### Learning AI from basics Adjunct Stanford Prof - Ashwin Rao : My recommendation is this sequence: - Linear Algebra Basics: https://math.mit.edu/~gs/linearalgebra/ila6/indexila6.html - Probability and Statistics: https://www.amazon.com/Statistical-Inference-George-Casella/dp/0534243126 - Deep Learning (much better than Goodfellow book in my opinion): https://www.amazon.com/Understanding-Deep-Learning-Simon-Prince/dp/0262048647 ### [[Common AI ML terms]] [[AI Use Cases by Industry.pptx]] [[AI driven Personalization at Scale.pdf]] Applications: [[Generative AI]] ![[Pasted image 20230816165324.png|400]] ### AI use cases in daily lives 1. Spotify songs based on my mood or time of the day 2. ChatGPT creating personalized day plan given a prompt 3. Google ads based on targeting persona profile 4. ChatGPT to summarize meeting notes into actions 5. Google Maps navigation based on real-time traffic and historical data 6. Netflix recommendations on what to watch next 7. Dynamic pricing on Amazon 8. Email spam filters 9. Facebook/Instagram feed based on personalization ML algorithm ### Insightful reads - [State of AI Report 2022](https://www.stateof.ai/) - PDF [[State of AI Report 2022 - ONLINE.pdf]] - ##### Metrics for ML analyses - Azure AutoML: [Demo Recording](https://dell.zoom.us/rec/play/_C1fR6_JM0SC2AqDy8ZX2A_AogtXQvzIa1mRYu7gyjUw9NZMQlvz3QvP0c6KQyAtKAFd453iQ4QNp3_T.yXOaeYNNhKUHzc8N?continueMode=true&_x_zm_rtaid=lhOYnMc8RPW_9t96mfitig.1651622823187.8421dd046285d6157e3dcc8bbe466a63&_x_zm_rhtaid=62) Password: yM7kQ7?1 - 6 part article: [The Step-By-Step PM Guide to Building Machine Learning Based Products | by Yael Gavish | Medium](https://medium.com/@yaelg/product-manager-pm-step-by-step-tutorial-building-machine-learning-products-ffa7817aa8ab) - [[Tyler Bellamey]] explained on learning steps - [[Reinforcement learning - Ashwin Rao.pdf]]