Data Science Classes in Nagavara
Are you searching for the best data Science classes in Nagavara to build a successful career in analytics, machine learning, and artificial intelligence?
Online/Offline
Mode
4 - 5 Months
Duration
5+Live
Real time projects
Industry Recognized
Certification
About Data Science Courses
Are you searching for the best data Science classes in Nagavara to build a successful career in analytics, machine learning, and artificial intelligence? Welcome to fast learning technologies, a trusted training institute offering practical and industry-focused data science courses for students, freshers, and working professionals.
Nagavara has become one of Bengaluru’s fast-growing technology and education hubs because of its close connection to Manyata Tech Park, Hebbal, Thanisandra, HBR Layout, Hennur, RT Nagar, and Kalyan Nagar. With growing demand for skilled professionals in analytics and AI, enrolling in professional data science classes can help learners gain practical skills and career opportunities.
At fast learning technologies, we focus on real-world learning, project-based training, Python programming, SQL, machine learning, visualization, and certification preparation. Our training methodology is designed to help beginners understand concepts easily while also supporting professionals who want to upgrade their technical skills.
Whether you are a college student, graduate, software professional, business analyst, or someone planning a career transition, our data science classes in Nagavara are designed to help you learn industry-relevant skills in a practical and structured way.
Why Choose fast learning technologies?
1. Practical Learning Approach
We focus on hands-on practice instead of only theory. Learners work with datasets, coding exercises, assignments, and projects.
2. Experienced Trainers
Our trainers explain concepts in simple and professional language. Beginners can learn comfortably while professionals can deepen their technical understanding.
3. Convenient Location Near IT Hubs
Our Nagavara training center is accessible from Manyata Tech Park, Hebbal, Thanisandra, Hennur, Kalyan Nagar, and nearby Bengaluru locations.
Our Alumni's Are Placed At
Course Curriculum
A. Supervised Learning
Supervised Learning is a machine learning technique where the model is trained using labelled data.
1. Linear Regression
Linear Regression is used to predict continuous numerical values.
Topics Covered:
- Linear Equation
- Slope
- Intercept
- R-Square Value
2. Logistic Regression
Logistic Regression is used for classification problems where the output is usually binary, such as yes/no or success/failure.
Topics Covered:
- Odds Ratio
- Probability of Success
- Probability of Failure
- Bias Variance Tradeoff
- ROC Curve
Hands-on Exercise
Students will review the main ways to approach data modelling problems using simple and well-defined machine learning techniques. They will learn how to model past data using mathematical functions and predict new outputs based on trained models.
B. Unsupervised Learning
Duration: 4 Hours
Unsupervised Learning is used when the data does not have labelled outputs. The model identifies hidden patterns and groups in the data.
Topics Covered:
- K-Means Clustering
- K-Means++
- Hierarchical Clustering
C. Support Vector Machine
Duration: 2 Hours
Support Vector Machine is a powerful supervised learning algorithm used for classification and regression tasks.
Topics Covered:
- Support Vectors
- Hyperplanes
- 2-D Case
- Linear Hyperplane
D. SVM Kernel
Duration: 2 Hours
SVM Kernel helps transform data into higher dimensions to make classification easier.
Topics Covered:
- Linear Kernel
- Radial Kernel
- Polynomial Kernel
E. Other Machine Learning Algorithms
Duration: 10 Hours
Topics Covered:
- K-Nearest Neighbour
- Naïve Bayes Classifier
- Decision Tree – CART
- Decision Tree – C5.0
- Random Forest
Hands-on Exercise
Students will work on practical machine learning models and understand how different algorithms solve real-world problems. They will also explore regression techniques, clustering methods, and mathematical tools used for approximating unknown values.
Module 1: AI Introduction
Duration: 9 Hours
Artificial Intelligence focuses on creating intelligent systems that can think, learn, and make decisions.
Topics Covered:
- Perceptron
- Multi-Layer Perceptron
- Markov Decision Process
- Logical Agent
- First Order Logic
- AI Applications
Module 1: Deep Learning Algorithms
Duration: 10 Hours
Deep Learning is a subset of Machine Learning that uses neural networks to solve complex problems such as image recognition, speech recognition, and natural language processing.
Topics Covered:
- CNN – Convolutional Neural Network
- RNN – Recurrent Neural Network
- ANN – Artificial Neural Network
Hands-on Exercise
Students will learn how to implement their first neural network and understand the foundation of deep learning architectures. This module will help students apply previously learned concepts to advanced neural network models.
A. Introduction to NLP
Duration: 5 Hours
Natural Language Processing helps machines understand, process, and analyze human language.
Topics Covered:
- Text Pre-processing
- Noise Removal
- Lexicon Normalization
- Lemmatization
- Stemming
- Object Standardization
B. Text to Features / Feature Engineering
Duration: 5 Hours
Feature Engineering converts raw text into structured data that can be used by machine learning models.
Topics Covered:
- Syntactical Parsing
- Dependency Grammar
- Part of Speech Tagging
- Entity Parsing
- Named Entity Recognition
- Topic Modelling
- N-Grams
- TF-IDF
- Frequency / Density Features
- Word Embeddings
C. Tasks of NLP
Duration: 2 Hours
Topics Covered:
- Text Classification
- Text Matching
- Levenshtein Distance
- Phonetic Matching
- Flexible String Matching
Hands-on Exercise
Students will learn how to create customized NLP models. They will work on text-based problems and understand how machine learning models can process and classify natural language data.
Project 1: Board Game Review Prediction
Students will perform Linear Regression analysis to predict average reviews for board games.
Project 2: Credit Card Fraud Detection
Students will focus on Anomaly Detection using probability densities to detect credit card fraud.
Project 3: Stock Market Clustering
Students will use K-Means Clustering to find related companies by analyzing correlations among stock market movements over a given time span.
Project 4: Getting Started with Natural Language Processing
Students will learn basic NLP methodology, including:
- Tokenizing words and sentences
- Part of speech identification
- Tagging
- Phrase analysis
Project 5: Object Recognition Using Deep Learning
Students will use the CIFAR-10 object recognition dataset as a benchmark to implement a deep neural network model for object recognition.
Project 6: Image Super Resolution with SRCNN
Students will learn how to implement and use the TensorFlow version of the Super Resolution Convolutional Neural Network, also known as SRCNN, to improve image quality.
Project 7: Natural Language Processing – Text Classification
Students will solve a text classification task using multiple classification algorithms and advanced NLP techniques.
Project 8: K-Means Clustering for Image Analysis
Students will use K-Means Clustering as an unsupervised learning method to analyze and classify 28 x 28 pixel images from the MNIST dataset.
Project 9: Data Compression & Visualization Using PCA
Students will learn how to compress the Iris dataset into a 2D feature set and visualize it through a normal X-Y plot using K-Means Clustering.
Hands-On Projects to Strengthen Your Portfolio
AI-Powered Customer Sentiment Analysis and Recommendation System (Domain: Retail & E-Commerce)
Tools Used: Python, Machine Learning, Power BI, SQL, Excel Build an intelligent system to analyze customer reviews, social media feedback, and purchasing behavior using NLP techniques. Predict customer satisfaction and recommend personalized products through interactive dashboards.
Software Bug Prediction and Defect Analysis Platform (Domain: Software Testing)
Tools Used: Python, Machine Learning, Power BI, SQL, Excel Analyze software testing data, defect logs, and application performance to predict high-risk modules, identify bug patterns, and improve software quality management.
Cloud Infrastructure Monitoring and Resource Optimization System (Domain: Cloud Computing & DevOps)
Tools Used: Python, Power BI, SQL, Excel, AWS/Azure Monitor cloud server performance, CPU usage, storage utilization, and network traffic to optimize infrastructure costs and improve system reliability.
Cybersecurity Threat Detection and Network Traffic Analysis (Domain: Cybersecurity)
Tools Used: Python, Machine Learning, Power BI, SQL, Excel Analyze network logs, suspicious activities, malware patterns, and unauthorized access attempts to detect cyber threats and improve security monitoring systems.
AI-Powered IT Helpdesk Ticket Classification System (Domain: IT Support)
Tools Used: Python, NLP, Power BI, SQL, Excel Develop an automated ticket classification system that categorizes IT support requests, predicts priority levels, and improves response efficiency using Natural Language Processing.
Employee Productivity and System Usage Analytics Platform (Domain: IT Operations)
Tools Used: Python, Power BI, SQL, Excel Analyze employee login activity, project tracking, system utilization, and work performance to improve operational efficiency in IT organizations.
Intelligent Server Performance and Downtime Prediction System (Domain: System Administration)
Tools Used: Python, Machine Learning, Power BI, SQL, Excel Monitor server logs, CPU utilization, memory usage, and downtime history to predict failures and improve infrastructure availability.
AI-Based Code Recommendation and Developer Productivity Analysis (Domain: Software Development)
Tools Used: Python, Machine Learning, Power BI, SQL, Excel Analyze coding patterns, GitHub commits, project timelines, and bug fixes to recommend optimized coding practices and improve developer productivity.
DevOps CI/CD Pipeline Performance Analytics System (Domain: DevOps Engineering)
Tools Used: Python, Power BI, SQL, Excel, Jenkins/Git Track deployment frequency, build failures, testing results, and release cycles to optimize CI/CD pipeline efficiency and software delivery performance.
IT Asset Management and Hardware Failure Prediction System (Domain: IT Infrastructure)
Tools Used: Python, Machine Learning, Power BI, SQL, Excel Analyze hardware usage, maintenance records, device performance, and asset lifecycle data to predict failures and optimize IT asset management.
Trainer profile

Kiran Babu
(10 years) – Kiran Babu brings a decade of hands-on experience in data analytics and machine learning.

Praveen
(8 years) – Praveen has 8 years of experience in data science and AI applications.

Arun
(13 years) – Arun is a seasoned data science professional with 13 years of experience in big data, AI, and advanced analytics.

Ankit
(10 years) – Ankit has 10 years of experience in machine learning and data engineering.

Dibiya Jyothi
(11 years) – Dibiya Jyothi brings 11 years of expertise in AI, deep learning, and data modeling.
Course batch schedule
| Date | Course | Batch | Timings |
|---|---|---|---|
| 18 May | Python | New Batch | 8 AM - 9 AM |
| 18 May | SQL | New Batch | 6 PM - 7 PM |
| 21 May | Excel | New Batch | 9 AM - 10 AM |
| 21 May | Power BI | New Batch | 2 PM - 3 PM |
| 23 May | AWS | New Batch | 5 PM - 6 PM |
| 23 May | Frontend | New Batch | 10 AM - 11 AM |
| 27 May | Linux | New Batch | 4 PM - 5 PM |
| 30 May | Data Science | New Batch | 8 AM - 9 AM |
| 30 May | Machine Learning | New Batch | 5 PM - 6 PM |
| 03 Jun | AI | New Batch | 8 AM - 9 AM |
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Students Placements
Data Science Course Fee and Duration
Classroom Sessions
38,000/- Offer price
- Fees payable in up to 3 installments
- 0% Interest EMI – Pay in Easy Installments (though education financing partners)
- Cost-effective courses with high ROI, making it worth every penny you invest.
Students Review
Frequently Asked Questions (FAQ)
Fast Learning Technologies is known for practical data science training, real-time projects, and beginner-friendly learning.
Yes. Our course starts with fundamentals and gradually moves to advanced topics like machine learning.
Yes. We include real-time projects and practical assignments as part of the course.
Yes. We offer both classroom and online data science training options.
You will learn Python, SQL, statistics, data analysis, machine learning, visualization, and project implementation.