только у нас скачать шаблон dle скачивать рекомендуем

Фото видео монтаж » Видео уроки » Quality Engineering Statistics

Quality Engineering Statistics

Quality Engineering Statistics
The tools, theories, and case studies you need to understand the analytical methods of quality engineering
Published 2/2023
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English | Size: 7.23 GB | Duration: 12h 50m


Free Download Quality Engineering Statistics
What you'll learn
Collecting and summarizing data including type of data, measurement scales, collection methods, visualization techniques, and descriptive statistics
Statistics and probability terminology and concepts
Statistical decision making including point estimates, confidence intervals, hypothesis testing, paired comparison tests, goodness of fit tests, ANOVA and more
Tools for examining the relationships between variables such as linear regression, correlation, and time series analysis.
Control charting: Objective and benefits, common and special causes, variable charts, attribute charts, interpreting the results, and short run SPC
Process capability analysis: Pp, Ppk, Cp, Cpk, control limits, specification limits, and interpreting actual histograms and capability indices
Design and analysis of experiments: Terminology, planning and organizing experiments, replication, balance, order and more; full and fractional factorial
All topics in the "Quantitative Methods and Tools" section of the ASQ Certified Quality Engineer Body of Knowledge
Requirements
Basic understanding of manufacturing
Basic math and spreadsheet skills
Description
This course, Quality Engineering Statistics, is the most comprehensive course of its kind on Udemy. Featuring over 100 videos, this course covers all the analytical methods you need to succeed as a quality engineer, technician or manager. Plus its analytical methods -- many of which are detailed in Microsoft Excel -- will also serve industrial, manufacturing and process engineers and managers very well.For those interested in preparing for the ASQ Certified Quality Engineer's exam, this course covers all topics in the "Quantitative Methods and Tools" section of their July 2022 Body of Knowledge.But for those not interested in taking a certification exam, this course covers a very wide range of topics that will certainly help advance your career as a quality professional.Topic covered include:A. Collecting and Summarizing Data 1. Types of data 2. Measurement scales 3. Data collection methods 4. Data accuracy and integrity 5. Data visualization techniques 6. Descriptive statistics 7. Graphical methods for depicting distributions B. Quantitative Concepts 1. Terminology 2. Drawing statistical conclusions 3. Probability terms and concepts C. Probability Distributions 1. Continuous distributions 2. Discrete distributions D. Statistical Decision-Making 1. Point estimates and confidence intervals 2. Hypothesis testing 3. Paired-comparison tests 4. Goodness-of-fit tests 5. Analysis of variance (ANOVA) 6. Contingency tables E. Relationships Between Variables 1. Linear regression 2. Simple linear correlation 3. Time-series analysis F. Statistical Process Control (SPC) 1. Objectives and benefits 2. Common and special causes 3. Selection of variable 4. Rational subgrouping 5. Control charts 6. Control chart analysis 7. Short-run SPC G. Process and Performance Capability 1. Process capability studies 2. Process performance vs. specifications 3. Process capability indices 4. Process performance indices H. Design and Analysis of Experiments 1. Terminology 2. Planning and organizing experiments 3. Design principles 4. Full-factorial experiments 5. Two-level fractional factorial experimentsFar more than a simple exam prep class, Quality Engineering Statistics is taught by two "hands on", senior manufacturing professionals that share DOZENS of real-life examples and case studies drawn from their decades of experience.If want to advance your analytical skill set and prepare yourself to solve increasingly complex problems in the workplace, then this is the class for you! Quality Engineering Statistics will give you teach you the skills you need to tackle the toughest problems in industry, and as a result, advance your career as a manufacturing quality professional. SIGN UP TODAY!!
Overview
Section 1: Introduction to the Course
Lecture 1 Introduction to the Course
Lecture 2 Course Contents
Lecture 3 Comments about the Use of Software
Section 2: Section A: Collecting and Summarizing Data
Lecture 4 Data Types
Lecture 5 Data Scales
Lecture 6 Data Coding
Lecture 7 Data Integrity
Lecture 8 Introduction to Data Visualizations
Lecture 9 Stem and Leaf Diagram
Lecture 10 The Histogram in Excel
Lecture 11 Dashboards
Lecture 12 Introduction to Descriptive Statistics
Lecture 13 Graphical Depiction of Standard Deviation
Lecture 14 Measures of Dispersion in Excel
Lecture 15 The Shape of Data, Pt 1
Lecture 16 The Shape of Data, Pt 2
Lecture 17 Median, Quartiles, and IQR in Excel
Lecture 18 The Box Plot in Excel
Section 3: Section B: Quantitative Concepts
Lecture 19 Statistics and Probability Concepts, Pt 1
Lecture 20 NORM.DIST in Excel
Lecture 21 Statistics and Probability Concepts, Pt 2
Section 4: Section C: Probability Distributions
Lecture 22 Overview of Probability Distributions, Pt 1
Lecture 23 Overview of Probability Distributions, Pt 2
Lecture 24 Overview of Probability Distributions, Pt 3
Lecture 25 Poisson in Excel
Lecture 26 Using Test Statistics
Section 5: Section D: Statistical Decision Making
Lecture 27 Point Estimates
Lecture 28 Point Estimates in Excel
Lecture 29 Confidence Intervals, Pt 1
Lecture 30 Confidence Intervals, Pt 2
Lecture 31 Confidence Intervals in Excel
Lecture 32 Standard Error of the Mean
Lecture 33 Z Score and Z Table
Lecture 34 Confidence Intervals for Variance
Lecture 35 Chi Squared Coordinates
Lecture 36 Tolerance Intervals
Lecture 37 Why Hypothesis Testing
Lecture 38 The Statistical View of Data
Lecture 39 Sampling and the Hypothesis Test
Lecture 40 Errors in Hypothesis Testing
Lecture 41 Statistical Power
Lecture 42 Statistical vs Practical Significance
Lecture 43 Tools and Requirements of Statistical Design, Pt 1
Lecture 44 Tools and Requirements of Statistical Design, Pt 2
Lecture 45 T-test Examples in Hypothesis Testing
Lecture 46 T Tests in Excel
Lecture 47 Z-tests in Hypothesis Testing, Pt 1
Lecture 48 Z-tests in Hypothesis Testing, Pt 2
Lecture 49 More Z-Test Examples
Lecture 50 Z Test in Excel
Lecture 51 Z Tests of Proportions
Lecture 52 Goodness of Fit
Lecture 53 Goodness of Fit in Excel
Lecture 54 The Normal Probability Plot in Excel
Lecture 55 ANOVA and the F Distribution
Lecture 56 ANOVA in Excel
Lecture 57 Two-way ANOVA Overview
Lecture 58 Two-way ANOVA in Excel, Rev 1
Lecture 59 Contingency Tables
Section 6: Section E: Relationships Between Variables
Lecture 60 Understanding Linear Regression, Pt 1
Lecture 61 Understanding Linear Regression, Pt 2
Lecture 62 Correlation and the Coefficient of Determination
Lecture 63 Linear Regression in Excel
Lecture 64 Overview of Time Series Analysis
Section 7: Section F Statistical Process Control (SPC)
Lecture 65 Introduction to SPC Section
Lecture 66 Overview of SPC
Lecture 67 Control Chart Terminology
Lecture 68 What to Chart
Lecture 69 Variation and Subgrouping
Lecture 70 X-bar and R Chart, Pt 1
Lecture 71 X-bar and R Chart, Pt 2
Lecture 72 X-bar and R chart, Pt 3
Lecture 73 X-bar and s Chart, Pt 1
Lecture 74 X-bar and s Chart, Pt 2
Lecture 75 IXMR Chart, Pt 1
Lecture 76 IXMR Chart, Pt 2
Lecture 77 p Chart, Part 1
Lecture 78 p Chart, Part 2
Lecture 79 np Chart, Pt 1
Lecture 80 np Chart, Pt 2
Lecture 81 c Chart, Pt 1
Lecture 82 c Chart, Pt 2
Lecture 83 u Chart, Pt 1
Lecture 84 u Chart, Pt 2
Lecture 85 Interpreting Control Charts, Pt 1
Lecture 86 Interpreting Control Charts, Pt 2
Lecture 87 Interpreting Control Charts, Pt 3
Lecture 88 Control Chart Selection Process
Lecture 89 Short Run SPC
Section 8: Section G: Process and Performance Capability
Lecture 90 Introduction to Process Capability Analysis
Lecture 91 Specification Limits
Lecture 92 Sampling Frequency
Lecture 93 Understanding Capability Indices
Lecture 94 Sample Size and the Normal Distribution
Lecture 95 Arithmetic Mean
Lecture 96 The Histogram
Lecture 97 Excel's Data Analysis Add In
Lecture 98 Overview of the Normal Distribution
Lecture 99 Standard Deviation
Lecture 100 Properties of the Normal Distribution Curve
Lecture 101 Plotting the Normal Curve
Lecture 102 Pp and Ppk, Pt 1
Lecture 103 Pp and Ppk, Pt 2
Lecture 104 Pp and Ppk, Pt 3
Lecture 105 Pp and Ppk of a Sample
Lecture 106 Cp and Cpk, Pt 1
Lecture 107 Cp and Cpk, Pt 2
Lecture 108 Cp and Cpk, Pt 3
Lecture 109 Interpreting the Capability Indices
Lecture 110 The Difference Between Cpk and Ppk
Lecture 111 Summary of Process Capability
Section 9: Section H: Design and Analysis of Experiments
Lecture 112 Introduction to a DOE, Pt 1
Lecture 113 Introduction to a DOE, Pt 2
Lecture 114 DOE Terminology
Lecture 115 Tips for a Successful DOE
Lecture 116 Types pf Experimental Designs
Lecture 117 Additional DOE concepts
Lecture 118 Full Factorial Experiments, Pt 1
Lecture 119 Full Factorial Experiments, Pt 2
Lecture 120 Fractional Factorial Designs and Taguchi Methods
Section 10: Conclusion to the Course
Lecture 121 Conclusion to the Course
Lecture 122 Bonus Lecture
Quality engineers, quality technicians, quality managers,Industrial engineers, manufacturing engineers,Manufacturing managers, operations managers,Students studying for the ASQ Certified Quality Engineer exam




Homepage

https://www.udemy.com/course/quality-engineering-statistics/




Links are Interchangeable - No Password - Single Extraction
Poproshajka




Информация
Посетители, находящиеся в группе Гости, не могут оставлять комментарии к данной публикации.