The forecast for week 6 is ___ service calls (round to two decimals and show your work)
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Bradley's Copiers sells and repairs photocopy machines. The manager needs weekly forecasts of service calls so that he can
Forecast the number of calls for week 6, which is next week.
Week | Actual service calls |
1 | 28 |
2 | 36 |
3 | 38 |
4 | 25 |
5 |
25
|
The forecast for week 6 is ___ service calls (round to two decimals and show your work)
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