This week I got the machine learning model to train with 99.4% accuracy in 5 epochs. With such a small amount of epochs and large accuracy, I want to see if I can get it even closer to 100% card detection accuracy with more epochs. Because training took a lot of time, I was not able to get to testing the model and measuring detection accuracy so I hope to get to that early this week. My progress is still on schedule according to our updated schedule because the ML is working locally but it needs to be tested and made more efficient before we integrate it with the camera. This week, I hope to get the testing of the ML completed and have the model finalized so that we can integrate it as soon as the camera is working properly as well. In order to properly test this, I will be sorting my data into test, train, and validation data and ensure that it runs properly on the testing data and meets the requirements that we set for the user and design requirements.