Jerry Yan 8ffa131fad feat(annotation): 自动标注任务支持非图像类型数据集(TEXT/AUDIO/VIDEO)
移除自动标注任务创建流程中的 IMAGE-only 限制,使 TEXT、AUDIO、VIDEO
类型数据集均可用于自动标注任务。

- 新增数据库迁移:t_dm_auto_annotation_tasks 表添加 dataset_type 列
- 后端 schema/API/service 全链路传递 dataset_type
- Worker 动态构建 sample key(image/text/audio/video)和输出目录
- 前端移除数据集类型校验,下拉框显示数据集类型标识
- 输出数据集继承源数据集类型,不再硬编码为 IMAGE
- 保持向后兼容:默认值为 IMAGE,worker 有元数据回退和目录 fallback

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-02-09 23:23:05 +08:00
a
2026-02-02 16:09:25 +08:00
2025-11-04 20:30:40 +08:00
2025-12-11 23:17:01 +08:00
2025-12-11 23:17:01 +08:00

DataMate All-in-One Data Work Platform

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DataMate is an enterprise-level data processing platform for model fine-tuning and RAG retrieval, supporting core functions such as data collection, data management, operator marketplace, data cleaning, data synthesis, data annotation, data evaluation, and knowledge generation.

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🌟 Core Features

  • Core Modules: Data Collection, Data Management, Operator Marketplace, Data Cleaning, Data Synthesis, Data Annotation, Data Evaluation, Knowledge Generation.
  • Visual Orchestration: Drag-and-drop data processing workflow design.
  • Operator Ecosystem: Rich built-in operators and support for custom operators.

🚀 Quick Start

Prerequisites

  • Git (for pulling source code)
  • Make (for building and installing)
  • Docker (for building images and deploying services)
  • Docker-Compose (for service deployment - Docker method)
  • Kubernetes (for service deployment - k8s method)
  • Helm (for service deployment - k8s method)

This project supports deployment via two methods: docker-compose and helm. After executing the command, please enter the corresponding number for the deployment method. The command echo is as follows:

Choose a deployment method:
1. Docker/Docker-Compose
2. Kubernetes/Helm
Enter choice:

Clone the Code

git clone git@github.com:ModelEngine-Group/DataMate.git
cd DataMate

Deploy the basic services

make install

If the machine you are using does not have make installed, please run the following command to deploy it:

# Windows
set REGISTRY=ghcr.io/modelengine-group/
docker compose -f ./deployment/docker/datamate/docker-compose.yml up -d
docker compose -f ./deployment/docker/milvus/docker-compose.yml up -d

# Linux/Mac
export REGISTRY=ghcr.io/modelengine-group/
docker compose -f ./deployment/docker/datamate/docker-compose.yml up -d
docker compose -f ./deployment/docker/milvus/docker-compose.yml up -d

Once the container is running, access http://localhost:30000 in a browser to view the front-end interface.

To list all available Make targets, flags and help text, run:

make help

Build and deploy Mineru Enhanced PDF Processing

make build-mineru
make install-mineru

Deploy the DeerFlow service

make install-deer-flow

Local Development and Deployment

After modifying the local code, please execute the following commands to build the image and deploy using the local image.

make build
make install dev=true

Uninstall

make uninstall

When running make uninstall, the installer will prompt once whether to delete volumes; that single choice is applied to all components. The uninstall order is: milvus -> label-studio -> datamate, which ensures the datamate network is removed cleanly after services that use it have stopped.

🤝 Contribution Guidelines

Thank you for your interest in this project! We warmly welcome contributions from the community. Whether it's submitting bug reports, suggesting new features, or directly participating in code development, all forms of help make the project better.

📮 GitHub Issues: Submit bugs or feature suggestions.

🔧 GitHub Pull Requests: Contribute code improvements.

📄 License

DataMate is open source under the MIT license. You are free to use, modify, and distribute the code of this project in compliance with the license terms.

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