2877. Create a DataFrame from List
Problem Description
In this problem, we are tasked with constructing a DataFrame using the pandas
library in Python. pandas
is a powerful data manipulation library that provides numerous tools to work with structured data. A DataFrame is one of the core structures in pandas
, designed to mimic the functionality of a database table or an Excel spreadsheet – essentially, it's a labeled two-dimensional array where each column can be of a different data type.
We are given a 2-dimensional list student_data
where each sub-list contains two elements: the first element represents a student's ID, and the second is the student's age. The challenge is to convert this 2D list into a DataFrame with two columns. Those columns are to be named student_id
and age
.
The DataFrame must maintain the same row order as it was in the provided 2D list. For example, if the input is [[1, 20], [2, 22]]
, the resulting DataFrame should look like this:
student_id | age |
---|---|
1 | 20 |
2 | 22 |
Creating DataFrames from various types of data is a common operation in data analysis, as it facilitates easy data manipulation, filtering, and analysis.
Intuition
The intuitive approach for solving this problem is to leverage the DataFrame
constructor method provided by pandas
. This method can accept various forms of input data including lists, dictionaries, and other DataFrames. When given a 2D list, each sub-list is interpreted as a row in the DataFrame.
In order to ensure that the columns of the DataFrame are correctly labeled, we specify the columns
parameter when calling the DataFrame
constructor, passing in a list with the desired column names: ['student_id', 'age']
.
Since the task does not involve any complex transformations, the provided code simply passes the student_data
list and the column names to the DataFrame
constructor and returns the newly created DataFrame. The rationale is that by directly utilizing the built-in functionality of pandas
, we can create the required DataFrame object in an efficient and readable way.
Solution Approach
The solution approach is straightforward, utilizing the pandas
library's data structure and functionality without employing complex algorithms or design patterns.
Here are the steps for the implementation:
-
Import the
pandas
library to gain access to theDataFrame
construction capability.import pandas as pd
-
Define the function
createDataframe
which takes one argument,student_data
. This argument is expected to be a 2-dimensional list where the inner lists consist of exactly two integers, the student's ID and the student's age. -
Inside the function, the
DataFrame
constructor ofpandas
is called with two parameters. The first parameter is thestudent_data
list itself, and the second is thecolumns
parameter, which is a list containing the column names, namely['student_id', 'age']
.return pd.DataFrame(student_data, columns=['student_id', 'age'])
-
The
DataFrame
constructor interprets each sub-list instudent_data
as a row in the DataFrame, with the first integer in the sub-list being placed under thestudent_id
column, and the second under theage
column.
By adhering to the Pythonic principle of "simple is better than complex," this solution avoids overengineering, relying on the efficient and well-tested internal mechanisms of the pandas
library to achieve the desired result.
No special algorithm or additional data structures are required. The pattern used is one of directly mapping the input data to the DataFrame structure. This makes the code highly readable, easy to maintain, and efficient for the problem at hand.
In summary, the approach takes advantage of pandas
's built-in functions to transform a 2D list into a structured DataFrame with minimal code, achieving the goal with elegance and efficiency.
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Start EvaluatorExample Walkthrough
Let's walk through a small example to illustrate the solution approach. Suppose we have the following 2D list which represents student_data
:
student_data = [[101, 18], [102, 19], [103, 20]]
Each sub-list contains a student's ID and the student's age. We want to create a DataFrame from this list where each student's information is a row, with student_id
and age
as column headers.
By following the steps outlined in the solution approach:
-
First, we import the
pandas
library, which is essential for creating DataFrames.import pandas as pd
-
We define a function
createDataframe
that will acceptstudent_data
as an argument.def createDataframe(student_data):
-
Within the function, we call the
DataFrame
constructor ofpandas
, passing thestudent_data
list and providing the column names['student_id', 'age']
through thecolumns
parameter.return pd.DataFrame(student_data, columns=['student_id', 'age'])
-
As a result, the
DataFrame
constructor interprets each inner list fromstudent_data
as a row. For our example, the constructor will create a DataFrame that looks like this:
student_id | age |
---|---|
101 | 18 |
102 | 19 |
103 | 20 |
This process creates a pandas DataFrame with the correct row order and the specified column names. Finally, calling our createDataframe
function with student_data
:
df = createDataframe(student_data)
print(df)
Will output:
student_id age 0 101 18 1 102 19 2 103 20
Our example demonstrates the simplicity and elegance of the solution approach, relying on the powerful pandas
library to efficiently create a DataFrame from a 2D list with the desired structure and labels.
Solution Implementation
1import pandas as pd
2from typing import List
3
4# Function to create a DataFrame from student data
5# Parameters:
6# student_data (List[List[int]]): A list of lists, where each inner list contains student_id, and age.
7# Returns:
8# pd.DataFrame: A DataFrame with columns 'student_id' and 'age' created from the input data.
9def create_dataframe(student_data: List[List[int]]) -> pd.DataFrame:
10 # Create DataFrame using the provided student_data
11 # Assign column names 'student_id' and 'age' to the DataFrame
12 dataframe = pd.DataFrame(student_data, columns=['student_id', 'age'])
13 # Return the created DataFrame
14 return dataframe
15
1import java.util.List;
2import java.util.ArrayList;
3import javax.swing.table.DefaultTableModel;
4
5public class DataFrameCreator {
6
7 /**
8 * Function to create a DefaultTableModel from student data.
9 * It models the concept of a DataFrame in a way that's familiar to Java users.
10 *
11 * Parameters:
12 * studentData (List<List<Integer>>): A list of lists, where each inner list contains student_id, and age.
13 * Returns:
14 * DefaultTableModel: A DefaultTableModel with columns 'student_id' and 'age' created from the input data.
15 */
16 public static DefaultTableModel createDataFrame(List<List<Integer>> studentData) {
17 // Define the column names for the table model
18 String[] columnNames = {"student_id", "age"};
19
20 // Convert the List of Lists into an array of arrays, as DefaultTableModel requires it.
21 // The outer array corresponds to the rows and the inner one to the columns.
22 Object[][] dataArray = studentData.stream()
23 .map(list -> list.toArray(new Object[0]))
24 .toArray(Object[][]::new);
25
26 // Create the DefaultTableModel with the data array and the column names
27 DefaultTableModel tableModel = new DefaultTableModel(dataArray, columnNames);
28
29 // Return the created table model
30 return tableModel;
31 }
32
33 // Example usage
34 public static void main(String[] args) {
35 // List of lists representing student data (student_id, age)
36 List<List<Integer>> studentData = new ArrayList<>();
37 studentData.add(new ArrayList<Integer>() {{
38 add(1); // student_id
39 add(20); // age
40 }});
41 studentData.add(new ArrayList<Integer>() {{
42 add(2); // student_id
43 add(22); // age
44 }});
45
46 // Create a DataFrame (DefaultTableModel) from the student data
47 DefaultTableModel dataFrame = createDataFrame(studentData);
48
49 // Example of printing the data
50 for (int row = 0; row < dataFrame.getRowCount(); row++) {
51 for (int col = 0; col < dataFrame.getColumnCount(); col++) {
52 System.out.print(dataFrame.getValueAt(row, col) + " ");
53 }
54 System.out.println();
55 }
56 }
57}
58
1#include <iostream>
2#include <vector>
3#include <string>
4
5// Function to print a simulated DataFrame from student data
6// Parameters:
7// studentData (const std::vector<std::vector<int>>&): A vector of vectors,
8// where each inner vector contains student_id, and age.
9void createDataFrame(const std::vector<std::vector<int>>& studentData) {
10 // Check if the studentData is not empty and each inner vector has a size of 2
11 if (!studentData.empty() && studentData[0].size() == 2) {
12 // Print column names
13 std::cout << "student_id" << '\t' << "age" << std::endl;
14
15 // Iterate over the studentData to print the values
16 for (const auto& student : studentData) {
17 // Print student_id and age from the inner vector
18 std::cout << student[0] << '\t' << student[1] << std::endl;
19 }
20 } else {
21 // Print an error message if studentData is empty or inner vectors do not have a size of 2
22 std::cerr << "Error: studentData must be a non-empty vector of vectors with a size of 2." << std::endl;
23 }
24}
25
26int main() {
27 // Example student data: each inner vector contains student_id and age
28 std::vector<std::vector<int>> studentData = {
29 {1, 20}, // Student 1 is 20 years old
30 {2, 22}, // Student 2 is 22 years old
31 {3, 19} // Student 3 is 19 years old
32 };
33
34 // Create a simulated DataFrame and print the student data
35 createDataFrame(studentData);
36
37 return 0;
38}
39
1// Required type definitions for clarity
2type StudentData = {
3 studentId: number;
4 age: number;
5};
6
7// Function to create an array of student objects from student data
8// studentData parameter: An array of arrays, where each inner array contains studentId, and age.
9// Returns an array of objects that represent students with properties 'studentId' and 'age'.
10function createStudentArray(studentData: Array<[number, number]>): StudentData[] {
11 // Map each pair of student data to an object with 'studentId' and 'age' properties
12 const students: StudentData[] = studentData.map(([studentId, age]) => ({
13 studentId,
14 age,
15 }));
16
17 // Return the array of student objects
18 return students;
19}
20
Time and Space Complexity
The time complexity of creating a dataframe using pandas.DataFrame
is generally O(n)
where n
is the total number of elements in the input list student_data
. Each element (a sub-list in this case) is inserted into the DataFrame during creation.
The space complexity is also O(n)
since the DataFrame stores all elements of the input list. Each sub-list corresponds to a row in the DataFrame, and each element within a sub-list corresponds to a cell in the DataFrame.
Which data structure is used to implement recursion?
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