Machine Learning Prague | Avnet Silica

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Machine Learning Prague

Machine Learning Prague

27 May 2022 - 30 May 2022

Prague, Czech Republic


We are looking forward to seeing you at Machine Learning Prague

We are excited to be platinum sponsors at Machine Learning Prague from 27 – 29 May 2022. The conference will be taking place at La Fabrika and will include an excellent line up of interactive presentations and workshops from 45 international Artificial Intelligence (AI) and Machine Learning (ML) experts. 

 

 

AI is playing a key role in the industrial automation of tomorrow, particularly machine learning. Fine-tuning between hardware, software and machine learning algorithms, is crucial for a successful implementation of machine learning tasks. Using the right data sets, tools and hardware components, will reduce development time and risk. Avnet Silica focuses on different machine learning technology areas and provides state-of-the-art machine learning solutions close to end customer applications in order to simplify the deployment of customer solutions in different key markets. 

Visit us and meet with our AI/ML specialists to find out how we can make your devices smarter.

Register Now

Machine Learning Prague | Avnet Silica

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