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TOPICS FOR WRITING A MANUSCRIPT GOULNARA ARZHANTSEVA

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TOPICS FOR WRITING A MANUSCRIPT

GOULNARA ARZHANTSEVA

We present here suggestions for topics, each of them will be provided by a literature.

1. Enigma Machine versus Recurrent Neural Networks 2. The Discrete-Logarithm Problem with Preprocessing 3. Extractors versus Expander graphs

We can also discuss your own suggestion for a topic.

The deadline to choose (or not) this option for the exam is November 15th.

goulnara.arzhantseva@univie.ac.at

1

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