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April 18, 2023

15:00 UTC   Start Times Around the World

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Description

OML Services Batch Scoring on Autonomous Database
Join us for this Office Hours session on Oracle Machine Learning Services (OML Services) batch scoring. OML Services on Oracle Autonomous Database now supports batch scoring for in-database models using REST endpoints. Users can build in-database models that reside in your database schema, where deployment is immediate via SQL queries for both batch and real-time scoring applications. With OML Services, those same models can now be deployed through REST endpoints hosted in Oracle Autonomous Database to enable batch scoring. This session includes a demonstration using a REST client with Oracle Autonomous Database.

Your Experts

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    Miles Novotny

    Miles Novotny

    I am a Solution Engineer working out of the North America Specialist Hub who specializes in analytics solutions and has a strong interest in machine learning.
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    Sherry LaMonica

    Sherry LaMonica

    Sherry is a member of the Oracle Machine Learning Product Management team. She has 20 years of software experience focused on enabling the commercial use of the open-source data analysis software systems R and Python for data science and machine learning projects. She has worked with customers in fields as diverse as as pharmaceutical research, financial analysis, manufacturing and healthcare IT.
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    Mark Hornick

    Mark Hornick   

    Mark Hornick is the Senior Director of Product Management for the Oracle Machine Learning (OML) family of products. He leads the OML PM team and works closely with Product Development on product strategy, positioning, and evangelization. Mark has over 20 years of experience with integrating and leveraging machine learning with Oracle technologies, and working with internal and external customers in applying Oracle’s machine learning technologies for scalable and deployable data science projects. Mark is Oracle’s representative to the R Consortium and an Oracle adviser and founding member of the Analytics and Data Oracle User Community. He holds a bachelor's degree from Rutgers University and a master's degree from Brown University, both in Computer Science.
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