DataScience Show Podcast
Executives often treat ML performance as a technical KPI rather than an economic one. This episode gives C-level leaders and senior data practitioners a pragmatic framework to quantify the full cost of a model decision—compute, latency, data pipelines, monitoring, human review, and downstream business actions—and then align engineering and product trade-offs to measurable ROI. I walk through concrete cost-allocation models, decision-aware SLAs, and pragmatic ways to surface marginal value per prediction so leaders can prioritize models, choose appropriate architectures (edge vs. cloud, batch vs. real-time), and set budgeted retraining cadences. Real-world use cases (fraud detection, pricing, product recommendations) illustrate when to favor cheaper, faster models versus costly high-accuracy ones. The episode concludes with governance controls that keep operational costs visible and the organization accountable for economic outcomes, not just model metrics. Become a supporter of this podcast: https://www.spreaker.com/podcast/datascience-show-podcast--6817783/support [https://www.spreaker.com/podcast/datascience-show-podcast--6817783/support?utm_source=rss&utm_medium=rss&utm_campaign=rss]. I share practical AI leadership notes on LinkedIn — the kind you can forward internally or reuse in executive discussions. Follow Mirko on LinkedIn [https://www.linkedin.com/in/m365showpodcast/] if you want decision-ready frameworks, not hype.
77 episodios
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