Introduction to Classification


Date:
2017-12-14
Size:
4.4 MB
Category:
Education
OS:
iOS
Developer:
Sebit, LLC
Price:
$1.99
Compatible:
iPad
Requirements:
Requires iOS 8.0 or l
Version:
1.0

Description - Introduction to Classification

Sebit, LLC , the publisher behind many iOS app (Building Serial Circuits ,Systems in the Human Body ,The Slope of a Line ,Solving Quadratic Equations Using Quadratic Formul ,Compare and Order Mixed Numbers ,Addition of Integers), brings Introduction to Classification with a number of new features along with the usual bug fixes. Introduction to Classification app has been update to version 1.0 with several major changes and improvements. App release that improves performance, provides several new options.

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If you are iPad owner,you now can download Introduction to Classification for $1.99 from Apple Store. The application is supporting English language. It weighs in at only 4.4 MB to download. The new Introduction to Classification app version 1.0 has been updated on 2017-12-14. The Apple Store includes a very useful feature that will check if your device and iOS version are both compatible with the app. Most iPhone and iPad are compatible. Here is the app`s compatibility information: Requires iOS 8.0 or later. Compatible with iPad.
More Info: Find more info about Introduction to Classification in Sebit, LLC`s Official Website : http://www.adaptivecurriculum.com/us/lessons-library/details.html?d=US640406CD


Why not experience and do science rather than just reading about it With highly interactive activities, you see it, do it, practice it, and apply it. Study organisms and learn to classify them right on ...
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