Join the 'Data Science' Learning Programme.
Uncover the power of data with our Data Science program, designed for insights-driven decision-making

Data Science

Data Science combines statistical methods, machine learning, and computational tools to extract valuable insights from data. This field is at the heart of decision-making in industries like healthcare, finance, and retail. At Code Vision Solutions, our Data Science program focuses on data preprocessing, exploratory data analysis, and predictive modeling using tools like Python, R, and SQL. You’ll work on real-world datasets to master visualization, machine learning, and AI techniques. Designed for beginners and professionals alike, this program prepares you for dynamic roles in the data-driven world. Build your future in Data Science with us.





Code Vision Solution
From This Program, You Will Gain

Analytical Skills
Learn data cleaning, analysis, and visualization.

Advanced Tools
Gain expertise in Python, R, and SQL for data operations.

ML Techniques
Master machine learning and predictive modeling.

Real-World Applications
Work on projects with practical relevance.
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Structured Curriculum for Smooth Learning
Module 1: Introduction to Data Science
Overview of Data Science
Importance and Applications of Data Science
Tools and Technologies in Data Science
Setting Up the Environment: Python and Jupyter Notebooks
Module 2: Data Manipulation and Analysis
Data Types and Data Structures
Introduction to Pandas
– Loading and Inspecting Data
– Data Cleaning and Preparation
Data Exploration and Summary Statistics
Handling Missing Data
Module 3: Data Visualization
Importance of Visualization in Data Science
Matplotlib and Seaborn Basics
Creating Line, Bar, and Scatter Plots
Heatmaps and Pair Plots
Interactive Visualizations with Plotly
Module 4: Statistical Analysis
Descriptive Statistics
Probability Basics
Hypothesis Testing
Correlation and Regression Analysis
Introduction to Time Series Analysis
Module 5: Machine Learning Basics
What is Machine Learning?
Supervised vs. Unsupervised Learning
Train-Test Split and Model Evaluation
Introduction to Scikit-Learn
Implementing Linear and Logistic Regression
Module 6: Advanced Machine Learning
Decision Trees and Random Forests
Support Vector Machines (SVM)
Clustering Algorithms: K-Means and DBSCAN
Dimensionality Reduction with PCA
Introduction to Neural Networks
Module 7: Natural Language Processing (NLP)
Overview of NLP
Text Preprocessing Techniques
Sentiment Analysis
Bag of Words and TF-IDF
Introduction to Word Embeddings
Module 8: Big Data and Cloud Computing
Basics of Big Data and Hadoop
Introduction to Spark
Cloud Platforms for Data Science: AWS, Google Cloud, Azure
Distributed Data Processing
Module 9: Data Science Projects and Deployment
Building a Data Science Project
Model Deployment Strategies
Using Flask or FastAPI for Model Deployment
Monitoring and Maintaining Models
Module 10: Capstone Project
Define a Real-World Problem
Data Collection and Cleaning
Exploratory Data Analysis
Model Building and Evaluation
Presenting Results and Insights
Instructors

support and guidance
Frequently Asked Questions
What is Data Science?
Data Science involves analyzing and interpreting complex data to derive insights.
Do I need prior programming knowledge?
Basic programming knowledge is helpful but not mandatory.
What tools will I learn?
You’ll gain expertise in Python, R, SQL, and data visualization tools.
Will I work on projects?
Yes, real-world projects are a significant part of the curriculum.
Can beginners join this program?
Absolutely, the program is designed for learners at all levels.
What career roles can I explore?
You can pursue roles like Data Analyst, Data Scientist, or Business Analyst.
Your Future Starts Here.
Empower your future with the expertise to transform data into decisions. Begin your Data Science journey today!