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DTSTART;VALUE=DATE:20260504
DTEND;VALUE=DATE:20260505
DTSTAMP:20260417T141059
CREATED:20250527T152427Z
LAST-MODIFIED:20250527T152427Z
UID:89065-1777852800-1777939199@www.sixsigmaclub.de
SUMMARY:Workshop: Statistical Modeling & Machine Learning
DESCRIPTION:Participants acquire in-depth knowledge of modern data modeling\, are able to integrate ML methods into their work in a meaningful way and support data-driven decisions for process improvements. \nCore content of this module: \n➡ Multivariate methods and classical regression models (refresher) to refresh statistical basics.\n➡ Introduction to data orchestration and machine learning – understanding supervised and unsupervised learning.\n➡ Model setup with KNIME®\, Minitab® and Python\, including data preparation\, feature engineering and validation.\n➡ Classification and regression methods such as decision trees\, Naive Bayes or neural networks.\n➡ Differences between classical and ML-based models\, including fields of application and limitations.\n➡ Practical application of ML methods for process optimization\, including visualization and interpretation.\n➡ Confident handling of model quality\, cross-validation and model comparison for well-founded decisions. \n\n\nDates (ONLINE)\n\nBlock 1 (8h): 08.10.2025\, from 08:00 to 17:00\nBlock 2 (4h): 09.10.2025\, from 08:00 am to 12:00 pm\nBlock 3 (4h): 30.10.2025\, from 08:00 a.m. to 12:00 p.m.\n\nBecome part of the Data Excellence Experience – we look forward to your participation!\nFurther modules and information: LINK \n_________________________________________________________________________ \n \n  \n  \nYou can find other interesting dates relating to quality management in the QZ-online.de diary\n__________________________________________________________________________
URL:https://www.sixsigmaclub.de/en/event/workshop-statistical-modeling-machine-learning/
LOCATION:ESSC-D Workshop / Training
CATEGORIES:ESSC-D Workshop / Training,Module training
ORGANIZER;CN="European Six Sigma Club Germany e.V.":MAILTO:buero@sixsigmaclub.de
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DTSTART;VALUE=DATE:20260525
DTEND;VALUE=DATE:20260526
DTSTAMP:20260417T141059
CREATED:20250527T152635Z
LAST-MODIFIED:20250527T152635Z
UID:89068-1779667200-1779753599@www.sixsigmaclub.de
SUMMARY:Workshop: Advanced statistics for Master Black Belts
DESCRIPTION:Participants significantly expand their statistical expertise and learn how to solve complex problems analytically in practice. They gain confidence in the selection\, application and interpretation of advanced statistical methods and are able to communicate these in a target group-oriented manner.  \nCore content of this module: \n➡ In-depth study of special regression methods such as binary and Poisson regression for analyzing countable and dichotomous data.\n➡ Discriminant analysis and cluster methods to recognize group differences and make structures visible.\n➡ Principal component analysis and dendrograms for dimension reduction and exploratory analysis.\n➡ Multivariate quality control charts for monitoring multidimensional process variables.\n➡ Non-parametric tests and their use when classical prerequisites are violated.\n➡ Time series analysis with ARIMA models\, reliably identify trend and seasonal effects.\n➡ Idea of simulation techniques such as Monte Carlo and discrete models to make robust decisions in the face of uncertainty. \n\n\nDates (ONLINE)\n\nBlock 1 (4h): 19.09.2025\, from 08:00 am to 12:30 pm\nBlock 2 (4h): 22.09.2025\, from 08:00 am to 12:30 pm\nBlock 3 (4h): 24.09.2025\, from 08:00 am to 12:30 pm\nBlock 4 (4h): 26.09.2025\, from 08:00 am to 12:30 pm\n\nBecome part of the Data Excellence Experience – we look forward to your participation!\nFurther modules and information: LINK \n_________________________________________________________________________ \n \n  \n  \nYou can find other interesting dates relating to quality management in the QZ-online.de diary\n__________________________________________________________________________
URL:https://www.sixsigmaclub.de/en/event/workshop-advanced-statistics-for-master-black-belts/
LOCATION:ESSC-D Workshop / Training
CATEGORIES:ESSC-D Workshop / Training
ORGANIZER;CN="European Six Sigma Club Germany e.V.":MAILTO:buero@sixsigmaclub.de
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