Data Science (DS) Description :

This high-impact program will help you draw on the expertise of ICSS’s prominent faculty in an immersive industry-oriented learning pedagogy to set up robust predictive as well as prescriptive models with hands-on experience in Machine Learning algorithms and statistical models. Become industry-ready with an in-depth understanding of in-demand data science and machine learning tools and techniques with Python.

Who is it for?
  • Fresh Graduates.
  • MBA Professionals.
  • Research and Development Professionals.
  • Management Professionals.
  • Consulting Professionals.
  • Banking Professionals.
  • Fin-tech Professionals.
  • IT Professionals.
  • Business intelligence Professionals

Data Science (DS) Curriculum

  • 1.1 Decision Trees & Control
  • 1.2 Binary Number System
  • 1.3 Strings
  • 1.4 Arithmetic Operators
  • 1.5 Loops
  • 2.1 Time Complexity.
  • 2.2 Arrays & Strings.
  • 2.3 Binary Search & 2 Pointers.
  • 2.4 Recursion, Hashing & Sorting.
  • 2.5 Bit Manipulation.
  • 2.6 Stacks, Queues & Linked Lists.
  • 2.7 Trees, Tries, Heap & Greedy.
  • 2.8 DP, Graphs.
  • 2.9 DB, OS & Computer Networks.
  • 3.1 Functions
  • 3.2 Recursions
  • 3.3 Pointers
  • 3.4 Structures
  • 3.5 Unions
  • 3.6 Dynamic Arrays
  • 3.7 Asymptotic Notations
  • 4.1 Sample Or Population Data
  • 4.2 Fundamentals Of Descriptive Statistics
  • 4.3 Measures Of Central Tendency, Asymmetry, And Variability
  • 4.4 Descriptive Statistics
  • 4.5 Distributions
  • 4.6 Estimators And Estimates
  • 4.7 Confidence Intervals
  • 4.8 Inferential Statistic
  • 4.9 Hypothesis Testing
  • 4.10 Regression Analysis
  • 4.11 Subtleties Of Regression Analysis
  • 4.12 Assumptions For Linear Regression Analysis
  • 5.1 Fundamentals Of Python
  • 5.2 Python Environment Setup And Essentials
  • 5.3 Mathematical Computing With Python (NumPy)
  • 5.4 Scientific Computing With Python (Scipy)
  • 5.5 Data Manipulation With Pandas
  • 5.6 ML With Scikit–Learn
  • 5.7 NLP With Scikit Learn
  • 5.8 Data Visualization In Python Using Matplotlib
  • 5.9 Web Scraping With Python Using Beautiful Soup
  • 5.10 Python Integration With Hadoop MapReduce And Spark
  • 6.1 Data Wrangling
  • 6.2 Data Manipulation
  • 6.3 Supervised Learning
  • 6.4 Feature Engineering
  • 6.5 Supervised Learning-Classification
  • 6.6 Time Series Modeling
  • 6.7 Recommender Systems And Text Mining
  • 7.1 AI And Deep Learning
  • 7.2 Deep Learning With Tensor Flow And Keras
  • 7.3 Convolutional Neural Networks (CNN)
  • 7.4 Recurrent Neural Networks (RNN) And Autoencoders
  • 7.5 Unsupervised Learning
  • 8.1 Overview Of Tableau
  • 8.2 Getting Started
  • 8.3 Connect To Data
  • 8.4 Data Visualisations
  • 8.5 Other Functionalities
  • 8.6 Filters
  • 8.7 Drill Down And Up
  • 8.8 Forecasting
  • 8.9 Trend Lines
  • 8.10 Clustering
  • 8.11 Dashboard
Data Science (DS) Program Highlights
  • Gain a comprehensive understanding of data structure and manipulation
  • Comprehend and use linear and non-linear regression models and techniques of classification for data analysis
  • Get a thorough understanding of supervised as well as unsupervised learning models
  • Carry out technical and scientific computing using the SciPy package and its sub-packages such as Integrate, Optimize, Statistics, IO, and Weave
  • Comprehend the different mechanisms of the Hadoop ecosystem
  • Gain expertise in mathematical computing using the Scikit-Learn package and NumPy
  • Know MapReduce and its characteristics, plus inculcate how to ingest data using Sqoop and Flume Master the concepts recommendation engine, and time series modelling and gain practical mastery over principles, algorithms, and applications of Machine Learning
  • Learn to work with HBase, its architecture and data storage, learning the difference between HBase and RDBMS, and use Hive and Impala for partitioning
  • Learn to analyze data using Tableau and become proficient in building interactive dashboard
About Data Science (DS)

World-renowned companies like Netflix, Google, and many IT giants have increased their business development and growth with Data Science and Machine Learning (ML) applications, directed by a data-driven tactic to decision-making.

Eligibility
  • 12th pass
  • Basic Computer Knowledge
Exam Details
  • Offline/Online Mode
Upcoming Batch
S.L.NO. DS Starting Batch
1 10th of every month
2 15th of every month
3 18th of every month

Course Rating

5.00 average rating based on 1 rating

5.0
(1 Review)

Reviews

Write a Review

Rating Here

More Courses for You


Certified Ethical Hacker
(CEH v13 AI)
(4.5 / 5)

The C|EH v13 AI training program includes 20 modules covering various technologies, tactics, and procedures, providing prospective ethical hackers with the core knowledge needed to thrive in cybersecurity.

  • 20 Modules

Computer Hacking Forensics Investigator (CHFI)
(4.5 / 5)

This course will cover all these techniques and more you will learn tools and methods to conduct computer investigations using cutting-edge digital forensics...

  • 16 Modules

Diploma In Cyber Security (DCS)
(4.5 / 5)

Diploma in Cyber Security (DCS) is 6 months training program offered by ICSS. This course curriculum has been developed by and Subject Matter Experts SMEs and insights from industry experts in the domain of cybersecurity.

  • 6 modules