
The Zoo Revolution: Why Pretrained Models Are The Key To Scalable Edge AI
Rajesh Subramaniam is Founder and CEO of embedUR systems.
From IoT and robotics to industrial automation and smart devices, AI is fundamentally changing how machines operate. But one of the biggest hurdles to widespread adoption has always been the complexity of building, training and deploying AI models—especially on the edge.
That's where pretrained models come in. These ready-to-use tools are making AI faster, cheaper and more scalable. The rise of AI model zoos—curated collections of pre-built, optimized models—is the key to this transformation. Think of model zoos as an app store for AI that gives developers access to powerful AI capabilities (working models, curated datasets, blueprints) without a steep learning curve, extensive training, or deep technical expertise.
For many businesses, training an AI model from scratch is not practical due to cost or time constraints. Even before building a product, teams must validate feasibility, which is often the costliest step. Pretrained models can accelerate this process by enabling rapid testing of multiple ideas to see which are viable before committing resources. Instead of spending months developing a proprietary model, companies can take an existing model from a model zoo, fine-tune it for their specific needs and deploy it rapidly—especially in cloud environments where models can run with minimal changes. On edge devices, deployment is more complex and often requires additional porting and optimization for each hardware platform.
Small, low-power IoT devices at the edge need models that are both lightweight and efficient. Pretrained models have already been optimized for real-world applications; some are stripped-down versions of larger networks, making them ideal for quick prototyping on tools like Raspberry Pi. But in production, these models can be deployed on advanced, AI-native chips from vendors like Synaptics, STMicroelectronics and Silicon Labs, designed specifically for edge inference on a single chip.
Traditionally, many of these small, low-power devices rely on cloud connectivity to make intelligent decisions. But running pretrained models directly on edge devices can reduce latency, improve reliability and conserve power.
Developing high-performance AI for edge devices comes with enormous challenges. First, curating high-quality, relevant datasets is crucial. AI is only as good as the data it's trained on. This is especially important for edge AI, where a bad model can result in significant failures—for example, a facial recognition model that isn't trained on a diverse set of faces, lighting conditions and environments. Businesses that want to deploy AI need to make sure their datasets are well-curated, balanced and representative of actual use cases.
Equally important is code and model efficiency. Edge devices operate under tight constraints: limited memory, storage, processing power, and often battery life. Unlike cloud environments, where inefficient code can be masked by throwing more compute at the problem, we don't have this luxury with edge AI. You can't afford bloated models with 20% waste. On the edge, there's no tolerance for inefficiency and no room for error. Every line of code and every model parameter has to be optimized.
In cloud-based AI, an accuracy rate of 95% is often considered acceptable. But in edge AI, where devices have to operate independently with minimal errors, this isn't enough. For instance, it's not OK if a self-driving car fails to detect pedestrians in one out of every 20 trips. Achieving a required accuracy of 99% and above requires extensive testing and iterative improvements.
The next five years will bring a wave of intelligent edge devices replacing traditional electronics. These AI-powered systems will be smaller, more energy-efficient and capable of making real-time decisions without relying on cloud connectivity. This shift will affect every industry that relies on connected devices, from smart homes to industrial automation.
But there's an important dynamic that's often overlooked: product life cycles are shrinking. Over the past decade, for example, hard drives have evolved every few months instead of every few years. The same will apply to AI-powered devices. Products considered bleeding-edge today could be obsolete within months or a year, replaced by newer, more advanced alternatives. That means companies will need tools that can help them get new products to market fast and adapt to changing technologies as quickly as possible. Pretrained models and model zoos will be crucial in this race.
Forbes Technology Council is an invitation-only community for world-class CIOs, CTOs and technology executives. Do I qualify?

Try Our AI Features
Explore what Daily8 AI can do for you:
Comments
No comments yet...
Related Articles
Yahoo
5 days ago
- Yahoo
FedEx's $1.65B Quarter Overshadowed by China--US Freight Crash--Wall Street Reacts Fast
FedEx (NYSE:FDX) just waved a red flagand it's not a small one. The logistics giant saw freight volumes between China and the U.S. deteriorate sharply in May, thanks to rising tariffs and a rule change that eliminated the $800 de minimis exemption for small parcel imports. That exemption had been a lifeline for Chinese e-commerce powerhouses like Temu and Shein. With that gone, FedEx's most lucrative trade laneaccounting for 2.5% of its revenuehas suddenly become a lot less predictable. Shares dropped nearly 6% on the news, as FedEx dialed back its guidance and warned that it may not offer full-year forecasts due to what it called an uncertain global demand environment. Warning! GuruFocus has detected 5 Warning Sign with FDX. The impact could go deeper than a single quarter. On the earnings call, CEO Rajesh Subramaniam said it's very, very difficult to predict how trade flows will shape up in the next 30 to 60 days, adding that the outlook could shift quickly if policies evolve. Chief Customer Officer Brie Carere echoed that caution, emphasizing that most of the slowdown stemmed from policynot demand. FedEx now expects revenue growth of just 0% to 2% for the JuneAugust quarter, with earnings per share between $3.40 and $4.00both well below what Wall Street was hoping for. That said, the quarter wasn't a wash. Net income from March to May still climbed 13% to $1.65 billion, even as revenue held flat at $22.2 billion. But with the death of founder Fred Smith just days earlier and Trump-era tariffs still in fluxsome peaking at 145% as recently as Aprilthe mood at FedEx feels cautious at best. The company may be holding ground for now, but if trade tensions linger or customs policies tighten further, investors should be prepared for more turbulence ahead. This article first appeared on GuruFocus.
Yahoo
17-06-2025
- Yahoo
STMicro Unveils Smart Sensor To Cut PC Power Use, Boost Privacy
STMicroelectronics (NYSE:STM) announced on Tuesday its new Human Presence Detection (HPD) technology for laptops, PCs, monitors, and accessories. This technology delivers a more than 20% daily power consumption reduction and improves security and privacy. STMicroelectronics' proprietary solution combines market-leading FlightSense Time-of-Flight (ToF) sensors with unique AI algorithms to deliver hands-free, fast Windows Hello authentication. Florian Domengie, PhD Principal Analyst, Imaging at Yole Group said, 'Time-of-Flight (ToF) technology is expanding beyond smartphones and tablets into drones, robots, AR/VR headsets, home projectors, and laptops. Compact and affordable multizone dToF sensors are now emerging to enhance laptop experiences and enable new use cases.' Also Read: The new ST solution is a readily deployable system based on FlightSense 8×8 multizone Time-of-Flight sensor (VL53L8CP) complemented by proprietary AI-based algorithms enabling functionalities such as human presence detection, multi-person detection, and head orientation tracking. This integration creates a unique, ready-to-use solution for OEMs that require no additional development. This 5th generation of sensors also integrates advanced features such as gesture recognition, hand posture recognition, and wellness monitoring through human posture analysis. STMicroelectronics stock plunged over 31% in the last 12 months. The Apple Inc (NASDAQ:AAPL) and Tesla Inc (NASDAQ:TSLA) supplier is grappling with a demand slump in the industrial and auto sectors. A January report indicated the company is considering downsizing its workforce in Italy and France by up to 6%, implying 2,000-3,000 workers. Price Action: STM stock are trading lower by 0.61% to $29.48 premarket at last check Tuesday. Read Next:Photo by Michael Vi via Shutterstock Up Next: Transform your trading with Benzinga Edge's one-of-a-kind market trade ideas and tools. Click now to access unique insights that can set you ahead in today's competitive market. Get the latest stock analysis from Benzinga? STMICROELECTRONICS (STM): Free Stock Analysis Report This article STMicro Unveils Smart Sensor To Cut PC Power Use, Boost Privacy originally appeared on © 2025 Benzinga does not provide investment advice. All rights reserved. Error in retrieving data Sign in to access your portfolio Error in retrieving data Error in retrieving data Error in retrieving data Error in retrieving data
Yahoo
17-06-2025
- Yahoo
STMicroelectronics introduces advanced Human Presence Detection solution to enhance laptop and PC user experience
T4711D -- Jun 17 2025 -- Human Presence Detection for consumer devices_IMAGE STMicroelectronics introduces advanced Human Presence Detection solution to enhance laptop and PC user experience New technology delivers more than 20% power consumption reduction per day in addition to improved security and privacy ST solution combines market leading Time-of-Flight (ToF) sensors and unique AI algorithms for a seamless user experience Geneva, Switzerland, June 17, 2025 -- STMicroelectronics (NYSE: STM), a global semiconductor leader serving customers across the spectrum of electronics applications, introduces a new Human Presence Detection (HPD) technology for laptops, PCs, monitors and accessories, delivering more than 20% power consumption reduction per day in addition to improved security and privacy. ST's proprietary solution combines market-leading FlightSense™ Time-of-Flight (ToF) sensors with unique AI algorithms to deliver a hands-free fast Windows Hello authentication; and delivers a range of benefits such as longer battery lifetime, and user-privacy or wellness notifications. 'Building on the integration of ST FlightSense technology in more than 260 laptops and PC models launched in recent years, we are looking forward to see our new HPD solution contributing to make devices more energy-efficient, secure, and user-friendly,' said Alexandre Balmefrezol, Executive Vice President and General Manager of the Imaging Sub-Group at STMicroelectronics. 'As AI and sensor technology continue to advance, with greater integration of both hardware and software, we can expect to see even more sophisticated and intuitive ways of interacting with our devices, and ST is best positioned to continue to lead this market trend.' 'Since 2023, 3D sensing in consumer applications has gained new momentum, driven by the demand for better user experiences, safety, personal robotics, spatial computing, and enhanced photography and streaming. Time-of-Flight (ToF) technology is expanding beyond smartphones and tablets into drones, robots, AR/VR headsets, home projectors, and laptops. In 2024, ToF modules generated $2.2 billion in revenue, with projections reaching $3.8 billion by 2030 (9.5% CAGR). Compact and affordable, multizone dToF sensors are now emerging to enhance laptop experiences and enable new use cases,' said Florian Domengie, PhD Principal Analyst, Imaging at Yole Group. The 5th generation turnkey ST solution By integrating hardware and software components by design, the new ST solution is a readily deployable system based on FlightSense 8x8 multizones Time-of-Flight sensor (VL53L8CP) complemented by proprietary AI-based algorithms enabling functionalities such as human presence detection, multi-person detection, and head orientation tracking. This integration creates a unique ready-to-use solution for OEMs that requires no additional development for them. This 5th generation of sensors also integrates advanced features such as gesture recognition, hand posture recognition, and wellness monitoring through human posture analysis. ST's Human Presence Detection (HPD) solution enables enhanced features such as: Adaptive Screen Dimming tracks head orientation to dim the screen when the user isn't looking, reducing power consumption by more than 20%. Walk-Away Lock & Wake-on-Attention automatically locks the device when the user leaves and wakes up upon return, improving security and convenience. Multi-Person Detection alerts the user if someone is looking over their shoulder, enhancing privacy. Tailored AI algorithm STMicroelectronics has implemented a comprehensive AI-based development process that from data collection, labeling, cleaning, AI training and integration in a mass-market product. This effort relied on thousands of data-logs from diverse sources, including contributions from workers who uploaded personal seating and movement data over several months, enabling the continuous refinement of AI algorithms. One significant achievement is the transformation of a Proof-Of-Concept (PoC) into a mature solution capable of detecting a laptop user's head orientation using only 8x8 pixels of distance data. This success was driven through a meticulous development process that included four global data capture campaigns, 25 solution releases over the course of a year, and rigorous quality control of AI training data. The approach also involved a tailored pre-processing method for VL53L8CP ranging data, and the design of four specialized AI networks: Presence AI, HOR (Head Orientation) AI, Posture AI, and Hand Posture AI. Central to this accomplishment was the VL53L8CP ToF sensor, engineered to optimize the Signal-To-Noise ratio (SNR) per zone, which played a critical role in advancing these achievements. Enhanced user experience & privacy protectionThe ToF sensor ensures complete user privacy without capturing images or relying on the camera, unlike previous versions of webcam-based solutions. Adaptive Screen Dimming: Uses AI algorithms to analyze the user's head orientation. If the user is not looking at the screen, the system gradually dims the display to conserve power. Extends battery life by minimizing energy consumption. Optimizes for low power consumption with AI algorithms and can be seamlessly integrated into existing PC sensor hubs. Walk-Away Lock (WAL) & Wake-on-Approach (WOA): The ToF sensor automatically locks the PC when the user moves away and wakes it upon their return, eliminating the need for manual interaction. This feature enhances security, safeguards sensitive data, and offers a seamless, hands-free user experience. Advanced filtering algorithms help prevent false triggers, ensuring the system remains unaffected by casual passerby. Multi-Person Detection (MPD): The system detects multiple people in front of the screen and alerts the user if someone is looking over their shoulder. Enhances privacy by preventing unauthorized viewing of sensitive information. Advanced algorithms enable the system to differentiate between the primary user and other nearby individuals. Technical highlights: VL53L8CP: ST FlightSense 8x8 multizones ToF sensor. AI-based: compact, low-power algorithms suitable for integration into PC sensor hubs. A complete ready-to-use solution includes hardware (ToF sensor) and software (AI algorithms). About STMicroelectronicsAt ST, we are 50,000 creators and makers of semiconductor technologies mastering the semiconductor supply chain with state-of-the-art manufacturing facilities. An integrated device manufacturer, we work with more than 200,000 customers and thousands of partners to design and build products, solutions, and ecosystems that address their challenges and opportunities, and the need to support a more sustainable world. Our technologies enable smarter mobility, more efficient power and energy management, and the wide-scale deployment of cloud-connected autonomous things. We are on track to be carbon neutral in all direct and indirect emissions (scopes 1 and 2), product transportation, business travel, and employee commuting emissions (our scope 3 focus), and to achieve our 100% renewable electricity sourcing goal by the end of 2027. Further information can be found at INVESTOR RELATIONSJérôme RamelEVP Corporate Development & Integrated External CommunicationTel: + MEDIA RELATIONSAlexis BretonCorporate External CommunicationsTel: + Attachments T4711D -- Jun 17 2025 -- Human Presence Detection for consumer devices_FINAL FOR PUBLICATION T4711D -- Jun 17 2025 -- Human Presence Detection for consumer devices_IMAGE