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Laboratory projects in physics: a manual of practical experiments for beginners

Large book cover: Laboratory projects in physics: a manual of practical experiments for beginners

Laboratory projects in physics: a manual of practical experiments for beginners
by

Publisher: The Macmillan Company
ISBN/ASIN: B005KJS8BO
Number of pages: 300

Description:
It is intended that these experiments should form part of a physics course which includes class discussions and demonstrations. They were devised and used for several years in a beginners' course in practical physics. The materials and procedure have been worked out in detail in order to aid the busy science teacher in the laborious task of placing practical laboratory study upon a workable basis.

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