Capability Library
|
Managing and implementing production data collection and analysis
Managing and implementing production data collection and analysis
Managing and implementing production data collection and analysis is the process of collecting and analyzing production data to gain insights into production processes, identify areas for improvement, and optimize production processes. It involves developing and implementing data collection strategies, analyzing production data to identify patterns and trends, and using this data to develop and implement process improvements that optimize production processes.
Beginner competence definition
A beginner-level competence involves collecting basic production data, such as production output and equipment downtime, and using basic data analysis tools, such as spreadsheets or charts, to identify basic production trends. This may involve implementing basic data collection systems, such as sensors or basic software programs, and using basic data analysis techniques, such as mean or median calculations. This level of competence requires a basic understanding of production processes and data analysis techniques.
Intermediate competence definition
An intermediate-level competence involves collecting more complex production data, such as quality data or maintenance data, and using more advanced data analysis tools, such as statistical process control or regression analysis, to identify more complex production trends. This involves implementing more advanced data collection systems, such as advanced sensors or data acquisition systems, and using more advanced data analysis techniques, such as predictive modeling or time series analysis. It requires a deeper understanding of production processes, data analysis techniques, and the ability to use more advanced data analysis tools.
Advanced competence definition
An advanced-level competence involves developing and implementing comprehensive data collection and analysis strategies that optimize production processes while maintaining quality and efficiency. This involves using advanced data analysis tools, such as artificial intelligence or machine learning, and integrating data collection and analysis systems with other production systems to optimize production processes. It requires a comprehensive understanding of production management, advanced data analysis techniques, and the ability to lead cross-functional teams in the development and implementation of complex data collection and analysis strategies. We have also found that advanced professionals develop new data collection and analysis methodologies and tools to optimize production processes.
Previous
Managing and implementing production automation and robotics
Next
Managing and implementing production lean manufacturing and Six Sigma