•1 min read•from InfoQ
Netflix Serves 84% of Query Results from Cache with Interval-Aware Caching in Apache Druid


Netflix improves Apache Druid performance with interval aware caching, serving 84% of analytics results from cache and reducing query load by 33%. The system decomposes rolling window queries into reusable time segments, enabling partial cache reuse and recomputation only for recent data. At scale, it reduces scan volume, improves P90 latency, and optimizes real time analytics workloads.
By Leela KumiliWant to read more?
Check out the full article on the original site
Tagged with
#real-time data collaboration
#real-time collaboration
#self-service analytics tools
#generative AI for data analysis
#Excel alternatives for data analysis
#predictive analytics in spreadsheets
#predictive analytics
#big data performance
#self-service analytics
#financial modeling with spreadsheets
#natural language processing for spreadsheets
#big data management in spreadsheets
#conversational data analysis
#intelligent data visualization
#data visualization tools
#enterprise data management
#data analysis tools
#data cleaning solutions
#rows.com
#Netflix