SupplyChain Management: A View of the Future

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SupplyChain Management: A View of the Future

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Assumed Single, Systemwide Objective Function: F(x1, x2, x3, ... JCPenney. Staples. QRS. Benchmarking. Partners. FIELDCREST CANNON. CPFR: Who's Behind it? ... – PowerPoint PPT presentation

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Title: SupplyChain Management: A View of the Future


1
Supply-Chain ManagementA View of the Future
  • Leroy B. Schwarz
  • Krannert School of Management
  • Purdue University
  • Supported by e-Enterprise Center at Discovery Park

2
Outline
  • Supply-Chain Management of Yesterday
  • How Modeled
  • How Practiced
  • Supply-Chain Management of Today
  • How Practiced
  • How Modeled

3
Outline (cont.)
  • Introduce Paradigm called
  • IDIB Portfolio
  • Describe My Vision of the Futureof SCM
  • Provide an Overview of 2 Projects
  • Collaborative Decision-Making and Implementation
  • Secure Supply-Chain Collaboration

4
SCM Models of Yesterday
  • Took Centralized Perspective
  • Assumed Single, Systemwide Objective Function
    F(x1, x2, x3, ...)
  • Assumed System Information was
  • Available
  • Omnipresent
  • Assumed Implementation was Contractible

5
  • Typical Results
  • Characteristics of the Optimal Policy for Special
    Structures
  • Clark Scarf, 60
  • Schwarz, 73
  • Examination of Heuristics for More General
    Structures
  • Clark Scarf, 62
  • Roundy, 85

6
SCM Practice of Yesterday
  • Single-Owner Chains Took a Centralized
    Perspective
  • Single Objective Function F(x1, x2, x3, ...)
  • De-Centralized Decision-Making
  • Information Not Available or, at best,
    Asymmetric
  • Implementation De-Centralized NOT Contractible

7
  • Consequently
  • Supply Chains Managed as Separate Entities,
    regardless of their ownership
  • Ex. Local Objective Functions F1(x1),
    F2(x2), ...
  • Examples
  • USAF Logistics Command Consumable Inventory
    System
  • IBM Service-Parts Inventory System

8
Consequences of this
  • Huge Buffers
  • Raw, WIP, and Finished-Goods Inventories
  • Capacity Buffers (e.g., understated capacity)
  • Leadtime Buffers (e.g., overstated leadtime)

9
Yesterdays Relationship Mismatched
  • Models
  • Too Specialized
  • Required More Information than Practice Had
  • Practice
  • Inexperienced with Models Computers
  • Confused by Models
  • Suspicious of Models

10
SCM Practice Today
  • The Beginnings of Real SCM for Single-Owner
    Chains
  • Ex Wal-Marts Retail Link
  • Targets Partners OnLine
  • Capabilities
  • Broadcast SKU-level Data Across the Chain
  • Observe Status Implemetation Contractible

11
  • Results
  • Huge Reductions in Buffers Lower Operating
    Costs
  • Improved Competitiveness
  • Lower Prices
  • More Customization
  • Higher Availability

12
  • Development of Technologies to Support
    Multiple-Owner SCM
  • Internet is Providing Experience
  • E-Markets
  • Providing Buyer-Supplier Linkages
  • Data Standardization e.g. RosettaNet
  • Beginnings of SCM for Multiple-Owner Supply
    Chains
  • VMI, Quick Repsonse
  • VICS CPFR Campaign

13
  • Huge Challenges for Multi-Owner Chains
  • Multiple often Conflicting Objective
    Functions
  • Technical Difficulties in Sharing Information
  • SKU Identification
  • Time-Frame
  • Fear about Information Sharing
  • Vertical Leakage
  • Horizontal Leakage

14
SCM Models of Today
  • Models with Multi-Ownership, Competing Objective
    Functions, and Asymmetric Information
  • Roots in Economics
  • 1980s Work of Monahan, Pasternak
  • Contemporary Work
  • Supply-Chain Coordination with Contracts, G.
    Cachon (forthcoming)
  • Information-Sharing and Supply-Chain
    Coordination, F. Chen (forthcoming)

15
  • Models for Assessing the Impact of Decentralized
    Decision-Making and/or Asymmetric Information
  • Ex Lee, et al. Bullwhip Paper (MS 434)
  • Results
  • Assessments of Agency Loss
  • Non-bathtub Shaped Loss Functions
  • Contracting Mechanisms to Improve/Optimize
    Performance

16
Relationship Today Out of Step
  • Models beginning to include ownership and
    private-information issues, but
  • Little Work on How to Share Information or How to
    Collaborate on Decision-Making or Implementation
  • Ignoring the Development of More Sophisticated
    Centralized Models

17
Relationship Today Out of Step
  • Practice ready to Dance but No Model Partner
  • Using simple models based on pull down menus in
    ERP systems
  • Swimming in Data, but uncertain about how to
    use it

18
What About the Future of SCM?
19
First.......
20
The IDIB Portfolio
  • a.k.a.
  • The Information, Decision-Making, Implementation,
    Buffer Portfolio

21
Managing anything can be viewed as 4 related
activities
  • Getting Information
  • Making Decisions
  • Implementing Decisions
  • Buffering against Imperfections in information,
    decision-making, or implementation

22
Every Management System is, in fact, 4
Sub-Systems
  • The Information System provides information
  • The Decision-Making System makes decisions
  • The Implementation System implements decisions
  • The Buffer System copes with imperfections in
    information, decision-making, or implementation

23
Each Sub-System has Cost and Quality
Characteristics
  • The Information System
  • Quality Characteristics
  • Accuracy
  • Leadtime
  • Aggregation Level
  • Horizon
  • Etc.
  • Cost Increasing and Marginally-Increasing
    with Quality

24
Each ... Characteristics (cont.)
  • The Decision-Making System
  • Quality Characteristics
  • Optimality i.e., how good?
  • Leadtime i.e., how long to make?
  • Etc.
  • Cost Increasing and Marginally-Increasing
    with Quality

25
Each ... Characteristics (cont.)
  • The Implementation System
  • Quality Characteristics
  • Accuracy i.e., conformance to decision
  • Leadtime i.e., how long to implement
  • Etc.
  • Cost Increasing and Marginally-Increasing
    with Quality

26
Each ... Characteristics (cont.)
  • The Buffer System
  • Quality Characteristics
  • Form
  • Robustness
  • Etc.
  • Cost Increasing and Marginally-Increasing
    with Quality

27
IDIB Portfolio?
  • Like a Financial Portfolio, the IDIB System
    requires an investment of Dollars
  • Like a Financial Porfolio, each Subsystems
    Characteristics Should Complement the
    Characteristics of the Others
  • Ex Robust Buffer System Complements an
    Inaccurate Information System
  • Ex Tradeoffs Among Buffer Sub-Systems

28
Managing the IDIB Portfolio....
  • .... means changing the nature and quality of its
    4 sub-systems so that total portfolio cost
    which includes the cost of imperfect buffering
    is minimized
  • This is NOT Rocket Science!

29
Most Operations-Research Models Ignore the IDIB
Portfolio
  • Example The Newsvendor Model
  • Information-System Quality Assumed
  • Implementation is Ignored
  • Select Decision-Rule to Minimize Buffer-System
    Cost

30
IDIB Portfolio View of Newsvendor Problem
  • The Problem is that acquistion/production
    decsion must be made before demand occurs
  • What if
  • Production was instantaneous?
  • Production Decision and Implementation Leadtime
    Horizon of Known Demand?

31
What is the Value-Added of the IDIB Paradigm?
  • Vantage Point on the Majority of
    Operations-Research Models
  • Vantage Point on Past/Present Practice
  • Vantage Point on the Future

32
1st Axiom of the IDIB Portfolio
  • Given an existing IDIB Portfolio, increasing the
    quality of one of its components typically
    facilitates decreasing the quality of at least
    one of its other three components while
    maintaining the same level of customer service
  • the Tradeoff Axiom

33
Examples
  • In a (Q,r) system
  • If all leadtimes are fixed, then the
    information-system, decision-making, and
    implementation leadtimes tradeoff one-for-one
  • If any of these leadtimes are variable, then
    reducing their variance facilitates reducing
    safety stock (buffer) inventory

34
Examples from Practice
  • Schneider National
  • Increasing Quality of I, D, and I Reducing B
    improving service
  • Manufacturer Making Transition from a Push
    (e.g., MRP) to Pull (e.g., JIT)
  • Reducing Buffer Inventory, increasing Buffer
    Capacity
  • Domestic Manufacturer Outsourcing to Off-Shore
    Supplier
  • Reducing Implementation Quality (Leadtime)
    Increasing Buffer Inventory

35
The IDIB Perspective on State-of-the-Art Practice
in SCM
  • Involves the sharing of past, present, and
    future-oriented information between
    buyer-supplier pair and/or
  • Involves delegation of decision-making or
    implementation to the supplier
  • .....So, then what is the future.......?

36
2nd Axiom of the IDIB Portfolio
  • Investment to improve the quality of any single
    component of the IDIB Portfolio will, over some
    range, decrease total cost of the Portfolio but,
    beyond some quality level, increase total cost of
    the Portfolio
  • Do-Nothing-in-Excess Axiom

37
The Future of Supply-Chain Management Involves
Collaborative Decision-Making and/or
Implementation
38
Why?
  • For Supply Chains that already share information,
    the returns from additional information sharing
    are diminishing
  • For Supply Chains that are already delegating
    some decision-making, the returns from additional
    delegation are marginally diminishing

39
Two Personal Projects
  • Models for Collaborative Decision-Making
  • How to Improve Decision-Making and Implementation
    Based on Shared Information
  • Protocols for Secure Supply-Chain Management
  • How to Improve Decision-Making and Implementation
    without Sharing Information

40
Models for Collaborative Supply-Chain
Decision-Making
  • with
  • Vinayak Deshpande
  • Jennifer Ryan

41
Starting Point is Collaborative Planning,
Forecasting, and Replenishment (CPFR)
42
What is CPFR?
  • A process model, shared by the buyer and
    supplier, through which inventory status-,
    forecast-, and promotion-oriented information are
    shared and replenishment decisions generated

43
The 9 Process Steps
  • Step 1
  • Develop Front-End Agreement Roles,
    Measurement, Readiness
  • Step 2
  • Create Joint Business Plan Strategies and
    Tactics
  • Step 3
  • Create Sales Forecast Buyer or Supplier
  • Step 4 Identify Exceptions for Sales Forecast

44
The 9 Process Steps
  • Step 5
  • Resolve/Collaborate on Exception Items
  • Step 6 Create Order Forecast
  • Step 7 Identify Exceptions for Order
    Forecast
  • Step 8 Resolve/Collaborate on
    Exception Items
  • Step 9 Order Generation

45
CPFR Whos Behind it?
Federated Department Stores
CORNING Consumer Products
Staples
FIELDCREST CANNON
JCPenney
Mead School Office
Schnuck Markets
Benchmarking Partners
QRS
46
CPFR History
  • 95/96 Wal-Mart Warner-Lambert CFAR
    Pilot
  • 97 VICS Develops CPFR Initiative
  • 98 VICS CPFR Guidelines Published
  • 99 Pilots Between
  • Kimberly-Clark K-Mart,
  • PG Meier, Target, Wal-Mart
  • Nabisco Wegmans, etc.
  • 001st Production Rollout K-Mart

47
CPFRs Future
  • n-Tier Collaboration
  • Extension to Include Master-Scheduling Decisions
  • Include Transportation

48
Research Topics in CPFR
  • Process Model How and Where does the CPFR model
    (e.g., forecast collaboration) fit into the
    supply-chain process?
  • Front-End Agreements How Should agreements be
    structured, performance measured, and benefits
    shared?
  • Data Sharing How should data be shared
    (aggregation/disaggregation issues)?
  • Exception Processing What constitutes an
    exception?

49
Secure Supply-Chain Collaboration
  • with
  • Mikhail Atallah
  • Vinayak Deshpande

50
The Starting Point....
  • Information Asymmetry is one of the major
    sources of inefficiency in Managing Supply Chains
  • Wrong Investment in Capacity
  • Misallocation of Resources
  • Distorted Prices
  • Reduced Customer Service
  • Unnecessary Additional Costs

51
.... there are Very Good Reasons for Keeping
Private Information Private
  • Fear that Supply-Chain Partner will Take
    Advantage of Private Information
  • Fear that Private Information will Leak to a
    Competitor

52
So, then, the Obvious Question...
53
Is it possible to enjoy the benefits of
Information-Sharing without Disclosing Private
Information?
  • It Depends

54
If the Value of Private Information is the
Information Itself, then..
  • ...obviously, information must be disclosed for
    value to be created

55
But, if the Value of Private Information is a
Decision .......
  • ...then it is possible to create value without
    Disclosing Private Information

56
Example
  • In CPFR
  • Determine agreed-upon planned orders without
    sharing forecasts, etc.

57
Secure Multi-Party Computation
  • SMC is Decades Old
  • Elegant Theory
  • General Results w.r.t. Existence, Complexity,
    etc.
  • Recently, Practical Protocols for Specific
    Problems
  • Ex. Electronic Voting
  • Information Retrieval

58
SMC Paradigm
  • Alice has Private Information XA
  • Bob has Private Information XB
  • Want to Determine f(XA, XB)
  • f(XA, XB) is well defined
  • No Trusted Third Party
  • Provide f(XA, XB) to Alice, Bob, both, or Neither

59
We are Developing Secure Multi-Party Protocols
for Supply-Chain Management
  • Secure Supply-Chain Collaboration

60
More Specifically...
  • ...we are developing protocols to enable
    Supply-Chain Partners to Make Decisions that
    Cooperatively Achieve Desired System Goals
    without Revealing Private Information

61
Our Goals
  • Develop and Apply SSCC Protocols to Some
    Well-Known SCM Problems
  • Simple e-Auction Scenarios
  • Simple Capacity-Allocation Scenarios
  • Bullwhip Scenarios
  • Compare Effectiveness of Protocols vs.
    non-cooperative decision-making

62
Our Goals (cont.)
  • Develop Proof-of-Concept Software
  • Examine Security versus Cost Tradeoffs

63
Ex Capacity Allocation
  • Single Supplier N Retailers Single Sales Period
  • Supplier has constant marginal production cost,
    but fixed capacity, K
  • Retailers operate in non-competing markets each
    retailer i has private information, qi, about its
    market that influences its order to the supplier
    Supplier has prior Pr(q)
  • If SOrdersi K, Supplier Uses Pre-announced
    Allocation Mechanism

64
Cachon and Lariviere (MS, 99)
  • Examine this scenario from perspective of the
    retailers in non-cooperative setting
  • Linear Demand Market-Clearing Price, r(q)
  • r(q) qi - q
  • Several Very Interesting Results
  • Retailers will over-order even if Pareto
    allocation mechanism is used
  • Supplier and Supply-Chain Profit can increase if
    a truth-telling mechanism is replaced by
    manipulable one.

65
Deshpande Schwarz (02)
  • Examine this scenario and a newsvendor scenario
    from perspective of maximizing Supply-Chain
    Profit assuming truth-telling
  • Derive conditions under which two commonly-used
    allocation mechanisms maximize supply-chain
    profit
  • Our SSCC Protocols use these mechanisms without
    revealing the retailers qis

66
Allocation Mechanisms
  • Supplier has Capacity K
  • Retailers place orders q1, q2, q3,..qN
  • Assume Sqi K
  • Linear Allocation qi qi - (Sqi- K)/N
  • Proportional Allocation qi qi (K/ Sqi )

67
Proportional Allocation Protocol
  • 1. Retailers choose a random R
  • 2. Every retailer sends its Rqi to Supplier
  • 3. System computes
  • D (RSqi/K)
  • and sends it to all the retailers
  • 4. Every retailer computes its allocation
  • qi Rqi/D
  • and sends to supplier

68
Notes
  • We are assuming that retailers will tell the
    truth i.e., reveal the quantity they truly want
    (one that is consisent with their qi)
  • Supply Chain Profit will be reduced if they dont
  • Contracting Mechanisms will be Required

69
Notes
  • The Supplier Learns each Retailers qi, but not
    qi
  • Supplier Might be able to Infer qi
  • Shipping Proxies

70
We Have Only Just Begun...
  • Tough Issues to Deal with
  • SMC Complexities e.g.,
  • How to Deal with Collusion
  • Computational Complexity (e.g., simultaneity)
  • Supply-Chain Modeling Complexities e.g.
  • Contracting/Incentive Issues
  • SSCC Complexities e.g.,
  • Inverse Optimization
  • Bobs Objective is fB(xA, xB) Alices is fA((xA,
    xB)

71
Discussion....
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