🔥 leantime | PHP
🎯 Primary Use Case:
Project management for teams, especially those without dedicated project managers, focusing on ease of use and comprehensive feature set.
✨ Key Features:
• Task management (Kanban, Gantt, table, list, calendar views)
• Subtasks and dependencies
• Milestone management
• Sprint Management
• Time tracking and timesheets
📖 Summary:
Leantime is an open-source project management system designed for non-project managers, emphasizing ease of use and accessibility. It combines strategy, planning, and execution features, offering alternatives to tools like Trello, Jira, ClickUp, Monday, and Asana. It includes features for task management, project planning, knowledge management, and administration.
🔗 Links:
• View Project
• Homepage
================
🔓 Open Source
🎯 Primary Use Case:
Project management for teams, especially those without dedicated project managers, focusing on ease of use and comprehensive feature set.
✨ Key Features:
• Task management (Kanban, Gantt, table, list, calendar views)
• Subtasks and dependencies
• Milestone management
• Sprint Management
• Time tracking and timesheets
📖 Summary:
Leantime is an open-source project management system designed for non-project managers, emphasizing ease of use and accessibility. It combines strategy, planning, and execution features, offering alternatives to tools like Trello, Jira, ClickUp, Monday, and Asana. It includes features for task management, project planning, knowledge management, and administration.
🔗 Links:
• View Project
• Homepage
================
🔓 Open Source
✨ mobile-use | Python
🎯 Primary Use Case:
Automating tasks on Android and iOS devices using natural language commands.
✨ Key Features:
• Natural Language Control
• UI-Aware Automation
• Data Scraping
• Extensible & Customizable
📖 Summary:
Mobile-use is an open-source AI agent that enables natural language control of Android and iOS devices. It allows users to automate tasks, navigate apps, and extract data using natural language commands, effectively bridging the gap between human intention and mobile device interaction.
🔗 Links:
• View Project
• Homepage
================
🔓 Open Source
🎯 Primary Use Case:
Automating tasks on Android and iOS devices using natural language commands.
✨ Key Features:
• Natural Language Control
• UI-Aware Automation
• Data Scraping
• Extensible & Customizable
📖 Summary:
Mobile-use is an open-source AI agent that enables natural language control of Android and iOS devices. It allows users to automate tasks, navigate apps, and extract data using natural language commands, effectively bridging the gap between human intention and mobile device interaction.
🔗 Links:
• View Project
• Homepage
================
🔓 Open Source
✨ streamdown | TypeScript
🎯 Primary Use Case:
Rendering streaming Markdown content, especially from AI models, in React applications.
✨ Key Features:
• Drop-in replacement for `react-markdown`
• Streaming-optimized
• Unterminated block parsing
• GitHub Flavored Markdown support
• Math rendering (KaTeX)
📖 Summary:
Streamdown is a TypeScript library that serves as a drop-in replacement for react-markdown, specifically designed for handling streaming Markdown content, particularly from AI models. It excels at gracefully formatting incomplete or unterminated Markdown blocks, making it suitable for real-time content generation and display.
🔗 Links:
• View Project
• Homepage
================
🔓 Open Source
🎯 Primary Use Case:
Rendering streaming Markdown content, especially from AI models, in React applications.
✨ Key Features:
• Drop-in replacement for `react-markdown`
• Streaming-optimized
• Unterminated block parsing
• GitHub Flavored Markdown support
• Math rendering (KaTeX)
📖 Summary:
Streamdown is a TypeScript library that serves as a drop-in replacement for react-markdown, specifically designed for handling streaming Markdown content, particularly from AI models. It excels at gracefully formatting incomplete or unterminated Markdown blocks, making it suitable for real-time content generation and display.
🔗 Links:
• View Project
• Homepage
================
🔓 Open Source
✨ ccpm | Shell
🎯 Primary Use Case:
Managing Claude Code projects with parallel AI agent execution and full traceability using GitHub Issues and Git worktrees.
✨ Key Features:
• Spec-driven development
• GitHub Issues integration for task management
• Git worktrees for parallel execution
• Parallel AI agent execution
• Persistent context across sessions
📖 Summary:
The ccpm repository provides a project management system tailored for Claude Code, leveraging GitHub Issues and Git worktrees to enable parallel agent execution. It aims to improve team collaboration, maintain context, and ensure traceability throughout the development process, from PRD creation to production code.
🔗 Links:
• View Project
• Homepage
================
🔓 Open Source
🎯 Primary Use Case:
Managing Claude Code projects with parallel AI agent execution and full traceability using GitHub Issues and Git worktrees.
✨ Key Features:
• Spec-driven development
• GitHub Issues integration for task management
• Git worktrees for parallel execution
• Parallel AI agent execution
• Persistent context across sessions
📖 Summary:
The ccpm repository provides a project management system tailored for Claude Code, leveraging GitHub Issues and Git worktrees to enable parallel agent execution. It aims to improve team collaboration, maintain context, and ensure traceability throughout the development process, from PRD creation to production code.
🔗 Links:
• View Project
• Homepage
================
🔓 Open Source
💡 vdu_controls | Python
🎯 Primary Use Case:
Controlling external monitor settings (brightness, contrast, audio) and automating brightness adjustments based on ambient light conditions.
✨ Key Features:
• Brightness and contrast control
• Audio control
• Ambient light-based automatic brightness control (hardware light meter integration)
📖 Summary:
vdu_controls is a Python-based control panel for external monitors (VDUs) connected via DisplayPort, DVI, HDMI, or USB. It allows users to adjust brightness, contrast, and audio, and supports ambient light-based automatic brightness control using hardware light meters or solar-illumination estimation. The application can run in the system tray and adapts to light and dark Qt desktop themes.
🔗 Links:
• View Project
================
🔓 Open Source
🎯 Primary Use Case:
Controlling external monitor settings (brightness, contrast, audio) and automating brightness adjustments based on ambient light conditions.
✨ Key Features:
• Brightness and contrast control
• Audio control
• Ambient light-based automatic brightness control (hardware light meter integration)
📖 Summary:
vdu_controls is a Python-based control panel for external monitors (VDUs) connected via DisplayPort, DVI, HDMI, or USB. It allows users to adjust brightness, contrast, and audio, and supports ambient light-based automatic brightness control using hardware light meters or solar-illumination estimation. The application can run in the system tray and adapts to light and dark Qt desktop themes.
🔗 Links:
• View Project
================
🔓 Open Source
🚀 gacua | TypeScript
🎯 Primary Use Case:
Automating computer tasks such as gameplay assistance and software installation.
✨ Key Features:
• Out-of-the-box computer use
• High accuracy task execution
• Step-by-step control & observability
• Remote operation
📖 Summary:
GACUA (Gemini CLI as Computer Use Agent) is an out-of-the-box computer use agent powered by Gemini CLI. It allows users to automate computer tasks with step-by-step control and observability, enabling remote operation and high accuracy task execution through an "Image Slicing + Two-Step Grounding" method.
🔗 Links:
• View Project
• Homepage
================
🔓 Open Source
🎯 Primary Use Case:
Automating computer tasks such as gameplay assistance and software installation.
✨ Key Features:
• Out-of-the-box computer use
• High accuracy task execution
• Step-by-step control & observability
• Remote operation
📖 Summary:
GACUA (Gemini CLI as Computer Use Agent) is an out-of-the-box computer use agent powered by Gemini CLI. It allows users to automate computer tasks with step-by-step control and observability, enabling remote operation and high accuracy task execution through an "Image Slicing + Two-Step Grounding" method.
🔗 Links:
• View Project
• Homepage
================
🔓 Open Source
🚀 yapyap | Python
🎯 Primary Use Case:
Voice dictation and transcription for text input in Linux environments.
✨ Key Features:
• Push-to-talk dictation
• Transcription using whisper.cpp
• Output to stdout
• Customizable key combination
• Model selection for transcription
📖 Summary:
Yapyap is a push-to-talk dictation tool that transcribes audio to text using whisper.cpp and outputs the transcription to stdout. It's primarily designed for Linux and allows users to record audio by holding down a key combination, which is then transcribed and can be piped to other commands for further processing, such as copying to the clipboard and pasting.
🔗 Links:
• View Project
================
🔓 Open Source
🎯 Primary Use Case:
Voice dictation and transcription for text input in Linux environments.
✨ Key Features:
• Push-to-talk dictation
• Transcription using whisper.cpp
• Output to stdout
• Customizable key combination
• Model selection for transcription
📖 Summary:
Yapyap is a push-to-talk dictation tool that transcribes audio to text using whisper.cpp and outputs the transcription to stdout. It's primarily designed for Linux and allows users to record audio by holding down a key combination, which is then transcribed and can be piped to other commands for further processing, such as copying to the clipboard and pasting.
🔗 Links:
• View Project
================
🔓 Open Source
✨ Windows-Use | Python
🎯 Primary Use Case:
Automating Windows tasks using AI agents and LLMs.
✨ Key Features:
• Windows GUI automation
• AI agent integration
• Task automation (opening apps, clicking buttons, typing)
• Shell command execution
• UI state capture
📖 Summary:
Windows-Use is a Python-based automation agent that allows AI agents to interact directly with the Windows GUI layer. It enables tasks like opening applications, clicking buttons, typing, and executing shell commands without relying on traditional computer vision models, making it suitable for LLMs to perform computer automation.
🔗 Links:
• View Project
================
🔓 Open Source
🎯 Primary Use Case:
Automating Windows tasks using AI agents and LLMs.
✨ Key Features:
• Windows GUI automation
• AI agent integration
• Task automation (opening apps, clicking buttons, typing)
• Shell command execution
• UI state capture
📖 Summary:
Windows-Use is a Python-based automation agent that allows AI agents to interact directly with the Windows GUI layer. It enables tasks like opening applications, clicking buttons, typing, and executing shell commands without relying on traditional computer vision models, making it suitable for LLMs to perform computer automation.
🔗 Links:
• View Project
================
🔓 Open Source
✨ omarchist | Rust
🎯 Primary Use Case:
Visual creation and editing of Omarchy themes.
✨ Key Features:
• Theme Designer: Visual editor for creating and editing Omarchy themes
📖 Summary:
Omarchist is a GUI application built with Tauri/Rust/Svelte for creating and editing themes for Omarchy. It provides a visual editor with color pickers and an intuitive interface to design, preview, and fine-tune themes, simplifying the customization process.
🔗 Links:
• View Project
================
🔓 Open Source
🎯 Primary Use Case:
Visual creation and editing of Omarchy themes.
✨ Key Features:
• Theme Designer: Visual editor for creating and editing Omarchy themes
📖 Summary:
Omarchist is a GUI application built with Tauri/Rust/Svelte for creating and editing themes for Omarchy. It provides a visual editor with color pickers and an intuitive interface to design, preview, and fine-tune themes, simplifying the customization process.
🔗 Links:
• View Project
================
🔓 Open Source
✨ dbcls | Python
🎯 Primary Use Case:
Database management and data analysis through a terminal interface.
✨ Key Features:
• SQL query editing with syntax highlighting
• Direct query execution from the editor
• Data visualization with interactive tables
• Support for multiple database engines (MySQL, PostgreSQL, ClickHouse)
• Configuration via command line or config file
📖 Summary:
DbCls is a terminal-based database client that combines SQL query editing with data visualization. It supports multiple database engines like MySQL, PostgreSQL, and ClickHouse, allowing users to execute queries, inspect table schemas, and visualize data using interactive tables.
🔗 Links:
• View Project
================
🔓 Open Source
🎯 Primary Use Case:
Database management and data analysis through a terminal interface.
✨ Key Features:
• SQL query editing with syntax highlighting
• Direct query execution from the editor
• Data visualization with interactive tables
• Support for multiple database engines (MySQL, PostgreSQL, ClickHouse)
• Configuration via command line or config file
📖 Summary:
DbCls is a terminal-based database client that combines SQL query editing with data visualization. It supports multiple database engines like MySQL, PostgreSQL, and ClickHouse, allowing users to execute queries, inspect table schemas, and visualize data using interactive tables.
🔗 Links:
• View Project
================
🔓 Open Source
🔥 griddb | C++
🎯 Primary Use Case:
Storing, managing, and analyzing time series data from IoT devices and other big data sources with high performance and flexibility through NoSQL and SQL interfaces.
✨ Key Features:
• NoSQL interface
• SQL interface
• Time series data support
• IoT data management
• Big data processing
📖 Summary:
GridDB is a next-generation open-source database designed for time series, IoT, and big data applications. It offers both NoSQL and SQL interfaces, aiming for fast and easy data management. The repository includes server and Java client components, with additional JDBC driver support available in a separate repository.
🔗 Links:
• View Project
• Homepage
================
🔓 Open Source
🎯 Primary Use Case:
Storing, managing, and analyzing time series data from IoT devices and other big data sources with high performance and flexibility through NoSQL and SQL interfaces.
✨ Key Features:
• NoSQL interface
• SQL interface
• Time series data support
• IoT data management
• Big data processing
📖 Summary:
GridDB is a next-generation open-source database designed for time series, IoT, and big data applications. It offers both NoSQL and SQL interfaces, aiming for fast and easy data management. The repository includes server and Java client components, with additional JDBC driver support available in a separate repository.
🔗 Links:
• View Project
• Homepage
================
🔓 Open Source
🚀 Replibyte | Rust
🎯 Primary Use Case:
Seeding development databases with anonymized production data.
✨ Key Features:
• Support data dump and restore for PostgreSQL, MySQL and MongoDB
• Analyze your data schema
• Replace sensitive data with fake data
• Works on large database (> 10GB)
• Database Subsetting
📖 Summary:
Replibyte is a tool designed to seed development databases with production data while ensuring sensitive information is protected. It supports data dumping and restoration for PostgreSQL, MySQL, and MongoDB, and includes features for data subsetting, on-the-fly compression/encryption, and custom data transformations.
🔗 Links:
• View Project
• Homepage
================
🔓 Open Source
🎯 Primary Use Case:
Seeding development databases with anonymized production data.
✨ Key Features:
• Support data dump and restore for PostgreSQL, MySQL and MongoDB
• Analyze your data schema
• Replace sensitive data with fake data
• Works on large database (> 10GB)
• Database Subsetting
📖 Summary:
Replibyte is a tool designed to seed development databases with production data while ensuring sensitive information is protected. It supports data dumping and restoration for PostgreSQL, MySQL, and MongoDB, and includes features for data subsetting, on-the-fly compression/encryption, and custom data transformations.
🔗 Links:
• View Project
• Homepage
================
🔓 Open Source
🌟 data-morph | Python
🎯 Primary Use Case:
Illustrating the importance of data visualization in education.
✨ Key Features:
• Morphing 2D point datasets
• Preserving summary statistics during transformation
• Simulated annealing optimization
• Educational tool for data visualization
📖 Summary:
The data-morph repository provides a tool to morph a dataset of 2D points into various shapes while preserving summary statistics using simulated annealing. It serves as a teaching aid to emphasize the significance of data visualization by demonstrating how datasets with similar summary statistics can appear vastly different when visualized.
🔗 Links:
• View Project
• Homepage
================
🔓 Open Source
🎯 Primary Use Case:
Illustrating the importance of data visualization in education.
✨ Key Features:
• Morphing 2D point datasets
• Preserving summary statistics during transformation
• Simulated annealing optimization
• Educational tool for data visualization
📖 Summary:
The data-morph repository provides a tool to morph a dataset of 2D points into various shapes while preserving summary statistics using simulated annealing. It serves as a teaching aid to emphasize the significance of data visualization by demonstrating how datasets with similar summary statistics can appear vastly different when visualized.
🔗 Links:
• View Project
• Homepage
================
🔓 Open Source
🚀 sound-of-sort | Go
🎯 Primary Use Case:
Visualizing and sonifying sorting algorithms for educational or demonstrative purposes, and creatively sorting images represented as ASCII/Unicode art.
✨ Key Features:
• Real-time Visualization of sorting algorithms as a bar graph
• Sonification of array element access and modification
• Interactive control of algorithms, speed, volume, and array size
📖 Summary:
The sound-of-sort repository is a Go-based terminal application that visualizes and sonifies various sorting algorithms. It renders the sorting process as a bar graph in the terminal and plays a tone for each element access or modification, with the pitch corresponding to the element's value. It also supports sorting ASCII/Unicode art piped via stdin, offering an image mode.
🔗 Links:
• View Project
================
🔓 Open Source
🎯 Primary Use Case:
Visualizing and sonifying sorting algorithms for educational or demonstrative purposes, and creatively sorting images represented as ASCII/Unicode art.
✨ Key Features:
• Real-time Visualization of sorting algorithms as a bar graph
• Sonification of array element access and modification
• Interactive control of algorithms, speed, volume, and array size
📖 Summary:
The sound-of-sort repository is a Go-based terminal application that visualizes and sonifies various sorting algorithms. It renders the sorting process as a bar graph in the terminal and plays a tone for each element access or modification, with the pitch corresponding to the element's value. It also supports sorting ASCII/Unicode art piped via stdin, offering an image mode.
🔗 Links:
• View Project
================
🔓 Open Source
💡 airweave | Python
🎯 Primary Use Case:
Enabling agents to search any app by creating searchable knowledge bases from app content.
✨ Key Features:
• Connects to apps, productivity tools, databases, or document stores
• Transforms content into searchable knowledge bases
• Provides a standardized interface for agents
• Exposes search interface via REST API or MCP
📖 Summary:
Airweave is a tool that enables agents to search across various applications by transforming their content into searchable knowledge bases. It provides a standardized interface accessible through REST API or MCP, handling auth, extraction, embedding, and serving. Airweave essentially builds a semantically searchable MCP server.
🔗 Links:
• View Project
• Homepage
================
🔓 Open Source
🎯 Primary Use Case:
Enabling agents to search any app by creating searchable knowledge bases from app content.
✨ Key Features:
• Connects to apps, productivity tools, databases, or document stores
• Transforms content into searchable knowledge bases
• Provides a standardized interface for agents
• Exposes search interface via REST API or MCP
📖 Summary:
Airweave is a tool that enables agents to search across various applications by transforming their content into searchable knowledge bases. It provides a standardized interface accessible through REST API or MCP, handling auth, extraction, embedding, and serving. Airweave essentially builds a semantically searchable MCP server.
🔗 Links:
• View Project
• Homepage
================
🔓 Open Source
✨ WeClone | Python
🎯 Primary Use Case:
Creating digital avatars from chat history by fine-tuning LLMs.
✨ Key Features:
• Complete end-to-end solution for creating digital avatars
• Fine-tune LLM using chat history with support for image modal data
• Integrate with Telegram, WhatsApp (coming soon) to create your own digital avatar
📖 Summary:
WeClone is a one-stop solution for creating digital avatars from chat history. It allows users to fine-tune LLMs with their chat logs to capture their unique style and then bind the model to a chatbot to bring their digital self to life. The project supports multiple platforms like Telegram and aims to provide a secure and controllable way to create personalized digital representations.
🔗 Links:
• View Project
• Homepage
================
🔓 Open Source
🎯 Primary Use Case:
Creating digital avatars from chat history by fine-tuning LLMs.
✨ Key Features:
• Complete end-to-end solution for creating digital avatars
• Fine-tune LLM using chat history with support for image modal data
• Integrate with Telegram, WhatsApp (coming soon) to create your own digital avatar
📖 Summary:
WeClone is a one-stop solution for creating digital avatars from chat history. It allows users to fine-tune LLMs with their chat logs to capture their unique style and then bind the model to a chatbot to bring their digital self to life. The project supports multiple platforms like Telegram and aims to provide a secure and controllable way to create personalized digital representations.
🔗 Links:
• View Project
• Homepage
================
🔓 Open Source
🌟 torchtitan | Python
🎯 Primary Use Case:
Training generative AI models at scale using PyTorch.
✨ Key Features:
• PyTorch native implementation
• Rapid experimentation
• Large-scale training
• Support for generative AI models
• Extension points for customization
📖 Summary:
Torchtitan is a PyTorch-native platform designed for rapid experimentation and large-scale training of generative AI models. It provides a flexible foundation for developers to build upon, showcasing PyTorch's latest distributed training features, particularly for pretraining large language models like Llama 3.1.
🔗 Links:
• View Project
================
🔓 Open Source
🎯 Primary Use Case:
Training generative AI models at scale using PyTorch.
✨ Key Features:
• PyTorch native implementation
• Rapid experimentation
• Large-scale training
• Support for generative AI models
• Extension points for customization
📖 Summary:
Torchtitan is a PyTorch-native platform designed for rapid experimentation and large-scale training of generative AI models. It provides a flexible foundation for developers to build upon, showcasing PyTorch's latest distributed training features, particularly for pretraining large language models like Llama 3.1.
🔗 Links:
• View Project
================
🔓 Open Source
✨ D-FINE | Python
🎯 Primary Use Case:
Real-time object detection, particularly in scenarios requiring high precision and robustness to challenging visual conditions.
✨ Key Features:
• Fine-grained Distribution Refinement (FDR)
• Global Optimal Localization Self-Distillation (GO-LSD)
• Real-time object detection
📖 Summary:
D-FINE is a real-time object detection model that refines bounding box regression in DETRs (Detection Transformers) using Fine-grained Distribution Refinement (FDR). It also introduces Global Optimal Localization Self-Distillation (GO-LSD) to improve performance without increasing inference or training costs. The model excels in challenging conditions, such as backlighting and motion blur, demonstrating high confidence scores and precise localization, especially for small objects.
🔗 Links:
• View Project
================
🔓 Open Source
🎯 Primary Use Case:
Real-time object detection, particularly in scenarios requiring high precision and robustness to challenging visual conditions.
✨ Key Features:
• Fine-grained Distribution Refinement (FDR)
• Global Optimal Localization Self-Distillation (GO-LSD)
• Real-time object detection
📖 Summary:
D-FINE is a real-time object detection model that refines bounding box regression in DETRs (Detection Transformers) using Fine-grained Distribution Refinement (FDR). It also introduces Global Optimal Localization Self-Distillation (GO-LSD) to improve performance without increasing inference or training costs. The model excels in challenging conditions, such as backlighting and motion blur, demonstrating high confidence scores and precise localization, especially for small objects.
🔗 Links:
• View Project
================
🔓 Open Source
🔥 detectron2 | Python
🎯 Primary Use Case:
Object detection and segmentation research and production.
✨ Key Features:
• Panoptic segmentation
• Densepose
• Cascade R-CNN
• Rotated bounding boxes
• PointRend
📖 Summary:
Detectron2 is a next-generation library from Facebook AI Research for object detection, segmentation, and other visual recognition tasks. It serves as a platform for computer vision research and production applications, offering state-of-the-art algorithms and capabilities such as panoptic segmentation and rotated bounding boxes.
🔗 Links:
• View Project
• Homepage
================
🔓 Open Source
🎯 Primary Use Case:
Object detection and segmentation research and production.
✨ Key Features:
• Panoptic segmentation
• Densepose
• Cascade R-CNN
• Rotated bounding boxes
• PointRend
📖 Summary:
Detectron2 is a next-generation library from Facebook AI Research for object detection, segmentation, and other visual recognition tasks. It serves as a platform for computer vision research and production applications, offering state-of-the-art algorithms and capabilities such as panoptic segmentation and rotated bounding boxes.
🔗 Links:
• View Project
• Homepage
================
🔓 Open Source
🌟 PaddleOCR | Python
🎯 Primary Use Case:
Converting documents and images into structured data for AI applications.
✨ Key Features:
• PP-OCRv5 for universal scene text recognition
• PP-StructureV3 for complex document parsing
• Support for 80+ languages
• Industry-leading accuracy
• End-to-end solutions from text extraction to document understanding
📖 Summary:
PaddleOCR is a production-ready OCR and document AI engine that converts documents and images into structured, AI-friendly data like JSON and Markdown. It supports over 80 languages and offers end-to-end solutions for text extraction and intelligent document understanding, making it suitable for various AI applications.
🔗 Links:
• View Project
• Homepage
================
🔓 Open Source
🎯 Primary Use Case:
Converting documents and images into structured data for AI applications.
✨ Key Features:
• PP-OCRv5 for universal scene text recognition
• PP-StructureV3 for complex document parsing
• Support for 80+ languages
• Industry-leading accuracy
• End-to-end solutions from text extraction to document understanding
📖 Summary:
PaddleOCR is a production-ready OCR and document AI engine that converts documents and images into structured, AI-friendly data like JSON and Markdown. It supports over 80 languages and offers end-to-end solutions for text extraction and intelligent document understanding, making it suitable for various AI applications.
🔗 Links:
• View Project
• Homepage
================
🔓 Open Source
✨ brush | Rust
🎯 Primary Use Case:
3D reconstruction and rendering using Gaussian splatting across multiple platforms.
✨ Key Features:
• Training with COLMAP and Nerfstudio data
• Interactive training with live scene interaction
• Masking image support
• Splat viewer for .ply and .compressed.ply files
• Animation support via .zip and delta frame .ply files
📖 Summary:
Brush is a 3D reconstruction engine leveraging Gaussian splatting, designed for broad compatibility across macOS, Windows, Linux, Android, and web browsers. It utilizes WebGPU and the Burn machine learning framework to enable real-time rendering and interactive training on diverse platforms, producing dependency-free binaries.
🔗 Links:
• View Project
================
🔓 Open Source
🎯 Primary Use Case:
3D reconstruction and rendering using Gaussian splatting across multiple platforms.
✨ Key Features:
• Training with COLMAP and Nerfstudio data
• Interactive training with live scene interaction
• Masking image support
• Splat viewer for .ply and .compressed.ply files
• Animation support via .zip and delta frame .ply files
📖 Summary:
Brush is a 3D reconstruction engine leveraging Gaussian splatting, designed for broad compatibility across macOS, Windows, Linux, Android, and web browsers. It utilizes WebGPU and the Burn machine learning framework to enable real-time rendering and interactive training on diverse platforms, producing dependency-free binaries.
🔗 Links:
• View Project
================
🔓 Open Source