New York Tech Media
  • News
  • FinTech
  • AI & Robotics
  • Cybersecurity
  • Startups & Leaders
  • Venture Capital
No Result
View All Result
  • News
  • FinTech
  • AI & Robotics
  • Cybersecurity
  • Startups & Leaders
  • Venture Capital
No Result
View All Result
New York Tech Media
No Result
View All Result
Home AI & Robotics

Q&A: Cathy Wu on developing algorithms to safely integrate robots into our world | MIT News

New York Tech Editorial Team by New York Tech Editorial Team
December 16, 2021
in AI & Robotics
0
Q&A: Cathy Wu on developing algorithms to safely integrate robots into our world | MIT News
Share on FacebookShare on Twitter

Cathy Wu is the Gilbert W. Winslow Assistant Professor of Civil and Environmental Engineering and a member of the MIT Institute for Data, Systems, and Society. As an undergraduate, Wu won MIT’s toughest robotics competition, and as a graduate student took the University of California at Berkeley’s first-ever course on deep reinforcement learning. Now back at MIT, she’s working to improve the flow of robots in Amazon warehouses under the Science Hub, a new collaboration between the tech giant and the MIT Schwarzman College of Computing. Outside of the lab and classroom, Wu can be found running, drawing, pouring lattes at home, and watching YouTube videos on math and infrastructure via 3Blue1Brown and Practical Engineering. She recently took a break from all of that to talk about her work.

Q: What put you on the path to robotics and self-driving cars?

A: My parents always wanted a doctor in the family. However, I’m bad at following instructions and became the wrong kind of doctor! Inspired by my physics and computer science classes in high school, I decided to study engineering. I wanted to help as many people as a medical doctor could.

At MIT, I looked for applications in energy, education, and agriculture, but the self-driving car was the first to grab me. It has yet to let go! Ninety-four percent of serious car crashes are caused by human error and could potentially be prevented by self-driving cars. Autonomous vehicles could also ease traffic congestion, save energy, and improve mobility.

I first learned about self-driving cars from Seth Teller during his guest lecture for the course Mobile Autonomous Systems Lab (MASLAB), in which MIT undergraduates compete to build the best full-functioning robot from scratch. Our ball-fetching bot, Putzputz, won first place. From there, I took more classes in machine learning, computer vision, and transportation, and joined Teller’s lab. I also competed in several mobility-related hackathons, including one sponsored by Hubway, now known as Blue Bike.

Q: You’ve explored ways to help humans and autonomous vehicles interact more smoothly. What makes this problem so hard?

A: Both systems are highly complex, and our classical modeling tools are woefully insufficient. Integrating autonomous vehicles into our existing mobility systems is a huge undertaking. For example, we don’t know whether autonomous vehicles will cut energy use by 40 percent, or double it. We need more powerful tools to cut through the uncertainty. My PhD thesis at Berkeley tried to do this. I developed scalable optimization methods in the areas of robot control, state estimation, and system design. These methods could help decision-makers anticipate future scenarios and design better systems to accommodate both humans and robots.

Q: How is deep reinforcement learning, combining deep and reinforcement learning algorithms, changing robotics?

A: I took John Schulman and Pieter Abbeel’s reinforcement learning class at Berkeley in 2015 shortly after Deepmind published their breakthrough paper in Nature. They had trained an agent via deep learning and reinforcement learning to play “Space Invaders” and a suite of Atari games at superhuman levels. That created quite some buzz. A year later, I started to incorporate reinforcement learning into problems involving mixed traffic systems, in which only some cars are automated. I realized that classical control techniques couldn’t handle the complex nonlinear control problems I was formulating.

Deep RL is now mainstream but it’s by no means pervasive in robotics, which still relies heavily on classical model-based control and planning methods. Deep learning continues to be important for processing raw sensor data like camera images and radio waves, and reinforcement learning is gradually being incorporated. I see traffic systems as gigantic multi-robot systems. I’m excited for an upcoming collaboration with Utah’s Department of Transportation to apply reinforcement learning to coordinate cars with traffic signals, reducing congestion and thus carbon emissions.

Q: You’ve talked about the MIT course, 6.007 (Signals and Systems), and its impact on you. What about it spoke to you?

A: The mindset. That problems that look messy can be analyzed with common, and sometimes simple, tools. Signals are transformed by systems in various ways, but what do these abstract terms mean, anyway? A mechanical system can take a signal like gears turning at some speed and transform it into a lever turning at another speed. A digital system can take binary digits and turn them into other binary digits or a string of letters or an image. Financial systems can take news and transform it via millions of trading decisions into stock prices. People take in signals every day through advertisements, job offers, gossip, and so on, and translate them into actions that in turn influence society and other people. This humble class on signals and systems linked mechanical, digital, and societal systems and showed me how foundational tools can cut through the noise.

Q: In your project with Amazon you’re training warehouse robots to pick up, sort, and deliver goods. What are the technical challenges?

A: This project involves assigning robots to a given task and routing them there. [Professor] Cynthia Barnhart’s team is focused on task assignment, and mine, on path planning. Both problems are considered combinatorial optimization problems because the solution involves a combination of choices. As the number of tasks and robots increases, the number of possible solutions grows exponentially. It’s called the curse of dimensionality. Both problems are what we call NP Hard; there may not be an efficient algorithm to solve them. Our goal is to devise a shortcut.

Routing a single robot for a single task isn’t difficult. It’s like using Google Maps to find the shortest path home. It can be solved efficiently with several algorithms, including Dijkstra’s. But warehouses resemble small cities with hundreds of robots. When traffic jams occur, customers can’t get their packages as quickly. Our goal is to develop algorithms that find the most efficient paths for all of the robots.

Q: Are there other applications?

A: Yes. The algorithms we test in Amazon warehouses might one day help to ease congestion in real cities. Other potential applications include controlling planes on runways, swarms of drones in the air, and even characters in video games. These algorithms could also be used for other robotic planning tasks like scheduling and routing.

Q: AI is evolving rapidly. Where do you hope to see the big breakthroughs coming?

A: I’d like to see deep learning and deep RL used to solve societal problems involving mobility, infrastructure, social media, health care, and education. Deep RL now has a toehold in robotics and industrial applications like chip design, but we still need to be careful in applying it to systems with humans in the loop. Ultimately, we want to design systems for people. Currently, we simply don’t have the right tools.

Q: What worries you most about AI taking on more and more specialized tasks?

A: AI has the potential for tremendous good, but it could also help to accelerate the widening gap between the haves and the have-nots. Our political and regulatory systems could help to integrate AI into society and minimize job losses and income inequality, but I worry that they’re not equipped yet to handle the firehose of AI.

Q: What’s the last great book you read?

A: “How to Avoid a Climate Disaster,” by Bill Gates. I absolutely loved the way that Gates was able to take an overwhelmingly complex topic and distill it down into words that everyone can understand. His optimism inspires me to keep pushing on applications of AI and robotics to help avoid a climate disaster.

Credit: Source link

Previous Post

Cleantech investment so hot that ‘you just can’t lose’

Next Post

EV startup Rivian to build $5 bln plant in Georgia, posts quarterly loss

New York Tech Editorial Team

New York Tech Editorial Team

New York Tech Media is a leading news publication that aims to provide the latest tech news, fintech, AI & robotics, cybersecurity, startups & leaders, venture capital, and much more!

Next Post
EV startup Rivian to build $5 bln plant in Georgia, posts quarterly loss

EV startup Rivian to build $5 bln plant in Georgia, posts quarterly loss

  • Trending
  • Comments
  • Latest
Meet the Top 10 K-Pop Artists Taking Over 2024

Meet the Top 10 K-Pop Artists Taking Over 2024

March 17, 2024
Panther for AWS allows security teams to monitor their AWS infrastructure in real-time

Many businesses lack a formal ransomware plan

March 29, 2022
Zach Mulcahey, 25 | Cover Story | Style Weekly

Zach Mulcahey, 25 | Cover Story | Style Weekly

March 29, 2022
How To Pitch The Investor: Ronen Menipaz, Founder of M51

How To Pitch The Investor: Ronen Menipaz, Founder of M51

March 29, 2022
Japanese Space Industry Startup “Synspective” Raises US $100 Million in Funding

Japanese Space Industry Startup “Synspective” Raises US $100 Million in Funding

March 29, 2022
UK VC fund performance up on last year

VC-backed Aerium develops antibody treatment for Covid-19

March 29, 2022
Startups On Demand: renovai is the Netflix of Online Shopping

Startups On Demand: renovai is the Netflix of Online Shopping

2
Robot Company Offers $200K for Right to Use One Applicant’s Face and Voice ‘Forever’

Robot Company Offers $200K for Right to Use One Applicant’s Face and Voice ‘Forever’

1
Menashe Shani Accessibility High Tech on the low

Revolutionizing Accessibility: The Story of Purple Lens

1

Netgear announces a $1,500 Wi-Fi 6E mesh router

0
These apps let you customize Windows 11 to bring the taskbar back to life

These apps let you customize Windows 11 to bring the taskbar back to life

0
This bipedal robot uses propeller arms to slackline and skateboard

This bipedal robot uses propeller arms to slackline and skateboard

0
Coffee Nova’s $COFFEE Token

Coffee Nova’s $COFFEE Token

May 29, 2025
Money TLV website

BridgerPay to Spotlight Cross-Border Payments Innovation at Money TLV 2025

May 27, 2025
The Future of Software Development: Why Low-Code Is Here to Stay

Building Brand Loyalty Starts With Your Team

May 23, 2025
Tork Media Expands Digital Reach with Acquisition of NewsBlaze and Buzzworthy

Creative Swag Ideas for Hackathons & Launch Parties

May 23, 2025
Tork Media Expands Digital Reach with Acquisition of NewsBlaze and Buzzworthy

Strengthening Cloud Security With Automation

May 22, 2025
How Local IT Services in Anderson Can Boost Your Business Efficiency

Why VPNs Are a Must for Entrepreneurs in Asia

May 22, 2025

Recommended

Coffee Nova’s $COFFEE Token

Coffee Nova’s $COFFEE Token

May 29, 2025
Money TLV website

BridgerPay to Spotlight Cross-Border Payments Innovation at Money TLV 2025

May 27, 2025
The Future of Software Development: Why Low-Code Is Here to Stay

Building Brand Loyalty Starts With Your Team

May 23, 2025
Tork Media Expands Digital Reach with Acquisition of NewsBlaze and Buzzworthy

Creative Swag Ideas for Hackathons & Launch Parties

May 23, 2025

Categories

  • AI & Robotics
  • Benzinga
  • Cybersecurity
  • FinTech
  • New York Tech
  • News
  • Startups & Leaders
  • Venture Capital

Tags

3D bio-printing acoustic AI Allseated B2B marketing Business carbon footprint climate change coding Collaborations Companies To Watch consumer tech crypto cryptocurrency deforestation drones earphones Entrepreneur Fetcherr Finance Fintech food security Investing Investors investorsummit israelitech Leaders LinkedIn Leaders Metaverse news OurCrowd PR Real Estate reforestation software start- up Startups Startups On Demand startuptech Tech Tech leaders technology UAVs Unlimited Robotics VC
  • Contact Us
  • Privacy Policy
  • Terms and conditions

© 2024 All Rights Reserved - New York Tech Media

No Result
View All Result
  • News
  • FinTech
  • AI & Robotics
  • Cybersecurity
  • Startups & Leaders
  • Venture Capital

© 2024 All Rights Reserved - New York Tech Media