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1 Software Cost Estimation
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Outline Introduction Inputs and Outputs Methods of Estimation COCOMO Conclusion 2
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3 Cost Estimation Is Needed 55% of projects over budget 24 companies that developed large distributed systems (1994) 53% of projects cost 189% more than initial estimates Standish Group of 8,380 projects (1994)
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4 Cost Estimation An approximate judgment of the costs for a project Many variables Often measured in terms of effort (i.e., person months/years) Different development environments will determine which variables are included in the cost value Management costs Development costs Training costs Quality assurance Resources
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5 Cost Estimation Affects Planning and budgeting Requirements prioritization Schedule Resource allocation Project management Personnel Tasks
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6 General Steps and Remarks Establish Plan What data should we gather Why are we gathering this data What do we hope to accomplish Do cost estimation for initial requirements Decomposition Use several methods There is no perfect technique If get wide variances in methods, then should re-evaluate the information used to make estimates
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7 General Steps and Remarks (cont.) Do re-estimates during life cycle Make any required changes to development Do a final assessment of cost estimation at the end of the project
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8 Software Cost Estimation Process Definition A set of techniques and procedures that is used to derive the software cost estimate Set of inputs to the process and then the process will use these inputs to generate the output
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9 Inputs and Outputs to the Estimation Process Classical view of software estimation process
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10 Inputs and Outputs to the Estimation Process (Cont.) Actual cost estimation process
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11 Cost Estimation Accuracy To determine how well a cost estimation model predicts Assessing model performance Absolute Error = (E pred – E act ) Percentage Error = (E pred – E act ) / E act Mean Magnitude of Relative Error
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12 Cost Estimation Methods Algorithmic (Parametric) model Expert Judgment (Expertise Based) Top – Down Bottom – Up Estimation by Analogy Price to Win Estimation
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13 Algorithmic (Parametric) Model Use of mathematical equations to perform software estimation Equations are based on theory or historical data Use input such as SLOC, number of functions to perform and other cost drivers Accuracy of model can be improved by calibrating the model to the specific environment
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14 Algorithmic (Parametric) Model (Cont.) Examples: COCOMO (COnstructive COst MOdel) Developed by Boehm in 1981 Became one of the most popular and most transparent cost model Mathematical model based on the data from 63 historical software project COCOMO II Published in 1995 To address issue on non-sequential and rapid development process models, reengineering, reuse driven approaches, object oriented approach etc Has three submodels – application composition, early design and post-architecture
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15 Algorithmic (Parametric) Model (Cont.) Putnam’s software life-cycle model (SLIM) Developed in the late 1970s Based on the Putnam’s analysis of the life-cycle in terms of a so-called Rayleigh distribution of project personnel level versus time. Quantitative software management developed three tools : SLIM-Estimate, SLIM-Control and SLIM-Metrics.
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16 Algorithmic (Parametric) Model (Cont.) Advantages Generate repeatable estimations Easy to modify input data Easy to refine and customize formulas Objectively calibrated to experience Disadvantages Unable to deal with exceptional conditions Some experience and factors can not be quantified Sometimes algorithms may be proprietary
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17 Expert Judgment Capture the knowledge and experience of the practitioners and providing estimates based upon all the projects to which the expert participated. Examples Delphi Developed by Rand Corporation in 1940 where participants are involved in two assessment rounds. Work Breakdown Structure (WBS) A way of organizing project element into a hierarchy that simplifies the task of budget estimation and control
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18 Expert Judgment (Cont.) Advantages Useful in the absence of quantified, empirical data. Can factor in differences between past project experiences and requirements of the proposed project Can factor in impacts caused by new technologies, applications and languages. Disadvantages Estimate is only as good expert’s opinion Hard to document the factors used by the experts
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19 Top - Down Also called Macro Model Derived from the global properties of the product and then partitioned into various low level components Example – Putnam model
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20 Top – Down (Cont.) Advantages Requires minimal project detail Usually faster and easier to implement Focus on system level activities Disadvantages Tend to overlook low level components No detailed basis
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21 Bottom - Up Cost of each software components is estimated and then combine the results to arrive the total cost for the project The goal is to construct the estimate of the system from the knowledge accumulated about the small software components and their interactions An example – COCOMO’s detailed model
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22 Bottom – Up (Cont.) Advantages More stable More detailed Allow each software group to hand an estimate Disadvantages May overlook system level costs More time consuming
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23 Estimation by Analogy Comparing the proposed project to previously completed similar project in the same application domain Actual data from the completed projects are extrapolated Can be used either at system or component level
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24 Estimation by Analogy (Cont.) Advantages Based on actual project data Disadvantages Impossible if no comparable project had been tackled in the past. How well does the previous project represent this one
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25 Price to Win Estimation Price believed necessary to win the contract Advantages Often rewarded with the contract Disadvantages Time and money run out before the job is done
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26 COCOMO 81 COCOMO stands for COnstructive COst MOdel It is an open system First published by Dr Barry Bohem in 1981 Worked quite well for projects in the 80’s and early 90’s Could estimate results within ~20% of the actual values 68% of the time
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27 COCOMO 81 COCOMO has three different models (each one increasing with detail and accuracy): Basic, applied early in a project Intermediate, applied after requirements are specified. Advanced, applied after design is complete COCOMO has three different modes: Organic – “relatively small software teams develop software in a highly familiar, in-house environment” [Bohem] Embedded – operate within tight constraints, product is strongly tied to “complex of hardware, software, regulations, and operational procedures” [Bohem] Semi-detached – intermediate stage somewhere between organic and embedded. Usually up to 300 KDSI
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28 COCOMO 81 COCOMO uses two equations to calculate effort in man months (MM) and the number on months estimated for project (TDEV) MM is based on the number of thousand lines of delivered instructions/source (KDSI) MM = a(KDSI) b * EAF TDEV = c(MM) d EAF is the Effort Adjustment Factor derived from the Cost Drivers, EAF for the basic model is 1 The values for a, b, c, and d differ depending on which mode you are using Modeabcd Organic2.41.052.50.38 Semi-detached3.01.122.50.35 Embedded3.61.202.50.32
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29 COCOMO 81 A simple example: Project is a flight control system (mission critical) with 310,000 DSI in embedded mode Reliability must be very high (RELY=1.40). So we can calculate: Effort = 1.40*3.6*(319) 1.20 = 5093 MM Schedule = 2.5*(5093) 0.32 = 38.4 months Average Staffing = 5093 MM/38.4 months = 133 FSP
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30 COCOMO Conclusions COCOMO is the most popular software cost estimation method Easy to do, small estimates can be done by hand USC has a free graphical version available for download Many different commercial version based on COCOMO – they supply support and more data, but at a price
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31 Conclusions Project costs are being poorly estimated The accuracy of cost estimation has to be improved Data collection Use of tools Use several methods of estimation
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