Loading Events

« All Events

  • This event has passed.

You’re ready for Machine Learning. But is your data?

August 27 @ 12:30 pm - 1:30 pm

Data challenges are one of the biggest blockers to Machine Learning (ML). So what are those challenges, and how can we overcome them?

About this event

The data that powers Machine Learning (ML) is as important as the models themselves. ML algorithms learn from data; finding relationships, making decisions from the training data they’re given. The better the training data is, the better the model performs. However, data requirements for ML are very different to those for traditional business operations, and doing ML well requires that you understand the difference. .

Join us on Friday 27 August at 12.30pm when DiUS Machine Learning Leads, Nigel Hooke and Nabi Rezvani, will outline how to measure data quality and readiness for ML. They will also outline some common data readiness challenges and how to build the necessary data infrastructure, including:

  • Data needed for ML training models
  • Data infrastructure and governance
  • Patterns/architecture needed

Speakers


		You're ready for Machine Learning. But is your data? image

Details

Date:
August 27
Time:
12:30 pm - 1:30 pm
Event Category:
Event Tags:
View Event Website

Venue

Online

Organiser

DiUS
View Organiser Website
Want to know more about how DiUS can help you?

Offices

Melbourne

Level 3, 31 Queen St
Melbourne, Victoria, 3000
Phone: 03 9008 5400

Sydney
Level 2, 50 York St
Sydney, NSW, 2000
Phone: 02 8014 6640

DiUS wishes to acknowledge the Traditional Custodians of the lands on which we work and gather at both our Melbourne and Sydney offices. We pay respect to Elders past, present and emerging and celebrate the diversity of Aboriginal peoples and their ongoing cultures and connections to the lands and waters of Australia.

Relay Newsletter

Sign up to receive the latest news, insights and case studies from DiUS straight into your inbox.

Subscribe

* indicates required

© 2021 DiUS®. All rights reserved.

Privacy  |  Terms