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--- |
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title: OpenAI to Gemini Adapter |
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emoji: 🔄☁️ |
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colorFrom: blue |
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colorTo: green |
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sdk: docker |
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app_port: 7860 |
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--- |
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# OpenAI to Gemini Adapter |
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This service provides an OpenAI-compatible API that translates requests to Google's Vertex AI Gemini models, allowing you to use Gemini models with tools expecting an OpenAI interface. |
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## Features |
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- OpenAI-compatible API endpoints (`/v1/chat/completions`, `/v1/models`). |
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- Supports Google Cloud credentials via `GOOGLE_CREDENTIALS_JSON` secret (recommended for Spaces) or local file methods. |
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- Supports credential rotation when using local files. |
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- Handles streaming and non-streaming responses. |
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- Configured for easy deployment on Hugging Face Spaces using Docker (port 7860) or locally via Docker Compose (port 8050). |
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## Hugging Face Spaces Deployment (Recommended) |
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This application is ready for deployment on Hugging Face Spaces using Docker. |
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1. **Create a new Space:** Go to Hugging Face Spaces and create a new Space, choosing "Docker" as the Space SDK. |
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2. **Upload Files:** Upload the `app/` directory, `Dockerfile`, and `app/requirements.txt` to your Space repository. You can do this via the web interface or using Git. |
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3. **Configure Secrets:** In your Space settings, navigate to the **Secrets** section and add the following secrets: |
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* `API_KEY`: Your desired API key for authenticating requests to this adapter service. If not set, it defaults to `123456`. |
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* `GOOGLE_CREDENTIALS_JSON`: The **entire content** of your Google Cloud service account JSON key file. Copy and paste the JSON content directly into the secret value field. **This is the required method for providing credentials on Hugging Face.** |
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4. **Deployment:** Hugging Face will automatically build and deploy the Docker container. The application will run on port 7860 as defined in the `Dockerfile` and this README's metadata. |
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Your adapter service will be available at the URL provided by your Hugging Face Space (e.g., `https://your-user-name-your-space-name.hf.space`). |
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## Local Docker Setup (for Development/Testing) |
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### Prerequisites |
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- Docker and Docker Compose |
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- Google Cloud service account credentials with Vertex AI access |
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### Credential Setup (Local Docker) |
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1. Create a `credentials` directory in the project root: |
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```bash |
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mkdir -p credentials |
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``` |
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2. Add your service account JSON files to the `credentials` directory: |
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```bash |
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# Example with multiple credential files |
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cp /path/to/your/service-account1.json credentials/service-account1.json |
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cp /path/to/your/service-account2.json credentials/service-account2.json |
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``` |
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The service will automatically detect and rotate through all `.json` files in this directory if the `GOOGLE_CREDENTIALS_JSON` environment variable is *not* set. |
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3. Alternatively, set the `GOOGLE_APPLICATION_CREDENTIALS` environment variable *in your local environment or `docker-compose.yml`* to the *path* of a single credential file (used as a fallback if the other methods fail). |
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### Running Locally |
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Start the service using Docker Compose: |
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```bash |
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docker-compose up -d |
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``` |
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The service will be available at `http://localhost:8050` (as defined in `docker-compose.yml`). |
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## API Usage |
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The service implements OpenAI-compatible endpoints: |
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- `GET /v1/models` - List available models |
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- `POST /v1/chat/completions` - Create a chat completion |
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- `GET /health` - Health check endpoint (includes credential status) |
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All endpoints require authentication using an API key in the Authorization header. |
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### Authentication |
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The service requires an API key for authentication. |
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To authenticate, include the API key in the `Authorization` header using the `Bearer` token format: |
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``` |
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Authorization: Bearer YOUR_API_KEY |
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``` |
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Replace `YOUR_API_KEY` with the key you configured (either via the `API_KEY` secret/environment variable or the default `123456`). |
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### Example Requests |
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*(Replace `YOUR_ADAPTER_URL` with your Hugging Face Space URL or `http://localhost:8050` if running locally)* |
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#### Basic Request |
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```bash |
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curl -X POST YOUR_ADAPTER_URL/v1/chat/completions \ |
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-H "Content-Type: application/json" \ |
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-H "Authorization: Bearer YOUR_API_KEY" \ |
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-d '{ |
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"model": "gemini-1.5-pro", |
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"messages": [ |
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{"role": "system", "content": "You are a helpful assistant."}, |
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{"role": "user", "content": "Hello, how are you?"} |
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], |
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"temperature": 0.7 |
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}' |
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``` |
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#### Grounded Search Request |
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```bash |
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curl -X POST YOUR_ADAPTER_URL/v1/chat/completions \ |
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-H "Content-Type: application/json" \ |
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-H "Authorization: Bearer YOUR_API_KEY" \ |
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-d '{ |
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"model": "gemini-2.5-pro-exp-03-25-search", |
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"messages": [ |
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{"role": "system", "content": "You are a helpful assistant with access to the latest information."}, |
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{"role": "user", "content": "What are the latest developments in quantum computing?"} |
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], |
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"temperature": 0.2 |
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}' |
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``` |
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### Supported Models |
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The API supports the following Vertex AI Gemini models: |
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| Model ID | Description | |
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| ------------------------------ | ---------------------------------------------- | |
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| `gemini-2.5-pro-exp-03-25` | Gemini 2.5 Pro Experimental (March 25) | |
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| `gemini-2.5-pro-exp-03-25-search` | Gemini 2.5 Pro with Google Search grounding | |
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| `gemini-2.0-flash` | Gemini 2.0 Flash | |
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| `gemini-2.0-flash-search` | Gemini 2.0 Flash with Google Search grounding | |
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| `gemini-2.0-flash-lite` | Gemini 2.0 Flash Lite | |
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| `gemini-2.0-flash-lite-search` | Gemini 2.0 Flash Lite with Google Search grounding | |
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| `gemini-2.0-pro-exp-02-05` | Gemini 2.0 Pro Experimental (February 5) | |
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| `gemini-1.5-flash` | Gemini 1.5 Flash | |
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| `gemini-1.5-flash-8b` | Gemini 1.5 Flash 8B | |
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| `gemini-1.5-pro` | Gemini 1.5 Pro | |
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| `gemini-1.0-pro-002` | Gemini 1.0 Pro | |
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| `gemini-1.0-pro-vision-001` | Gemini 1.0 Pro Vision | |
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| `gemini-embedding-exp` | Gemini Embedding Experimental | |
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Models with the `-search` suffix enable grounding with Google Search using dynamic retrieval. |
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### Supported Parameters |
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The API supports common OpenAI-compatible parameters, mapping them to Vertex AI where possible: |
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| OpenAI Parameter | Vertex AI Parameter | Description | |
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| ------------------- | --------------------- | ------------------------------------------------- | |
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| `temperature` | `temperature` | Controls randomness (0.0 to 1.0) | |
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| `max_tokens` | `max_output_tokens` | Maximum number of tokens to generate | |
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| `top_p` | `top_p` | Nucleus sampling parameter (0.0 to 1.0) | |
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| `top_k` | `top_k` | Top-k sampling parameter | |
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| `stop` | `stop_sequences` | List of strings that stop generation when encountered | |
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| `presence_penalty` | `presence_penalty` | Penalizes repeated tokens | |
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| `frequency_penalty` | `frequency_penalty` | Penalizes frequent tokens | |
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| `seed` | `seed` | Random seed for deterministic generation | |
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| `logprobs` | `logprobs` | Number of log probabilities to return | |
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| `n` | `candidate_count` | Number of completions to generate | |
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## Credential Handling Priority |
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The application loads Google Cloud credentials in the following order: |
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1. **`GOOGLE_CREDENTIALS_JSON` Environment Variable / Secret:** Checks for the JSON *content* directly in this variable (Required for Hugging Face). |
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2. **`credentials/` Directory (Local Only):** Looks for `.json` files in the directory specified by `CREDENTIALS_DIR` (Default: `/app/credentials` inside the container). Rotates through found files. Used if `GOOGLE_CREDENTIALS_JSON` is not set. |
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3. **`GOOGLE_APPLICATION_CREDENTIALS` Environment Variable (Local Only):** Checks for a *file path* specified by this variable. Used as a fallback if the above methods fail. |
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## Environment Variables / Secrets |
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- `API_KEY`: API key for authentication (Default: `123456`). **Required as Secret on Hugging Face.** |
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- `GOOGLE_CREDENTIALS_JSON`: **(Required Secret on Hugging Face)** The full JSON content of your service account key. Takes priority over other methods. |
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- `CREDENTIALS_DIR` (Local Only): Directory containing credential files (Default: `/app/credentials` in the container). Used if `GOOGLE_CREDENTIALS_JSON` is not set. |
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- `GOOGLE_APPLICATION_CREDENTIALS` (Local Only): Path to a *specific* credential file. Used as a fallback if the above methods fail. |
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- `PORT`: Not needed for `CMD` config (uses 7860). Hugging Face provides this automatically, `docker-compose.yml` maps 8050 locally. |
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## Health Check |
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You can check the status of the service using the health endpoint: |
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```bash |
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curl YOUR_ADAPTER_URL/health -H "Authorization: Bearer YOUR_API_KEY" |
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``` |
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This returns information about the credential status: |
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```json |
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{ |
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"status": "ok", |
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"credentials": { |
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"available": 1, // Example: 1 if loaded via JSON secret, or count if loaded from files |
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"files": [], // Lists files only if using CREDENTIALS_DIR method |
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"current_index": 0 |
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} |
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} |
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``` |
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## License |
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This project is licensed under the MIT License. |