MATLAB: An Introduction with Applications
6th Edition
ISBN: 9781119256830
Author: Amos Gilat
Publisher: John Wiley & Sons Inc
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An important application of
Production Volume (units) | Total Cost ($) |
400 | 4,300 |
450 | 5,300 |
550 | 5,700 |
600 | 6,200 |
700 | 6,700 |
750 | 7,300 |
a. Compute b1 and b0 (to 1 decimal).
b. The company's production schedule shows 500 units must be produced next month. What is the estimated total cost for this operation (to the nearest whole number)?
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