
Challenges
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Unpredictable Failures:
Machinery failures occurred suddenly, leading to unplanned downtime and high maintenance costs. Lack of historical insights made it challenging to anticipate potential breakdowns.
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Complexity of Data:
Machine logs included a combination of structured data (sensor readings) and metadata, requiring significant preprocessing. Identifying predictive features among numerous parameters like oil temperature, ground vibrations, and absorption rates was challenging.
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Interpretable Predictions:
A traditional black-box model would not provide stakeholders with clarity on the rationale behind predictions.
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Scattered Operations:
Machinery was deployed in geographically dispersed locations, complicating the visualization and tracking of maintenance needs.