What you should Have to Start

Lesson Portion 1: ReIntroduction to Data Analysis, NunPy, and Pandas, Why is it important?

Data Analysis.

  • Data Analysis is the process of examining data sets in order to find trends and draw conclusions about the given information. Data analysis is important because it helps businesses optimize their performances.

What is NunPy and Pandas

  • Pandas library involves a lot of data analysis in Python. NumPy Library is mostly used for working with numerical values and it makes it easy to apply with mathematical functions.
  • Imagine you have a lot of toys, but they are all mixed up in a big box. NumPy helps you to put all the same types of toys together, like all the cars in one pile and all the dolls in another. Pandas is like a helper that helps you to remember where each toy is located. So, if you want to find a specific toy, like a red car, you can ask Pandas to find it for you.
  • Just like how it's easier to find a toy when they are sorted and organized, it's easier for grown-ups to understand and analyze big sets of numbers when they use NumPy and Pandas.

Lesson Portion 2 More into NunPy

What we are covering;

  • Explanation of NumPy and its uses in data analysis
  • Importing NumPy library
  • Examining NumPy arrays
  • Creating NumPy arrays and performing intermediate array operations
  • Popcorn Hacks, Make your own percentile NunPy array

What is NunPy's use in data analysis/ how to import NunPy.

NumPy is a tool in Python that helps with doing math and data analysis. It's great for working with large amounts of data, like numbers in a spreadsheet. NumPy is really good at doing calculations quickly and accurately, like finding averages, doing algebra, and making graphs. It's used a lot by scientists and people who work with data because it makes their work easier and faster.

import numpy as np

List of NunPy Functions, what they do, and examples.

Example of Using NunPy in Our Project

This code calculates the total plate appearances for a baseball player using NumPy's sum() function, similar to the original example. It then uses NumPy to calculate the total number of bases (hits plus walks) for the player, and divides that by the total number of plate appearances to get the on-base percentage. The results are then printed to the console.

import numpy as np

# Example data
player_hits = np.array([3, 1, 2, 0, 1, 2, 1, 2])  # Player's hits in each game
player_walks = np.array([1, 0, 0, 1, 2, 1, 1, 0])  # Player's walks in each game
player_strikeouts = np.array([2, 1, 0, 2, 1, 1, 0, 1])  # Player's strikeouts in each game

# array to store plate appearances (PA) for the player
total_pa = np.sum(player_hits != 0) + np.sum(player_walks) + np.sum(player_strikeouts)

# array to store on-base percentage (OBP) for the player
total_bases = np.sum(player_hits) + np.sum(player_walks)
obp = total_bases / total_pa

# Print the total plate appearances and on-base percentage for the player
print(f"Total plate appearances: {total_pa}")
print(f"On-base percentage: {obp:.3f}")
Total plate appearances: 21
On-base percentage: 0.857

Activity 1; PopCorn Hacks; Creating a NunPy Array and Analyzing the Data using Array Operations

import numpy as np

#Create a NumPy array of the heights of players in a basketball team
heights = np.array([192, 195, 193, 200, 211, 199, 201, 198, 184, 190, 196, 203, 208, 182, 207])

# Calculate the percentile rank of each player's height
percentiles = np.percentile(heights, [25, 50, 75])

# Print the results
print("The 25th percentile height is", percentiles[0], "cm.")
print("The 50th percentile height is", percentiles[1], "cm.")
print("The 75th percentile height is", percentiles[2], "cm.")

# Determine the number of players who are in the top 10% tallest
top_10_percent = np.percentile(heights, 90)
tallest_players = heights[heights >= top_10_percent]

print("There are", len(tallest_players), "players in the top 10% tallest.")
The 25th percentile height is 192.5 cm.
The 50th percentile height is 198.0 cm.
The 75th percentile height is 202.0 cm.
There are 2 players in the top 10% tallest.
import numpy as np

#Create a NumPy array of the x
shoe_size = np.array([7.5, 6.5, 6, 7, 7, 8.5, 8.5])

# Calculate the percentile rank of x
percentiles = np.percentile(shoe_size, [25,50,75])

# Print the results
print("The 25th percentile shoe size is size", percentiles[0])
print("The 50th percentile shoe size is size", percentiles[1])
print("The 75th percentile shoe size is size", percentiles[2])

# Determine the number of players who are in the top 10% x
t = np.percentile(shoe_size, 90)
z = shoe_size[shoe_size >= t]

print("There are", len(z), "people in the top 10%"" shoe size.")
The 25th percentile shoe size is size 6.75
The 50th percentile shoe size is size 7.0
The 75th percentile shoe size is size 8.0
There are 2 people in the top 10% shoe size.

Lesson Portion 3 More into Pandas

What we are Covering

  • Explanation of Pandas and its uses in data analysis
  • Importing Pandas library
  • Loading data into Pandas DataFrames from CSV files
  • Manipulating and exploring data in Pandas DataFrames
  • Example of using Pandas for data analysis tasks such as filtering and sorting

What are pandas and what is its purpose?

  • Pandas is a software library that is used in Python
  • Pandas are used for data analysis and data manipulation
  • Pandas offer data structures and operations for manipulating numerical tables and time series.
  • Pandas is free

Things you can do using pandas

  • Data Cleansing; Identifying and correcting errors, inconsistencies, and inaccuracies in datasets.
  • Data fill; Filling in missing values in datasets.
  • Statistical Analysis; Analyzing datasets using statistical techniques to draw conclusions and make predictions.
  • Data Visualization; Representing datasets visually using graphs, charts, and other visual aids.
  • Data inspection; Examining datasets to identify potential issues or patterns, such as missing data, outliers, or trends.

Pandas and Data analysis

The 2 most important data structures in Pandas are:

  • Series ; A Series is a one-dimensional labeled array that can hold data of any type (integer, float, string, etc.). It is similar to a column in a spreadsheet or a SQL table. Each element in a Series has a label, known as an index. A Series can be created from a list, a NumPy array, a dictionary, or another Pandas Series.
  • DataFrame ;A DataFrame is a two-dimensional labeled data structure that can hold data of different types (integer, float, string, etc.). It is similar to a spreadsheet or a SQL table. Each column in a DataFrame is a Series, and each row is indexed by a label, known as an index. A DataFrame can be created from a dictionary of Series or NumPy arrays, a list of dictionaries, or other Pandas DataFrame.

Dataframes

import pandas as pd
pd.__version__
'1.4.2'

Importing CSV Data

  • imports the Pandas library and assigns it an alias 'pd'.
  • Loads a CSV file named 'nba_player_statistics.csv' into a Pandas DataFrame called 'df'.
  • Specifies a player's name 'Jimmy Butler' to filter the DataFrame for that player's stats. It creates a new DataFrame called 'player_stats' which only contains rows where the 'NAME' column matches 'Jimmy Butler'.
  • Displays the player's stats for points per game (PPG), rebounds per game (RPG), and assists per game (APG) using the print() function and string formatting.
  • The code uses the double square brackets [[PPG', 'RPG', 'APG']] to select only the columns corresponding to the player's points per game, rebounds per game, and assists per game from the player_stats DataFrame.
  • In summary, the code loads NBA player statistics data from a CSV file, filters it for a specific player, and displays the stats for that player's PPG, RPG, and APG using a Pandas DataFrame.
import pandas as pd
# Load the CSV file into a Pandas DataFrame
df = pd.read_csv('/home/annikaliao/vscode/annika/_notebooks/files/nba_player_statistics.csv')
# Filter the DataFrame to only include stats for a specific player (in this case, Jimmy Butler)
player_name = 'Jimmy Butler'
player_stats = df[df['NAME'] == player_name]
# Display the stats for the player
print(f"\nStats for {player_name}:")
print(player_stats[['PPG', 'RPG', 'APG']])
Stats for Jimmy Butler:
    PPG  RPG   APG
0  35.0  5.0  11.0

In this code segment below we use Pandas to read a CSV file containing NBA player statistics and store it in a DataFrame.

The reason Pandas is useful in this scenario is because it provides various functionalities to filter, sort, and manipulate the NBA data efficiently. In this code, the DataFrame is filtered to only include the stats for the player you guys choose.

  • Imports the Pandas library and assigns it an alias 'pd'.
  • Loads a CSV file named 'nba_player_statistics.csv' into a Pandas DataFrame called 'df'.
  • Asks the user to input a player name using the input() function and assigns it to the variable player_name.
  • Filters the DataFrame for the specified player name using the df[df['NAME'] == player_name] syntax, and assigns the resulting DataFrame to the variable player_stats.
  • Checks if the player_stats DataFrame is empty using the empty attribute. If it is empty, prints "No stats found for that player." Otherwise, it proceeds to step 6.
  • Displays the player's stats for points per game (PPG), rebounds per game (RPG), assists per game (APG), and total points + rebounds + assists (P+R+A) using the print() function and string formatting.
  • In summary, this code loads NBA player statistics data from a CSV file, asks the user to input a player name, filters the DataFrame for that player's stats, and displays the player's stats for PPG, RPG, APG, and P+R+A. If the player is not found in the DataFrame, it prints a message indicating that no stats were found.
import pandas as pd
df = pd.read_csv('/home/annikaliao/vscode/annika/_notebooks/files/nba_player_statistics.csv')
# Load CSV file into a Pandas DataFrame
player_name = input("Enter player name: ")
# Get player name input from user
player_stats = df[df['NAME'] == player_name]
# Filter the DataFrame to only include stats for the specified player
if player_stats.empty:
    print("No stats found for that player.")
else:
# Check if the player exists in the DataFrame
    print(f"\nStats for {player_name}:")
print(player_stats[['PPG', 'RPG', 'APG', 'P+R+A']])
# Display the stats for the player inputted.
Stats for LeBron James:
     PPG   RPG  APG  P+R+A
26  21.0  11.0  5.0   37.0

Lesson Portion 4

What we will be covering

  • Example of analyzing data using both NumPy and Pandas libraries
  • Importing data into NumPy and Pandas Performing basic data analysis tasks such as mean, median, and standard deviation Visualization of data using Matplotlib library

Example of analyzing data using both NumPy and Pandas libraries

import numpy as np
import pandas as pd

# Load CSV file into a Pandas DataFrame

df = pd.read_csv('/home/annikaliao/vscode/annika/_notebooks/files/nba_player_statistics.csv')

# Filter the DataFrame to only include stats for the specified player

player_name = input("Enter player name: ")
player_stats = df[df['NAME'] == player_name]
if player_stats.empty:
    print("No stats found for that player.")
else:

    # Convert the player stats to a NumPy array
    player_stats_np = np.array(player_stats[['PPG', 'RPG', 'APG', 'P+R+A']])

    # Calculate the average of each statistic for the player

    player_stats_avg = np.mean(player_stats_np, axis=0)

    # Print out the average statistics for the player

    print(f"\nAverage stats for {player_name}:")
    print(f"PPG: {player_stats_avg[0]:.2f}")
    print(f"RPG: {player_stats_avg[1]:.2f}")
    print(f"APG: {player_stats_avg[2]:.2f}")
    print(f"P+R+A: {player_stats_avg[3]:.2f}")
Average stats for LeBron James:
PPG: 21.00
RPG: 11.00
APG: 5.00
P+R+A: 37.00

NumPy impacts the given code because it performs operations on arrays efficiently. Specifically, it converts a Pandas DataFrame object to a NumPy array object, and then calculates the average statistics for a the player you guys inputted. Without NumPy, it would be more difficult and less efficient to perform these calculations on large data sets. It does the math for us.

Importing data into NumPy and Pandas Performing basic data analysis tasks such as mean, median, and standard deviation Visualization of data using Matplotlib library

Matplotlib is used essentially to create visuals of data. charts,diagrams,etc.

import numpy as np
import pandas as pd
import matplotlib.pyplot as plt

# Load the CSV file into a Pandas DataFrame
df = pd.read_csv('/home/annikaliao/vscode/annika/_notebooks/files/nba_player_statistics.csv')

# Print the first 5 rows of the DataFrame
print(df.head())

# Calculate the mean, median, and standard deviation of the 'Points' column
mean_minutes = df['MPG'].mean()
median_minutes = df['MPG'].median()
stddev_minutes = df['MPG'].std()

# Print the results
print('Mean Minutes: ', mean_minutes)
print('Median Minutes: ', median_minutes)
print('Standard Deviation Minutes: ', stddev_minutes)

# Create a histogram of the 'Points' column using Matplotlib
plt.hist(df['MPG'], bins=20)
plt.title('MPG Histogram')
plt.xlabel('MPG')
plt.ylabel('Frequency')
plt.show()
   RANK             NAME TEAM POS   AGE  GP   MPG  USG%   TO%  FTA  ...   APG  \
0     1     Jimmy Butler  Mia   F  33.6   1  42.9  34.3   9.9    8  ...  11.0   
1     2    Kawhi Leonard  Lac   F  31.8   2  40.2  30.0  11.9   17  ...   6.0   
2     3  Khris Middleton  Mil   F  31.7   1  33.1  37.5  19.8   10  ...   4.0   
3     4     Devin Booker  Pho   G  26.5   2  44.1  28.8  16.2   14  ...   6.0   
4     5     De'Aaron Fox  Sac   G  25.3   2  38.2  31.6   9.0   14  ...   7.0   

   SPG  BPG  TPG   P+R   P+A  P+R+A    VI   ORtg   DRtg  
0  3.0  0.0  3.0  40.0  46.0   51.0  11.6  117.2  103.8  
1  2.0  0.5  3.0  41.0  40.5   47.0  11.0  129.5  110.4  
2  0.0  0.0  5.0  42.0  37.0   46.0  12.8  115.5  111.9  
3  2.5  1.5  4.0  33.0  38.0   39.0   5.2  121.9  111.0  
4  3.5  0.5  2.5  34.0  38.0   41.0   9.1  112.6  108.8  

[5 rows x 29 columns]
Mean Minutes:  20.985483870967748
Median Minutes:  23.0
Standard Deviation Minutes:  12.844102823170283

In this example code, we first import the necessary libraries, including NumPy, Pandas, and Matplotlib. We then load the CSV file into a Pandas DataFrame using the pd.read_csv() function. We print the first 5 rows of the DataFrame using the df.head() function. Next, we calculate the mean, median, and standard deviation of the 'MPG' column using the appropriate Pandas methods, and print the results. And, we create a histogram of the 'MPG' column using Matplotlib by calling the plt.hist() function and setting appropriate axis labels and a title. We then call the plt.show() method to display the plot. Even though NumPy is not directly used in this code, it is an important underlying component of the pandas and Matplotlib libraries, which are used to load, manipulate and visualize data. It allows them to work more efficiently

Lesson Portion 5; Summary

Summary/Goals of Lesson:

One of our goals was to make you understand data analysis and how it can be important in optimizing business performance. We also wanted to make sure you understood the use of Pandas and NumPy libraries in data analysis, with a focus on NumPy. As someone who works with data, we find Pandas incredibly useful for manipulating, analyzing, and visualizing data in Python. The way we use pandas is to calculate individual player and team statistics. We are a group that works with numerical data, so NumPy is one of our favorite tools for working with arrays and applying mathematical functions to them. It is very fast at computing and manipulating arrays making it a very valuable tool for tracking statistics which is important to our group. For example, if you have an array of the points scored by each player in a game, you can use NumPy to calculate the total points scored, average points per player, or the highest and lowest scoring players.

Lesson Portion 6 Hacks

Printing a CSV File (0.5)

  • Use this link https://github.com/ali-ce/datasets to select csv file of a topic you are interested in, or you may find one online.
  • Once you select your topic make sure it is a csv file and then you want to press on the button that says raw.
  • After that copy that information and create a file with a name and .csv at the end and paste your information.
  • Below is a start that you can use for your hacks.
  • [x] Your goal is to print 2 specific parts from data (example could be like population and country).

Popcorn Hacks (0.2)

  • [x] Lesson Portion 1. #### Answering Questions (0.2)
  • [x] Found Below.

Submit By Thursday 8:35 A.M.

  • [x] How to Submit: Slack a Blog Post that includes all of your hacks to "Joshua Williams" on Slack.
import pandas as pd
# read the CSV file
df = pd.read_csv("/home/annikaliao/vscode/annika/_notebooks/files/drugs.csv")
# display the data in a table
print(df)
drug = input("Enter drug name: ")
# Get player name input from user
drug = df[df['Crop'] == drug]
# Filter the DataFrame to only include stats for the specified player
if drug.empty:
    print("No stats found for that drug.")
else:
# Check if the player exists in the DataFrame
    print(f"\nStats for {drug}:")
print(drug[['Area harvested (km2)', 'Gross Production (m tonnes)', 'Yield per km2 (tonnes)', 'Gross Production value ($bn)', 'Value per km2']])
                  Crop Area harvested (km2)  Gross Production (m tonnes)  \
0             Cannabis                6,418                        0.070   
1       Coca (cocaine)                1,337                        0.220   
2          Opium Poppy                2,967                        0.007   
3               Barley              495,260                      133.000   
4                Beans              536,762                       24.000   
5              Cassava              203,852                      263.000   
6               Coffee              100,398                        9.000   
7               Grapes               69,694                       67.000   
8                Maize            1,773,795                      872.000   
9                 Palm              172,438                      300.000   
10            Potatoes              192,021                      365.000   
11            Rapeseed              340,851                       65.000   
12                Rice            1,631,991                      720.000   
13            Soybeans            1,049,973                      242.000   
14          Sugar Beet               49,008                      270.000   
15          Sugar Cane              260,886                     1833.000   
16                 Tea               32,760                        5.000   
17             Tobacco               42,910                        7.000   
18            Tomatoes               48,037                      162.000   
19  Vegetables (minor)              189,596                      270.000   
20               Wheat            2,154,895                      671.000   

   Yield per km2 (tonnes)  Gross Production value ($bn) Value per km2  \
0                      11                           306    47,678,404   
1                     164                            50    37,696,335   
2                       2                            18     5,954,246   
3                     269                            18        36,345   
4                      45                            16        29,808   
5                   1,290                            31       152,071   
6                      90                            11       109,564   
7                     961                            44       631,331   
8                     492                           140        78,927   
9                   1,740                            25       144,980   
10                  1,901                            70       364,543   
11                    191                            21        61,610   
12                    441                           228       139,707   
13                    230                            75        71,430   
14                  5,509                            13       265,263   
15                  7,026                            68       260,650   
16                    153                             6       183,150   
17                    163                            12       279,655   
18                  3,372                            68     1,415,575   
19                  1,424                            58       305,914   
20                    311                           120        55,687   

   SourceName                                             Source  \
0       UNODC  https://www.unodc.org/documents/wdr2014/World_...   
1       UNODC  https://www.unodc.org/documents/wdr2014/World_...   
2       UNODC  https://www.unodc.org/documents/wdr2014/World_...   
3     FAOSTAT                           http://faostat3.fao.org/   
4     FAOSTAT                           http://faostat3.fao.org/   
5     FAOSTAT                           http://faostat3.fao.org/   
6     FAOSTAT                           http://faostat3.fao.org/   
7     FAOSTAT                           http://faostat3.fao.org/   
8     FAOSTAT                           http://faostat3.fao.org/   
9     FAOSTAT                           http://faostat3.fao.org/   
10    FAOSTAT                           http://faostat3.fao.org/   
11    FAOSTAT                           http://faostat3.fao.org/   
12    FAOSTAT                           http://faostat3.fao.org/   
13    FAOSTAT                           http://faostat3.fao.org/   
14    FAOSTAT                           http://faostat3.fao.org/   
15    FAOSTAT                           http://faostat3.fao.org/   
16    FAOSTAT                           http://faostat3.fao.org/   
17    FAOSTAT                           http://faostat3.fao.org/   
18    FAOSTAT                           http://faostat3.fao.org/   
19    FAOSTAT                           http://faostat3.fao.org/   
20    FAOSTAT                           http://faostat3.fao.org/   

                                     Wikipedia Page  \
0             http://en.wikipedia.org/wiki/Cannabis   
1                 http://en.wikipedia.org/wiki/Coca   
2   http://en.wikipedia.org/wiki/Papaver_somniferum   
3               http://en.wikipedia.org/wiki/Barley   
4                 http://en.wikipedia.org/wiki/Bean   
5              http://en.wikipedia.org/wiki/Cassava   
6          http://en.wikipedia.org/wiki/Coffee_bean   
7                http://en.wikipedia.org/wiki/Grape   
8                http://en.wikipedia.org/wiki/Maize   
9            http://en.wikipedia.org/wiki/Arecaceae   
10              http://en.wikipedia.org/wiki/Potato   
11            http://en.wikipedia.org/wiki/Rapeseed   
12                http://en.wikipedia.org/wiki/Rice   
13             http://en.wikipedia.org/wiki/Soybean   
14          http://en.wikipedia.org/wiki/Sugar_beet   
15           http://en.wikipedia.org/wiki/Sugarcane   
16                 http://en.wikipedia.org/wiki/Tea   
17             http://en.wikipedia.org/wiki/Tobacco   
18              http://en.wikipedia.org/wiki/Tomato   
19           http://en.wikipedia.org/wiki/Vegetable   
20               http://en.wikipedia.org/wiki/Wheat   

                                                Image  \
0   http://upload.wikimedia.org/wikipedia/commons/...   
1   http://upload.wikimedia.org/wikipedia/commons/...   
2   http://upload.wikimedia.org/wikipedia/commons/...   
3   http://upload.wikimedia.org/wikipedia/commons/...   
4   http://upload.wikimedia.org/wikipedia/commons/...   
5   http://upload.wikimedia.org/wikipedia/commons/...   
6   http://upload.wikimedia.org/wikipedia/commons/...   
7   http://upload.wikimedia.org/wikipedia/commons/...   
8   http://upload.wikimedia.org/wikipedia/commons/...   
9   http://upload.wikimedia.org/wikipedia/commons/...   
10  http://upload.wikimedia.org/wikipedia/commons/...   
11  http://upload.wikimedia.org/wikipedia/commons/...   
12  http://upload.wikimedia.org/wikipedia/commons/...   
13  http://upload.wikimedia.org/wikipedia/commons/...   
14  http://upload.wikimedia.org/wikipedia/commons/...   
15  http://upload.wikimedia.org/wikipedia/commons/...   
16  http://upload.wikimedia.org/wikipedia/commons/...   
17  http://upload.wikimedia.org/wikipedia/commons/...   
18  http://upload.wikimedia.org/wikipedia/commons/...   
19  http://upload.wikimedia.org/wikipedia/commons/...   
20  http://upload.wikimedia.org/wikipedia/commons/...   

    Main Producer (Quantity) Main Producer ($), if different  \
0                     Mexico                             NaN   
1                   Columbia                             NaN   
2                Afghanistan                             NaN   
3                     Russia                          France   
4                    Myanmar                           India   
5                    Nigeria                             NaN   
6                     Brazil                             NaN   
7                      China                             NaN   
8   United States of America                             NaN   
9                  Indonesia                       Indonesia   
10                     China                             NaN   
11                    Canada                             NaN   
12                     China                             NaN   
13  United States of America                             NaN   
14                    Russia                             NaN   
15                    Brazil                             NaN   
16                     China                             NaN   
17                   Tobacco                             NaN   
18                     China                             NaN   
19                       NaN                             NaN   
20                     China                             NaN   

   Metric Tonnes Produced (by Main Producer, Quantity)      Status  
0                                              38,760         Drug  
1   231,700 (potential production of sun dried lea...         Drug  
2   5,500 (potential production of oven-dry opium,...         Drug  
3                                          16,938,000   Legal Crop  
4                                           3,900,000   Legal Crop  
5                                            54000000   Legal Crop  
6                                           3,037,534   Legal Crop  
7                                           9,600,000   Legal Crop  
8                                           273820066   Legal Crop  
9                              6560000 (palm kernels)   Legal Crop  
10                                           87260000   Legal Crop  
11                                           15409500   Legal Crop  
12                            204236000 (rice, paddy)   Legal Crop  
13                                           82054800   Legal Crop  
14                                           45057000   Legal Crop  
15                                          721077287   Legal Crop  
16                                            1700000   Legal Crop  
17                                            3200000   Legal Crop  
18                                           50000000   Legal Crop  
19                                                NaN   Legal Crop  
20                                          121023000   Legal Crop  

Stats for        Crop Area harvested (km2)  Gross Production (m tonnes)  \
0  Cannabis                6,418                         0.07   

  Yield per km2 (tonnes)  Gross Production value ($bn) Value per km2  \
0                     11                           306    47,678,404   

  SourceName                                             Source  \
0      UNODC  https://www.unodc.org/documents/wdr2014/World_...   

                          Wikipedia Page  \
0  http://en.wikipedia.org/wiki/Cannabis   

                                               Image Main Producer (Quantity)  \
0  http://upload.wikimedia.org/wikipedia/commons/...                   Mexico   

  Main Producer ($), if different  \
0                             NaN   

  Metric Tonnes Produced (by Main Producer, Quantity) Status  
0                                             38,760    Drug  :
  Area harvested (km2)  Gross Production (m tonnes) Yield per km2 (tonnes)  \
0                6,418                         0.07                     11   

   Gross Production value ($bn) Value per km2  
0                           306    47,678,404  

Question Hacks;

What is NumPy and how is it used in data analysis?

  • NumPy is a Python library used for math and data analysis. It provides efficient mathematical operations on arrays, such as algebra and graphing. It is commonly used in data analysis for array manipulation, indexing, sorting, and filtering.

What is Pandas and how is it used in data analysis?

  • Pandas is a Python library that has tools for data structures and analysis. It has objects for manipulating data tables and manipulating arrays. It is used in data analysis for data cleaning, merging, and visualization.

How is NunPy different than Pandas for data analysis?

  • NumPy is more geared towards mathematical numerical computations, and Pandas is more geared towards data manipulation and analysis. One is math, one is data analysis.

What is a DataFrame?

  • A Dataframe is data structure in Pandas that looks like a table or spreadsheet. It was rows and columns, holding data by column.

What are some common operations you can perform with NunPy?

  • With NumPy, you can calculate percentiles, average, standard deviation, and correlation.

How Can You Incorporate Either of these Data Analysis Tools (NunPy, Pandas) into your project?

  • I can use Pandas, along with Matplotlib, in my period tracker project, to provide a visual presentation of what the user's period patterns may look like. I can also use NumPy to make the calculations of average period length, and compare user periods with other users.