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Data Science Methodologies: Making Business Sense/ with Neelam Dwivedi.

LinkedIn Learning Available online

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Format:
Video
Author/Creator:
Dwivedi, Neelam, speaker.
Contributor:
linkedin.com (Firm)
Language:
English
Genre:
Instructional films.
Educational films.
Video recordings.
Physical Description:
1 online resource
polychrome
Place of Publication:
Carpenteria, CA: linkedinchescom, 2021.
System Details:
Latest version of the following browsers: Chrome, Safari, Firefox, or Internet Explorer. Adobe Flash Player Pluginches JavaScript and cookies must be enabled. A broadband Internet connection.
Summary:
Learn how to take a data science project through the entire cycle of model development and deployment.
There is an increasing recognition that data science needs to go beyond small-scale experimentation to a large-scale implementation. In this course, Neelam Dwivedi brings software engineering and data mining methodologies to data scientists, then applies these ideas by taking a simple business need through an entire life cycle-hosting a model, consuming it in a web application, and setting up its CI/CD pipeline. Neelam begins by explaining the methodologies used in the course and how they are combined. She shows you where to begin in developing architecture and deploying a model, then explains how larger web applications may consume the model as a service. Neelam covers how to stage your model and the app, as well as how to plan ahead with an overall roadmap. She concludes with thoughts on how to further applications of data science methodologies.
Participant:
Presenter: Neelam Dwivedi
Notes:
4/02/2021
Access Restriction:
Restricted for use by site license.

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