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Overcoming the Limitations of Reinforcement Learning: Live AIRIS Demo
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Join us this Tuesday, September 3rd, 2024, at 6 pm UTC for a new ‘SingularityNET’s Technical Tuesdays’ session for a LIVE Minecraft demo of the Autonomous Intelligent Reinforcement Inferred Symbolism (AIRIS) experiential learning system. During the Demo, we'll be discussing:
- How AIRIS enables causality-based artificial intelligent agents;
- How AIRIS can help to increase the generality of autonomous agents and the data efficiency of learning goal-directed behaviors;
- The strengths and limitations of Reinforcement Learning and where AIRIS can be particularly advantageous;
- Future R&D directions and potential real-world applications of AIRIS.
Resources and Background Information
- Autonomous Intelligent Reinforcement Inferred Symbolism:
- AGI-24 Conference AIRIS Presentation:
- GitHub and experiential Minecraft demo:
- Learn more about AIRIS and “Reinforcement Inferred Causality” here:
- AIRIS Project 2023 Demonstration:
- Ben Goertzel on Neoterics and Sophiaverse:
- How AIRIS enables causality-based artificial intelligent agents;
- How AIRIS can help to increase the generality of autonomous agents and the data efficiency of learning goal-directed behaviors;
- The strengths and limitations of Reinforcement Learning and where AIRIS can be particularly advantageous;
- Future R&D directions and potential real-world applications of AIRIS.
Resources and Background Information
- Autonomous Intelligent Reinforcement Inferred Symbolism:
- AGI-24 Conference AIRIS Presentation:
- GitHub and experiential Minecraft demo:
- Learn more about AIRIS and “Reinforcement Inferred Causality” here:
- AIRIS Project 2023 Demonstration:
- Ben Goertzel on Neoterics and Sophiaverse:
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