question
string
answer
string
type
string
columns_used
sequence
column_types
sequence
sample_answer
string
dataset
string
Enumerate the bottom 3 URLs with the lowest rankings.
['https://www.obviously.ai/', 'https://www.obviously.ai/', 'https://venturebeat.com/2021/10/12/no-code-ai-startup-obviously-ai-raises-4-7m/']
list[category]
[ "Ranking", "URLs" ]
[ "number[uint8]", "url" ]
[https://www.obviously.ai/, https://hbr.org/2021/11/how-no-code-platforms-can-bring-ai-to-small-and-midsize-businesses, https://analyticsindiamag.com/top-12-no-code-machine-learning-platforms-in-2021/]
025_Data
What are the top 4 rankings associated with the keyword 'no code data science'?
[10, 9, 8, 7]
list[number]
[ "Keyword", "Ranking" ]
[ "category", "number[uint8]" ]
[10, 9, 6, 4]
025_Data
List the bottom 3 average monthly searches for URLs with medium competition.
[50, 50, 50]
list[number]
[ "Competition", "Avg. monthly searches" ]
[ "category", "number[uint8]" ]
[50, 50, 50]
025_Data
Provide the top 5 rankings of URLs with low competition (if any).
[11, 10, 10, 9, 9]
list[number]
[ "Competition", "Ranking" ]
[ "category", "number[uint8]" ]
[11, 8, 6, 6, 5]
025_Data
Specify the bottom 2 average monthly searches for URLs with the highest rankings.
[50, 50]
list[number]
[ "Ranking", "Avg. monthly searches" ]
[ "number[uint8]", "number[uint8]" ]
[50, 50]
025_Data
Is there any wine with a quality rating of 10?
False
boolean
[ "quality" ]
[ "number[uint8]" ]
False
026_Predicting
Are there any wines with residual sugar above 15g/dm^3?
True
boolean
[ "residual sugar" ]
[ "number[double]" ]
False
026_Predicting
Is the highest alcohol content wine also the one with the highest quality rating?
False
boolean
[ "alcohol", "quality" ]
[ "number[double]", "number[uint8]" ]
False
026_Predicting
Does any wine have a pH level below 2.5?
False
boolean
[ "pH" ]
[ "number[double]" ]
False
026_Predicting
How many unique quality ratings are there in the dataset?
6
number
[ "quality" ]
[ "number[uint8]" ]
5
026_Predicting
What is the maximum fixed acidity level found in the dataset?
15.9
number
[ "fixed acidity" ]
[ "number[double]" ]
10.7
026_Predicting
What is the minimum volatile acidity level in the dataset?
0.12
number
[ "volatile acidity" ]
[ "number[double]" ]
0.28
026_Predicting
How many wines have free sulfur dioxide above 50 mg/dm^3?
16
number
[ "free sulfur dioxide" ]
[ "number[UInt8]" ]
0
026_Predicting
What is the quality rating of the wine with the highest alcohol content?
5
category
[ "alcohol", "quality" ]
[ "number[double]", "number[uint8]" ]
7.0
026_Predicting
What is the quality rating of the wine with the highest fixed acidity?
5
category
[ "fixed acidity", "quality" ]
[ "number[double]", "number[uint8]" ]
6.0
026_Predicting
What is the quality rating of the wine with the lowest volatile acidity?
7
category
[ "volatile acidity", "quality" ]
[ "number[double]", "number[uint8]" ]
7.0
026_Predicting
What is the quality rating of the wine with the highest pH level?
6
category
[ "pH", "quality" ]
[ "number[double]", "number[uint8]" ]
6.0
026_Predicting
List the quality ratings of the top 3 wines with the highest alcohol content.
['5', '6', '6']
list[category]
[ "alcohol", "quality" ]
[ "number[double]", "number[uint8]" ]
[7, 7, 8]
026_Predicting
Enumerate the quality ratings of the bottom 2 wines with the lowest residual sugar.
['6', '6']
list[category]
[ "residual sugar", "quality" ]
[ "number[double]", "number[uint8]" ]
[5, 5]
026_Predicting
Which are the quality ratings of the top 5 wines with the highest density?
['6', '6', '7', '5', '5']
list[category]
[ "density", "quality" ]
[ "number[double]", "number[uint8]" ]
[6, 7, 5, 7, 6]
026_Predicting
List the quality ratings of the bottom 4 wines with the lowest pH level.
['4', '6', '6', '8']
list[category]
[ "pH", "quality" ]
[ "number[double]", "number[uint8]" ]
[7, 8, 5, 7]
026_Predicting
What are the alcohol contents of the top 4 wines with the highest quality ratings?
['12.8', '12.6', '12.9', '9.8']
list[number]
[ "quality", "alcohol" ]
[ "number[uint8]", "number[double]" ]
[11.7, 11.8, 12.3, 10.0]
026_Predicting
List the volatile acidity levels of the bottom 3 wines with the lowest quality ratings.
['0.58', '0.61', '1.185']
list[number]
[ "quality", "volatile acidity" ]
[ "number[uint8]", "number[double]" ]
[0.76, 0.5, 0.46]
026_Predicting
Enumerate the fixed acidity levels of the top 5 wines with the highest quality ratings.
['7.9', '10.3', '5.6', '12.6', '11.3']
list[number]
[ "quality", "fixed acidity" ]
[ "number[uint8]", "number[double]" ]
[9.4, 10.5, 8.9, 10.1, 7.7]
026_Predicting
Provide the residual sugar levels of the bottom 2 wines with the lowest quality ratings.
['2.2', '2.1']
list[number]
[ "quality", "residual sugar" ]
[ "number[uint8]", "number[double]" ]
[1.8, 1.6]
026_Predicting
Is there any purchase with a total cost above 1000?
True
boolean
[ "Total" ]
[ "number[double]" ]
False
027_Supermarket
Are there any customers who made a purchase using cash?
True
boolean
[ "Payment" ]
[ "category" ]
True
027_Supermarket
Is the customer with the highest total purchase cost a 'Member'?
True
boolean
[ "Total", "Customer type" ]
[ "number[double]", "category" ]
False
027_Supermarket
Does any customer with a rating strictly above 9 use 'Ewallet' as their payment method?
True
boolean
[ "Rating", "Payment" ]
[ "number[double]", "category" ]
False
027_Supermarket
How many unique branches are there in the dataset?
3
number
[ "Branch" ]
[ "category" ]
3
027_Supermarket
What is the maximum quantity of products bought in a single purchase?
10
number
[ "Quantity" ]
[ "number[uint8]" ]
10
027_Supermarket
What is the minimum total cost of a purchase in the dataset?
10.6785
number
[ "Total" ]
[ "number[double]" ]
45.927
027_Supermarket
How many purchases were made in Yangon city?
340
number
[ "City" ]
[ "category" ]
11
027_Supermarket
What is the payment method used for the purchase with the highest total cost?
Credit card
category
[ "Total", "Payment" ]
[ "number[double]", "category" ]
Credit card
027_Supermarket
What is the product line of the purchase with the highest total cost?
Fashion accessories
category
[ "Total", "Product line" ]
[ "number[double]", "category" ]
Electronic accessories
027_Supermarket
What is the customer type of the purchase with the lowest total cost?
Member
category
[ "Total", "Customer type" ]
[ "number[double]", "category" ]
Normal
027_Supermarket
What is the gender of the customer with the highest total purchase cost?
Female
category
[ "Total", "Gender" ]
[ "number[double]", "category" ]
Male
027_Supermarket
List the payment methods of the top 3 purchases with the highest total cost.
['Credit card', 'Credit card', 'Ewallet']
list[category]
[ "Total", "Payment" ]
[ "number[double]", "category" ]
['Credit card', 'Cash', 'Ewallet']
027_Supermarket
Enumerate the product lines of the bottom 2 purchases with the lowest total cost.
['Sports and travel', 'Fashion accessories']
list[category]
[ "Total", "Product line" ]
[ "number[double]", "category" ]
['Sports and travel', 'Sports and travel']
027_Supermarket
Which are the customer types of the top 5 purchases with the highest total cost?
['Member', 'Normal', 'Member', 'Normal', 'Normal']
list[category]
[ "Total", "Customer type" ]
[ "number[double]", "category" ]
['Normal', 'Normal', 'Normal', 'Normal', 'Normal']
027_Supermarket
List the genders of the bottom 4 purchases with the lowest total cost.
['Male', 'Female', 'Female', 'Male']
list[category]
[ "Total", "Gender" ]
[ "number[double]", "category" ]
['Male', 'Male', 'Female', 'Female']
027_Supermarket
What are the quantities of products bought in the top 4 purchases with the highest total cost?
[10, 10, 10, 10]
list[number]
[ "Total", "Quantity" ]
[ "number[double]", "number[uint8]" ]
[10, 7, 10, 10]
027_Supermarket
List the unit prices of the bottom 3 purchases with the lowest total cost.
[10.17, 12.09, 12.54]
list[number]
[ "Total", "Unit price" ]
[ "number[double]", "number[double]" ]
[21.87, 60.87, 42.97]
027_Supermarket
Enumerate the ratings of the top 5 purchases with the highest total cost.
[6.6, 8.7, 4.5, 8.0, 4.4]
list[number]
[ "Total", "Rating" ]
[ "number[double]", "number[double]" ]
[4.2, 7.6, 8.1, 9.0, 6.4]
027_Supermarket
Provide the gross incomes of the bottom 2 purchases with the lowest total cost.
[0.5085, 0.6045]
list[number]
[ "Total", "gross income" ]
[ "number[double]", "number[double]" ]
[2.187, 6.087]
027_Supermarket
Are there any individuals in the dataset who are above 60 years of age?
False
boolean
[ "Age" ]
[ "number[uint8]" ]
True
028_Predict
Does anyone have a Diabetes Pedigree Function score above 2.5?
True
boolean
[ "DiabetesPedigreeFunction" ]
[ "number[double]" ]
False
028_Predict
Does the person with the highest glucose level also have diabetes?
True
boolean
[ "Glucose", "Outcome" ]
[ "number[uint8]", "number[uint8]" ]
True
028_Predict
Is there anyone who has zero pregnancies and is diabetic?
True
boolean
[ "Pregnancies", "Outcome" ]
[ "number[uint8]", "number[uint8]" ]
True
028_Predict
What is the maximum number of pregnancies recorded in the dataset?
17
number
[ "Pregnancies" ]
[ "number[uint8]" ]
10
028_Predict
What is the minimum blood pressure level recorded in the dataset?
0
number
[ "BloodPressure" ]
[ "number[uint8]" ]
0
028_Predict
What is the average BMI recorded in the dataset?
31.992578124999998
number
[ "BMI" ]
[ "number[double]" ]
31.910000000000004
028_Predict
How many individuals have an insulin level above 150?
187
number
[ "Insulin" ]
[ "number[uint16]" ]
4
028_Predict
What is the diabetes outcome for the person with the highest BMI?
1
category
[ "BMI", "Outcome" ]
[ "number[double]", "number[uint8]" ]
1
028_Predict
What is the diabetes outcome for the person with the lowest blood pressure?
0
category
[ "BloodPressure", "Outcome" ]
[ "number[uint8]", "number[uint8]" ]
0
028_Predict
What is the diabetes outcome for the person with the highest insulin level?
1
category
[ "Insulin", "Outcome" ]
[ "number[uint16]", "number[uint8]" ]
1
028_Predict
What is the diabetes outcome for the person with the lowest glucose level?
0
category
[ "Glucose", "Outcome" ]
[ "number[uint8]", "number[uint8]" ]
0
028_Predict
List the diabetes outcomes of the top 3 individuals with the highest number of pregnancies.
[1, 1, 1]
list[category]
[ "Pregnancies", "Outcome" ]
[ "number[uint8]", "number[uint8]" ]
[1, 0, 0]
028_Predict
List the diabetes outcomes of the bottom 2 individuals with the lowest BMI.
[0, 0]
list[category]
[ "BMI", "Outcome" ]
[ "number[double]", "number[uint8]" ]
[0, 0]
028_Predict
List the diabetes outcomes of the top 5 individuals with the highest insulin levels.
[1, 1, 1, 1, 1]
list[category]
[ "Insulin", "Outcome" ]
[ "number[uint16]", "number[uint8]" ]
[1, 0, 0, 1, 1]
028_Predict
List the diabetes outcomes of the bottom 4 individuals with the lowest blood pressure.
[0, 0, 0, 0]
list[category]
[ "BloodPressure", "Outcome" ]
[ "number[uint8]", "number[uint8]" ]
[0, 1, 0, 1]
028_Predict
What are the ages of the top 4 individuals with the highest number of pregnancies?
[51, 67, 67, 67]
list[number]
[ "Pregnancies", "Age" ]
[ "number[uint8]", "number[uint8]" ]
[40, 34, 50, 60]
028_Predict
List the BMI of the bottom 3 individuals with the lowest glucose levels.
[32.0, 32.0, 32.0]
list[number]
[ "Glucose", "BMI" ]
[ "number[uint8]", "number[double]" ]
[20.4, 37.2, 30.2]
028_Predict
Enumerate the blood pressure levels of the top 5 individuals with the highest Diabetes Pedigree Function scores.
[0, 0, 0, 0, 0]
list[number]
[ "DiabetesPedigreeFunction", "BloodPressure" ]
[ "number[double]", "number[uint8]" ]
[74, 50, 0, 80, 58]
028_Predict
Provide the glucose levels of the bottom 2 individuals with the lowest insulin levels.
[117, 111]
list[number]
[ "Insulin", "Glucose" ]
[ "number[uint16]", "number[uint8]" ]
[112, 108]
028_Predict
Are there any articles that have the material type 'Op-Ed'?
False
boolean
[ "material_type" ]
[ "category" ]
False
029_NYTimes
Does the article with the longest headline contain the keyword 'United States Politics and Government'?
False
boolean
[ "headline", "keywords" ]
[ "text", "list[category]" ]
False
029_NYTimes
Is there any article published on '2021-01-05'?
False
boolean
[ "date" ]
[ "date[ns", "UTC]" ]
False
029_NYTimes
Does any article contain more than 10 keywords?
True
boolean
[ "keywords" ]
[ "list[category]" ]
False
029_NYTimes
How many unique material types are there in the dataset?
4
number
[ "material_type" ]
[ "category" ]
5
029_NYTimes
What is the longest length of a headline in the dataset?
96
number
[ "headline" ]
[ "text" ]
110
029_NYTimes
How many articles were published on '2021-01-02'?
52
number
[ "date" ]
[ "date[ns", "UTC]" ]
0
029_NYTimes
What is the highest number of keywords associated with a single article?
8
number
[ "keywords" ]
[ "list[category]" ]
8
029_NYTimes
What is the material type of the article with the longest headline?
News
category
[ "headline", "material_type" ]
[ "text", "category" ]
News
029_NYTimes
What is the material type of the article with the shortest headline?
News
category
[ "headline", "material_type" ]
[ "text", "category" ]
Editorial
029_NYTimes
What is the material type of the article with the most number of keywords?
News
category
[ "keywords", "material_type" ]
[ "list[category]", "category" ]
News
029_NYTimes
What is the material type of the article with the least number of keywords?
News
category
[ "keywords", "material_type" ]
[ "list[category]", "category" ]
News
029_NYTimes
List the material types of the top 3 articles with the longest headlines.
['News', 'News', 'News']
list[category]
[ "headline", "material_type" ]
[ "text", "category" ]
['News', 'Interactive Feature', 'News']
029_NYTimes
List the material types of the bottom 2 articles with the shortest headlines.
['News', 'News']
list[category]
[ "headline", "material_type" ]
[ "text", "category" ]
['Editorial', 'News']
029_NYTimes
List the material types of the top 5 articles with the most number of keywords.
['News', 'News', 'News', 'News', 'News']
list[category]
[ "keywords", "material_type" ]
[ "list[category]", "category" ]
['News', 'Editorial', 'News', 'Review', 'News']
029_NYTimes
List the material types of the bottom 4 articles with the least number of keywords.
['News', 'News', 'News', 'News']
list[category]
[ "keywords", "material_type" ]
[ "list[category]", "category" ]
['News', 'Interactive Feature', 'News', 'News']
029_NYTimes
What are the lengths of the headlines of the top 4 articles with the most number of keywords?
[86, 85, 84, 84]
list[number]
[ "keywords", "headline" ]
[ "list[category]", "text" ]
[73, 20, 69, 62]
029_NYTimes
List the number of keywords in the bottom 3 articles with the shortest headlines.
[1, 1, 1]
list[number]
[ "headline", "keywords" ]
[ "text", "list[category]" ]
[8, 1, 2]
029_NYTimes
Enumerate the lengths of the headlines of the top 5 articles with the longest headlines.
[96, 96, 95, 95, 95]
list[number]
[ "headline" ]
[ "text" ]
[110, 94, 92, 73, 73]
029_NYTimes
Provide the number of keywords in the bottom 2 articles with the least number of keywords.
[1, 1]
list[number]
[ "keywords" ]
[ "list[category]" ]
[1, 2]
029_NYTimes
Is the 'USA' the most common entry in the 'Geographies' column?
False
boolean
[ "Geographies" ]
[ "list[category]" ]
True
030_Professionals
Are there any participants who are unemployed with a bachelor's degree from Africa?
False
boolean
[ "Labeled Clusters", "Geographies" ]
[ "category", "list[category]" ]
False
030_Professionals
Do all participants recommend Python as the first programming language?
False
boolean
[ "What programming language would you recommend an aspiring data scientist to learn first?" ]
[ "category" ]
False
030_Professionals
Are there more than 1000 participants who hope to become familiar with AWS in the next 2 years?
False
boolean
[ "Which of the following cloud computing platforms do you hope to become more familiar with in the next 2 years?" ]
[ "list[category]" ]
False
030_Professionals
How many unique job titles are represented in the dataset?
14
number
[ "Select the title most similar to your current role (or most recent title if retired)" ]
[ "category" ]
7
030_Professionals
What's the median number of years participants have used machine learning methods?
1.5
number
[ "(Average) For how many years have you used machine learning methods?" ]
[ "number[double]" ]
0.5
030_Professionals
How many participants are from the United Kingdom?
450
number
[ "In which country do you currently reside?" ]
[ "category" ]
1
030_Professionals
What is the most common number of programming languages used by participants on a regular basis?
2
number
[ "What programming languages do you use on a regular basis?" ]
[ "list[category]" ]
3.0
030_Professionals
What's the most common computing platform used for data science projects?
A laptop
category
[ "What type of computing platform do you use most often for your data science projects?" ]
[ "category" ]
A laptop
030_Professionals
What's the most common programming language used on a regular basis?
Python
category
[ "What programming languages do you use on a regular basis?" ]
[ "list[category]" ]
Python
030_Professionals
Which country has the second highest number of participants?
United States of America
category
[ "In which country do you currently reside?" ]
[ "category" ]
India
030_Professionals
Which title is the least common among participants?
Developer Relations/Advocacy
category
[ "Select the title most similar to your current role (or most recent title if retired)" ]
[ "category" ]
Business Analyst
030_Professionals
What are the top 4 geographies represented in the dataset?
['India', 'USA', 'Western Europe', 'China - Japan - Korea']
list[category]
[ "Geographies" ]
[ "list[category]" ]
['USA', 'India', 'Other', 'Russia']
030_Professionals
Name the top 3 general segments of participants.
['Analysts', 'Data Scientists', 'Academics']
list[category]
[ "General Segments" ]
[ "list[category]" ]
['Student', 'Data Scientist', 'Data Analyst']
030_Professionals
list the top 5 most common job titles.
['Data Scientist', 'Software Engineer', 'Other', 'Data Analyst', 'Currently not employed']
list[category]
[ "Select the title most similar to your current role (or most recent title if retired)" ]
[ "category" ]
['Student', 'Data Scientist', 'Software Engineer', 'Other', 'Data Analyst']
030_Professionals