EDGE AI POD

EDGE AI FOUNDATION

Discover the cutting-edge world of energy-efficient machine learning, edge AI, hardware accelerators, software algorithms, and real-world use cases with this podcast feed from all things in the world's largest EDGE AI community.  These are shows like EDGE AI Talks, EDGE AI Blueprints as well as EDGE AI FOUNDATION event talks on a range of research, product and business topics. Join us to stay informed and inspired!

  1. 8 uur geleden

    What If A Pair Of Glasses Could Read Intent?

    Imagine steering a game with nothing but a blink and a glance. That’s the spark behind our latest build: a noninvasive brain-computer interface that runs entirely on a tiny edge microcontroller, translating eye movements into reliable, real-time commands without a laptop or cloud. We start with the human why. Millions live with neurological conditions that constrain movement but preserve eye control—a narrow channel with huge potential. We compare the promises and trade-offs of invasive BCIs like Neuralink, BrainGate, and Synchron against accessible wearables from Emotiv, Muse, and OpenBCI. The big gap is obvious: people need precise, low-latency control without surgery, high cost, or a desktop tether. Our approach uses electrostatic charge sensing with a glasses-ready electrode layout at the nose bridge and a reference behind the ear, capturing strong ocular signals that are practical for daily wear. From there, we break down the full on-device pipeline. A high-pass filter removes drift, a 50 Hz notch kills power-line noise, and a low-pass smooths the signal so a smaller model can focus on meaningful features. A lightweight Z-score event detector stays always-on and wakes the classifier only when something happens, buffering a 300-sample window at 240 Hz across two channels. The classifier is a tiny 1D CNN—convolution, ReLU, pooling, softmax—clocking about 0.76 ms inference with roughly 18 KB flash and 6 KB RAM. With K-fold cross-validation on nine participants, we see around 90% accuracy for four classes: discard involuntary blinks, map voluntary blinks to “click,” and detect left and right glances. We showcase it with a playful demo: blink to jump over obstacles, glance right to change lanes and collect coins. Beyond the fun, the implications are serious—restoring agency with affordable hardware that works off-grid in real time. We close by outlining what’s next: integrating the sensors into everyday glasses, testing across more users and environments, and adding quick calibration for personalization. If accessible control matters to you—whether for assistive tech, gaming, or new hands-free interfaces—this is a glimpse of what near-future wearables can do. Enjoy the episode? Follow the show, share it with a friend, and leave a quick review to help more listeners discover these conversations. Send us Fan Mail Support the show Learn more about the EDGE AI FOUNDATION - edgeaifoundation.org

    15 min.
  2. 25 jun

    Got Fake Chips? Our AI Doesn't Fall For That

    Semiconductor counterfeiting has grown into a $200 billion annual problem threatening the integrity of global electronics supply chains. As both chip shortages and sophisticated counterfeiting techniques persist, traditional detection methods fall short—requiring complex setups, hardware modifications, or extensive data labeling. Two machine learning engineers from Analog Devices' advanced R&D team unveil their elegant solution: an unsupervised learning approach that captures the unique "fingerprints" of authentic chips by analyzing power signatures during memory operations. What makes their method revolutionary is its lightweight footprint (under 60KB) and ability to run directly on standard Cortex-M4 microcontrollers at the edge, requiring no cloud connectivity or specialized equipment. The team shares their methodology for creating a robust dataset of 1,000 secure authenticator chips and developing a convolutional autoencoder architecture that achieved 100% accuracy in distinguishing authentic components from close counterparts. Their model learns the normal reconstruction patterns of legitimate chips, then flags anomalies when encountering counterfeits with distinctly different power signatures. Beyond secure authenticators, this approach proves universally applicable to any semiconductor from which analog fingerprints can be collected. Rather than replacing traditional cryptographic methods, it serves as an additional security layer that remains effective even when encryption keys might be compromised through side-channel attacks. Ready to strengthen your supply chain against increasingly sophisticated counterfeits? Discover how this scalable, software-based solution could be integrated with your existing security infrastructure to provide an additional layer of protection for critical semiconductor components. Send us Fan Mail Support the show Learn more about the EDGE AI FOUNDATION - edgeaifoundation.org

    10 min.
  3. 18 jun

    Smarter AI, Faster Hardware

    Your phone, watch, and even your fridge want real-time intelligence—but power and latency won’t tolerate bloated models or generic compute. We walk through a practical path from Python to custom hardware using high-level synthesis, then invite you to prove it in our Efficient Inferencing Hackathon. With a ready-to-run RISC‑V Rocket Core baseline for MNIST, a full Siemens EDA toolchain, and on-demand training, you’ll learn how to cut latency and power while protecting accuracy through precision mapping, parallelism, and smarter dataflow. We start by mapping the compute landscape—CPUs for flexibility, GPUs for throughput, TPUs/NPUs for tensors, and custom FPGA/ASIC designs for peak power-performance-area. From there, we get tactical: use quantization to right-size bit-widths; apply loop pipelining and unrolling to unlock throughput; partition memories and stream between layers to eliminate round-trips; and iterate quickly with HLS directives instead of rewriting RTL. You’ll see how a baseline inference in the millisecond range can be driven far lower with disciplined co-design, and how Catapult HLS, Questa, and PowerPro provide the feedback loop—latency, area, and power—to make confident trade-offs. Participants receive a virtual machine, C kernels for convolution and dense layers, and a step-by-step path from Keras to synthesizable RTL. The goal is simple and demanding: deliver the fastest MNIST implementation that meets accuracy, area, and energy targets. Along the way, the HLS Academy community offers guidance from experts and peers, and winners will be announced at the Edge AI Foundation event in Taipei, with prizes including a 3D printer, an FPGA board, and Bose earbuds. Ready to turn models into efficient silicon? Join the workshop series, claim your VM via the QR code at hls.academy, and use the promo code with two underscores to unlock full access. If this resonates, subscribe, share with a teammate who ships edge AI, and leave a review to help others find the show. Send us Fan Mail Support the show Learn more about the EDGE AI FOUNDATION - edgeaifoundation.org

    12 min.
  4. 11 jun

    Village OS: AI For Sustainable Living

    What if a neighborhood could think, heal, and feed itself? We sit down with James Ehrlich of Stanford to unpack Village OS, a generative AI platform that designs resilient communities by starting with a simple question: what does the land want? From the urban edge of Riyadh to peri-urban sites worldwide, James shows how geospatial data, climate histories, hydrology, and cultural patterns come together to shape housing, farms, energy, and mobility as one living system. We trace James’s path from early game design and digital effects into the world of eco-villages and permaculture, where taste, health, and connection inspired a research agenda: use technology to serve nature and people. The demo moves from contour maps and fluid dynamics to soil restoration, aquaponics, and agrovoltaics that grow shade crops under solar. Real-time modeling toggles apartments, townhomes, and single-family mixes while projecting costs, returns, and service loads for water, energy, and waste. The punchline is elegant: at the neighborhood scale, waste becomes an asset, powering heat, cooling, and purification while closing loops for food and energy security. Funding and measurement get equal attention. Village OS projects ESG and SDG outcomes and carbon sequestration across decades, offering a transparent view for sovereign wealth funds, pensions, and institutional capital. After groundbreak, the operating layer shifts to edge AI: tinyML sensors and small language models form a digital mycelial network with low latency, low energy, and high autonomy, connected by a thin, privacy-safe cloud channel for cross-site learning. It’s resilience defined by human well-being—lower stress, safer streets, access to fresh food, and spaces for elders and children—backed by systems that can ride out disruption. If you care about sustainable housing, regenerative agriculture, microgrids, and the future of edge AI, this conversation offers a practical, hopeful blueprint. Subscribe, share with a friend who’s into systems thinking, and leave a review with the one feature you’d want in your ideal resilient neighborhood. Send us Fan Mail Support the show Learn more about the EDGE AI FOUNDATION - edgeaifoundation.org

    1 u 1 m
  5. 4 jun

    When Edge AI Meets Hearing Loss, Access Gets Real

    Crowded cafés, clinking plates, and echoey halls make conversations exhausting. We set out to change that by fitting real deep learning into an ear-sized device and proving it can separate speech from noise with almost no delay or battery hit. The result isn’t louder sound; it’s clearer lives and less fatigue. We walk through the full Clara enhancement path: transforming raw mic input into log-mel features, stabilizing for gain shifts, and feeding a 40-layer temporal convolutional recurrent network that predicts a mask to preserve voice and suppress noise. Then we show how a light touch of the original signal brings back space and warmth, avoiding the hollow, underwater audio that turns people off. Along the way, we tackle painful transients—the cutlery and clatter that spike hearing aids—and explain how wide dynamic range compression keeps everything comfortable and intelligible. The heart of the story is edge AI done right. Our SPU001 chip uses unstructured sparsity to skip zero multiplies in hardware, shrinking memory needs and power draw by orders of magnitude. That lets a pruned model with effective 10 MB scale run from just one MB of SRAM while holding algorithmic latency near eight milliseconds and total path time under ten. Metrics back it up: higher scale-invariant signal-to-distortion ratios, better hearing aid speech quality scores, and strong user reports. A rapid partnership with New Sound brought this to market in about three months, and audiologists on a noisy show floor heard the difference immediately. If you care about hearing tech, edge computing, or just making conversations effortless again, this one is for you. Hear how small silicon and smart modeling turn “AI” from a buzzword into a daily benefit. Subscribe for more deep dives on practical edge AI, share with someone who struggles in noisy rooms, and leave a review with your toughest audio environment—we might feature it next. Send us Fan Mail Support the show Learn more about the EDGE AI FOUNDATION - edgeaifoundation.org

    15 min.
  6. 28 mei

    Cows Chewed Our Sensors And Still Taught Us About Edge AI

    A failed 5G rollout in a legendary forest forced us to rethink everything we knew about AI infrastructure. Instead of pushing data to distant servers, we turned wearables, sensors, and tiny controllers into a cooperative network that can sense, decide, and act without the cloud. The result is a hands-on tour of decentralized AI: how to split models across devices, why feature fusion matters more than raw horsepower, and what it takes to make ad hoc networks reliable in the wild. We walk through practical patterns for collaboration at the edge, from complementary sensing in search-and-rescue to pooled compute in crowded venues. You’ll hear how we orchestrate parallel processing on microcontrollers, assign inference to one core and radio handling to another, and compress features to keep bandwidth low. We also dig into continual learning and federated averaging, outlining strategies to adapt models locally while protecting privacy and avoiding catastrophic forgetting. Along the way, we share early results from agriculture and public safety pilots, plus the gritty realities of hardware constraints, scarce datasets, and the challenge of testing at scale. If you’re curious about TinyML, edge AI, and how generative models might run collaboratively across many small devices, this conversation lays out a practical path forward. You’ll come away with a clearer picture of when decentralization beats centralized cloud systems, which protocols survive in noisy environments, and why the future of AI may look less like a monolith and more like a swarm. Subscribe, share this episode with a builder who loves constraints, and leave a review to tell us where you’d deploy a swarm of tiny models next. Send us Fan Mail Support the show Learn more about the EDGE AI FOUNDATION - edgeaifoundation.org

    22 min.
  7. 21 mei

    How AI Compensates for PID Controller Limitations in Electric Vehicles with STMicroelectronics

    How can artificial intelligence transform electric vehicle performance? Discover the groundbreaking application of neural networks to motor control challenges that even Formula 1 legend Michael Schumacher helped identify. The automotive industry's electrification demands increasingly sophisticated silicon solutions, particularly for traction inverters controlling electric motors. Traditional control systems face a fundamental challenge: they must operate at extraordinary speeds (currently 20kHz, trending toward 100kHz) while managing rapid transitions between states. When drivers make sudden accelerator changes, conventional PID controllers produce energy-wasting overshoots that drain precious battery power. Our research presents a novel approach using neural networks to compensate for these limitations. By generating time-varying correction factors, our AI solution reduces maximum overshoots by up to 70% in demanding scenarios. This innovation represents a critical advancement for electric vehicle efficiency, potentially extending range and improving performance. What makes this application particularly fascinating is the extreme time constraints. While most AI applications process data at relatively leisurely rates (think 30 frames per second for vision systems), motor controllers must complete their calculations within microseconds. Our current implementation achieves 70-microsecond inference times on automotive-grade microcontrollers, with further optimizations planned through hardware acceleration. The collaboration between academic researchers and industry partners (MathWorks and STMicroelectronics) demonstrates the power of combining simulation expertise with real-world deployment capabilities. Using Simulink as the development platform and ST's developer cloud for automatic deployment to physical microcontrollers, we've created a streamlined methodology for applying AI to automotive control systems. Want to dive deeper into the technical details? Check out our published research paper on arXiv and discover how neural networks are transforming the heart of electric vehicle propulsion systems. Share your thoughts on how AI might further revolutionize automotive technology! Send us Fan Mail Support the show Learn more about the EDGE AI FOUNDATION - edgeaifoundation.org

    17 min.
  8. 14 mei

    How to simplify and securely maintain up-to-date AI Models in the Edge

    Ever shipped a smart device and worried what happens after it leaves the lab? We dig into the hard parts of edge security—where models live on-device, firmware updates are routine, and attackers treat your fleet as a supply chain—then break them down into moves any team can adopt. From secure boot that blocks untrusted code at power-on to verified boot with discrete secure elements, we show how to anchor trust in hardware so software can prove itself before it runs. We walk through the real risks teams face—model theft, OTA hijacking, plaintext credentials in flash, and silent downgrades—and map them to practices that actually scale across mixed hardware. You’ll hear why encrypting data at rest frustrates drive cloning, how end-to-end encrypted and signed updates prevent tampering, and why automatic rollback turns “bricks” into recoverable hiccups. Updating AI models becomes a strength when you ship small, signed artifacts instead of full images, with logs that satisfy CRA and NIS2 audits while giving operators the visibility they need. We also tackle the build-versus-buy dilemma with clear-eyed math. Building a secure update stack across Qualcomm, NXP, PSoC, and diverse compute modules takes specialists and months; a platform approach spreads cost, speeds delivery, and still lets you own your keys so you can switch later without stranding devices. That key ownership underpins true end-to-end trust: you sign, devices verify, and the infrastructure moves at your pace. If you care about safeguarding IP, maintaining uptime, and earning customer trust, this is your blueprint. If this deep dive helps, follow the show, share it with your hardware and firmware teams, and leave a quick review—what part of your edge stack needs the strongest lock? Send us Fan Mail Support the show Learn more about the EDGE AI FOUNDATION - edgeaifoundation.org

    21 min.

Info

Discover the cutting-edge world of energy-efficient machine learning, edge AI, hardware accelerators, software algorithms, and real-world use cases with this podcast feed from all things in the world's largest EDGE AI community.  These are shows like EDGE AI Talks, EDGE AI Blueprints as well as EDGE AI FOUNDATION event talks on a range of research, product and business topics. Join us to stay informed and inspired!

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