Course Outline
Day 1
Foundations of Data Products & Strategy
Introduction to Modern Data Products
Data Products vs Traditional Data Systems
Data as a Strategic Business Asset
Key Components of a Data Product Ecosystem
Identifying Business Problems Suitable for Data Products
Data Product Lifecycle Overview (Ideation to Scaling)
Case Studies: Successful Data Products in Industry
Day 2
Data Product Design & Architecture
Principles of Data Product Design
Understanding User Personas and Data Consumers
Data Architecture Models (Centralized vs Data Mesh vs Hybrid)
Designing Scalable Data Pipelines
Data Modeling for Analytics and Operational Use
APIs and Data Accessibility Layers
Cloud Infrastructure for Data Products (AWS / Azure / GCP overview)
Day 3
Data Engineering & Implementation
Data Ingestion Methods (Batch vs Streaming)
ETL vs ELT Frameworks
Building Reliable Data Pipelines
Data Storage Solutions (Data Lakes, Warehouses, Lakehouse)
Data Transformation and Orchestration Tools
Introduction to Real-Time Data Processing
Hands-on Lab: Building a Simple Data Pipeline
Day 4
Analytics, AI Integration & Governance
Embedding Analytics into Data Products
Dashboards, KPIs, and Decision Intelligence
Introduction to AI/ML in Data Products
Recommendation Systems and Predictive Models
Data Quality Management and Monitoring
Data Governance, Privacy, and Compliance (GDPR concepts overview)
Ensuring Trust, Security & Reliability in Data Products
Day 5
Deployment, Scaling & Productization
Productizing Data Solutions for End Users
Deployment Strategies and CI/CD for Data Products
Monitoring, Performance Optimization & Scaling
Data Product Lifecycle Management in Organizations
Monetization Strategies for Data Products
Future Trends: Generative AI & Autonomous Data Products
Capstone Project Presentation & Feedback Session
Requirements
- Basic understanding of data concepts and business reporting is recommended.
- Familiarity with Excel or any basic data analysis tool is helpful.
- Awareness of how data supports business decision-making will be beneficial.
- No advanced programming or technical background is required.
- An interest in data, analytics, and digital product development is essential.
Testimonials (4)
a lot of interaction with the trainer
Emilia - ATOS PGS sp. z o.o.
Course - RODO / GDPR - zmiany prawne, wprowadzenie teoretyczne, praktyczne aspekty
Machine Translated
knowledge, exemplary training conduct
Krzysztof Kantorski - Santander
Course - Oracle GoldenGate
Machine Translated
The variety of the information shared and the clarity to explain terms in plain English.
Arisbe Mendoza - Fairtrade International
Course - GDPR Workshop
It's a hands-on session.