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hevy-mcp vs on-policy
hevy-mcp logo
hevy-mcp
★ 251
vs
on-policy logo
on-policy
★ 2.0k

hevy-mcp vs on-policy

hevy-mcp: Hevy-mcp is a Model Context Protocol (MCP) server that connects AI assistants to the Hevy fitness tracking app's API. It allows AI to manage workout data, routines, exercise templates, and webhook subscriptions, requiring a Hevy PRO subscription for API access.; 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.

01

TL;DR

hevy-mcp logoChoose hevy-mcp if…

Integrate AI assistants with Hevy fitness data to provide personalized workout insights.

on-policy logoChoose on-policy if…

Research and experimentation in cooperative multi-agent reinforcement learning

02

Side-by-Side Comparison

Field
hevy-mcp logohevy-mcp
on-policy logoon-policy
Category
LLM Infra
LLM Infra
Stars
★ 251
★ 2.0k
License
MIT
MIT
Updated
1w ago
1y ago
Open Source
Yes
Yes
Website
↗ Visit
↗ Visit
GitHub
↗ GitHub
↗ GitHub
Tags
Model Context Protocol, Hevy API, Fitness Tracking
Multi-Agent Reinforcement Learning, PPO, MAPPO
03

Features

hevy-mcp logohevy-mcp
01Workout Management: Fetch, create, and update workouts.
02Routine Management: Access and manage workout routines.
03Exercise Templates: Browse available exercise templates.
04Webhook Subscriptions: Create, view, and delete webhook subscriptions for workout events.
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
04

Use Cases

hevy-mcp logohevy-mcp
↳Integrate AI assistants with Hevy fitness data to provide personalized workout insights.
↳Develop custom applications or scripts that interact with the Hevy API through a standardized MCP interface.
↳Automate workout and routine management tasks using AI-driven commands.
↳Enable AI clients like Cursor or Claude Desktop to access and manipulate user fitness data in real-time.
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
05

Best For

hevy-mcp logohevy-mcp
TrendingMemory & ContextObservability
on-policy logoon-policy
TrendingReinforcement LearningMulti-Agent AI
FAQ

FAQ

What is the difference between hevy-mcp and on-policy?
Both hevy-mcp and on-policy are in the LLM Infra category. hevy-mcp has 251 stars, while on-policy has 2.0k stars.
Which is better, hevy-mcp or on-policy?
The best choice depends on your use case. Choose hevy-mcp if Integrate AI assistants with Hevy fitness data to provide personalized workout insights., and on-policy if Research and experimentation in cooperative multi-agent reinforcement learning.
Is hevy-mcp free or open source?
Yes, hevy-mcp is open source on GitHub (MIT).
Is on-policy free or open source?
Yes, on-policy is open source on GitHub (MIT).
→

Related

Alternatives to hevy-mcp →Alternatives to on-policy →hevy-mcp details →on-policy details →
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