InstaDeep Reinforcement Learning Accelerating an AI-First World – Intel on AI – Episode 33
In this Intel on AI podcast episode: Enterprises today are attempting to use Artificial Intelligence (AI) to tackle more and more complex challenges. Yet, many of the AI applications today are unable to cope with optimization and automation challenges in dynamic and complex environments like mobility, logistics, manufacturing and energy. Karim Beguir, Co-Founder & CEO at InstaDeep, joins the Intel on AI podcast to discuss how InstaDeep is helping their customers solve complex decision-making problems that would traditionally have been solved with existing algorithms but that can much better be served with AI and Machine Learning (ML). Some of the use cases that InstaDeep has tackled include working with large car companies to solve issues around ride-sharing and vehicle routing. Another example is how the company has helped customers in supply chain to optimize operations like container loading and bin packing. Karim explains how InstaDeep utilizes reinforcement learning which allows the algorithm to learn from itself and can model, simulate, and solve a problem without needing to have data from a customer in the first place. He talks about how collaborating with the Intel AI Builders program has enabled InstaDeep to develop solutions that provide better efficiency and savings to their customers. Karim also shares his vision for the future of an AI-first world and how InstaDeep is helping startups and companies around the world develop and utilize AI to improve their organizations and communities.
To learn more, visit:
instadeep.com
Visit Intel AI Builders at:
builders.intel.com/ai
Create your
podcast in
minutes
It is Free