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DataLike: Interview with Camila Manera Schor

Camila Manera works as Chief Data Officer and AI Strategist. Her job involves all aspects of data: stewardship, privacy, security, compliance, management, governance, quality, and reliability. She comes from a tech background, with a degree in AI and Machine Learning from Massachusetts Institute of Technology. She has extensive public speaking experience with talks given at major global events, including TEDx Barcelona, World Data Summit in the Netherlands, World Artificial Intelligence Cannes Festival, and Google Connect Miami. She is also a woman tech ambassador at Google where she empowers her community by organizing events, public speaking, content creation, and mentoring. She also has a podcast “Cometo Errores Todos Los Dias” where she discusses how to prepare for workforce changes.

You can keep up with Camila at:




Ndane Ndazhaga is a Data Scientist who loves using data to improve businesses and help make decisions.
Ndane Ndazhaga is a Data Scientist who loves using data to improve businesses and help make decisions.

Isabella Bicalho-Frazeto is an all-things machine learning person who advocates for democratizing machine learning.
Isabella Bicalho-Frazeto is an all-things machine learning person who advocates for democratizing machine learning.

Datalike

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