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docs: Add instructions for launching service from source (#619)
This commit includes detailed steps for setting up and launching the service directly from the source code. It covers cloning the repository, setting up a virtual environment, configuring environment variables, and starting the service using Docker. This update ensures that developers have clear guidance on how to get the service running in a development environment. ### What problem does this PR solve? _Briefly describe what this PR aims to solve. Include background context that will help reviewers understand the purpose of the PR._ ### Type of change - [x] Documentation Update
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README.md
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README.md
@ -186,6 +186,66 @@ $ chmod +x ./entrypoint.sh
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$ docker compose up -d
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```
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## 🛠️ Launch Service from Source
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To launch the service from source, please follow these steps:
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1. Clone the repository
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```bash
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$ git clone https://github.com/infiniflow/ragflow.git
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$ cd ragflow/
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```
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2. Create a virtual environment (ensure Anaconda or Miniconda is installed)
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```bash
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$ conda create -n ragflow python=3.11.0
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$ conda activate ragflow
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$ pip install -r requirements.txt
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```
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If CUDA version is greater than 12.0, execute the following additional commands:
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```bash
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$ pip uninstall -y onnxruntime-gpu
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$ pip install onnxruntime-gpu --extra-index-url https://aiinfra.pkgs.visualstudio.com/PublicPackages/_packaging/onnxruntime-cuda-12/pypi/simple/
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```
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3. Copy the entry script and configure environment variables
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```bash
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$ cp docker/entrypoint.sh .
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$ vi entrypoint.sh
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```
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Use the following commands to obtain the Python path and the ragflow project path:
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```bash
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$ which python
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$ pwd
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```
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Set the output of `which python` as the value for `PY` and the output of `pwd` as the value for `PYTHONPATH`.
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If `LD_LIBRARY_PATH` is already configured, it can be commented out.
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```bash
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# Adjust configurations according to your actual situation; the two export commands are newly added.
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PY=${PY}
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export PYTHONPATH=${PYTHONPATH}
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# Optional: Add Hugging Face mirror
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export HF_ENDPOINT=https://hf-mirror.com
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```
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4. Start the base services
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```bash
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$ cd docker
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$ docker compose -f docker-compose-base.yml up -d
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```
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5. Check the configuration files
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Ensure that the settings in **docker/.env** match those in **conf/service_conf.yaml**. The IP addresses and ports for related services in **service_conf.yaml** should be changed to the local machine IP and ports exposed by the container.
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6. Launch the service
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```bash
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$ chmod +x ./entrypoint.sh
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$ bash ./entrypoint.sh
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```
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## 📚 Documentation
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- [FAQ](./docs/faq.md)
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README_ja.md
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README_ja.md
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$ docker compose up -d
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```
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## 🛠️ ソースコードからサービスを起動する方法
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ソースコードからサービスを起動する場合は、以下の手順に従ってください:
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1. リポジトリをクローンします
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```bash
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$ git clone https://github.com/infiniflow/ragflow.git
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$ cd ragflow/
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```
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2. 仮想環境を作成します(AnacondaまたはMinicondaがインストールされていることを確認してください)
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```bash
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$ conda create -n ragflow python=3.11.0
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$ conda activate ragflow
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$ pip install -r requirements.txt
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```
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CUDAのバージョンが12.0以上の場合、以下の追加コマンドを実行してください:
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```bash
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$ pip uninstall -y onnxruntime-gpu
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$ pip install onnxruntime-gpu --extra-index-url https://aiinfra.pkgs.visualstudio.com/PublicPackages/_packaging/onnxruntime-cuda-12/pypi/simple/
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```
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3. エントリースクリプトをコピーし、環境変数を設定します
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```bash
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$ cp docker/entrypoint.sh .
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$ vi entrypoint.sh
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```
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以下のコマンドでPythonのパスとragflowプロジェクトのパスを取得します:
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```bash
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$ which python
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$ pwd
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```
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`which python`の出力を`PY`の値として、`pwd`の出力を`PYTHONPATH`の値として設定します。
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`LD_LIBRARY_PATH`が既に設定されている場合は、コメントアウトできます。
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```bash
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# 実際の状況に応じて設定を調整してください。以下の二つのexportは新たに追加された設定です
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PY=${PY}
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export PYTHONPATH=${PYTHONPATH}
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# オプション:Hugging Faceミラーを追加
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export HF_ENDPOINT=https://hf-mirror.com
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```
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4. 基本サービスを起動します
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```bash
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$ cd docker
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$ docker compose -f docker-compose-base.yml up -d
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```
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5. 設定ファイルを確認します
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**docker/.env**内の設定が**conf/service_conf.yaml**内の設定と一致していることを確認してください。**service_conf.yaml**内の関連サービスのIPアドレスとポートは、ローカルマシンのIPアドレスとコンテナが公開するポートに変更する必要があります。
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6. サービスを起動します
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```bash
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$ chmod +x ./entrypoint.sh
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$ bash ./entrypoint.sh
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```
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## 📚 ドキュメンテーション
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- [FAQ](./docs/faq.md)
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README_zh.md
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README_zh.md
@ -186,6 +186,66 @@ $ chmod +x ./entrypoint.sh
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$ docker compose up -d
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```
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## 🛠️ 源码启动服务
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如需从源码启动服务,请参考以下步骤:
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1. 克隆仓库
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```bash
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$ git clone https://github.com/infiniflow/ragflow.git
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$ cd ragflow/
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```
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2. 创建虚拟环境(确保已安装 Anaconda 或 Miniconda)
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```bash
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$ conda create -n ragflow python=3.11.0
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$ conda activate ragflow
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$ pip install -r requirements.txt
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```
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如果cuda > 12.0,需额外执行以下命令:
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```bash
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$ pip uninstall -y onnxruntime-gpu
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$ pip install onnxruntime-gpu --extra-index-url https://aiinfra.pkgs.visualstudio.com/PublicPackages/_packaging/onnxruntime-cuda-12/pypi/simple/
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```
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3. 拷贝入口脚本并配置环境变量
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```bash
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$ cp docker/entrypoint.sh .
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$ vi entrypoint.sh
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```
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使用以下命令获取python路径及ragflow项目路径:
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```bash
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$ which python
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$ pwd
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```
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将上述`which python`的输出作为`PY`的值,将`pwd`的输出作为`PYTHONPATH`的值。
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`LD_LIBRARY_PATH`如果环境已经配置好,可以注释掉。
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```bash
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# 此处配置需要按照实际情况调整,两个export为新增配置
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PY=${PY}
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export PYTHONPATH=${PYTHONPATH}
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# 可选:添加Hugging Face镜像
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export HF_ENDPOINT=https://hf-mirror.com
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```
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4. 启动基础服务
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```bash
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$ cd docker
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$ docker compose -f docker-compose-base.yml up -d
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```
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5. 检查配置文件
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确保**docker/.env**中的配置与**conf/service_conf.yaml**中配置一致, **service_conf.yaml**中相关服务的IP地址与端口应该改成本机IP地址及容器映射出来的端口。
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6. 启动服务
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```bash
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$ chmod +x ./entrypoint.sh
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$ bash ./entrypoint.sh
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```
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## 📚 技术文档
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- [FAQ](./docs/faq.md)
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