Eugene Yan shared insights from his experience building and scaling a data science function at Lazada, highlighting three key challenges. These included determining the appropriate level of business input versus automated decision-making, managing the pace of development against production stability, and effectively prioritizing tasks with business stakeholders. Yan detailed how excessive manual intervention in areas like product ranking could negatively impact site performance, necessitating data-driven A/B testing to establish optimal thresholds for manual adjustments. AI
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RANK_REASON This is an opinion piece by a named individual discussing challenges in applying data science within a specific company context.