Data Science Asked by Lem0n on November 9, 2020
I have an application that receives ~10k of requests per day; each request has multiple parameters and goes through a pipeline with multiple steps and they finish in about 1 hour.
Let’s say the requests are like bake_cake [flavor=chocolate] [topping1=strawberry] [topping2=cream]
Given a history of requests from previous days, is there a ML framework that can help me predict the “100 most like requests to arrive today” so I can cache their results? Or some other similar strategy that can help me delivering part of those requests faster?
Ideally it would be based on how much I gain by delivering faster, how much I lose by processing a request that might not come, etc.; but for now even simpler algorithms could be of much help since currently there’s no optimization.
You need to validate your assumptions based on data driven analysis
Post Analysis
ML Models
ML Model is not the start. It is the outcome of detailed data and domain driven analysis
Answered by Siva on November 9, 2020
Get help from others!
Recent Questions
Recent Answers
© 2024 TransWikia.com. All rights reserved. Sites we Love: PCI Database, UKBizDB, Menu Kuliner, Sharing RPP