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Serverless-native LLM orchestration framework for AWS Lambda

Project description

LambdaLLM

Serverless-native LLM orchestration framework for AWS Lambda.

Built by SubstrAI — Open-source GenAI frameworks for serverless infrastructure.

PyPI version Tests License: MIT Python 3.10+ Documentation codecov npm version

The Problem

Existing LLM frameworks (LangChain, LlamaIndex) assume long-running servers. They break on Lambda:

  • Cold starts: 500MB+ dependency trees add seconds
  • Stateless: No conversation memory between invocations
  • 15-min timeout: Long agent loops crash
  • 250MB limit: LangChain alone exceeds this

The Solution

LambdaLLM is purpose-built for Lambda's constraints:

from lambdallm import handler, Prompt, Model

summarize = Prompt(
    template="Summarize in {max_words} words:\n\n{document}",
    output_schema={"summary": str, "key_points": list}
)

@handler(model=Model.CLAUDE_3_HAIKU)
def lambda_handler(event, context):
    return summarize.invoke(
        _context=context,
        document=event["body"]["text"],
        max_words=100
    )

Features

  • < 5MB package size (vs 400MB+ for LangChain)
  • Cold-start optimized — lazy imports, connection pooling
  • DynamoDB-native state — conversation memory that survives stateless execution
  • Cost-aware routing — auto-select cheapest model that meets quality threshold
  • Multi-step chains — declarative pipelines with checkpoint/resume on timeout
  • AI Agents — ReAct-style agents with tool sandboxing and timeout awareness
  • One-command deploylambdallm deploy generates all AWS infrastructure
  • Timeout handling — checkpoint/resume for long chains
  • A/B testing — route traffic between prompt versions, compare metrics
  • Full observability — X-Ray tracing, CloudWatch metrics, cost tracking built-in

Installation

Python (primary)

pip install substrai-lambdallm

With AWS Bedrock support (recommended):

pip install "substrai-lambdallm[bedrock]"

With all optional dependencies:

pip install "substrai-lambdallm[all]"

npm

npm install substrai-lambdallm

Quick Start

Python (full CLI experience)

# Install
pip install "substrai-lambdallm[bedrock]"

# Scaffold a new project (creates handler, config, tests)
lambdallm init my-project --template basic
cd my-project

# Start local development server
lambdallm dev

# Test your handler
curl -X POST http://localhost:3000 -d '{"text": "Hello world"}'

# Run tests
lambdallm test

# Deploy to AWS
lambdallm deploy --env dev

TypeScript (runtime SDK)

# Install
npm install substrai-lambdallm @aws-sdk/client-bedrock-runtime

Create your handler:

// handler.ts
import { handler, Model } from 'substrai-lambdallm';

export const lambdaHandler = handler(
  { model: Model.CLAUDE_3_HAIKU, maxRetries: 3 },
  async (event, context) => {
    const body = JSON.parse(event.body || \'{}\');
    const result = await context.invoke('Summarize: {text}', { text: body.text });
    return { statusCode: 200, body: { result, cost: context.totalCost } };
  }
);

Deploy with SAM or CDK:

sam build && sam deploy --guided

Key Differences

Capability Python TypeScript
CLI (init, dev, deploy) \u2705 Included \u274c Use SAM/CDK directly
Project scaffolding lambdallm init Manual setup
Local dev server lambdallm dev sam local start-api
Runtime SDK \u2705 Full \u2705 Full
Chains + Agents \u2705 Full \u2705 Full
Observability \u2705 Full \u2705 Full

Available Templates

lambdallm init my-app --template basic   # Simple LLM handler
lambdallm init my-app --template chat    # Multi-turn chat with memory
lambdallm init my-app --template agent   # AI agent with tools
lambdallm init my-app --template rag     # Retrieval-augmented generation

Core Concepts

Handlers

from lambdallm import handler, Model

@handler(model=Model.CLAUDE_3_HAIKU, timeout_strategy="checkpoint")
def lambda_handler(event, context):
    result = context.invoke("Summarize: {text}", text=event["body"]["text"])
    return {"statusCode": 200, "body": result}

Chains

from lambdallm import Chain, Step

pipeline = Chain(
    name="analysis",
    steps=[
        Step("extract", prompt="Extract entities from: {input}"),
        Step("classify", prompt="Classify: {extract.output}"),
        Step("summarize", prompt="Summarize: {classify.output}"),
    ],
    timeout_strategy="checkpoint",
)

Agents

from lambdallm.agents import Agent, Tool

@Tool(description="Search the knowledge base")
def search(query: str, max_results: int = 5) -> list:
    # your implementation
    pass

agent = Agent(
    name="researcher",
    system_prompt="You are a research assistant.",
    tools=[search],
    max_iterations=5,
    timeout_buffer=30,
)

CLI Commands

Command Description
lambdallm init Scaffold a new project
lambdallm dev Start local development server
lambdallm deploy Deploy to AWS (SAM/CDK)
lambdallm test Run tests
lambdallm cost Show cost summary and forecast
lambdallm status Check deployment status
lambdallm rollback Rollback to previous version
lambdallm eject Export raw SAM/CDK templates
lambdallm logs Tail CloudWatch logs
lambdallm metrics Show key metrics

Documentation

License

MIT — see LICENSE

Author

Gaurav Kumar Sinha — Founder, SubstrAI

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