W7L149G  Creating, Testing, and Deploying Machine Learning Models with IBM Watson Studio

Duração:     7 Horas

Nível:           Intermédio

Audiência:   Business Analyst, Data Scientist

PRÓXIMAS SESSÕES
Início (AAAA-MM-DD) Fim (AAAA-MM-DD) Língua Preço
2023-11-10 2023-11-10 Português 1250 EUR 1409
2023-11-24 2023-11-24 Português 1250 EUR 1423
2023-12-08 2023-12-08 Português 1250 EUR 1437
2023-12-22 2023-12-22 Português 1250 EUR 1451
2024-01-19 2024-01-19 Português 1250 EUR 1479
2024-02-02 2024-02-02 Português 1250 EUR 1493
2024-02-16 2024-02-16 Português 1250 EUR 1507
2024-03-01 2024-03-01 Português 1250 EUR 1521
2024-03-15 2024-03-15 Português 1250 EUR 1535
2024-03-29 2024-03-29 Português 1250 EUR 1549
2024-04-12 2024-04-12 Português 1250 EUR 1563
2024-04-26 2024-04-26 Português 1250 EUR 1577
2024-05-10 2024-05-10 Português 1250 EUR 1591
2024-05-24 2024-05-24 Português 1250 EUR 1605
2024-06-07 2024-06-07 Português 1250 EUR 1619
2024-06-21 2024-06-21 Português 1250 EUR 1633
SÍNTESE

This course takes the data scientist (or business analyst) on a journey from the creation of several machine learning models to its deployment and testing. Various tools and services as well as programming and graphical user interfaces are used in the process. The course ends with the sharing of assets on GitHub and a brief discussion on governance and stewardship. 

PREREQUISITOS

The data scientists’ and business analysts’ prerequisite skills and knowledge include: 

  • Experience working in a browser  
  • Some experience writing and running Python programs 
  • Some experience with the Jupyter Notebook environment  
  • Some experience working with a graphical user interface (GUI) 
  • Knowledge of machine learning (regression, decision trees, and random forests) 
  • Some experience working with GitHub
  • Define a solution to a business problem using tools and frameworks from IBM Watson Studio 
  • Demonstrate how the AI lifecycle can be automated by building a rapid prototype using AutoAI 
  • Build, train, and deploy a machine learning model with the tools and services available in Watson Studio 
  • Implement GitHub Integration and team collaboration in Watson Studio
  • Introduction
  • Rapid prototyping with AutoAI
  • Creating, testing, and deploying machine learning models
  • Governance, integration, and collaboration