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Audrey Cheng | TAOBench: An End-to-End Benchmark for Social Network Workloads | #15

Season 2, Ep. 5

Summary: This episode features Audrey Cheng talking about TAOBench, a new benchmark that captures the social graph workload at Meta. Audrey tells us about the features of workload, how it compares with other benchmarks, and how it fills a gap in the existing space of benchmark. Also, we hear all about the fantastic real-world impact the benchmark has already had across a range of companies.


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