DataScience Show Podcast
This episode gives C-level leaders and senior data executives a pragmatic playbook for integrating sustainability into enterprise AI strategy. Rather than high-level rhetoric, it lays out measurable metrics (kWh, CO2e per inference/training, infrastructure amortization), practical instrumentation points across the ML lifecycle, and decision frameworks that balance model performance, cost, and carbon. You’ll hear concrete examples of trade-offs—when to retrain versus prune, move workloads between regions or clouds, or swap model architectures—and how to turn sustainability goals into governance controls, procurement requirements, and executive KPIs. The episode explains how to quantify ROI from efficiency (cost savings, regulatory risk reduction, brand value) and operationalize continuous reporting without slowing innovation. Designed for CEOs, CTOs, Chief Data Officers, and Heads of Analytics, this episode equips leaders to make defensible sustainability decisions that align with risk, cost, and competitive priorities. 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.
88 episodes
Comments
0Be the first to comment
Sign up now and become a member of the DataScience Show Podcast community!