Czech startup tackles growing engineering shortages and rising manufacturing complexity with AI-driven troubleshooting infrastructure
Edmund, a Czech startup developing AI-powered debugging platform for industrial maintenance, has raised €2.5 million in funding led by FORWARD.one, with participation from University Ventures and Tensor Ventures. The investment will support international expansion and continued development of its platform, which helps manufacturers reduce downtime and preserve critical operational know-how.
Manufacturing is entering a period of structural strain. As production systems become more complex and data-intensive, the availability of skilled engineers is moving in the opposite direction. In Europe alone, tens of thousands of engineering roles remain unfilled, while around 20% of the current workforce is expected to retire within the next decade. This combination of rising complexity and shrinking expertise is leaving companies increasingly dependent on fragmented documentation, legacy systems, and institutional knowledge to keep operations running, driving costly downtime, slow diagnostics, and growing operational risk across global supply chains.
Edmund addresses this gap by deploying AI agents that connect technical documentation, PLC projects, maintenance logs, and real-time machine data into a single system. Rather than acting as a generic chatbot, the platform functions as an operational layer inside the factory, enabling technicians to identify faults, understand root causes, and receive step-by-step guidance within minutes.
In practice, this approach significantly reduces the time required to diagnose issues, cutting troubleshooting from hours or days to minutes. In manufacturing, the majority of downtime is spent diagnosing faults rather than fixing them, often up to 80% of the total time. Edmund cuts this analysis phase by up to 90%, dramatically reducing overall downtime and accelerating recovery. At Amcor Flexibles, for example, Edmund’s system reduced average repair times by 26% in total, saving approximately 440 man-hours annually, per factory.
“The real challenge is not a lack of data, but a lack of context,” said Jakub Szlaur, co-founder and CEO of Edmund. “We’re building AI agents that understand how machines actually work, down to the PLC project level, so instead of searching through documentation or waiting for experts, engineers can act immediately.”
“Edmund is solving one of the most overlooked challenges in industrial maintenance: how knowledge is transferred and applied under pressure,” said Beau Anne-Chilla, Partner at FORWARD.one. “Their approach has the potential to become a foundational layer for modern manufacturing.”
Founded in 2023, Edmund is designed to be hardware-agnostic and compatible with a wide range of industrial systems. The company will use the new funding to grow its team, expand across European and US markets, and further develop its platform toward fully contextual, AI-driven troubleshooting and diagnostics for industrial operations.
Dr. Johannes Triebs, Founding Partner, U2V (ex-Earlybird-X): “We are thrilled to back Edmund AI alongside our friends at FORWARD.one. Edmund is turning the factory floor into an intelligent, self-diagnosing system that gives manufacturers real-time answers instead of costly downtime. Our corporate network spans exactly the industrial players Edmund needs to accelerate its expansion, and we look forward to helping Edmund expand across Europe.”
As manufacturers face increasing pressure to maintain efficiency with fewer experienced workers, the cost of inaction is rising sharply. Research from Siemens estimates that unplanned downtime now accounts for around 11% of revenue for the world’s largest industrial companies – equivalent to roughly $1.4 trillion annually. Against this backdrop, solutions that embed intelligence directly into troubleshooting workflows are expected to play a critical role in the next phase of industrial transformation.
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