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Scheduling of Flexible Resources in Professional Service Firms Arun Singh CS 537- Dr. G.S. Young Dept. of Computer Science Cal Poly Pomona.

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Presentation on theme: "Scheduling of Flexible Resources in Professional Service Firms Arun Singh CS 537- Dr. G.S. Young Dept. of Computer Science Cal Poly Pomona."— Presentation transcript:

1 Scheduling of Flexible Resources in Professional Service Firms Arun Singh CS 537- Dr. G.S. Young Dept. of Computer Science Cal Poly Pomona

2 Problem

3 Solution

4 Flexibility Flexibility is the ability of an organization to effectively cope with uncertainties and changes in the market by employing resources that can process different types of jobs

5

6 Workplace Learning Industry YearPercentage of employees 199867.7% 199974.9% 200076.7% Percentage of employees who received training Comparisons Report of the American Society for Training Development (ASTD)

7 Problem Definition  Offers m different types of training programs  Employs l different types of instructors  Specialized  Flexible  Versatile  Index the program type by i = 1, 2,...,m  πi denote the return or revenue  Client requests for training on this day arrive randomly, starting T periods before this date

8 WLS Manager Firm accumulates client requests during the period, say, one day and allocates resources at the end of the period. Goal  Maximum expected total revenue Major decisions  Acceptance  Resource assignment Stochastic dynamic program

9 Maximum expected revenue-to-go u t (n t, d t ) as the maximum expected revenue-to-go at stage t A = {ai j }, represents the firm’s resource flexibility structure D Demand Vector nt Resource availability Because of the exponential state space, finding the optimal policy requires Enormous computational effort even for problems with moderate number of resources

10 Special Case: Two Job Types with Unit Job Arrivals  Two types of jobs, types 1 and 2  Three types of resources, types 1, 2, and 3  Type-1 and type-2 resources are specialized resources  Type-3 resources are flexible  In each period t, we assume that no more than one job arrives

11 Special Case: Two Job Types with Unit Job Arrivals Cont.. The following observations are intuitively true and can also be proved formally using interchange arguments.  The optimal online policy must accept as many type-1 jobs as possible, utilizing the type-1 resources before the type-3 resources.  The optimal online policy must accept a type-2 job whenever type-2 resources are available. The problem is more challenging when a type-2 job arrives and only type-1 and type-3 resources are available It would make sense to reserve the flexible resources for jobs arriving toward the end of the decision horizon

12 Theorem for the optimal online policy Suppose a type-2 job arrives in period t, and let (n1, 0, n3; e2) be the state of the system in this period. 1. There exists a non increasing function Ft (n1) such that the optimal online policy accepts the type-2 job and assigns a type-3 resource to it if and only if n3 ≥ Ft (n1). 2. Ft (n1) is a non decreasing function of t for any given n1.

13 Cont.. if p1 + p2= 1 (i.e. a type-1 or type-2 job always arrives in each period and hence the total demand for the two job types is known), then the threshold function takes the simple form Ft (n1) = t − n1, t = the number of periods remaining until the end of the decision horizon, is also the total remaining demand. Thus, the optimal online policy accepts an incoming type-2 job and uses a flexible resource only if n3 ≥ Ft (n1) = t - n1

14 Basic threshold policy 1. Accept a type-i job if and only if  The total number of resources that can only be assigned to either the type-i jobs or any job type of lesser value (job types with indices larger than i ) is greater than zero, or  The total number of resources that can be assigned to job types that are more valuable than type-i jobs (i.e., jobs with indices smaller than i ) exceeds the total expected demand for these job types over the remaining time horizon. 2. If the type-i job is accepted in step 1, assign a resource which is expected to generate the smallest return among all resources that can be assigned to the type-i job.

15 Capacity reservation policy 1. Accept a type-i job if and only if (a) the total number of resources that can only be assigned to either type-i jobs or any job of lesser value (jobs with indices larger than i ) is greater than zero, or (b) the probability that the overflow demand of job types that are more valuable than the type-I job is greater than or equal to the total number of flexible resources that can process type-i or more valuable jobs is less than the threshold value of πi/πi. 2. If the type-i job is accepted in the first step, assign a resource which is expected to generate the smallest return among all resources that can be assigned to the type-i job.

16 Rollout policy 1. Accept a type-i job if and only if its reward πi is greater than or equal to the minimum opportunity cost ωj t among the available resources that can process type-i jobs. 2. If the type-i job is accepted, then assign to it the available resource with the minimum opportunity cost. ωjt = opportunity cost

17 Concluding Remarks  Little flexibility is sufficient to achieve the maximum reward for the systems with moderate capacity  More flexibility is required for the system with tighter capacity  Our methods significantly out perform the naive benchmark method (first-come first-served), and provide near-optimal solutions in most problem instances  Capacity reservation policy consistently dominates the other solution approaches, since it incorporates more problem parameters (rewards, demand distributions) into its decision process.

18 Questions?


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