News
        
        Google's DeepMind and Unity Tech Partner for 'Real-World' AI
        
        
        
			- By Richard Seeley
 - 10/05/2018
 
		
        
 
Providing a more real-world testing environment for  developing and testing machine learning (ML) applications is the goal of a  recently announced partnership between Unity Technologies and DeepMind,  Google's London-based artificial intelligence (AI) research company.
"The partnership will enable DeepMind to develop virtual  environments and tasks in support of their fundamental AI research program," according  to a recent blog written by Danny Lange, vice president of AI and machine learning at San Francisco-based Unity  Technologies.
DeepMind proclaims that it is "on a scientific mission to push the boundaries of AI,  developing programs that can learn to solve any complex problem without needing  to be taught how."
The company, which is part of Google's Alphabet group, is  setting ambitious goals including AI-powered breakthroughs ranging from climate  change to healthcare. Working with the U.K. National Health Service, DeepMind is  looking for ways to use AI and ML to speed analysis of patent test data to  improve treatment in life threatening emergencies.
"DeepMind researchers are addressing huge AI problems,"  writes Lange, "and they have selected Unity as a primary research platform for  creating complex virtual environments that will enable the development of  algorithms capable of learning to solve complex tasks." 
He notes that the Unity platform allows AI and ML  researchers "to create and leverage simulation environments that are rich in  sensory and physical complexity, provide compelling cognitive challenges, and  support dynamic multi-agent interaction. These environments provide the  foundation to accelerate AI research in areas such as computer vision,  robotics, natural language instruction, autonomous vehicle development, and  many other areas of science and technology."
A recently published reference paper details the  importance of developing and testing AI and ML applications in simulated environments  that reflect more accurately the real world where problems such as climate  change await solutions.
"Recent advances in Deep Reinforcement Learning and Robotics  have been driven by the presence of increasingly realistic and complex  simulation environments," the paper states. "Many of the existing platforms,  however, provide either unrealistic visuals, inaccurate physics, low task  complexity, or a limited capacity for interaction among artificial agents." 
The Unity ML-Agents Toolkit enables the development of "learning environments which are rich in sensory and  physical complexity, provide compelling cognitive challenges, and support  dynamic multi-agent interaction," according to Lange.