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how-we-work

MLOps & AIOps to monitor post-production results, looking for model drift, bias, and performance.

By Sel Gerosa, 2 years ago

Model deployment and enterprise deployment support, requires different skillsets than algorithm development

By Sel Gerosa, 2 years ago

Cross-validation of predictive/prescriptive algorithm to make sure the insights are providing business value

By Sel Gerosa, 2 yearsApril 6, 2021 ago

Algorithm prototyping to match best predictive/prescriptive approach for the data, processes with an eye towards explainability, performance, or accuracy

By Sel Gerosa, 2 years ago

Exploratory Data Analysis to develop trends, summarization, and visualizations, prep for predictive analytics

By Sel Gerosa, 2 yearsApril 6, 2021 ago

Meet with stakeholders, users, and decision-makers to understand data & decision making processes

By Sel Gerosa, 2 years ago

Identify use case that will deliver most value to the business

By Sel Gerosa, 2 yearsApril 6, 2021 ago
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