DATA SCIENCE Course

Course Duration
3 MONTHS
Course Type
CLASS ROOM & ONLINE
Eligibility
ANY DEGREE

Data Science is an interdisciplinary field that involves extracting actionable insights and knowledge from both structured and unstructured data. This is achieved through a combination of statistical analysis, machine learning, and domain expertise. The field encompasses the entire data lifecycle, starting from data collection and cleaning, and progressing to exploration, modeling, and interpretation. Data Scientists utilize various tools and programming languages, such as Python and R, to analyze complex datasets and uncover patterns, trends, and correlations. The insights derived from data science are essential for making informed decisions, developing predictive models, and creating data-driven strategies across a wide range of industries, including finance, healthcare, marketing, and technology. Given its ability to address complex business challenges, Data Science has become an integral component of the modern technological landscape.Unlock the potential of data with our specialized Data Science Training in Chennai.

COURSE SYLLABUS

Course Duration - 3 months

01

Introduction to Data Science:
  • Overview of Data Science and its applications.
  • Introduction to key concepts such as data, information, and knowledge.

02

Data Exploration and Cleaning:
  • Techniques for exploring and understanding datasets.
  • Cleaning and preprocessing data for analysis.

03

Statistical Analysis with Python/R:
  • Descriptive statistics and data visualization.
  • Inferential statistics and hypothesis testing.

04

Introduction to Programming (Python/R):
  • Basic programming concepts.
  • Coding fundamentals using Python or R.

05

Data Wrangling and Manipulation:
  • Data wrangling using libraries like Pandas (Python) or dplyr (R).
  • Handling missing data and outliers.

06

Machine Learning Fundamentals:
  • Introduction to supervised and unsupervised learning.
  • Building and evaluating machine learning models.

07

Feature Engineering and Selection:
  • Creating relevant features for machine learning models.
  • Techniques for selecting important features.

08

Model Evaluation and Validation:
  • Cross-validation and model evaluation metrics.
  • Hyperparameter tuning for model optimization.

09

Introduction to Deep Learning:
  • Basics of neural networks and deep learning.
  • Applications of deep learning in Data Science.

10

Big Data Technologies:
  • Introduction to big data concepts.
  • Working with distributed computing frameworks (e.g., Apache Spark).

11

Data Science Tools and Libraries:
  • Overview of popular Data Science tools and libraries (e.g., Jupyter, TensorFlow, scikit-learn).
  • Hands-on exercises using these tools.