Perfect computer center Statistical Software - Manufacturing Quality Courses

PCC Statistical Software - Service Quality Courses

Quality Companion Courses

  1. Using Quality Companion

 

Basic Statistics

Length of training: 1 Day(s)

Augment your graphical analysis skills using Minitab’s powerful statistical tools. Develop the foundation for important statistical concepts such as hypothesis testing and confidence intervals. By analyzing a variety of real world data sets, learn how to match the appropriate statistical tool to your own applications and how to correctly interpret statistical output to quickly reveal problems with a process or to show evidence of an improvement. Learn how to explore critical features in your processes through statistical modeling tools that help to uncover and describe relationships between variables. A strong emphasis is placed on making good business decisions based upon the practical application of statistical techniques commonly found in manufacturing, engineering, and research and development endeavors.
Tools Covered Include: t-Tests, Proportion Tests, Tests for Equal Variance, Power and Sample Size, Correlation, Simple Linear and Multiple Regression, ANOVA and GLM
Prerequisite: Introduction to Perfect computer center
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Introduction to Perfect computer center

Length of training: 1 Day(s)
Decrease the time required for statistical analysis by quickly learning to navigate Minitab’s user-friendly and customizable environment. Learn how to import/export data and output between Minitab and various software and database systems. Enhance your ability to create, manipulate, and restructure data. Develop sound statistical approaches to data analysis by learning how to create and interpret a wide variety of graphs and numerical measures useful for quality improvement initiatives. This course focuses on the utilization of these tools as they pertain to applications commonly found in manufacturing, engineering, and business processes.
Topics covered include: Charts, Histograms, Boxplots, Dotplots, Scatterplots, Tables, Measures of Location and Variation, ODBC
This course is a prerequisite for all other general Pcc courses.
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Statistical Quality Analysis

Length of training: 1 Day(s)

Develop the necessary skills to successfully evaluate and certify manufacturing and engineering measurement systems. Learn the basic fundamentals of statistical process control and how these important quality tools can provide the necessary evidence to improve and control manufacturing processes. Develop the skills to know when and where to use the various types of control charts available in Minitab for your own processes. Learn how to utilize important capability analysis tools, many enhanced in Minitab Release 15, to evaluate your processes relative to internal and customer specifications. The course emphasis is placed on teaching quality tools as they relate to manufacturing processes.
Tools Covered Include: Gage R&R, Destructive Testing, Gage Linearity, Gage Stability, Attribute Agreement, Variables and Attribute Control Charts, Capability Analysis for Normal, Non-normal and Attribute data
Prerequisites: Introduction to Pcc and Basic Statistics
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Factorial Designs

Length of training: 1 Day(s)

Learn to generate a variety of full and fractional factorial designs using Minitab’s intuitive DOE interface. Real-world applications demonstrate how the concepts of randomization, replication, and blocking form the basis for sound experimentation practices. Develop the skills necessary to correctly analyze resulting data to effectively and efficiently reach experimental objectives. Use Minitab’s customizable and powerful graphical displays to interpret and communicate experimental results to improve products and processes, find critical factors that impact important response variables, reduce process variation, and expedite research and development projects.
Tools and topics Covered Include: Design of Factorial Experiments; Normal Effects Plot and Pareto of Effects; Power and Sample Size; Main Effect, Interaction, and Cube Plots; Center Points; Overlaid Contour Plots; Multiple Response Optimization

Prerequisites: Introduction to perfect computer center and Basic Statistics
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Response Surface Designs

Length of training: 1 Day(s)

Expand your knowledge of basic 2 level full and fractional factorial designs to those that are ideal for process optimization. Learn how to use Minitab’s DOE interface to create response surface designs, analyze experimental results, and find optimal factor settings. Learn how to experiment in the real world by using techniques such as sequential experimentation that balance the discovery of critical process information while being sensitive to the resources required to obtain that information. Learn how to find factor settings that simultaneously optimize multiple responses.
Topics Covered Include: Central Composite and Box-Behnken Designs, Calculations for Steepest Ascent, Overlaid Contour Plots, Multiple Response Optimization
Prerequisites: Introduction to pcc, Basic Statistics, and Factorial Designs
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Introduction to Reliability

Length of training: 1 Day(s)

Determine lifetime characteristics of a product using both graphical and quantitative analysis methods. Examine case studies containing censored and uncensored data to learn how to correctly handle a wide variety of data structures commonly found in reliability. Explore the common distributions used to model failure rates and develop necessary skills in choosing these models.

Tools covered include: Parametric and Nonparametric Distribution Analysis, Estimation and Demonstration Test Plans, and Growth Curves.

Prerequisites: Introduction to pcc and Basic Statistics

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Reliability Modeling (Includes Introduction to Reliability)

Length of training: 2 Day(s)

Determine lifetime characteristics of a product using both graphical and quantitative analysis methods. Examine case studies containing censored and uncensored data to learn how to correctly handle a wide variety of data structures commonly found in reliability. Explore the common distributions used to model failure rates and develop necessary skills in choosing these models.

Study and describe the impact that explanatory variables have on product lifetime. Learn how to obtain reliability estimates on highly reliable products in a reasonable amount of time. A strong emphasis is placed on using appropriate probability models to predict important lifetime characteristics of your products once in the field.

Tools covered include: Parametric and Nonparametric Distribution Analysis, Estimation and Demonstration Test Plans, Growth Curves, Probit Analysis, Regression with life Data, Accelerated Life Testing and Test Plans.

Prerequisites: Introduction to pcc and Basic Statistics

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Formulations and Mixture Designs

Length of training: 1 Day(s)

Learn the principles of designing experiments and analyzing the resulting data for processes that are comprised of the mixing and blending of ingredients such as those commonly found in the chemical, food, and beverage industries. By utilizing Minitab’s easy to understand interface, create experiments designed to study and uncover important process information related to mixture processes with the minimal amount of experimental resources. Learn how to interpret graphical and statistical output to understand a mixture’s blending properties and to choose the appropriate mixture of ingredients needed to optimize one or more critical process characteristics.
Tools and Topics Covered Include: Simplex Lattice and Centroid Designs, Upper and Lower Constraints, Extreme Vertices, Pseudocomponents, Response Trace Plots
Prerequisites: Introduction to pcc, Basic Statistics, and Factorial Designs
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DOE in Practice

Length of training: 1 Day(s)
Learn how to handle common DOE scenarios where classic factorial or response surface design and analysis techniques are neither appropriate nor possible due to the nature of the response variable or the data collection process. Develop techniques for experimental situations often encountered in practice such as missing data and hard-to-change factors. Understand how to account for variables (covariates) that may affect the response but cannot be controlled in the experiment. Explore the importance of minimizing process costs while simultaneously optimizing an important process characteristic. Learn how to find and quantify the effect that factors have on the probability of a critical event, such as a defect, occurring.
Topics and Tools Covered Include: ANCOVA, Unbalanced Designs, Split-Plot Designs, Multiple Response Optimization, Binary Logistic Regression
Prerequisites: Introduction to pcc, Basic Statistics, and Factorial Designs
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Advanced Regression and ANOVA

Length of training: 1 Day(s)

Continue to build on the fundamental statistical analysis concepts taught in the Basic Statistics course by learning additional statistical modeling tools that help to uncover and describe relationships between variables. Hands-on examples illuminate how modeling tools help reveal key inputs and sources of variation in your processes. Learn how to use statistical models to investigate how processes may behave under varying conditions. This course provides techniques to help you better understand your processes and to focus and verify your improvement efforts.
Topics Covered Include: Multiple and Stepwise Regression; GLM with Covariates, Nesting and Random Factors; MANOVA; Binary and Nominal Logistic Regression
Prerequisites: Introduction to pcc and Basic Statistics
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Macros

Length of training: 1 Day(s)

This workshop teaches hands-on macro writing using instructor-led, relevant scenarios. Become more efficient by automating common data analysis tasks, such as combining several different analyses to execute at once. Make Minitab analyses more accessible by writing macros that automatically acquire specified data from a database and perform statistical analysis with minimal user input. Students will learn in this intense one-day workshop how to write macros that can import data from poorly structured Excel files, such as data files from Coordinate Measuring Machines (CMM), and restructure them for analysis in Minitab. It will be taught by an experienced Minitab instructor with years of engineering experience to ensure students will be able to transfer what they learn in the classroom back at work immediately.
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Introduction to Perfect computer center (Service Quality)

Length of training: 1 Day(s)
Decrease the time required for statistical analysis by quickly learning to navigate Minitab's user-friendly and customizable environment. Learn how to import/export data output between Minitab and various software and database systems. Enhance your ability to create, manipulate, and restructure data. Develop sound statistical approaches to data analysis by learning how to create and interpret a wide variety of graphs and numerical measures useful for quality improvement initiatives. This course focuses on the utilization of these tools as they pertain to applications commonly found in business, transactional, and service industries.
Topics Covered Include: Pareto Charts, Time Series plots, Individual value plots, Bar charts, Histograms, Boxplots, Dotplots, Scatterplots, Tables, Measures of Location and Variation, ODBC.
This course is a prerequisite for all other pcc Service Quality courses.
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Basic Statistics (Service Quality)

Length of training: 1 Day(s)
Augment your graphical analysis skills using Minitab’s powerful statistical tools. Develop the foundation for important statistical concepts such as hypothesis testing and confidence intervals. By analyzing a variety of real world data sets, learn how to match the appropriate statistical tool to your own applications and how to correctly interpret statistical output to reveal problems quickly with a process or to show evidence of an improvement. Learn how to explore critical features in your processes through statistical modeling tools that help to uncover and describe relationships between variables. The course emphasis is on making good business decisions through the use of statistical tools commonly used in business, transactional, and service processes.
Tools Covered Include: t-Tests, Proportion Tests, Tests for Equal Variance, Power and Sample Size, Tables and Chi-Square Analysis, Correlation, Simple Linear Regression, ANOVA
Prerequisite: Introduction to pcc (Service Quality)
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Statistical Quality Analysis (Service Quality)

Length of training: 1 Day(s)
Develop the necessary skills to successfully evaluate and certify your measurement systems. Learn the basic fundamentals of statistical process control and how these important quality tools can provide the necessary evidence to improve and control your processes. Develop the skills to know when and where to use the various types of control charts available in Minitab. Learn how to utilize important capability analysis tools, many enhanced in Minitab 15, to evaluate your processes relative to internal and customer specifications. The course emphasizes the teaching of quality tools as they pertain to in service industries.
Tools Covered Include: Attribute Agreement for Binary, Nominal and Ordinal Data; Kappa and Kendall’s Coefficients; Gage R&R; Variables and Attribute Control Charts; Capability Analysis for Normal and Non-normal and data.
Prerequisites: Introduction to pcc (Service Quality) and Basic Statistics (Service Quality)
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Minitab Advanced Topics (Service Quality)

Length of training: 1 Day(s)
Expand your set of available statistical tools by analyzing data from real world problems experienced in service industries. Strengthen analysis skills with tools used to explore and describe relationships between variables. Learn to discover and describe features in data related to the effect and impact of time, and how to forecast future process behavior. Utilize graphical and quantitative approaches to describe similarities and differences between the effects of various factors on important quality characteristics. Learn how to find and quantify the effect that factors have on the probability of a critical event occurring.
Tools Covered Include: Multivariate ANOVA, GLM; Binary Logistic Regression; Factorial Designs; Time Series Tools Including Exponential Smoothing, Trend Analysis, Decomposition, Multiple Linear Regression including Best Subsets and Stepwise Regression.
Prerequisites: Introduction to pcc (Service Quality) and Basic Statistics (Service Quality)
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Using Quality Companion

Length of training: 2 Day(s)
Decrease the time required for planning, organizing, and executing your process-improvement projects by quickly learning to navigate Quality Companion’s user-friendly and customizable environment. Following a single case study, learn how to identify a potential project and quantify its risks. Define and scope the project to more easily gain buy-in from key stakeholders. Learn to use Quality Companion’s built-in Roadmaps and Coaches as a way to explore common process-improvement methodologies and determine which tools and statistical analyses are appropriate at any phase of the project. Define a process and manage its activities to gain insight into the value stream, or flow of value, through the process. Evaluate which inputs are critical to the problem you are trying to solve. Create a presentation directly within Quality Companion.
Topics covered include: Quality Companion environment, Project Manager, Roadmap, Coaches.
Tools covered include: Process map, Fishbone diagram, Y metrics, Ballots, Presentation, Analysis Capture tools, and various form tools such as Project Prioritization Matrix, Project Charter, C&E Matrix, Capability Rollup Report, FMEA, Control Plan, and more.
This course is a prerequisite for all other Quality Companion courses.
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Customizing Quality Companion

Length of training: 1 Day(s)
Save time and money and increase consistency throughout your organization by using the advanced customization features of Quality Companion. Modify tools and projects to reflect your preferred quality improvement methodology. Using practical examples, learn how to create custom project and tool templates that can be stored as permanent software options and shared with others. Modify the default format of selected tools by varying their color, font, structure, and layout. Customize global and project data sharing to synchronize the information flow in your projects, ensure consistency of data, and increase efficiency. Design project forms to meet your company's specifications by adding graphics (logos), custom formatting, form fields, formulas, graphs, and hyperlinks. Create your own Coaches and add them to tool and project templates.

Topics covered include: Project templates, Tool templates, Template folders, Related documents, Tools options, Format defaults, Process Maps, Data Store, Making and Importing Variables, Global data sharing, Project Data Sharing, Forms (Design mode, Fill-out mode, Layout Tables, Data Tables, Form controls, Form protection), Custom Coaches.
 

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