Services Processes and Waiting Line Analysis - PowerPoint PPT Presentation

1 / 22
About This Presentation
Title:

Services Processes and Waiting Line Analysis

Description:

Waiting Line Analysis. Selected Slides from Jacobs et al, 9th Edition ... Appliances, Automobiles/Trucks, Toys, Clothing. Logistics/inventory/distribution/MRP ... – PowerPoint PPT presentation

Number of Views:56
Avg rating:3.0/5.0
Slides: 23
Provided by: mpeter2
Category:

less

Transcript and Presenter's Notes

Title: Services Processes and Waiting Line Analysis


1
Services Processes andWaiting Line Analysis
  • Selected Slides from Jacobs et al, 9th Edition
  • Operations and Supply Management
  • Chapter 8 and 8A
  • Edited, Annotated and Supplemented by
  • Peter Jurkat

2
Service Businesses
8-2
A service business is the management of
organizations whose primary business requires
interaction with the customer to produce the
service
  • Customer is the entire focus of attention a
    common definition of quality is satisfaction of
    the customer (more on quality later)
  • Facilities-based services Where the customer
    must go to the service facility
  • Field-based services Where the production and
    consumption of the service takes place in the
    customers environment

3
Characteristics of Workers, Operations, and
Innovations Relative to the Degree of
Customer/Service Contact
8-3
4
8-4
Service Blueprint, Failure Anticipation, and
Poka-Yokes
Complete blueprint (p262-3) identifies 16 failure
opportunities
5
Three Contrasting Service Designs
8-5
  • The production line approach (ex. McDonalds)
  • The self-service approach (ex. automatic teller
    machines)
  • The personal attention approach (ex. Ritz-Carlton
    Hotel Company)

6
Well Designed Services
  • 1. Each element of the service system is
    consistent with the operating focus of the firm
  • 2. It is user-friendly
  • 3. It is robust (avoid failures, poka-yokes)
  • 4. It is structured so that consistent
    performance by its people and systems is easily
    maintained
  • 5. It provides effective links between the back
    office and the front office so that nothing falls
    betweensic the cracks
  • 6. It manages the evidence of service quality in
    such a way that customers see the value of the
    service provided
  • 7. It is cost-effective

Lets consider Problem 8.4
7
Behavior and Guarantees
  • Recent research suggests
  • Any guarantee is better than no guarantee
  • Involve the customer as well as employees in the
    design
  • Avoid complexity or legalistic language
  • Do not quibble or wriggle when a customer invokes
    a guarantee
  • Make it clear that you are happy for customers to
    invoke the guarantee
  • The front-end and back-end of the encounter are
    not created equal
  • Segment the pleasure, combine the pain
  • Let the customer control the process
  • Pay attention to norms and rituals
  • People are easier to blame than systems
  • Let the punishment fit the crime in service
    recovery (task error vs. treatment error vs.

8
Waiting Lines
  • Almost all services can have waiting lines, even
    along manufacturing line
  • Waiting lines involve both layout and service
    management
  • Can be the most damaging of service failures
    since customer never gets to experience the
    service
  • Waiting lines also called queues (first in, first
    out)
  • Trade-off more service (cost) vs. longer waits
    (customer dissatisfaction)

9
Managing Queues
  • 1. Determine an acceptable waiting time for your
    customers
  • 2. Try to divert your customers attention when
    waiting
  • 3. Inform your customers of what to expect
  • 4. Keep employees not serving the customers out
    of sight
  • 5. Segment customers
  • 6. Train your servers to be friendly
  • 7. Encourage customers to come during the slack
    periods
  • 8. Take a long-term perspective toward getting
    rid of the queues

10
Components of the Queuing System
Queue or
11
Customer Service Population Sources
Population Source
Example Number of machines needing repair when a
company only has three machines.
Example The number of people who could wait in a
line for gasoline.
Arrival Processes (usually measured by time
between arrivals) Constant (e.g., assembly
line) Deterministic (e.g., based on occurrence of
another event) Random/Stochastic (e.g.,
Exponential, Erlang) Batched (e.g., elevator, bus
load at rest stop) Depends on number in system
(e.g., machine repair)
12
Service Pattern
Service Pattern
Example Items coming down an automated assembly
line.
Example People spending time shopping.
Same classification as arrival process
13
The Queuing System
Single Q, single S Single Q, multiple S Multiple
Qs, multiple Ss, w/ Q switching
Queuing System
First in, first out (FIFO) First in, last out
(LIFO) Various priorities
Constant inter-arrival times Random Event
dependent
14
Examples of Line Structures
Single Phase
Multiphase (Sequential Servers)
Single Channel
Multichannel
15
Degree of Patience
No Way!
No Way!
16
Examples
  • Service Systems
  • Traffic on Networks messages to/from computers,
    cars on roads/rails, airplanes to/from
    airports/gates, ships to/from harbors/piers,
    elevators
  • Retail/Service stores selling goods,
    service/repair shops
  • Manufacturing Systems
  • Primarily job shops, piece work, mass
    customization
  • Appliances, Automobiles/Trucks, Toys, Clothing
  • Logistics/inventory/distribution/MRP

17
Notation
  • Many combinations of arrival and service
    processes, queue disciplines, populations, etc.
  • Standard notation A/S/c/N/K/Qdiscipline
  • A Arrival Process e.g., C for constant, M for
    Markov (exponential), Ek for Erlang, G for
    arbitrary
  • S Server Process e.g., C for constant, M for
    Markov (exponential), Ek for Erlang, G for
    arbitrary
  • c Number of Servers
  • N System Capacity both queues and server
    stations
  • K Size of Calling Population
  • Queue Discipline FIFO, LIFO, various priorities
  • M/M/1///FIFO default, shown as M/M/1
  • Various A/S distributions possible most frequent
    are constant, exponential, Gamma, empirical

18
Poisson Process
  • Inter-arrival time is exponentially distributed
  • Completely determined by average time between
    arrivals
  • Easy to specify (count arrivals and divide by
    time period)
  • Equivalent to exponential inter-arrival time
  • Provides probability of a given number of
    arrivals in unit time

19
Notation Infinite Queuing Models 1-3
See Exhibit 8A.8, p26
20
Infinite Queuing Models 1-3 (Continued)
21
Utilization
  • Notice how sharply the average length of the
    queue grows with increasing average utilization
  • For average r gt .7 short term increases in
    arrival (l) and/or service (m) can make queues so
    long that recovery is very long or may never
    happen

22
Calculating Performance
  • Different models and conditions will generally
    dictate different equations for each performance
    measure
  • Most situations fall into one of four models (all
    assume FIFO)
  • Single server, single queue (SSQ M/M/1)
  • Multiple servers, single queue (M/M/c) call
    center
  • Finite system capacity (M/M/c/N)
  • Finite population (M/M/c/K/K) maintenance crew
    of c for K machines
  • Most included in available tables and software
    and approximations - see Ch08A_Queue.xlsx,
    Ch08A_Queue_Models.xlsx
Write a Comment
User Comments (0)
About PowerShow.com