Found 48 repositories(showing 30)
abhilashvijayannair
For this project, you will assume the role of a Data Scientist / Data Analyst working for a new startup investment firm that helps customers invest their money in stocks. Your job is to extract financial data like historical share price and quarterly revenue reportings from various sources using Python libraries and webscraping on popular stocks. After collecting this data you will visualize it in a dashboard to identify patterns or trends. The stocks we will work with are Tesla, Amazon, AMD, and GameStop. Dashboard Analytics Displayed A dashboard often provides a view of key performance indicators in a clear way. Analyzing a data set and extracting key performance indicators will be practiced. Prompts will be used to support learning in accessing and displaying data in dashboards. Learning how to display key performance indicators on a dashboard will be included in this assignment. We will be using Plotly in this course for data visualization and is not a requirement to take this course. Watson Studio In the Python for Data Science, AI and Development course you utilized Skills Network Labs for hands-on labs. For this project you will use Skills Network Labs and Watson Studio. Skills Network Labs is a sandbox environment for learning and completing labs in courses. Whereas Watson Studio, a component of IBM Cloud Pak for Data, is a suite of tools and a collaborative environment for data scientists, data analysts, AI and machine learning engineers and domain experts to develop and deploy your projects. Review criteria There are two hands-on labs on Extracting Stock Data and one assignment to complete. You will be judged by completing two quizzes and one peer review assignment. The quizzes will test you based on the output of the hands-on labs. In the peer review assignment you will share and take screen shots of the outcomes of your assignment.
bruno-freitas-pro
O repositório agrupa o código produzido durante o curso básico de Python da IBM, realizado no primeiro semestre de 2022.
Notebooks realizados no curso Python for Data Science, AI and Development do IBM.
The IBM Python for Data Science, AI & Development , this course provides a solid foundation in Python programming while emphasizing its applications in data analysis, AI model development, and software engineering.
No description available
HaileysArchives
No description available
andymaintain
No description available
IBM Python for applied data science
Malcolmpmhnp
No description available
salaudeen-ya
Contains the projects and lessons included in the IBM course of Python for Data Science, AI and Development
ahmedaliibrahim01
No description available
No description available
mirhassansajjad
No description available
No description available
SaatvikYadav12
Python jupiter notebook files for the course - Python for data science, AI and development offered by IBM on Coursera
No description available
jplamorte
Python for Data Science, AI, and Development by IBM
mfisher003
Python for Data Science, AI and Development - IBM course
Python for Data Science, AI and Development – IBM Certification
vwhang
IBM Watson | Python for Data Science, AI, and Development
lamkotipriyanka
For IBM Python Project for Data Science,AI and Development
Dixie1989
IBM Python for Data Science, AI & Development: Objects and Classes
Python for Data Science, AI & Development by IBM and Coursera
sejaldua
Python for AI, Data Science, and Development | Coursera x IBM
Dixie1989
IBM Python for Data Science, AI & Development: Write and Save Files in Python
AhmadTawil1
Python basics and tools for Data Science, AI, and development — IBM course content.
AnilGoutham49
Python for Data Science, AI and Development course offered by IBM on Coursera.
gonzaleschr
Documenting my progress in Python for Data Science, AI, and Development course by IBM
floresibarraestefania-hash
Exercises and projects from the course Python for Data Science, AI & Development (IBM/Coursera)
elvisthedataevang
Projects developed from studying the IBM Python for Data Science,AI and Development on Coursera.