. Military Space News .
ROBO SPACE
Reducing the Data Demands of Smart Machines
by Staff Writers
Washington DC (SPX) Jul 13, 2018

Machine learning systems today learn by example, ingesting tons of data that has been individually labeled by human analysts to generate a desired output. The goal of the LwLL program is to make the process of training machine learning models more efficient by reducing the amount of labeled data required to build a model by six or more orders of magnitude, and by reducing the amount of data needed to adapt models to new environments to tens to hundreds of labeled examples

Machine learning (ML) systems today learn by example, ingesting tons of data that has been individually labeled by human analysts to generate a desired output. As these systems have progressed, deep neural networks (DNN) have emerged as the state of the art in ML models. DNN are capable of powering tasks like machine translation and speech or object recognition with a much higher degree of accuracy. However, training DNN requires massive amounts of labeled data-typically 109 or 1010 training examples. The process of amassing and labeling this mountain of information is costly and time consuming.

Beyond the challenges of amassing labeled data, most ML models are brittle and prone to breaking when there are small changes in their operating environment. If changes occur in a room's acoustics or a microphone's sensors, for example, a speech recognition or speaker identification system may need to be retrained on an entirely new data set. Adapting or modifying a model can take almost as much time and energy as creating one from scratch.

To reduce the upfront cost and time associated with training and adapting an ML model, DARPA is launching a new program called Learning with Less Labels (LwLL). Through LwLL, DARPA will research new learning algorithms that require greatly reduced amounts of information to train or update.

"Under LwLL, we are seeking to reduce the amount of data required to build a model from scratch by a million-fold, and reduce the amount of data needed to adapt a model from millions to hundreds of labeled examples," said Wade Shen, a DARPA program manager in the Information Innovation Office (I2O) who is leading the LwLL program. "This is to say, what takes one million images to train a system today, would require just one image in the future, or requiring roughly 100 labeled examples to adapt a system instead of the millions needed today."

To accomplish its aim, LwLL researchers will explore two technical areas. The first focuses on building learning algorithms that efficiently learn and adapt. Researchers will research and develop algorithms that are capable of reducing the required number of labeled examples by the established program metrics without sacrificing system performance. "We are encouraging researchers to create novel methods in the areas of meta-learning, transfer learning, active learning, k-shot learning, and supervised/unsupervised adaptation to solve this challenge," said Shen.

The second technical area challenges research teams to formally characterize machine learning problems, both in terms of their decision difficulty and the true complexity of the data used to make decisions. "Today, it's difficult to understand how efficient we can be when building ML systems or what fundamental limits exist around a model's level of accuracy. Under LwLL, we hope to find the theoretical limits for what is possible in ML and use this theory to push the boundaries of system development and capabilities," noted Shen.

Interested proposers have an opportunity to learn more about the LwLL program during a Proposers Day, scheduled for Friday, July 13 from 9:30am-4:30pm ET at the DARPA Conference Center, located at 675 N. Randolph St., Arlington, Virginia, 22203. For additional information, visit here. A full description of the program will be made available in a forthcoming Broad Agency Announcement.


Related Links
Defense Advanced Research Projects Agency
All about the robots on Earth and beyond!


Thanks for being here;
We need your help. The Space Media Network continues to grow but revenues have never been harder to maintain.

With the rise of Ad Blockers, and Facebook - our traditional revenue sources via quality network advertising continues to decline. And unlike so many other news sites, we don't have a paywall - with those annoying usernames and passwords.

Our news coverage takes time and effort to publish 365 days a year.

If you find our news sites informative and useful then please consider becoming a regular supporter or for now make a one off contribution.
SpaceMediaNetwork Contributor
$5 Billed Once


credit card or paypal
SpaceMediaNetwork Monthly Supporter
$5 Billed Monthly


paypal only


ROBO SPACE
MIT's Cheetah 3 robot avoids obstacles without the help of vision
Washington (UPI) Jul 5, 2018
Cheetah 3, a robot designed by engineers at MIT, can run, jump and climb across complex terrain, avoiding obstacles along the way - all without the benefit of sight. Researchers have dubbed the robot's technological abilities "blind locomotion." Robots with similar maneuverability rely on cameras or some other kind of sensor to "see" the world, but Cheetah 3 is effectively blind. The 90-pound robot relies instead on "feel" to make its way through dynamic environs. "Vision can be ... read more

Comment using your Disqus, Facebook, Google or Twitter login.



Share this article via these popular social media networks
del.icio.usdel.icio.us DiggDigg RedditReddit GoogleGoogle

ROBO SPACE
AEGIS Weapons System sale to Spain approved by State Department

Pentagon awards Lockheed $78M for AEGIS development

Saudi says two Yemen rebel missiles intercepted over Riyadh

Japan says halting missile drills after Trump-Kim summit

ROBO SPACE
Finnish navy to acquire Gabriel anti-ship missiles

Orbital tapped for Coyote supersonic sea skimming targets for Navy

Raytheon to produce Griffin missile for U.S. Special Ops

BAE contracted for laser-guided APKWS rocket systems

ROBO SPACE
Rolls-Royce awarded $420M contract for drone engines

Facebook halts production of drones for internet delivery

Navy contracts Raytheon for LOCUST prototype

Australia buys high-tech drones to monitor South China Sea, Pacific

ROBO SPACE
New Land Mobile Technology Driving The Need For Modern Satcom Capabilities

On-the-move communications system set to field this fall

Lockheed Martin's 5th AEHF comsat completes launch environment test

IAP Worldwide Services tapped for satellite systems

ROBO SPACE
Honeywell tapped for M1 tank engine refurbishment

Rheinmetall tapped for laser light for Bundeswehr assault rifles

Lockheed tapped for AN/VSQ-6B sensor system spare parts

Northrop Grumman contracted for mine detection system support

ROBO SPACE
Qatar discussed Russian arms deal, but 'no decision': emir

Rolls-Royce sells commercial marine unit

French arms exports halved in 2017, Mideast clients still biggest

Navy contracts with GenDyn for aircraft gun systems

ROBO SPACE
U.S., Philippine navies start Sama Sama training activity

Trudeau urges 'firm response' to Russia ahead of NATO summit

NATO, Russia, friends, enemies: Trump reshuffles the deck

Trump slams NATO spending on eve of departure for summit

ROBO SPACE
Squeezing light at the nanoscale

A new way to measure energy in microscopic machines

AI-based method could speed development of specialized nanoparticles

Researchers use magnets to move tiny DNA-based nano-devices









The content herein, unless otherwise known to be public domain, are Copyright 1995-2024 - Space Media Network. All websites are published in Australia and are solely subject to Australian law and governed by Fair Use principals for news reporting and research purposes. AFP, UPI and IANS news wire stories are copyright Agence France-Presse, United Press International and Indo-Asia News Service. ESA news reports are copyright European Space Agency. All NASA sourced material is public domain. Additional copyrights may apply in whole or part to other bona fide parties. All articles labeled "by Staff Writers" include reports supplied to Space Media Network by industry news wires, PR agencies, corporate press officers and the like. Such articles are individually curated and edited by Space Media Network staff on the basis of the report's information value to our industry and professional readership. Advertising does not imply endorsement, agreement or approval of any opinions, statements or information provided by Space Media Network on any Web page published or hosted by Space Media Network. General Data Protection Regulation (GDPR) Statement Our advertisers use various cookies and the like to deliver the best ad banner available at one time. All network advertising suppliers have GDPR policies (Legitimate Interest) that conform with EU regulations for data collection. By using our websites you consent to cookie based advertising. If you do not agree with this then you must stop using the websites from May 25, 2018. Privacy Statement. Additional information can be found here at About Us.