Benefits and Added Value of AI in Mechanical and Plant Engineering

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0 Minutes
Date: 
04/15/2026
By 
Michael Hering
Table of contents

According to the VDMA, two out of three AI projects fail. The causes often lie in an unclear project approach, a lack of resources, and the mistaken expectation that AI works like a traditional IT project with fixed start and end dates. AI, however, requires continuous maintenance, training, and fine-tuning. Companies must be prepared to commit fully to the process. Half-measures rarely lead to success.

1. Data Quality as a Key Success Factor

AI can only deliver meaningful results if it is fed high-quality, realistic, and up-to-date data. In industrial settings in particular, it is crucial that AI works with real-world condition data. This could include, for example, photos of used, dirty spare parts rather than idealized new parts. This data is often not freely available and must be extracted from internal systems such as the ticket system or CAD archive.

2. Requirements for Successful AI Projects

Companies should explore specific use cases early on and assess whether they have the necessary data infrastructure in place. AI can only realize its full potential if there is a genuine need for it and the organization is willing to commit to the project. Employees must be involved from the very beginning—not as potential “losers,” but as co-creators of new processes.

3. Specific Use Cases

3.1 Planning Runs in the ERP System

One particularly effective area of application is the processing of planning runs. Up to 90% of the tasks are repetitive and can be automated using AI. This saves time, reduces errors, and improves the quality of planning. Employees can focus on complex decisions while AI handles routine tasks.

3.2 Spare Parts Identification in Service

AI can assist service technicians and customers in identifying spare parts. Even heavily worn or dirty parts are reliably detected. This reduces complaints, saves on return shipping costs, and increases customer satisfaction.

3.3 Automatic Tender Detection

A real-world example: Thanks to AI, EGIP Plus was able to identify and win a tender in Romania—an opportunity that would previously have gone undetected due to language and geographical barriers. The AI continuously scanned various platforms and identified relevant tenders.

3.4 Cost Analysis in Procurement

AI can analyze the manufacturing costs of assemblies, including material, processing, and labor costs. This provides a sound basis for decision-making regarding international procurement. Companies can compare prices, weigh risks, and make strategic purchasing decisions.

3.5 Quality Assurance

In manufacturing, AI can be used for automated quality control. It identifies typical defects and enables 100% inspection without the need to manually inspect every part. This saves time and increases production reliability.

4. Perseverance as a Key to Success

AI projects require perseverance. Here’s a metaphorical example from the conversation: A swimmer gave up in the fog—just 200 meters from the finish line. Companies shouldn’t let setbacks discourage them, but should instead keep working to improve their AI.

5. Getting Started for Small and Medium-Sized Businesses

For companies with limited resources, it is advisable to start by working with specialized service providers. Tools such as Cosmo’s AI Pathfinder help identify suitable use cases and enable a resource-efficient project launch.

6. The Limits of AI

AI is not a panacea. Caution is particularly warranted when dealing with unstructured processes or complex contractual issues. In such cases, AI should be used only as a support tool. The less structured data is available, the greater the risk of inaccurate results.

7. Here's what you can do now

AI offers enormous potential in the mechanical and plant engineering sector: from increased efficiency and cost reductions to new business opportunities. However, a strategic, data-driven, and sustained project approach is crucial. By involving employees early on, defining specific use cases, and selecting the right partners, companies can implement AI successfully and sustainably.

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By Michael Hering

As Industry Manager, Michael Hering is responsible for overseeing the requirements of discrete manufacturing, identifying trends, and implementing them through Cosmo Consult's end-to-end solutions.

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Benefits and Added Value of AI in Mechanical and Plant Engineering