Global Certificate in Statistical Quality Enhancement Methods
-- ViewingNowThe Global Certificate in Statistical Quality Enhancement Methods is a comprehensive course designed to equip learners with essential skills in statistical quality control and improvement. This course is vital for professionals in various industries, including manufacturing, healthcare, and technology, where data-driven decision-making is crucial.
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⢠Statistical Foundations: Understanding of basic statistical concepts and techniques, including mean, median, mode, standard deviation, probability, and distributions.
⢠Descriptive and Inferential Statistics: Analysis of data using descriptive and inferential methods to summarize and make predictions about data sets.
⢠Quality Control Charts: Utilization of statistical quality control charts to monitor and control processes, identify trends, and detect unusual conditions.
⢠Acceptance Sampling: Implementation of acceptance sampling plans to evaluate the quality of products or services based on a sample.
⢠Measurement Systems Analysis (MSA): Understanding and evaluation of measurement systems to ensure accurate and reliable data collection.
⢠Process Capability Analysis: Analysis of process capability to determine its ability to meet specifications, including calculation of process capability indices.
⢠Hypothesis Testing: Techniques for testing hypotheses using statistical methods, including confidence intervals and hypothesis tests for means, variances, and proportions.
⢠Design of Experiments (DOE): Utilization of designed experiments to optimize processes and improve quality, including factorial and response surface designs.
⢠Statistical Process Control (SPC): Implementation of statistical process control techniques to monitor and improve processes, including control charts, capability analysis, and hypothesis testing.
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