Google Data Engineer GCP-DE Certified Exam Dumps

GCP-DE Exam Dumps

Google Data Engineer GCP-DE real exam questions and online practice test engine by FreeCram. Try GCP-DE exam questions for free. You can also download a free demo of the GCP-DE exam PDF version.

Google's GCP-DE actual exam materials brought to you by FreeCram group of Google certification experts.
View all GCP-DE actual exam questions & answers and explanations for free.

If you like our product, you can request full access to all the latest Google Data Engineer GCP-DE exam premium questions.

Certification Provider: Google
Exam Code / Number: GCP-DE
Exam Name: Data Engineer
Exam Questions: 77
Last Updated: Jul 04, 2026
Corresponding Certification: Google Cloud Certified

Go To GCP-DE Questions

(10 Up Votes)

Google GCP-DE Exam Syllabus Topics:

SectionWeightObjectives
Topic 1: Designing data processing systems22%-27%- Designing data pipelines
  • 1. Optimize pipeline performance and cost
  • 2. Design orchestration workflows
  • 3. Build ETL and ELT pipelines
- Designing for data ingestion
  • 1. Select appropriate storage systems
  • 2. Design batch and streaming ingestion solutions
  • 3. Design scalable and reliable ingestion architecture
Topic 2: Managing and optimizing solutions20%-25%- Managing resources and costs
  • 1. Control operational costs
  • 2. Tune query and pipeline performance
  • 3. Optimize storage and compute usage
- Reliability and scalability
  • 1. Implement disaster recovery strategies
  • 2. Scale data workloads efficiently
  • 3. Design highly available systems
Topic 3: Ensuring solution quality20%-25%- Data quality management
  • 1. Maintain metadata and lineage
  • 2. Validate and clean data
  • 3. Implement data governance
- Security and compliance
  • 1. Implement encryption and compliance controls
  • 2. Protect sensitive data
  • 3. Manage IAM and access control
Topic 4: Building and operationalizing data processing systems28%-33%- Building data processing systems
  • 1. Implement batch processing systems
  • 2. Use BigQuery, Dataflow, Pub/Sub, Dataproc and related services
  • 3. Implement streaming data systems
- Operationalizing systems
  • 1. Manage logging and alerting
  • 2. Monitor data pipelines and workloads
  • 3. Implement fault tolerance and recovery


0
0
0
10