https://store-images.s-microsoft.com/image/apps.53355.78c49b7a-f50f-417b-8294-57e202089fd0.f7f86f40-04fe-4d62-b94f-baabca096178.31c6176b-b63f-40ca-963d-4869d445516a

Tiger Cloud (Fully-managed TimescaleDB) - Annual Commit

pateikė TigerData

Tiger Cloud: fully-managed TimescaleDB for real-time analytics on operational time-series workloads.

Key Tiger Cloud / TimescaleDB use cases include:

  • IoT and Industrial Monitoring: Companies ingesting sensor data from thousands to millions of devices (20M+ measurements per day)

  • Financial Services: Trading platforms, Crypto and digital wallets, exchanges requiring analytics, time-weighted averages and real-time aggregations

  • Energy (Oil & Gas) and Utilities: Organizations analyzing production data, consumption patterns, and equipment performance


Key Tiger Cloud features:


Built on 100% unforked Postgres, Tiger Cloud is designed to support:

  • Automatic partitioning (Hypertables): Turn any Postgres table into a hypertable that automatically partitions data by time (and optionally space/dimension) for fast ingest even as datasets grow.

  • Hybrid row/columnar storage (Hypercore): Handle both transactional and analytical workloads efficiently.

  • Native compression: Reduce storage costs and speed up analytics by compressing historical data up to 95%, while keeping it fully queryable through the same SQL interface.

  • Precompute common analytical queries and refresh them incrementally (Continuous aggregates): Real-time dashboards stay responsive without batch jobs or materialized view maintenance.

  • Independent storage and compute scaling: Scale compute resources and storage capacity separately based on actual workload needs and pay only for what you use.

  • Automatic data tiering to Azure Blob Storage: Historical data automatically moves to low-cost object storage while remaining queryable. Reduce storage costs without losing accessibility.

  • Native Hybrid Search: Combine high-performance HNSW vector search (pgvectorscale) with BM25 keyword ranking (pg_textsearch), without the complexity of managing a separate vector database or Elasticsearch cluster.

  • Enterprise readiness: Production-grade uptime SLAs, regional data isolation, compliance certifications, backups, High Availability, and 24/7 support reduces operational risk.


Highlights:

  • 100% unforked Postgres: Full SQL compatibility for rapid adoption and integration.

  • Real-time analytics on operational data: hybrid row/columnar storage, incremental materialized views.

  • Storage cost optimization: Native data compression (up to 95%).

Trumpa apžvalga

https://store-images.s-microsoft.com/image/apps.34798.78c49b7a-f50f-417b-8294-57e202089fd0.df5af9ea-3525-47a0-928b-fc4b7ebbe9a5.943a3854-f2ab-4769-8613-0c67ad90bb8a