HAC: Learning Multi-Level Hierarchies with Hindsight
Last Updated on July 24, 2023 by Editorial Team
Author(s): Sherwin Chen
Originally published on Towards AI.
Hindsight experience replay for multi-level hierarchies

the 4-level HAC agent on the inverted pendulum
We discuss a novel Hierarchical Reinforcement Learning(HRL) framework that can efficiently learn multiple levels of policies in parallel. Experiments shows, this framework, proposed by Andrew Levy et al. at ICLR 2019, can significantly accelerate learning in sparse reward problems, specifically those whose objective is to reach some goal state. Noticeably, this is the first framework that succeeds in learning 3-level hierarchies in parallel in tasks with continuous state and action space. Some experiments done by the authors even demonstrate its capability to harness 4-level hierarchies. This video shows its competence in 2- and… Read the full blog for free on Medium.
Join thousands of data leaders on the AI newsletter. Join over 80,000 subscribers and keep up to date with the latest developments in AI. From research to projects and ideas. If you are building an AI startup, an AI-related product, or a service, we invite you to consider becoming a sponsor.
Published via Towards AI
Towards AI Academy Resources:
We build Enterprise AI. We teach what we learn. 15 AI Experts. 5 practical AI courses. 100k students
Free: 6-day Agentic AI Engineering Email Guide
Get your free Agents Cheatsheet here. Our proven framework for choosing the right AI architecture.
3 years of hands-on work with real clients into 6 pages.
Take our 90+ lesson From Beginner to Advanced LLM Developer Certification: From choosing a project to deploying a working product this is the most comprehensive and practical LLM course out there!
Discover Your Dream AI Career at Towards AI JobsOur jobs board is tailored specifically to AI, Machine Learning and Data Science Jobs and Skills. Explore over 100,000 live AI jobs today with Towards AI Jobs!
Note: Article content contains the views of the contributing authors and not Towards AI.