DIPLOMA IN Data Management and Analytics (DDMA)
PROFICIENCY DIPLOMA IN Data Management and Analytics (DDMA)
Below is a detailed 6-Month Diploma in Data Management and Analytics (DDMA) course structure, broken down by weeks. The curriculum covers essential topics in data management, analytics, visualization, and business intelligence
Course Duration: 4 to 6 months (16 to 24 weeks)
Course Fee: 30,000 Kenyan Shillings
Weekly Commitment: Minimum of 2 hours per day
Course Overview:
in Data Management and Analytics (DDMA) – Course Outline (6 Months)
Duration: 6 Months (24 Weeks)
Total Modules: 6
Total Units: 24
Mode: Online/In-Class
Module 1: Introduction to Data Management & Analytics (DM-101)
(Weeks 1-4)
This module introduces students to the basics of data management and analytics concepts.
- Week 1: Foundations of Data Management (DM-101A)
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- What is Data Management?
- Types of Data (Structured vs. Unstructured)
- Data Lifecycle & Governance
- Introduction to Relational Databases
- Week 2: Introduction to Analytics & Data Processing (DM-101B)
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- Data Analytics Overview
- Types of Analytics (Descriptive, Diagnostic, Predictive, Prescriptive)
- Data Collection and Cleaning
- Data Processing Basics
- Week 3: SQL for Data Management (DM-101C)
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- Introduction to SQL
- CRUD Operations (Create, Read, Update, Delete)
- SQL Joins and Aggregation Functions
- Data Querying and Filtering
- Week 4: Data Warehousing & ETL Concepts (DM-101D)
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- Data Warehouse vs. Database
- ETL (Extract, Transform, Load) Processes
- Data Lake vs. Data Warehouse
- Popular ETL Tools (Informatica, Talend, etc.)
Module 2: Programming for Data Analytics (PA-102)
(Weeks 5-8)
This module focuses on programming skills required for data analytics.
- Week 5: Python for Data Analysis – Part 1 (PA-102A)
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- Python Basics (Variables, Data Types, Loops)
- Functions and Modules
- Introduction to Pandas & NumPy
- Week 6: Python for Data Analysis – Part 2 (PA-102B)
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- Data Wrangling with Pandas
- Data Cleaning & Handling Missing Values
- Data Visualization with Matplotlib & Seaborn
- Week 7: R for Data Analytics (PA-102C)
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- Introduction to R Programming
- Data Manipulation with dplyr
- Data Visualization with ggplot2
- Week 8: Working with APIs & Web Scraping (PA-102D)
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- Introduction to APIs
- Web Scraping with BeautifulSoup & Selenium
- Data Extraction from JSON & XML
Module 3: Data Analytics & Business Intelligence (DA-103)
(Weeks 9-12)
This module covers analytics techniques and business intelligence tools.
- Week 9: Statistical Analysis for Data Science (DA-103A)
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- Descriptive & Inferential Statistics
- Probability Distributions
- Hypothesis Testing
- Week 10: Exploratory Data Analysis (EDA) (DA-103B)
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- Data Cleaning & Preprocessing
- Feature Engineering
- Outlier Detection
- Week 11: Business Intelligence Tools (DA-103C)
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- Introduction to BI Tools (Tableau, Power BI)
- Creating Dashboards & Reports
- Data Storytelling
- Week 12: Predictive Analytics & Machine Learning Basics (DA-103D)
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- Introduction to Machine Learning
- Regression Analysis (Linear & Logistic)
- Decision Trees & Random Forest
Module 4: Big Data & Cloud Computing (BD-104)
(Weeks 13-16)
This module introduces students to big data technologies and cloud platforms.
- Week 13: Introduction to Big Data (BD-104A)
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- What is Big Data?
- Characteristics of Big Data
- Introduction to Hadoop & Spark
- Week 14: Working with NoSQL Databases (BD-104B)
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- Introduction to MongoDB & Cassandra
- Key-Value Stores vs. Document Stores
- Querying in NoSQL Databases
- Week 15: Cloud Computing for Data Management (BD-104C)
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- Cloud Platforms (AWS, Azure, Google Cloud)
- Storage Solutions (S3, Google BigQuery, Azure Data Lake)
- Cloud-Based Data Warehousing
- Week 16: Data Security & Governance (BD-104D)
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- Data Privacy Laws (GDPR, HIPAA)
- Role-Based Access Control
- Encryption & Data Protection
Module 5: Advanced Analytics & AI (AA-105)
(Weeks 17-20)
Students will explore deep learning, NLP, and AI applications.
- Week 17: Time Series & Forecasting (AA-105A)
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- Time Series Analysis Basics
- ARIMA, Exponential Smoothing
- Forecasting Models
- Week 18: Introduction to Deep Learning (AA-105B)
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- Neural Networks Basics
- TensorFlow & Keras
- Image & Text Analytics
- Week 19: Natural Language Processing (NLP) (AA-105C)
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- Text Preprocessing & Sentiment Analysis
- Named Entity Recognition
- Topic Modeling
- Week 20: AI in Business & Ethical AI (AA-105D)
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- AI Use Cases in Industry
- Ethical Concerns in AI
- AI Bias & Fairness
Module 6: Capstone Project & Career Preparation (CP-106)
(Weeks 21-24)
Students will apply their learning to real-world data projects and prepare for careers.
- Week 21: Capstone Project Planning (CP-106A)
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- Project Topic Selection
- Defining Objectives & Scope
- Data Collection & Preparation
- Week 22: Project Development & Implementation (CP-106B)
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- Applying Data Management & Analytics Techniques
- Using Visualization & BI Tools
- Model Building & Evaluation
- Week 23: Report Writing & Presentation (CP-106C)
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- Structuring Data Reports
- Creating Engaging Data Presentations
- Insights & Business Recommendations
- Week 24: Career Guidance & Certification (CP-106D)
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- Resume Building & LinkedIn Optimization
- Mock Interviews & Job Market Trends
- Certification Exam & Course Completion
Assessment & Grading:
- Assignments & Quizzes – 30%
- Mid-Term Exam – 20%
- Capstone Project – 30%
- Final Exam – 20%
Certification & Career Prospects
Upon completion, students will earn a Diploma in Data Management & Analytics (DDMA).
Graduates can pursue careers as:
✅ Data Analysts
✅ Business Intelligence Analysts
✅ Data Engineers
✅ Database Administrators
✅ AI/ML Engineers