参加 ログイン

Hazzam Nicole

メンバー加入日: 2021

Delivery Shadowing Earned 9月 8, 2022 EDT
Case Studies Earned 9月 8, 2022 EDT
Technology + Beyond the UI Earned 9月 7, 2022 EDT
Technology + Within the UI Earned 9月 7, 2022 EDT
Table Calculations, Pivots, and Visualizations Earned 9月 7, 2022 EDT
Building Reports in Looker Earned 9月 7, 2022 EDT
Liquid Templates and Parameters Earned 9月 7, 2022 EDT
Extends to Keep LookML DRY Earned 9月 5, 2022 EDT
Admin Roles and Folder Access Earned 9月 4, 2022 EDT
Version Control and Caching Earned 8月 29, 2022 EDT
The Modern Data Platform and LookML Earned 8月 29, 2022 EDT
Driving Data Culture and Designing Dashboards Earned 7月 19, 2022 EDT
Achieving Business Outcomes with Looker Earned 7月 18, 2022 EDT
Looker Explained Earned 7月 11, 2022 EDT
Smart Analytics, Machine Learning, and AI on Google Cloud - 日本語版 Earned 11月 30, 2021 EST
Google Cloud Big Data and Machine Learning Fundamentals - 日本語版 Earned 10月 30, 2021 EDT

In this course, you shadow a series of client meetings led by a Looker Professional Services Consultant.

詳細

By the end of this course, you should feel confident employing technical concepts to fulfill business requirements and be familiar with common complex design patterns.

詳細

In this course you will discover additional tools for your toolbox for working with complex deployments, building robust solutions, and delivering even more value.

詳細

Develop technical skills beyond LookML along with basic administration for optimizing Looker instances

詳細

This course reviews the processes for creating table calculations, pivots and visualizations

詳細

This course is designed for Looker users who want to create their own ad-hoc reports. It assumes experience of everything covered in our Get Started with Looker course (logging in, finding Looks & dashboards, adjusting filters, and sending data)

詳細

In this course you will discover Liquid, the templating language invented by Shopify and explore how it can be used in Looker to create dynamic links, content, formatting, and more.

詳細

Hands on course covering the main uses of extends and the three primary LookML objects extends are used on as well as some advanced usage of extends.

詳細

This course is designed to teach you about roles, permission sets and model sets. These are areas that are used together to manage what users can do and what they can see in Looker.

詳細

This course aims to introduce you to the basic concepts of Git: what it is and how it's used in Looker. You will also develop an in-depth knowledge of the caching process on the Looker platform, such as why they are used and why they work

詳細

This course provides an introduction to databases and summarized the differences in the main database technologies. This course will also introduce you to Looker and how Looker scales as a modern data platform. In the lessons, you will build and maintain standard Looker data models and establish the foundation necessary to learn Looker's more advanced features.

詳細

This course provides an iterative approach to plan, build, launch, and grow a modern, scalable, mature analytics ecosystem and data culture in an organization that consistently achieves established business outcomes. Users will also learn how to design and build a useful, easy-to-use dashboard in Looker. It assumes experience with everything covered in our Getting Started with Looker and Building Reports in Looker courses.

詳細

In this course, we’ll show you how organizations are aligning their BI strategy to most effectively achieve business outcomes with Looker. We'll follow four iterative steps: Plan, Build, Launch, Grow, and provide resources to take into your own services delivery to build Looker with the goal of achieving business outcomes.

詳細

By the end of this course, you should be able to articulate Looker's value propositions and what makes it different from other analytics tools in the market. You should also be able to explain how Looker works, and explain the standard components of successful service delivery.

詳細

ML をデータ パイプラインに組み込むと、データから分析情報を抽出する能力を向上できます。このコースでは、Google Cloud でデータ パイプラインに ML を含める複数の方法について説明します。カスタマイズがほとんど、またはまったく必要ない場合のために、このコースでは AutoML について説明します。よりカスタマイズされた ML 機能については、Notebooks と BigQuery の機械学習(BigQuery ML)を紹介します。また、Vertex AI を使用して ML ソリューションを本番環境に導入する方法も説明します。

詳細

このコースでは、データから AI へのライフサイクルをサポートする Google Cloud のビッグデータと ML のプロダクトやサービスを紹介します。また、Google Cloud で Vertex AI を使用してビッグデータ パイプラインと ML モデルを作成する際のプロセス、課題、メリットについて説明します。

詳細