Teamwork and Collaboration

Teamwork and Collaboration

It has been said by many ML team leaders that AI and machine learning is a team sport. It requires collaboration between the business (executive leadership, line of business leaders, business analysts, subject matter experts), the data team (data engineers and architects), the IT team (who will run all of the systems), and the ML team (including ML architects, and data scientists.) Any good ML platform will be built on a foundation of teamwork and collaboration. The goal should be to allow one large team, made up of a variety of different disciplines to have one place to go to work together around shared objectives in a way that works with each of their skills.

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