MANAGING FOR QUALITY PROCESS IMPROVEMENT - PowerPoint PPT Presentation

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MANAGING FOR QUALITY PROCESS IMPROVEMENT

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Title: MANAGING FOR QUALITY PROCESS IMPROVEMENT


1
MANAGING FOR QUALITYPROCESS IMPROVEMENT
  • DR. YONATAN RESHEF
  • UNIVERSITY OF ALBERTA
  • SCHOOL OF BUSINESS
  • EDMONTON, ALBERTA
  • CANADA T6G 2R6

2
STABLE SYSTEM/PROCESS
  • A PROCESS WILL BE IN STATISTICAL CONTROL WHEN,
    THROUGH THE USE OF PAST EXPERIENCE, WE CAN
    PREDICT, AT LEAST WITHIN LIMITS, HOW THE PROCESS
    WILL BEHAVE IN THE FUTURE

3
PROCESS IMPROVEMENT
  • IMPROVEMENT OF A STABLE PROCESS CANNOT BE DONE BY
    TAMPERING WITH OUTPUT (E.G., MANAGING BY RESULTS)
  • ACTION BASED ON RESULTS CAN ONLY BE APPROPRIATE
    IN THE PRESENCE OF SPECIAL CAUSES

4
CAUSES OF VARIATION
  • SPECIAL CAUSES (SIGNAL) PROBLEMS ATTRIBUTABLE
    TO INDIVIDUALS WHO ARE OUT OF STATISTICAL CONTROL
  • COMMON CAUSES (NOISE) PROBLEMS ATTRIBUTABLE TO
    THE SYSTEM (I.E., MANAGEMENT)

5
VARIATIONTWO COMMON MISTAKES
  • OVER-ADJUSTMENT ASCRIBING VARIATION OR A
    MISTAKE TO A SPECIAL CAUSE WHEN IN FACT THE CAUSE
    BELONGS TO THE SYSTEM
  • DOING NOTHING ASCRIBING VARIATION OR A MISTAKE
    TO THE SYSTEM WHEN IN FACT THE CAUSE IS SPECIAL

6
TAMPERING WITH A SYSTEM
  • TAKING ACTION ON A STABLE PROCESS IN RESPONSE TO
    PRODUCTION OF A FAULTY ITEM OR A MISTAKE
    (OVER-ADJUSTMENT)

7
INSPECTION, OR NO INSPECTION
  • IF PROCESSES ARE IN STATISTICAL CONTROL, THERE
    ARE ONLY TWO CHOICES NO INSPECTION OR 100
    INSPECTION
  • IF PROCESSES ARE IN CONTROL, A SAMPLE FROM A
    BATCH CONTAINS NO NEW INFORMATION CONCERNING THE
    UNINSPECTED ITEMS IN THAT BATCH
  • THE CHOICE BETWEEN THE TWO ALTERNATIVES WHETHER
    TO INSPECT OR NOT IS MADE ON THE BASIS OF
    ECONOMICS, SAFETY, ETC.

8
CHAOS
  • A STATE OF CHAOS, THAT IS WHEN PROCESSES ARE
    OUT OF CONTROL, DESERVES CONSIDERATION OF 100
    INSPECTION

9
LESSONS FROM THE RED BEAD EXPERIMENT
  • THE PROCESS TURNED OUT TO BE STABLE THE
    VARIATION AND OUTPUT WERE PREDICTABLE
  • ALL THE VARIATION CAME ENTIRELY FROM THE PROCESS
    ITSELF. THERE WAS NO EVIDENCE THAT ANY WORKER WAS
    BETTER THAN ANOTHER

10
LESSONS
  • THE WORKERS COULD DO NO BETTER. BEST PEOPLE
    DOING THEIR BEST DOES NOT ALWAYS WIN THE DAY
  • UNDER SUCH CIRCUMSTANCES, RANKING IS WRONG, AS IT
    ACTUALLY MERELY RANKS THE EFFECT OF THE PROCESS
    ON PEOPLE

11
LESSONS
  • PAY FOR PERFORMANCE CAN BE FUTILE. THE
    PERFORMANCE OF THE WORKERS WAS GOVERNED BY THE
    PROCESS
  • DIVIDED RESPONSIBILITY THE INSPECTORS WERE
    INDEPENDENT OF EACH OTHER (A POSITIVE PRACTICE).

12
LESSONS
  • KNOWLEDGE ABOUT THE PROPORTION OF RED BEADS IN
    THE INCOMING MATERIAL (20) WOULD NOT ENABLE
    ANYONE TO PREDICT THE PROPORTION OF THE RED BEADS
    IN THE OUTPUT. THE WORKLOADS WERE NOT RANDOM
    DRAWINGS. THEY WERE EXAMPLE OF MECHANICAL SAMPLING

13
SAMPLING
  • EVERY BEAD MUST HAVE A CHANCE TO BE IN THE SAMPLE
  • IN OTHER WORDS, RANDOM SAMPLING MUST BE
    INDEPENDENT OF ANY PHYSICAL ATTRIBUTION OF THE
    EXPERIMENT
  • COLOR OF THE BEADS
  • SHAPE OF THE PADDLE
  • ANGLE OF THE RAISING OF THE PADDLE
  • SIZE OF THE SAMPLING BOWL

14
LESSONS
  • Acceptable Defects Rather than waste efforts on
    zero-defect goals, Dr. Deming stressed the
    importance of establishing a level of variation,
    or anomalies, acceptable to the recipient (or
    customer) in the next phase of a process.
    Oftentimes, some defects are quite acceptable,
    and efforts to remove all defects would be an
    excessive waste of time and money.

15
LESSONS
  • THERE WAS NO BASIS FOR MANAGEMENTS SUPPOSITION
    THAT THE 1-2 BEST WORKERS OF THE PAST WOULD BE
    BEST IN THE FUTURE
  • RIGID/PRECISE PROCEDURES ARE NOT SUFFICIENT TO
    PRODUCE QUALITY
  • NUMERICAL GOALS CAN BE MEANINGLESS
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