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DEMAND PLANNING LEADERSHIP EXCHANGE
PRESENTS:



                      The web event will begin momentarily with
                                     your host:


                                       & Guest Commentator



November 13th, 2012                                plan4demand
Sector     Days +   %+
                                                                  CPG          8      13.5%
                                                                  Chemical    1.3     1.8%
                                                                  Pharma      9.6     7.8%




   Despite the headlines and success stories, a recent survey, for the period 2000 to 2011,
   revealed that 3 out of the 4 business sectors actually had their days-on-hand inventory
   increase … Why?
            Where and When did Forecast Accuracy Initiatives fail to impact inventory levels?
                  What potential areas should we look at to explain the lack of impact?
Source : Supply Chain Insights LLC
Forecast Accuracy Review – Inventory Review
Forecast Accuracy vs. Safety Stock
Forecast Accuracy vs. the Plant
Conservative Forecast Bias
Effects of Pre-build
Bottom Line
Headline:
 The safety stock component of inventory is directly impacted by
                   changes in Forecast Accuracy

How this effects the Trend Line:
   Adjusting safety stock policy is a critical step in ensuring forecast
   accuracy initiatives will have a lasting effect
   Depending on the magnitude of the safety stock in comparison to
   the overall inventory, improving forecast accuracy may or may not
   have a large impact on the overall inventory
   Understanding the percentage of inventory types is essential in
   deciding if improving forecast accuracy will impact inventory
   levels significantly
Forecast Accuracy Performance Goals
   The goal of Forecast Performance management is to:
   – Maximize the amount of actual demand that is explained by the
     forecast in order to minimize noise
   – Provide feedback to the forecasting process to minimize bias
       •   Enable continuous forecast improvement
   Demand forecasts are:
   – Made for specific time periods (weeks, months) and are extended over a
     specific forecast horizon
   – Subject to forecast error
   Demand forecasts are NOT :
   – Goals, targets, or objectives
   – Expected to be absolutely right
Factors that generally affect Forecast Performance:
    Sales Volume
    – The higher the volume of product sales, the more accurate the forecast will
      be
    Forecast Lag
    – Accuracy improves the closer to the time of sales
    – Customer data and market intelligence reliability increases with time as well
    Competition
    – In markets with heavy competition, forecasting is difficult due to
      unpredictable competitor behavior
    Product Life-Cycle Stage
    – Mature products are more predictable than new or declining products
Forecast Error is caused by:
    Lack of Forecast Validity
    – Applying market intelligence to the wrong time period or products
    – Using invalid history to generate the forecast
    – Poor Statistical/Algorithm models that do not correctly identify seasonal
      patterns or shifts in demand levels
    Bias (not Error!)
    – Unrealistic expectations by individuals or groups
    – Forcing the Total forecast to equal a target without taking into account
      how the demand for individual product will be affected
    – A lack of vision to external factors
    Noise
    – Random fluctuation in demand
    – Noise generally cannot be predicted nor forecasted
Understanding Accuracy & Relative Bias
   Certain measures should be integrated into the Demand
   Planning process
   –   Bias
   –   Forecast Accuracy (FA)
   –   Mean Absolute Percent Error (MAPE)
   –   Weighted Mean Absolute Percent Error (WMAPE)
   –   Coefficient of Variation (CV)
   –   Forecast Value Add (FVA)
Inventory reaches various locations for different
reasons; each reason has a different characteristic.
                      Safety Stocks
                                                Stochastic      Stochastic
  Inventory Profile   Cycle Stocks              Linear          Nonlinear
                      Pre-Build Stocks
                      Pipeline Stocks           Deterministic   Deterministic
                                                Linear          Nonlinear
                      Merchandizing Stocks
                                 Manufacturing Lead Time
All Safety Stock Strategies are grounded in Forecast
Accuracy
    Directly Effected where the change is Forecast Accuracy is
    carried into the Calculation
    – Statistical Safety Stock:
                                      Safety Factor X   MSE x Plan Lead Time*
        •   Mean Square Error
                                                             Fcst Duration
                                                                                * or Mfg Lead Time

    Indirectly Effected where the change is Forecast Accuracy
    will require direct Planner intervention
    –   Days Forward Coverage
        •   Number of Days are based Management Policy
    – Reorder Point
        •   Management Policy
How Deep Does Your Forecast Accuracy
Monitoring/Participation Methodology Go?
   Answer on the right hand side of your screen
       Select ALL departments that apply

          A.   Marketing
          B.   Sales
          C.   Manufacturing
          D.   Supply Planning
          E.   Demand Planning
          F.   Customer Service
Headline:
     Improving Forecast Accuracy is Meaningful to the Plant!

How to Effect the Trend Line:
    Engage Manufacturing in the Process
    Measure and take action on the correct lag to provide the best results for
    inventory reduction
     –   Synchronize the Demand Planning lag measurement with the period where critical
         Inventory decisions are made
          •   Raw Material
          •   Brite’s – Postponement
          •   Pre-Builds
      Align Manufacturing with the Demand Signal
     –   The more in sync the production plan is with the demand plan, the better!
     –   This ensures the Plant makes inventory that is required …. not just desired
“Lag” is the number of time periods between forecast creation period
        and forecast target period
                                                              Forecast Target Month
                          Jan     Feb     Mar     Apr     May     Jun       Jul     Aug   Sep     Oct      Nov      Dec
                    Jan   Lag 0   Lag 1   Lag 2   Lag 3   Lag 4   Lag 5   Lag 6   Lag 7   Lag 8   Lag 9   Lag 10   Lag 11
Forecast Creation




                    Feb           Lag 0   Lag 1   Lag 2   Lag 3   Lag 4   Lag 5   Lag 6   Lag 7   Lag 8   Lag 9    Lag 10
                    Mar                   Lag 0   Lag 1   Lag 2   Lag 3   Lag 4   Lag 5   Lag 6   Lag 7   Lag 8    Lag 9
     Month




                    Apr                           Lag 0   Lag 1   Lag 2   Lag 3   Lag 4   Lag 5   Lag 6   Lag 7    Lag 8
                    May                                   Lag 0   Lag 1   Lag 2   Lag 3   Lag 4   Lag 5   Lag 6    Lag 7
                    Jun                                           Lag 0   Lag 1   Lag 2   Lag 3   Lag 4   Lag 5    Lag 6
Actual                     X       X       X       X       X       X        X       X      X       X        X        X




        Which forecast should we chose to compare to the actual demand?
        – Choose one or more “critical” lags when commitments are made
        – Lead time is a good representation of the point of commitment
Improves over time for the same lag as we learn to forecast
                    better
                    – Improved model tuning
                    – Improved incorporation of market intelligence
                    Improves as the lag decreases for the same target period
                    – More current information, including history for recent periods
                    – More concrete promotional and market program information
                                                              Forecast Target Month
                          Jan     Feb     Mar      Apr    May     Jun       Jul     Aug   Sep     Oct      Nov      Dec
                    Jan   Lag 0   Lag 1   Lag 2   Lag 3   Lag 4   Lag 5   Lag 6   Lag 7   Lag 8   Lag 9   Lag 10   Lag 11
Forecast Creation




                    Feb           Lag 0   Lag 1   Lag 2   Lag 3   Lag 4   Lag 5   Lag 6   Lag 7   Lag 8   Lag 9    Lag 10
                    Mar                   Lag 0   Lag 1   Lag 2   Lag 3   Lag 4   Lag 5   Lag 6   Lag 7   Lag 8    Lag 9
     Month




                    Apr                           Lag 0   Lag 1   Lag 2   Lag 3   Lag 4   Lag 5   Lag 6   Lag 7    Lag 8
                    May                                   Lag 0   Lag 1   Lag 2   Lag 3   Lag 4   Lag 5   Lag 6    Lag 7
                    Jun                                           Lag 0   Lag 1   Lag 2   Lag 3   Lag 4   Lag 5    Lag 6
Actual                     X       X       X        X      X       X        X       X      X       X        X        X
Inventory commitment occurs continuously throughout the manufacturing process

                     Out-Sourced                                                        In-Sourced
                                                              Packaging




                                                                                          Operations




                                                                                        Cooking / Mixing
                                                                                                           Raw Material
                                                                          Packaging
                                                  Inventory Commitment

                    Jan     Feb    Mar    Apr       May                         Jan      Feb    Mar    Apr     May
            Jan     Lag 0   Lag 1 Lag 2   Lag 3    Lag 4                Jan     Lag 0    Lag 1 Lag 2   Lag 3   Lag 4
Creation




                                                            Creation
Forecast




                                                            Forecast




            Feb             Lag 0 Lag 1   Lag 2    Lag 3                Feb              Lag 0 Lag 1   Lag 2   Lag 3
            Mar                   Lag 0   Lag 1    Lag 2                Mar                    Lag 0   Lag 1   Lag 2
           Actual    X       X     X       X         X                 Actual    X        X      X      X       X
Forecast Accuracy needs to be measured where inventory commitment is Highest
      –         Institutionalize a process for where plants have visibility into the end volatility of their inventory



                                                                                             In-Sourced
                   Out-Sourced                                     Packaging



                                                                                             Operations




                                                                                           Cooking / Mixing
                                                                                                                  Raw Material
                                                                               Packaging

                                                   Inventory Commitment

                    Jan     Feb    Mar     Apr     May                              Jan    Feb    Mar      Apr      May
          Jan      Lag 0 Lag 1 Lag 2      Lag 3   Lag 4                     Jan    Lag 0 Lag 1 Lag 2      Lag 3    Lag 4
Forecas




                                                                  Forecas
Creatio




                                                                  Creatio




          Feb            Lag 0 Lag 1      Lag 2   Lag 3                     Feb          Lag 0 Lag 1      Lag 2    Lag 3
   t




                                                                     t




          Mar                  Lag 0      Lag 1   Lag 2                     Mar                Lag 0      Lag 1    Lag 2
Where do you measure your Forecast accuracy?
     Answer on the right hand side of your screen
         Select appropriate lag that apply

            A. Only Measure at a Single Lag (0)
            B. Measure at Manufacturing Lag (2-3)
            C. Measure at Raw Material Lead Time
               Lag (3-4)
            D. Measure at Deployment Lag (0-1)
            E. Don’t Know!
Headline:
  Errors on the high side protects Customer Service levels &
             maintains top line revenue projections

How this Effects the Trend Line:
     Forecast bias directly affects the cycle stock
     Persistent same sign errors (BIAS) extends the time inventory
     remains in cycle stock
     Measuring and then lowering forecast bias can optimize cycle
     stock levels
     ABC classification will help guide you to important data points
An indicator identifying if the error across the data sample is
chronically high or low
– This tendency to over or under forecast can have a rippling affect
  across the supply chain
Is measured over multiple periods of the same forecast, or
measured at lead time
An indicator of a significant demand change
– highlighting periods where the fitted forecast has relative error
  outside of a threshold over the time horizon selected.
20

 Bias is more critical than accuracy on a single SKU
           Constantly over forecasting by 20% is more damaging than over forecasting 30% one
           month than under forecasting 30% the next…
                                                  Abs Pct                                                   Abs Pct
                           Fcst Absolute Pct Fcst Fcst                            Fcst Absolute Pct Fcst    Fcst
              Hist Fcst Error Error Error Error                      Hist Fcst Error Error Error            Error
     Period 1     500  650 (150.00) 150 -30.00% 30.00%       Period 1 500 600 (100.00)     100 -20.00%       20.00%
     Period 2     650  455 195.00   195 30.00% 30.00%        Period 2 520 650 (130.00)     130 -25.00%       25.00%
     Period 3     550  715 (165.00) 165 -30.00% 30.00%       Period 3 550 605 (55.00)        55 -10.00%      10.00%
     Total       1700 1820 (120.00) 510 -7.06% 30.00%        Total      1570 1855 (285.00) 285 -18.15%       18.15%
     • In this example, a period of over-forecasting is            • In this example, the SKU was consistently
      followed by a period of under forecasting                    over-forecasted every period
     • In total, the SKU was off by 120 units over                 • In total, the SKU was off by 285 units over
     three periods for a Forecast Error of 7.06%                   three periods for a Forecast Error of 18.15%


          • Although Error on a period by period basis was worse on the left,
                    you can see the Net Error was better over time
Cycle Stock
                                                                                               Average Inventory
Inventory




                                                              Inventory
                                                  Order Qty
               Cycle Stock    Average Inventory




               Safety Stock                                                    Safety Stock
                     Time                                                               Time


            A biased forecast can:
            – Create surplus inventory through over forecasting by increasing the
              average days of inventory on hand
            – Under forecasting forces an unnecessary out-of-stock position
                •   Decreases customer service levels
                •   Increases costs due to inventory expediting and production overtime
Forecast Value Add (FVA) is used to identify the overall effect that an activity
          has on forecast accuracy /error.
                   Along with Coefficient of Variation (CV), the FVA will allow you to:
                   –     Identify ability to affect change on “forecast-able” products
                   –     Classify those products that require significant effort with little return
                   –     Evaluate relative planner effectiveness and workload among other team members
                   –     In FVA analysis, you would compare the analyst’s override to the statistically generated
                         forecast to determine if the override makes the forecast better

                                                   In this case, the naïve model was able to achieve MAPE of 25%
                                                   • The statistical forecast added value by reducing MAPE five
                                                     percentage points to 20%
                                                   • However, the analyst override actually made the forecast worse,
                                                     increasing MAPE to 30%
                                                   • The override’s FVA was five percentage points less than the naïve
                                                     model’s FVA, and was 10 percentage points less than the
                                                     statistical forecast’s FVA

Source: Michael Gilliland SAS Chicago APICS 2011
Headline:
  Pre-building inventory defeats any initiative to reduce
    safety stock through improved forecast accuracy

How to Effect the Trend Line:
     Understand how much the business “pre-builds”
     When & Where inventory decisions are occurring
     – Shifts decisions further into the future and adjust the lag analysis
With pre-built inventory the importance of forecasts accuracy extends
much further into the future

                                        Packaging



                                                                   Operations




                                                                  Cooking / Mixing
                                                                                        Raw Material
                   Inventory Commitment              Packaging




                  Jan     Feb    Mar    Apr         May   June       July       Aug      Sept   Nov
            Jan   Lag 0   Lag 1 Lag 2   Lag 3   Lag 4     Lag 5      Lag 6      Lag 7   Lag 8   Lag 9
 Creation
 Forecast




            Feb           Lag 0 Lag 1   Lag 2   Lag 3     Lag 4      Lag 5      Lag 6   Lag 7   Lag 8
            Mar                 Lag 0   Lag 1   Lag 2     Lag 3      Lag 4      Lag 5   Lag 6   Lag 7
25
Communication is the Key to leverage Forecast Accuracy
Improvements
   The reach is far. Safety Stock / Inventory Commitment
Worry about Trend Lines not The Headlines
   It is about solving tomorrows problems, Today
   Use the Head Lines to point you to the Trend Line decisions
   Forecasting processes that are not far reaching in their focus
   are missing large opportunities
Forecast Accuracy measurements are a tool to leverage
performance not a club to discipline performance
Increasing Forecast Accuracy CAN Reduce Inventory
-Adjust SS Strategy

-Align Demand Signal with Manufacturing

-Focus on the “Right” LAGs for your organization

-Acknowledge BIAS and Address it!

-ABC Classification Consensus

-Utilize FVA (Once Mature) and build confidence in your

Demand Planners
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Follow us on Twitter: @Plan4Demand


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Demand Planning Leadership Exchange: Increasing Forecast Accuracy... Does it Really Reduce Inventory?

  • 1. DEMAND PLANNING LEADERSHIP EXCHANGE PRESENTS: The web event will begin momentarily with your host: & Guest Commentator November 13th, 2012 plan4demand
  • 2. Sector Days + %+ CPG 8 13.5% Chemical 1.3 1.8% Pharma 9.6 7.8% Despite the headlines and success stories, a recent survey, for the period 2000 to 2011, revealed that 3 out of the 4 business sectors actually had their days-on-hand inventory increase … Why? Where and When did Forecast Accuracy Initiatives fail to impact inventory levels? What potential areas should we look at to explain the lack of impact? Source : Supply Chain Insights LLC
  • 3. Forecast Accuracy Review – Inventory Review Forecast Accuracy vs. Safety Stock Forecast Accuracy vs. the Plant Conservative Forecast Bias Effects of Pre-build Bottom Line
  • 4. Headline: The safety stock component of inventory is directly impacted by changes in Forecast Accuracy How this effects the Trend Line: Adjusting safety stock policy is a critical step in ensuring forecast accuracy initiatives will have a lasting effect Depending on the magnitude of the safety stock in comparison to the overall inventory, improving forecast accuracy may or may not have a large impact on the overall inventory Understanding the percentage of inventory types is essential in deciding if improving forecast accuracy will impact inventory levels significantly
  • 5. Forecast Accuracy Performance Goals The goal of Forecast Performance management is to: – Maximize the amount of actual demand that is explained by the forecast in order to minimize noise – Provide feedback to the forecasting process to minimize bias • Enable continuous forecast improvement Demand forecasts are: – Made for specific time periods (weeks, months) and are extended over a specific forecast horizon – Subject to forecast error Demand forecasts are NOT : – Goals, targets, or objectives – Expected to be absolutely right
  • 6. Factors that generally affect Forecast Performance: Sales Volume – The higher the volume of product sales, the more accurate the forecast will be Forecast Lag – Accuracy improves the closer to the time of sales – Customer data and market intelligence reliability increases with time as well Competition – In markets with heavy competition, forecasting is difficult due to unpredictable competitor behavior Product Life-Cycle Stage – Mature products are more predictable than new or declining products
  • 7. Forecast Error is caused by: Lack of Forecast Validity – Applying market intelligence to the wrong time period or products – Using invalid history to generate the forecast – Poor Statistical/Algorithm models that do not correctly identify seasonal patterns or shifts in demand levels Bias (not Error!) – Unrealistic expectations by individuals or groups – Forcing the Total forecast to equal a target without taking into account how the demand for individual product will be affected – A lack of vision to external factors Noise – Random fluctuation in demand – Noise generally cannot be predicted nor forecasted
  • 8. Understanding Accuracy & Relative Bias Certain measures should be integrated into the Demand Planning process – Bias – Forecast Accuracy (FA) – Mean Absolute Percent Error (MAPE) – Weighted Mean Absolute Percent Error (WMAPE) – Coefficient of Variation (CV) – Forecast Value Add (FVA)
  • 9. Inventory reaches various locations for different reasons; each reason has a different characteristic. Safety Stocks Stochastic Stochastic Inventory Profile Cycle Stocks Linear Nonlinear Pre-Build Stocks Pipeline Stocks Deterministic Deterministic Linear Nonlinear Merchandizing Stocks Manufacturing Lead Time
  • 10. All Safety Stock Strategies are grounded in Forecast Accuracy Directly Effected where the change is Forecast Accuracy is carried into the Calculation – Statistical Safety Stock: Safety Factor X MSE x Plan Lead Time* • Mean Square Error Fcst Duration * or Mfg Lead Time Indirectly Effected where the change is Forecast Accuracy will require direct Planner intervention – Days Forward Coverage • Number of Days are based Management Policy – Reorder Point • Management Policy
  • 11. How Deep Does Your Forecast Accuracy Monitoring/Participation Methodology Go? Answer on the right hand side of your screen Select ALL departments that apply A. Marketing B. Sales C. Manufacturing D. Supply Planning E. Demand Planning F. Customer Service
  • 12. Headline: Improving Forecast Accuracy is Meaningful to the Plant! How to Effect the Trend Line: Engage Manufacturing in the Process Measure and take action on the correct lag to provide the best results for inventory reduction – Synchronize the Demand Planning lag measurement with the period where critical Inventory decisions are made • Raw Material • Brite’s – Postponement • Pre-Builds Align Manufacturing with the Demand Signal – The more in sync the production plan is with the demand plan, the better! – This ensures the Plant makes inventory that is required …. not just desired
  • 13. “Lag” is the number of time periods between forecast creation period and forecast target period Forecast Target Month Jan Feb Mar Apr May Jun Jul Aug Sep Oct Nov Dec Jan Lag 0 Lag 1 Lag 2 Lag 3 Lag 4 Lag 5 Lag 6 Lag 7 Lag 8 Lag 9 Lag 10 Lag 11 Forecast Creation Feb Lag 0 Lag 1 Lag 2 Lag 3 Lag 4 Lag 5 Lag 6 Lag 7 Lag 8 Lag 9 Lag 10 Mar Lag 0 Lag 1 Lag 2 Lag 3 Lag 4 Lag 5 Lag 6 Lag 7 Lag 8 Lag 9 Month Apr Lag 0 Lag 1 Lag 2 Lag 3 Lag 4 Lag 5 Lag 6 Lag 7 Lag 8 May Lag 0 Lag 1 Lag 2 Lag 3 Lag 4 Lag 5 Lag 6 Lag 7 Jun Lag 0 Lag 1 Lag 2 Lag 3 Lag 4 Lag 5 Lag 6 Actual X X X X X X X X X X X X Which forecast should we chose to compare to the actual demand? – Choose one or more “critical” lags when commitments are made – Lead time is a good representation of the point of commitment
  • 14. Improves over time for the same lag as we learn to forecast better – Improved model tuning – Improved incorporation of market intelligence Improves as the lag decreases for the same target period – More current information, including history for recent periods – More concrete promotional and market program information Forecast Target Month Jan Feb Mar Apr May Jun Jul Aug Sep Oct Nov Dec Jan Lag 0 Lag 1 Lag 2 Lag 3 Lag 4 Lag 5 Lag 6 Lag 7 Lag 8 Lag 9 Lag 10 Lag 11 Forecast Creation Feb Lag 0 Lag 1 Lag 2 Lag 3 Lag 4 Lag 5 Lag 6 Lag 7 Lag 8 Lag 9 Lag 10 Mar Lag 0 Lag 1 Lag 2 Lag 3 Lag 4 Lag 5 Lag 6 Lag 7 Lag 8 Lag 9 Month Apr Lag 0 Lag 1 Lag 2 Lag 3 Lag 4 Lag 5 Lag 6 Lag 7 Lag 8 May Lag 0 Lag 1 Lag 2 Lag 3 Lag 4 Lag 5 Lag 6 Lag 7 Jun Lag 0 Lag 1 Lag 2 Lag 3 Lag 4 Lag 5 Lag 6 Actual X X X X X X X X X X X X
  • 15. Inventory commitment occurs continuously throughout the manufacturing process Out-Sourced In-Sourced Packaging Operations Cooking / Mixing Raw Material Packaging Inventory Commitment Jan Feb Mar Apr May Jan Feb Mar Apr May Jan Lag 0 Lag 1 Lag 2 Lag 3 Lag 4 Jan Lag 0 Lag 1 Lag 2 Lag 3 Lag 4 Creation Creation Forecast Forecast Feb Lag 0 Lag 1 Lag 2 Lag 3 Feb Lag 0 Lag 1 Lag 2 Lag 3 Mar Lag 0 Lag 1 Lag 2 Mar Lag 0 Lag 1 Lag 2 Actual X X X X X Actual X X X X X
  • 16. Forecast Accuracy needs to be measured where inventory commitment is Highest – Institutionalize a process for where plants have visibility into the end volatility of their inventory In-Sourced Out-Sourced Packaging Operations Cooking / Mixing Raw Material Packaging Inventory Commitment Jan Feb Mar Apr May Jan Feb Mar Apr May Jan Lag 0 Lag 1 Lag 2 Lag 3 Lag 4 Jan Lag 0 Lag 1 Lag 2 Lag 3 Lag 4 Forecas Forecas Creatio Creatio Feb Lag 0 Lag 1 Lag 2 Lag 3 Feb Lag 0 Lag 1 Lag 2 Lag 3 t t Mar Lag 0 Lag 1 Lag 2 Mar Lag 0 Lag 1 Lag 2
  • 17. Where do you measure your Forecast accuracy? Answer on the right hand side of your screen Select appropriate lag that apply A. Only Measure at a Single Lag (0) B. Measure at Manufacturing Lag (2-3) C. Measure at Raw Material Lead Time Lag (3-4) D. Measure at Deployment Lag (0-1) E. Don’t Know!
  • 18. Headline: Errors on the high side protects Customer Service levels & maintains top line revenue projections How this Effects the Trend Line: Forecast bias directly affects the cycle stock Persistent same sign errors (BIAS) extends the time inventory remains in cycle stock Measuring and then lowering forecast bias can optimize cycle stock levels ABC classification will help guide you to important data points
  • 19. An indicator identifying if the error across the data sample is chronically high or low – This tendency to over or under forecast can have a rippling affect across the supply chain Is measured over multiple periods of the same forecast, or measured at lead time An indicator of a significant demand change – highlighting periods where the fitted forecast has relative error outside of a threshold over the time horizon selected.
  • 20. 20 Bias is more critical than accuracy on a single SKU Constantly over forecasting by 20% is more damaging than over forecasting 30% one month than under forecasting 30% the next… Abs Pct Abs Pct Fcst Absolute Pct Fcst Fcst Fcst Absolute Pct Fcst Fcst Hist Fcst Error Error Error Error Hist Fcst Error Error Error Error Period 1 500 650 (150.00) 150 -30.00% 30.00% Period 1 500 600 (100.00) 100 -20.00% 20.00% Period 2 650 455 195.00 195 30.00% 30.00% Period 2 520 650 (130.00) 130 -25.00% 25.00% Period 3 550 715 (165.00) 165 -30.00% 30.00% Period 3 550 605 (55.00) 55 -10.00% 10.00% Total 1700 1820 (120.00) 510 -7.06% 30.00% Total 1570 1855 (285.00) 285 -18.15% 18.15% • In this example, a period of over-forecasting is • In this example, the SKU was consistently followed by a period of under forecasting over-forecasted every period • In total, the SKU was off by 120 units over • In total, the SKU was off by 285 units over three periods for a Forecast Error of 7.06% three periods for a Forecast Error of 18.15% • Although Error on a period by period basis was worse on the left, you can see the Net Error was better over time
  • 21. Cycle Stock Average Inventory Inventory Inventory Order Qty Cycle Stock Average Inventory Safety Stock Safety Stock Time Time A biased forecast can: – Create surplus inventory through over forecasting by increasing the average days of inventory on hand – Under forecasting forces an unnecessary out-of-stock position • Decreases customer service levels • Increases costs due to inventory expediting and production overtime
  • 22. Forecast Value Add (FVA) is used to identify the overall effect that an activity has on forecast accuracy /error. Along with Coefficient of Variation (CV), the FVA will allow you to: – Identify ability to affect change on “forecast-able” products – Classify those products that require significant effort with little return – Evaluate relative planner effectiveness and workload among other team members – In FVA analysis, you would compare the analyst’s override to the statistically generated forecast to determine if the override makes the forecast better In this case, the naïve model was able to achieve MAPE of 25% • The statistical forecast added value by reducing MAPE five percentage points to 20% • However, the analyst override actually made the forecast worse, increasing MAPE to 30% • The override’s FVA was five percentage points less than the naïve model’s FVA, and was 10 percentage points less than the statistical forecast’s FVA Source: Michael Gilliland SAS Chicago APICS 2011
  • 23. Headline: Pre-building inventory defeats any initiative to reduce safety stock through improved forecast accuracy How to Effect the Trend Line: Understand how much the business “pre-builds” When & Where inventory decisions are occurring – Shifts decisions further into the future and adjust the lag analysis
  • 24. With pre-built inventory the importance of forecasts accuracy extends much further into the future Packaging Operations Cooking / Mixing Raw Material Inventory Commitment Packaging Jan Feb Mar Apr May June July Aug Sept Nov Jan Lag 0 Lag 1 Lag 2 Lag 3 Lag 4 Lag 5 Lag 6 Lag 7 Lag 8 Lag 9 Creation Forecast Feb Lag 0 Lag 1 Lag 2 Lag 3 Lag 4 Lag 5 Lag 6 Lag 7 Lag 8 Mar Lag 0 Lag 1 Lag 2 Lag 3 Lag 4 Lag 5 Lag 6 Lag 7
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  • 26. Communication is the Key to leverage Forecast Accuracy Improvements The reach is far. Safety Stock / Inventory Commitment Worry about Trend Lines not The Headlines It is about solving tomorrows problems, Today Use the Head Lines to point you to the Trend Line decisions Forecasting processes that are not far reaching in their focus are missing large opportunities Forecast Accuracy measurements are a tool to leverage performance not a club to discipline performance
  • 27. Increasing Forecast Accuracy CAN Reduce Inventory -Adjust SS Strategy -Align Demand Signal with Manufacturing -Focus on the “Right” LAGs for your organization -Acknowledge BIAS and Address it! -ABC Classification Consensus -Utilize FVA (Once Mature) and build confidence in your Demand Planners
  • 28. Join us on LinkedIn: Demand Planning Leadership Exchange Follow us on Twitter: @Plan4Demand Complete our survey & receive a $5 Starbucks Gift Card Upcoming Leadership Exchanges Save the Date! November 15th December 5th Supply Planning Leadership Exchange: S&OP Leadership Exchange: SAP PP/DS: S&OP KPIs & Metrics What You Need to Know Setting a course to achieve ROI