Become a Expert in Data Science (6 Months)

About the Course
This comprehensive Data Science Course is designed to equip learners with the essential skills and knowledge required to excel in the rapidly growing field of data science. Expert in data science from foundational mathematics and statistics to advanced machine learning and deep learning techniques, this program covers the complete workflow.
Students will gain hands-on experience with industry-standard tools and technologies including Python, SQL, machine learning frameworks, and data visualization libraries. Through real-world projects and case studies, learners will develop the practical skills needed to extract actionable insights from complex datasets.
Key outcomes include mastering data collection and preprocessing, exploratory data analysis, statistical modeling, machine learning algorithms, and the ability to communicate findings effectively to both technical and non-technical stakeholders.
Module 1: Introduction to Data Science
Foundational understanding of data science concepts, applications, and the Data analytics and deployment process.
- Overview and applications
- The role of a Data Scientist
- Understanding the Data Science process
Module 2: Mathematics and Statistics for Expert in Data Science
Essential mathematical and statistical foundations required for applications.
- Basic algebra, calculus, and linear algebra
- Probability and statistics fundamentals
- Distributions, hypothesis testing, and statistical inference
Module 3: Data Collection and Data Wrangling
Learn various techniques for collecting, cleaning, and preparing data for analysis.
- Data types and data structures
- Techniques for data collection (web scraping, APIs, databases)
- Data cleaning and preprocessing (handling missing data, outliers, etc.)
- Data transformation and feature engineering to Expert in Data Science
Module 4: Exploratory Data Analysis (EDA)
Master techniques for understanding data through statistical analysis and visualization.
- Descriptive statistics and summary statistics
- Data visualization for EDA (histograms, scatter plots, box plots)
- Identifying trends, patterns, and anomalies
Module 5: Data Visualization
Create compelling and effective visualizations to communicate insights from Expert in Data Science
.
- Principles of effective data visualization
- Visualization tools and libraries (Matplotlib, Seaborn, Plotly)
- Creating dashboards and reports
Module 6: Introduction to Python for Data Science
Learn Python programming fundamentals specifically tailored applications.
- Python basics: syntax, data types, and control structures
- Functions, loops, and conditional statements
Module 7: Essential Python Libraries for Data Science
Master the core Python libraries that form the foundation of Data analytics and deployment work.
- NumPy for numerical computations in Expert in Data Science
- Pandas for data manipulation and analysis
- SciPy for scientific computing
Module 8: Machine Learning Fundamentals
Introduction to machine learning concepts and the machine learning workflow.
- Introduction to machine learning concepts
- Types of machine learning (supervised, unsupervised, reinforcement)
- Data splitting (training, validation, and test sets)
Module 9: Supervised Learning Techniques
Learn supervised learning algorithms for prediction and classification tasks.
- Regression algorithms (Linear Regression, Logistic Regression)
- Classification algorithms to Expert in Data Science
(K-Nearest Neighbors, Decision Trees, SVM) - Ensemble methods (Random Forest, Gradient Boosting)
Module 10: Unsupervised Learning Techniques
Explore unsupervised learning methods for pattern discovery and data exploration.
- Clustering algorithms (K-Means, Hierarchical Clustering)
Module 11: Deep Learning Basics
Introduction to neural networks and deep learning frameworks for complex pattern recognition.
- Introduction to neural networks and deep learning
- Basics of frameworks (TensorFlow, Keras, PyTorch)
Module 12: Model Evaluation and Validation
Learn comprehensive techniques for evaluating and validating machine learning models.
- Performance metrics (accuracy, precision, recall, F1 score)
- Cross-validation techniques to Expert in Data Science
- Model selection and hyperparameter tuning
Module 13: Database
Master database concepts and SQL for efficient data storage and retrieval.
- Introduction to Databases
- Database Models in Data analytics and deployment
- Relational Databases
- Structured Query Language (SQL) Basics
- Advanced SQL Queries
Module 14: Data Science Project Management
Learn project management skills specific to data science projects and team collaboration.
- Defining problem statements and project objectives
- Working in Agile teams and project lifecycle
- Documentation and communication of results
Module 15: Ethics in Data Science
Understanding ethical considerations and responsible practices to Expert in Data Science
.
- Data privacy and security concerns
- Bias and fairness in data and models
- Ethical guidelines in data collection and decision making
Capstone Project for Expert in Data Science
Apply all learned concepts in a comprehensive real-world Data analytics and deployment project.
- Selecting a real-world problem
- Applying Data analytics and deployment techniques using Python
- Presenting findings and solutions in a final report or presentation
Comprehensive career preparation and industry recognition upon successful course completion.
Job Roles:
- Data Scientist
- Machine Learning Engineer
- Data Analyst
- Research Scientist in Data analytics and deployment
- AI/ML Consultant
- Business Intelligence Analyst
- Quantitative Analyst
- Data Engineer
- Statistical Analyst
- Product Data Scientist
Industries:
- Technology and Software
- Finance and Banking
- Healthcare and Pharmaceuticals
- E-commerce and Retail
- Telecommunications
- Automotive and Manufacturing
- Media and Entertainment
- Government and Public Sector
- Consulting and Professional Services
- Research and Development
Career Support:
- Resume Review and Portfolio Development
- Technical Interview Preparation
- Mock Interviews with Industry to Expert in Data Science
- LinkedIn Profile Optimization
- Job Placement Assistance and Networking
- Continuous Learning Resources and Updates
- Alumni Network and Mentorship Programs
- Industry Certification Guidance in Data analytics and deployment

techpath
You might be interested in
- Live class
- Beginner
- 29 Students
- 16 lessons
- Live class
- Beginner
- 29 Students
- 10 lessons
- Live class
- Beginner
- 29 Students
- 10 lessons
- Live class
- Beginner
- 29 Students
- 10 lessons
- Live class
- Beginner
- 29 Students
- 10 lessons
Sign up to receive our latest updates
Get in touch
Address