industry news
Subscribe Now

STMicroelectronics Strengthens Support for Efficient Machine Learning in STM32Cube.AI Ecosystem

Geneva, July 26, 2021 – STMicroelectronics has expanded the variety of machine-learning techniques available to users of the STM32Cube.AI development environment, giving extra flexibility to solve classification, clustering, and novelty-detection challenges as efficiently as possible.

In addition to enabling development of neural networks for edge inference on STM32* microcontrollers (MCUs), the latest STM32Cube.AI release (version 7.0) supports new supervised and semi-supervised methods that work with smaller data sets and fewer CPU cycles. These include isolation forest (iForest) and One Class Support Vector Machine (OC SVM) for novelty detection and K-means and SVM Classifier algorithms for classification which users can now implement without laborious manual coding.

The addition of these classical machine-learning algorithms on top of neural networks helps developers solve their challenges more quickly by enabling fast turnaround time with easy-to-use techniques to convert, validate, and deploy various types of models on STM32 microcontrollers.

STM32Cube.AI lets developers drive machine-learning workloads from the cloud into STM32-based edge devices to reduce latency, save energy, increase cloud utilization, and safeguard privacy by minimizing data exchanges over the Internet. Now with extra flexibility to choose the most efficient machine-learning techniques for on-device analytics, STM32 MCUs are ideal for always-on use cases and smart battery-powered applications.

The new STM32Cube.AI version 7.0 is ready to download free of charge now from www.st.com.

Leave a Reply

featured blogs
Jul 25, 2025
Manufacturers cover themselves by saying 'Contents may settle' in fine print on the package, to which I reply, 'Pull the other one'”it's got bells on it!'...

featured paper

Agilex™ 3 vs. Certus-N2 Devices: Head-to-Head Benchmarking on 10 OpenCores Designs

Sponsored by Altera

Explore how Agilex™ 3 FPGAs deliver up to 2.4× higher performance and 30% lower power than comparable low-cost FPGAs in embedded applications. This white paper benchmarks real workloads, highlights key architectural advantages, and shows how Agilex 3 enables efficient AI, vision, and control systems with headroom to scale.

Click to read more

featured chalk talk

From Datasheet to Design: Picking the Perfect Operational Amplifier
In this episode of Chalk Talk, Christopher John Gozon (Goz) from Analog Devices and Amelia Dalton explore the what, where and how of operational amplifiers. They also examine roles that supply voltage, voltage offset, and input bias and input offset current play in operational amplifiers and how you can take advantage of Analog Devices’ op amp innovation for your next design. 
Jul 11, 2025
17,294 views