We will be at VISUM Summer School

For the third time in a row, we are proud sponsors of VISUM summer school. VISUM is a worldwide reference summer school in Computer Vision and Machine Intelligence, attracting both experts and students to exchange experiences and knowledge in the field. VISUM has counted on the honor of receiving students from all corners of the world.

This year is crucial for VISUM, being its ten anniversary. Attendants will enjoy lectures on hot topics such as self-supervised learning, explainable AI, privacy-preserving ML, and deep generative models. Imagine getting all that knowledge! You are drooling now, right?  We certainly are. Would it even be possible to invest one week of your summer doing anything better than learning such advanced AI topics? Certainly not!

We don’t like to sit in the back seat. So, we are involved in the advisory committee. We will hold a workshop in collaboration with Loggi, where we will use our proprietary AI consulting methodology to ideate how we would solve the VISUM challenge. We will also offer mentorship sessions to students. Take the opportunity to be mentored by top talent from companies like FARFETCH, Priberam, OmicEra Diagnostics, IBM Research, Ocean Infinity, Siemens Healthineers, Deeper Insights, and NILG.AI.

The application deadline is tomorrow. Run, Forrest, run!

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