ABSTRACT
The presented paper is focused on the essence of data analysis – the content of production data towards the setting of reliable fixed e-data. They are the basis of effective production planning and scheduling. On the basis of theoretical research and research in selected industrial companies, we focus on the probability of abnormality in the real production plan and at the same time on the reliability of achieving the planned production output for the customer. Research questions and scientific hypotheses proved the validity of detailed data analysis of process reporting as a standardized basis for data reporting on production processes.
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Index Terms
- Production Planning based on Relevant Data Analytics
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