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  <title>NITRC News Group Forum: tapas-v3.0.0-released</title>
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  <description>Dear NITRC-users,

we are happy to announce a new release 3.0.0 of our TAPAS software suite on GitHub: https://translationalneuromodeling.github.io/tapas/

Besides updates to most of our toolboxes (HGF, MPDCM, PhysIO, SERIA), we have two new 'tapas' for DCM:

	• HUGE: Variational Bayesian inversion for hierarchical unsupervised generative embedding (https://doi.org/10.1016/j.neuroimage.2018.06.073).
	• rDCM: DCM-based, efficient inference on effective brain connectivity for fMRI (https://doi.org/10.1016/j.neuroimage.2018.05.058).

For more information, checkout the documentation on GitHub: https://github.com/translationalneuromodeling/tapas/blob/master/README.md

We are excited about your feedback (https://github.com/translationalneuromodeling/tapas/issues)!

Kind regards,
Lars Kasper (PhysIO Developer)
TNU
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