Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, 10-12.12.2007 1 Stochastic optimization and modeling of network risk and uncertainty:

Slides:



Advertisements
Similar presentations
1 st Review Meeting, Brussels 5/12/12 – Technical progress (P. Paganelli, Bluegreen) iCargo 1st Review Meeting Brussels 5/12/12 Technical.
Advertisements

Information Systems in Business
“High Performing Financial Institutions and the Keys to Success in an Uncertain Environment”
Manulife Financial Corporation operates as John Hancock in the United States, and Manulife in other parts of the world. Enterprise Risk Management in Life.
Role of RAS in the Agricultural Innovation System Rasheed Sulaiman V
Best Practices in the Use of Managerial Simulation Games-Based Learning Jindra Peterková.
01/06/ Conceptual business models and ontology's A design perspective eGlobal, 17 th Bled eCommerce Conference June , 2004 Harry Bouwman, TUDelft.
Chapter 14 Assessing the Value of IT. Traditional Financial Approaches  ROI – Return on Investments Each area is considered an investment center ROI.
Effective Coordination of Multiple Intelligent Agents for Command and Control The Robotics Institute Carnegie Mellon University PI: Katia Sycara
An Introduction to Information Systems in Organizations
NETS Networks of the Future Duration: Estimated volume: 120 million euros Programme Manager: Anssi Kujala, EPStar Oy Programme Supervisor: Erkki.
Company Enterprise Risk Management & Stress Testing Case Study.
An Introduction to Marketing Research
Supply Chain Management
What is an Information System? Input of DataResourcesProcessing Data Data Control of System Performance Storage of Data Resources Output of InformationProducts.
Page 0 Optimization Uncertainty Decision Analysis Systems Economics Masters of Engineering With Concentration in Systems Engineering A 30 hour graduate.
Chapter 5: Supply Chain Performance Measurement and Financial Analysis
Chapter 1: Supply Chain Management. Chapter 1Management of Business Logistics, 7 th Ed.2 Learning Objectives - After reading this chapter, you should.
Achieving Operational Excellence and Customer Intimacy:Enterprise Applications Chapter 9 (10E)
Strategic Financial Decision-Making Framework
Chapter 1: Supply Chain Management: An Overview Learning Objectives After reading this chapter, you should be able to do the following: Discuss the major.
ADVISORY SERVICES. Identifying And Leveraging Opportunities Within Your Practice.
GaBi The contribution of Life Cycle Assessment to global sustainability reporting of organizations J. Pflieger, M. Fischer, T. Kupfer, P. Eyerer University.
M ICHIGAN P UBLIC S ERVICE C OMMISSION Transformation of the Electric Power Industry: Value of Regulatory Impact Assessments Greg R. White Commissioner.
Developing the Marketing Channel
Electronic Business Systems
Darema Dr. Frederica Darema NSF Dynamic Data Driven Application Systems (Symbiotic Measurement&Simulation Systems) “A new paradigm for application simulations.
Role and Components of Project Evaluation
Chapter 1 SUPPLY CHAIN MANAGEMENT: An Overview. ©2013 Cengage Learning. All Rights Reserved. May not be scanned, copied or duplicated, or posted to a.
© 2014 Cengage Learning. All Rights Reserved. May not be copied, scanned, or duplicated, in whole or in part, except for use as permitted in a license.
Fundamentals of Information Systems, Second Edition 1 Information Systems in Organizations.
June 2001 Universita’ degli Studi di Bergamo Corso di dottorato di ricerca 1 Asset/Liability Management Models in Insurance.
Practical analysis and valuation of heterogeneous telecom services Case-based analysis.
MANAGEMENT STRATEGY ELABORATION JAVA TOOL Edward Pogossian Academy of Sciences of Armenia, IPIA State Engineering University of Armenia.
Session 2 & 3. ERP System Providers Customer Relationship Management Supply Chain Management Product Life Cycle.
© 2014 Cengage Learning. All Rights Reserved. May not be copied, scanned, or duplicated, in whole or in part, except for use as permitted in a license.
Microsoft Office Project 2003: Selling EPM in your Organization Matt Wilson Business Solutions Specialist LMR Solutions.
Chapter McGraw-Hill/Irwin Copyright © 2008 by The McGraw-Hill Companies, Inc. All rights reserved. Risk and Capital Budgeting 13.
Concepts in Enterprise Resource Planning Fourth Edition
Cost Management Session 3. Overview Theory Exercise: 1.39; 1.42; 1.50;
© 2011 Cengage Learning. All Rights Reserved. May not be copied, scanned, or duplicated, in whole or in part, except for use as permitted in a license.
Foundations and Evolutions
Project Management. Introduction  Project management process goes alongside the system development process Process management process made up of three.
Effective business acumen development with simulations Hands-on learning by competing and collaborating.
ORCALE CORPORATION:-Company profile Oracle Corporation was founded in the year 1977 and is the world’s largest s/w company and the leading supplier for.
© 2002 IBM Corporation 1 315CSC323 BIT Final Year Project Business Context.
Enterprise Risk Management An Introduction Frank Reynolds, Reynolds, Thorvardson, Ltd.
Alexei A.Gaivoronski January 2006 TIØ4137 Financial Optimization 1 Financial Optimization and Risk Management Professor Alexei A. Gaivoronski Department.
FACILITIES PLANNING INTRODUCTION Form Follows Function Form and function should be one, joined in a spiritual union.
Management Information Systems Islamia University of Bahawalpur Delivered by: Tasawar Javed Lecture 3b.
Lecture 27 Electronic Business (MGT-485). Recap – Lecture 26 E-Business Strategy: Implementation – Organizational Structure and e-Business The Boundary-less.
Alexei A.Gaivoronski IKT Økonomi1 Provision of mobile data services: portfolio analysis Norwegian University of Science and Technology, Trondheim, Norway.
ANASOFT VIATUS. Challenges Supply chain optimization is necessary for achieving competitive price of final products Synchronization and utilization of.
DESIGN OF PRODUCTS AND SERVICES Chapter Three Copyright © 2014 by The McGraw-Hill Companies, Inc. All rights reserved. McGraw-Hill/Irwin.
Revision Chapter 1/2/3. Management Information Systems CHAPTER 1: INFORMATION IN BUSINESS SYSTEMS TODAY How information systems are transforming business.
Carmela Tuccillo Orlando Troisi Università degli Studi di Salerno
Part 2 Developing the Marketing Channel. Chapter 5 Strategy in Marketing Channels.
Crisis management related research at
  Logistics Logistics is the art of planning and coordinating all activities and processes necessary for a product or service is generated and to.
Kostas Seferis, i2S Data science and e-infrastructures can help aquaculture to improve performance and sustainability!
Strategy in Marketing Channels
Achieving Operational Excellence and Customer Intimacy:Enterprise Applications Chapter 9 (10E)
Information Systems in Global Business Today
Developing the Marketing Channel
Developing the Marketing Channel
Stevenson 5 Capacity Planning.
MIS COURSE: CHAPTER 1 INFORMATION SYSTEM IN GLOBAL BUSINESS TODAY
Of Financial Management Traditional View Modern View Objective of Financial Management Scope of Financial Management Relationship of Finance with other.
Presentation transcript:

Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, Stochastic optimization and modeling of network risk and uncertainty: the case of telecommunication services Alexei A. Gaivoronski Norwegian University of Science and Technology Joint work with Josip Zoric, Denis Becker, Adrian Werner, Paolo Pisciella

Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, Risk adapted performance networks  Electric power generation and distribution  Gas production, transportation, dirstribution  Telecommunications and internet  Transportation 1.Hierarchical networks with nodes of different levels of complexity: from equipment to enterprises 2.Nodes designed to meet local risk adjusted performance targets locally 3.Network should satisfy risk/performance tradeoff globally 4.Inherent uncertainty

Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, Quantitative evaluation of business models for collaborative service provision Work directions  Getting qualitative understanding of business models, input from qualitative part, SPICE scenarios, surveys  Development of quantitative models  Implementation in a prototype of decision support system  Testing on SPICE scenarios, cases  Deliverable on quantitative evaluation

Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, Status Task 1.4, quantitative analysis of business models  The Edition 1 of the set of models for investment business analysis of collaborative service provision has been developed: top static view  Architecture of the prototype of decision support system for analysis of business models is selected  Parts of this prototype is under implementation

Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, Work in progress  Edition 2 of the model set: service lifetime, different constellations of actors  Build up of the prototype of decision support system for business analysis  Analysis of SPICE scenarios using the model set  Analysis of possible business models using qualitative input from other participants  Further dissemination effort

Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, Quantitative business models  What is it?  Well understood in theory of corporate finance and in business practice  BUT focus is on one single enerprise who selects industrial project or project portfolio  Identify and measure and commeasure all cash flows related to a given business activity  Give integrated assessment of cash flow/profit performance based on different business principles  Return on investment  NPV  Risk/performance tradeoff  Decision about business activity  Recent emphasis on risk control

Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, Challenges to this view  Networked industrial environment  Different independent agents are contributing to the common goal being in complex relations of competition and collaboration  How all this functions in such networked environment?  Corporate finance theory needs further development for this case  Risk control issues  Good example: evaluation of business models in context of SPICE

Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, Objective  Starting from theory of corporate finance and optimal decisions under uncertainty and risk develop methods and tools for quantitative evaluation of business models in networked environment  Utilize this methodology in SPICE context for evaluation of collaborative service provision on SPICE platform

Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, Risk/performance networks  State of the art: different attempts but no universally accepted answers  Growing importance in different fields  Telecommunications  Supply chain management  Energy

Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, Example of structural description of service provision

Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, Different constellations of roles

Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, Service architecture

Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, Services, roles and actors users servicesComponents, enablers, roles SPICE actors

Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, Economic requirements  Platform should be attractive for all actors  Actors should feel incentive to join service provision, that is they should want to join cooperative effort because they will benefit from it  Services should provide to actors a competitive source of profit  Risk/return considerations: risk that users will not accept the service as expected, cannibalizing, etc

Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, Approach of modern financial theory  Actors participate in service(s) provision assuming roles and providing components for services  Quantify cash flow, profits and risks  Each actor will select tradeoff between profit and risk exposure according to its preferences  This will result in service portfolio for each actor  Coordination tools should assure that the actors will select on their own accord participation in service provision in required proportion

Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, Risk/return tradeoff Nobel prise winning concept

Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, Quantitative model Description of service  Services consist of components which my be provided by different actors N components indexed by i and M services indexed by j ij - share of component i in service j. Description of service through components:  Service generate revenue v j  Revenue sharing coefficients  Actor who contribures with component i recieves revenue

Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, Description of actors  Actors assume roles by providing service components  This incurs costs and brings revenue K actors indexed by k c ik – unit provision costs for actor k providing component i W ik – provision capability of component i by actor k x ijk – the portion of provision capability for component i of actor k dedicated to participation in provision of service j. Profit model for actor k x ijk W ik - the volume of provision of component i dedicated by actor k to service j

Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, Profit model for actor k  x ijk W ik /λ ij - volume of service j in which the actor k participates  v j x ijk W ki /λ ij - the total revenue from this service  v j x ijk W ki γ ij /λ ij - the part of the revenue which goes to actor k  Profit of actor k:

Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, Profit model for actor k  Basic case: an actor provides only one component  Profit  Return  Portfolio viewpoint: an actor chooses portfolio of services to which contribute

Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, Portfolio viewpoint  Return coefficients associated with participation in each service  expected return coefficients  expected return  Risk that actual return will be different from expected return or even become loss

Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, Efficient service portfolios  Problem to solve for computing eficient frontier

Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, Next level: quantitative coordination  What is necessary is that the whole service provision platform functions properly  And this means that different actors should independently make decisions to participate in different services which nevetherless will provide coordinated result.  Revenue sharing coefficients should be chosen in order to achieve this

Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, Coordinator (service provider) problem Paper is available on Edition 1 of the model set

Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, Architecture of the DSS prototype

Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, Screenshot 1 of demo of DSS prototype

Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, Screenshot 2 of demo of DSS prototype

Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, Example: business person on the move

Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, Risk/performance preferences

Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, Market shares

Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, Price competition

Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, Summary  Modern theory of corporate finance and risk management together with optimization under uncertainty provides a foundation for quantitative analysis of risk/performance networks in the context of collaborative service provision

Alexei A. Gaivoronski IIASA, Workshop on Coping with Uncertainty, Conclusions  Traditional risk management paradigm should be augmented and developed further: noncommeasurable risks  Modern theory of corporate finance and risk management provides a foundation for quantitative analysis of risk/performance networks but much more work is needed  Many possibilities for stochastic programming approaches  Three components: Modern computing technology, off-shelf optimization software, custom algorithm design  It is possible to solve highly nonlinear and nonconvex problems in industrial quantities