The challenge
How will you bring Machine Learning(ML) to edge devices to creatively solve challenges in IoT at the Edge? This is your chance to get edgy and show off your amazing new Machine Learning model and project for a chance to win this design contest.
We are looking for projects that demonstrate how ML can be used to solve problems in the fields of smart home, industrial, safety, or environmental. In this contest, we invite you to bring ML/AI to edge devices with the PSoC™ 6 AI Evaluation Kit and DEEPCRAFT™ Studio (formerly Imagimob Studio), our ML development platform.
We are asking contest participants to design their own edge AI model by:
1. Collecting sensor data using the PSoC™ 6 AI Kit (onboard sensors + external sensors)
2. Building and training your new model inside DEEPCRAFT™ Studio (formerly Imagimob Studio)
3. Showcasing how your model interacts with the physical world by building a project using ModusToolbox™ that deploys onto the PSoC™ 6 AI Kit
4. Documenting your solution as a Hackster project and submit to the contest
Here are some application ideas to help you get started designing ML at the edge, but the sky's the limit.
We are curious to see how you will bring ML to edge devices! How edgy can you be?
The HardwareInfineon’s PSoC™ 6 Artificial Intelligence Evaluation Kit (CY8CKIT-062S2-AI) is your perfect platform for easy prototyping and collecting real-life data to build compelling ML products fast. Being only the size of a cracker, the hardware platform focused on Edge AI and enables customers to evaluate Infineon’s Machine Learning platform DEEPCRAFT Studio, as well as ready to deploy ML models, and other software products.
Data collection is enabled via PSoC™ 6 MCU, as well as Radar (BGT60TR13C), high-performance digital MEMS microphone (IM72D128), Barometric Air Pressure Sensor (DPS368) & IMU sensors (Bosch BMI-270, BMM-350). Connectivity is enabled with WiFi/BT BLE Combo (Murata LBEE5KL1YN). Participants are encouraged to expand the hardware according to their use case, e.g. using additional sensors or data sources.
We're awarding free kits to the top 50 hardware applicants - apply by October 17th.
Don't want to wait to get started? Buy yours today.
The SoftwareWith ModusToolbox™ and DEEPCRAFT™ Studio (formerly Imagimob Studio) you can go through the full Machine Learning to Embedded Software flow from data collection and training to reference deployment.
DEEPCRAFT™ Studio (formerly Imagimob Studio)
DEEPCRAFT™ Studio (formerly Imagimob Studio) is an end-to-end platform for developing AI / Machine Learning models for the edge. The platform is designed to support users in creating robust and high quality models that are ready for deployment in commercial products.
DEEPCRAFT™ Studio (formerly Imagimob Studio) gives users the tools and flexibility required to customize their models for their specific needs. It is the fastest way for experts and non-experts alike to build production grade Machine Learning (ML) models for a wide range of use cases.
NOTE: DEEPCRAFT™ Studio (formerly Imagimob Studio) is only available for Windows OS
ModusToolbox™ Software
Provided as a collection of development tools, libraries, and embedded runtime assets, ModusToolbox™ Software is architected to provide a flexible and comprehensive development experience.
Run-Time Software comprised of middleware, device drivers, and code examples is provided via an extensive collection of GitHub-hosted repositories. Explore the available run-time software resources cataloged within the ModusToolbox™ Software repository overview.
ModusToolbox development tools enable the creation of new embedded applications, managing software components, configuring device peripherals and middleware, and embedded development tools for compiling, programming, and debugging. These development tools interface directly with available run-time software repositories, providing easy access to the latest development resources.
Getting StartedThe kit is pre-programmed with code examples to demonstrate sensor data collection from the USB port and store the data in the DEEPCRAFT™ Studio (formerly Imagimob Studio), ready to go for labelling and machine learning model creation. To get started, simply:
1. Connect to your PSoC™ 6 AI Kit and follow our Getting Started Guide
2. Download DEEPCRAFT™ Studio (formerly Imagimob Studio) (only available for Windows)
3. Download ModusToolbox™
4. Check out additional code examples (sound recognition / movement detection) featuring Imagimob ML models and cloud connectivity via Avnet IoT Connect.
Helpful WebinarsSeptember 24 | Rapidly create AI/ML edge solutions using Infineon’s PSoC™ 6 AI KitLearn how to connect the contest hardware lnfineon's PSoC™ 6 Artificial Intelligence Evaluation Kit to the cloud using Avnet loTConnect on Azure and AWS. Sarah Hemmer, one of the judges, will be one of the speaker/presenter!
Coming Soon (date TBD) | Getting Started with ML Model Creation using the PSOC 6 AI KitClark Jarvis, one of the judges, will be hosting an upcoming technical webinar on how to get started with the devkit, along with valuable tips on optimizing development workflows.
Prizes
Create a new ML model + documentation using the PSoC™ 6 AI Evaluation Kit and Imagimob Studio and you will win the chance to get one of cash prizes for the best models!
Best Overall
Best Overall will be awarded to the project that demonstrates novel, well-engineered, and highly accurate model that solves a complex, real-world problem.
Best Model - Radar
Best Model - Radar will be awarded to the project demonstrates exceptional performance in detecting and classifying targets, such as objects or people, with high accuracy and speed.
Best Model - On Board Sensor
Best Model - On Board Sensor will be awarded to the project that accurately interprets and analyzes complex sensor data, such as time-series or multi-modal data, to extract valuable insights or make predictions with the onboard sensor.
Best Model - External Sensor
Best Model - External Sensor will be awarded to the project that utilizes sensors beyond what's already on-board, and accurately interprets and analyzes complex sensor data
Runners Up
Runner Up will be awarded to the project that went above and beyond to show us your ML on the Edge skills!
Judges
Clark Jarvis
Clark is a senior software technical marketer at Infineon. Building on nearly two decades of product experience for embedded software and development tools, Clark focuses on creating efficient and intuitive design experiences to help embedded engineers ultimately master and speed the development of IoT and industrial applications.
Sarah Hemmer
Sarah is a senior software product manager at Infineon, always looking to take exciting new products and ideas to market. Coming from a background in behavioral economics and data analytics, she will focus on bringing the customer perspective to this contest.
Nick Sharp
Nicholas is a Staff Applications Engineer at Infineon in the MCU division. Currently he is working on integrating machine learning into embedded systems. Nicholas holds a Computer Engineering degree from Seattle Pacific University.
Sam Al-Attiyah
Sam has been working at Imagimob for more than 7 years. He has a Master in Electrical Engineering having studied both in Australia and in Sweden. Over this time he has had experience working with the end-to-end machine learning applications on the edge and led multiple projects to production. Sam is now heading the Customer Success team at Imagimob which focuses on ensuring customers get to production with their machine learning applications. Sam is also the product manager for the DEEPCRAFT Ready Models which are fully trained models ready deployment and commercialization.
Resources
- DEEPCRAFT Studio (formerly Imagimob Studio) (available for Windows only - no Linux or Mac support. You must use Windows for this contest.)
- Download ModusToolbox™
- See how Avnet used Imagimob ML models to create solutions for sound recognition and movement detection using IoTConnect. IoTConnect is a solution acceleration platform that can be used to rapidly connect devices to the cloud – complete with customizable dashboard. Full step-by-step guides are available for free on GitHub and easy to get started with no software development skills required!
Sound Recognition (Baby Cry Detection)
Movement Detection (Using the Inertial Measurement Unit (IMU))
- The Infineon Developer Community provides access to online documentation, online videos and regular live developer trainings to support you as you go
- Post your question on the contest discussion page
- Use Hackster's discord contest channel to interact with other peers from the contest
About us
Infineon is a world leader in semiconductor solutions that make life easier, safer, and greener. Our solutions for efficient energy management, smart mobility, and secure, seamless communications link the real and the digital world.
Contest Status
Timeline
Contest begins
September 19, 2024 at 12:00 PM PDT
Applications for hardware close
October 17, 2024 at 11:59 PM PDT
Hardware recipients announced
November 15, 2024 at 5:00 PM PST
Submissions close
March 31, 2025 at 11:59 PM PDT
Winners announced by
Apr 30, 2025