TDengine Blog
View the latest articles about time-series databases and industrial data processing
Powering a Next-Generation Digital Redrying Facility with TDengine
By comprehensively addressing performance bottlenecks in data ingestion, storage, and computation for massive time-series workloads, TDengine has made the redrying process more digitalized, transparent, and intelligent.
TDengine Team
March 27, 2026 | Case Studies, Manufacturing
Building a Foundation for AI-Driven Manufacturing at Kunming Cigarette Factory
This project has validated TDengine’s suitability for handling massive time-series data in the tobacco industry, providing a reusable technical approach for digital transformation across the sector.
TDengine Team
March 27, 2026 | Case Studies, Manufacturing
Why Time-Series Data Alone Is Not Enough: Rethinking Industrial Event Analysis in the Age of AI
To fully realize the value of industrial data, events need to become a native part of the data foundation, not an optional layer.
Jeff Tao
March 26, 2026 | AI-Native Industrial Data Foundation
Asset-Centric Modeling: The Foundation of Industrial Data Context
To fully understand industrial operations, data models must move beyond structure and begin to represent behavior.
Jeff Tao
March 24, 2026 | AI-Native Industrial Data Foundation, Data Historian
From Wonderware to TDengine: Modernizing Data Infrastructure at Dali Cigarette Factory
Leveraging TDengine, Dali Cigarette Factory has implemented comprehensive data collection, storage, and analysis for cigarette rolling and packaging equipment, covering more than 40,000 monitoring points.
TDengine Team
March 20, 2026 | Case Studies, Manufacturing
Seeing Throughput, Blend Quality, and Margin Together in Refinery Operations
Refinery performance does not live in one screen. Throughput, blend quality, and site economics move together, and operations teams need a way to see them together if they want to respond earlier and operate more consistently.
Jim Fan
March 19, 2026 | Data Historian
From Data Archive to TSDB: Why the Industrial Data Foundation Must Be Rebuilt
For decades, the Data Archive has been the core component of industrial data historians. However, when viewed through the lens of industrial internet, IoT, and AI, the assumptions behind Data Archive no longer hold.
Jeff Tao
March 19, 2026 | AI-Native Industrial Data Foundation, Data Historian
Why Asset-Centric Visualization Is Better Than Grafana for Industrial Operations
Generic dashboards are great for flexible charting. But industrial teams need more than charts. They need context, repeatability, and a system that reflects how operations actually work.
Jim Fan
March 19, 2026 | Engineering
From Data Historian to AI-Native Industrial Data Foundation
Data historians solved one of the hardest problems in industrial computing: reliably storing massive volumes of operational data. But in the AI era, simply storing data is no longer enough.
Jeff Tao
March 18, 2026 | AI-Native Industrial Data Foundation
Asset-Centric Data Modeling Is Even More Important in the AI Era for Industrial Operation
When it comes to industrial operations, there is one concept that remains essential—and often overlooked by modern data platforms: Asset-centric data modeling.
Jeff Tao
March 10, 2026 | Engineering


