CompTIA DY0-001 Exam Information and Actual Questions

  • Exam Code/Number: DY0-001
  • Exam Name/Title: CompTIA DataAI Certification Exam
  • Certification Provider: CompTIA
  • Corresponding Certification: CompTIA Data+
  • Exam Questions: 85
  • Updated On: Jul 13, 2026

DY0-001
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CompTIA
DY0-001 Exam
CompTIA DataAI Certification Exam

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CompTIA DY0-001 Exam Overview:

Certification Vendor:CompTIA
Exam Name:CompTIA DataAI Certification Exam
Exam Number:DY0-001
Exam Price:$529 USD
Real Exam Qty:Up to 90
Certificate Validity Period:Usually 3 years
Available Languages:English, Japanese
Exam Format:Multiple Choice, Performance-Based
Exam Duration:165 minutes
Passing Score:Pass/Fail (No scaled score)
Related Certifications:CompTIA DataAI (formerly DataX)
Sample Questions:CompTIA DY0-001 Sample Questions
Exam Way:Available at Pearson VUE testing centers or via online proctoring (OnVUE).
Pre Condition:5+ years of experience in data science or a similar role recommended.
Official Syllabus URL:https://www.comptia.org/en-us/certifications/dataai

CompTIA DY0-001 Exam Syllabus Topics:

TopicDetails
Topic 1
  • Specialized Applications of Data Science: This section of the exam measures skills of a Senior Data Analyst and introduces advanced topics like constrained optimization, reinforcement learning, and edge computing. It covers natural language processing fundamentals such as text tokenization, embeddings, sentiment analysis, and LLMs. Candidates also explore computer vision tasks like object detection and segmentation, and are assessed on their understanding of graph theory, anomaly detection, heuristics, and multimodal machine learning, showing how data science extends across multiple domains and applications.
Topic 2
  • Mathematics and Statistics: This section of the exam measures skills of a Data Scientist and covers the application of various statistical techniques used in data science, such as hypothesis testing, regression metrics, and probability functions. It also evaluates understanding of statistical distributions, types of data missingness, and probability models. Candidates are expected to understand essential linear algebra and calculus concepts relevant to data manipulation and analysis, as well as compare time-based models like ARIMA and longitudinal studies used for forecasting and causal inference.
Topic 3
  • Machine Learning: This section of the exam measures skills of a Machine Learning Engineer and covers foundational ML concepts such as overfitting, feature selection, and ensemble models. It includes supervised learning algorithms, tree-based methods, and regression techniques. The domain introduces deep learning frameworks and architectures like CNNs, RNNs, and transformers, along with optimization methods. It also addresses unsupervised learning, dimensionality reduction, and clustering models, helping candidates understand the wide range of ML applications and techniques used in modern analytics.
Topic 4
  • Operations and Processes: This section of the exam measures skills of an AI
  • ML Operations Specialist and evaluates understanding of data ingestion methods, pipeline orchestration, data cleaning, and version control in the data science workflow. Candidates are expected to understand infrastructure needs for various data types and formats, manage clean code practices, and follow documentation standards. The section also explores DevOps and MLOps concepts, including continuous deployment, model performance monitoring, and deployment across environments like cloud, containers, and edge systems.
Topic 5
  • Modeling, Analysis, and Outcomes: This section of the exam measures skills of a Data Science Consultant and focuses on exploratory data analysis, feature identification, and visualization techniques to interpret object behavior and relationships. It explores data quality issues, data enrichment practices like feature engineering and transformation, and model design processes including iterations and performance assessments. Candidates are also evaluated on their ability to justify model selections through experiment outcomes and communicate insights effectively to diverse business audiences using appropriate visualization tools.

Reference: https://www.comptia.org/en-us/certifications/dataai/



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