Fixing Agile for Machine Learning...
Fixing Agile for Machine Learning Development

Talking Machines (But Chill) por Joe Schlanger

Notas del episodio

Fixing Agile for Machine Learning explores why traditional Agile frameworks struggle in data science and AI—and what to do instead.

Agile was built for predictable software delivery. Machine learning is anything but predictable. Models fail, data shifts, experiments dead-end, and “done” is never binary. When teams force ML work into classic Scrum rituals, the result is frustration, fake estimates, and broken trust with stakeholders.

This podcast reframes Agile for the realities of machine learning. We dive into:

  • Why user stories, velocity, and sprint commitments break down in ML
  • How to shift from delivery-centric planning to learning-centric execution
  • Redefining “done” for experiments, models, and data
  • Separating research from production without losing momentum
  • Making data qu ... 
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