A comprehensive, hands-on workshop covering IoT hardware setup, sensor interfacing, cloud connectivity, data analytics, ML model training, and edge AI deployment — preparing you for real-world intelligent device development.
The convergence of the Internet of Things and Machine Learning is reshaping industries — from smart agriculture and predictive maintenance to healthcare wearables and autonomous systems. Professionals who can build intelligent, connected devices are among the most in-demand globally.
Eight modules progressing from IoT fundamentals and hardware setup through data collection, analytics, ML model training, and edge AI deployment on real devices.
Industry-applicable IoT and ML skills that make you job-ready and competitive in embedded systems, edge AI, cloud IoT, and intelligent device development roles worldwide.
Every concept is reinforced through live hardware demonstrations, guided labs, and real end-to-end project exercises in a fully equipped environment.
Wire up sensors, read live temperature and motion data, and transmit it to the cloud over MQTT
Train a Decision Tree classifier on real IoT sensor data — from raw data to an evaluated model
Convert a trained model with TensorFlow Lite and run live inference directly on a microcontroller
Hands-on experience with the exact tools, platforms, and frameworks used by IoT engineers and ML practitioners at leading technology organizations worldwide.
Intelligent connected devices are transforming every major sector. This workshop equips you to build solutions across all of them.
ML models running on edge devices detect equipment anomalies before failures occur — reducing downtime, cutting maintenance costs, and extending asset lifetimes in manufacturing and utilities environments.
Smart wearables with on-device ML models continuously monitor vital signs, detect irregular patterns, and alert clinicians in real time — enabling proactive care outside of traditional clinical settings.
Sensor networks combined with ML models optimize irrigation, predict crop yields, and detect plant disease early — transforming food production efficiency and resource management at scale.
Intelligent traffic management, energy optimization, waste monitoring, and environmental sensing — IoT and ML work together to make urban infrastructure more efficient, sustainable, and responsive.
Voice recognition, occupancy prediction, energy management, and personalized automation — consumer IoT devices rely heavily on on-device ML to deliver intelligent, responsive user experiences.
Edge AI in vehicles and robotic systems processes sensor data in real time for navigation, obstacle avoidance, and decision-making — where latency tolerances are measured in milliseconds.
Whether you're a curious beginner, an embedded developer, or a data scientist exploring hardware — this workshop delivers practical value at every level.
Build a strong IoT and ML foundation with hands-on hardware experience, real projects for your portfolio, and a recognized certificate before entering the rapidly growing embedded AI job market.
Extend your skills into the physical world — learn hardware interfacing, embedded programming, and on-device ML deployment to build the next generation of intelligent connected applications.
Add machine learning and data engineering to your embedded systems toolkit — learn to make your hardware projects intelligent using ML models trained directly on your own sensor data.
Bridge the gap between data science and embedded hardware — learn to deploy your models on microcontrollers, understand hardware constraints, and build true end-to-end edge AI systems.
An immersive, project-driven program that gives you real hardware experience, ML skills, and the portfolio projects to stand out in the IoT and edge AI job market.
Eight modules spanning the full IoT and ML stack — from wiring your first sensor through training ML models and deploying them on microcontrollers with TensorFlow Lite and Edge Impulse.
Hands-on labs with actual Arduino, Raspberry Pi, and ESP32 hardware — building physical systems that sense, communicate, and make intelligent decisions directly on the device itself.
Practitioners with real IoT and ML deployment experience guide every session — sharing practical insights from production projects and helping you solve challenges on actual hardware in real time.
Leave with a real end-to-end project — sensor data collection, ML model training, and edge deployment — that demonstrates concrete skills to employers and clients in IoT and AI roles.
Every participant who successfully completes the workshop receives an official Certificate of Completion from SpyPro Hack You — a recognized credential that demonstrates your IoT hardware, data engineering, and edge ML skills to employers, clients, and collaborators worldwide.
Build intelligent connected devices from hardware all the way to edge AI inference. Gain the skills to design, train, and deploy ML models on real IoT hardware. Limited seats available — secure yours today!