Skip to Main Content

Oracle Machine Learning Office Hours

Free tips and training every month! Subscribe for reminders and more from Office Hours. FAQ

Header container

May 25, 2021

15:00 UTC   Start Times Around the World

Subscribe to be notified of changes to sessions and give us feedback!

Having trouble watching the video on this page? Open the video in your browser.


Hands-On Lab using Oracle Machine Learning AutoML UI on Autonomous Database
In this Hands on Lab, we experienced Oracle Machine Learning AutoML UI on Oracle Autonomous Database.

AutoML UI provides the features of OML Automated Machine Learning (AutoML) for algorithm selection, adaptive sampling, feature selection and hyperparameter tuning.

AutoML UI allows for an automatic creation of a OML4Py Notebook with content for the best tuned model and all hyperparameters chosen by AutoML for the model desired.

AutoML UI also deploys Models to OML Services with one click, which creates REST APIs for the native in-database OML models and makes them ready to score in real-time.

Sign up for this tour of OML AutoML UI, and we will distribute credentials for you to do the Live exercises using the environment during the Session.

Video Highlights:
00:33 Goals for the HOL Session
01:20 Expectations for the HOL Session
02:10 Agenda
03:35 Accessing the Live Labs Instance
09:55 Introduction to OML AutoML UI
15:38 Performance considerations for OML AutoML UI
17:38 OML expected Workflow
19:36 Preparing the Live Labs environment
21:30 Labs overview
22:47 Lab 1 - Access OML Notebooks and create your first model using OML AutoML UI
40:38 Lab 1 - Q&A
43:30 Lab 2 - Create an auto-generated OML Notebook from your first model
49:55 Lab 2 - Bonus Rounds - additional Prediction and Probabilities in OML4Py
54:37 Lab 3 - Deploy and AutoML UI model to REST API on OML Services
59:08 Lab 4 - Create a second Experiment with more models and Recall model metric
1:06:43 Lab 5 - Run AutoML using OML4Py as a comparison
1:14:59 Lab 6 - Bonus Section: Use Postman to access OML Services REST APIs to score the OML AutoML UI model deployments
1:16:38 Where to go from here?
1:17:37 Q&A

Your Experts

    Marcos Arancibia

    Marcos Arancibia   

    Marcos Arancibia is a Senior Principal Product Manager in the Oracle Autonomous Database team. He is charted with developing a comprehensive platform for enabling all customers and use cases to be successful on Autonomous Database, and working with developers to bring their Applications and workloads as well. Within Product Management he works to develop product strategy, roadmap prioritization, product positioning and product evangelization, working closely with the engineering teams in defining the product roadmap for Autonomous Database. He previously was a PM for Oracle Machine Learning, and before joining Oracle in 2010 he spent 13 years at SAS Institute Inc., from Country Manager in LAD to Regional Data Mining lead in the US. He holds a bachelor's degree with additional courses in the master's degree, both in Statistics from UNICAMP in Brazil. He has Certifications from Stanford on AI and Machine Learning, and from the University of Washington on Computational Neuroscience.
    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.
    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.

All Sessions