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all right our example code tensorflow has excellent support for training rnns on text data but and and that would be very useful for a lot of you but that is complex enough that i would like to wait until next week because we really kind of have to dive into what all of the difference text processing code is doing and i i dont want to do that when were still kind of getting settled on convolutional networks so i think our our finishing discussion of convo nets and our new discussion of lstms will be enough for this week and we can talk about um text processing lstms next week so instead were going to train a network to tell the difference between a sink a sign and a line sync is just another type of function it looks like this right whereas sine looks like this and line is just a line so what im going to do is generate a data set of each of these things and then im going to train an rnn to figure out at the end which one it saw okay and notice im not going to feed it the entire