Biathlon: Harnessing Model Resilience for Accelerating ML Inference Pipelines
Chaokun Chang,
Eric Lo,
Chunxiao Ye
Abstract:Machine learning inference pipelines commonly encountered in data science and industries often require real-time responsiveness due to their user-facing nature. However, meeting this requirement becomes particularly challenging when certain input features require aggregating a large volume of data online. Recent literature on interpretable machine learning reveals that most machine learning models exhibit a notable degree of resilience to variations in input. This suggests that machine learning models can effe… Show more
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