VP Content Machine Learning
ViacomCBS
New York, NYThis was removed by the employer on 10/21/2021 6:00:00 AM PST
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Full Time Job
Overview & responsibilities:
The VP of Content Machine will be a key member of the ViacomCBS Content Data Science team, which works to support our business leaders with predictive modeling and analysis to inform major content decisions. The successful candidate for this role a leader in the ML space who can design new methods and algorithms, implement solutions and direct team members in using machine learning techniques. This individual has the ability to tackle large chunks of work unsupervised, and will proactively resolve business problems for the supported business unit. The VP of Content ML will work highly collaboratively with other ViacomCBS teams, building trusted relationships that create value for all groups involved and the company as a whole.
Beyond machine learning, this individual is able to work on frontend as well as backend as needed and can build web applications end-to-end.
This position is very technical and hands-on. This role currently reports to the Senior Vice President for Content Data Science.
Basic qualifications:
• knowledge of current ML, AI techniques, NLP, both in terms of implementation and theory
• Excellent knowledge of Python (including Pandas), familiarity with TensorFlow
• Familiarity with SQL dialects
• Familiarity with AWS environment and deployment.
• Experience with large volume of data (100 tb) as well as with tiny ones (n=50)
• Master degree (PhD preferred) in Data Science, Computer Science, Computational Linguistic, Statistics, Math, Economics, Physics, Astronomy or equivalent
Desired additional qualifications:
• Scientific or technical publications
• Comfortable questioning and challenging assumptions, processes to improve outcomes
• versatile with a wide knowledge of data science / computing / software / math techniques
• previous experience in companies dealing with very large volumes of data