Platform

  • Search
  • Seminars
  • Conferences
  • Jobs

Resources

  • Submit Content
  • About Us

© 2025 World Wide

Open knowledge for all • Started with World Wide Neuro • A 501(c)(3) Non-Profit Organization

Analytics consent required

World Wide relies on analytics signals to operate securely and keep research services available. Accept to continue, or leave the site.

Review the Privacy Policy for details about analytics processing.

World Wide
SeminarsConferencesWorkshopsCoursesJobsMapsFeedLibrary
← Back

Playing Starcraft Saving World

Back to SeminarsBack
Seminar✓ Recording AvailableMachine Learning

Playing StarCraft and saving the world using multi-agent reinforcement learning!

InstaDeep
Schedule
Friday, October 29, 2021

Showing your local timezone

Schedule

Friday, October 29, 2021

4:00 PM Europe/Berlin

Watch recording
Host: IndabaX Roadshow

Seminar location

Seminar location

Not provided

No geocoded details are available for this content yet.

Watch the seminar

Your browser does not support the video tag.

Recording provided by the organiser.

Event Information

Format

Recorded Seminar

Recording

Available

Host

IndabaX Roadshow

Duration

120.00 minutes

Seminar location

Seminar location

Not provided

No geocoded details are available for this content yet.

World Wide map

Abstract

This is my C-14 Impaler gauss rifle! There are many like it, but this one is mine!" - A terran marine If you have never heard of a terran marine before, then you have probably missed out on playing the very engaging and entertaining strategy computer game, StarCraft. However, don’t despair, because what we have in store might be even more exciting! In this interactive session, we will take you through, step-by-step, on how to train a team of terran marines to defeat a team of marines controlled by the built-in game AI in StarCraft II. How will we achieve this? Using multi-agent reinforcement learning (MARL). MARL is a useful framework for building distributed intelligent systems. In MARL, multiple agents are trained to act as individual decision-makers of some larger system, while learning to work as a team. We will show you how to use Mava (https://github.com/instadeepai/Mava), a newly released research framework for MARL to build a multi-agent learning system for StarCraft II. We will provide the necessary guidance, tools and background to understand the key concepts behind MARL, how to use Mava building blocks to build systems and how to train a system from scratch. We will conclude the session by briefly sharing various exciting real-world application areas for MARL at InstaDeep, such as large-scale autonomous train navigation and circuit board routing. These are problems that become exponentially more difficult to solve as they scale. Finally, we will argue that many of humanity’s most important practical problems are reminiscent of the ones just described. These include, for example, the need for sustainable management of distributed resources under the pressures of climate change, or efficient inventory control and supply routing in critical distribution networks, or robotic teams for rescue missions and exploration. We believe MARL has enormous potential to be applied in these areas and we hope to inspire you to get excited and interested in MARL and perhaps one day contribute to the field!

Topics

StarCraft IIartificial intelligenceautonomous navigationdecision-makersdistributed intelligent systemsmavamulti-agent reinforcement learningresource managementterran marines

About the Speaker

InstaDeep

Contact & Resources

Personal Website

www.instadeep.com

Related Seminars

Seminar42% match - Relevant

Rethinking Attention: Dynamic Prioritization

neuro

Decades of research on understanding the mechanisms of attentional selection have focused on identifying the units (representations) on which attention operates in order to guide prioritized sensory p

Jan 6, 2025
George Washington University
Seminar42% match - Relevant

The Cognitive Roots of the Problem of Free Will

neuro

Jan 7, 2025
Bielefeld & Amsterdam
Seminar42% match - Relevant

Memory Colloquium Lecture

neuro

Jan 8, 2025
Keio University, Tokyo
World Wide calendar

World Wide highlights

December 2025 • Syncing the latest schedule.

View full calendar
Awaiting featured picks
Month at a glance

Upcoming highlights