Welcome to New York City, one of the most-visited cities in the world. There are many Airbnb listings in New York City to meet the high demand for temporary lodging for travelers, which can be anywhere between a few nights to many months. In this project, we will take a closer look at the New York Airbnb market by combining data from multiple file types like .csv
, .tsv
, and .xlsx
.
Recall that CSV, TSV, and Excel files are three common formats for storing data. Three files containing data on 2019 Airbnb listings are available to you:
data/airbnb_price.csv This is a CSV file containing data on Airbnb listing prices and locations.
listing_id
: unique identifier of listingprice
: nightly listing price in USDnbhood_full
: name of borough and neighborhood where listing is located
data/airbnb_room_type.xlsx This is an Excel file containing data on Airbnb listing descriptions and room types.
listing_id
: unique identifier of listingdescription
: listing descriptionroom_type
: Airbnb has three types of rooms: shared rooms, private rooms, and entire homes/apartments
data/airbnb_last_review.tsv This is a TSV file containing data on Airbnb host names and review dates.
listing_id
: unique identifier of listinghost_name
: name of listing hostlast_review
: date when the listing was last reviewed
# Import necessary packages
import pandas as pd
import numpy as np
# Begin coding here ...
# Use as many cells as you like
reviews = pd.read_csv('data/airbnb_last_review.tsv', sep='\t')
reviews['last_review'] = pd.to_datetime(reviews['last_review'])
earliest = reviews['last_review'].sort_values().head(1)
print(earliest)
recent = reviews['last_review'].sort_values(ascending=False).head(1)
print(recent)
rooms = pd.read_excel('data/airbnb_room_type.xlsx')
rooms['room_type'] = rooms['room_type'].str.lower()
how_many_private = rooms['room_type'].value_counts().get('private room', 0)
how_many_private
prices = pd.read_csv('data/airbnb_price.csv')
prices['price'] = prices['price'].str.replace('dollars', '')
prices['price'] = prices['price'].astype("float")
mean_price = round(prices['price'].mean(), 2)
mean_price
first_reviewed = earliest.values[0]
last_reviewed = recent.values[0]
nb_private_rooms = how_many_private
avg_price = mean_price
review_dates = pd.DataFrame({
'first_reviewed': [first_reviewed],
'last_reviewed': [last_reviewed],
'nb_private_rooms': [nb_private_rooms],
'avg_price': [avg_price]
})
review_dates