Data Science

Data Science

Learn how to transform data into actionable insights through hands-on training in Python, statistics, machine learning, and AI. Build the skills needed for today's most in-demand data careers.

Data Science

Master the complete data science workflow, from data collection and analysis to machine learning and predictive modeling. Learn Python, statistics, data visualization, and industry-standard tools to transform raw data into actionable insights and intelligent solutions.

This program equips learners with practical skills in data analysis, statistical modeling, and machine learning through hands-on projects and real-world datasets. Build a portfolio that demonstrates your ability to solve business problems using data.

What You'll Learn

Develop practical data science skills through real-world datasets, machine learning projects, and industry-standard tools.

Python for Data Science

Work with Pandas, NumPy, and visualization libraries.

Statistics & Analytics

Apply probability, regression, and hypothesis testing.

Machine Learning

Build predictive models using Scikit-learn.

Projects & Deployment

Create portfolio-ready data science solutions.

CURRICULUM

01. Python & Data Science Foundations
Python for data science: syntax, data structures, functions, and object-oriented programming
NumPy: arrays, broadcasting, vectorized operations, and numerical computing
Pandas: DataFrames, data cleaning, transformation, merging, and analysis
Jupyter Notebooks: workflows, documentation, reproducible research, and experimentation
Descriptive statistics: mean, median, variance, standard deviation, and distributions
Inferential statistics: hypothesis testing, confidence intervals, and p-values
Data visualization with Matplotlib and Seaborn for effective storytelling
Exploratory Data Analysis (EDA): identifying patterns, trends, and anomalies in data
Supervised learning: linear regression, logistic regression, decision trees, and random forests
Unsupervised learning: clustering, dimensionality reduction, and pattern discovery
Model evaluation: accuracy, precision, recall, F1-score, ROC-AUC, and cross-validation
Feature engineering, model optimization, and handling real-world datasets
Ensemble methods: boosting, bagging, XGBoost, and LightGBM
SQL for Data Science: querying, transforming, and preparing data for analysis
Model deployment with Flask/FastAPI and API-based prediction services
Capstone project: build and deploy an end-to-end machine learning solution using a real-world dataset

Data Science​

4.8 Stars
Yes, certificate of completion.

Tools & Technologies

Why Learners Choose NexEdge For Career Growth

Focused on practical learning, industry exposure, and career-focused programs designed to prepare learners for real-world opportunities.

Industry-Focused Curriculum

Programs designed around real industry tools, trends, and skills.

Hands-On Learning

Practical projects and real-world exposure to improve confidence.

Expert Trainers

Learn from experienced professionals with industry expertise.

Placement Support

Career-focused guidance and support for future opportunities.

Flexible Learning Modes

Online, offline, and hybrid training designed for modern learners.

Start A Conversation With Us

Email Support

info@nvvnexedge.com

Business Hours

Monday – Saturday, 09:00 – 17:00

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