DEV Community

Team TigerData for TigerData (Creators of TimescaleDB)

Posted on โ€ข Originally published at timescale.com

2 1

Open-Source Databases for Real-Time Analytics

Real-time analytics break conventional databases. When milliseconds matter and data floods in by the millions, you need purpose-built solutions.

For a deep dive, jump to ๐Ÿ‘‰ The Complete Guide to Time-Series Databases.


Real-Time Analytics Requirements

Real-time analytics systems have several critical requirements:

  • Low ingestion latency: Data must be queryable immediately after collection
  • High write throughput: Systems must handle thousands to millions of writes per second
  • Fast query performance: Analysis queries must return results with minimal delay
  • Downsampling capabilities: Real-time and historical views require different resolutions
  • Continuous aggregation: Pre-computed views enable faster dashboard refreshes

Specialized Time-Series Databases

InfluxDB

  • Real-time capabilities: Sub-second ingestion latency; built for high-throughput writes

  • Query performance: Optimized for time-bounded queries

  • Aggregation: Tasks (formerly Continuous Queries) for real-time aggregation

๐Ÿ”ท Use case fit: Well-suited for IoT, monitoring, and operational analytics

โš ๏ธ Limitations: Query performance can degrade with high cardinality data

Prometheus

  • Real-time capabilities: 10-second default scrape interval; pull-based architecture

  • Query performance: Fast range queries with PromQL

  • Aggregation: Recording rules for pre-computed metrics

๐Ÿ”ท Use case fit: Excellent for infrastructure and application monitoring

โš ๏ธ Limitations: Not designed for long-term storage; samples limited by memory

VictoriaMetrics

  • Real-time capabilities: High ingestion rate with low CPU/memory requirements

  • Query performance: Claims 20x better performance than InfluxDB for some queries

  • Aggregation: Compatible with Prometheus recording rules

๐Ÿ”ท Use case fit: High-cardinality metrics at scale

โš ๏ธ Limitations: Younger project with evolving feature set

PostgreSQL-Based Solutions

Standard PostgreSQL

  • Real-time capabilities: Adequate for moderate data volumes (~10K inserts/sec)

  • Query performance: Requires careful indexing and table partitioning

  • Aggregation: Materialized views, but manual refresh required

๐Ÿ”ท Use case fit: Applications with mixed workloads beyond just time-series

โš ๏ธ Limitations:

  • Performance degrades significantly at scale without extensions
    Lack of native time-series optimizations

  • Lacks built-in features designed explicitly for time-series data, such as automatic data retention, downsampling, or time-based partitioning.

To mitigate common challenges, developers can use PostgreSQL extensions, like Timescale, specifically designed for time-series data and real-time analytics.

TimescaleDB

An open-source PostgreSQL extension that transforms PostgreSQL into a highly performant time-series database.

  • Real-time capabilities: Chunk-based architecture optimized for time-partitioned inserts

  • Query performance: Time-based indexing for fast range scans

  • Aggregation: Continuous aggregates for real-time pre-computation

โ€œContinuous aggregates are what well and truly sold me on Timescale. We went from 6.4 s to execute a query to 30 ms. Yes, milliseconds.โ€
โ€” Caroline Rodewig, Senior Software Engineer

๐Ÿ“– ๐Ÿ‘‰ Real-Time Analytics for Time Series: A Devโ€™s Intro to Continuous Aggregates

๐Ÿ”ท Use case fit:

  • IoT applications that combine device metadata with sensor readings

  • Financial systems requiring time-series analysis with transactional data

  • Application monitoring where relational context enhances metrics

  • Industrial systems that analyze equipment performance across multiple dimensions

  • Hybrid workloads where time-series and relational queries must coexist

โš ๏ธ Limitations: Requires PostgreSQL as a foundation; built on relational database architecture

Selecting the Right Database

Time-series databases have evolved significantly to meet real-time analytics requirements. The best choice depends on your specific workload characteristics, existing infrastructure, and team expertise.

โ€œIโ€™m using Timescale because itโ€™s the same as PostgreSQL but magically faster."
โ€” Florian Herrengt, Co-founder at Nocodelytics

Why Developers Rely on Timescale

Learn how users leverage key features like Continuous Aggregates, Compression, and Hypertables to successfully:

  • Compress data by 90% while keeping raw data accessible.
  • Query 50 billion rows in seconds for real-time insights.
  • Simplify database management for millions of users.
  • Save $12,000/month on database costs with Timescale Cloud.

โ€œIn order for predictive maintenance and collision avoidance to provide contextualized and accurate results, we must gather and process 100M+ data points per machine. We use hypertables to handle these large datasets. We've saved lives using Timescale.โ€
โ€” Jean-Francois Lambert, Lead Data Engineer at Newtrax

Try Timescale Cloud free for 30 days

Or use the open-source TimescaleDB extension

๐Ÿ‘‡
Install from a Docker container:

  1. Run the TimescaleDB container:
docker run -d --name timescaledb -p 5432:5432 -e POSTGRES_PASSWORD=password timescale/timescaledb:latest-pg17
Enter fullscreen mode Exit fullscreen mode
  1. Connect to a database:
docker exec -it timescaledb psql -d "postgres://postgres:password@localhost/postgres"
Enter fullscreen mode Exit fullscreen mode

๐Ÿ’ป ๐—™๐—ถ๐—ป๐—ฑ ๐—จ๐˜€ ๐—ข๐—ป๐—น๐—ถ๐—ป๐—ฒ!

๐Ÿ” Website โ‡’ https://tsdb.co/homepage
๐Ÿ” Slack โ‡’ https://slack.timescale.com
๐Ÿ” GitHub โ‡’ https://github.com/timescale
๐Ÿ” Twitter โ‡’ / timescaledb

๐Ÿ” Twitch โ‡’ / timescaledb

๐Ÿ” LinkedIn โ‡’ / timescaledb

๐Ÿ” Timescale Blog โ‡’ https://tsdb.co/blog
๐Ÿ” Timescale Documentation โ‡’ https://tsdb.co/docs

Google AI Education track image

Build Apps with Google AI Studio ๐Ÿงฑ

This track will guide you through Google AI Studio's new "Build apps with Gemini" feature, where you can turn a simple text prompt into a fully functional, deployed web application in minutes.

Read more โ†’

Top comments (0)

๐Ÿ‘‹ Kindness is contagious

Explore this insightful write-up embraced by the inclusive DEV Community. Tech enthusiasts of all skill levels can contribute insights and expand our shared knowledge.

Spreading a simple "thank you" uplifts creatorsโ€”let them know your thoughts in the discussion below!

At DEV, collaborative learning fuels growth and forges stronger connections. If this piece resonated with you, a brief note of thanks goes a long way.

Okay