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Diploma in Applied Sciences
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Course Outline
10 sections
1. Materials Science
100 mins
10 topics
Introduction to Materials Science
Atomic Structure and Bonding
Crystal Structures and Defects
Mechanical Properties of Materials
Thermal Properties of Materials
2. Biology Basics
100 mins
10 topics
Introduction to Biology
The Cell
Biomolecules
Cell Membrane and Transport
Cell Division
3. Introduction to Applied Sciences
90 mins
9 topics
Overview of Applied Sciences
Branches of Applied Sciences
Scientific Method in Applied Sciences
Importance of Interdisciplinary Approach
Ethical Considerations in Applied Sciences
4. Mathematics for Scientists
90 mins
9 topics
Introduction to Mathematical Notation
Algebraic Manipulations
Functions and Graphs
Exponents and Logarithms
Trigonometry
5. Physics Fundamentals
90 mins
9 topics
Introduction to Physics
Mechanics
Energy and Work
Thermodynamics
Waves and Optics
6. Chemistry Essentials
100 mins
10 topics
Introduction to Chemistry
Atomic Structure
Periodic Table and Periodicity
Chemical Bonding
Chemical Reactions
7. Data Analysis in Science
100 mins
10 topics
Introduction to Data Analysis
Data Collection Methods
Data Cleaning and Preprocessing
Exploratory Data Analysis (EDA)
Statistical Inference
8. Environmental Science
100 mins
10 topics
Introduction to Environmental Science
Ecosystems and Biodiversity
Climate Change and Global Warming
Pollution and Waste Management
Renewable and Non-renewable Energy Sources
9. Research Methods in Science
80 mins
8 topics
Introduction to Research Methods
Research Design
Variables and Hypothesis Formulation
Data Collection Methods
Data Analysis Techniques
10. Applied Sciences Capstone Project
80 mins
8 topics
Identifying a Research Problem
Literature Review and Background Research
Research Methodology
Data Collection and Analysis
Project Design and Implementation