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U.S: Enhancing Autonomous Machine Learning

When in the learning process, humans are nurtured by teachers or mentors to acquire knowledge more quickly. Students can grasp when the teacher showed a good or substandard example. Additionally, they can only imitate the teacher’s actions precisely if they exert greater effort to achieve the same level of proficiency. Just like humans, computer scientists can also use “teacher” systems to train another machine to complete a task.

Researchers from MIT and Technion, the Israel Institute of Technology, have embarked on developing an algorithm that automatically and independently determines when the student should mimic the teacher (imitation learning) and when it should learn through trial and error (reinforcement learning). The researchers made the machine learn from other machines without a third party anymore to teach, causing it to save a lot of time and energy.

Several current approaches attempting to find a middle ground between imitation learning and reinforcement learning often rely on a laborious process of brute force trial-and-error. Researchers select a weighted blend of the two learning methods, execute the entire training procedure, and iterate the process multiple times to discover the optimal balance. However, this approach is inefficient and often incurs substantial computational costs, rendering it impractical in many cases.

When the researchers embarked on their simulation, it was proved that the combination of trial and error learning allowed students to learn faster and more efficiently than the imitating methodology, as the student can explore more in many ways. By simulating the combination methodology, which uses the experiment and exploration by the student itself, students can combine dots that intersect to produce a comprehensive conclusion.

“Integrating trial-and-error learning and following a teacher yields a remarkable synergy. It grants our algorithm the capability to tackle highly challenging tasks that cannot be effectively addressed by employing either approach independently,” said Idan Shenfeld, an electrical engineering and computer science (EECS) graduate student and Lead Author of a paper on this technique.

The innovative approach enables the student machine to deviate from imitating the teacher’s behaviour when the teacher’s performance is either good or not good. However, the student can later revert to mimicking the teacher’s actions during the training process if it proves to be more beneficial, leading to improved outcomes and accelerated learning.

The proposed approach entails training two separate students. The first student is taught using a combination of reinforcement learning and imitation learning, with the learning process being guided by various techniques.

On the other hand, the second student is trained solely using reinforcement learning, relying exclusively on this approach to learn the same task, minimising the need for extensive parameter adjustments, and delivering exceptional performance.

To give their algorithm an even more difficult test, a simulated environment was established, involving a robotic hand equipped with touch sensors but without visual perception. The objective was to reorient the pen to the correct position. The teacher solely accessed real-time orientation data, while the student relied on touch sensors to determine the pen’s orientation.

Rishabh Agarwal, Director of a private research laboratory in the US and an assistant professor in the Computer Science and Artificial Intelligence Laboratory underscores that the ability to reorient objects is just one example of the various manipulation tasks that a future household robot would be required to accomplish. “This research introduces a compelling method, leveraging previous computational efforts in reinforcement learning.”

“I am very optimist about future possibilities of applying this work to ease our life with tactile sensing,” Abhishek Gupta, an Assistant Professor at the University of Washington, concluded.

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Qlik’s vision is a data-literate world, where everyone can use data and analytics to improve decision-making and solve their most challenging problems. A private company, Qlik offers real-time data integration and analytics solutions, powered by Qlik Cloud, to close the gaps between data, insights and action. By transforming data into Active Intelligence, businesses can drive better decisions, improve revenue and profitability, and optimize customer relationships. Qlik serves more than 38,000 active customers in over 100 countries.

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CTC Global Singapore, a premier end-to-end IT solutions provider, is a fully owned subsidiary of ITOCHU Techno-Solutions Corporation (CTC) and ITOCHU Corporation.

Since 1972, CTC has established itself as one of the country’s top IT solutions providers. With 50 years of experience, headed by an experienced management team and staffed by over 200 qualified IT professionals, we support organizations with integrated IT solutions expertise in Autonomous IT, Cyber Security, Digital Transformation, Enterprise Cloud Infrastructure, Workplace Modernization and Professional Services.

Well-known for our strengths in system integration and consultation, CTC Global proves to be the preferred IT outsourcing destination for organizations all over Singapore today.

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Planview has one mission: to build the future of connected work. Our solutions enable organizations to connect the business from ideas to impact, empowering companies to accelerate the achievement of what matters most. Planview’s full spectrum of Portfolio Management and Work Management solutions creates an organizational focus on the strategic outcomes that matter and empowers teams to deliver their best work, no matter how they work. The comprehensive Planview platform and enterprise success model enables customers to deliver innovative, competitive products, services, and customer experiences. Headquartered in Austin, Texas, with locations around the world, Planview has more than 1,300 employees supporting 4,500 customers and 2.6 million users worldwide. For more information, visit www.planview.com.

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SIRIM is a premier industrial research and technology organisation in Malaysia, wholly-owned by the Minister​ of Finance Incorporated. With over forty years of experience and expertise, SIRIM is mandated as the machinery for research and technology development, and the national champion of quality. SIRIM has always played a major role in the development of the country’s private sector. By tapping into our expertise and knowledge base, we focus on developing new technologies and improvements in the manufacturing, technology and services sectors. We nurture Small Medium Enterprises (SME) growth with solutions for technology penetration and upgrading, making it an ideal technology partner for SMEs.

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HashiCorp provides infrastructure automation software for multi-cloud environments, enabling enterprises to unlock a common cloud operating model to provision, secure, connect, and run any application on any infrastructure. HashiCorp tools allow organizations to deliver applications faster by helping enterprises transition from manual processes and ITIL practices to self-service automation and DevOps practices. 

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IBM is a leading global hybrid cloud and AI, and business services provider. We help clients in more than 175 countries capitalize on insights from their data, streamline business processes, reduce costs and gain the competitive edge in their industries. Nearly 3,000 government and corporate entities in critical infrastructure areas such as financial services, telecommunications and healthcare rely on IBM’s hybrid cloud platform and Red Hat OpenShift to affect their digital transformations quickly, efficiently and securely. IBM’s breakthrough innovations in AI, quantum computing, industry-specific cloud solutions and business services deliver open and flexible options to our clients. All of this is backed by IBM’s legendary commitment to trust, transparency, responsibility, inclusivity and service.