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SOFTWARE-SHAREWARE



SHAREWARE

Shareware is software, which is made available with the right to redistribute copies, but it is stipulated that if one intends to use the software, often after a certain period of time, then a licence fee should be paid.

Shareware is not the same thing as free and open source software (FOSS) for the two main reasons:

1.       The source are not  available
2.       Modification to the software is not allowed.

The objective of shareware is to make the software available to try as many users as possible. This is done in order to increase prospective user’s will to pay for the software. 

The software is distributed in binary form and often includes a built-in timed mechanism, which usually limits functionally after a trial period of usually one to three months.

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