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Demystifying A.I. for Software Engineering
STAGE: AMPHITHEATRE ARIS GAROUFALIS
Software engineers are increasingly integrating machine learning (ML) into application development to create innovative solutions. Our in-depth workshop is designed for those eager to enhance their technical skills, covering machine learning and deep learning theories and practical applications. Attendees will learn through interactive lectures and hands-on activities, tackling topics like data preprocessing, feature selection, model building, and algorithm optimization. They'll also explore deep learning architectures such as neural networks.

By the end of the workshop, participants will be equipped to build ML models for their applications, making data-driven decisions and crafting intelligent software. This experience provides a foundation for anyone aiming to specialize in ML or improve their current applications' features. The workshop is an opportunity for both experienced engineers and novices to stay current with AI and ML technological advancements.
Marion Nikoloudaki
Marion Nikoloudaki
Head of Data Science, Light & Wonder
Date
Thursday, May 30, 2024
13:30 -
16:30 EEST
120 MINS
Track
Artificial Intelligence
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Speaker

Marion Nikoloudaki
Head of Data Science, Light & Wonder

Marion is a Head of Data Science and AI consultant, and aims to pursue a PhD in AI. She has an MSc in Data Science & Machine Learning and a BSc in Computer Science. She specializes in applying Data Science and AI to businesses, leading cross-functional teams of engineers and data scientists to design complex solutions. In her spare time, Marion builds AI models on medical data and teaches mathematics and coding to girls, spreading her enthusiasm for STEM.

Connect with Marion Nikoloudaki on:
Marion Nikoloudaki

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