YoVDO

Google Cloud Certified Professional Data Engineer

Offered By: Udemy

Tags

Google Cloud Platform (GCP) Courses Machine Learning Courses Data Engineering Courses Scalability Courses Data Migration Courses Data Pipelines Courses

Course Description

Overview

Theory, Hand-ons and 252 Questions, Answers with Explanations. All Hands-Ons in 1-Click Copy-Paste Style. PDF Downloads

What you'll learn:
  • Designing data processing systems
  • Building and operationalizing data processing systems
  • Operationalizing machine learning models
  • Ensuring solution quality
  • Designing data pipelines
  • Designing a data processing solution
  • Migrating data warehousing and data processing
  • Building and operationalizing storage systems
  • Building and operationalizing pipelines
  • Building and operationalizing processing infrastructure
  • Leveraging pre-built ML models as a service
  • Deploying an ML pipeline
  • Measuring, monitoring, and troubleshooting machine learning models
  • Designing for security and compliance
  • Ensuring scalability and efficiency
  • Ensuring reliability and fidelity
  • Ensuring flexibility and portability

Designing data processing systems

Selecting the appropriate storage technologies. Considerations include:

● Mapping storage systems to business requirements

● Data modeling

● Trade-offs involving latency, throughput, transactions

● Distributed systems

● Schema design

Designing data pipelines. Considerations include:

● Data publishing and visualization (e.g., BigQuery)

● Batch and streaming data (e.g., Dataflow, Dataproc, Apache Beam, Apache Spark and Hadoop ecosystem, Pub/Sub, Apache Kafka)

● Online (interactive) vs. batch predictions

● Job automation and orchestration (e.g., Cloud Composer)

Designing a data processing solution. Considerations include:

● Choice of infrastructure

● System availability and fault tolerance

● Use of distributed systems

● Capacity planning

● Hybrid cloud and edge computing

● Architecture options (e.g., message brokers, message queues, middleware, service-oriented architecture, serverless functions)

● At least once, in-order, and exactly once, etc., event processing

Migrating data warehousing and data processing. Considerations include:

● Awareness of current state and how to migrate a design to a future state

● Migrating from on-premises to cloud (Data Transfer Service, Transfer Appliance, Cloud Networking)

● Validating a migration

Building and operationalizing data processing systems

Building and operationalizing storage systems. Considerations include:

● Effective use of managed services (Cloud Bigtable, Cloud Spanner, Cloud SQL, BigQuery, Cloud Storage, Datastore, Memorystore)

● Storage costs and performance

● Life cycle management of data

Building and operationalizing pipelines. Considerations include:

● Data cleansing

● Batch and streaming

● Transformation

● Data acquisition and import

● Integrating with new data sources

Building and operationalizing processing infrastructure. Considerations include:

● Provisioning resources

● Monitoring pipelines

● Adjusting pipelines

● Testing and quality control

Operationalizing machine learning models

Leveraging pre-built ML models as a service. Considerations include:

● ML APIs (e.g., Vision API, Speech API)

● Customizing ML APIs (e.g., AutoML Vision, Auto ML text)

● Conversational experiences (e.g., Dialogflow)

Deploying an ML pipeline. Considerations include:

● Ingesting appropriate data

● Retraining of machine learning models (AI Platform Prediction and Training, BigQuery ML, Kubeflow, Spark ML)

● Continuous evaluation

Choosing the appropriate training and serving infrastructure. Considerations include:

● Distributed vs. single machine

● Use of edge compute

● Hardware accelerators (e.g., GPU, TPU)

Measuring, monitoring, and troubleshooting machine learning models. Considerations include:

● Machine learning terminology (e.g., features, labels, models, regression, classification, recommendation, supervised and unsupervised learning, evaluation metrics)

● Impact of dependencies of machine learning models

● Common sources of error (e.g., assumptions about data)

Ensuring solution quality

Designing for security and compliance. Considerations include:

● Identity and access management (e.g., Cloud IAM)

● Data security (encryption, key management)

● Ensuring privacy (e.g., Data Loss Prevention API)

● Legal compliance (e.g., Health Insurance Portability and Accountability Act (HIPAA), Children's Online Privacy Protection Act (COPPA), FedRAMP, General Data Protection Regulation (GDPR))

Ensuring scalability and efficiency. Considerations include:

● Building and running test suites

● Pipeline monitoring (e.g., Cloud Monitoring)

● Assessing, troubleshooting, and improving data representations and data processing infrastructure

● Resizing and autoscaling resources

Ensuring reliability and fidelity. Considerations include:

● Performing data preparation and quality control (e.g., Dataprep)

● Verification and monitoring

● Planning, executing, and stress testing data recovery (fault tolerance, rerunning failed jobs, performing retrospective re-analysis)

● Choosing between ACID, idempotent, eventually consistent requirements

Ensuring flexibility and portability. Considerations include:

● Mapping to current and future business requirements

● Designing for data and application portability (e.g., multicloud, data residency requirements)

● Data staging, cataloging, and discovery


Taught by

Deepak Dubey

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