<?xml version="1.0" encoding="UTF-8"?>
<rss version="2.0">
  <channel>
    <title>InfluxData Blog - Ben Corbett</title>
    <description>Posts by Ben Corbett on the InfluxData Blog</description>
    <link>https://www.influxdata.com/blog/author/ben-corbett/</link>
    <language>en-us</language>
    <lastBuildDate>Mon, 20 Apr 2026 00:00:00 +0000</lastBuildDate>
    <pubDate>Mon, 20 Apr 2026 00:00:00 +0000</pubDate>
    <ttl>1800</ttl>
    <item>
      <title>From Edge to Enterprise: How Litmus and InfluxDB Are Modernizing the Industrial Data Stack</title>
      <description>&lt;p&gt;Today at Hannover Messe, InfluxData is announcing a strategic partnership with Litmus to address one of the most persistent challenges in industrial data: &lt;strong&gt;getting reliable, contextualized telemetry from the shop floor into production systems&lt;/strong&gt;.&lt;/p&gt;

&lt;p&gt;Litmus bridges the gap between OT systems and modern IT infrastructure, while InfluxDB serves as the industrial data hub, giving organizations both real-time operational visibility and enterprise-scale historical analysis in a unified architecture.&lt;/p&gt;

&lt;p&gt;&lt;img src="//images.ctfassets.net/o7xu9whrs0u9/ZK8Y3Nel8ihgcMLPyAleL/171b1f00ed9918d40f48afdab4c87199/Screenshot_2026-04-17_at_2.00.54â__PM.png" alt="Influx + Litmus logo" /&gt;&lt;/p&gt;

&lt;p&gt;By integrating &lt;a href="https://litmus.io/litmus-edge"&gt;Litmus Edge&lt;/a&gt; with &lt;a href="https://www.influxdata.com/products/influxdb3-enterprise/?utm_source=website&amp;amp;utm_medium=litmus_and_influxdata_partnership&amp;amp;utm_content=blog"&gt;InfluxDB 3 Enterprise&lt;/a&gt;, teams can collect and contextualize data at the source, then write it into a time series engine built for high-resolution data. Litmus handles connectivity and data normalization at the edge. InfluxDB provides high-throughput ingestion, real-time querying, and cost-efficient long-term storage, deployable at the edge, in the enterprise layer, or both.&lt;/p&gt;

&lt;p&gt;The result is a system that captures every signal, retains its context, and makes it immediately usable&lt;/p&gt;

&lt;h2 id="the-industrial-data-problem"&gt;The industrial data problem&lt;/h2&gt;

&lt;p&gt;Something has shifted in industrial sectors. Modernization is no longer a roadmap item, but it’s starting to hit real constraints. The pull: industrial AI initiatives, predictive maintenance, cross-site analytics, digital twins, offer attractive value propositions. The push: legacy data historians are buckling under the demands of modern industrial operations, and the cost of extension is becoming harder to justify.&lt;/p&gt;

&lt;p&gt;OT environments are notoriously fragmented. PLCs, CNCs, SCADA systems, and sensors operate across different protocols, vendors, and network boundaries. Getting that data into a usable, consistent format still requires heavy integration, time, and cost.&lt;/p&gt;

&lt;p&gt;Traditional Historians made progress on the industrial data problem, but they weren’t built for what comes next. They struggle to preserve context across systems, degrade under high-frequency ingest and query load, and make cross-site analysis slow and expensive. This forces teams into trade-offs between fidelity, scale, and cost.&lt;/p&gt;

&lt;p&gt;&lt;strong&gt;That’s the core issue: the value of industrial data is in its resolution and context. Most systems weren’t designed to retain either at scale.&lt;/strong&gt;&lt;/p&gt;

&lt;h2 id="how-litmus-and-influxdb-work-together"&gt;How Litmus and InfluxDB work together&lt;/h2&gt;

&lt;p&gt;To move forward, teams need an architecture built for how industrial data actually behaves: high-frequency, distributed, and context-dependent. Litmus Edge and InfluxDB 3 Enterprise provide that foundation by collecting and structuring data at the edge, then making it available centrally without losing resolution or context.&lt;/p&gt;

&lt;p&gt;Here’s how that looks in practice:&lt;/p&gt;

&lt;p&gt;&lt;img src="//images.ctfassets.net/o7xu9whrs0u9/5OMDcrZFgEbU1ZBcZ8Uy8G/870217aff5fd191fde503594b80db336/Screenshot_2026-04-17_at_2.03.15â__PM.png" alt="Litmus + IDB architecture" /&gt;&lt;/p&gt;

&lt;ul&gt;
  &lt;li&gt;&lt;strong&gt;250+ prebuilt industrial connectors&lt;/strong&gt;. Out-of-the-box connectivity to industrial data sources, including legacy systems and proprietary protocols. No custom integration required.&lt;/li&gt;
  &lt;li&gt;&lt;strong&gt;Collect and contextualize at scale&lt;/strong&gt;. Normalize and contextualize telemetry from the source, with unlimited cardinality that preserves full context without compromising query performance.&lt;/li&gt;
  &lt;li&gt;&lt;strong&gt;Centralized data, not silos&lt;/strong&gt;. Bring telemetry from tools, teams, and sites into a single architecture, from single-site monitoring to cross-plant analytics, without a data consolidation project.&lt;/li&gt;
  &lt;li&gt;&lt;strong&gt;Buffered, store-and-forward data transfer&lt;/strong&gt;. Buffer and transmit data from remote sites with intermittent connectivity, with no loss or manual recovery.&lt;/li&gt;
  &lt;li&gt;&lt;strong&gt;Retain more, spend less&lt;/strong&gt;. Keeps high-resolution data accessible long-term with object storage, without driving up storage costs as you scale.&lt;/li&gt;
&lt;/ul&gt;

&lt;p&gt;&lt;img src="//images.ctfassets.net/o7xu9whrs0u9/7fPG6jqxIE4VktLXwV8SbR/4520cfd13bd2e3f1b503de0ef732f5ea/Screenshot_2026-04-17_at_2.04.58â__PM.png" alt="Litmus quote 1" /&gt;&lt;/p&gt;

&lt;h2 id="the-edge-collect-contextualize-buffer"&gt;The edge: collect, contextualize, buffer&lt;/h2&gt;

&lt;p&gt;Litmus Edge acts as the intelligence layer between your machines and the rest of your data architecture. With 250+ native connectors spanning OPC-UA, Modbus, MQTT, FANUC, Siemens S7, and more, it connects directly to industrial sources (PLCs, CNCs, DCS, SCADA systems, sensors, and beyond) without custom integration.&lt;/p&gt;

&lt;p&gt;But connectivity alone isn’t enough. Raw signals without context aren’t useful. Litmus Edge tags, enriches, and structures data at the point of collection so a temperature reading is tied to an asset, production line, facility, and product run. By the time it leaves the edge, it’s already queryable.&lt;/p&gt;

&lt;h2 id="the-industrial-data-hub-centralize-scale-retain"&gt;The industrial data hub: Centralize, scale, retain&lt;/h2&gt;

&lt;p&gt;InfluxDB 3 serves as the system of record for industrial time series data, whether deployed at the edge, centralized in the enterprise layer, or both.&lt;/p&gt;

&lt;p&gt;At the site level, InfluxDB runs locally alongside Litmus Edge, ingesting full-resolution telemetry and serving low-latency queries for real-time operations. It operates autonomously, so if connectivity to the central hub is interrupted, data is buffered locally and automatically forwarded when the connection is restored. There’s no data loss or manual intervention.&lt;/p&gt;

&lt;p&gt;At the enterprise level, a centralized InfluxDB cluster aggregates data from every site into a single query layer across assets, plants, and time horizons. This creates a consistent, high-resolution data layer that can be used across operations, analytics, and industrial AI.&lt;/p&gt;

&lt;p&gt;&lt;img src="//images.ctfassets.net/o7xu9whrs0u9/27iTqGpIQNfbNF1D1C9PUU/b6a34c5dc5099af641a34a9f803cf32f/Screenshot_2026-04-17_at_2.05.49â__PM.png" alt="Litmus quote 2" /&gt;&lt;/p&gt;

&lt;h2 id="the-bridge-to-higher-level-analytics"&gt;The bridge to higher-level analytics&lt;/h2&gt;

&lt;p&gt;With high-resolution, contextualized data available across systems, teams can move beyond basic monitoring. Predictive maintenance, anomaly detection, and cross-site analytics all depend on full-fidelity data. Industrial AI at the edge depends on low-latency access to it. Without that foundation, these systems don’t operate reliably. That’s what this architecture enables.&lt;/p&gt;

&lt;h2 id="get-started"&gt;Get started&lt;/h2&gt;

&lt;p&gt;Whether you’re starting a greenfield initiative or hitting the limits of your current industrial data infrastructure, we’d love to talk.&lt;/p&gt;

&lt;p&gt;Reach out to &lt;a href="https://www.influxdata.com/contact-sales/"&gt;connect to an expert&lt;/a&gt; or join the conversation in the &lt;a href="https://community.influxdata.com/"&gt;InfluxData Community Forums&lt;/a&gt; where our team and broader community are active.&lt;/p&gt;

&lt;p&gt;If you’re attending Hannover Messe, &lt;a href="https://www.influxdata.com/event/meet-influxdb-at-hannover-messe-2026/?utm_source=website&amp;amp;utm_medium=litmus_and_influxdata_partnership&amp;amp;utm_content=blog"&gt;come find me at the Litmus booth&lt;/a&gt; (Stand A09 in Hall 16) and see the architecture running end-to-end.&lt;/p&gt;
</description>
      <pubDate>Mon, 20 Apr 2026 00:00:00 +0000</pubDate>
      <link>https://www.influxdata.com/blog/litmus-and-influxdata-partnership/</link>
      <guid isPermaLink="true">https://www.influxdata.com/blog/litmus-and-influxdata-partnership/</guid>
      <category>Company</category>
      <category>Product</category>
      <author>Ben Corbett (InfluxData)</author>
    </item>
    <item>
      <title>From Edge to Cloud: How Litmus Edge and InfluxDB Unlock Industrial Intelligence at Hannover Messe</title>
      <description>
&lt;p&gt;If you’ve spent time in industrial environments, you know the problem isn’t a lack of data. It’s collecting it reliably, contextualizing it, and storing it at scale. Most stacks weren’t built to fight all three battles.&lt;/p&gt;

&lt;h2 id="the-industrial-data-problem"&gt;The industrial data problem&lt;/h2&gt;

&lt;p&gt;Industrial connectivity is no joke. OT environments are notoriously fragmented and siloed, spanning PLCs, CNCs, SCADA systems, and sensors, each speaking a different protocol, running on a different vendor’s stack, and operating in a network zone that was never designed to talk to anything outside the shop floor.  Extracting value from that data has traditionally required heavy IT involvement, expensive integrations, and months of professional services work, and the traditional answer was usually a historian. Historians made progress on the access problem, giving individual sites a way to capture and store machine data. But standardizing that data across silos and contextualizing it across systems and plants is where they fall short. And unfortunately, that’s where most of the value lies.&lt;/p&gt;

&lt;p&gt;Once data is collected and contextualized, the next problem is keeping it useful at scale. This is more than a storage problem. Sustaining high-frequency ingest of contextualized telemetry and querying that data fast enough to act on it is where most systems break. Historians were not designed for this. They sacrifice resolution, degrade under query load, and make cross-site, cross-system analysis slow and impractical. The value in industrial data is in the detail, and most platforms are architected to throw this detail away.&lt;/p&gt;

&lt;h2 id="collect-contextualize-and-storeall-at-the-edge"&gt;Collect, contextualize, and store—all at the edge&lt;/h2&gt;

&lt;p&gt;&lt;a href="https://litmus.io/litmus-edge"&gt;Litmus Edge&lt;/a&gt; acts as the intelligence layer between your machines and the rest of your data architecture. It connects natively to hundreds of industrial protocols, including OPC-UA, Modbus, MQTT, FANUC, Siemens S7, and many more, normalizing disparate machine data into a unified, consistent stream.&lt;/p&gt;

&lt;p&gt;But connectivity alone isn’t enough. Raw machine signals mean little without context. Litmus Edge allows operations teams to tag, enrich, and structure data at the point of collection. A temperature reading becomes tied to a specific asset, production line, facility, and product run. By the time data leaves the edge, it is no longer just a number. It is a meaningful, queryable event.&lt;/p&gt;

&lt;h2 id="scale-query-retain-your-industrial-data-hub"&gt;Scale, query, retain: your industrial data hub&lt;/h2&gt;

&lt;p&gt;&lt;a href="https://www.influxdata.com/products/influxdb3-enterprise/?utm_source=website&amp;amp;utm_medium=litmus_edge_influxdb&amp;amp;utm_content=blog"&gt;InfluxDB 3&lt;/a&gt; becomes the system of record for your industrial time series data at the edge, in a centralized environment, or both.&lt;/p&gt;

&lt;p&gt;It ingests high-frequency telemetry at full resolution, serves low-latency queries for real-time operations, and scales to fleet-wide analysis across sites and time horizons without forcing tradeoffs between fidelity and cost. High cardinality isn’t a problem to design around. Long-term retention doesn’t require a cost penalty. The data stays detailed, queryable, and useful.&lt;/p&gt;

&lt;h2 id="scaling-across-lines-sites-and-the-enterprise"&gt;Scaling across lines, sites, and the enterprise&lt;/h2&gt;

&lt;p&gt;Scale changes what’s possible, but only if the data model scales with it. When every site collects and contextualizes data the same way, writing to a consistent schema, cross-site analysis becomes straightforward. Comparing performance across plants, identifying outliers, and correlating signals across a global fleet become simple queries instead of integration projects. That consistency is what the Litmus and InfluxDB architecture is designed to deliver.&lt;/p&gt;

&lt;ul&gt;
  &lt;li&gt;&lt;em&gt;Which production lines across all facilities are showing early indicators of equipment degradation?&lt;/em&gt;&lt;/li&gt;
  &lt;li&gt;&lt;em&gt;How does energy consumption per unit compare across sites running similar processes?&lt;/em&gt;&lt;/li&gt;
  &lt;li&gt;&lt;em&gt;Where are the outliers? And what can the top performers teach the rest of the network?&lt;/em&gt;&lt;/li&gt;
&lt;/ul&gt;

&lt;p&gt;These are not hypothetical future capabilities. They are available today to any organization willing to invest in getting the data foundation right.&lt;/p&gt;

&lt;h2 id="the-bridge-to-higher-level-analytics"&gt;The bridge to higher-level analytics&lt;/h2&gt;

&lt;p&gt;InfluxDB doesn’t just store data well; it integrates cleanly with the ecosystem: the analytics, visualization, and AI/ML tooling your teams are already investing in. Grafana dashboards, anomaly detection workflows, and digital twin platforms connect through InfluxDB’s SQL-native interface and open APIs without custom pipelines or bespoke integration work.&lt;/p&gt;

&lt;p&gt;For OT teams, that’s the point. The edge handles the hard part—protocol translation, normalization, enrichment. InfluxDB centralizes the results into a single, interoperable data layer that every team can query with the tools they already use.&lt;/p&gt;

&lt;p&gt;The result is a data architecture that is genuinely interoperable; the plant floor and the enterprise layer are finally speaking the same language.&lt;/p&gt;

&lt;h2 id="extending-into-the-cloud-with-aws"&gt;Extending into the cloud with AWS&lt;/h2&gt;

&lt;p&gt;There are several ways to deploy InfluxDB as your industrial data hub: on-premises, at the edge, or in the cloud. For teams who want to go straight to the cloud, AWS is a natural fit. In this reference architecture, Litmus Edge writes contextualized telemetry directly into &lt;a href="https://www.influxdata.com/products/timestream-for-influxdb/?utm_source=website&amp;amp;utm_medium=litmus_edge_influxdb&amp;amp;utm_content=blog"&gt;Amazon Timestream for InfluxDB&lt;/a&gt;, creating a seamless path from the shop floor to cloud-scale analytics. This allows teams to centralize access, scale analytics, and integrate with the broader AWS ecosystem without rebuilding their infrastructure from scratch.&lt;/p&gt;

&lt;p&gt;&lt;img src="//images.ctfassets.net/o7xu9whrs0u9/7I05B89zisdmKtUk9EiUt6/e10ba53b117ae6b4c25dcfd791321705/image__6_.png" alt="Litmus Edge diagram" /&gt;
&lt;br /&gt;&lt;/p&gt;

&lt;p&gt;Once data is available in AWS, it opens up a broader set of capabilities. For example, as new data arrives, you can trigger serverless workflows with AWS Lambda, stream high-velocity data through Kinesis for downstream processing, or connect directly to SageMaker to train models on high-fidelity data, without reshaping or downsampling it first.&lt;/p&gt;

&lt;h2 id="what-were-showing-at-hannover-messe"&gt;What we’re showing at Hannover Messe&lt;/h2&gt;

&lt;p&gt;At Hannover Messe, you’ll be able to see this architecture running end-to-end:&lt;/p&gt;

&lt;ul&gt;
  &lt;li&gt;&lt;strong&gt;&lt;a href="https://litmus.io/hannover-messe-2026"&gt;Litmus booth&lt;/a&gt; (Hall 16, Stand A09)&lt;/strong&gt;: The full Digital Factory demo, showing how data flows from industrial systems into Litmus and into InfluxDB 3 Enterprise in real-time.&lt;/li&gt;
  &lt;li&gt;&lt;strong&gt;&lt;a href="https://www.influxdata.com/event/meet-influxdb-at-hannover-messe-2026/?utm_source=website&amp;amp;utm_medium=litmus_edge_influxdb&amp;amp;utm_content=blog"&gt;InfluxData kiosk&lt;/a&gt; (within the Litmus booth)&lt;/strong&gt;: A deeper look at how InfluxDB handles high-frequency ingest, real-time querying, and efficient storage at massive scale.&lt;/li&gt;
  &lt;li&gt;&lt;strong&gt;AWS booth (Litmus kiosk)&lt;/strong&gt;: The cloud extension of the demo, highlighting replication into Amazon Timestream for InfluxDB and integration with AWS services.&lt;/li&gt;
&lt;/ul&gt;

&lt;p&gt;The InfluxData team (including myself) will be on-site at the Litmus booth throughout the event to walk through the architecture and discuss real-world deployment patterns.&lt;/p&gt;

&lt;p&gt;&lt;br /&gt;&lt;/p&gt;

&lt;p&gt;&lt;em&gt;Post by Ben Corbett, InfluxData; Rajesh Gomatam, Ph.D. Principal Partner Solutions Architect - Manufacturing, AWS; and Benjamin Norman, Partner Solution Architect, Litmus&lt;/em&gt;&lt;/p&gt;
</description>
      <pubDate>Thu, 16 Apr 2026 06:00:00 +0000</pubDate>
      <link>https://www.influxdata.com/blog/litmus-edge-influxdb/</link>
      <guid isPermaLink="true">https://www.influxdata.com/blog/litmus-edge-influxdb/</guid>
      <category>Demo</category>
      <category>Product</category>
      <category>Developer</category>
      <author>Ben Corbett (InfluxData)</author>
    </item>
  </channel>
</rss>
