×

IBM: Guided Project: Secure Analysis of a Credit Card Dataset V2

Add to wishlistAdded to wishlistRemoved from wishlist 0
Add to compare+
Duration

1 weeks

Pacing

Self-paced

Pricing

Free

IBM: Guided Project: Secure Analysis of a Credit Card Dataset V2
Category:

In this one-hour of hands-on guided project, you can easily learn how to analyze data using pandas, a popular Python library used for data analysis. This project will teach you how to analyze credit risk on a client dataset using the pandas library.

Add your review

About this course

One of the most commonly used tools in data science, pandas is a Python library used to load, process, and analyze datasets using SQL-like queries. Pandas offers several advantages, such as data representation, simpler lines of code, and the ability to handle large sets of data. A number of academic and commercial domains, including finance, economics, statistics, web analytics, and other entities, use pandas as part of their data analytics toolkit.
In this hands-on guided project, you will learn to perform preliminary data analysis and credit risk analysis on a credit card client dataset using the Python library pandas. You will learn how to import required libraries, explore datasets, analyze data, and visualize the dataset. By the end of this project, you will have learned the fundamentals of data analysis using pandas and developed job-ready skills.
You will be provided with access to a Cloud based-IDE which has all of the required software, including Python pandas, pre-installed. All you need is a recent version of a modern web browser to complete this project.

At a Glance:
Institution: IBM
Subject: Computer Science
Level: Intermediate
Prerequisites:
For this project, you will need:
Knowledge of Python
Access to a web browser
Language: English
Video Transcript: English

User Reviews

0.0 out of 5
0
0
0
0
0
Write a review

There are no reviews yet.

Be the first to review “IBM: Guided Project: Secure Analysis of a Credit Card Dataset V2”

Your email address will not be published. Required fields are marked *

IBM: Guided Project: Secure Analysis of a Credit Card Dataset V2
IBM: Guided Project: Secure Analysis of a Credit Card Dataset V2
Edcroma
Logo
Compare items
  • Total (0)
Compare
0
https://login.stikeselisabethmedan.ac.id/produtcs/
https://hakim.pa-bangil.go.id/
https://lowongan.mpi-indonesia.co.id/toto-slot/
https://cctv.sikkakab.go.id/
https://hakim.pa-bangil.go.id/products/
https://penerimaan.uinbanten.ac.id/
https://ssip.undar.ac.id/
https://putusan.pta-jakarta.go.id/
https://tekno88s.com/
https://majalah4dl.com/
https://nana16.shop/
https://thamuz12.shop/
https://dprd.sumbatimurkab.go.id/slot777/
https://dprd.sumbatimurkab.go.id/
https://cctv.sikkakab.go.id/slot-777/
https://hakim.pa-kuningan.go.id/
https://hakim.pa-kuningan.go.id/slot-gacor/
https://thamuz11.shop/
https://thamuz15.shop/
https://thamuz14.shop/
https://ppdb.smtimakassar.sch.id/
https://ppdb.smtimakassar.sch.id/slot-gacor/
slot777
slot dana
majalah4d
slot thailand
slot dana
rtp slot
toto slot
slot toto
toto4d
slot gacor
slot toto
toto slot
toto4d
slot gacor
tekno88
https://lowongan.mpi-indonesia.co.id/
https://thamuz13.shop/
https://www.alpha13.shop/
https://perpustakaan.smkpgri1mejayan.sch.id/
https://perpustakaan.smkpgri1mejayan.sch.id/toto-slot/
https://nana44.shop/
https://sadps.pa-negara.go.id/
https://sadps.pa-negara.go.id/slot-777/
https://peng.pn-baturaja.go.id/
https://portalkan.undar.ac.id/
https://portalkan.undar.ac.id/toto-slot/
https://penerimaan.ieu.ac.id/
https://sid.stikesbcm.ac.id/