Learn Machine Learning algorithm using Python and various complex technique like Natural Language Processing, Support Vector Machine , appriori rules etc.

Who should enroll

To become a successful business analyst you need basic knowledge of statistics and languages like Statistical Software & R. However, to enroll for this program you should have only interest in analyzing big data and we will take care of the rest. This course is most suitable for –

  • Students hoping to make a career in complex Machine learning Algorithm
  • Industry professionals wanting to make analytics their strong hold

Section 1: Introduction

  • Lecture 1: Application of Machine Learning
  • Lecture 2: Installation of Python
  • Lecture 3: Introductionof Python

Section 2: Control Flow

  • Lecture 4: If-THEN-ELSE
  • Lecture 5: Loop with For and While
  • Lecture 6: Break and Continue Statement
  • Lecture 7: Range () Function
  • Section Quiz

Section 3: Functions

  • Lecture 8: User Defined and System Functions
  • Lecture 9: Functions Argument and List
  • Lecture 10: Lambda Expression
  • Lecture 11: Functions Annotation
  • Section Quiz

Section 4: Data Structure

  • Lecture 12: Linear Structure
  • Lecture 13: Qeue, Stack and Deque Interfaces
  • Lecture 14: List, Uset and SSet Interfaces
  • Lecture 15: Tuples & Ranges
  • Lecture 16: Strings
  • Section Quiz

Section 5: Classes

  • Lecture 17: Names and Objects
  • Lecture 18: Scopes and Namespaces
  • Lecture 19: Classes and Variables
  • Lecture 20: Odds and Ends
  • Section Quiz

Section 6: Exceptional Handling

  • Lecture 21: File Handling
  • Lecture 21: File Operations
  • Lecture 23: Dealing with Errors
  • Lecture 24: Importing Modules

Section 7: Machine Learning Techniques

  • Lecture 25: Regression
  • Lecture 26: Polynomial Regression
  • Lecture 27: Support Vector Machine
  • Lecture 28: Random Forest
  • Lecture 29: Decision Tree
  • Lecture 30: Logistic Regression
  • Lecture 31: Cluster Analysis
  • Lecture 32: Natural Language Processing
  • Lecture 33: Artificial Neural Networking
  • Section Quiz
  • Fee : RS 29,000
  • Duration : 4 Months

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Detail Information for this course


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Detail Information for this course


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Detail Information for this course

Machine Learning and Training Course with Python New Delhi

Machine learning is a process of building up AI learning Algorithms through which machines learn to produce codes by undergoing through data analysis. Python language is a multipurpose language which contains a special library for machine learning namely Numpy and Sciphy.Phython is the best language to start with for beginners.

It supports object oriented and procedure-oriented style of programming. By enrolling for Machine Learning and Training Course with Python in New Delhi you will got to learn about Supervised and Unsupervised Learning, how Statistical Modeling relates to Machine Learning and will be able to compare the distinguished concepts. You will get exposure to various machine learning techniques like Regression, Decision Tree, Logistic Regression, Cluster Analysis, Vector Machine, Random Forest and many more concepts.

If you want to opt for Machine Learning and Training Course with Python in New Delhi, you need to have thorough knowledge of Python programming language for proper analysis of data. Research and development of algorithms are the main spheres where machine learning jobs are inclined towards.

The career prospects in this line is quiet promising, you can make your career as a Machine Learning Analyst, Machine Learning Engineer, Machine Learning Scientist, NLP Data Scientist and Data Sciences Lead.

Having a sound knowledge of data analysis and algorithms along with few years of valid experience, you may expect a salary of Rs.9, 00,000 per annum. This is definitely a great career to opt for as Artificial Intelligence is bound to create handsome amount of jobs in machine learning sector.