and shaded regions to highlight thresholds and ranges on charts.
ScrollableGraphView is a Swift data visualization library and iOS plotting framework used to render discrete numerical datasets as interactive graphs. It provides a scrollable user interface component that visualizes data points using a coordinate system with configurable layouts and styling. The framework is characterized by its adaptive graph scaling, which automatically adjusts the vertical axis to fit the visible data points as the user scrolls. It supports real-time data rendering, allowing graph views to update instantly as underlying datasets change through animated transitions. The l
Draws static horizontal or vertical markers to highlight thresholds or baseline values on the graph.
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
Draws horizontal or vertical lines spanning the full view for annotations such as average values.
Diese C++-Datenvisualisierungsbibliothek ist ein wissenschaftliches Plotting-Framework, das zum Erstellen von 2D- und 3D-Diagrammen, Netzwerk-Graphen und geografischen Karten verwendet wird. Sie arbeitet als Multi-Backend-Grafikbibliothek, die High-Level-Plotting-Logik von Low-Level-Rendering-Engines entkoppelt, um verschiedene Ausgabe-Backends zu unterstützen. Das Projekt zeichnet sich durch eine Dual-Interface-API aus, die sowohl ein globales funktionales Interface für schnelles Prototyping als auch ein objektorientiertes Interface für präzise Kontrolle bietet. Es verfügt über eine Komponenten-basierte Layout-Engine zur Verwaltung gekachelter Grids und Subplots, neben einem Layered-Plot-State, der es ermöglicht, mehrere Datenserien zu überlagern, ohne Achsen zu löschen. Die Bibliothek deckt ein breites Spektrum an Visualisierungsfunktionen ab, einschließlich mathematischem Funktionsplotten, Vektorfeldern und multidimensionaler Datenanalyse durch Heatmaps und parallele Koordinaten. Sie enthält spezialisierte Tools für die Visualisierung geografischer Daten, wie Geobubble- und Geodensity-Plots, sowie Tools zum Rendern gerichteter und ungerichteter Graphennetzwerke. Zu den allgemeinen Funktionen gehören Achsenverwaltung, ästhetisches Styling mit Colormaps und der Export hochwertiger Grafiken. Das Projekt nutzt CMake für Build-Automatisierung und Dependency-Retrieval, um die Installation über verschiedene Betriebssysteme hinweg zu erleichtern.
Draws horizontal, vertical, or sloped reference lines to mark milestones or targets on a chart.
mplfinance is a financial time-series plotter and market data visualization framework built on Matplotlib. It is designed to render market data frames into specialized charts, including candlesticks, OHLC bars, Renko bricks, and point-and-figure columns. The library distinguishes itself through a dedicated market data framework that manages trading calendars and non-trading periods, ensuring accurate temporal spacing by collapsing gaps during holidays. It also provides a system for technical analysis charting, enabling the overlay of moving averages, volume bars, and other technical indicator
Adds horizontal, vertical, and trend lines to highlight specific market signals or boundaries.
Vizro is a low-code Python framework for building production-ready data visualization applications. It functions as a UI orchestrator that allows users to define multi-page analytical dashboards through structured configurations in Python, YAML, or JSON, reducing the need for extensive frontend engineering. The project distinguishes itself through generative AI integration, utilizing a model context protocol server to translate natural language descriptions into validated dashboard configurations, charts, and layouts. It also features a decoupled data cataloging system that separates data sou
Adds structured context to charts through customizable titles, Markdown headers, and tooltips.
Unovis is a modular SVG and Canvas data visualization library used to build interactive charts, maps, and network graphs. It provides a framework-agnostic set of primitives for creating data dashboards and specialized visualizations. The library is distinguished by its dedicated toolkits for different visualization domains, including an XY charting library for coordinated plots, a network graph framework for relational data, and a geospatial visualization toolkit for TopoJSON-based mapping. Its capability surface covers a wide range of data representations, including linear, area, and bar ch
Provides custom labels, lines, and shapes such as axes and legends to highlight chart areas.
ChartGPU is a high-performance visualization library designed to render large-scale datasets and real-time data streams using hardware acceleration. It functions as a component-based tool that integrates into declarative user interfaces, allowing developers to build responsive, themeable charts that maintain smooth interaction even when processing massive amounts of information. The library distinguishes itself through a specialized rendering engine that employs screen-space binning and zoom-aware data resampling to manage dense datasets. It provides advanced interactive capabilities, includi
Provides tools to draw custom lines, points, and text labels over specific plot areas using coordinate mapping.
Dieses Projekt ist ein Python-Wrapper für die Lightweight Charts-Bibliothek, der für das Rendern interaktiver, browserbasierter Finanzvisualisierungen entwickelt wurde. Er dient als Framework für den Aufbau maßgeschneiderter Finanz-Dashboards und Interfaces, die Live-Marktdaten und historische Datenreihen integrieren. Die Bibliothek ermöglicht die Erstellung komplexer Layouts durch die Kombination von Multi-Pane-Charts, Watchlists und Order-Eingabetabellen in einem einheitlichen Arbeitsbereich. Sie unterstützt die Echtzeit-Marktüberwachung durch das Streamen von Live-Tick- oder Bar-Daten direkt in aktive Visualisierungen, was inkrementelle Updates ohne vollständiges Neuladen der Seite ermöglicht. Über das reine Rendern hinaus bietet das Toolkit umfangreiche Funktionen für die technische Analyse, einschließlich der Möglichkeit, Anmerkungen, Trendlinien und Marker direkt auf dem Canvas zu zeichnen. Benutzer können das visuelle Erscheinungsbild von Kerzencharts, Volumenbalken und Legenden konfigurieren und Benutzerinteraktionen wie die Auswahl von Zeitrahmen oder Tastaturkürzel mit eigener Python-Logik verknüpfen.
Allows drawing annotations, trendlines, and markers directly onto charts for technical analysis.