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Transforming Data Science With NVIDIA RTX PRO 6000 Blackwell Workstation Edition

2026-03-23 21:00:04



This is a sponsored article brought to you by PNY Technologies.

In today’s data-driven world, data scientists face mounting challenges in preparing, scaling, and processing massive datasets. Traditional CPU-based systems are no longer sufficient to meet the demands of modern AI and analytics workflows. NVIDIA RTX PROTM 6000 Blackwell Workstation Edition offers a transformative solution, delivering accelerated computing performance and seamless integration into enterprise environments.

Key Challenges for Data Science

  • Data Preparation: Data preparation is a complex, time-consuming process that takes most of a data scientist’s time.
  • Scaling: Volume of data is growing at a rapid pace. Data scientists may resort to downsampling datasets to make large datasets more manageable, leading to suboptimal results.
  • Hardware: Demand for accelerated AI hardware for data centers and cloud service providers (CSPs) is exceeding supply. Current desktop computing resources may not be suitable for data science workflows.

Benefits of RTX PRO-Powered AI Workstations

NVIDIA RTX PRO 6000 Blackwell Workstation Edition delivers ultimate acceleration for data science and AI workflows. These powerful and robust workstations enable real-time rendering, rapid prototyping, and seamless collaboration. With support for up to four NVIDIA RTX PRO 6000 Blackwell Max-Q Workstation Edition GPUs, users can achieve data center-level performance right at their desk, making even the most demanding tasks manageable.

PNY is redefining professional computing with the ‪@NVIDIA‬ RTX PRO 6000 Blackwell Workstation Edition, the most powerful desktop GPU ever built. Engineered for unmatched compute power, massive memory capacity, and breakthrough performance, this cutting-edge solution delivers a quantum leap forward in workflow efficiency, enabling professionals to tackle the most demanding applications with ease.PNY

NVIDIA RTX PRO 6000 Blackwell Workstation Edition empowers data scientists to handle massive datasets, perform advanced visualizations, and support multi-user environments without compromise. It’s ideal for organizations scaling up their analytics or running complex models. NVIDIA RTX PRO 6000 Blackwell Workstation Edition is optimized for AI workflows, leveraging the NVIDIA AI software stack, including CUDA-X, and NVIDIA Enterprise software. These platforms enable zero-code-change acceleration for Python-based workflows and support over 100 AI-powered applications, streamlining everything from data preparation to model deployment.

Finally, NVIDIA RTX PRO 6000 Blackwell Workstation Edition offers significant advantages in security and cost control. By offloading compute from the data center and reducing reliance on cloud resources, organizations can lower expenses and keep sensitive data on-premises for enhanced protection.

Accelerate Every Step of Your Workflow

NVIDIA RTX PRO 6000 Blackwell Workstation Edition is designed to transform the entire data science pipeline, delivering end-to-end acceleration from data preparation to model deployment. With NVIDIA CUDA-X open-source data science cuDF library and other GPU-accelerated libraries, data scientists can process massive datasets at lightning speed, often achieving up to 50X faster performance compared to traditional CPU-based tools. This means tasks like cleaning data, managing missing values, and engineering features can be completed in seconds, not hours, allowing teams to focus on extracting insights and building better models.

NVIDIA RTX PRO 6000 Blackwell Workstation Edition is designed to transform the entire data science pipeline, delivering end-to-end acceleration from data preparation to model deployment

Exploratory data analysis is elevated with advanced analytics and interactive visualizations, powered by NVIDIA CUDA-X and PyData libraries. These tools enable users to create expansive, responsive visualizations that enhance understanding and support critical decision-making. When it comes to model training, GPU-accelerated XGBoost slashes training times from weeks to minutes, enabling rapid iteration and faster time-to-market AI solutions.

NVIDIA RTX PRO 6000 Blackwell Workstation Edition streamlines collaboration and scalability. With NVIDIA AI Workbench, teams can set up projects, develop, and collaborate seamlessly across desktops, cloud platforms, and data centers. The unified software stack ensures compatibility and robustness, while enterprise-grade hardware maximizes uptime and reliability for demanding workflows.

By integrating these advanced capabilities, NVIDIA RTX PRO 6000 Blackwell Workstation Edition empowers data scientists to overcome bottlenecks, boost productivity, and drive innovation, making them an essential foundation for modern, enterprise-ready AI development.

Performance Benchmarks

NVIDIA’s cuDF library offers zero-code change acceleration for pandas, delivering up to 50X performance gains. For example, a join operation that takes nearly 5 minutes on CPU completes in just 14 seconds on GPU. Advanced group by operations drop from almost 4 minutes to just 4 seconds.

Enterprise-Ready Solutions from PNY

Black PNY logo with stylized uppercase letters on a transparent background.

Available from leading OEM manufacturers, NVIDIA RTX PRO 6000 Blackwell Workstation Edition Series GPUs are specifically engineered to meet the rigorous demands of enterprise environments. These systems incorporate NVIDIA Connect-X networking, now available at PNY and a comprehensive suite of deployment and support tools, ensuring seamless integration with existing IT infrastructure.

Designed for scalability, the latest generation of workstations can tackle complex AI development workflows at scale for training, development, or inferencing. Enterprise-grade hardware maximizes uptime and reliability.

To learn more about NVIDIA RTX PRO™ Blackwell solutions, visit: NVIDIA RTX PRO Blackwell | PNY Pro | pny.com or email [email protected]

Why Thermal Metrology Must Evolve for Next-Generation Semiconductors

2026-03-23 18:00:04



An in-depth examination of how rising power density, 3D integration, and novel materials are outpacing legacy thermal measurement — and what advanced metrology must deliver.

What Attendees will Learn

  1. Why heat is now the dominant constraint on semiconductor scaling — Explore how heterogeneous integration, 3D stacking, and AI-driven power density have shifted the primary bottleneck from lithography to thermal management, with heat flux projections exceeding 1,000 W/cm² for next-generation accelerators.
  2. How extreme material properties are redefining thermal design requirements —Understand the measurement challenges posed by nanoscale thin films where bulk assumptions fail, engineered ultra-high-conductivity materials (diamond, BAs, BNNTs), and devices operating above 200 °C in wide-band gap systems.
  3. Why interfaces and buried layers now govern reliability — Examine how thermal boundary resistance at bonded interfaces, TIM layers, and dielectric stacks has become a first-order reliability accelerator.
  4. What a thermal-first design workflow looks like in practice — Learn how measured, scale-appropriate thermal properties can be integrated early in the design cycle to calibrate models, reduce uncertainty, and prevent costly late-stage failures across advanced packaging and 3D architectures.

What Happens If AI Makes Things Too Easy for Us?

2026-03-22 21:00:04



Most people who regularly use AI tools would say they’re making their lives easier. The technology promises to streamline and take over tasks both professionally and personally—whether that’s summarizing documents, drafting deliverables, generating code, or even offering emotional support. But researchers are concerned AI is making some tasks too easy, and that this will come with unexpected costs.

In a commentary titled Against Frictionless AI, published in Communications Psychology on 24 February, psychologists from the University of Toronto discuss what might be lost when AI removes too much effort from human activities. Their argument centers on the idea that friction—difficulty, struggle, and even discomfort—plays an important role in learning, motivation, and meaning. Psychological research has long shown that effortful engagement can deepen understanding and strengthen memory, sometimes described as “desirable difficulties.”

The authors worry that AI systems capable of instantly producing polished answers or highly responsive conversation may bypass these processes of learning and motivation. By prioritizing outcomes over effort, AI could weaken the experiences that help people develop skills, build relationships, and find meaning in their work.

IEEE Spectrum spoke with the paper’s lead author, Emily Zohar, an experimental psychology Ph.D. student, about why she and her coauthors (psychologists Paul Bloom and Michael Inzlicht) argue that friction matters—and what a more human-centered approach to AI design could look like.

When you say “friction,” what do you mean, from both a cognitive and an interpersonal standpoint?

Zohar: We define friction as any difficulty encountered during goal pursuit. In the context of work, it involves mental effort—rumination and persistence, staying on a problem for some time, and this helps solidify the idea and the creative process.

In relationships, friction involves disagreement, compromise, misunderstanding, a back and forth that is natural where you don’t always see eye to eye, and it helps you broaden your horizons. Even the feeling of loneliness is important. It motivates you to find social interactions. So having these negative feelings and difficulty is important in the social context.

Given that definition, what do you mean by “frictionless” AI?

Zohar: Frictionless AI refers to the excessive removal of effort from cognitive and social tasks. With AI, as we typically use it, it’s really easy to go from ideation right to the end product. You ask AI to solve something with one prompt, and it completes the whole thing. This is a problem because it takes away the intermediate steps that really drive motivation and learning, and it prioritizes outcome over process. Rather than working through the steps, AI does that meaningful work for you.

There’s a lot of research showing work products are better with AI. That makes sense, it has all this knowledge, but it does worry us as it may be eroding something essential that will have long-term consequences. If you’re faced with the same problem and AI is removed, you don’t have the required knowledge to know how to face the problem next time.

You argue that removing friction can harm learning and relationships. What role do effort and struggle play in human development?

Zohar: In learning, the term is “desirable difficulties.” It’s the idea of effort and work, not just any effort but manageable effort. Facing problems that you can overcome, but you have to work at them a bit, that’s the key idea of friction. We don’t want you to face insurmountable problems. We want you to work hard, but still be able to overcome it. This helps you really digest information and learn from it.

In interpersonal relationships, you have to face some difficulties to see other perspectives and learn from them, and learn to be accepting of others. If you’re used to an AI reinforcing all your ideas and being sycophantic, you’ll come into the real world and you won’t be used to seeing other ideas. You won’t know how to interact socially because you’ll expect people to always be on your side and agree with you. You won’t learn that life doesn’t always go exactly how you expect it to, and conversations don’t always go the way you want them to.

AI’s Impact on Creative Processes

A lot of technologies have historically aimed to reduce effort: calculators, washing machines, spellcheck. What’s different about AI?

Zohar: Past technologies have mostly focused on reducing physical effort. We don’t have to go down to the lake to wash our laundry anymore. [Past technologies] took away the mundane tasks that weren’t driving our learning and growth, they were just adding unneeded obstacles and taking away time from more important tasks.

But AI is taking away effort from creative and cognitive processes that drive meaning, motivation, and learning. That’s a key difference, because it’s not taking away friction from tasks that don’t serve us. It’s taking away friction from experiences that are really important and integral to our development.

Are there contexts where AI is already removing beneficial friction? How might the impacts of reduced friction show up over time?

Zohar: One clear example is writing. People increasingly rely on AI to draft everything from emails to essays, removing many instances of beneficial friction. Research shows that people trust responses less when they learn they were written by AI, judge AI-generated products as less creative and less valuable, and have greater difficulty remembering their own work products when they were produced with AI assistance. Outsourcing writing to AI strips away both social and cognitive friction.

Vibe coding is another good example. If you’re a programmer, coding is integral to what drives your meaning. People get meaning out of their work, and if you’re substituting that with AI, it could be detrimental. The negative impact of frictionless AI is that it takes away friction from things that are really important to who you are as a person, and your skills.

One area I worry about a lot is adolescents using AI in general. It’s a really important developmental period to learn and grow and find the path you’ll follow. So if you don’t have these effortful interactions with work and relationships that teach you how to think, this will have long-term detrimental impacts. They might not be able to think critically in the same way, because they never had to before. If they’re turning to AI for social relationships at such a young age, that could really erode important skills they should be learning at that age.

What is productive friction?

Zohar: Friction goes along a continuum. With too little friction, you’re not getting learning and motivation. Too much friction and the task becomes overwhelming. Productive friction falls right in the middle, where struggle leads to achievement. It’s effortful but possible, and it requires you to think critically and work on a problem for some time or face some difficulty in the process.

An example we used in the paper is the difference between taking a chairlift and hiking up a mountain. They both get to the top, but with the chairlift, you don’t get any growth benefits, while the hiker’s climb involves difficulties and a sense of achievement. It becomes much more of an experience and a learning opportunity versus the person who just went up the chairlift effortlessly.

Do you envision AI that sometimes deliberately slows people down or asks them to do part of the work themselves?

Zohar: It’s important in behavioral science to think about the default option, because people don’t usually change their default. So right now, the default in AI is to give you your answer and probe you to keep going down the rabbit hole. But I think we could think about AI in a different way. Maybe we can make the default more constructive. Instead of just jumping to the answer, it’s more of a process model where it helps you think about the problem and teaches you along the way, so it’s more collaborative rather than a one-stop shop for the answer.

How might users of these systems and the companies developing them feel about such a design shift?

Zohar: For the makers of these systems, the biggest concern is the pushback. People are used to going in and just getting the answer, and they might be really resistant to a design that makes them work more for it. But it might feed more engagement, because you have to go back and forth and find the answer together.

Ultimately I think it has to come from the companies making these models, if they think [a more friction-full design] would help people. Friction-full AI is more of a long-term product. It’s hard to say if that would motivate companies to change their models to include moderate friction. But in the long term, I think this would be beneficial.

Video Friday: Humanoid Learns Tennis Skills Playing Humans

2026-03-22 00:30:04



Video Friday is your weekly selection of awesome robotics videos, collected by your friends at IEEE Spectrum robotics. We also post a weekly calendar of upcoming robotics events for the next few months. Please send us your events for inclusion.

ICRA 2026: 1–5 June 2026, VIENNA
Summer School on Multi-Robot Systems: 29 July–4 August 2026, PRAGUE

Enjoy today’s videos!

Human athletes demonstrate versatile and highly dynamic tennis skills to successfully conduct competitive rallies with a high-speed tennis ball. However, reproducing such behaviors on humanoid robots is difficult, partially due to the lack of perfect humanoid action data or human kinematic motion data in tennis scenarios as reference. In this work, we propose LATENT, a system that Learns Athletic humanoid TEnnis skills from imperfect human motioN daTa.

[ LATENT ]

A beautifully designed robot inspired by Strandbeests.

[ Cranfield University ]

We believe we’re the first robotics company to demonstrate a robot peeling an apple with dual dexterous human-like hands. This breakthrough closes a key gap in robotics, achieving bimanual, contact-rich manipulation and moving far beyond the limits of simple grippers.

Today’s AI models (VLMs) are excellent at perception but struggle with action. Controlling high-degree-of-freedom hands for tasks like this is incredibly complex, and precise finger-level teleoperation is nearly impossible for humans. Our first step was a shared-autonomy system: rather than controlling every finger, the operator triggers pre-learned skills like a “rotate apple or tennis ball” primitive via a keyboard press or pedal. This makes scalable data collection and RL training possible.
How does the AI manage this? We created “MoDE-VLA” (Mixture of Dexterous Experts). It fuses vision, language, force, and touch data by using a team of specialist “experts,” making control in high-dimensional spaces stable and effective. The combination of these two innovations allows for seamless, contact-rich manipulation. The human provides high-level guidance, and the robot executes the complex in-hand coordination required.

[ Sharpa ]

Thanks, Alex!

It was great to see our name amongst the other “AI Native” companies during the NVIDIA GTC keynote. NVIDIA Isaac Lab helps us train reinforcement learning policies that enable the UMV to drive, jump, flip, and hop like a pro.

[ Robotics and AI Institute ]

This Finger-Tip Changer technology was jointly researched and developed through a collaboration between Tesollo and RoCogMan LaB at Hanyang University ERICA. The project integrates Tesollo’s practical robotic hand development experience with the lab’s expertise in robotic manipulation and gripper design.

I don’t know why more robots don’t do this. Also, those pointy fingertips are terrifying.

[ RoCogMan LaB ]

Here’s an upcoming ICRA paper from the Fluent Robotics Lab at the University of Michigan featuring an operational PR2! With functional batteries!!!

[ Fluent Robotics Lab ]

This video showcases the field tests and interaction capabilities of KAIST Humanoid v0.7, developed at the DRCD Lab featuring in-house actuators. The control policy was trained through deep reinforcement learning leveraging human demonstrations.

[ KAIST DRCD Lab ]

This needs to come in adult size.

[ DEEP Robotics ]

I did not know this, but apparently shoeboxes are really annoying to manipulate because if you grab them by the lid, they just open, so specialized hardware is required.

[ Nomagic ]

Thanks, Gilmarie!

This paper presents a method to recover quadrotor Unmanned Air Vehicles (UAVs) from a throw, when no control parameters are known before the throw.

[ MAVLab ]

Uh oh, robots can see glass doors now. We’re in trouble.

[ LimX Dynamics ]

This drone hugs trees

[ Stanford BDML ]

Electronic waste is one of the fastest-growing environmental problems in the world. As robotics and electronic systems become more widespread, their environmental footprint continues to increase. In this research, scientists developed a fully biodegradable soft robotic system that integrates electronic devices, sensors, and actuators, yet completely decomposes after use.

[ Nature ]

We developed a distributed algorithm that enables multiple aerial robots to flock together safely in complex environments, without explicit communication or prior knowledge of the surroundings, using only on-board sensors and computation. Our approach ensures collision avoidance, maintains proximity between robots, and handles uncertainties (tracking errors and sensor noise). Tested in simulations and real-world experiments with up to four drones in a dense forest, it proved robust and reliable.

[ RBL ]

The University of Pennsylvania’s 2025 President’s Sustainability Prize winner Piotr Lazarek has developed a system that uses satellite data to pinpoint inefficiencies in farmers’ fields, conducts real-time soil analysis with autonomous drones to understand why they occur, and generates precise fertilizer application maps. His startup Nirby aims to increase productivity in farm areas that are underperforming and reduce fertilizer in high-performing ones.

[ University of Pennsylvania ]

The production version of Atlas is a departure from the typical humanoid form factor, favoring industrial utility over human likeness. Intended for purposeful work in an industrial setting, Atlas has a form factor that signals its role as a machine rather than a companion or friendly assistant. Join two lead hardware engineers and our head of industrial design for a technical discussion of how key product requirements, ranging from passive thermal management to a modular architecture, dictated a bold new vision for a humanoid.

[ Boston Dynamics ]

Dr. Christian Hubicki gives a talk exploring the common themes of modern robotics research and his time on the reality competition show, Survivor.

[ Optimal Robotics Lab ]

AI Aims for Autonomous Wheelchair Navigation

2026-03-21 02:49:12



Wheelchair users with severe disabilities can often navigate tight spaces better than most robotic systems can. A wave of new smart-wheelchair research, including findings presented in Anaheim, Calif., earlier this month, is now testing whether AI-powered systems can, or should, fully close this gap.

Christian Mandel—senior researcher at the German Research Center for Artificial Intelligence (DFKI) in Bremen, Germany—co-led a research team together with his colleague Serge Autexier that developed prototype sensor-equipped electric wheelchairs designed to navigate a roomful of potential obstacles. The researchers also tested a new safety system that integrated sensor data from the wheelchair and from sensors in the room, including from drone-based color and depth cameras.

Mandel says the team’s smart wheelchairs were both semiautonomous and autonomous.

“Semiautonomous is the shared control system where the person sitting in the wheelchair uses the joystick to drive,” Mandel says. “Fully autonomous is controlled by natural-language input. You say, ‘Please drive me to the coffee machine.’ ”

Close-up of a thin rectangular camera installed underneath an electric wheelchair's joystick controller.This is a close-up of the wheelchair’s joystick and camera.DFKI

The researchers conducted experiments (part of a larger project called the Reliable and Explainable Swarm Intelligence for People With Reduced Mobility, or REXASI-PRO) using two identical smart wheelchairs that each contained two lidars, a 3D camera, odometers, user interfaces, and an embedded computer.

In contrast to semiautonomous mode, where the participant controls the wheelchair with a joystick, in autonomous mode, control involves the open-source ROS2 Nav2 navigation system using natural-language input. The wheelchairs also used simultaneous localization and mapping (SLAM) maps and local obstacle-avoidance motion controllers.

One scenario that Mandel and his team tested involved the user pressing a key on the wheelchair’s human-machine interface, speaking a command, then confirming or rejecting the instruction via that same interface. Once the user confirmed the command, the mobility device guided the user along a path to the destination, while sensors attempted to detect obstacles in the way and adjust the mobility device accordingly to avoid them.

When Are Smart Wheelchairs Bad Value?

According to Pooja Viswanathan, CEO & founder of the Toronto-based Braze Mobility, research in the field of mobile assistive technology should also prioritize keeping these devices readily available to everyday consumers.

“Cost remains a major barrier,” she says. “Funding systems are often not designed to support advanced add-on intelligence unless there is very clear evidence of value and safety. Reliability is another barrier. A smart wheelchair has to work not just in ideal conditions, but in the messy, variable conditions of daily life. And there is also the human factors dimension. Users have different cognitive, motor, sensory, and environmental needs, so one solution rarely fits all.”

For its part, Braze makes blind-spot sensors for electric wheelchairs. The sensors detect obstacles in areas that can be difficult for a user to see. The sensors can also be added to any wheelchair to transform it into a smart wheelchair by providing multimodal alerts to the user. This approach attempts to support users rather than replace them.

According to Louise Devinge, a biomedical research engineer from IRISA (Research Institute of Computer Science and Random Systems) in Rennes, France, the increased complexity of smart wheelchairs demands more sensing. And that requires careful management of communication and synchronization within the wheelchair’s system. “The more sensing, computation, and autonomy you add,” she says, “the harder it becomes to ensure robust performance across the full range of real-world environments that wheelchair users encounter.”

In the near term, in other words, the field’s biggest challenge is not about replacing the wheelchair user with AI smarts but rather about designing better partnerships between the user and the technology.

Rendering of an electric wheelchair moving towards a wall. The chair is divided into four ground-parallel quadrants that each represent a different safety zone where intersections with obstacles are checked. At the same height as these quadrants, are four lines on the wall that represent virtual laser scans.  This image shows data representations used by the 3D Driving Assistant. These include immutable sensor percepts such as laser scans and point clouds, as well as derived representations like the virtual laser scans and grid maps. Finally, the robot shape collection describes the wheelchair’s physical borders at different heights.DFKI

Where Will Smart Wheelchairs Go From Here?

Mandel says he expects to see smart wheelchairs ready for the mainstream marketplace within 10 years.

Viswanathan says the REXASI-PRO system, while out of reach of present-day smart wheelchair technologies, is important for the longer term. “It reflects the more ambitious end of the smart wheelchair spectrum,” she says. “Its strengths appear to lie in intelligent navigation, advanced sensing, and the broader effort to build a wheelchair that can interpret and respond to complex environments in a more autonomous way. From a research standpoint, that is exactly the kind of work that pushes the field forward. It also appears to take seriously the importance of trustworthy and explainable AI, which is essential in any mobility technology where safety, reliability, and user confidence are paramount.”

Mandel says he’s ultimately in pursuit of the inspiration that got him into this field years ago. As a young researcher, he says, he helped develop a smart wheelchair system controllable with a head joystick.

However, Mandel says he realized after many trials that the smart wheelchair system he was working on had a long way to go because, as he says, “at that point in time, I realized that even persons that had severe handicaps [traveling through] a narrow passage, they did very, very well.

“And then I realized, okay, there is this need for this technology, but never underestimate what [wheelchair users] can do without it.”

The DFKI researchers presented their work earlier this month at the CSUN Assistive Technology Conference in Anaheim, Calif.

This article was supported by the IEEE Foundation and a Jon C. Taenzer fellowship grant.

IEEE Partners With Academia to Create Microcredential Programs

2026-03-21 02:00:04



The rapid ascent of artificial intelligence and semiconductor manufacturing has created a paradox: Industries are booming yet they face a critical shortage of skilled workers. Demand for data center technicians, fabrication facility workers, and similar positions is growing. There aren’t enough candidates with the right skill sets to fill the in-demand jobs.

Although those technical roles are essential, they don’t always require a four-year degree—which has paved the way for skills-based microcredentials. By partnering with higher education institutions and training providers, industry leaders are helping to design targeted skills programs that quickly turn learners into job-ready technical professionals.

The new standard for skills validation

Because microcredentials are relatively new, consistency is key. Through its credentialing program, IEEE serves as a bridge between academia and industry. Developed and managed by IEEE Educational Activities, the program offers standardized credentials in collaboration with training organizations and universities seeking to provide skills-based qualifications outside formal degree programs. IEEE, as the world’s largest technical professional organization, has more than 30 years of experience offering industry-relevant credentials and expertise in global standardization.

IEEE is setting the benchmark for skills-based microcredentials by establishing a framework that includes assessment methods, qualifications for instructors and assessors, and criteria for skill levels.

A recent collaboration with the University of Southern California, in Los Angeles, for example, developed microcredentials for USC’s semiconductor cleanroom program. USC heads the CA Dreams microelectronics innovation hub.

“The IEEE framework allows us to rapidly prototype training programs and adapt on the fly in a way that building new university courses—much less degree programs—won’t allow.” —Adam Stieg

IEEE worked with USC to create standardized skills assessments and associated microcredentials so that industry hiring managers can recognize the newly developed skills. The microcredentials help people with or without four-year degrees join the semiconductor industry as cleanroom technicians or as engineers with cleanroom experience.

IEEE also has partnered with the California NanoSystems Institute at the University of California, Los Angeles, to create skills-based microcredentials for its cleanroom protocol and safety program.

Best practices for designing microcredentials

Based on IEEE’s work designing microcredentials with USC, UCLA, and other leading academic institutions, three best practices have emerged.

1. Align with industry needs before design.

Collaborate with industry prior to starting the design process. There isn’t a one-size-fits-all approach. Workforce needs vary based on industry sector, company size, and geography. Higher education institutions and training providers build relationships with companies and industry groups to create effective microcredential programs and methods of assessment.

2. Build for flexibility.

Traditional academic cycles can be slow, but technology moves fast. A flexible skills-based microcredentials framework allows programs to create or pivot as new breakthroughs occur.

“Setting up a credit-bearing course is not easy. And in a rapidly changing environment, you need to pivot quickly,” says Adam Stieg, research scientist and associate director at UCLA’s CNSI. “IEEE skills-based microcredentials are a flexible way to keep up our curriculum aligned with an evolving technology landscape.”

Stieg’s team worked with IEEE to build a framework to create microcredentials for its cleanroom protocol and safety program, ensuring it kept pace with the industry’s evolution.

“The IEEE framework allows us to rapidly prototype training programs and adapt on the fly,” he says, “in a way that building new university courses—much less degree programs—won’t allow.”

3. Implement a continuous-feedback loop.

Many of the technical roles companies are looking to fill in emerging fields such as AI, cybersecurity, and semiconductors are still being developed or are quickly evolving. The rapidly changing landscape requires continual communications and feedback among higher education, training providers, and industry.

“We struggle to have feedback loops through the education system to the industry and back again,” says Matt Francis, president and CEO of Ozark Integrated Circuits, in Fayetteville, Ark. Francis, who has served as IEEE Region 5 director, is an IEEE volunteer who supports workforce development for the semiconductor industry.

Creating consistent feedback loops is critical for generating consensus on the skills sets needed for microcredential programs, experts say, and it allows providers to update assessments as new tools and safety protocols enter the workplace.

“If we start thinking about having training frameworks used within companies that are essentially on some sort of standard and align with a microcredential, we can start to build consensus,” Francis says.

Getting started

Through its credentialing program, IEEE is helping higher education and industry work together to bridge the technical workforce skills gap. Contact its team to learn how IEEE skills-based microcredentials can help you fill your workforce pipeline.