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Day 27 (8/13/19): Improving Presentation Plots

Today I practiced my presentation more and also added better visual graphs to better understand my results. Now, the line graphs show the results after each batch of training so you can see the trend in accuracy and OOD detection over time.




Lastly, I added a bar chart at the end of the presentation to summarize my overall results in addition to the spider chart.

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Day 22 (8/6/19): Streaming Linear Discriminant Analysis

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