
Tiger Data - Creators of TimescaleDB
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Tiger Data - Creators of TimescaleDB
@TigerDatabase
The fastest PostgreSQL cloud platform for time series, real-time analytics, and vector workloads. Creators of TimescaleDB. https://t.co/KhYccImbg5








The most important AI systems of the next decade will not live in chat windows. They will run factories, warehouses, energy systems, and fleets. AI is moving from analyzing operations to helping run them. Earlier this year, @nvidia introduced its Multi-Agent Intelligent Warehouse blueprint. What stood out was not just the agents themselves, but the architecture behind them. Instead of dashboards and alerts, specialized agents coordinate across machine telemetry, robotics systems, workforce operations, forecasting, and inventory to support real-time decisions in the physical world. You can see the architecture NVIDIA is proposing here: developer.nvidia.com/blog/multi-age… And the full blueprint here: build.nvidia.com/nvidia/multi-a… Systems like this depend on continuous access to operational data. Factories, warehouses, and energy systems already generate massive streams of telemetry from sensors, robots, PLCs, and machines. The challenge has never been collecting the data. The challenge is to reason quickly enough to act. The architecture starts to look like this: machines → telemetry → database → AI agents → decisions → machines This creates a real-time operational data loop. Agents do not operate in isolation. They need access to the operational history of the systems they manage. Telemetry, events, anomalies, and trends over time. In agent-driven industrial systems, the database becomes the memory layer for machines. Many industrial platforms already rely on Postgres and TimescaleDB to store and analyze time-series telemetry from machines and infrastructure. At Tiger Data, the company behind TimescaleDB, we see this pattern across industrial IoT platforms, fleet monitoring systems, and manufacturing analytics. The future of industrial AI is not just better models. It is systems that can continuously reason across operational data.













