At CERN (European Organization for Nuclear Research), machine learning models are developed and deployed for various applications, including data analysis, event reconstruction, and classification. These models must not only be highly sophisticated but also optimized for efficient inference. A critical application is in Triggers- systems designed to identify and select interesting events from an immense stream of experimental data. Experiments like ATLAS and CMS generate data at rates of approximately 100 TB/s, requiring Triggers to rapidly filter out irrelevant events. This talk will explore the challenges of deploying machine learning in such high-throughput environments and discuss solutions to enhance their performance and reliability.
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Speaker
Sanjiban Sengupta
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