参加 ログイン

D V Abhijna

メンバー加入日: 2022

ダイヤモンド リーグ

48005 ポイント
Google Cloud によるデータ トランスフォーメーションの探求 Earned 1月 27, 2025 EST
Microsoft SQL Server to Cloud SQL Earned 1月 27, 2025 EST
Google Cloud における復元力のあるストリーミング分析システムの構築 Earned 1月 27, 2025 EST
Google Cloud でのバッチデータ パイプラインの構築 Earned 1月 27, 2025 EST
Oracle to Cloud Spanner Earned 12月 10, 2024 EST
MySQL to Cloud Spanner Earned 12月 10, 2024 EST
Redshift to BigQuery Earned 12月 9, 2024 EST
Snowflake to BigQuery Migration Earned 12月 9, 2024 EST
Exploring and Preparing Your Data with BigQuery - 日本語版 Earned 12月 9, 2024 EST
Data Warehousing for Partners: Enable Google Cloud Customers Earned 12月 5, 2024 EST
Data Warehousing for Partners: Process Data with Dataflow Earned 12月 5, 2024 EST
Data Warehousing for Partners: Stream Data with Pub/Sub Earned 12月 5, 2024 EST
Data Warehousing for Partners: Streaming Analytics Earned 12月 5, 2024 EST
Data Warehousing for Partners: BigQuery Extended Capabilities Earned 12月 4, 2024 EST
Data Warehousing for Partners: Analyze Data with Looker Earned 12月 3, 2024 EST
Data Lake Modernization on Google Cloud: Intro to Data Lakes Earned 12月 2, 2024 EST
Data Lake Modernization on Google Cloud: Migrate Workflows Earned 12月 2, 2024 EST
Data Lake Modernization on Google Cloud: Data Governance Earned 12月 2, 2024 EST
Teradata to BigQuery Earned 11月 27, 2024 EST
BigQuery Migration Service Earned 11月 27, 2024 EST
BigQuery Fundamentals for Snowflake Professionals Earned 11月 26, 2024 EST
Data Warehousing for Partners: Data Warehouse Migration with BigQuery Earned 11月 26, 2024 EST
Data Warehousing for Partners: Migrate Data to BigQuery Earned 11月 25, 2024 EST
Oracle to BigQuery Migration Earned 11月 25, 2024 EST
Cloudera to Google Cloud Earned 6月 17, 2024 EDT
BigQuery Fundamentals for Redshift Professionals Earned 5月 17, 2024 EDT
ML オペレーション(MLOps): 概要 Earned 3月 4, 2024 EST
画像キャプション モデルの作成 Earned 3月 4, 2024 EST
Data Warehousing for Partners: Design in BigQuery Earned 2月 28, 2024 EST
BigQuery Fundamentals for Teradata Professionals Earned 2月 28, 2024 EST
Document AI Earned 2月 27, 2024 EST
Smart Analytics, Machine Learning, and AI on Google Cloud - 日本語版 Earned 2月 27, 2024 EST
責任ある AI: Google Cloud における AI に関する原則の適用 Earned 2月 27, 2024 EST
Virtual Agent Development in Dialogflow CX for Citizen Devs Earned 2月 27, 2024 EST
Virtual Agent Development in Dialogflow CX for Software Devs Earned 2月 23, 2024 EST
CCAI Operations and Implementation Earned 2月 21, 2024 EST
Virtual Agent Development in Dialogflow ES for Citizen Devs Earned 2月 20, 2024 EST
Virtual Agent Development in Dialogflow ES for Software Devs Earned 2月 19, 2024 EST
Contact Center AI: Conversational Design Fundamentals Earned 2月 19, 2024 EST
BI Reporting: Looker Visualization on BigQuery Earned 2月 19, 2024 EST
BigQuery Fundamentals for Oracle Professionals Earned 2月 16, 2024 EST
Analyzing and Visualizing Data the Google Way Earned 2月 13, 2024 EST
Data Warehousing for Partners: Cloud Data Fusion Pipelines Earned 10月 30, 2023 EDT
Data Warehousing for Partners: Process Data with Dataproc Earned 9月 24, 2023 EDT
Data Warehousing for Partners: Optimize in BigQuery Earned 9月 9, 2023 EDT
Google Cloud を使用したデータレイクとデータ ウェアハウスのモダナイゼーション Earned 9月 20, 2022 EDT
Analyzing and Visualizing Data in Looker - 日本語版 Earned 8月 28, 2022 EDT
Google Cloud Big Data and Machine Learning Fundamentals - 日本語版 Earned 8月 22, 2022 EDT

クラウド テクノロジーは組織に大きな価値をもたらします。クラウド テクノロジーの力をデータと組み合わせることで、その価値はさらに大きなものとなり、新しいカスタマー エクスペリエンスを提供できる可能性があります。「Google Cloud によるデータ トランスフォーメーションの探求」では、データが組織にもたらす価値と、Google Cloud でデータを有用かつアクセス可能なものにする方法を学習します。このコースは「クラウド デジタル リーダー」学習プログラムの一部で、個人が自分の役割において成長し、ビジネスの未来を構築することを目的としています。

詳細

This course aims to upskill Google Cloud partners to perform specific tasks of migrating data from Microsoft SQL Server to CloudSQL using the built-in replication capabilities of SQL Server. Sample data will be used during the migration. Learners will complete several labs that focus on the process of transferring schema, data, and related processes to corresponding Google Cloud products. One or more challenge labs will test the learner's understanding of the topics.

詳細

ストリーミングによって企業が事業運営に関するリアルタイムの指標を取得できるようになり、ストリーミング データの処理を行う機会が増えてきました。このコースでは、Google Cloud でストリーミング データ パイプラインを構築する方法について学習します。受信ストリーミング データの処理のために Pub/Sub について説明します。また、このコースでは、Dataflow を使用してストリーミング データの集計や変換を行う方法、処理済みのレコードを分析用に BigQuery や Bigtable に保存する方法についても説明します。さらに、Qwiklabs を使用して Google Cloud でストリーミング データ パイプラインのコンポーネントを構築する実践演習を行います。

詳細

通常、データ パイプラインは、「抽出、読み込み(EL)」、「抽出、読み込み、変換(ELT)」、「抽出、変換、読み込み(ETL)」のいずれかの考え方に分類できます。このコースでは、バッチデータではどの枠組みを、どのような場合に使用するのかについて説明します。本コースではさらに、BigQuery、Dataproc 上での Spark の実行、Cloud Data Fusion のパイプラインのグラフ、Dataflow でのサーバーレスのデータ処理など、データ変換用の複数の Google Cloud テクノロジーについて説明します。また、Qwiklabs を使用して Google Cloud でデータ パイプラインのコンポーネントを構築する実践演習を行います。

詳細

Migration from Oracle to Cloud Spanner using HarbourBridge. This course describes an example scenario that uses sample data during the migration. This process includes using HarbourBridge for Assessment, Schema Conversion, Schema Transformation, Data Migration, and supporting tools for data validation.

詳細

Migration from MySQL to Cloud Spanner using Dataflow that includes sample mock data and all necessary steps with initial assessment to validation including taking care of migrating users and grants.

詳細

This workload aims to upskill Google Cloud partners to perform specific tasks associated with priority workloads. Learners will perform the tasks for migrating data from AWS Redshift to BigQuery using BigQuery Data Transfer Service, which includes sample mock data. Learners will complete a challenge lab that focuses on the process of transferring both schema and data from a Redshift data warehouse to BigQuery.

詳細

This workload aims to upskill Google Cloud partners to perform specific tasks associated with priority workloads. Learners will perform the tasks of migrating data from Snowflake to BigQuery. Sample data will be used during the migration. Learners will complete several labs that focus on the process of transferring schema, data and related processes to corresponding Google Cloud products.There will be one or more challenge labs that will test the learners' understanding of the topics. "This learning path aims to upskill Google Cloud partners to perform specific tasks associated with priority workloads. Learners will perform the tasks of migrating data from Snowflake to BigQuery.

詳細

このコースでは、データ アナリストが共通して直面する課題と、その課題を Google Cloud のビッグデータ ツールを使用して解決する方法を取り上げます。その過程で SQL を学習しながら、BigQuery と Dataprep を使用してデータセットを分析し、変換する方法について理解を深めます。 これは「From Data to Insights with Google Cloud」シリーズの最初のコースです。このコースを修了したら、「Creating New BigQuery Datasets and Visualizing Insights」コースを受講してください。

詳細

This course discusses the key elements of Google's Data Warehouse solution portfolio and strategy.

詳細

This course continues to explore the implementation of data load and transformation pipelines for a BigQuery Data Warehouse using Dataflow.

詳細

This course explores how to implement a streaming analytics solution using Pub/Sub.

詳細

This course explores how to implement a streaming analytics solution using Dataflow and BigQuery.

詳細

This course explores the Geographic Information Systems (GIS), GIS Visualization, and machine learning enhancements to BigQuery.

詳細

This course explores how to leverage Looker to create data experiences and gain insights with modern business intelligence (BI) and reporting.

詳細

Welcome to Intro to Data Lakes, where we discuss how to create a scalable and secure data lake on Google Cloud that allows enterprises to ingest, store, process, and analyze any type or volume of full fidelity data.

詳細

Welcome to Migrate Workflows, where we discuss how to migrate Spark and Hadoop tasks and workflows to Google Cloud.

詳細

Welcome to Data Governance, where we discuss how to implement data governance on Google Cloud.

詳細

This workload aims to upskill Google Cloud partners to perform specific tasks associated with priority workloads. Learners will perform the tasks of Migration from Teradata to BigQuery using the Data Transfer Service and the Teradata TPT Export Utility. Sample Data will be used during both methods. Learners will complete a challenge lab that focuses on the process of transferring both schema, data and SQL from a Teradata data warehouse to BigQuery.

詳細

In this course, you explore the four components that make up the BigQuery Migration Service. They are Migration Assessment, SQL Translation, Data Transfer Service, and Data Validation. You will use each of these tools to perform a migration using to BigQuery.

詳細

This course covers BigQuery fundamentals for professionals who are familiar with SQL-based cloud data warehouses in Snowflake and want to begin working in BigQuery. Through interactive lecture content and hands-on labs, you learn how to provision resources, create and share data assets, ingest data, and optimize query performance in BigQuery. Drawing upon your knowledge of Snowflake, you also learn about similarities and differences between Snowflake and BigQuery to help you get started with data warehouses in BigQuery. After this course, you can continue your BigQuery journey by completing the skill badge quest titled Build and Optimize Data Warehouses with BigQuery.

詳細

In this course, you will receive technical training for Enterprise Data Warehouses solutions using BigQuery based on the best practices developed internally by Google’s technical sales and services organizations. The course will also provide guidance and training on key technical challenges that can arise when migrating existing Enterprise Data Warehouses and ETL pipelines to Google Cloud. You will get hands-on experience with real migration tasks, such as data migration, schema optimization, and SQL Query conversion and optimization. The course will also cover key aspects of ETL pipeline migration to Dataproc as well as using Pub/Sub, Dataflow, and Cloud Data Fusion, giving you hands-on experience using all of these tools for Data Warehouse ETL pipelines.

詳細

This course identifies best practices for migrating data warehouses to BigQuery and the key skills required to perform successful migration.

詳細

Perform a migration from Oracle to BigQuery using SQL Translation and DataFlow using Sample Data. Learners will complete a quiz that focuses on the process of transferring both schema and data from an Oracle enterprise data warehouse to BigQuery.

詳細

This workload aims to upskill Google Cloud partners to perform specific tasks associated with priority workloads. Learners will perform the tasks of migrating data from five products hosted on Cloudera or Hortonworks to corresponding Google Cloud services and hosted products. The migration solutions addressed will be: HDFS data to Google Cloud Dataproc and Cloud Storage Hive data to Cloud Dataproc and the Cloud Dataproc Metastore Hive data to Google Cloud BigQuery Impala data to Google Cloud BigQuery HBase to Google Cloud Bigtable Sample data will be used during all five migrations. Learners will complete several labs that focus on the process of transferring schema, data and related processes to corresponding Google Cloud products.There will be one or more challenge labs that will test the learners understanding of the topics.

詳細

This course covers BigQuery fundamentals for professionals who are familiar with SQL-based cloud data warehouses in Redshift and want to begin working in BigQuery. Through interactive lecture content and hands-on labs, you learn how to provision resources, create and share data assets, ingest data, and optimize query performance in BigQuery. Drawing upon your knowledge of Redshift, you also learn about similarities and differences between Redshift and BigQuery to help you get started with data warehouses in BigQuery. After this course, you can continue your BigQuery journey by completing the skill badge quest titled Build and Optimize Data Warehouses with BigQuery.

詳細

このコースでは、Google Cloud 上で本番環境の ML システムをデプロイ、評価、モニタリング、運用するための MLOps ツールとベスト プラクティスについて説明します。MLOps は、本番環境 ML システムのデプロイ、テスト、モニタリング、自動化に重点を置いた規範です。機械学習エンジニアリングの担当者は、ツールを活用して、デプロイしたモデルの継続的な改善と評価を行います。また、データ サイエンティストと協力して、あるいは自らがデータ サイエンティストとして、最も効果的なモデルを迅速かつ正確にデプロイできるようモデルを開発します。

詳細

このコースでは、ディープ ラーニングを使用して画像キャプション生成モデルを作成する方法について学習します。エンコーダやデコーダなどの画像キャプション生成モデルのさまざまなコンポーネントと、モデルをトレーニングして評価する方法を学びます。このコースを修了すると、独自の画像キャプション生成モデルを作成し、それを使用して画像のキャプションを生成できるようになります。

詳細

Welcome to Design in BigQuery, where we map Enterprise Data Warehouse concepts and components to BigQuery and Google data services with a focus on schema design.

詳細

This course covers BigQuery fundamentals for professionals who are familiar with SQL-based cloud data warehouses in Teradata and want to begin working in BigQuery. Through interactive lecture content and hands-on labs, you learn how to provision resources, create and share data assets, ingest data, and optimize query performance in BigQuery. Drawing upon your knowledge of Teradata, you also learn about similarities and differences between Teradata and BigQuery to help you get started with data warehouses in BigQuery. After this course, you can continue your BigQuery journey by completing the skill badge quest titled Build and Optimize Data Warehouses with BigQuery.

詳細

This course provides partners the skills required to scope, design and deploy Document AI solutions for enterprise customers utilizing use-cases from both the procurement and lending arenas.

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

企業における AI と ML の利用が拡大し続けるなか、責任を持ってそれを構築することの重要性も増しています。多くの企業にとっての課題は、責任ある AI と口で言うのは簡単でも、それを実践するのは難しいということです。このコースは、責任ある AI を組織で運用化する方法を学びたい方に最適です。 このコースでは、Google Cloud が責任ある AI を現在どのように運用化しているかを、ベスト プラクティスや教訓と併せて学び、責任ある AI に対する独自のアプローチを構築するためのフレームワークとして活用できるようにします。

詳細

Welcome to "Virtual Agent Development in Dialogflow CX for Citizen Devs", the second course in the "Customer Experiences with Contact Center AI" series. In this course, learn how to develop customer conversational solutions using Contact Center Artificial Intelligence (CCAI). In this course, you'll be introduced to adding voice (telephony) as a communication channel to your virtual agent conversations using Dialogflow CX.

詳細

Welcome to "Virtual Agent Development in Dialogflow CX for Software Devs", the third course in the "Customer Experiences with Contact Center AI" series. In this course, learn how to develop more customized customer conversational solutions using Contact Center Artificial Intelligence (CCAI). In this course, you'll be introduced to more advanced and customized handling for virtual agent conversations that need to look up and convey dynamic data, and methods available to you for testing your virtual agent and logs which can be useful for understanding issues that arise. This is an intermediate course, intended for learners with the following type of role: Software developers: Codes computer software in a programming language (e.g., C++, Python, Javascript) and often using an SDK/API.

詳細

Welcome to "CCAI Operations and Implementation", the fourth course in the "Customer Experiences with Contact Center AI" series. In this course, learn some best practices for integrating conversational solutions with your existing contact center software, establishing a framework for human agent assistance, and implementing solutions securely and at scale. In this course, you'll be introduced to Agent Assist and the technology it uses so you can delight your customers with the efficiencies and accuracy of services provided when customers require human agents, connectivity protocols, APIs, and platforms which you can use to create an integration between your virtual agent and the services already established for your business, Dialogflow's Environment Management tool for deployment of different versions of your virtual agent for various purposes, compliance measures and regulations you should be aware of when bringing your virtual agent to production, and you'll be given tips from virtua…

詳細

Welcome to "Virtual Agent Development in Dialogflow ES for Citizen Devs", the second course in the "Customer Experiences with Contact Center AI" series. In this course, learn how to develop customer conversational solutions using Contact Center Artificial Intelligence (CCAI). You will use Dialogflow ES to create virtual agents and test them using the Dialogflow ES simulator. This course also provides best practices on developing virtual agents. You will also be introduced to adding voice (telephony) as a communication channel to your virtual agent conversations. Through a combination of presentations, demos, and hands-on labs, participants learn how to create virtual agents. This is an intermediate course, intended for learners with the following types of roles: Conversational designers: Designs the user experience of a virtual assistant. Translates the brand's business requirements into natural dialog flows. Citizen developers: Creates new business applications fo…

詳細

Welcome to "CCAI Virtual Agent Development in Dialogflow ES for Software Developers", the third course in the "Customer Experiences with Contact Center AI" series. In this course, learn to use additional features of Dialogflow ES for your virtual agent, create a Firestore instance to store customer data, and implement cloud functions that access the data. With the ability to read and write customer data, learner’s virtual agents are conversationally dynamic and able to defer contact center volume from human agents. You'll be introduced to methods for testing your virtual agent and logs which can be useful for understanding issues that arise. Lastly, learn about connectivity protocols, APIs, and platforms for integrating your virtual agent with services already established for your business.

詳細

Welcome to "CCAI Conversational Design Fundamentals", the first course in the "Customer Experiences with Contact Center AI" series. In this course, learn how to design customer conversational solutions using Contact Center Artificial Intelligence (CCAI). You will be introduced to CCAI and its three pillars (Dialogflow, Agent Assist, and Insights), and the concepts behind conversational experiences and how the study of them influences the design of your virtual agent. After taking this course you will be prepared to take your virtual agent design to the next level of intelligent conversation.

詳細

This workload aims to upskill Google Cloud partners to perform specific tasks for modernization using LookML on BigQuery. A proof-of-concept will take learners through the process of creating LookML visualizations on BigQuery. During this course, learners will be guided specifically on how to write Looker modeling language, also known as LookML and create semantic data models, and learn how LookML constructs SQL queries against BigQuery. At a high level, this course will focus on basic LookML to create and access BigQuery objects, and optimize BigQuery objects with LookML.

詳細

This course covers BigQuery fundamentals for professionals who are familiar with SQL-based cloud data warehouses in Oracle and want to begin working in BigQuery. Through interactive lecture content and hands-on labs, you learn how to provision resources, create and share data assets, ingest data, and optimize query performance in BigQuery. Drawing upon your knowledge of Oracle, you also learn about similarities and differences between Oracle and BigQuery to help you get started with data warehouses in BigQuery. After this course, you can continue your BigQuery journey by completing the skill badge quest titled Build and Optimize Data Warehouses with BigQuery.

詳細

This learning experience guides you through the process of utilizing various data sources and multiple Google Cloud products (including BigQuery and Google Sheets using Connected Sheets) to analyze, visualize, and interpret data to answer specific questions and share insights with key decision makers.

詳細

This course continues to explore the implementation of data load and transformation pipelines for a BigQuery Data Warehouse using Cloud Data Fusion.

詳細

This course explores the implementation of data load and transformation pipelines for a BigQuery Data Warehouse using Dataproc.

詳細

Welcome to Optimize in BigQuery, where we map Enterprise Data Warehouse concepts and components to BigQuery and Google data services with a focus on optimization.

詳細

すべてのデータ パイプラインには、データレイクとデータ ウェアハウスという 2 つの主要コンポーネントがあります。このコースでは、各ストレージ タイプのユースケースを紹介し、Google Cloud で利用可能なデータレイクとデータ ウェアハウスのソリューションを技術的に詳しく説明します。また、データ エンジニアの役割や、効果的なデータ パイプラインが事業運営にもたらすメリットについて確認し、クラウド環境でデータ エンジニアリングを行うべき理由を説明します。 これは「Data Engineering on Google Cloud」シリーズの最初のコースです。このコースを修了したら、「Google Cloud でのバッチデータ パイプラインの構築」コースに登録してください。

詳細

このコースでは、これまで主に SQL のデベロッパーやアナリストが行っていたようなデータの探索や分析を Looker で実施する方法について学びます。このコースを修了すると、Looker の最新の分析プラットフォームを活用して、組織の Looker インスタンスにおける関連性の高いコンテンツの検索と探索、データに関する問い合わせ、必要に応じた新しい指標の作成、データドリブンな意思決定を促進するためのビジュアリゼーションとダッシュボードの作成や共有を行えるようになります。

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