Course Information

  • Sessions 5 days
  • Duration 37.5 hrs
  • Level Beginner
  • Assessment NA

Venue

12 Woodlands Square #07-85/86/87 Woods Square Tower 1, Singapore 737715. 5 mins walk from Woodlands (NS9) MRT station.

The venue is disabled-friendly.

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Certification

  • Certificate of Completion from Tertiary Courses - Upon meeting at least 75% attendance and passing the assessment(s), participants will receive a Certificate of Completion from Tertiary Courses.

CompTIA Data+ Training

Course Code: C923

What's This Course About

This comprehensive CompTIA Data+ Exam Prep course covers the full spectrum of data analytics, providing you with the knowledge and skills needed to excel in the exam and your career. The course is structured around key topics including data concepts and environments, where you’ll learn to identify basic concepts, understand data systems, and compare data structures. Delve into data mining with hands-on practice in data integration, cleansing, and manipulation techniques, crucial for optimizing and analyzing data effectively.

Further, you’ll explore advanced data analysis methods, applying descriptive statistics and key analysis techniques to derive meaningful insights. The course also emphasizes the importance of data visualization, equipping you with the skills to design reports and dashboards that communicate business requirements clearly. Finally, gain a strong foundation in data governance, quality control, and master data management, ensuring that you can manage data with integrity and compliance. This course is ideal for professionals aiming to validate their expertise and advance their careers in data analytics

Bonus: Free Practice Exams

Get exam-ready on our Practice Exam Portal — train in realistic Practice Mode and timed Exam Mode, then retake them as many times as you like before the real exam.

Start Practising →

Funding Options

No funding is available for this course

For WSQ funding, please checkout the details at WSQ - CompTIA Data+ Training

Course Fee

$1,500.00 (GST-exclusive)
$1,635.00 (GST-inclusive)

Course Date

Course Time

* Required Fields

Additional Note

Please bring your own laptop for hands-on training. If you don't have laptop, we can provide spare laptop for training use.

Post-Course Support

  • We provide free consultation related to the subject matter after the course.
  • Please email your queries to enquiry@tertiaryinfotech.com and we will forward your queries to the subject matter experts.

Cancellation & Reschedule Policy

  • You can register your interest without upfront payment. There is no penalty for withdrawal of the course before the class commences.
  • We reserve the right to cancel or re-schedule the course due to unforeseen circumstances. If the course is cancelled, we will refund 100% for any paid amount.
  • Note the venue of the training is subject to changes due to availability of the classroom.

Course Details

Course Details

What You'll Learn

This course prepares you for the DA0-002 certification exam, covering all official exam domains and their approximate weightings:

Domain 1 Data Concepts and Environments (20%)

  • Explain data concepts: database types (relational/non-relational), file extensions (.csv, .xlsx, .json, .txt, .jpg, .dat), data structures (structured/semi-structured/unstructured, tables, schema, dimensional tables), and data types (string, numeric, datetime, spatial, boolean, large objects, GUID/UUID)
  • Identify types of data sources: databases, APIs, website data, files, logs, and data repositories (data lakes, lakehouses, marts, silos, warehouses)
  • Identify infrastructure concepts: cloud providers (AWS, Azure, Google), cloud/on-prem models (private, public, hybrid), storage types (object, file, local, shared, block), and containerization
  • Identify common data analysis tools: coding environments/IDEs, BI software (Tableau, Power BI, Looker), packages/libraries (pandas, tidyverse, Anaconda), programming languages (SAS, Python, R, Scala), and DBMS tools (SQL Server Management Studio, MySQL Workbench, MongoDB Compass, DBeaver, Toad, Azure Data Studio)
  • Identify artificial intelligence (AI) concepts: generative AI/LLMs, foundational models, deep learning, natural language processing (NLP), and robotic process automation (RPA) including automated reporting

Domain 2 Data Acquisition and Preparation (22%)

  • Given a scenario, use data acquisition methods: data integration, querying (join, concatenate, filter, union, grouping, aggregate, nested queries), basic query optimization (indexing, parameterization, subsets, temporary tables), ETL/ELT, and data collection (surveying, sampling)
  • Given a scenario, perform data exploration to identify possible inconsistencies with a data set: missing values, duplication, redundancy, outliers, completeness, and validation
  • Given a scenario, perform appropriate data transformation and cleansing techniques: string manipulation (RegEx), conversion, clustering/binning, augmentation, exploding, scaling, standardization, imputation, parsing, merging, appending, derived variables/calculated fields, and deletion

Domain 3 Data Analysis (24%)

  • Given a set of requirements, determine the appropriate communication approach for data analysis: mock-ups, accessibility (auditory, visual), technical vs. non-technical audience, level of detail, internal vs. external, user persona type (C-suite vs. individual contributor), sensitive vs. non-sensitive data, and KPIs
  • Given a scenario, select the appropriate statistical method or function: basic statistical methods (prescriptive, descriptive, predictive, inferential) and functions/measures (mathematical measures of central tendency and dispersion, logical, date, string)
  • Given a scenario, troubleshoot basic issues using the appropriate tool or method: connectivity-related, user-reported, basic SQL code, and corrupted data issues; tools/methods including enable logging, validate data source, and consulting vendor communities/online resources

Domain 4 Visualization and Reporting (20%)

  • Given a scenario, use the appropriate visual elements: types (charts, maps, pivot tables, infographics) and design elements (labels, legends, branding, color schemes)
  • Given a scenario, use the appropriate delivery or consumption method: executive summary, self-service portal, dashboards (static, dynamic, recurring, ad hoc), and data versioning techniques (snapshot, real-time)
  • Given a scenario, troubleshoot issues using report validation techniques: issues (excessive load time, slow refresh rate, large data size, filter not working correctly, stale data, corrupt data) and techniques (data filtering, code/calc/peer review, source validation, data structure changes, monitoring alerts)

Domain 5 Data Governance (14%)

  • Explain data management concepts: integration, documentation (data flow diagram, data explainability report, data dictionary, hierarchy structure, data lineage), source of truth, data versioning (snapshots, refresh intervals), and metadata
  • Summarize concepts related to data compliance: retention, GDPR, jurisdictional requirements, replication, storage, data ethics, PCI DSS, audit, classification, and incident reporting (data breach, security)
  • Compare and contrast data privacy and protection practices: role-based access control, encryption (in transit, at rest), data usage/sharing, NIST, PII, PHI, anonymization, and masking
  • Compare and contrast data quality assurance practices: requirement testing, stress test, UAT, source control, unit test, data health check/data drifts, automated data quality monitoring, data profiling/quality metrics, and ISO standards

Course Info

Promotion Code

Your will get 10% discount voucher for 2nd course onwards if you write us a Google review.

Minimum Entry Requirement

Knowledge and Skills

  • Able to operate using computer functions
  • Minimum 3 GCE ‘O’ Levels Passes including English or WPL Level 5 (Average of Reading, Listening, Speaking & Writing Scores)

Attitude

  • Positive Learning Attitude
  • Enthusiastic Learner

Experience

  • Minimum of 1 year of working experience.

Target Age Group: 18-65 years old

Minimum Software/Hardware Requirement

Software:

Hardware: Window or Mac Laptops

Job Roles

Job Roles

  • Data Analyst
  • Business Intelligence Analyst
  • Data Scientist
  • Database Administrator
  • Data Engineer
  • Reporting Analyst
  • Operations Analyst
  • Marketing Analyst
  • Financial Analyst
  • Data Visualization Specialist
  • Systems Analyst
  • IT Project Manager
  • Data Governance Specialist
  • Compliance Analyst
  • Quality Assurance Analyst
  • Research Analyst
  • Big Data Analyst
  • Data Management Consultant
  • Risk Analyst
  • Data Warehousing Specialist

Trainers

Trainers

Alec Tan is a ACTA certified trainer, He has a number of Comptia certifications. Since 2002, starting off from IT technical background to pre-sales, sales account manager, system integration, operate IT retail / repair shop business in Sim Lim Square 2008 ~ 2012, and back to IT industry employment, freelance IT Trainer till present.

Peter Cheong is an IT and knowledge management professional with strong expertise in networking, cybersecurity, and information systems. He has completed the Cisco Networking Academy Introduction to Packet Tracer course and has participated in international ICT and knowledge management conferences such as the IFLA Knowledge Management Satellite Meeting. With professional experience in IT systems and infrastructure, Peter brings both technical knowledge and global exposure to his training. As an adult educator, Peter focuses on building learners’ foundational skills in cybersecurity, network defense, and risk management aligned to CompTIA Security+ objectives. His sessions emphasize real-world security scenarios, equipping participants to recognize vulnerabilities, manage threats, and implement effective security controls. His combination of practical training and industry exposure ensures learners are well-prepared for both the certification exam and workplace application.

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