Complicated Vendor Landscape Presents Opportunities for Differentiation Among Industrial Data Management Providers
By Carter Gordon |
13 Oct 2025 |
IN-7960
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By Carter Gordon |
13 Oct 2025 |
IN-7960
Digital Transformation Is Driving Adoption of Industrial Management Solutions |
NEWS |
Industrial enterprises are facing mounting pressure to implement advanced technologies, particularly Artificial Intelligence (AI). Those that are piloting AI use cases face challenges around cost, scalability, and accuracy of current solutions. The demand for AI enablement and the onset of Industry 5.0 prompts manufacturers to realize the importance of a robust data infrastructure and increasingly adopt industrial data management solutions to implement data strategy.
Complex Vendor Landscape Proves to Be the Main Inhibitor to Adoption |
IMPACT |
Despite pressures for adoption and an extensive array of data management solutions, manufacturers face two main barriers to adoption: Return on Investment (ROI) uncertainty and a complex vendor landscape.
Uncertainty surrounding ROI is nothing new for customers—the industry is rarely filled with early adopters, and the time-sensitive nature of production makes deploying new technologies resource-intensive and high-risk. As a result, an inability to align technology investments with commercial objectives and insufficient time to plan for scaling innovations are two of the top barriers to digital transformation.
However, vendor landscape complexity is unique to industrial data management. Potential solution providers include industrial incumbents (e.g., PTC, Siemens, Rockwell Automation), cloud service providers (e.g., Amazon Web Services (AWS), Microsoft, Google), industrial analytics companies (e.g., Cognite, Palantir), and DataOps platforms (e.g., HighByte, Litmus, Tulip). The data value chain is long and modern solutions are complicated—spanning ingestion and contextualization to predictive and prescriptive analytics. No single vendor offers leading solutions in all stages of data management. Instead, a vast network of partnerships involving competing or overlapping products makes it difficult for customers to identify the right solution.
Opportunities for Differentiation and Competitive Advantage for Vendors |
RECOMMENDATIONS |
A complex vendor network is an opportunity for vendors to differentiate as needs for industrial data management evolve. To gain a competitive edge, vendors must invest in the following areas of innovation:
- Contextualization and Standardization: A major source of innovation is enabling AI to access real-time, contextualized data to automate workflows and generate actionable insights at scale. Suppliers must improve the efficiency of data contextualization at or near the edge and standardize access through Model Context Protocol (MCP) servers to ensure agents can reliably interact with structured, real-time data from multiple sources. Notable innovators are PTC and HighByte: PTC’s ThingWorx 10.0 introduced IoT Streams, which enables real-time, contextualized data to flow from the edge to cloud; HighByte’s latest release of Intelligence Hub leverages AI for contextualization and includes an MCP server to enable configured AI agents to interact with contextualized data.
- Scalability: As AI use cases expand across sites, vendors must offer more than basic data translation. Agentic deployments require a unified layer that orchestrates data flow across edge, cloud, and enterprise applications. An orchestration hub empowers users to scale agents throughout various sites and systems. Industrial DataOps software providers such as HighByte and Litmus are well-positioned for this role due to their existing specialty in data pipelines, though industrial giants including Emerson (via Project Beyond) and Siemens (Industrial Edge and Insights Hub) are also investing in robust, integrated platforms.
- Prescriptive Analytics: Prescriptive analytics remains a new frontier, enabling users to derive precise, actionable recommendations by leveraging real-time data, historical data, and tribal knowledge. Few vendors offer solutions that go beyond predictive insights to automated, closed-loop control. AVEVA (acquired by Schneider Electric) and AspenTech (acquired by Emerson) are two examples to the contrary, with AVEVA Advanced Analytics and Aspen Mtell, both offering real-time recommendations for optimizing assets and operations.
Written by Carter Gordon
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