• Post category:StudyBullet-20
  • Reading time:3 mins read


Google Cloud (GCP) Platform: GCP Essentials, Cloud Computing, GCP Associate Cloud Engineer, Professional Cloud Architect

Why take this course?

您提供的内容是一个结构化的学习路径,涵盖了Google Cloud Platform (GCP)的各个关键领域和实际操作。这个路径包括了从基础知识到高级应用、云迁移、成本优化以及灾难恢复等多个方面。以下是对您提供内容的分解和解释:

  1. Lab: Create DataProc Clusters: 创建DataProc集群,这是一个Spark服务的集合,用于在GCP上进行大数据处理。
  2. Access DataProc from Local/Cloud Machines: 访问DataProc集群,可以从本地计算机或云机器进行连接和使用。
  3. Run PySpark Jobs on DataProc: 在DataProc集群上运行PySpark作业,这是一个Python语言的API,用于与Spark交互。
  4. Provision DataProc Clusters with Command Line: 使用命令行工具(如gcloud)来配置和佩装DataProc集群。
  5. Configure DataProc Clusters with Text: 通过文本配置文件(如YAML或JSON)来管理和配置DataProc集群的设置。
  6. Pub/Sub for Data Streaming in Google Cloud: Pub/Sub是一个服务,用于在发布者和订阅者之间传输数据流。
  7. GCP Professional Cloud Architect: 探索Google Cloud专业云架构师的角色和责任,以及准备GCP专业云架构师考试的相关信息。
  8. Cloud Resource Manager: 管理GCP资源,包括项目的创建、标记、分配配额等。
  9. Concept of GCP Billing: 了解GCP的费用结构和如何监控和管理这些费用。
  10. Operations in GCP: 深入了解GCP的运维工具,如Cloud Logging、Cloud Monitoring和错误报告等。
  11. Big Data, Machine Learning, and Data Lifecycle: 探索Google Cloud的大数据服务,以及数据的整个生命周期管理。
  12. Planning Your Cloud Transition: 规划从传统基础设施到云的过渡,包括成本优化和应用程序架构。
  13. Migrating to Google Cloud: 详细了解如何计划和执行数据迁移到GCP。
  14. Resilient Cloud Solution Infrastructure: 设计能够在面临故障时保持高可用性和稳定性的云基础设施,包括灾难恢复策略。

这个路径是一个全面的指南,帮助您从零到英雄地掌握GCP的各个方面。它不仅适用于初学者,也适合希望深入了解或提升他们在GCP上的技能的专业人士。通过这些实验和练习,您可以确保对GCP平台有深刻的理解和实践经验。


Get Instant Notification of New Courses on our Telegram channel.

Note➛ Make sure your 𝐔𝐝𝐞𝐦𝐲 cart has only this course you're going to enroll it now, Remove all other courses from the 𝐔𝐝𝐞𝐦𝐲 cart before Enrolling!


Add-On Information:

  • Dive deep into Google Cloud’s core infrastructure, understanding its global reach, foundational services, and resource hierarchy.
  • Execute practical, project-centric labs that simulate real-world enterprise cloud deployments and operational scenarios.
  • Gain mastery over essential compute services like Compute Engine, Google Kubernetes Engine (GKE), and Cloud Run for diverse application hosting needs.
  • Design and implement robust, scalable networking solutions using Virtual Private Clouds (VPCs), Cloud Load Balancing, and various interconnect options.
  • Explore and utilize a wide array of storage solutions, from highly available Cloud Storage buckets to managed databases such as Cloud SQL, Cloud Spanner, and Firestore.
  • Construct end-to-end data processing pipelines using BigQuery for analytics, Dataflow for stream and batch processing, Dataproc, and Pub/Sub for event-driven architectures.
  • Integrate and operationalize Machine Learning services, leveraging pre-trained APIs (like Vision AI, Natural Language AI) and custom model deployment with Vertex AI.
  • Implement stringent security best practices, identity and access management (IAM) policies, and compliance measures across your GCP environments.
  • Learn to effectively monitor, log, and troubleshoot cloud resources using integrated tools such as Cloud Monitoring, Cloud Logging, and Cloud Trace.
  • Develop strategies for optimizing cloud resource usage and managing costs efficiently within Google Cloud environments through best practices and tools.
  • Automate infrastructure provisioning and configuration using Infrastructure as Code (IaC) tools like Terraform and Google Cloud Deployment Manager.
  • Understand the nuances of migrating on-premises applications and data to the Google Cloud Platform, including lift-and-shift and modernization strategies.
  • Build serverless applications and APIs with Cloud Functions, App Engine, and Cloud Run, focusing on scalability, efficiency, and reduced operational overhead.
  • Apply DevOps principles for continuous integration and continuous delivery (CI/CD) pipelines directly on GCP using Cloud Build and Artifact Registry.
  • Engage with interactive case studies that present complex architectural challenges and demonstrate their optimal GCP-based solutions and design patterns.
  • Cultivate a professional-grade understanding of Google Cloud architecture principles, service interdependencies, and best practices for resilient systems.
  • Master the deployment and management of containerized applications using GKE, including networking, storage, and scaling strategies for microservices.
  • Gain insights into advanced data analytics techniques, including warehousing, business intelligence, and real-time processing on GCP’s robust platforms.
  • PROS:
  • Offers unparalleled hands-on experience through numerous live projects, cementing theoretical knowledge with practical application.
  • Provides a holistic and in-depth view of the entire GCP ecosystem, catering to diverse professional specializations and career growth.
  • Structured to build expertise progressively, from foundational concepts to advanced architectural design and complex implementation challenges.
  • Taught by industry experts, sharing real-world insights, operational best practices, and effective strategies for optimal cloud utilization and problem-solving.
  • CONS:
  • The extensive scope and depth of topics, coupled with the project-centric approach, demand a significant time investment and a highly dedicated learning approach.
English
language
Found It Free? Share It Fast!