1、THE MODERNML PLAYBOOKBest practices for simplifying the path to production MLTABLE OF CONTENTSIntroduction .3Primary Use Cases for Machine Learning .4Traditional Challenges of Machine Learning .6Why Migrating to Snowflake ML Accelerates Production .7Common Architectural Patterns for ML in Snowflake
2、.13How to Get Started With Snowflake ML .18Summary and Next Steps .22Table of Contents|2 THE MODERN ML PLAYBOOKINTRODUCTIONWhile flashy new LLM and generative AI applications may grab headlines,machine learning(ML)remains one of the most dominant and critical technologies for enterprises globally.Ma
3、chine learning has proven so effective at analyzing data that ML models are now used to generate predictions in nearly every sector of society.However,despite the best efforts of many ML teams,many models still never make it to production,due to fragmented tool sets,inefficient data pipelines and th
4、e complexities of managing the underlying infrastructure.This guide will unpack the challenges of getting ML right and the advantages of adopting a single unified platform for data and ML models.Introduction|3 THE MODERN ML PLAYBOOKPRIMARY USE CASES FOR MACHINE LEARNINGToday,ML models are the corner
5、stone of an incredibly broad range of use cases.Here are some of the most common applications:Fraud detection.Because machine learning excels at identifying anomalous patterns in transaction data,banks use ML systems to block fraudulent credit card charges within milliseconds.Models analyze hundreds
6、 of features(transaction amount,location,time,device fingerprint,historical behavior patterns and so on)to flag suspicious activity in real time.Customer segmentation.ML models are able to categorize groups of customers based on their behavior,demographics and purchase history.This enables targeted