addb-swstarlab/K2vTune
K2vTune (A Workload-aware Configuration Tuning for RocksDB)
Database administrators and performance engineers can use K2vTune to automatically fine-tune RocksDB, a high-performance embedded database. It takes your specific database workload (the types of read/write operations) as input and outputs optimized RocksDB configuration settings. This helps you achieve better performance across multiple metrics without manual trial-and-error.
No commits in the last 6 months.
Use this if you manage RocksDB databases and need to improve their performance for varied and unpredictable workloads, without manually adjusting complex configuration settings.
Not ideal if you are using a different type of database than RocksDB, or if your database performance issues stem from hardware or network bottlenecks rather than configuration.
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Jupyter Notebook
License
GPL-2.0
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Last pushed
Nov 15, 2023
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