RECom: A Compiler Approach to Accelerating Recommendation Model Inference with Massive Embedding Columns
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- RECom: A Compiler Approach to Accelerating Recommendation Model Inference with Massive Embedding Columns
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- Chair:
- Tor Aamodt,
- Program Chair:
- Michael M Swift,
- Program Co-chair:
- Natalie Enright Jerger
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Association for Computing Machinery
New York, NY, United States
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