Data science course in coimbatore

Top Data Science Course Training in Coimbatore

Sadhvi Academy offers the Best Data Science Course Training in Coimbatore, designed for aspiring data scientists seeking comprehensive, hands-on experience. Our advanced Data Science program provides in-depth knowledge and practical skills, covering key topics such as Python for Data Science, Probability and Statistics, Artificial Intelligence (AI), and Machine Learning.

We focus on real-world projects and industry-focused training, ensuring that our students gain the expertise that aligns with current market demands. With a curriculum tailored to meet industry demands, our graduates consistently secure top positions in leading companies which makes the Sadhvi one of the Top Data Science Institute.

Key Features
Top Software Training Institute in Coimbatore

Gain In Demand Skills

Certified Trainers

Hands-on data science with python training

Hands-On Learning

Explore machine learning with python

Placement Assistance

offline classes near you

Industry Aligned Curriculum

top offline training in Coimbatore

Flexible Learning Options

Certification Course - Data Science Course

Supportive Learning Environment

Affordable
Fees

Why You Want to Learn Data Science - Sadhvi

At Sadhvi Academy, we offer the Best Data Science Course in Coimbatore designed to fit into your busy schedule with flexible teaching modes and customizable class timingsAffordability is a priority, so we provide convenient installment payment options, making your educational journey accessible and stress-free.

In today’s fast-paced world, mastering Data Science is more crucial than ever. Our comprehensive course covers everything from Python and Machine Learning to AI and Big Data Analytics. These in-demand skills will not only make you a valuable asset to any company but also open doors to numerous high-paying career opportunities in the rapidly growing field of Data Science.

Join Sadhvi Academy, the Top Data Science Institute, to benefit from expert-led training, flexible options, and affordable pricing. Enroll today and secure your future in the dynamic world of Data Science, where endless career possibilities await.

Understanding Data Science

Data Science is like detective work for information. It involves gathering massive amounts of data, then using coding and special tools to analyze it and uncover hidden patterns, trends, and insights. This knowledge can be used to solve problems, make better decisions, and even predict future events.

 

Who Should Opt For This course?

  • College Final Year Students: Computer Science or related discipline students in their final year of college
  • Career Changers: Professionals looking to switch careers to Data Science and individuals who want to upskill.
  • Job Seekers: Individuals actively seeking employment in the tech industry.
  • Domain Switchers: Professionals looking to switch from a different domain to Data Science.
  • Freelancers: Independent freelancers in the field of Data Science and professionals transitioning to freelancing with a focus on Data Science to seek new projects and clients.
Build web applications with django

COURSE SYLLABUS

  • Introduction to Python
  • Operators
  • String, List and Tuple
  • Set and Dictionary
  • Conditional statements and loops
  • Functions in Python
  • OOPs
  • Polymorphism and Encapsulation
  • Exception Handling, File Handling and Debugging
  • Modules & Packages
  • Regular Expressions
  • Decorators and Generators
  • Comprehension in Python

1 - Introduction to Data Science

  • Fundamentals of data science
  • Data science vs. data analysis vs. data engineering
  • Descriptive and predictive analytics
  • The data science life cycle
  • Working with different data types: structured, semi-structured, and unstructured
  • Applications of data science across various industries

 

2 - Data Acquisition:

  • Beautiful Soup
  • Scrapy

 

3 - Data Manipulation:

  • Numpy
  • Pandas

 

4 – Data Visualization:

  • Matplotlib
  • Seaborn
  • Probability concepts
  • Statistical measures
  • Joint probability
  • Conditional probability and Bayes theorem
  • Measures of location and variability
  • Probability distributions
  • Sampling methods
  • Key statistical concepts
  • Statistical hypothesis testing

1- Machine learning - Regression

  • Machine learning basics and types
  • Deep learning and recommender systems
  • Regression concepts
  • Univariate and multivariate linear regression
  • Feature scaling
  • Linear regression with scikit-learn
  • Regularization (Lasso, Ridge, ElasticNet)
  • Support vector regression
  • Nearest neighbour regression
  • Decision tree regression
  • Feature engineering and categorical variables encoding
  • Numerical variables transformation
  • Feature selection (wrapper and intrinsic methods)
  • Model evaluation metrics
  • Dummy regressors
  • Cross-validation

 

2 - Machine learning - Classification

  • Types of classification problems
  • Logistic regression
  • Support vector machines
  • Decision trees
  • Naive Bayes
  • K-nearest neighbors
  • Ensemble learning
  • XGBoost, LightGBM, and CatBoost
  • Learning curves
  • Model evaluation
  • Dummy estimators
  • Handling imbalanced class problems
  • Hyperparameter optimization

 

3 - Machine learning - Clustering

  • Unsupervised learning
  • K-means clustering
  • Hierarchical clustering
  • DBSCAN clustering and customer segmentation
  • Apriori algorithm and association rules
  • Principal component analysis for dimensionality reduction
  • Semi-supervised learning techniques

 

4 -  Machine Learning Tools and Libraries

  • Automated machine learning with Pandas Profiling and PyCaret
  • RAPIDS (Using GPU for Fast Computations

 

5 - Big Data Tools and Technologies

  • What is big data?
  • Hadoop ecosystem
  • MapReduce framework
  • Apache Spark and its components
  • Data preprocessing with scikit-learn
  • Data modeling with scikit-learn
  • Clustering with scikit-learn
  • Gradient boosting with XGBoost
  • Introduction to deep learning
  • Neural networks
  • Feedforward neural networks
  • Backpropagation
  • Convolutional neural networks
  • Recurrent neural networks
  • LSTM networks
  • Introduction to TensorFlow and Keras
  • Building and training deep learning models
  • Evaluating and optimizing deep learning models

 

  • Introduction to building scalable model pipelines
  • Applied data science
  • Python for scalable compute
  • Cloud environments and coding environments
  • Introduction to datasets
  • Prototype models
  • Models as web endpoints
  • Deploying a web endpoint
  • Models as serverless functions
  • Containers for reproducible models
  • Workflow tools for model pipelines
  • PySpark for batch pipelines
  • Cloud Dataflow for batch modeling
  • Streaming model workflows
Program Fees

BASIC PROGRAM

⏳ 60hrs - 90hrs
  • 1-to-1 Mode Class Training
  • You will get a strong understanding of Fundamental Concepts
  • Core Practical Training and Project Guidance Support with Latest Projects
  • Daily Quiz & Assessments

ADVANCE PROGRAM

⏳ 120hrs - 180hrs
  • 1-to-1 Mode Class Training
  • Training sessions are Facilitates with Latest & Advanced Technology Concepts
  • Industrial Projects + Job Preparation Training + Workplace Management + Communication Training
  • Placement Assistance
Data Science - Job Outlook

Demand

The demand for skilled Data Scientists is experiencing exponential growth, driven by the increasing reliance on data driven decision making across all industries. This demand is reflected in the job market. This trend is expected to continue, creating numerous opportunities for aspiring Data Scientists.

Future Scope

The future of Data Science shines bright, fueled by several key factors: the exponential growth of data volume, the increasing adoption of AI and Machine Learning, and the continuous advancements in Data Science tools and techniques. This translates to a rapidly expanding landscape for Data Scientists in the years to come.

Industry Growth

The global big data market is projected to reach a staggering $300 billion by 2026, showcasing the significant growth potential within data related fields. Data science, being the backbone of extracting valuable insights from this vast data, is poised to thrive within this expanding market, creating numerous career opportunities across diverse industries.

Job Opportunities

Frequently Asked Questions (FAQ)

No, learning Data Science is challenging but not difficult, catering to various experience levels, including beginners.

Data Science provides powerful tools and techniques for extracting insights from data, making it a highly sought-after skill for solving complex problems and making informed decisions.

Yes, fresher can secure jobs in Data Science as the demand for Data Scientists is high across industries.

No specific prerequisites. The course accommodates learners with varying levels of experience.

For Advance Course enrollees, Sadhvi Academy provides comprehensive job placement support, including counseling, resume help, mock interviews, networking, and assistance with potential employers.

Yes, upon successful completion, you get a certificate validating your Data Science proficiency.

Yes, you get lifetime access to course materials for ongoing learning.

Certainly! The training includes hands-on projects, allowing you to apply Data Science techniques to real-world scenarios and build a strong portfolio.

Inspiring education starts here!
Contact Us!

Get ready to explore the realms of Best Data Science expertise. Reach out to us and let’s launch your extraordinary journey into the realm of Data Science market.

Sadhvi Academy in Coimbatore near Thudiyalur
Scroll to Top