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If you’ve ever seen a “recommended item” on eBay or Amazon that was just what you were looking for (or maybe didn’t know you were looking for), it’s likely the suggestion was powered by a recommendation engine. In a recent interview, Co-founder of machine learning startup Delvv, Inc., Raefer Gabriel, said these applications for recommendation engines and collaborative filtering algorithms are just the beginning of a powerful and broad-reaching technology.

Raefer Gabriel, Delvv, Inc.
Raefer Gabriel, Delvv, Inc.

Gabriel noted that content discovery on services like Netflix, Pandora, and Spotify are most familiar to people because of the way they seem to “speak” to one’s preferences in movies, games, and music. Their relatively narrow focus of entertainment is a common thread that has made them successful as constrained domains. The challenge lies in developing recommendation engines for unbounded domains, like the internet, where there is more or less unlimited information.

“Some of the more unbounded domains, like web content, have struggled a little bit more to make good use of the technology that’s out there. Because there is so much unbounded information, it is hard to represent well, and to match well with other kinds of things people are considering,” Gabriel said. “Most of the collaborative filtering algorithms are built around some kind of matrix factorization technique and they definitely tend to work better if you bound the domain.”

Of all the recommendation engines and collaborative filters on the web, Gabriel cites Amazon as the most ambitious. The eCommerce giant utilizes a number of strategies to make item-to-item recommendations, complementary purchases, user preferences, and more. The key to developing those recommendations is more about the value of the data that Amazon is able to feed into the algorithm initially, hence reaching a critical mass of data on user preferences, which makes it much easier to create recommendations for new users.

“In order to handle those fresh users coming into the system, you need to have some way of modeling what their interest may be based on that first click that you’re able to extract out of them,” Gabriel said. “I think that intersection point between data warehousing and machine learning problems is actually a pretty critical intersection point, because machine learning doesn’t do much without data. So, you definitely need good systems to collect the data, good systems to manage the flow of data, and then good systems to apply models that you’ve built.”

Beyond consumer-oriented uses, Gabriel has seen recommendation engines and collaborative filter systems used in a narrow scope for medical applications and in manufacturing. In healthcare for example, he cited recommendations based on treatment preferences, doctor specialties, and other relevant decision-based suggestions; however, anything you can transform into a “model of relationships between items and item preferences” can map directly onto some form of recommendation engine or collaborative filter.

One of the most important elements that has driven the development of recommendation engines and collaborative filtering algorithms is the Netflix Prize, Gabriel said. The competition, which offered a $1 million prize to anyone who could design an algorithm to improve upon the proprietary Netflix’s recommendation engine, allowed entrants to use pieces of the company’s own user data to develop a better algorithm. The competition spurred a great deal of interest in the potential applications of collaborative filtering and recommendation engines, he said.

In addition, relative ease of access to an abundant amount of cheap memory is another driving force behind the development of recommendation engines. An eCommerce company like Amazon with millions of items needs plenty of memory to store millions of different of pieces of item and correlation data while also storing user data in potentially large blocks.

“You have to think about a lot of matrix data in memory. And it’s a matrix, because you’re looking at relationships between items and other items and, obviously, the problems that get interesting are ones where you have lots and lots of different items,” Gabriel said. “All of the fitting and the data storage does need quite a bit of memory to work with. Cheap and plentiful memory has been very helpful in the development of these things at the commercial scale.”

Looking forward, Gabriel sees recommendation engines and collaborative filtering systems evolving more toward predictive analytics and getting a handle on the unbounded domain of the internet. While those efforts may ultimately be driven by the Google Now platform, he foresees a time when recommendation-driven data will merge with search data to provide search results before you even search for them.

“I think there will be a lot more going on at that intersection between the search and recommendation space over the next couple years. It’s sort of inevitable,” Gabriel said. “You can look ahead to what someone is going to be searching for next, and you can certainly help refine and tune into the right information with less effort.”

While “mind-reading” search engines may still seem a bit like science fiction at present, the capabilities are evolving at a rapid pace, with predictive analytics at the bow.

It’s absolutely insane to go ahead with the summer Olympics in light of this horrid mess. It’s unlikely to end us. but it could hurt us all, badly. No disease of this kind could ask for a better opportunity to spread around the world than that which the Olympics are about to give it. It’s insane.


Probably not, but pathogens that damage brains may earn a special place in cosmic hell.

By Caleb A. Scharf on May 11, 2016.

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You are really starting to see the shape of the Singularity, ever more clearly, in the convergence of so many engineering and scientific discoveries, inventions, and philosophical musings.

I can say, without a doubt, that we are all living in truly extraordinary times!


This five-fingered robot hand developed by University of Washington computer science and engineering researchers can learn how to perform dexterous manipulation — like spinning a tube full of coffee beans — on its own, rather than having humans program its actions. (credit: University of Washington)

A University of Washington team of computer scientists and engineers has built what they say is one of the most highly capable five-fingered robot hands in the world. It can perform dexterous manipulation and learn from its own experience without needing humans to direct it.

Their work is described in a paper to be presented May 17 at the IEEE International Conference on Robotics and Automation.

MAY 12, 2016, WASHINGTON (Army News Service) – “This is the most advanced arm in the world. This one can do anything your natural arm can do, with the exception of the Vulcan V,” said Johnny Matheny, using his right hand to mimic the hand greeting made famous by Star Trek’s Leonard Nimoy. “But unless I meet a Vulcan, I won’t need it.”

Matheny was at the Pentagon, May 11, 2016, as part of “DARPA Demo Day,” to show military personnel the robotic arm he sometimes wears as part of research funded by the Defense Advanced Research Projects Agency. DARPA is an agency of the U.S. Department of Defense responsible for the development of emerging technologies for use by the military.

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When I look at technology and other things; my brain just dissolves all boundaries/ scope of the technology was originally defined for. For me, this is and has always been in my own DNA since I was a toddler. When I first looked at VR/ AR, my future state vision just exploded immediately where and how this technology could be used, how it could transform industries and daily lives, and other future technologies. So, I am glad to see folks apply AR and VR in so many ways that will prove valuable to users, companies, and consumers.


NVIDIA is working with various companies in different sectors such as automotive, manufacturing, and medical to bring AR benefits in their business. It is working with Audi, General Motors (GM), and Ford (F) to create a VR application where the consumer can design a car by changing its wheels, paint, or seat leather. NVIDIA is also working with European (IEV) furniture manufacturer IKEA to build a virtual reality application that allows the user to design their own rooms and homes.

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NSA meets with Silicon Valley execs to voice their concerns over legacy systems being hacked by Quantum technology. Glad they’re talking about it because with the recent advancements in Quantum means it will be available in devices, communications, and platforms a lot sooner than originally projected.


The National Security Telecommunications Advisory Committee (NSTAC) brought together Silicon Valley executives with federal officials at the advisory committee’s annual meeting on Wednesday in Santa Clara, California.

U.S. military and intelligence officials, including Department of Defense Secretary Ash Carter, Department of Homeland Security Secretary Jeh Johnson, and Department of Commerce Secretary Penny Pritzker, attended the advisory committee.

“Today’s era relies on technological innovation in our field such as speed and agility,” said Defense Secretary Carter at the meeting. During his presentation, he introduced Raj Shah, CEO/co-founder of Morta Security, Air Force Reservist, and former F-16 pilot, to lead the Defense Department’s Defense Innovation Unit Experimental (DIUX) initiative. The DoD is restructuring the DIUX program, a Silicon Valley outreach initiative, with Carter calling the revised program “DIUX 2.0.” Shah’s security firm, Morta Security, was acquired by Palo Alto Networks in March 2014.

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The community has the power to direct science and we no longer have to accept the traditional path of state funded science. We have the power to choose the direction science takes!


The cadence of SENS rejuvenation research fundraising this year will be a little different from that of past years. There will be more groups involved and more smaller initiatives running through existing crowdfunding sites for a start. The first of these fundraisers for 2016 has launched at crowdfunding site Lifespan.io, and is definitely worthy of our support. The Major Mouse Testing Program is a new non-profit group of researchers and advocates, who have spent the last six months making connections and laying the groundwork to run more animal studies of SENS-relevant prototype therapies focused on health and life span. This is an important gap in the longevity science community as it exists today: consider the painfully slow progress in organizing animal studies in senescent cell clearance over the past five years, for example. Given more enthusiasm and more funding, that could have happened a lot faster. Consider also that the research mainstream — such as the NIA Interventions Testing Program — carries out very few rigorous health and life span studies of potential interventions for aging in mice, and of those almost none are relevant to the SENS approach of damage repair, the only plausible path to radical life extension within our lifetimes.

Animal studies are vital; not just one or two, here or there, but a systematic approach to generating rigorous supporting data, establishing dosage, and uncovering unexpected outcomes. The Major Mouse Testing Program can do a great deal to fill this gap for our community, and has the potential to be an important supporting organization for the SENS Research Foundation, for startups working on SENS technologies such as Oisin Biotechnologies, and for labs involved in SENS research. The more diversity the better. The only thing that the Major Mouse Testing Program lacks today is the initial funding and support that we can provide to give them a good start on their plans for the future. With clever organization, a non-profit organization allied with established labs can carry out solid animal studies at a cost low enough for people like you and I to fund the work via fundraisers, and that is exactly what we should do.

I have stepped up to donate to this first fundraiser for the Major Mouse Testing Program, and I hope that you will too. This is a useful, needed initiative, the people involved are solid members of the community, doing the right thing, and pulling together the right networks, and they deserve our support. This first crowdfunding initiative is focused on expanding animal studies of drug-based senescent cell clearance approaches, in collaboration with existing groups that are working in this field. Remember, however, that this isn’t just about setting up one set of experiments. This is the first step in building out an organization that can help greatly in the years to come, as the field of potential rejuvenation treatments expands, and the need grows for the non-profit groups in our community to specialize and diversify.

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