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on-policy vs AgentRunKit
on-policy logo
on-policy
★ 2.0k
vs
AgentRunKit logo
AgentRunKit
★ 24

on-policy vs AgentRunKit

on-policy: This repository implements MAPPO, a multi-agent variant of PPO, widely used in cooperative multi-agent games and research. It provides robust implementations for various multi-agent environments like StarCraft II, Hanabi, and Google Research Football, along with detailed training scripts and hyperparameter guidance.; AgentRunKit: AgentRunKit is a lightweight Swift 6 framework for building LLM-powered agents with type-safe tool calling. It features zero dependencies, full Sendable support, async/await concurrency, and compatibility with both cloud and on-device models via MCP.

01

TL;DR

on-policy logoChoose on-policy if…

Research and experimentation in cooperative multi-agent reinforcement learning

AgentRunKit logoChoose AgentRunKit if…

Build AI-powered chatbots with tool integration

02

Side-by-Side Comparison

Field
on-policy logoon-policy
AgentRunKit logoAgentRunKit
Category
LLM Infra
LLM Infra
Stars
★ 2.0k
★ 24
License
MIT
MIT
Updated
1y ago
1w ago
Open Source
Yes
Yes
Website
↗ Visit
↗ Visit
GitHub
↗ GitHub
↗ GitHub
Tags
Multi-Agent Reinforcement Learning, PPO, MAPPO
agent-framework, ai-agents, anthropic
03

Features

on-policy logoon-policy
01Implementation of MAPPO (Multi-Agent PPO)
02Support for diverse multi-agent environments (e.g., StarCraft II, Hanabi)
03Ready-to-use training scripts for various scenarios
04Detailed hyperparameter guidance and updated results
05Default support for shared policy among agents
AgentRunKit logoAgentRunKit
01Agent loop with configurable iteration limits and token budgets
02Streaming with AsyncThrowingStream and @Observable SwiftUI wrapper
03Type-safe tools with compile-time JSON schema validation
04Sub-agent composition with depth control and streaming propagation
05Multimodal input: images, audio, video, PDF
04

Use Cases

on-policy logoon-policy
↳Research and experimentation in cooperative multi-agent reinforcement learning
↳Benchmarking and evaluating PPO's effectiveness in MARL scenarios
↳Training AI agents for popular multi-agent games like StarCraft II and Hanabi
AgentRunKit logoAgentRunKit
↳Build AI-powered chatbots with tool integration
↳Automate complex workflows using LLM agents
↳Create intelligent assistants for on-device or cloud inference
05

Best For

on-policy logoon-policy
TrendingReinforcement LearningMulti-Agent AI
AgentRunKit logoAgentRunKit
TrendingLLM Infra
FAQ

FAQ

What is the difference between on-policy and AgentRunKit?
Both on-policy and AgentRunKit are in the LLM Infra category. on-policy has 2.0k stars, while AgentRunKit has 24 stars.
Which is better, on-policy or AgentRunKit?
The best choice depends on your use case. Choose on-policy if Research and experimentation in cooperative multi-agent reinforcement learning, and AgentRunKit if Build AI-powered chatbots with tool integration.
Is on-policy free or open source?
Yes, on-policy is open source on GitHub (MIT).
Is AgentRunKit free or open source?
Yes, AgentRunKit is open source on GitHub (MIT).
→

Related

Alternatives to on-policy →Alternatives to AgentRunKit →on-policy details →AgentRunKit details →
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