YoVDO

Follow a Machine Learning Workflow

Offered By: CertNexus via Coursera

Tags

Machine Learning Courses Data Analysis Courses Project Management Courses Python Courses Model Training Courses

Course Description

Overview

Machine learning is not just a single task or even a small group of tasks; it is an entire process, one that practitioners must follow from beginning to end. It is this process—also called a workflow—that enables the organization to get the most useful results out of their machine learning technologies. No matter what form the final product or service takes, leveraging the workflow is key to the success of the business's AI solution. This second course within the Certified Artificial Intelligence Practitioner (CAIP) professional certificate explores each step along the machine learning workflow, from problem formulation all the way to model presentation and deployment. The overall workflow was introduced in the previous course, but now you'll take a deeper dive into each of the important tasks that make up the workflow, including two of the most hands-on tasks: data analysis and model training. You'll also learn about how machine learning tasks can be automated, ensuring that the workflow can recur as needed, like most important business processes. Ultimately, this course provides a practical framework upon which you'll build many more machine learning models in the remaining courses.

Syllabus

  • Collect the Dataset
    • The previous course in this specialization provided an overview of the machine learning workflow. Now, in this course, you'll dive deeper and actually go through the process step by step. In this first module, you'll begin by collecting the data that will be used as input to your machine learning projects.
  • Analyze the Dataset
    • You've formulated a machine learning problem, and have identified a potential dataset to use. Now you'll analyze the dataset to develop ideas on how to make the best use of the information it contains as you prepare to create your initial machine learning model.
  • Prepare the Dataset
    • Before a dataset can be used with a machine learning model, there are typically various tasks you need to perform to ensure that data is an optimal state. In this module, you'll use various methods to prepare the data.
  • Set Up and Train a Model
    • To set up a machine learning model in an environment like Python, you must determine the algorithm that will produce the results you're after, and then use it to create a model based on your training data. After the initial setup, it may take multiple tests and refinements to produce a model that meets your requirements.
  • Finalize the Model
    • Now that you've finished training and tuning a machine learning model, you can turn your attention to deploying it. This may amount to producing a report based on your findings, or it may be much more involved, particularly if it will be incorporated into repeatable processes or become part of a software solution. In either case, finalization is the crucial conclusion to the machine learning workflow.
  • Apply What You've Learned
    • You'll work on a project in which you'll apply your knowledge of the material in this course to a practical scenario.

Taught by

Renée Cummings

Related Courses

Design Computing: 3D Modeling in Rhinoceros with Python/Rhinoscript
University of Michigan via Coursera
A Practical Introduction to Test-Driven Development
LearnQuest via Coursera
FinTech for Finance and Business Leaders
ACCA via edX
Access Bioinformatics Databases with Biopython
Coursera Project Network via Coursera
Accounting Data Analytics
University of Illinois at Urbana-Champaign via Coursera