Two days workshop on
Statistical Analysis for Process and Product Development
Coming soon.. Please contact customer care for new schedule at +1-510-857-5896
This course is designed to help scientists and engineers apply statistical methods used to assist decision making in process and product development. Variability must be considered when utilizing data to arrive at conclusions. This course will cover Basic Statistics and Graphical Methods used to summarize data. You will learn how to apply Hypothesis Testing methods to determine whether groups are statistically equivalent or not with respect to key process characteristics such as process averages and variability. The use of confidence intervals when estimating key parameters will be covered. When planning studies, sample size determination is critical to ensure that study results will be meaningful. Methods to determine appropriate sample sizes for various types of problems will be covered. Finally, an introduction to Design of Experiments (DOE) is provided. DOE is an extremely efficient method to understand which variables (and interactions) affect key outcomes and allows the development of mathematical models used to optimize process and product performance. The concepts behind DOE are covered along with some effective types of screening experiments. Case studies will also be presented to illustrate the use of the methods.

This highly interactive course will allow participants the opportunity to practice applying statistical methods with various data sets. The objective is to provide participants with the key tools and knowledge to be able to apply the methods effectively in their process and product development efforts.

Learning Objectives
  • Effectively summarize data and communicate results with basic statistics and graphical techniques
  • Apply Hypothesis Testing to test whether two or more groups of data are statistically equivalent or not
  • Estimate key process parameters with associated confidence intervals to express estimate uncertainty
  • Determine appropriate sample sizes for estimation and hypothesis testing
  • Understand key concepts related to Design of Experiments
  • Apply experiments to determine cause and effect relationships and model process behavior
Who can Benefit
  • Scientists
  • Product and Process Engineers
  • Quality Engineers
  • Personnel involved in product development and validation
Agenda

Day 1 (8:30 am – 9:00 am: Registration Process)

Basic Statistics & Distributions
  • Data Types
  • Populations & Samples
  • Central Tendency and Variation
  • Probability Distributions
  • The Normal Distribution
Graphical Analysis
  • Pareto Charts
  • Run Charts
  • Boxplots and Individual Value Plots
  • Histograms
  • Scatter Plots
Hypothesis Testing Concepts
  • Test Statistics, Crit. Values, p-values
  • One and Two Sided Tests
  • Type I and Type II Errors
  • Estimation and Confidence Intervals
Hypothesis Tests for One and Two Groups
  • Testing Means (1 sample t ,2 sample t and paired t tests)
  • Testing Variances (Chi-Square, F test)
  • Testing Proportions (overview)
  • Equivalence Tests
Hypothesis Tests for Multiple (>2) Groups
  • Testing Means (ANOVA)
  • Multiple Comparisons
  • Testing Variances (Bartlett's and Levene's Test)
Day 2

Power & Sample Size
  • Type II Errors and Power
  • Factors affecting Power
  • Computing Sample Sizes
  • Power Curves
Introduction to Experimental Design
  • What is DOE?
  • Definitions
  • Sequential Experimentation
  • When to use DOE
  • Common Pitfalls in DOE
Two Level Factorial Designs
  • Design Matrix and Calculation Matrix
  • Calculation of Main & Interaction Effects
  • Interpreting Effects
  • Using Center Points
  • Fractional Factorials
Identifying Significant Effects
  • Determining which effects are statistically significant
  • Analyzing Replicated and Non-replicated Designs
Developing Mathematical Models
  • Developing First Order Models
  • Residuals /Model Validation
  • Optimizing Responses


Steven Wachs - Principal Statistician , Integral Concepts Inc


Steven Wachs has 25 years of wide-ranging industry experience in both technical and management positions. Steve has worked as a statistician at Ford Motor Company where he has extensive experience in the development of statistical models, reliability analysis, designed experimentation, and statistical process control.

Steve is currently a Principal Statistician at Integral Concepts, Inc. where he assists manufacturers in the application of statistical methods to reduce variation and improve quality and productivity. He also possesses expertise in the application of reliability methods to achieve robust and reliable products as well as estimate and reduce warranty. Steve regularly speaks at industry conferences and provides workshops in industrial statistical methods worldwide.