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Eric Stein Says State Department Used AI, Machine Learning in … – Executive Gov

Eric Stein, deputy assistant secretary for the Office of Global Information Services at the State Department, said the department declassified diplomatic cables from late 1997 using artificial intelligence and machine learning, Federal News Network reported Monday.

The State Department used declassification decisions to train the machine learning model and Stein said the tool has a 97 percent accuracy in determining whether to declassify a record as part of a pilot program that included personnel in the entire review process.

And some of those 3% issues werent even review decisions, he said at an Oct. 5 event. They were actually data quality issues or other challenges.

Stein called the pilot a proactive measure to improve transparency at the department using technology.

The State Department has fully operationalized the technology and plans to extend the use of the tool to email and other types of records, according to the report.

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Recent Research on the Lottery Tickets concept part8(Machine … – Medium

Author : Rebekka Burkholz

Abstract : The Lottery Ticket Hypothesis continues to have a profound practical impact on the quest for small scale deep neural networks that solve modern deep learning tasks at competitive performance. These lottery tickets are identified by pruning large randomly initialized neural networks with architectures that are as diverse as their applications. Yet, theoretical insights that attest their existence have been mostly focused on deep fully-connected feed forward networks with ReLU activation functions. We prove that also modern architectures consisting of convolutional and residual layers that can be equipped with almost arbitrary activation functions can contain lottery tickets with high probabili

2.Analyzing Lottery Ticket Hypothesis from PAC-Bayesian Theory Perspective (arXiv)

Author : Keitaro Sakamoto, Issei Sato

Abstract : The lottery ticket hypothesis (LTH) has attracted attention because it can explain why over-parameterized models often show high generalization ability. It is known that when we use iterative magnitude pruning (IMP), which is an algorithm to find sparse networks with high generalization ability that can be trained from the initial weights independently, called winning tickets, the initial large learning rate does not work well in deep neural networks such as ResNet. However, since the initial large learning rate generally helps the optimizer to converge to flatter minima, we hypothesize that the winning tickets have relatively sharp minima, which is considered a disadvantage in terms of generalization ability. In this paper, we confirm this hypothesis and show that the PAC-Bayesian theory can provide an explicit understanding of the relationship between LTH and generalization behavior. On the basis of our experimental findings that flatness is useful for improving accuracy and robustness to label noise and that the distance from the initial weights is deeply involved in winning tickets, we offer the PAC-Bayes bound using a spike-and-slab distribution to analyze winning tickets. Finally, we revisit existing algorithms for finding winning tickets from a PAC-Bayesian perspective and provide new insights into these methods

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SiFive’s high-performance RISC-Vs for AI and machine learning – Electronics Weekly

Performance P870 and Intelligence X390 offer a new level of low power compute density and vector compute capability, and when combined provide performance for data intensive compute, according to the company, which is advocating combining the general-purpose scalar P870 with an NPU cluster consisting of the vector X390 and customer AI hardware intellectual property.

For consumer applications or, with a vector processor, datacentres, P870 has 50% more peak single thread performance (specINT2k6) that its previous Performance branded processors.

It is a six-wide out-of-order core, that meets RVA 23 and offers a shared cluster cache up to 32 cores.

High execution throughput comes with more instruction sets per cycle, more ALU, and more branch units, said SiFive.

The core is compatible with Google Android-on-RISC-V requirements, and has x128b VLEN RVV, vector crypto and hypervisor extensions, IOMMU and AIA, non-inclusive L3 cache and WorldGuard security.

P870-A has added features for automotive use.

Compared with its X280 forebear, X390 has a 4x improvement to vector computation in single core configuration, doubled vector length and dual vector ALUs.

This allows quadruple the amount of sustained data bandwidth, said SiFive. With VCIX [vector coprocessor interface extension] companies can add their own vector instructions and acceleration hardware.

VCIX is 2,048bit out, 1,024bit in, and other features include: 1,024bit VLEN, 512bit DLEN and single-dual vector ALU.

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Machine Learning in Manufacturing: Quality 4.0 and the Zero … – Quality Magazine

Machine Learning in Manufacturing: Quality 4.0 and the Zero Defects Vision | Quality Magazine This website requires certain cookies to work and uses other cookies to help you have the best experience. By visiting this website, certain cookies have already been set, which you may delete and block. By closing this message or continuing to use our site, you agree to the use of cookies. Visit our updated privacy and cookie policy to learn more. This Website Uses CookiesBy closing this message or continuing to use our site, you agree to our cookie policy. Learn MoreThis website requires certain cookies to work and uses other cookies to help you have the best experience. By visiting this website, certain cookies have already been set, which you may delete and block. By closing this message or continuing to use our site, you agree to the use of cookies. Visit our updated privacy and cookie policy to learn more.

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Researchers create dataset to address object recognition problem in machine learning – Tech Xplore

This article has been reviewed according to ScienceX's editorial process and policies. Editors have highlighted the following attributes while ensuring the content's credibility:

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When is an apple not an apple? If you're a computer, the answer is when it's been cut in half.

While significant advancements have been made in computer vision the past few years, teaching a computer to identify objects as they change shape remains elusive in the field, particularly with artificial intelligence (AI) systems. Now, computer science researchers at the University of Maryland are tackling the problem using objects that we alter everydayfruits and vegetables.

Their product is Chop & Learn, a dataset that teaches machine learning systems to recognize produce in various formseven as its being peeled, sliced or chopped into pieces.

The project was presented earlier this month at the 2023 International Conference on Computer Vision in Paris.

"You and I can visualize how a sliced apple or orange would look compared to a whole fruit, but machine learning models require lots of data to learn how to interpret that," said Nirat Saini, a fifth-year computer science doctoral student and lead author of the paper. "We needed to come up with a method to help the computer imagine unseen scenarios the same way that humans do."

To develop the datasets, Saini and fellow computer science doctoral students Hanyu Wang and Archana Swaminathan filmed themselves chopping 20 types of fruits and vegetables in seven styles using video cameras set up at four angles.

The variety of angles, people and food-prepping styles are necessary for a comprehensive data set, said Saini.

"Someone may peel their apple or potato before chopping it, while other people don't. The computer is going to recognize that differently," she said.

In addition to Saini, Wang and Swaminathan, the Chop & Learn team includes computer science doctoral students Vinoj Jayasundara and Bo He; Kamal Gupta Ph.D. '23, now at Tesla Optimus; and their adviser Abhinav Shrivastava, an assistant professor of computer science.

"Being able to recognize objects as they are undergoing different transformations is crucial for building long-term video understanding systems," said Shrivastava, who also has an appointment in the University of Maryland Institute for Advanced Computer Studies. "We believe our dataset is a good start to making real progress on the basic crux of this problem."

In the short term, Shrivastava said, the Chop & Learn dataset will contribute to the advancement of image and video tasks such as 3D reconstruction, video generation, and summarization and parsing of long-term video.

Those advances could one day have a broader impact on applications like safety features in driverless vehicles or helping officials identify public safety threats, he said.

And while it's not the immediate goal, Shrivastava said, Chop & Learn could contribute to the development of a robotic chef that could turn produce into healthy meals in your kitchen on command.

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Deep learning explained: Unraveling the magic behind neural networks – Times of India

In an era where artificial intelligence and machine learning are transforming industries and shaping the future, it's essential to understand the foundational technology behind these innovations: deep learning. At the heart of deep learning are neural networks, computational models inspired by the human brain. In this explainer, we'll unravel the magic behind neural networks and explore how they make incredible feats of AI possible.What is Deep Learning?Deep learning is a subfield of machine learning, which, in turn, is a branch of artificial intelligence. What sets deep learning apart is its use of artificial neural networks, designed to mimic the way the human brain processes information. These neural networks consist of interconnected nodes or "neurons," organized in layers.The Building Blocks: NeuronsAt the core of a neural network are its neurons. Each neuron receives inputs, processes them, and produces an output. These outputs are then passed to other neurons, creating a complex web of interconnected processing units.Layers of Learning: Deep Neural NetworksNeural networks are typically organized into layers: an input layer, one or more hidden layers, and an output layer. The input layer receives data, the hidden layers process it, and the output layer produces the network's final result. The "deep" in deep learning refers to networks with multiple hidden layers.

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ChatGPTs gamechanger- multi-modality. What this means | by … – Medium

What is multi-modal AI and does it deserve the hype its generating

If you went to LinkedIn over last week/2 weeks, you were probably inundated by people losing their minds over GPT integrating multi-modality into its capabilities. Normally, I would take some time to tell you that this is another example of the hype machine working overtime to sell you another fundamentally useless idea.

Well, this time is different. Multi-modality is a genuinely powerful development, one that does warrant the attention that it is receiving. In this article, I will give you a quick introduction to multi-modality, why its a big deal for AI Models, and some problems it can come with (remember, nothing is a silver bullet).

Overall, multi-modality is really cool. It enables all kinds of applications in compression, data annotation, labeling etc. This might be a bit of a heretical take, but Im personally more excited by multi-modal embeddings than I am by the multi-modal AI models themselves. I might be the only one here, but I just see more utility in developing better embeddings than I do with building better models. That being said, in the right circumstances integrating multi-modal capabilities into your AI Models can definitely be a big dub.

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Deep Learning Meets Trash: Amp Robotics Revolution in Materials … – Robohub

In this episode, Abate flew to Denver, Colorado, to get a behind-the-scenes look at the future of recycling with Joe Castagneri, the head of AI at Amp Robotics. With Materials Recovery Facilities (MRFs) processing a staggering 25 tons of trash per hour, robotic sorting is the clear long-term solution.

Recycling is a for-profit industry. When the margins dont make sense, the items will not be recycled. This is why Amps mission to use robotics and AI to bring down the cost of recycling and increase the number of items that can be sorted for recycling is so impactful.

Joe CastagneriJoe Castagneri graduated with his Master of Science in Applied Mathematics, with an undergrad degree in Physics. While still in university, he first joined the team at Amp Robotics in 2016 where he worked on Machine Learning models to identify recyclables in video streams of Trash in Materials Recovery Facilities (MRFs). Today, he is the Head of AI at Amp Robotics where he is changing the economics of recycling through automation.

transcript

[00:00:00](Edited for clarity)Abate: Welcome to Robohub. Today, were in Denver, Colorado, speaking with Joe Castagneri, head of AI at Amp Robotics. Its staggering how much trash materials recovery facilities (MRFs) process: 25 tons per hour. And yet, much of this is done manually. Amp Robotics believes robots are the future of this industry. Joe, how did you get involved with Amp Robotics?

Joe Castagneri: At 19, while studying applied math at CU Boulder, I met Matan Horowitz, the companys founder. Amp Robotics was in its early stages, experimenting with sorting using an Xbox Kinect sensor. After seeing a presentation on robotics and recycling, I joined as an intern in 2016 and transitioned into machine learning by 2019.

Abate: Fascinating. So, the companys foundation was built on AI?

Joe Castagneri: Exactly. The goal was to merge robotics, AI, and green tech to address major societal problems. Matan saw recycling as the right challenge for our tech.

Abate: Given the advances in GPU technology, did you begin with cloud processing?

Joe Castagneri: Actually, we opted for edge computing due to poor internet in trash facilities and the need for real-time operations. But as we grew, we shifted some support functions to Google Cloud.

Abate: How did Amp Robotics evolve from its early days to its current state?

Joe Castagneri: By listening and learning from our failures. Each robot deployed taught us valuable lessons. Rapid iteration and understanding customer needs were essential. The challenge lies in the diverse and unpredictable nature of waste.

Abate: Absolutely. Recycling facilities deal with so much variety in trash items.

Joe Castagneri: Indeed. Consider a milk jug; its appearance can vary greatly. Traditional computer vision struggles in this space. But deep learning, with enough data, can tackle this complexity.

Abate: And packaging materials and designs constantly evolve. How does the AI handle these changes?

Joe Castagneri: The key is consistent retraining and adaptation. Our models need to evolve as the industry and materials change. Model maintenance is crucial in this ever-shifting environment.

Abate: It sounds like this industry experiences significant model drift.

Joe Castagneri: Yes. Good way of concisely putting it. Totally agree.

Abate: So, and then here behind you, we have this, not a prototype, but like an in-assembly, model.

Joe Castagneri: Yes. So this is our flagship cortex product where we have a Delta style robot that will overhang over a belt. The belt will go from where I am through here. This unit in particular, were on our production floor where we manufacture the units we assemble. The robots that are Omron robots, we integrate with Omron and then we custom design the pneumatics and the wiring, the frame, the vision cabinet that is running that edge compute. And we bring it all together into one package. So this one is in process of manufacturing, and will go out into a recycling facility over a conveyor belt.

Abate: Yeah. So this is a five or six year old prototype called Claudia. So to explain, you have a suction cup gripper here and a beefy spring so that the variable height of the material or condition of the material is absorbed mechanically.

Joe Castagneri: And then a pneumatic system going through this particular gripper and the suction cup will form a vacuum seal and we descend, suck, and then place off the side of the belt into a chute or into a bunker.

Abate: So then this right here would be where, say a milk jug would come and it would hold onto that milk jug.

Joe Castagneri: Yes. Its air suction and in particular, ahead of the robot cell, a camera imaging the conveyor belt will look at the material, localize where it is and what it is. And then the robotic path planning software will say, okay, I am configured to pick these things, so let me subset down what Ive seen to what Im configured to pick. Right. And then, there are too many things to pick that I have time for. I want to optimize the number of things that I can pick, given how long theyre gonna be in my picking region. And then I will intercept to be at this location at this time and turn my vacuum on at this time. And then place it off the side of the belt.

Abate: Yeah, so the interesting thing here is that this is a moving belt. Youve got limited belt amount of time, and youre trying to hit a certain number of items per minute that youre picking.

Joe Castagneri: Yes. Right. In particular, the value proposition of these units is as a replacement for human sorters. And so human sorters will remove material at 30 to 50 picks per minute, at their peak. So a decent starting robot will remove material at 30 to 50 picks per minute to break even with a person, but really, you would like it to do better. And so these systems routinely hit 80 plus picks per minute. Weve seen them hit over a hundred if the material stream is perfectly providing you a lot of eligible options in a well spread out way. So, a lot faster than a person, at a higher purity and for the whole duration of two shifts a day.

Abate: And how does that change from, say, one facility to another? Are these used in different ways by different companies?

Joe Castagneri: Dramatically. Yes. Theres always a conveyor belt in a facility. Thats the last chance Conveyor. And its the very last one. Its your last chance to get any stuff on that conveyor or its gonna go to landfill. And this is a frustrating thing to consumers because you figure, you put it in your recycling bin, its all gonna be recycled. And the reality is, itll be passed through this facility and whatever the yield of that facility is, were gonna pull that out. The rest goes to landfill. And so our early applications were to put these units on last chance lines and hey, get whatever you can. But a different type of application for these might be you have other conventional sorting equipment that is separating 2D paper and cardboard from 3D containers and plastics, and you have all this paper and cardboard, but because it was sorted conventionally, there are a whole bunch of other things in there. And so you would quality control, remove stuff out of that stream. Historically, this has been done by people. If its not done, then the paper bales that you make might be rejected by the buyer. Theres too much plastic in there, too many impurities. So it has to be done to ensure that the product youre making, paper in this case, has any value. And these can be there to quality control that stream.

Abate: Is it a mixture of everything that people put into their recycling bin is now what arrives at the MRF. And now you have to separate each individual component. So it would be like youre separating out the paper, the plastic, the cans, and then the random trash that people threw in there as well.

Joe Castagneri: Thats exactly right. I go one step further. If you think about the waste stream, like a miner thinks about ore, what do you have in there? Youve got precious metals, hydrocarbons, paper products, wood products, but the problem is theyre not refined. If you can sort them, you add value. Its trash until we can sort it, and then it becomes valuable. This is a feedstock now. Its no longer trash. Its transformed into an input to an industry. So when people throw stuff in the recycling bin, they will wish cycle things, thinking, Oh, I bet theyll find a use for this.

And it arrives at a recycling facility, dumped in a massive pile of recycling, and a front loader takes a scoop of it and puts it into the system. The first conveyor belt in the system is called the Presort line. Its usually a really wide, rugged conveyor belt with hand sorters pulling off items like bicycles. This job is still done by people because its a difficult grasping problem. They remove really odd items that shouldnt be there, like bowling balls, dog waste bags, bicycles, mattresses things that can break machinery down the line.

Then, conventional sorting equipment sorts through it.

Abate: How does a mattress get into a recycling can?

Joe Castagneri: The recycling dumpsters in cities, typically. In my building, for example, we have a dumpster for garbage and one for single stream recycling. People will put their old Ikea lamp in there because it has metal. They think itll be recycled. But since waste is so abstracted away from everyday consumers, they dont realize that these facilities have to run at 25 tons an hour to be profitable. They dont have time to disassemble that lamp. It stands in the way of efficiency.

Abate: 25 tons an hour.Joe Castagneri: Thats common for municipal facilities. In Denver, for instance, they might process 25 tons an hour, or 50,000 pounds an hour of material.

Abate: And do you know offhand how much trash a person produces in a year?

Joe Castagneri: I think a family household produces about three tons. About one ton of that is recyclable.

Abate: So this is on a massive scale.

Joe Castagneri: Absolutely. Trash is produced locally, so you need these facilities locally. Theyre called municipal recycling facilities because theyre often funded through municipalities to support the local population. No city is the same. Denver, a big city, having a 25 ton per hour facility for recycling makes sense. In Colorado, if you go into the Rocky Mountains, its rare to recycle because there isnt enough volume to make it profitable.

Were concerned about why there isnt recycling in more rural areas, or in areas that dont have the population to drive 10 to 30 tons an hour of waste. You need enough volume for the business to be profitable. Its a narrow margin, so you need scale. It would be great if we could build a smaller facility that was profitable without requiring so much throughput. Thats another thing were looking into.

Abate: So, what are those fixed costs that are preventing people?

Joe Castagneri: The fixed costs for a facility include the capital equipment, the sortation equipment, and conveyor belts. If you visit these facilities, its a maze of conveyor belts transferring throughout. Just considering the conveyor belts, they are a major expense. For instance, a facility processing 25 tons per hour might cost 10 to 20 million to build. In the mining industry, this might not seem like much, but in other sectors, its substantial. Given the thin margins on recycling, justifying that $20 million can be challenging. So, the primary fixed costs are the sortation equipment and the conveyor belts. Then there are dynamic costs, like sourcing material and paying for freight both to bring materials in and ship sorted goods out.

Abate: With tight margins in this industry, how much are operations affected by changes in material prices or varying regional prices for certain materials?

Joe Castagneri: Its hugely impactful. For instance, in 2018, China stopped accepting low-grade plastics from the US. This was disruptive because instead of earning from these plastics, facilities had to pay to landfill them. This sparked a need for innovation, to find new uses and methods to handle these materials.

Abate: What counts as low-grade plastic? Bottles or items like plastic bags?

Joe Castagneri: Great question. The main valuable commodities in recycling are aluminum cans, cardboard, PET drinking water bottles, and HDPE milk jugs. However, there are other materials like colored HDPE and polypropylene, which also have value. Materials like polystyrene, used in red solo cups, are challenging to sort and dont have as much value. When China stopped importing these low-grade plastics, the industry felt pressured to find new sorting methods and uses for them. Its now leading to innovative techniques like pyrolysis and metalysis that can process these plastics.

Abate: With these valuable materials youve mentioned, are they primarily what your algorithms are trained on?

Joe Castagneri: Of course, theres an incentive to be good at detecting and sorting the most valuable materials. However, AI robotics in recycling is also efficient at identifying materials that are typically ignored. We are part of the solution for materials that dont have an established sorting process using conventional methods.

Now we are really adept at identifying the mainstay items of recycling because the robots came into existence when our company began retrofitting value into existing facilities. When retrofitting value, you need to accommodate the facilities as they are. They sort natural high-density polyethylene, PET bottles, cardboard, and aluminum, among others.

Abate: Okay. Because the MRF is selecting what they can sell, theyre choosing what their local customers are willing to buy. Some materials might not be valuable enough for them to pick. So, could they use the software to specify which items theyre interested in?

Joe Castagneri: Absolutely. They can configure what the robot will pick with just a few clicks. If halfway through the day they decide they want to pick a particular item from the conveyor because theres more of it in the load, a few adjustments and its set to be picked. On the flip side, if they feel the machine is letting too many valuable items like PET bottles pass, they can increase its priority. These robots are highly adaptable, making them stand out in an environment where traditional sortation equipment is easy to operate but not versatile.

Using AI as the primary recognition tool in our facilities, we can change the type of material were processing and swiftly reconfigure the entire plant to adjust to the new material.

Abate: Thats quite powerful. Considering a system operated by humans, theres a limit to how many items you can instruct them to recognize. Plus, switching tasks frequently can be disruptive. Has automation introduced notable benefits for your customers?

Joe Castagneri: Indeed. Hand sorting, for instance, epitomizes dull, dirty, and dangerous jobs. Its risky due to hazards like needles and harmful substances in the trash. Workers wear protective gear, and the environment isnt conducive for long hours. Automating this process proves advantageous. Our robots not only replace labor costs but also generate revenue. This leads to a return on investment in under two years for units like these. While humans might struggle with sorting a wide variety of items efficiently, AI doesnt have this limitation.

Furthermore, there are other costs that arent immediately obvious. Its challenging for a worker to keep multiple items in mind for sorting. Some data suggests that the average duration of employment for hand sorters is three to six weeks. The turnover can result in lost revenue, recruitment, training, and other associated costs. Automation proves invaluable in these contexts.

Joe Castagneri: Our biggest market is the United States primary sortation. Weve installed more than 300 units in our facilities and in retrofit facilities that are operated by customers as well. Most of those are in the United States. We do have a small presence in Canada, Japan, and the EU as well. So we are international. Same problems exist in different markets. The EU has more regulatory pressure for solutions, leading to stricter purity constraints around the goods that youre sorting.

Abate: And whats that range? Is it like 95%?

Joe Castagneri: When we make bales of materials, big cubes of plastic, and sell them to a plastics reclaimer, the quality of that bale depends on if they hit the yield they were hoping for. If they didnt hit the yield, then the bale was considered bad. Until now, we havent really known the exact contents of the bale. We assume its about this pure, but thats a rough estimate. A rule of thumb has been for plastic bales, you want them to be 85% pure. For aluminum cans, you want them to be more like 97% pure. The reality is that recycling has historically been about doing the best you can, providing feedstocks to downstream processes and hoping they can work with the quality of material they receive. The EU is tightening regulations by requiring more recycling, even of low-quality plastics not often recycled in America.

Abate: So its not just about recycling more cans and bottles but also recycling more types of materials?

Joe Castagneri: Exactly, yes. You want to optimize both aspects.

Abate: But how can you start recycling more materials until you have the buyer side of the equation sorted? Like, is that sorted for them already? Do they already have customers lined up to buy these materials?

Joe Castagneri: Part of it is, and since there are several links in the chain, whos the buyer for you?

Abate: From what I understand, the buyer is the entity purchasing the packed material from the MRF.

Joe Castagneri: Absolutely. The buyer side would benefit greatly from a transparent market where different commodities are priced based on their quality. Right now, the market operates on a contract-by-contract basis. Buyers in specific regions tend to buy from known partners who have historically provided good quality material. If we had a more structured marketplace, more entrants could participate, identifying valuable commodities and accessing them without needing a web of personal relationships.

Abate: Do you even have a reliable way of determining the yield of each bale?

Joe Castagneri: It depends on the process. For processes like aluminum can recycling, you can weigh the bale before and after processing to get a mass yield. We typically have decent yield numbers, but they cover the entire operation. With the addition of AI analytics, you gain deeper insights, such as the efficiency of a particular unit or piece of equipment.

Abate: Thats intriguing. It seems like a significant differentiator for places without this system. One of the biggest challenges in waste management appears to be the lack of access to quality data.

Joe Castagneri: Yes. The data is invaluable to us. We can adjust the AI to keep up with changes in the waste stream. Moreover, in our facilities equipped with multiple vision systems, the key idea is using perception to drive efficiency. This approach results in better yields and the ability to recycle a wider variety of materials.

Abate: If you were to envision a smaller version of this system for a minor municipality, what would it resemble?

Joe Castagneri: Imagine a shipping container with a conveyor belt. Items are sorted using a pneumatic-based optical sorter. Its a simple setup that could be used temporarily, like at music festivals. For rural communities, you might need something between that and a full-scale recycling facility.

Abate: So, in essence, its an operation without human intervention, other than someone loading the waste?

Joe Castagneri: Yes. Someone loads, removes, and configures.

Abate: Fantastic. Lets go take a look.

Joe Castagneri: Certainly.

transcript

tags: Actuation, c-Industrial-Automation, cx-Industrial-Automation, Industrial Automation, interview, podcast, Robotics technology, startup

Abate De Mey Podcast Leader and Robotics Founder

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Meet the Undergraduate: Malik Francis, School of Engineering … – University of Connecticut

Malik Francis 24 (ENG), has taken full advantage of the research and professional opportunities UConn has to offer from researching machine learning, to developing a sustainable energy project for UConn Storrs, to interning for Raytheon Technologies.

Francis, a computer engineering major, has been doing research for the past two years.

As a CAPS Research Apprentice, within the Center for Access and Postsecondary Success, Francis was paired with Farhad Imani, Assistant Professor in the Department of Mechanical Engineering, whose interests include machine learning, quality, and reliability improvement with applications in advanced manufacturing.

The selective CAPS Research Apprenticeship Program pairs first-generation college students in STEM majors with faculty researchers to gain first-hand research experience and learning the foundations of academic writing, graduate school applications, and seeking summer internships.

Renee Trueman of the CAPS Research office pairs you with a professor and youre able to get right into the environment you requested, Francis says. You are able to choose from a great collection of professors on the UConn campus, studying in a diverse spectrum of fields.

Additive manufacturing is 3-D printing physical objects with metals instead of plastics, Francis explains. Francis worked with Imani to research and develop machine learning algorithms to detect defects in metal objects.

Francis was first introduced to machine learning through a friend. His conversations with his friend and later experience with Imani showed Francis the potential of machine learning to address real-world problems, further solidifying his interest in pursuing machine learning engineering.

It was a great fit for me at the moment, and I was eager to learn more, Francis says. And, through working with Dr. Imanis expertise and passion for pushing boundaries showed me how machine learning can transform the future.

Francis was also selected as a 2022-23 CAPS Research Scholar, where he gained invaluable hands-on experience continuing his project with Imani, mentorship, as well as professional development and financial and cultural literacy with his CAPS Research cohort.

The CAPS Research office offers the Apprentice opportunity as well as CAPS Research Scholar and McNair Scholar. As a Scholar, mentorship and research guidance continue for all semesters until graduation alongside step-by-step assistance with graduate school applications and funding to present at research conferences.

I think it was a great experience considering all of the technical skills you develop and being able to network with students and professors within your major, Francis says.

Francis is now working on a project for the Clean Energy and Sustainability Innovation Program at UConn. Francis and his teammates developed a plan for UConn Storrs to integrate fuel cells with UConns co-generation plant to create a more sustainable environment on the main campus. Fuel cells convert the energy from a chemical reaction into electricity with lower carbon emissions.

Were basically trying to integrate fuel cell technologies onto the UConn main campus, in order to meet or exceed the rising energy demands while lowering our carbon emissions, Francis says.

Over the past summer, and into the fall semester, Francis has interned with Raytheon Technologies Collins Aerospace as a data science intern. Francis has helped develop machine learning algorithms to address problems like aircraft maintenance with predictive analytics and machine learning methods.

Francis, who is originally from Jamaica, has also been a part of ScHOLA2RS House, a learning community for Black men. Being part of ScHOLA2RS House served as Francis introduction to research as it was through this learning community that he learned about the programs offered through the CAPS Research office and applied to be an Apprentice and then a Scholar.

That was the main reason I even discovered research, Francis says. I feel like without them I wouldnt have come this far.

After graduation, Francis plans to work in industry as a machine learning engineer, with a potential future continuing his research in graduate school.

Francis says the opportunities to connect with companies through UConn career fairs as well as ScHOLA2RS House events have prepared him to start a career after graduation.

Through the research experiences and also the ability to connect with different companies in a professional setting, I feel like UConns done a great job, Francis says. I think UConn provides you with a great amount of preparation for an industry and research position. I feel like this is the ideal school for you, as long as you are motivated and take advantage of opportunities.

October is the Month of Discovery, when undergraduates are introduced to the wealth of research and innovation opportunities at UConn. This month, enjoy profiles of outstanding undergraduate researchers on UConn Today, attend afull slate of programmingon campus and online, and register forDiscovery Questto launch your undergraduate experience to new heights.

Follow UConn Research onTwitter&LinkedIn.

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Meet the Undergraduate: Malik Francis, School of Engineering ... - University of Connecticut

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Rewiring the Brain: The Neural Code of Traumatic Memories – Neuroscience News

Summary: Unveiling the neurological enigma of traumatic memory formation, researchers harnessed innovative optical and machine-learning methodologies to decode the brains neuronal networks engaged during trauma memory creation.

The team identified a neural population encoding fear memory, revealing the synchronous activation and crucial role of the dorsal part of the medial prefrontal cortex (dmPFC) in associative fear memory retrieval in mice.

Groundbreaking analytical approaches, including the elastic net machine-learning algorithm, pinpointed specific neurons and their functional connectivity within the spatial and functional fear-memory neural network.

This pivotal study not only substantiates the principle that memories strengthen through enhanced neural connections but also pioneers the melding of optics and machine learning to elucidate the intricate dynamics of neural networks.

Key Facts:

Source: NINS

Scientists have long speculated about the physical changes that occur in the brain when a new memory is formed. Now, research from the National Institute for Physiological Sciences (NIPS) has shed light on this intriguing neurological mystery.

In a study recently published inNature Communications,the research team has succeeded in detecting the brain neuronal networks involved in trauma memory by using a novel method that combines optical and machine-learning-based approaches, capturing the complex changes that occur during memory formation and uncovering the mechanisms by which trauma memories are created.

Animals learn to adapt to changing environments for survival. Associative learning, which includes classical conditioning, is one of the simplest types of learning and has been studied intensively over the past century.

During the last two decades, technical developments in molecular, genetic, and optogenetic methods have made it possible to identify brain regions and specific populations of neurons that control the formation and retrieval of new associative memories. For instance, the dorsal part of the medial prefrontal cortex (dmPFC) is critical for the retrieval of associative fear memory in rodents.

However, the way in which the neurons in this region encode and retrieve associative memory is not well understood, which the research team aimed to address.

The dmPFC shows specific neural activation and synchrony during fear-memory retrieval and evoked fear responses, such as freezing and heart rate deceleration, explains lead author Masakazu Agetsuma.

Artificial silencing of the dmPFC in mice suppressed fear responses, indicating that this region is required to recall associative fear-memory. Because it is connected with brain systems implicated in learning and associated psychiatric diseases, we wanted to explore how changes in the dmPFC specifically regulate new associative memory information.

The research team used longitudinal two-photon imaging and various computational neuroscience techniques to determine how neural activity changes in the mouse prefrontal cortex after learning in a fear-conditioning paradigm.

Prefrontal neurons behave in a highly complex manner, and each neuron responds to various sensory and motor events. To address this complexity, the research team developed a new analytical method based on the elastic net, a machine-learning algorithm, to identify which specific neurons encode fear memory.

They further analyzed the spatial arrangement and functional connectivity of the neurons using graphical modeling.

We successfully detected a neural population that encodes fear memory, says Agetsuma. Our analyses showed us that fear conditioning induced the formation of a fear-memory neural network with hub neurons that functionally connected the memory neurons.

Importantly, the researchers uncovered direct evidence that associative memory formation was accompanied by a novel associative connection between originally distinct networks, i.e., the conditioned stimulus (CS, e.g., tone) network and the unconditioned stimulus (US, e.g., fearful experience) network.

We propose that this newly discovered connection might facilitate information processing by triggering a fear response (CR) to a CS (i.e., a neural network for CS-to-CR transformation).

Memories have long been thought to be formed by the enhancement of neural connections, which are strengthened by the repeated activation of groups of neurons. The findings of the present study, which were based on both real-life observations and model-based analysis, support this.

Furthermore, the study demonstrates how combined methods (optics and machine learning) can be used to visualize the dynamics of neural networks in great detail. These techniques could be used to uncover additional information about the neurological changes associated with learning and memory.

Author: Hayao KIMURASource: NINSContact: Hayao KIMURA NINSImage: The image is credited to Neuroscience News

Original Research: Open access.Activity-dependent organization of prefrontal hub-networks for associative learning and signal transformation by Masakazu Agetsuma et al. Nature Communications

Abstract

Activity-dependent organization of prefrontal hub-networks for associative learning and signal transformation

Associative learning is crucial for adapting to environmental changes. Interactions among neuronal populations involving the dorso-medial prefrontal cortex (dmPFC) are proposed to regulate associative learning, but how these neuronal populations store and process information about the association remains unclear.

Here we developed a pipeline for longitudinal two-photon imaging and computational dissection of neural population activities in male mouse dmPFC during fear-conditioning procedures, enabling us to detect learning-dependent changes in the dmPFC network topology.

Using regularized regression methods and graphical modeling, we found that fear conditioning drove dmPFC reorganization to generate a neuronal ensemble encoding conditioned responses (CR) characterized by enhanced internal coactivity, functional connectivity, and association with conditioned stimuli (CS).

Importantly, neurons strongly responding to unconditioned stimuli during conditioning subsequently became hubs of this novel associative network for the CS-to-CR transformation.

Altogether, we demonstrate learning-dependent dynamic modulation of population coding structured on the activity-dependent formation of the hub network within the dmPFC.

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Rewiring the Brain: The Neural Code of Traumatic Memories - Neuroscience News

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