×

Hello! Tell us a little about yourself...

First name
Last name
Company
Number of Employees
By registering, you have read and agree to the Terms of Use and Privacy Policy.
Thank you!
Error - something went wrong!

How to Improve Your Analytic Data Architecture Maturity

September 15, 2020

Many organizations are immature when it comes to data use. The answer lies in delivering a greater level of insight from data, straight to the point of need. Enter: machine learning.

In this webinar, we will look at categories of organizational response to the challenge across strategy, architecture, modeling, processes, and ethics. Machine learning maturity levels tend to move in harmony across these categories. As a general principle of maturity models, you can’t skip levels in any category, nor can you advance in one category well beyond the others.

Vis-à-vis ML, attaining and retaining momentum up the model is paramount for success. You will ascend the model through concerted efforts delivering business wins utilizing progressive elements of the model, and thereby increasing your machine learning maturity. The model will evolve. No plateaus are comfortable for long.

With ML maturity markers, sequencing, and tactics, this webinar provides a plan for how to build analytic Data Architecture maturity in your organization.

Previous
Self-Promotion in Times of Change
Self-Promotion in Times of Change

A lively and informative panel discussion from female leaders and diversity advocates, to celebrate the pow...

Next
BEACON Japan 2020: データは分散管理へ。Looker を活用した次世代データパイプライン
BEACON Japan 2020: データは分散管理へ。Looker を活用した次世代データパイプライン

BEACON Japan 2020 セッション動画 DeNA のデータエンジニアは全社のデータ活用水準の向上に日々奮闘しています。その取り組みの一貫として、昨年度 BI プラットフォーム Looker を全社導...

Discover your data in a new way. See Looker in action.

Request a demo