A command-line tool and SDK for deploying, managing, and interacting with AI agents
Project description
Secured, reliable AI agent deployment at scale
Write agent once, use everywhere
What is RunAgent?
RunAgent is an agentic ecosystem that enables developers to build AI agents once in Python using any python agentic frameworks like LangGraph, CrewAI, Letta, LlamaIndex, then access them natively from any programming language. The platform features stateful self-learning capabilities with RunAgent Memory (coming soon), allowing agents to retain context and improve it's action memory over time.
RunAgent has multi-language SDK support for seamless integration across TypeScript, JavaScript, Go, and other languages, eliminating the need to rewrite agents for different tech stacks. RunAgent Cloud provides automated deployment with serverless auto-scaling, comprehensive agent security, and real-time monitoring capabilities.
Quick Start
Installation
pip install runagent
Initialize Your First Agent
# The basic
runagent init my-agent # Basic template
# Also you can choose from various frameworks
runagent init my-agent --langgraph # LangGraph template
runagent init my-agent --crewai # CrewAI template
runagent init my-agent --letta # Letta template
Agent Configuration
Every RunAgent project requires a runagent.config.json file that defines your agent's structure and capabilities.
This configuration file specifies basic metadata (name, framework, version), defines entrypoints for either Python functions or external webhooks, and sets environment variables like API keys. The entrypoints array is the core component, allowing you to expose functions from any Python framework (LangGraph, CrewAI, OpenAI) or integrate external services (N8N, Zapier) through a unified interface accessible from any programming language.
Example Configuration
{
"agent_name": "LangGraph Problem Solver",
"description": "Multi-step problem analysis and solution validation agent",
"framework": "langgraph",
"version": "1.0.0",
"agent_architecture": {
"entrypoints": [
{
"file": "agent.py",
"module": "solve_problem",
"tag": "solve_problem"
},
{
"file": "agent.py",
"module": "solve_problem_stream",
"tag": "solve_problem_stream"
}
]
},
"env_vars": {
"OPENAI_API_KEY": "your-api-key"
}
}
Local Deployment
Deploy and test your agents locally with full debugging capabilities.
Deploy Agent Locally
cd my-agent
runagent serve .
This starts a local FastAPI server with:
- Auto-allocated ports to avoid conflicts
- Real-time debugging and logging
- WebSocket support for streaming
- Built-in API documentation at
/docs
LangGraph Problem Solver Agent (An Example)
# agent.py
from langgraph.graph import StateGraph
from typing import TypedDict, List
class ProblemState(TypedDict):
query: str
num_solutions: int
constraints: List[dict]
solutions: List[str]
validated: bool
def analyze_problem(state):
# Problem analysis logic
return {"solutions": [...]}
def validate_solutions(state):
# Validation logic
return {"validated": True}
# Build the graph
workflow = StateGraph(ProblemState)
workflow.add_node("analyze", analyze_problem)
workflow.add_node("validate", validate_solutions)
workflow.add_edge("analyze", "validate")
workflow.set_entry_point("analyze")
app = workflow.compile()
def solve_problem(query, num_solutions, constraints):
result = app.invoke({
"query": query,
"num_solutions": num_solutions,
"constraints": constraints
})
return result
async def solve_problem_stream(query, num_solutions, constraints):
async for event in app.astream({
"query": query,
"num_solutions": num_solutions,
"constraints": constraints
}):
yield event
🌐 Access from any language:
RunAgent offers multi-language SDKs : Rust, TypeScript, JavaScript, Go, and beyond—so you can integrate seamlessly without ever rewriting your agents for different stacks.
| Python SDK | JavaScript SDK | Rust SDK | Go SDK |
from runagent import RunAgentClient
client = RunAgentClient(
agent_id="lg-solver-123",
entrypoint_tag="solve_problem",
local=True
)
result = client.run(
query="My laptop is slow",
num_solutions=3,
constraints=[{
"type": "budget",
"value": 100
}]
)
print(result)
# Streaming
for chunk in client.run(
query="Fix my phone",
num_solutions=4
):
print(chunk)
|
import { RunAgentClient } from 'runagent';
const client = new RunAgentClient({
agentId: "lg-solver-123",
entrypointTag: "solve_problem",
local: true
});
await client.initialize();
const result = await client.run({
query: "My laptop is slow",
num_solutions: 3,
constraints: [{
type: "budget",
value: 100
}]
});
console.log(result);
// Streaming
for await (const chunk of client.run({
query: "Fix my phone",
num_solutions: 4
})) {
process.stdout.write(chunk);
}
|
use runagent::client::RunAgentClient;
use serde_json::json;
use futures::StreamExt;
#[tokio::main]
async fn main() -> Result<(), Box<dyn std::error::Error>> {
let client = RunAgentClient::new(
"lg-solver-123",
"solve_problem",
true
).await?;
let result = client.run(&[
("query", json!("My laptop is slow")),
("num_solutions", json!(3)),
("constraints", json!([{
"type": "budget",
"value": 100
}]))
]).await?;
println!("Result: {}", result);
// Streaming
let mut stream = client.run_stream(&[
("query", json!("Fix my phone")),
("num_solutions", json!(4))
]).await?;
while let Some(chunk) = stream.next().await {
print!("{}", chunk?);
}
Ok(())
}
|
package main
import (
"context"
"fmt"
"github.com/runagent-dev/runagent-go/pkg/client"
)
func main() {
client, _ := client.New(
"lg-solver-123",
"solve_problem",
true
)
defer client.Close()
result, _ := client.Run(
context.Background(),
map[string]interface{}{
"query": "My laptop is slow",
"num_solutions": 3,
"constraints": []map[string]interface{}{
{"type": "budget", "value": 100},
},
}
)
fmt.Printf("Result: %v\n", result)
// Streaming
stream, _ := client.RunStream(
context.Background(),
map[string]interface{}{
"query": "Fix my phone",
"num_solutions": 4,
}
)
defer stream.Close()
for {
chunk, hasMore, _ := stream.Next(context.Background())
if !hasMore { break }
fmt.Print(chunk)
}
}
|
Action Memory System (Coming Soon)
RunAgent is introducing Action Memory - a revolutionary approach to agent reliability that focuses on how to remember rather than what to remember.
How It Will Work
- Action-Centric: Instead of storing raw conversation data, it captures decision patterns and successful action sequences
- Cross-Language: Memory persists across all SDK languages seamlessly
- Reliability Focus: Learns from successful outcomes to improve future decisions
- Ecosystem Integration: Works with any framework - LangGraph, CrewAI, Letta, and more
This will ensure your agents become more reliable over time, regardless of which programming language or framework you use to interact with them.
Remote Deployment (Coming very soon)
Deploy your agents with enterprise-grade infrastructure and experience the fastest agent deployment.
⚡Fastest agent deployment
From zero to production in the time it takes to draw a breath, making RunAgent one of the fastest agent deployment platforms available on planet earth 🌍 .
Security-First Architecture
Every agent runs in its own isolated sandbox environment:
- Complete process isolation
- Network segmentation
- Resource limits and monitoring
- Zero data leakage between agents
✨ The +++999 Aura of Agent Deployment
Our remote deployment will provide:
- Auto-scaling based on demand
- Global edge distribution
- Built-in monitoring and analytics
- Production-grade security and compliance
Documentation
- Getting Started - Deploy your first agent in 5 minutes
- CLI Reference - Complete command-line interface guide
- SDK Documentation - Multi-language SDK guides
- Framework Guides - Framework-specific tutorials
- API Reference - REST API documentation
Community & Support
Ready to build universal AI agents?
🌟 Star us on GitHub • 💬 Join Discord • 📚 Read the Docs
Made with ❤️ by the RunAgent Team
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