When to use time-series databases (InfluxDB/TimescaleDB) for quant data?
The question is about Quantitative .
Use a time-series database such as InfluxDB or TimescaleDB if you need fast searches over time periods for system metrics or other specialised time-series needs. Most teams store historical data in Parquet and index only what requires fast access.
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