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Your amazing brain assembly
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Your amazing brain assembly
1.
What does this
make you think about?
2.
Your amazing brain!
What does your brain smell of?
3.
Introducing your amazing
brain! Find out…
4.
Some facts!
5.
How to HELP
your brain to learn.
6.
About your 3 brains
in 1 and how to get yourself ready to learn.
7.
How to believe
in yourself!
8.
Go and have
some fun exploring your amazing brain!