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Sample Datasets

A collection of datasets from multiple sources to be used for demonstrations in data science courses.

Data Dictionary and/or Description

(last updated: 2020/10/08. Contribution by Gabriel Mantini, @gmantini)

A data dictionary (or data description) is provided for some of the datasets in this repo. Click on the dataset of interest in the list below to learn more about the available attributes.

Click to see data dictionary for:

fuel.csv

See this website: https://www.fueleconomy.gov/feg/ws/
Click to see data dictionary for:

BostonHousing.csv

This dataset contains information collected by the US Census Service concerning housing in the area of Boston Massachusetts. It was obtained from the StatLib archive (http://lib.stat.cmu.edu/datasets/boston). The dataset has 506 cases. Source: The data was originally published by Harrison, D. and Rubinfeld, D.L. `Hedonic prices and the demand for clean air`, J. Environ. Economics & Management, vol.5, 81-102, 1978. There are 14 attributes in each case of the dataset. They are:
Variables Description
CRIM Crime rate
ZN Percentage of residential land zoned for lots over 25,000 ft2
INDUS Percentage of land occupied by non-retail business
CHAS Does tract bound Charles River (= 1 if tract bounds river, = 0 otherwise)
NOX Nitric oxide concentration (parts per 10 million)
RM Average number of rooms per dwelling
AGE Percentage of owner-occupied units built prior to 1940
DIS Weighted distances to five Boston employment centers
RAD Index of accessibility to radial highways
TAX Full-value property tax rate per $10,000
PTRATIO Pupil-to-teacher ratio by town
LSTAT Percentage of lower status of the population
MEDV Median value of owner-occupied homes in $1000s
CAT.MEDV Is median value of owner-occupied homes in tract above $30,000 (CAT.MEDV = 1) or not (CAT.MEDV = 0)
Click to see data dictionary for:

Cereals

Source: DATA ANALYSIS FOR STUDENT LEARNING (DASL)
Variables Description
Name Name of cereal
mfr Manufacturer of cereal where A = American Home Food Products; G = General Mills; K = Kelloggs; N = Nabisco; P = Post; Q = Quaker Oats; R = Ralston Purina
type cold or hot
calories calories per serving
protein grams of protein
fat grams of fat
sodium milligrams of sodium
fiber grams of dietary fiber
carbo grams of complex carbohydrates
sugars grams of sugars
potass milligrams of potassium
vitamins vitamins and minerals - 0, 25, or 100, indicating the typical percentage of FDA recommended
shelf display shelf (1, 2, or 3, counting from the floor)
weight weight in ounces of one serving
cups number of cups in one serving
rating a rating of the cereals calculated by Consumer Reports
Click to see data dictionary for:

EastWestAirlinesCluster

East-West Airlines is trying to learn more about its customers. Key issues are their flying patterns, earning and use of frequent flyer rewards, and use of the airline credit card. The task is to identify customer segments via clustering. Source: Based upon real business data; company names have been changed.
Variables Description
ID# Unique ID
Balance Number of miles eligible for award travel
Qual_miles Number of miles counted as qualifying for Topflight status
cc1_miles Number of miles earned with freq. flyer credit card in the past 12 months:
cc2_miles Number of miles earned with Rewards credit card in the past 12 months:
cc3_miles Number of miles earned with Small Business credit card in the past 12 months:
note: miles bins 1 = under 5,000. 2 = 5,000 - 10,000. 3 = 10,001 - 25,000. 4 = 25,001 - 50,000. 5 = over 50,000
Bonus_miles Number of miles earned from non-flight bonus transactions in the past 12 months
Bonus_trans Number of non-flight bonus transactions in the past 12 months
Flight_miles_12mo Number of flight miles in the past 12 months
Flight_trans_12 Number of flight transactions in the past 12 months
Days_since_enroll Number of days since Enroll_date
Award? Dummy variable for Last_award (1=not null, 0=null)
Click to see data dictionary for:

ToyotaCorolla

Variables Description
Id Record_ID
Model Model Description
Price Offer Price in EUROs
Age_08_04 Age in months as in August 2004
Mfg_Month Manufacturing month (1-12)
Mfg_Year Manufacturing Year
KM Accumulated Kilometers on odometer
Fuel_Type Fuel Type (Petrol, Diesel, CNG)
HP Horse Power
Met_Color Metallic Color? (Yes=1, No=0)
Color Color (Blue, Red, Grey, Silver, Black, etc.)
Automatic Automatic ( (Yes=1, No=0)
CC Cylinder Volume in cubic centimeters
Doors Number of doors
Cylinders Number of cylinders
Gears Number of gear positions
Quarterly_Tax Quarterly road tax in EUROs
Weight Weight in Kilograms
Mfr_Guarantee Within Manufacturer's Guarantee period (Yes=1, No=0)
BOVAG_Guarantee BOVAG (Dutch dealer network) Guarantee (Yes=1, No=0)
Guarantee_Period Guarantee period in months
ABS Anti-Lock Brake System (Yes=1, No=0)
Airbag_1 Driver_Airbag (Yes=1, No=0)
Airbag_2 Passenger Airbag (Yes=1, No=0)
Airco Airconditioning (Yes=1, No=0)
Automatic_airco Automatic Airconditioning (Yes=1, No=0)
Boardcomputer Boardcomputer (Yes=1, No=0)
CD_Player CD Player (Yes=1, No=0)
Central_Lock Central Lock (Yes=1, No=0)
Powered_Windows Powered Windows (Yes=1, No=0)
Power_Steering Power Steering (Yes=1, No=0)
Radio Radio (Yes=1, No=0)
Mistlamps Mistlamps (Yes=1, No=0)
Sport_Model Sport Model (Yes=1, No=0)
Backseat_Divider Backseat Divider (Yes=1, No=0)
Metallic_Rim Metallic Rim (Yes=1, No=0)
Radio_cassette Radio Cassette (Yes=1, No=0)
Parking_Assistant Parking assistance system (Yes=1, No=0)
Tow_Bar Tow Bar (Yes=1, No=0)
Click to see data dictionary for:

Auto

Gas mileage, horsepower, and other information for 392 vehicles.
Variables Description
mpg miles per gallon
cylinders Number of cylinders between 4 and 8
displacement Engine displacement (cu. inches)
horsepower Engine horsepower
weight Vehicle weight (lbs.)
acceleration Time to accelerate from 0 to 60 mph (sec.)
year Model year (modulo 100)
origin Origin of car (1. American, 2. European, 3. Japanese)
name Vehicle name
Click to see data dictionary for:

allbacks

The allbacks data frame gives measurements on the volume and weight of 15 books, some of which are softback (pb) and some which are hardback (hb). Area of the hardback covers is also included.
Variables Description
volume book volumes in cubic centimeters
area hard board cover areas in square centimeters
weight book weights in grams
cover a factor with levels hb hardback, pb paperback
Click to see data dictionary for:

UniversalBank

Variables Description
ID Customer ID
Age Customer's age in completed years
Experience #years of professional experience
Income Annual income of the customer ($000)
ZIPCode Home Address ZIP code
Family Family size of the customer
CCAvg Avg. spending on credit cards per month ($000)
Education Education Level. 1: Undergrad; 2: Graduate; 3: Advanced/Professional
Mortgage Value of house mortgage if any. ($000)
Personal Loan Did this customer accept the personal loan offered in the last campaign?
Securities Account Does the customer have a securities account with the bank?
CD Account Does the customer have a certificate of deposit (CD) account with the bank?
Online Does the customer use internet banking facilities?
CreditCard Does the customer use a credit card issued by UniversalBank?
Click to see data dictionary for:

Utilities

Variables Description
Company Company name
Fixed_charge Fixed-charge coverage ratio (income/debt)
RoR Percent rate of return on capital
Cost Cost per KW capacity in place
Load_factor Annual load factor
Demand_growth Percent demand growth
Sales Sales (KWH use per year)
Nuclear Nuclear Percent nuclear
Fuel_Cost Fuel_Cost Total fuel costs (cents per KWH)
Click to see data dictionary for:

West Roxbury

Variables Description
TOTAL VALUE Total assessed value for property, in thousands of USD
TAX Tax bill amount based on total assessed value multiplied by the tax rate
LOT SQFT Total lot size of parcel in square feet
YR BUILT Year property was built
GROSS AREA Gross floor area
LIVING AREA Total living area for residential properties (ft2)
FLOORS Number of floors
ROOMS Total number of rooms
BEDROOMS Total number of bedrooms
FULL BATH Total number of full baths
HALF BATH Total number of half baths
KITCHEN Total number of kitchens
FIREPLACE Total number of fireplaces
REMODEL When house was remodeled (Recent/Old/None)
Click to see data dictionary for:

WorldCupMatches

World Cup Matches dataset shows all the results from the matches contested as part of the different editions of the tournament. You can also complement this dataset with the information in `worldcup.csv` that includes statistics for every player that participated in FIFA 2010 worldcup.
Variables Description
Year The year in which the match was played
Datetime The Date on which the match was played along with a 24 hour format time
Stage The stage at which the match was played
Stadium Stadium name where the match was held
City The city name, where the match was played
Home Team Name Home team country name
Home Team Goals Total goals scored by the home team by the end of the match
Away Team Goals Total goals scored by the away team by the end of the match
Away Team Name Away team country name
Win conditions Special win condition (if any)
Attendance Total crowd present at the satdium
Half-time Home Goals Goals scored by the home team until half time
Half-time Away Goals Goals scored by the away team until half time
Referee Name of the first refree
Assistant 1 Name of the first assistant referee (linesman)
Assistant 2 Name of the second assistant referee (linesman)
RoundID Unique ID of the Round
MatchID Unique ID of the match
Home Team Initials Home team country's three letter initials
Away Team Initials Away team country's three letter initials
Click to see data dictionary for:

NBAchampionsdata and NBArunnerupsdata

Game-by-game team totals for the championship team and runner-up team from every finals game between 1980 and 2018. The 1980 NBA Finals was the first Finals series since the NBA added the three point line.
Variables Description
Year Year of competition
Team Team name
Game Game of Best-of-7 series
Win Boolean of win or loss, with win represented as 1
Home Boolean of Home or Away, with Home represented as 1
MP Minutes Played
FG Field Goals (includes both 2-point field goals and 3-point field goals)
FGA Field Goal Attempts (includes both 2-point field goal attempts and 3-point field goal attempts)
FGP Field Goal Percentage; the formula is FG / FGA
TP Time of Possession in minutes
TPA 3-point Field Goal Attempts
TPP 3-point Field Goal Percentage
FT Free Throws
FTA Free Throw Attempts
FTP Free Throw Percentage
ORB Offensive Rebounds
DRB Defensive Rebounds
TRB Total Rebounds
AST Assists
STL Steals
BLK Blocks
TOV Turnovers
PF Personal Fouls
PTS Points
Click to see data dictionary for:

IMDB_movies

Information of 1000 of the most popular movies on IMDB in the last 10 years. The data fields included are: Title, Genre, Description, Director, Actors, Year, Runtime, Rating, Votes, Revenue, Metascore (score of the movie on the _metacritic_ website)
Variables Description
Rank IMDb Ranking
Title Title Name
Genre Category of Movie
Description Plot Description
Director Director Name
Actors Actor Names
Year Year Released
Runtime (Minutes) Duration in minutes
Rating IMDb Rating
Votes Number of votes received
Revenue (Millions) Total Movie Sales
Metascore Metascore Rating
Click to see data dictionary for:

netflixShows

Understanding the rating distributions of a variety of Netflix shows. Information for 1000 shows is provided including viewer ratings, Motion Picture Association of America film rating system that rates a film's suitability for certain audiences based on its content, release year, and others.
Variables Description
title Name of Show
rating TV Parental Guidelines Rating
ratingLevel Description of rating content
ratingDescription Numerical correlation to rating from 10 to 110
release year Year of show premiere
user rating score Average rating
user rating size Sample size of rating
Click to see data dictionary for:

harvardMIT

In 2012, the Massachusetts Institute of Technology (MIT) and Harvard University launched open online courses on edX, a non-profit learning platform co-founded by the two institutions. Data contains information on 290 Harvard and MIT online courses, 250 thousand certifications, 4.5 million participants, and 28 million participant hours on the edX platform since 2012.
Variables Description
Institution HarvardX or MITx
Course Number Course Number Identifier
Launch Date Date of Release
Course Title Name of Course
Instructors Instructor Names
Course Subject Name of Course
Year Year 1-4
Honor Code Certificates Description of Certificate
Participants (Course Content Accessed) Number of total participants that accessed course content
Audited (> 50% Course Content Accessed) Number of participants with > 50% Course Content Accessed
Certified Number of certified completions
% Audited Percentage audited of total participants
% Certified Percentage certified of total participants
% Certified of > 50% Course Content Accessed Percentage certified of the audited amount
% Played Video Percent of partcipants that played video
% Posted in Forum Percent of participants that posted in the forums
% Grade Higher Than Zero Percentage of partcipants that ended with a grade higher than zero
Total Course Hours (Thousands) Total course hours of participation
Median Hours for Certification Median hours to complete the course to the point of certification by
Median Age Average age of a participant
% Male Percentage of participants that are male
% Female Percentage of participants that are female
% Bachelor's Degree or Higher Percentage of participants with a bachelor degree or higher
Click to see data dictionary for:

starbucks

Starbucks is an American coffee chain founded in Seattle. It serves both beverages and food. This dataset includes the nutritional information for Starbucks' food and drink menu items. All nutritional information for drinks are for a 12oz serving size.
Variables Description
Beverage_category Type of beverage
Beverage Beverage name
Beverage_prep Preparation of beverage, i.e. Soymilk, 2% milk, Venti, Short Nonfat Milk, Solo, Doppio
Calories Number of calories per serving
Total Fat (g) Total grams of fat per serving
Trans Fat (g) Total grams of trans fat per serving
Saturated Fat (g) Total grams of saturated fat per serving
Sodium (mg) Total milligrams of sodium per serving
Total Carbohydrates (g) Total grams of carbs per serving
Cholesterol (mg) Total milligrams of cholestrol per serving
Dietary Fibre (g) Total grams of fiber per serving
Sugars (g) Total grams of sugar per serving
Protein (g) Total grams of protein per serving
Vitamin A (% DV) Percentage Vitamin A of standard daily value per serving
Vitamin C (% DV) Percentage Vitamin C of standard daily value per serving
Calcium (% DV) Percentage Calcium of standard daily value per serving
Iron (% DV) Percentage Iron of standard daily value per serving
Caffeine (mg) Total milligrams of Caffeine per serving
Click to see data dictionary for:

macmenu

This dataset provides a nutrition analysis of every menu item on the US McDonald's menu, including breakfast, beef burgers, chicken and fish sandwiches, fries, salads, soda, coffee and tea, milkshakes, and desserts.
Variables Description
Category Categorization of item: Breakfast, Beef & Pork, Chicken & Fish, Beverages, Desserts, Salads, Snacks & Sides, Coffee & Tea, Smoothies & Shakes
Item Item name from menu
Serving Size Size of one serving
Calories Number of calories per serving
Calories from Fat Number of calories per serving coming from fat
Total Fat Total grams of fat per serving
Total Fat (% Daily Value) Percentage fat of standard daily value per serving
Saturated Fat Total grams of saturated fat per serving
Saturated Fat (% Daily Value) Percentage saturated fat of standard daily value per serving
Trans Fat Total grams of trans fat per serving
Cholesterol Total milligrams of cholestrol per serving
Cholesterol (% Daily Value) Percenetage cholestrol of standard daily value per serving
Sodium (mg) Total milligrams of sodium per serving
Sodium (% Daily Value) Percentage sodium of standard daily value per serving
Carbohydrates Total grams of carbs per serving
Carbohydrates (% Daily Value) Percentage carbs of standard daily value per serving
Dietary Fibre (g) Total grams of fiber per serving
Dietary Fiber (% Daily Value) Percentage fiber of standard daily value per serving
Sugars (g) Total grams of sugar per serving
Protein (g) Total grams of protein per serving
Vitamin A (% DV) Percentage Vitamin A of standard daily value per serving
Vitamin C (% DV) Percentage Vitamin C of standard daily value per serving
Calcium (% DV) Percentage Calcium of standard daily value per serving
Iron (% DV) Percentage Iron of standard daily value per serving
Click to see data dictionary for:

BreadBasket

The dataset contains more than 6000 transactions from a bakery. Data set containing 15010 observations and more than 6000 transactions from a bakery. The data set contains the following columns: date, time, transaction ID, and item bought.
Variables Description
Date Date of transaction
Time Time of transaction
Transaction Transaction ID number, in which one transaction is a unique number
Item Item purchased
Click to see data dictionary for:

disney_movies_total_gross

- Additional dataset to consider: `disney-characters.csv` with Disney characters by hero or villain type.

Information for 579 movies is provided including release date, genre, and total gross.

Variables Description
movie_title Name of Movie
release_date Date of release in Month DD, YYYY
genre Type of Movie
MPAA_rating MPAA_rating: G, PG, PG-13, R, NC-17
total_gross Total gross profit of the movie
inflation_adjusted_gross Total gross profit of the movie adjusted for inflation
Click to see data dictionary for:

ICUAdmissions

Data from a sample of 200 patients following admission to an adult intensive care unit (ICU)
Variables Description
ID
Status Patient status: 0=lived or 1=died
Age Age in years
Sex 0=male or 1=female
Race 1=white, 2=black, or 3=other
Service 0=medical or 1=surgical
Cancer Is cancer involved? 0=no or 1=yes
Renal Is chronic renal failure involved? 0=no or 1=yes
Infection Is infection involved? 0=no or 1=yes
CPR Patient gets CPR prior to admission? 0=no or 1=yes
Systolic Systolic blood pressure (in mm of Hg)
HeartRate Pulse rate (beats per minute)
Previous Previous admission to ICU within 6 months? 0=no or 1=yes
Type Admission type: 0=elective or 1=emergency
Fracture Fractured bone involved? 0=no or 1=yes
PO2 (Partial oxygen level from blood gases under 60? 0=no or 1=yes
PH pH from blood gas under 7.25? 0=no or 1=yes
PCO2 Partial carbon dioxide level from blood gas over 45? 0=no or 1=yes
Bicarbonate Bicarbonate from blood gas under 18? 0=no or 1=yes
Creatinine Creatinine from blood gas over 2.0? 0=no or 1=yes
Consciousness Level: 0=conscious, 1=deep stupor, or 2=coma
Click to see data dictionary for:

cost-of-living-2018.csv

Variables Description
City Name of City
Cost of Living Index Cost of Living Index is a relative indicator of consumer goods prices, including groceries, restaurants, transportation and utilities. Does not include accommodation expenses such as rent or mortgage. If a city has a Cost of Living Index of 120, it means Numbeo estimates it is 20% more expensive than New York (excluding rent).
Rent Index Estimation of prices of renting apartments in the city compared to New York City. If Rent index is 80, Numbeo estimates that price of rents in that city is on an average 20% less than the price in New York.
Cost of Living Plus Rent Index Estimation of consumer goods prices including rent comparing to New York City
Groceries Index Estimation of grocery prices in the city compared to New York City
Restaurant Price Index Comparison of prices of meals and drinks in restaurants and bars compared to NYC
Local Purchasing Power Index Shows relative purchasing power in buying goods and services in a given city for the average wage in that city. If domestic purchasing power is 40, this means that the inhabitants of that city with the average salary can afford to buy on an average 60% less goods and services than New York City residents with an average salary.
Click to see data dictionary for:

all_billboard_summer_hits

Songs that were part of the Billboard Summer Hits list from 1958 to 2017. Dataset includes music features as provided by the Spotify API, including the "acousticness" and "danceability" of the song, and measurements of valence, tempo, among other audio features. A description of the features can be found at
Variables Description
danceability Danceability describes how suitable a track is for dancing based on a combination of musical elements including tempo, rhythm stability, beat strength, and overall regularity. A value of 0.0 is least danceable and 1.0 is most danceable.
energy Energy is a measure from 0.0 to 1.0 and represents a perceptual measure of intensity and activity. Typically, energetic tracks feel fast, loud, and noisy. For example, death metal has high energy, while a Bach prelude scores low on the scale. Perceptual features contributing to this attribute include dynamic range, perceived loudness, timbre, onset rate, and general entropy.
key The estimated overall key of the track. Integers map to pitches using standard Pitch Class notation . E.g. 0 = C, 1 = C♯/D♭, 2 = D, and so on. If no key was detected, the value is -1.
loudness The overall loudness of a track in decibels (dB). Loudness values are averaged across the entire track and are useful for comparing relative loudness of tracks. Loudness is the quality of a sound that is the primary psychological correlate of physical strength (amplitude). Values typical range between -60 and 0 db.
mode Mode indicates the modality (major or minor) of a track, the type of scale from which its melodic content is derived. Major is represented by 1 and minor is 0.
speechiness Speechiness detects the presence of spoken words in a track. The more exclusively speech-like the recording (e.g. talk show, audio book, poetry), the closer to 1.0 the attribute value. Values above 0.66 describe tracks that are probably made entirely of spoken words. Values between 0.33 and 0.66 describe tracks that may contain both music and speech, either in sections or layered, including such cases as rap music. Values below 0.33 most likely represent music and other non-speech-like tracks.
acousticness A confidence measure from 0.0 to 1.0 of whether the track is acoustic. 1.0 represents high confidence the track is acoustic.
instrumentalness Predicts whether a track contains no vocals. “Ooh” and “aah” sounds are treated as instrumental in this context. Rap or spoken word tracks are clearly “vocal”. The closer the instrumentalness value is to 1.0, the greater likelihood the track contains no vocal content. Values above 0.5 are intended to represent instrumental tracks, but confidence is higher as the value approaches 1.0.
liveness Detects the presence of an audience in the recording. Higher liveness values represent an increased probability that the track was performed live. A value above 0.8 provides strong likelihood that the track is live.
valence A measure from 0.0 to 1.0 describing the musical positiveness conveyed by a track. Tracks with high valence sound more positive (e.g. happy, cheerful, euphoric), while tracks with low valence sound more negative (e.g. sad, depressed, angry).
tempo The overall estimated tempo of a track in beats per minute (BPM). In musical terminology, tempo is the speed or pace of a given piece and derives directly from the average beat duration.
track_uri spotify track uri
duration_ms The duration of the track in milliseconds.
time_signature An estimated overall time signature of a track. The time signature (meter) is a notational convention to specify how many beats are in each bar (or measure).
key_mode mode of key
playlist_name name of playlist
playlist_img image of playlsit url
track_name name of track
artist_name name of artist
album_name name of album
album_img image of album url
year year of release
Click to see data dictionary for:

statewords

This is the data behind the FiveThirtyEight story [_"What America's Governors Are Talking About"_](https://fivethirtyeight.com/features/what-americas-governors-are-talking-about/). Full description of all variables is included in . It contains every one-word phrase that was mentioned in at least 10 speeches and every two- or three-word phrase that was mentioned in at least five speeches after a list of stop-words was removed and the word "healthcare" was replaced with "health care" so that they were not counted as distinct phrases.
Variables Description
phrase one, two, or three-word phrase
category thematic categories for n-grams hand-coded by FiveThirtyEight staff: economy/fiscal issues, education, health care, energy/environment, crime/justice, mental health/substance abuse
d_speeches number of Democratic speeches containing the n-gram
r_speeches number of Republican speeches containing the n-gram
total total number of speeches containing the n-gram
percent_of_d_speeches percent of the 23 Democratic speeches containing the phrase
percent_of_r_speeches percent of the 27 Republican speeches containing the phrase
chi2 chi^2 statistic
pval p-value for chi^2 test
Click to see data dictionary for:

spacex

SpaceX launch data including date, booster version, payload mass, customer, and mission outcome. If you use this dataset, please update it to include the latest information on launches .
Variables Description
Flight Number Flight number
Date Date of launch
Time (UTC) Time of launch in Coordinated Universal Time
Booster Version Booster version used
Launch Site Launch site of flight
Payload Name of spaceship
Payload Mass (kg) Weight of payload in kg
Orbit Orbit classification
Customer Customer of flight
Mission Outcome Description of mission outcome
Landing Outcome Description of landing outcome
Click to see data dictionary for:

Airfares

Variables Description
S_CODE Starting airport's code
S_CITY Starting city
E_CODE Ending airport's code
E_CITY Ending city
COUPON Average number of coupons (a one-coupon flight is a nonstop flight, a two-coupon flight is a one-stop flight, etc.) for that route
NEW Number of new carriers entering that route between Q3-96 and Q2-97
VACATION Whether (Yes) or not (No) a vacation route
SW Whether (Yes) or not (No) Southwest Airlines serves that route
HI Herfindahl index: measure of market concentration
S_INCOME Starting city's average personal income
E_INCOME Ending city's average personal income
S_POP Starting city's population
E_POP Ending city's population
SLOT Whether or not either endpoint airport is slot-controlled (this is a measure of airport congestion)
GATE Whether or not either endpoint airport has gate constraints (this is another measure of airport congestion)
DISTANCE Distance between two endpoint airports in miles
PAX Number of passengers on that route during period of data collection
FARE Average fare on that route
Click to see data dictionary for:

eBayAuctions

Variables Description
Category Category of the auctioned item.
currency Currency
sellerRating a rating by eBay, as a function of the number of "good" and "bad" transactions the seller had on eBay
Duration Number of days the auction lasted (set by seller at auction start)
endDay Day of week that the auction closed
ClosePrice Price item sold at (converted into USD)
OpenPrice Initial price set by the seller (converted into USD)
Competitive? Whether the auction had a single bid (0) or more (1)
Click to see data dictionary for:

presidentialElections

Democratic share of the presidential vote, 1932-2016, in each state and the District of Columbia.
Variables Description
state Name of state
demVote percent of the vote for president won by the Democratic candidate
year integer year in YYYY format
south TRUE if state is one of the 11 states of the former Confederacy
Click to see data dictionary for:

ufc

Upper Flat Creek forest cruise tree data. These are a subset of the tree measurement data from the Upper Flat Creek unit of the University of Idaho Experimental Forest, which was measured in 1991. The inventory was based on variable radius plots with 6.43 sq. m. per ha. BAF (Basal Area Factor).The forest stand was 121.5 ha. This version of the data omits errors, trees with missing heights, and uncommon species. The four species are Douglas-fir, grand fir, western red cedar, and western larch.
Variables Description
plot plot label
tree tree label
species species kbd with levels DF, GF , WC, WL
dbh.cm tree diameter at 1.37m from the ground, measured in centimetres
height.m tree height measured in meters
Click to see data dictionary for:

trees

These are a subset of the von Guttenberg data, a set of measurements on Norway spruce (Picea abies [L.] Karst) in several different locations and site categories.
Variables Description
ID A factor identifying the tree by location, site, and tree number.
Age The age at which the tree was measured.
Vol The bole volume of the tree, in cubic dm.
Click to see data dictionary for:

water

Can Southern California's water supply in future years be predicted from past data? One factor affecting water availability is stream runoff. If runoff could be predicted, engineers, planners and policy makers could do their jobs more efficiently. Multiple linear regression models have been used in this regard This dataset contains 43 years worth of precipitation measurements taken at six sites in the Owens Valley ( labeled APMAM, APSAB, APSLAKE, OPBPC, OPRC, and OPSLAKE), and stream runoff volume at a site near Bishop, California.
Variables Description
Year collection year
APMAM Snowfall in inches measurement site
APSLAKE Snowfall in inches measurement site
APSAB Snowfall in inches measurement site
OPBPC Snowfall in inches measurement site
OPRC Snowfall in inches measurement site
OPSLAKE Snowfall in inches measurement site
BSAAM Stream runoff near Bishop, CA, in acre-feet
Click to see data dictionary for:

WorldCities

A data frame with 23,018 observations on the following 10 variables.
Variables Description
code The ISO (?) city code
name Name of the city
latitude location in degrees
longitude location in degrees
country Two letter country code
countryRegion A numerical region
population Population
regionCode ISO (?) Code
region Name of the region
date Date estimate made
Click to see data dictionary for:

worldcup

Data on players from the 2010 World Cup
Variables Description
Position a factor with levels Defender Forward Goalkeeper Midfielder
Time Time played in minutes
Shots Number of shots attempted
Passes Number of passes made
Tackles Number of tackles made
Saves Number of saves made
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vehicles

Variables Description
id Unique EPA identifier
make Manufacturer
model Model name
year Model year
class EPA vehicles size class, http://www.fueleconomy.gov/feg/ws/wsData.shtml#VClass
trans Transmission
drive Drive Train
cyl Number of cylinders
displ Engine displacement, in litres
fuel Fuel type
hwy Highway fuel economy, in mpg
cty City fuel economy, in mpg
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Credit

A simulated data set containing information on ten thousand customers. The aim here is to predict which customers will default on their credit card debt.
Variables Description
ID Identification
Income Income in $10,000's
Limit Credit limit
Rating Credit rating
Cards Number of credit cards
Age Age in years
Education Number of years in education
Gender A factor with levels Male and Female
Student A factor with levels No and Yes indicating whether the individual was a student
Married A factor with levels No and Yes indicating whether the individual was married
Ethnicity A factor with levels African American, Asian, and Caucasian indicating the individual's ethnicity
Balance Average credit card balance in $
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AllCountries

Data on the countries of the world. Most data from 2008 to avoid many missing values in more recent years. Data collected from worldbank.org.
Variables Description
Country Name of the country
Code Three letter country code
LandArea Size in sq. kilometers
Population Population in millions
Energy Energy usage (kilotons of oil)
Rural Percentage of population living in rural areas
Military Percentage of government expenditures directed toward the military
Health Percentage of government expenditures directed towards healthcare
HIV Percentage of the population with HIV
Internet Percentage of the population with access to the internet
Developed Categories for kilowatt hours per capita, 1= under 2500, 2 = 2500 to 5000, 3 = over 5000
BirthRate Births per 1000 people
ElderlyPop Percentage of the population at least 65 years old
LifeExpectancy Average life expectancy (years)
CO2 CO2 emissions (metric tons per capita)
GDP Gross Domestic Prodcut (per capita)
Cell Cell phone subscriptions (per 100 people)
Electricity Electric power consumption (kWh per capita)
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CommuteAtlanta

Commute times and distance for a sample of 500 people in Atlanta. Data were extracted respondents in the Atlanta metropolitan area. They include only cases where the respondent worked somewhere other than home. Sample chosen using DataFerret at http://www.thedataweb.org/index.html
Variables Description
City Atlanta
Age Age of the respondent (in years)
Distance Commute distance (in miles)
Time Commute time (in minutes)
Sex F or M
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CommuteStLouis

Commute times and distance for a sample of 500 people in St. Louis. Data were extracted respondents in the St. Louis metropolitan area. They include only cases where the respondent worked somewhere other than home. Sample chosen using DataFerret at http://www.thedataweb.org/index.html
Variables Description
City St. Louis
Age Age of the respondent (in years)
Distance Commute distance (in miles)
Time Commute time (in minutes)
Sex F or M
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FloridaLakes

Water quality for a sample of lakes in Florida
Variables Description
ID An identifying number for each lake
Lake Name of the lake
Alkalinity Concentration of calcium carbonate (in mg/L)
pH Acidity
Calcium Amount of calcium in water
Chlorophyll Amount of chlorophyll in water
AvgMercury Average mercury level for a sample of fish (large mouth bass) from each lake
NumSamples Number of fish sampled at each lake
MinMercury Minimum mercury level in a sampled fish
MaxMercury Maximum mercury level in a sampled fish
ThreeYrStdMercury Adjusted mercury level to account for the age of the fish
AgeData Mean age of fish in each sample
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HollywoodMovies

Information for 136 movies released from Hollywood in 2011.
Variables Description
Movie Title of movie
LeadStudio Studio that released the movie
RottenTomatoes Rotten Tomatoes rating (reviewers)
AudienceScore Audience rating (via Rotten Tomatoes)
Story General theme - one of 21 themes
Genre Type of Movie: Action, Adventure, Animation, Comedy, Drama, Fantasy, Horror, Romance, or Thriller
TheatersOpenWeek Number of screens for opening weekend
BOAverageOpenWeek Average box office income per theater - opening weekend
DomesticGross Gross income for domestic viewers (in millions)
ForeignGross Gross income for foreign viewers (in millions)
WorldGross Gross income for all viewers (in millions)
Budget Production budget (in millions)
Profitability WorldGross/Budget
OpeningWeekend Opening weekend gross (in millions)
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MiamiHeat

Game log data for all the Miami Heat basketball team in 2010-11. Information from online boxscores for all 82 regular season games played by the Miami Heat during the 2010-11 regular season.
Variables Description
Game ID number for each game
Date Data the game was played
Location Away or Home
Opp Opponent team
Win Game result: L or W
FG Field goals made
FGA Field goals attempted
FG3 Three-point field goals made
FG3A Three-point field goals attempted
FT Free throws made
FTA Free throws attempted
Rebounds Total rebounds
OffReb Offensive rebounds
Assists Number of assists
Steals Number of steals
Blocks Number of shots blocked
Turnovers Number of turnovers
Fouls Number of fouls
Points Number of points scored
OppFG Opponent's field goals made
OppFGA Opponent's Field goals attempted
OppFG3 Opponent's Three-point field goals made
OppFG3A Opponent's Three-point field goals attempted
OppFT Opponent's Free throws made
OppFTA Opponent's Free throws attempted
OppOffReb Opponent's Offensive rebounds
OppRebounds Opponent's Total rebounds
OppAssists Opponent's assists
OppSteals Opponent's steals
OppBlocks Opponent's shot blocked
OppTurnovers Opponent's turnovers
OppFouls Opponent's fouls
OppPoints Opponent's points scored
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NutritionStudy

Variables related to nutrition and health for 315 individuals.
Variables Description
ID ID number for each subject in this sample
Age Subject's age (in years)
Smoke a factor with levels No Yes
Quetelet Weight/(Height^2)
Vitamin Vitamin use: 1 = Regulary, 2 = Occasionally, or 3 = No
Calories Number of calories consumer per day
Fat Grams of fat consumed per day
Fiber Grams of fiber consumed per day
Alcohol Number of alcoholic drinks consumed per week
Cholesterol Cholesterol consumed (mg per day)
BetaDiet Dietary beta-carotene consumed (mcg per day)
RetinolDiet Dietary retinol consumed (mcg per day)
BetaPlasma Plasma beta-carotene (ng/ml)
RetinolPlasma Plasma retinol (ng/ml)
Gender Coded as Female or Male
VitaminUse Coded as No Occasional Regular
PriorSmoke Smoking status: 1 = Never, 2 = Former, or 3 = Current
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RestaurantTips

Tip data from the First Crush Bistro in Potsdam, NY. Restaurant bills were collected over a two week period that was believed to provide a good sample of customers. Data recorded from 157 bills with 7 variables.
Variables Description
Bill Size of the bill (in dollars)
Tip Size of the tip (in dollars)
Credit Paid with a credit card? n or y
Guests Number of people in the group
Day Day of the week: m=Monday, t = Tuesday, w = Wednesday, th = Thursday, or f = Friday
Server Code for waiter/waitress: A, B, or C
PctTip Tip as a percentage of the bill
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SleepStudy

Data from a study of sleep patterns for college students. Obtained from sample of students who did skills tests to measure cognitive function, completed a survery that asked many questions about attitudes and habits, and kept a sleep diary to record time and quality of sleep over a two week period.
Variables Description
Gender 1 = male, 0 = female
ClassYear Year in school, 1 = first year, ..., 4 = senior
LarkOwl Early riser of night owl? Lark, Neither, or Owl
NumEarlyClass Number of classes per week before 9am
EarlyClass Indicator for any early classes
GPA Grade point average (0-4 scale)
ClassesMissed Number of classes missed in a semester
CognitionZscore Z-score on a test of cognitive skills
PoorSleepQuality Measure of sleep quality (higher values are poorer sleep)
DepressionScore Measure of degree of depression
AnxietyScore Measure of amount of anxiety
StressScore Measure amount of stress
DepressionStatus Coded depression score: normal, moderate, or severe
AnxietyStatus Coded anxiety score: normal, moderate, or severe
Stress Coded stress score: normal or high
DASScore Combined score for depression, anxiety and stress
Happiness Measure of degree of happiness
AlcoholUse Self-reported: Abstain, Light, Moderate, or Heavy
Drinks Number of alcoholic drinks per week
WeekdayBed Average wqeekday bedtime (24.0 = midnight)
WeekdayRise Average weekday rise time (8.0 = 8am)
WeekdaySleep Average hours of sleep on weekdays
WeekendBed Average weekend bedtime (24.0 = midnight)
WeekendRise Average weekend rise time (8.0 = 8am)
WeekendSleep Average weekend bedtime (24.0 = midnight)
AverageSleep Average hours of sleep for all days
AllNighter Had an all-nighter this semester? 1 = yes, 0 = no
See more details at https://cran.r-project.org/web/packages/Lock5Data/index.html
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HomesForSale

Data on homes for sale in four states, selected from zillow.com in 2010.
Variables Description
State Location of the home: CA NJ NY PA
Price Asking price (in $1,000's)
Size Area of all rooms (in 1,000's sq. ft.)
Beds Number of bedrooms
Baths Number of bathrooms

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