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See you tonight at the ODSC Dublin Meetup!

I hope to see you tonight at the April ODSC Dublin Meetup @ Jet.com in 40 Molesworth St. I am going to be the second speaker for the night. I am going to talk about importing pre-trained Keras and TensorFlow models into DL4J and the possibility of re-training them on Apache Spark.
The first speaker would be John Kane from Cogito.




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