AI + X: Don’t Switch Careers, Add AI
Welcome to AI +X: don’t switch careers, add AI - the official kickoff event of our brand new 2021 event series AI +X in collaboration with Workera.
AI + X is a series designed to share the latest AI trends, applications, opportunities and challenges in various industries, and to provide guidance on how AI practitioners and non-technical professionals can build AI + X careers.
If you have signed up for a Slido access ticket, you will receive an email 3 days before the event including a link to access Slido to post and upvote questions for the speakers.
Agenda:
MC: Sandhya Simhan, Director of Marketing, DeepLearning.AI
5mins: Opening speech: Kian Katanforoosh, Co-founder & CEO, Workera
40mins: Panel discussion:
-Fernando Lucini, Global Lead for Data Science & Machine Learning Engineering, Accenture Applied Intelligence
-Valerie Alleger, Director, Data and Analytics Strategy, EMEA at The Janssen Pharmaceutical Companies of Johnson & Johnson
-Amirali Kia, Director of AI & Computational Biology, Illumina
-Kian Katanforoosh, Founder & CEO, Workera
20 mins: Q&A. We will be taking questions from Slido.
During the panel discussion, the speakers will be discussing topics such as:
discuss topics such as:
-A first-hand experience of adding AI to their domain expertise
-How subject matter experts drive AI in their organizations
-How to look for candidates with dual competencies
-Who should be considering an AI + X career
-How is an MLE pathway different from an AI + X career track
-How can AI practitioners decide what to pursue
To learn more about us and signup for future events:
DeepLearning.AI: https://www.deeplearning.ai/
Workera: https://workera.ai/
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