This Data Science Professional Training program is a job-focused, project-based course designed for professionals, fresh graduates, and career changers who want to master data-driven decision-making using tools like Python, SQL, Machine Learning, Deep Learning, and Data Visualization. The course covers the complete data science lifecycle—from data cleaning to model deployment—equipping you for roles in analytics, AI, and data science.
What is Data Science?
Data Science Workflow & Lifecycle
Roles: Data Analyst vs Data Scientist vs ML Engineer
Tools & Technologies in Demand
Real-World Use Cases
Python Basics: Data types, Loops, Functions
Working with NumPy and Pandas
Data Cleaning, Wrangling, and Transformation
Exploratory Data Analysis (EDA)
Visualization using Matplotlib & Seaborn
Descriptive & Inferential Statistics
Probability Distributions
Hypothesis Testing
Sampling Methods
Correlation vs Causation
RDBMS Concepts
SQL Basics: SELECT, WHERE, GROUP BY
JOINS, Subqueries, Window Functions
Data Aggregation & Analysis Queries
Case Studies Using SQL
Data Visualization Principles
Plotting with Python: Seaborn, Plotly
Creating Dashboards with Power BI or Tableau
Storytelling with Data
Visual Analysis of Business KPIs
Supervised vs. Unsupervised Learning
Regression: Linear, Logistic
Classification: KNN, Decision Trees, Random Forest
Clustering: K-Means
Model Evaluation: Accuracy, Confusion Matrix, ROC-AUC
Ensemble Methods: Bagging, Boosting (XGBoost)
Feature Engineering Techniques
Dimensionality Reduction (PCA)
Model Tuning (Cross-Validation, Grid Search)
Bias-Variance Tradeoff
Understanding Neural Networks
Activation Functions & Optimizers
Building Neural Networks using Keras & TensorFlow
CNN & RNN Overview
Deep Learning Applications in Vision & NLP
Text Preprocessing: Tokenization, Lemmatization
Word Embeddings: Word2Vec, TF-IDF
Sentiment Analysis
Text Classification
Chatbot Development Basics
Model Deployment with Streamlit or Flask
Creating APIs for ML Models
Hosting Projects on GitHub
End-to-End Project: Data Cleaning → Model → Deployment
Documentation & Presentation
Covers all essential tools & techniques in data science
Focus on real-world problem-solving and use cases
Suitable for beginners, working professionals, and career changers
Learn from scratch—no prior coding or math expertise needed
Hands-on projects, industry mentorship, and resume support
Personalized Roadmap to Become a Data Scientist
Resume & LinkedIn Profile Optimization
Interview Preparation & Mock Interviews
Certifications Guidance (e.g., IBM, Google, Microsoft DS certs)
Freelancing, Remote, and Startup Role Strategies
🔍 Job Roles You Can Apply For:
Data Scientist
Junior Data Analyst
Machine Learning Engineer
AI/ML Developer
Data Science Associate
Research Assistant – AI
Product Data Analyst
💸 Expected Salary Range (India):
Experience Level | Role | Avg Salary |
---|---|---|
0–1 years | Data Analyst / Trainee | ₹4 – ₹6 LPA |
1–3 years | Data Scientist / ML Eng | ₹6 – ₹12 LPA |
3–5 years | Sr. Data Scientist | ₹12 – ₹20 LPA |
5+ years | Lead DS / AI Expert | ₹20+ LPA |
✅ Real-Time Projects
✅ Hands-on with Python, SQL, Power BI & ML Tools
✅ Resume Review
✅ Doubt Support + Interview Assistance
✅ Industry-Level Case Studies
✅ Certificate of Completion
TechShappers is a leading institute offering hands-on, practical training for both working professionals and freshers to excel in their careers.
Learn, grow, and succeed with Techshappers– your partner in building a brighter future for your child.
WhatsApp us
WhatsApp us