Data & Database Management System

Data & Database Management System

About Me

The Data & Database Management Track equips learners with the skills to design, build, manage, and analyze data-driven systems that support intelligent decision-making.
This track blends foundational database concepts with applied data analytics, artificial intelligence, and automation, ensuring that students develop both technical mastery and analytical insight.

The curriculum covers everything from database design and SQL programming to data visualization, machine learning, and AI integration. Graduates will be proficient in managing data across traditional and cloud-based platforms using modern tools such as MySQL, PostgreSQL, MS SQL Server, Power BI, Python, and TensorFlow.

Fees & Program Breakdown​

Investing in your tech career is one of the smartest decisions you can make, your skills will open doors to global opportunities, high-income jobs, and long-term career growth. Our pricing is structured to remain affordable while still providing world-class training, mentorship, and internship placement.

Register In Your Preferred Currency

Registration Fee: $20

A mandatory one-time payment required before filling out the enrollment form.

Deposit

we require a deposit 50% of your entire tuition fee to secure your spot in the program. This deposit is part of your tuition not an extra fee and will be deducted from the total tuition balance.

Tuition Fee $300

Our tuition fees is $300. Students, you can choose to pay: Full payment upfront or Installment plan which spread your balance into monthly payments.

Program Details

This Program is span for an entire 3-months, it's including:
2 months Intensive Coursework
1 Month Final Project

Course 01.

Database Design & Management Systems Syllabus

This syllabus introduces the theory and practice of designing, implementing, and maintaining structured and non-structured database systems.
Learners will understand data models, normalization, and storage strategies while mastering the administration and security of databases across both on-premise and cloud infrastructures.

Detailed Modules & Topics

Module 1: Database Fundamentals and Architectur

Introduces data concepts, database architectures, and types such as RDBMS, NoSQL, and NewSQL. Objective: Understand how databases store, organize, and retrieve data efficiently.

Module 2: Data Modeling and Normalization

Covers Entity-Relationship (ER) modeling, primary/foreign keys, and normalization forms for optimal schema design. Objective: Design well-structured databases that reduce redundancy and enhance performance.

Module 3: Database Administration and Security

Focuses on user management, roles and privileges, encryption, backup, and recovery. Objective: Secure and maintain databases to ensure data integrity and availability.

Module 4: Cloud Database Deployment

Teaches database hosting and scaling using AWS RDS, Google Cloud SQL, and Azure Database Services. Objective: Deploy and manage scalable, cloud-based database environments.

Module 5: Performance Optimization and Automation

Explores indexing, query tuning, and automation tools for database monitoring and performance improvement. Objective: Optimize databases for high availability and automated operations.

Capstone Project

Course 02.

SQL Programming & Database Development Syllabus

This syllabus focuses on Structured Query Language (SQL) as the foundation of database interaction and data manipulation.
Students will master SQL using MySQL, PostgreSQL, and Microsoft SQL Server, gaining practical skills in query writing, database scripting, and performance optimization for both local and cloud databases.

Detailed Modules & Topics

Module 1: Introduction to SQL and Database Setup

Covers SQL fundamentals, environment setup, and the structure of relational databases. Objective: Establish a strong understanding of SQL syntax and database relationships.

Module 2: Data Definition and Manipulation

Teaches DDL and DML operations—creating, altering, inserting, updating, and deleting data. Objective: Build and modify database structures using SQL commands.

Module 3: Query Writing and Optimization

Covers SELECT, JOIN, GROUP BY, subqueries, and indexing for performance optimization. Objective: Write efficient queries to retrieve and analyze data accurately.

Module 4: Advanced SQL Concepts

Explores stored procedures, functions, views, triggers, and transactions for automation and data consistency. Objective: Implement reusable SQL components and maintain transactional integrity.

Module 5: Database Connectivity and Integration

Teaches connecting SQL databases to programming environments like Python, PHP, and Power BI. Objective: Integrate SQL databases with applications and analytics tools.

Capstone Project

Course 03.

Data Analysis & Visualization Syllabus

This syllabus builds learners’ analytical and visualization capabilities for data-driven decision-making.
Students learn to clean, transform, and interpret datasets while creating interactive dashboards and visual reports using tools such as Python, Excel, Power BI, and Tableau.

Detailed Modules & Topics

Module 1: Introduction to Data Analytics

Covers the data analytics process, data sources, and business applications. Objective: Understand how to use analytics to support data-driven decision-making.

Module 2: Data Cleaning and Transformation

Teaches data wrangling, missing value handling, and data formatting using Pandas, NumPy, and Excel. Objective: Prepare clean, structured data for analysis.

Module 3: Exploratory Data Analysis (EDA)

Explores statistical summaries, data distribution, and correlation analysis. Objective: Identify trends and patterns through exploratory analysis.

Module 4: Data Visualization and Reporting

Covers Power BI, Tableau, and Matplotlib for creating dynamic dashboards. Objective: Present analytical insights through effective visual storytelling.

Module 5: Applied Analytics Projects

Students execute a capstone project analyzing a dataset and presenting findings. Objective: Apply analytics skills in a real-world, results-oriented project.

Capstone Project

Course 04.

Artificial Intelligence & Machine Learning Syllabus

This syllabus introduces learners to the principles and applications of artificial intelligence (AI) and machine learning (ML).
Students will understand how data fuels intelligent systems, and they will develop, train, and deploy models using tools like TensorFlow, Keras, and Scikit-learn.

Detailed Modules & Topics

Module 1: AI & ML Fundamentals

Covers AI evolution, ML types, and the relationship between data, algorithms, and intelligence. Objective: Understand key AI/ML concepts and their practical applications.

Module 2: Data Preparation and Feature Engineering

Explores data preprocessing, feature selection, and scaling techniques. Objective: Prepare datasets for accurate model training.

Module 3: Model Building and Evaluation

Teaches supervised and unsupervised models including Regression, Decision Trees, and Clustering. Objective: Train and evaluate ML models using real-world data.

Module 4: Deep Learning and Neural Networks

Introduces ANN, CNN, and RNN for complex learning tasks. Objective: Develop deep learning solutions using TensorFlow and Keras.

Module 5: Model Deployment and MLOps

Covers model deployment using Flask APIs, Streamlit, and cloud ML services. Objective: Deploy, monitor, and maintain AI models in production.

Capstone Project

Course 05.

Intelligent Data Systems Integration Syllabus

This syllabus focuses on combining database systems, analytics, and AI models into fully integrated, intelligent enterprise platforms.
Students learn how to build end-to-end systems capable of automating data workflows, generating insights, and driving real-time decisions.

Detailed Modules & Topics

Module 1: Data Integration and APIs

Teaches RESTful APIs, data pipelines, and system interoperability between databases and AI applications. Objective: Integrate data systems for seamless data exchange and automation.

Module 2: Automation and Workflow Orchestration

Explores Robotic Process Automation (RPA), ETL orchestration, and intelligent agents. Objective: Automate data operations for scalability and consistency.

Module 3: Data Governance and Compliance

Covers data privacy, security, and ethical AI implementation. Objective: Apply governance frameworks to responsible data system management.

Module 4: Cloud Integration for Intelligent Systems

Teaches deployment of AI-integrated data systems on AWS, Azure, and Google Cloud. Objective: Deploy and scale AI data systems within cloud environments.

Module 5: Capstone Project – Intelligent Data Solution

Students design and build a complete intelligent platform integrating databases, analytics, and AI automation. Objective: Demonstrate comprehensive skill integration in a practical project.

Working together was a dream — the creativity, attention to detail, and ability to bring our vision to life was beyond impressive. The final design elevated our brand in ways we couldn’t have imagined.
Johnnie Ledner
Student
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