Oracle 1z0-1110-25 Exam Information and Actual Questions

  • Exam Code/Number: 1z0-1110-25
  • Exam Name/Title: Oracle Cloud Infrastructure 2025 Data Science Professional
  • Certification Provider: Oracle
  • Corresponding Certification: Oracle Cloud
  • Exam Questions: 160
  • Updated On: Jun 30, 2026

1z0-1110-25
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Oracle
1z0-1110-25 Exam
Oracle Cloud Infrastructure 2025 Data Science Professional

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Oracle 1z0-1110-25 Exam Overview:

Certification Vendor:Oracle
Exam Name:Oracle Cloud Infrastructure 2025 Data Science Professional
Exam Number:1Z0-1110-25
Real Exam Qty:50
Related Certifications:Oracle Cloud Infrastructure Certifications
Passing Score:68%
Exam Price:USD $245
Available Languages:English, Brazilian Portuguese, Spanish
Exam Format:Multiple Choice
Certificate Validity Period:2 years
Exam Duration:90 minutes
Sample Questions:Oracle 1z0-1110-25 Sample Questions
Exam Way:Online proctored or onsite test center
Pre Condition:Proficiency in Python; knowledge of ML libraries; 1+ year ML experience; 6+ months hands-on OCI experience; familiarity with cloud concepts
Official Syllabus URL:https://education.oracle.com/oracle-cloud-infrastructure-2025-certified-data-science-professional/trackp_OCI25DSOCP

Oracle 1z0-1110-25 Exam Syllabus Topics:

TopicDetails
Topic 1
  • OCI Data Science - Introduction & Configuration: This section of the exam measures the skills of Machine Learning Engineers and covers foundational concepts of Oracle Cloud Infrastructure (OCI) Data Science. It includes an overview of the platform, its architecture, and the capabilities offered by the Accelerated Data Science (ADS) SDK. It also addresses the initial configuration of tenancy and workspace setup to begin data science operations in OCI.
Topic 2
  • Apply MLOps Practices: This domain targets the skills of Cloud Data Scientists and focuses on applying MLOps within the OCI ecosystem. It covers the architecture of OCI MLOps, managing custom jobs, leveraging autoscaling for deployed models, monitoring, logging, and automating ML workflows using pipelines to ensure scalable and production-ready deployments.
Topic 3
  • Use Related OCI Services: This final section measures the competence of Machine Learning Engineers in utilizing OCI-integrated services to enhance data science capabilities. It includes creating Spark applications through OCI Data Flow, utilizing the OCI Open Data Service, and integrating other tools to optimize data handling and model execution workflows.
Topic 4
  • Implement End-to-End Machine Learning Lifecycle: This section evaluates the abilities of Machine Learning Engineers and includes an end-to-end walkthrough of the ML lifecycle within OCI. It involves data acquisition from various sources, data preparation, visualization, profiling, model building with open-source libraries, Oracle AutoML, model evaluation, interpretability with global and local explanations, and deployment using the model catalog.
Topic 5
  • Create and Manage Projects and Notebook Sessions: This part assesses the skills of Cloud Data Scientists and focuses on setting up and managing projects and notebook sessions within OCI Data Science. It also covers managing Conda environments, integrating OCI Vault for credentials, using Git-based repositories for source code control, and organizing your development environment to support streamlined collaboration and reproducibility.

Reference: https://education.oracle.com/oracle-cloud-infrastructure-2024-data-science-professional/pexam_1Z0-1110-25



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