Metadata-Version: 2.2
Name: mesh-sdk
Version: 1.4.6
Summary: Official Python SDK for the Mesh API - Secure key management and AI model access
Home-page: https://github.com/meshsdk/mesh-python
Author: Mesh Team
Author-email: support@meshsdk.io
Project-URL: Documentation, https://docs.meshsdk.io
Project-URL: Source, https://github.com/meshsdk/mesh-python
Project-URL: Issues, https://github.com/meshsdk/mesh-python/issues
Keywords: mesh,api,sdk,security,key management,zero knowledge proofs,ai,openai,anthropic
Classifier: Development Status :: 5 - Production/Stable
Classifier: Intended Audience :: Developers
Classifier: License :: OSI Approved :: MIT License
Classifier: Operating System :: OS Independent
Classifier: Programming Language :: Python :: 3
Classifier: Programming Language :: Python :: 3.7
Classifier: Programming Language :: Python :: 3.8
Classifier: Programming Language :: Python :: 3.9
Classifier: Programming Language :: Python :: 3.10
Classifier: Programming Language :: Python :: 3.11
Classifier: Topic :: Security
Classifier: Topic :: Software Development :: Libraries :: Python Modules
Requires-Python: >=3.7
Description-Content-Type: text/markdown
License-File: LICENSE
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# Mesh SDK for Python

A powerful Python SDK for interacting with the Mesh API, featuring key management, Zero-Knowledge Proofs, and AI chat capabilities.

## Installation

```bash
pip install mesh-sdk
```

For development:

```bash
git clone https://github.com/yourusername/mesh.git
cd mesh/sdk/python
pip install -e .
```

## Features

- **Authentication**: Secure authentication with Auth0, including auto-refresh capabilities
- **Key Management**: Store and retrieve keys with optional Zero-Knowledge Proof verification
- **Chat Integration**: Easy-to-use interface for OpenAI and Anthropic models
- **Configurability**: Extensive configuration options via environment variables

## Quick Start

```python
from mesh import MeshClient

# Initialize the client
client = MeshClient()

# Chat with an AI model
response = client.chat("Hello, world!")
print(response['content'])

# Store a key (user_id is automatically extracted from your token)
client.store_key(key_name="api_key", key_value="secret_value")

# Get a key (user_id is automatically extracted from your token)
key_result = client.get_key(key_name="api_key")
```

## Authentication

The SDK uses a secure backend-managed authentication flow:

1. **Browser-based authentication (Recommended)** - Authentication via Auth0 will be triggered automatically when needed
2. **Environment variables** - Set `MESH_AUTH_TOKEN` in your environment for testing/CI scenarios

```python
# Create a client - authentication will happen automatically when needed
client = MeshClient()

# Make a request - triggers authentication if not already authenticated
response = client.chat("This will trigger auth if needed")
```

> **Note**: Direct token authentication via `auth_token` parameter is deprecated and will be removed in a future version. Use the backend-managed flow instead.

For detailed information on the authentication system, see [Authentication Documentation](./docs/authentication.md).

## Key Management

The SDK now automatically extracts your user ID from your authentication token, making key management simpler:

```python
# Store a key (user_id is extracted from your token)
client.store_key(key_name="openai_key", key_value="sk-abcdef123456")

# Get a key (user_id is extracted from your token)
key_result = client.get_key(key_name="openai_key")

# You can still provide a user_id manually if needed
client.store_key(user_id="custom-user-id", key_name="api_key", key_value="secret_value")
```

## Configuration

The SDK offers extensive configuration options that can be set through environment variables or directly in code.

### Environment Variables

| Variable | Description | Default Value |
|----------|-------------|---------------|
| `AUTH0_DOMAIN` | Auth0 domain | dev-hzpwy8oqs2ojss6r.us.auth0.com |
| `AUTH0_CLIENT_ID` | Auth0 client ID | Ky6gtf5PPUs1IpIFdm91ttQs4Oxpj0Nq |
| `AUTH0_CLIENT_SECRET` | Auth0 client secret | (Secure value) |
| `AUTH0_AUDIENCE` | Auth0 audience | https://mesh-abh5.onrender.com |
| `AUTH0_CALLBACK_PORT` | Port for Auth0 callback | 8000 |
| `MESH_API_URL` | Mesh API server URL | https://mesh-abh5.onrender.com |
| `DEBUG` | Enable debug logging | false |
| `AUTO_REFRESH` | Enable automatic token refresh | true |
| `DEFAULT_OPENAI_MODEL` | Default OpenAI model | gpt-4 |
| `DEFAULT_ANTHROPIC_MODEL` | Default Anthropic model | claude-3-opus-20240229 |
| `DEFAULT_PROVIDER` | Default AI provider | openai |

### Configuration in Code

You can also configure the SDK directly in code:

```python
from mesh import MeshClient

# Override defaults in the constructor
client = MeshClient(
    server_url="https://custom-server.example.com",
    client_id="your-client-id",
    client_secret="your-client-secret",
    audience="your-audience",
    auth0_domain="your-domain.auth0.com",
    original_response=True  # Return raw API responses
)
```

### Auto-Refresh Client

For long-running applications, use the `AutoRefreshMeshClient` that can automatically refresh authentication tokens:

```python
from mesh.auto_refresh_client import AutoRefreshMeshClient

# Create an auto-refresh client
client = AutoRefreshMeshClient(
    auto_refresh=True,  # Enable auto-refresh (default if not specified)
    refresh_margin=300  # Refresh 5 minutes before expiry
)
```

## Advanced Usage

### Using Different Models

You can specify different AI models:

```python
# OpenAI models
response = client.chat("Tell me about quantum computing", model="gpt-4")

# Anthropic models
response = client.chat("Tell me about biology", 
                      model="claude-3-opus-20240229",
                      provider="anthropic")
```

### Zero-Knowledge Proofs

Store and verify keys with zero-knowledge proofs:

```python
# Store with ZKP
client.store_key_zkp("user123", "api_key", "secret_value")

# Verify with ZKP
result = client.verify_key("user123", "api_key", "secret_value")
```

## Error Handling

The SDK provides detailed error information:

```python
response = client.chat("Hello")
if not response.get("success", True):
    print(f"Error: {response.get('error')}")
    print(f"Details: {response.get('details')}")
    
    # For troubleshooting guidance
    if "troubleshooting" in response:
        print("Troubleshooting steps:")
        for step in response["troubleshooting"]:
            print(f"- {step}")
```

## Debugging

Enable debug mode for verbose logging:

```python
# Via environment variable
os.environ["DEBUG"] = "true"

# Or in code
client = MeshClient(debug=True)
```

## Contributing

Contributions are welcome! Please feel free to submit a Pull Request.

## License

This project is licensed under the MIT License - see the LICENSE file for details.

## Troubleshooting

### Connection Issues
- Verify that the server URL is correct. By default, the SDK uses `https://mesh-abh5.onrender.com`.
- Check that the server is running and accessible from your network.
- If you're using a custom server, ensure it's properly configured and running.

### Endpoint Availability
- The SDK tries multiple endpoints to ensure compatibility with different server configurations.
- If you're getting "All endpoints failed" errors, check that the server has the required endpoints enabled.
- The SDK supports both new API endpoints (under `/api/v1/`) and legacy endpoints (under `/v1/mesh/`).

### Authentication Errors
- Ensure you have a valid authentication token. Run `mesh-auth` to authenticate manually.
- Check that your Auth0 credentials are correct if using browser-based authentication.
- Verify that your token hasn't expired. Tokens typically expire after a certain period.

### User Registration
- Chat functionality requires the user to be registered in the database.
- The SDK automatically attempts to register the user by calling the profile endpoint before the first chat request.
- If you're getting "User not found" errors, try calling the auth profile endpoint directly first.

### Message Format
- When using the chat functionality, ensure your messages are properly formatted.
- The SDK supports both "message" and "prompt" formats for compatibility with different server configurations.
- If you're getting format errors, check the server's expected message format.

### Debug Logging
- Enable debug logging by setting `debug=True` when initializing the client.
- This will provide detailed information about the requests and responses.
- Debug logs can help identify the root cause of issues.

## Advanced Configuration

```python
# Environment variables for configuration
# MESH_API_URL - Base server URL
# OPENAI_API_KEY - OpenAI API key
# ANTHROPIC_API_KEY - Anthropic API key
# DEFAULT_PROVIDER - Default AI provider
# DEFAULT_MODEL - Default model to use

# Set default model for a provider
client.set_default_model("openai", "gpt-4")
client.set_default_model("anthropic", "claude-3-7-sonnet-20250219")

# Reset to original defaults
client.reset_default_models()
```

## API Reference

For complete API documentation, please refer to the docstrings in the code.

## Chat Functionality

The SDK provides a simple interface to chat with AI models:

```python
# Chat with default model
response = client.chat("Hello, world!")

# Chat with specific model
response = client.chat("Hello, world!", model="gpt-4o", provider="openai")

# Enable thinking mode (Claude 3.7 Sonnet only)
response = client.chat("Solve this complex problem...", model="claude-3-7-sonnet-20250219", thinking=True)

# Get raw API response
response = client.chat("Hello, world!", original_response=True)
```

### Automatic User Registration

The SDK automatically ensures that the user is registered in the database before sending chat requests. This is necessary because the chat endpoints require the user to exist in the database. The registration process happens transparently when you make your first chat request:

```python
# The first chat request will automatically register the user if needed
response = client.chat("Hello, world!")
```

If the user registration fails, the SDK will return an error with troubleshooting steps:

```python
{
    "success": False,
    "error": "Failed to register user. Chat requires user registration.",
    "troubleshooting": [
        "Try calling the auth profile endpoint directly first",
        "Verify your authentication token is valid",
        "Check that the server URL is correct"
    ]
}
```

### Helper Methods

The SDK also provides helper methods for common chat scenarios:

```python
# Chat with GPT-4o
response = client.chat_with_gpt4o("Hello, world!")

# Chat with Claude
response = client.chat_with_claude("Hello, world!")

# Chat with the best model for a provider
response = client.chat_with_best_model("Hello, world!", provider="openai")

# Chat with the fastest model for a provider
response = client.chat_with_fastest_model("Hello, world!", provider="anthropic")

# Chat with the cheapest model for a provider
response = client.chat_with_cheapest_model("Hello, world!")
```

### Using Claude Models

The Mesh SDK supports Anthropic's Claude models and provides several ways to use them:

```python
from mesh import MeshClient

client = MeshClient()

# Method 1: Use the built-in helper method (recommended)
response = client.chat_with_claude("Write a haiku about programming")

# Specify Claude version
response = client.chat_with_claude("Write a haiku about programming", version="3.7")  # Use Claude 3.7
response = client.chat_with_claude("Write a haiku about programming", version="3")    # Use Claude 3 Opus

# Method 2: Specify the provider and model explicitly
response = client.chat(
    message="Write a haiku about programming",
    model="claude-3-7-sonnet-20250219",
    provider="anthropic"
)

# Method 3: Use a model alias (which maps to a specific version)
response = client.chat(
    message="Write a haiku about programming",
    model="claude-37"  # Aliased to claude-3-7-sonnet-20250219
)
```

#### Claude Model Aliases

The SDK provides several aliases for Claude models to make them easier to use:

| Alias           | Maps to                     | Description              |
|-----------------|----------------------------|--------------------------|
| `claude`        | claude-3-5-sonnet-20241022 | Latest stable Claude     |
| `claude-37`     | claude-3-7-sonnet-20250219 | Claude 3.7 Sonnet        |
| `claude-35`     | claude-3-5-sonnet-20241022 | Claude 3.5 Sonnet        |
| `claude-35-haiku` | claude-3-5-haiku-20241022 | Claude 3.5 Haiku        |
| `claude-3`      | claude-3-opus-20240229    | Claude 3 Opus            |
| `claude-opus`   | claude-3-opus-20240229    | Claude 3 Opus            |
| `claude-sonnet` | claude-3-sonnet-20240229  | Claude 3 Sonnet          |
| `claude-haiku`  | claude-3-haiku-20240307   | Claude 3 Haiku           |

> **Note:** When using the `claude` alias directly, it's mapped to a specific version of Claude (currently Claude 3.5 Sonnet) for stability. This may not be the absolute latest Claude model. For the most reliable way to use specific Claude versions:
> - Use `chat_with_claude(message, version="3.7")` to explicitly select the version
> - Or specify the full model ID with `model="claude-3-7-sonnet-20250219"` 
