Simon Stiebellehner
Effective Machine Learning - Managing Complexity with MLOps
#1about 8 minutes
Understanding why most machine learning projects fail to deliver value
Many ML projects fail despite mature tools and skilled engineers because organizations underestimate the complexity of the full production lifecycle.
#2about 4 minutes
The consequences of unmanaged ML complexity
Ignoring the full ML lifecycle leads to a deployment gap, inefficient manual work, and slow iteration speeds that prevent models from delivering value.
#3about 10 minutes
Analyzing a typical manual machine learning workflow
A case study reveals common pain points in a manual process, including poor reproducibility, inconsistency, and a slow handover to DevOps.
#4about 11 minutes
Designing an ideal automated MLOps process
A best-practice MLOps workflow automates the entire lifecycle using components like a feature store, orchestrated pipelines, and a model registry.
#5about 9 minutes
Choosing between a custom vs managed MLOps platform
Evaluate the trade-offs between building a custom platform with open-source tools versus adopting a managed cloud platform like AWS SageMaker.
#6about 3 minutes
Creating a stepwise transition strategy to MLOps
Adopt MLOps incrementally by first tackling the biggest pain points, such as the deployment gap, to deliver value quickly.
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