Online or onsite, instructor-led live TinyML training courses demonstrate through interactive hands-on practice how to use machine learning on ultra-low-power devices to enable AI-driven applications in resource-constrained environments.
TinyML training is available as "online live training" or "onsite live training". Online live training (aka "remote live training") is carried out by way of an interactive, remote desktop. Onsite live TinyML training can be carried out locally on customer premises in Lyon or in NobleProg corporate training centers in Lyon.
NobleProg -- Your Local Training Provider
Lyon, Swisslife Tower
NobleProg Lyon, 10 Place Charles Béraudier, Lyon, france, 69000
Located 200 meters far from the train station TGV, Swisslife Tower is today the most representative building of this quarter of Lyon. The Business Center offers you a perfect location for your training.
Gares TGV
100meters from Gare TGV Part-Dieu , porte du Rhône Exit
Aéroport
30 minutes from Lyon Saint Exupéry (Satolas)
Rhône Express from Saint Exupéry airport (Terminus Gare part-Dieu)
This instructor-led, live training in Lyon (online or onsite) is aimed at intermediate-level embedded engineers, IoT developers, and AI researchers who wish to implement TinyML techniques for AI-powered applications on energy-efficient hardware.
By the end of this training, participants will be able to:
Understand the fundamentals of TinyML and edge AI.
Deploy lightweight AI models on microcontrollers.
Optimize AI inference for low-power consumption.
Integrate TinyML with real-world IoT applications.
TinyML refers to a machine learning methodology designed for compact devices with limited resources.
This guided live training, available either online or on-site, targets beginner to intermediate participants interested in developing functional TinyML applications using Raspberry Pi, Arduino, and comparable microcontrollers.
After finishing this training, participants will be equipped with the ability to:
Gather and ready data for TinyML initiatives.
Train and refine small-scale machine learning models suitable for microcontroller systems.
Deploy TinyML models onto Raspberry Pi, Arduino, and associated boards.
Create complete embedded AI prototypes from start to finish.
Course Format
Instructor-led presentations and structured discussions.
Practical exercises and interactive experimentation.
Live-lab projects utilizing real hardware.
Course Customization Options
For specialized training tailored to your specific hardware or application needs, please reach out to us to make arrangements.
TinyML involves the deployment of optimized machine learning models onto edge devices with limited resources.
This instructor-led live training, available online or onsite, is designed for advanced technical professionals looking to design, optimize, and deploy full-scale TinyML pipelines.
Upon completing this training, participants will be able to:
Gather, preprocess, and manage datasets specifically for TinyML applications.
Train and optimize models for power-efficient microcontrollers.
Transform models into lightweight formats compatible with edge devices.
Deploy, test, and monitor TinyML applications on actual hardware.
Course Format
Instructor-led lectures combined with technical discussions.
Practical labs and iterative experimentation sessions.
Hands-on deployment exercises on microcontroller platforms.
Customization Options
To tailor the training to your specific toolchains, hardware boards, or internal workflows, please contact us to arrange.
TinyML represents a methodology for deploying machine learning models on low-power, resource-limited devices at the network edge.
This instructor-led, live training (available online or onsite) is designed for advanced professionals aiming to secure TinyML pipelines and integrate privacy-preserving techniques into edge AI applications.
Upon completing this course, participants will be able to:
Recognize security risks specific to on-device TinyML inference.
Deploy privacy-preserving mechanisms for edge AI implementations.
Secure TinyML models and embedded systems against adversarial threats.
Apply best practices for secure data management in constrained environments.
Course Format
Interactive lectures complemented by expert-led discussions.
Practical exercises focused on real-world threat scenarios.
Hands-on implementation using embedded security and TinyML tools.
Course Customization Options
Organizations can request a customized version of this training to meet their specific security and compliance requirements.
TinyML serves as a framework designed to deploy machine learning models on low-power microcontrollers and embedded platforms utilized within robotics and autonomous systems.
This instructor-led, live training session (available online or onsite) targets advanced-level professionals seeking to incorporate TinyML-based perception and decision-making capabilities into autonomous robots, drones, and intelligent control systems.
Upon completing this course, participants will be equipped to:
Design optimized TinyML models tailored for robotics applications.
Implement on-device perception pipelines to enable real-time autonomy.
Integrate TinyML seamlessly into existing robotic control frameworks.
Deploy and test lightweight AI models on embedded hardware platforms.
Format of the Course also allows for the evaluation of participants.
Technical lectures complemented by interactive discussions.
Hands-on labs centered on embedded robotics tasks.
Practical exercises that simulate real-world autonomous workflows.
Course Customization Options
For organization-specific robotics environments, customization can be arranged upon request.
TinyML is a framework for deploying machine learning models on low-power, resource-constrained devices in the field.
This instructor-led, live training (online or onsite) is designed for intermediate-level professionals who wish to apply TinyML techniques to smart agriculture solutions that enhance automation and environmental intelligence.
Upon completing this program, participants will gain the ability to:
Construct and deploy TinyML models for agricultural sensing applications.
Integrate edge AI into IoT ecosystems for automated crop monitoring.
Utilize specialized tools to train and optimize lightweight models.
Establish workflows for precision irrigation, pest detection, and environmental analytics.
Format of the Course also allows for the evaluation of participants.
Guided presentations and applied technical discussion.
Hands-on practice using real-world datasets and devices.
Practical experimentation in a supported lab environment.
Course Customization Options
For tailored training aligned with specific agricultural systems, please contact us to customize the program.
TinyML involves embedding machine learning capabilities into low-power, resource-constrained wearable and medical devices.
This instructor-led training session, available online or onsite, is designed for intermediate-level practitioners seeking to implement TinyML solutions for healthcare monitoring and diagnostic applications.
Upon completion, participants will be able to:
Design and deploy TinyML models for real-time health data processing.
Collect, preprocess, and interpret biosensor data to derive AI-driven insights.
Optimize models for low-power and memory-constrained wearable devices.
Evaluate the clinical relevance, reliability, and safety of TinyML-driven outputs.
Course Format
Lectures complemented by live demonstrations and interactive discussions.
Hands-on practice with wearable device data and TinyML frameworks.
Implementation exercises conducted in a guided lab environment.
Customization Options
For training tailored to specific healthcare devices or regulatory workflows, please contact us to customize the program.
TinyML involves the deployment of machine learning models on hardware with strict resource limitations.
This instructor-led live training, available online or onsite, targets advanced practitioners seeking to optimize TinyML models for low-latency and memory-efficient deployment on embedded devices.
Upon completion of this training, participants will be capable of:
Utilizing quantization, pruning, and compression techniques to minimize model size while maintaining accuracy.
Benchmarking TinyML models for latency, memory usage, and energy efficiency.
Deploying optimized inference pipelines on microcontrollers and edge devices.
Assessing the trade-offs between performance, accuracy, and hardware constraints.
Course Format
Instructor-led presentations accompanied by technical demonstrations.
Practical exercises in optimization and comparative performance testing.
Hands-on implementation of TinyML pipelines within a controlled lab environment.
Customization Options
For training tailored to specific hardware platforms or internal workflows, please reach out to customize the program.
This instructor-led, live training in Lyon (online or onsite) is designed for intermediate-level IoT developers, embedded engineers, and AI practitioners who want to apply TinyML for predictive maintenance, anomaly detection, and smart sensor solutions.
Upon completing this training, participants will be able to:
Grasp the core principles of TinyML and its role in IoT ecosystems.
Configure a TinyML development environment tailored for IoT projects.
Create and deploy machine learning models on low-power microcontrollers.
Apply TinyML techniques for predictive maintenance and anomaly detection.
Refine TinyML models to maximize power efficiency and minimize memory consumption.
This instructor-led, live training in Lyon (online or onsite) is designed for intermediate-level embedded systems engineers and AI developers who want to deploy machine learning models on microcontrollers using TensorFlow Lite and Edge Impulse.
Upon completion of this training, participants will be able to:
Grasp the fundamentals of TinyML and its advantages for edge AI applications.
Configure a development environment tailored for TinyML projects.
Train, optimize, and deploy AI models on low-power microcontrollers.
Utilize TensorFlow Lite and Edge Impulse to build real-world TinyML solutions.
Optimize AI models to meet power efficiency and memory limitations.
This instructor-led, live training in Lyon (online or onsite) is designed for engineers and data scientists at the beginner level who want to grasp the fundamentals of TinyML, investigate its practical uses, and implement AI models on microcontrollers.
Upon completing this training, participants will be capable of:
Grasping the core concepts of TinyML and why they matter.
Deploying lightweight AI models onto microcontrollers and edge devices.
Optimizing and refining machine learning models to minimize power usage.
Utilizing TinyML for real-world scenarios including gesture recognition, anomaly detection, and audio processing.
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