Use Case

Tier 1 supplier (electric compressors)


Use Case

Tier 1 supplier (electric compressors)


The customer offers automotive parts, electric compressor units, as a Tier 1 automotive supplier. The Carbon Footprint-calculation for this customer is challenging due to a high number of components, suppliers and manufacturing locations. The customer's previous calculations involved regular manual data imports into a central Excel spreadsheet. This type of calculation is not only time-consuming, but also provides a Carbon Footprint that is too imprecise, and often results in a crash of the file. The customer wants consistency, a source where information is a single source of the truth, cloud-based, and holds the ability for a diverse product portfolio. The Carbon Footprint calculation for this customer is particularly complex due to the involvement of over 180 components, 200 suppliers, and multiple manufacturing locations. PCI provides the client with comprehensive capabilities including: - Accurate Carbon Footprint calculations, - Advanced analytics, - Efficient data export functions. This solution will streamline their processes, enhance precision, and significantly reduce the time and effort required for Carbon Footprint assessments.



electric compressors, automotive parts, automotive, supplier, automotive supplier

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Product: Product Carbon Intelligence


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Christoph von Witzleben

Senior Account Executive Commercial

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