CIO Influence
CIO Influence News Cloud IoT

TDengine 3.0 Introduces Cloud Native Architecture to Simplify Large-scale Time-Series Data Operations in IoT

TDengine 3.0 Introduces Cloud Native Architecture to Simplify Large-scale Time-Series Data Operations in IoT

TDengine released TDengine 3.0, which adds a cloud-native architecture for Kubernetes deployments and other innovations that both scale and simplify the deployment and management of massive time-series data environments.

Released as open-source software in 2019, TDengine has more than 19,000 stars on GitHub and nearly 140,000 instances in more than 50 countries worldwide. The TDengine Data Platform combines a database with caching, stream processing, and data subscription as a complete, purpose-built solution for time-series data in IoT applications. TDengine solves common high-cardinality problems with a unique architecture that supports billions of data points while still out-performing general purpose and legacy time-series databases in data ingestion, querying, and data compression.

Latest ITechnology News: Developer Product from Blues Wireless Accelerates Prototyping Low-Power IoT Device Clusters

“As large-scale IoT deployments generate ever-increasing amounts of data, time series databases are soaring in popularity,” said Jeff Tao, founder, and CEO of TDengine. “TDengine 3.0 delivers an open-source platform specifically designed for these modern time-series operations. It’s easy to deploy and query, and scales to handle the terabytes to petabytes of data generated daily by billions of IoT sensors and data collectors.”

TDengine 3.0, which is immediately available, adds:

Kubernetes and Serverless Container Support, providing a fully distributed architecture that decouples compute and storage resources for dynamic scaling. TDengine can be deployed on public, private, or hybrid clouds.

Latest ITechnology News: PlainID Announces its General Availability Release of PlainID’s SaaS enabled Authorization Platform

High Scale for Growing IoT and Other Deployments, with a TDengine cluster that can have billions of time-series data points, while starting up a cluster in less than a minute. This eliminates high-cardinality issues common in IoT and other environments with large numbers of endpoints.

High Performance on Time Series Data, with 2-5x the speed of other time-series databases and 10x the read/write performance of general-purpose databases.

Cache Storage of New Data, eliminating the need to integrate with a separate caching solution for high-speed queries of time-series data.

Built-in Data Subscription tailored specifically for time series data in IoT architectures. This fast and efficient data subscription reduces system complexity and operation cost.

Stream Processing with sliding windows and standard SQL syntax for both traditional continuous queries and event-driven stream computing.

Easy Time-series Data Analytics. TDengine provides SQL query support and integrates with popular analytics and observability tools, including Grafana, Google Data Studio, and Prometheus. Innovations like super tables, storage and compute separation, data partitioning by time interval, and pre-computation make it easy to access data in a highly efficient manner.

Latest ITechnology News: New App Stability Report Shows Release Cadence of Top Mobile Apps Is Speeding Up by 40%

[To share your insights with us, please write to sghosh@martechseries.com]

Related posts

Intellinetics Showcased New Accounts Payable Automation Solution at IBS 2023

Business Wire

Vectra AI Adds Advanced Hybrid Attack Detection, Investigation and Response Capabilities for AWS

CIO Influence News Desk

Cynamics Provides Everywhere-Visibility with New Cloud-Native NDR

CIO Influence News Desk