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Scenario
A sales dataset needs to be analyzed to determine its size characteristics and calculate key metrics. You need to load the data, report its dimensions, classify its size, and calculate total revenue.
Task
Write a Python script at /home/interview/analyze_sales.py that loads the sales dataset from /home/interview/sales_data.csv, calculates dimensions (rows and columns), determines the total number of cells, classifies the dataset size based on cell count, and calculates the total sales revenue. Save the results to /home/interview/sales_report.json.
Size Classification
- Small: < 10,000 cells
- Medium: 10,000 - 99,999 cells
- Large: >= 100,000 cells
Example
Expected output format in /home/interview/sales_report.json:
{
"rows": 250,
"columns": 8,
"total_cells": 2000,
"size_classification": "small",
"total_revenue": 125430.50
}
Note: Calculate total revenue by multiplying quantity × price for each sale.
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Linux Terminal Environment
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Databricks
TCS
X
Accenture
Adobe
Google
LinkedIn
Samsung
Datadog
Wix
Dropbox
Meta
OpenAI
Hulu
Uber
DoorDash
Anthropic
Amazon
ActivisionBlizzard
Vercel
Crypto.Com
Zscaler
DeutscheBank
Apple
GoDaddy
BMW
PayPal
Snowflake
AMD
Twilio
Atlassian
JPMorgan
NVIDIA
IBM
Coinbase
Cisco
Robinhood
Twitter
Microsoft
Palantir
Netflix
VMware
Cloudflare
Stripe
Capital One
Splunk
Intel
SAP
Tesla
GitHub
JaneStreet
Bloomberg
Salesforce
Elastic
CGI
UBS
GitLab
Ubisoft
Slack
Nintendo
EY
Kayak
Lyft
Airbnb
Walmart
Revolut
Visa
Okta
HashiCorp
Instacart
Mastercard