Notice: This page requires JavaScript to function properly.
Please enable JavaScript in your browser settings or update your browser.
Impara Challenge: Clean Sales Data | Business Data Manipulation
Practice
Projects
Quizzes & Challenges
Quizzes
Challenges
/
Python for Business Analysts

bookChallenge: Clean Sales Data

Data cleaning is a foundational step in business data analysis. Without careful cleaning, your analyses may be skewed by missing values or inconsistent formatting, leading to inaccurate insights and decisions. For business analysts, ensuring that sales records are complete and standardized—such as by filling in missing sales numbers and making product names consistent—is essential for producing reliable reports and recommendations. Small inconsistencies, like varying capitalization or blank fields, can have a significant impact when aggregating or comparing data across products and periods. By mastering these cleaning techniques, you set the stage for more advanced analysis and trustworthy business intelligence.

Compito

Swipe to start coding

You are given a list of sales records, each as a dictionary with keys 'date', 'product', 'units_sold', and 'revenue'. Some records may have missing values (None) for 'units_sold' or 'revenue', and product names may use inconsistent capitalization. Your function must:

  • Replace any missing 'units_sold' or 'revenue' values with 0.
  • Standardize all 'product' names to title case (first letter uppercase, others lowercase).
  • Return a new list of cleaned records.

Soluzione

Tutto è chiaro?

Come possiamo migliorarlo?

Grazie per i tuoi commenti!

Sezione 1. Capitolo 3
single

single

Chieda ad AI

expand

Chieda ad AI

ChatGPT

Chieda pure quello che desidera o provi una delle domande suggerite per iniziare la nostra conversazione

close

bookChallenge: Clean Sales Data

Scorri per mostrare il menu

Data cleaning is a foundational step in business data analysis. Without careful cleaning, your analyses may be skewed by missing values or inconsistent formatting, leading to inaccurate insights and decisions. For business analysts, ensuring that sales records are complete and standardized—such as by filling in missing sales numbers and making product names consistent—is essential for producing reliable reports and recommendations. Small inconsistencies, like varying capitalization or blank fields, can have a significant impact when aggregating or comparing data across products and periods. By mastering these cleaning techniques, you set the stage for more advanced analysis and trustworthy business intelligence.

Compito

Swipe to start coding

You are given a list of sales records, each as a dictionary with keys 'date', 'product', 'units_sold', and 'revenue'. Some records may have missing values (None) for 'units_sold' or 'revenue', and product names may use inconsistent capitalization. Your function must:

  • Replace any missing 'units_sold' or 'revenue' values with 0.
  • Standardize all 'product' names to title case (first letter uppercase, others lowercase).
  • Return a new list of cleaned records.

Soluzione

Switch to desktopCambia al desktop per esercitarti nel mondo realeContinua da dove ti trovi utilizzando una delle opzioni seguenti
Tutto è chiaro?

Come possiamo migliorarlo?

Grazie per i tuoi commenti!

Sezione 1. Capitolo 3
single

single

some-alt