Qt and Ekkono are working together to improve machine learning integration in the embedded development space. Ekkono has its own SDK, built to help developers rapidly deploy edge machine learning to embedded connected devices, allowing for conscious, self-learning, and predictive software. Imagine if all this functionality was easily adaptable into your existing Qt workflows. The possibilities are mind-boggling.
In this webinar you will learn how:
• Ekkono and Qt are paving the way for a streamlined method to implement a machine learning model for anomaly detection within a Qt application
• Improve workflows between machine learning experts and embedded stakeholders (UI/UX + Product managers + Embedded developers)
• Learn how the integration between Ekkono's machine learning for the Edge and Qt framework provides a faster iteration and prototyping procedure for all stakeholders in the embedded space (machine learning experts, embedded developers, UI/UX experts
Here's a quick 5-minute video that will provide you with an overview of the highlight features comin...
Watch videoAs development projects grow in complexity, technical debt increases exponentially impacting readabi...
Watch videoWhat lies ahead for the automotive industry? Which trends and technologies are shaping the landscape...
Watch videoHow can we help developers create high-quality software while minimizing the introduction of errors ...
Watch videoQt Group includes The Qt Company Oy and its global subsidiaries and affiliates.