Don’t Ship Broken AI: A Product Playbook for Reliable Machine Learning
AI for Business por Sarah Hajipour
Notas del episodio
Why do so many AI projects stall in notebooks—and what actually gets models into real-time production with measurable ROI? In this episode, Tanu Chellam, SVP of product at Seldon.io breaks down the no-BS path to deploy, monitor, and scale ML at enterprise level.. You’ll learn:
- The shift from “chatbot = AI” to real MLOps and why that matters
- The true cost of latency and late model releases (FS, e-commerce, manufacturing, healthcare)
- Why models get stuck in notebooks—and the playbook to ship anyway
- MLOps maturity signals: team, skills (Kubernetes/infra + ML), and tooling
- Human-in-the-loop vs. person-in-the-middle (and when to use which)
- Model monitoring 101 for execs: uptime/SLA vs. drift, bias, outliers, explainability
- ...
Palabras clave
AI for businessGTMAIfuture of work and AIAI automationAI driven growthAI leadership and managementAI and business transformationai agentsai agentcode optimizationAI in healthcaredata center efficiencycontinuous optimizationeducation & enablementproduct-market fitexecutive buy-inTechstarPM for AI productscost controlhuman-in-the-loopAI readiness,kubernetestime-to-productionROI from MLrecommendation systemsfraud detectione-commerce AImanufacturing AIhealthcare AIfinancial services AIregulated industriesenterprise AIDevOps for MLuptime & latency (SLA)latencyexplainabilitybias detectionanomaly detectiondrift detectionmodel monitoringML in productionreal-time inferencemodel deploymentMLOps