Notice: This page requires JavaScript to function properly.
Please enable JavaScript in your browser settings or update your browser.
Lære Challenge: Building a Feature Pipeline for Customer Data | Section
Feature Engineering with PySpark
Sektion 1. Kapitel 4
single

single

Challenge: Building a Feature Pipeline for Customer Data

Stryg for at vise menuen

Opgave

Swipe to start coding

You are given a flights dataset as a list of rows. Load it into a DataFrame using createDataFrame and apply the encoding and scaling techniques from the previous chapters. Store results in the specified variables:

  1. Fill nulls in Delay and Length with 0;
  2. Apply StringIndexer to Airline – store the result in a column AIRLINE_IDX;
  3. Apply OneHotEncoder to AIRLINE_IDX – store the result in a column AIRLINE_VEC;
  4. Assemble Length, Time, and AIRLINE_IDX into a vector column FEATURES_RAW;
  5. Apply StandardScaler with withMean=True and withStd=True to FEATURES_RAW – store the result in FEATURES_SCALED;
  6. Store the final DataFrame in features_df and count its rows in features_count.

Print features_count and show all rows of Airline, AIRLINE_VEC, FEATURES_SCALED.

Løsning

Switch to desktopSkift til skrivebord for at øve i den virkelige verdenFortsæt der, hvor du er, med en af nedenstående muligheder
Var alt klart?

Hvordan kan vi forbedre det?

Tak for dine kommentarer!

Sektion 1. Kapitel 4
single

single

Spørg AI

expand

Spørg AI

ChatGPT

Spørg om hvad som helst eller prøv et af de foreslåede spørgsmål for at starte vores chat

some-alt