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Volume 52, Number 1/2, 2008
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Brain-scale simulation of the neocortex on the IBM Blue Gene/L supercomputer - References
by M.
Djurfeldt
,
M.
Lundqvist
,
C.
Johansson
,
M.
Rehn
,
Ö.
Ekeberg
,
and A.
Lansner
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