Data processing
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Data processing a text and project manual by Thomas J. Cashman

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Published by McGraw-Hill in New York, NY .
Written in English

Subjects:

  • Electronic data processing -- Study and teaching.

Book details:

Edition Notes

1

StatementThomas J. Cashman, William J. Keys.
ContributionsKeys, William J.
Classifications
LC ClassificationsQA"76.28"C38
The Physical Object
Pagination239 p.
Number of Pages239
ID Numbers
Open LibraryOL21011308M

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