How To Evaluate and Reuse the ML model in OAC

by Apr 1, 2020Article, Video

Introducing the second instalment of our series of focused data science videos. This series aims to help you get a greater understanding of the Machine Learning functionality in Oracle Analytics Cloud. Part 2: How To Evaluate and Reuse the ML model in OAC

If you have any questions, don’t hesitate to get in touch

Mayank Jain

Mayank Jain

Data Analytics Analyst

About the Author

Mayank Jain is a data analytics analyst at Vertice cloud. Prior to his role Mayank has over 4 years of experience in IT industry and currently working on the oracle analytics cloud, autonomous data warehouse and machine learning. Mayank has a technical expertise in the field of data modelling, data mining and predictive/descriptive analytics. He holds a M.Sc. in data analytics with honours from National college of Ireland, Ireland and B. Tech in Electronics & communication engineering from RTU university, India. He has also carried out his research on transliteration of word phonemes of different languages by using machine learning approach which has been accredited by quality and qualification of Ireland (QQI). 

Paritosh Gupta

Paritosh Gupta

Data Analytics Analyst

About the Author

Paritosh Gupta is Data Analytics Analyst at Vertice. He has 5+ years of experience in Data domain working with Data Extraction, Pre-processing, Data Analysis, ETL, developing and supporting reconciliation systems. He holds Master’s Degree in Data Analytics from Dublin City University and Bachelor of Engineering in Computer Science from Rajiv Gandhi Technical University.

Sign Up For Our Newsletter

* indicates required

Please select all the ways you would like to hear from Vertice.

You can unsubscribe at any time by clicking the link in the footer of our emails. For information about our privacy practices, please visit our website.

We use Mailchimp as our marketing platform. By clicking below to subscribe, you acknowledge that your information will be transferred to Mailchimp for processing. Learn more about Mailchimp's privacy practices here.