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构建机器学习预测管道.pptx

上传人: 一*** 编号:653537 2025-05-01 27页 6.96MB

1、,Building a Customer Churn Prediction Pipeline with MLflow,Priyanka Asnani,Senior Machine Learning Engineer Fidelity Investments,Data Summit 2025Boston,MA,3457891013141617182122,Agenda,Problem StatementDataset OverviewExploratory Data AnalysisHigh-Level System DesignWhy MLflow Projects?Chaining Comp

2、onents in MLflowMLflow Project AnatomyData Preparation Component:Cleaning&Artifact LoggingTraining Pipeline Component:Preprocessing+XGBoostSaving Trained Model with MLflow and W&B ArtifactsXGBoost Hyperparameter Optimization via Hydra SweepsExperiment Tracking with Weights&BiasesSaving the Best Mode

3、l with Weights&Biases Model RegistryServing Models with Mlflow,Problem Statement,Predict whether a customer will churn(leave the company)based on their demographics,service subscriptions,and account information.,Customer churn is expensive:Acquiring new customers costs 5x more than retaining existin

4、g onesEarly identification allows proactive customer retention strategies:Offering targeted promotionsImproving service qualityPersonalized engagement,Why This Problem Matters,Objective,3,Dataset:Telco Customer ChurnProblem Type:Binary classification(Predict if customer churns)Records:7000 customers

5、Target Variable:churn(Yes/No),Key Features,Dataset Overview,Basic Preprocessing steps,Dropped irrelevant column:customerIDConverted Totalcharges to numeric:handled missing valuesRemoved rows:where tenure=0(invalid customers)Stratified splits:to maintain churn proportions across train/test sets,4,Exp

6、loratory Data Analysis,5,Exploratory Data Analysis,6,High-Level System Design,7,Reproducible:Capture code,environment,and parameters to ensure consistent results across runs and platformsReusable:Define once,run anytimeprojects can be easily shared and reused across teamsPortable:Run the same projec

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