Skip to main content

LaunchDarkly SDK for AI

Project description

LaunchDarkly Server-Side AI SDK for Python

This package contains the LaunchDarkly Server-Side AI SDK for Python (launchdarkly-server-sdk-ai).

⛔️⛔️⛔️⛔️

[!CAUTION] This library is a alpha version and should not be considered ready for production use while this message is visible.

☝️☝️☝️☝️☝️☝️

LaunchDarkly overview

LaunchDarkly is a feature management platform that serves over 100 billion feature flags daily to help teams build better software, faster. Get started using LaunchDarkly today!

Twitter Follow

Quick Setup

This assumes that you have already installed the LaunchDarkly Python (server-side) SDK.

  1. Install this package with pip:
pip install launchdarkly-server-sdk-ai
  1. Create an AI SDK instance:
from ldclient import LDClient, Config, Context
from ldai import LDAIClient

# The ld_client instance should be created based on the instructions in the relevant SDK.
ld_client = LDClient(Config("your-sdk-key"))
ai_client = LDAIClient(ld_client)

Setting Default AI Configurations

When retrieving AI configurations, you need to provide default values that will be used if the configuration is not available from LaunchDarkly:

Fully Configured Default

from ldai import AICompletionConfigDefault, ModelConfig, LDMessage

default_config = AICompletionConfigDefault(
    enabled=True,
    model=ModelConfig(
        name='gpt-4',
        parameters={'temperature': 0.7, 'maxTokens': 1000}
    ),
    messages=[
        LDMessage(role='system', content='You are a helpful assistant.')
    ]
)

Disabled Default

from ldai import AICompletionConfigDefault

default_config = AICompletionConfigDefault(
    enabled=False
)

Retrieving AI Configurations

The completion_config method retrieves AI configurations from LaunchDarkly with support for dynamic variables and fallback values:

from ldclient import Context
from ldai import LDAIClient, AICompletionConfigDefault, ModelConfig

context = Context.create("user-123")
ai_config = ai_client.completion_config(
    ai_config_key,
    context,
    default_config,
    variables={'myVariable': 'My User Defined Variable'}  # Variables for template interpolation
)

# Ensure configuration is enabled
if ai_config.enabled:
    messages = ai_config.messages
    model = ai_config.model
    tracker = ai_config.tracker
    # Use with your AI provider

Chat for Conversational AI

Chat provides a high-level interface for conversational AI with automatic conversation management and metrics tracking:

  • Automatically configures models based on AI configuration
  • Maintains conversation history across multiple interactions
  • Automatically tracks token usage, latency, and success rates
  • Works with any supported AI provider (see AI Providers for available packages)

Using Chat

import asyncio
from ldclient import Context
from ldai import LDAIClient, AICompletionConfigDefault, ModelConfig, LDMessage

# Use the same default_config from the retrieval section above
async def main():
    context = Context.create("user-123")
    chat = await ai_client.create_chat(
        'customer-support-chat',
        context,
        default_config,
        variables={'customerName': 'John'}
    )
    
    if chat:
        # Simple conversation flow - metrics are automatically tracked by invoke()
        response1 = await chat.invoke('I need help with my order')
        print(response1.message.content)
        
        response2 = await chat.invoke("What's the status?")
        print(response2.message.content)
        
        # Access conversation history
        messages = chat.get_messages()
        print(f'Conversation has {len(messages)} messages')

asyncio.run(main())

Advanced Usage with Providers

For more control, you can use the configuration directly with AI providers. We recommend using LaunchDarkly AI Provider packages when available:

Using AI Provider Packages

import asyncio
from ldai import LDAIClient, AICompletionConfigDefault, ModelConfig
from ldai.providers.types import LDAIMetrics, TokenUsage

from ldai_langchain import LangChainProvider

async def main():
    ai_config = ai_client.completion_config(ai_config_key, context, default_value)
    
    # Create LangChain model from configuration
    llm = await LangChainProvider.create_langchain_model(ai_config)
    
    # Use with tracking
    response = await ai_config.tracker.track_metrics_of(
        lambda: llm.invoke(messages),
        lambda result: LangChainProvider.get_ai_metrics_from_response(result)
    )
    
    print('AI Response:', response.content)

asyncio.run(main())

Using Custom Providers

import asyncio
from ldai import LDAIClient, AICompletionConfigDefault, ModelConfig
from ldai.providers.types import LDAIMetrics, TokenUsage

async def main():
    ai_config = ai_client.completion_config(ai_config_key, context, default_value)
    
    # Define custom metrics mapping for your provider
    def map_custom_provider_metrics(response):
        return LDAIMetrics(
            success=True,
            usage=TokenUsage(
                total=response.usage.get('total_tokens', 0) if response.usage else 0,
                input=response.usage.get('prompt_tokens', 0) if response.usage else 0,
                output=response.usage.get('completion_tokens', 0) if response.usage else 0,
            )
        )
    
    # Use with custom provider and tracking
    async def call_custom_provider():
        return await custom_provider.generate(
            messages=ai_config.messages or [],
            model=ai_config.model.name if ai_config.model else 'custom-model',
            temperature=ai_config.model.get_parameter('temperature') if ai_config.model else 0.5,
        )
    
    result = await ai_config.tracker.track_metrics_of(
        call_custom_provider,
        map_custom_provider_metrics
    )
    
    print('AI Response:', result.content)

asyncio.run(main())

Documentation

For full documentation, please refer to the LaunchDarkly AI SDK documentation.

License

Apache-2.0

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

launchdarkly_server_sdk_ai-0.14.0.tar.gz (22.0 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

launchdarkly_server_sdk_ai-0.14.0-py3-none-any.whl (25.2 kB view details)

Uploaded Python 3

File details

Details for the file launchdarkly_server_sdk_ai-0.14.0.tar.gz.

File metadata

File hashes

Hashes for launchdarkly_server_sdk_ai-0.14.0.tar.gz
Algorithm Hash digest
SHA256 8213f8dc38a77532b16deeec2cf7a98e47e31d54d323fb0bef4a655cdb19c804
MD5 ee92b09cf5a1f7c6a8283a7aa048428c
BLAKE2b-256 90c22edfdd8a4e3265f255895d09f7fccebb27568965d7965d2b01c82eac1866

See more details on using hashes here.

File details

Details for the file launchdarkly_server_sdk_ai-0.14.0-py3-none-any.whl.

File metadata

File hashes

Hashes for launchdarkly_server_sdk_ai-0.14.0-py3-none-any.whl
Algorithm Hash digest
SHA256 c4ef1c37f19b2738340f71fa9f03f0ed6f7e3a78580d0417cac03059b0f3e3a6
MD5 d5bf45c400f74420d0cbc25d80b82030
BLAKE2b-256 2511cea76b77d1932d395a0dccd58c5ec87ebd4308bc450222e8ae1225ca2e5c

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page