DataViz Explorer

๐Ÿ”‘ Free Exclusive Career Checklist:
Data Architect

This checklist outlines the initial steps to design and manage the blueprints for an organization’s entire data infrastructure, including data warehousing and cloud services.


1. Data Modeling & Infrastructure Design

Step Action Item Status
1.1 Data Modeling Theory: Clearly define the differences between Conceptual, Logical, and Physical data models, and know which stakeholders use each.
1.2 Dimensional Modeling: Design a schema for a simple business scenario (e.g., E-commerce sales) using a Star or Snowflake Schema pattern.
1.3 Data Flow & Lineage: Map out the journey of data from a source application through an ETL/ELT process to a final report (data lineage).
1.4 Data Storage Types: Articulate the pros and cons of different storage solutions: Relational DB, Data Lake, and Data Warehouse.
1.5 Data Security Architecture: Design a basic access control model that uses different security layers (network, user, data encryption).

2. Cloud and Big Data Concepts

Step Action Item Status
2.1 Cloud Data Fundamentals: Set up and query a managed data warehouse service on one major cloud platform (e.g., AWS Redshift, Azure Synapse, or GCP BigQuery).
2.2 Data Ingestion: Use a simple ETL/ELT tool (e.g., Fivetran, Stitch, or basic Python) to move data from a source (like a CSV or API) into a destination database.
2.3 API Integration: Write code (Python/Java) to ingest data from a REST API, process the JSON/XML payload, and store it in a NoSQL database.
2.4 Data Virtualization: Understand and explain how data virtualization and data mesh concepts differ from traditional data warehousing.
2.5 Scalability Principles: Articulate the differences between horizontal and vertical scaling and why this matters for high-volume data architecture.

3. Professional Development & Portfolio

Step Action Item Status
3.1 Create a Data Architecture Portfolio: Document a project where you designed a data lake *and* a data warehouse to serve different business needs.
3.2 Business Requirement Translation: Practice translating a non-technical business goal (e.g., “We need faster reporting”) into technical architectural requirements.
3.3 Focus on a Cloud Certification: Begin studying for an introductory cloud data certification (e.g., Azure Data Fundamentals, AWS Certified Data Engineer Associate).
3.4 Update Resume Keywords: Use terms like Data Modeling, Dimensional Modeling, Star Schema, ETL/ELT, Cloud Data Warehousing (mentioning specific vendors), and Data Governance.
3.5 Communicate Architectural Decisions: Learn to justify a complex architectural choice (e.g., using a stream processor over batch processing) to technical and business stakeholders.
Data Career Checklist Seriesย  ย  ย  ย  ย  ย  ย  ย  ย  ย  DataViz Explorerย  ย  ย  ย  ย  ย  ย  ย  ย  ย  ย  ย  ย  ย  ย  ย  ย Page 1 of 1ย 

DataViz Explorer C.A.I.P.O Barbados Business Registration โ„–87900ยฎ
Support DataViz Explorer
Every bit of support helps us do what we love. A warm thanks to contributors like you. โ˜• Support me on Ko-fi โค๏ธ โ˜• Support me on Ko-fi โค๏ธ