4 Repos
Systems for managing the lifecycle of data labeling tasks, including assignment, review, and quality control for machine learning datasets.
Distinct from Classification Labelers: The candidates focus on automated classification or metadata labeling utilities, whereas this tag represents the high-level project management and task orchestration workflow for human-in-the-loop annotation.
Explore 4 awesome GitHub repositories matching artificial intelligence & ml · Data Annotation Workflows. Refine with filters or upvote what's useful.
Label Studio ist ein Tool für die Annotation verschiedener Datentypen und ein Arbeitsbereich für Datenannotation, der entwickelt wurde, um Datensätze für das Training von maschinellem Lernen vorzubereiten. Es fungiert als cloud-integrierte Daten-Pipeline, die Rohdaten aus Speichern importiert, den Annotationsprozess verwaltet und Labels in standardisierte Formate exportiert. Die Plattform verfügt über ein Framework zur Integration von Modellen für maschinelles Lernen, das eine Verbindung zu externen Modellservern herstellt. Dies ermöglicht modellgestützte Annotation und aktives Lernen, wodurch das System Vor-Labeling durchführen und Vorhersagen basierend auf menschlichem Feedback verfeinern kann. Die Software bietet Projektmanagement-Tools zur Organisation von Datensätzen und zur Zuweisung von Aufgaben an Benutzer über rollenbasierte Zugriffe. Sie unterstützt verschiedene Datentypen und nutzt speicherunabhängige Speicheradapter, um eine Verbindung zu lokalen Dateisystemen oder Cloud-Speicheranbietern herzustellen. Die Anwendung kann durch manuelle Einrichtung oder One-Click-Deployments auf Cloud-Infrastruktur installiert werden.
Provides automated pipelines that import raw data, apply labels via a web interface, and export it into standardized formats.
Label Studio is a multi-modal data annotation platform designed to create and manage high-quality training datasets for machine learning. It functions as a self-hosted, containerized environment that supports secure, private deployments, including air-gapped configurations. The platform provides a centralized workspace for labeling diverse media types, such as images, text, audio, and time-series data, to support supervised and reinforcement learning workflows. The platform distinguishes itself through deep integration with machine learning backends, enabling active learning loops, automated
Orchestrates the lifecycle of data labeling tasks, including project-specific instructions and task presentation sequences.
Omnivore is an open-source, self-hostable read-it-later application designed to centralize web articles, newsletters, and digital documents into a personal library. It functions as a comprehensive content archiver that captures web pages and stores them locally, ensuring permanent access and readability regardless of internet connectivity. The platform distinguishes itself through an event-sourced synchronization engine that maintains a consistent state across multiple devices by replaying user actions. It utilizes a headless web scraping service to extract clean text and metadata from raw we
Facilitates research workflows by allowing users to mark passages and attach notes to saved content.
CVAT is an open-source, web-based platform designed for annotating images, videos, and 3D point clouds to create high-quality training datasets for machine learning. It functions as a containerized server that orchestrates the entire lifecycle of computer vision data, from initial task creation and manual labeling to quality assurance and final dataset export. The platform distinguishes itself through deep integration with machine learning models, allowing users to deploy custom AI models as serverless functions for automated object detection, tracking, and skeleton annotation. It supports co
Provides a comprehensive environment for managing the entire lifecycle of data annotation tasks, including team collaboration and quality control.