Notice: This page requires JavaScript to function properly.
Please enable JavaScript in your browser settings or update your browser.
Learn Challenge: Chunked Data Aggregation | Working with Large Datasets
Large Data Handling
Section 1. Chapter 4
single

single

Challenge: Chunked Data Aggregation

Swipe to show menu

When working with large datasets, you often need to perform aggregations without loading the entire file into memory. One common task is to sum the values of a specific column in a very large CSV file. Since the file may not fit in memory, you can process it in manageable chunks using pandas read_csv() function with the chunksize parameter.

For each chunk, you calculate the sum of the desired column, then aggregate these partial sums to get the total. This approach is efficient and scalable, allowing you to handle files of virtually any size as long as each chunk fits into memory.

Task

Swipe to start coding

Write a function that returns the total sum of a specified column in a large CSV file by reading the file in chunks.

  • For each chunk, calculate the sum of the specified column.
  • Aggregate the sums from all chunks to compute the total sum.
  • Return the total sum as a single value.

Solution

Switch to desktopSwitch to desktop for real-world practiceContinue from where you are using one of the options below
Everything was clear?

How can we improve it?

Thanks for your feedback!

Section 1. Chapter 4
single

single

Ask AI

expand

Ask AI

ChatGPT

Ask anything or try one of the suggested questions to begin our chat

some-alt