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Discover how SAP dataquality can hurt your OTIF. If you deliver the right products on time, offering a regular price and good quality, you will have happy customers,” Richard den Ouden, co-founder of Angles of SAP. Interested in Financial Reporting. Interested in Data Warehousing/BI Cubes. Analyze your OTIF.
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