data pipeline, governance, and for growth and updating models regularly needs to be part of the AI strategy from the outset. This session will cover: Defining AI governance: What this means and how definitions of subjects like ethics and effectiveness can differ between organizations. Data governance: Companies must rely on an AI governance program to ensure only high-quality, unbiased and consistent data are used in training. AI is a growing necessity for enterprises / businesses; it provides an avenue for scaling quickly and efficiently. Best practices / implementation: how to implement AI that meets the requirements of the organization’s defined sets of governances. Planning the data pipeline and growing/updating the models: AI is not static in the real world; models must be frequently updated to maintain relevance and accuracy. 3 key takeaways or attendee benefits of the session: Understand how to assess your organization’s need for AI; how to identify the opportune areas for transforming processes, interactions, scaling, cost. How to start the implementation process. Defining data and AI governance and how to build the training data pipeline within that framework. Best practices for maintaining AI; how to use data to evaluate models and continuously iterate on them to reflect the real world.