This recipe replaces the standard unsupervised GMM of the v1 recipe with a UBM that uses a time-delay deep neural network (TDNN). Posteriors from the TDNN are used in conjunction with features extracted using a standard approach for speaker recognition, to create the sufficient statistics for i-vector extraction. The recipe also demonstrates a lightweight alternative in which a supervised GMM is derived from the TDNN posteriors. The recipe is based on http://www.danielpovey.com/files/2015_asru_tdnn_ubm.pdf. See run.sh for updated results. The following describes data required for system development (on top of the data for testing described in ../README.txt). We use SWBD and the older (prior to 2010) SREs to train the supervised-GMM and iVector extractor. To create an in-domain system, the SREs are needed to train the PLDA backend. The TDNN is trained on Fisher English. Corpus LDC Catalog No. SWBD2 Phase 2 LDC99S79 SWBD2 Phase 3 LDC2002S06 SWBD Cellular 1 LDC2001S13 SWBD Ceullar 2 LDC2004S07 SRE2004 LDC2006S44 SRE2005 Train LDC2011S01 SRE2005 Test LDC2011S04 SRE2006 Train LDC2011S09 SRE2006 Test 1 LDC2011S10 SRE2006 Test 2 LDC2012S01 SRE2008 Train LDC2011S05 SRE2008 Test LDC2011S08 Fisher speech LDC2004S13, LDC2005S13 Fisher test LDC2004T19, LDC2005T19