Page 209 - AI_Ver_3.0_class_11
P. 209
ACCESS Name City Age Score
101 Naresh Gujarat 41 88.0
MODIFY 102 Aryan Chennai 28 79.0
103 Pawan Mumbai 33 01.0
Jaipur
ADD 104 Anirudh Gurgaon 34 35 80.0
Karan
68.0
105
SORT 106 Dinesh Delhi 31 61.0
FILTER
DELETE
You can install Pandas using pip. For installing Pandas, you need to open your terminal or command prompt and run
the following command:
pip install pandas
Pandas Library in Artificial Intelligence
The Pandas library plays a crucial role in Artificial Intelligence and data science workflows. It provides powerful and flexible
tools for data manipulation and analysis, which are essential for preparing and exploring datasets used in AI models.
Let us understand why and where we can use the Pandas library in Artificial Intelligence with the help of an example.
Consider a dataset containing information about student performance, including grades, attendance, extracurricular
activities, and demographic details. Pandas can be leveraged to import the dataset, compute statistical summaries, and
conduct in-depth analyses to understand the factors influencing academic success.
Pandas' powerful data manipulation capabilities enable educators and administrators to identify trends, correlations,
and patterns within the student body. By examining variables such as attendance rates, participation in extracurricular
activities, and socio-economic backgrounds, schools can gain insights into factors affecting student achievement and
tailor interventions to support student success.
Pandas provides powerful capabilities for data manipulation and aggregation by simplifying the execution of complex
analyses. These capabilities play a vital role in AI and data-driven decision-making, allowing businesses to derive
actionable insights from their data with ease.
Data Structure of Pandas
Pandas provides two primary data structures: Series and DataFrame, which are used to store and manipulate data
efficiently.
Series
Series represents a one-dimensional labelled array capable of holding various datatypes in a series (integer, float, string,
Python objects, etc.). Each element in a series has an index label, which can be used to access the elements. By default,
Series have numeric data labels starting from zero, with each value associated with an index label.
Index Data
0 Class 12
1 Class 11
2 Class 10
3 Class 9
4 Class 8
Python Programming 207

