Hey there, great course, right? Do you like this course?

All of the most interesting lessons further. In order to continue you just need to purchase it

Course sections

1
Orientation
2
Basics of Computing
3
Computational Thinking
4
Environment Setup | Python Basics
5
Jupyter Notebook and Data Types
6
Data Types and Conversion
7
Variable Assignment and Object Storage
8
Immutability and Operators
9
Conditional Statements and Loops
10
Quiz-1: Data Types
11
Assignment-1: Operators | Loops
12
Quiz-2: Conditionals
13
Conditional Statement and Loops Practice
14
Python Loops
15
While Loops
16
Strings
17
Strings Lists and Tuples
18
Quiz-3: Loops | Strings
19
Lists , Tuples and Dictionaries
20
Assignment-2: List | Tuples | Dictionaries
21
Quiz-4: List | Tuple
22
Lists and Tuples
23
Dict | Set
24
Function
25
Modules and Packages - 1
26
Modules and Packages - 2
27
Quiz-5: Dict | Set
28
File Handling
29
Assignment-3: Functions | Modules
30
Quiz-6: Functions
31
File Handling Regular Expression
32
Regular Expression - 1
33
Regular Expression - 2
34
Functional Programming - Map filter lambda
35
Quiz-7: File Handling | Regular Expressions
36
Lambda functions and List Comprehensions
37
Assignment-4: Map | Filter | Lambda
38
Quiz-8: Python Concepts
39
Problem Solving | Doubts Clearning
40
Object Oriented Programming-1
41
Object Oriented Programming - 2
42
Quiz-9: Regular Expressions
43
Object Oriented Programming-3
44
Assignment-5: OOPs
45
Quiz-10: Map | Lambda
46
Object Oriented Programming - 4
47
Object Oriented Programming - 5
48
Unit Testing & Debugging
49
Exception Handling and Generators
50
CSV, JSON, XML File Handling
51
Quiz-11: OOPs
52
Requests & Beautiful Soup
53
Final Project
54
Assignment-6: JSON and OOP Assignment
55
Quiz-12: Testing | Error Handling
56
Collections and Datetime
1
Introduction to Machine Learning
2
Nearest Neighbours & Distance Vectors
3
Understanding Metrices & Implement NN using NumPy
4
Quiz-1: Introduction to ML
5
Quiz-2: Nearest Neighbours
6
Regression in NN & Common Datasets
7
Assignment-1: Nearest Neighbours & KMeans
8
Unsupervised Learning using KMeans
9
Data Preprocessing for Machine Learning
10
Using Preprocessing in ML Applications
11
Introduction to Linear Models
12
Quiz-3: Data Preprocessing Basics
13
implement Linear Regressions & Gradient Descent
14
Assignment-2: Problems using Data Preprocessing
15
Quiz-4: Linear Models
16
Using Linear Regression in Applications
17
Bias & Variance
18
Logistic Regression
19
Assignment-3: Linear Models
20
Quiz-5: Linear & Logistic Regression
21
Cross Validation and Hyper Parameter
22
Quiz-6: Cross Validation & Colum Tranformer
23
Pipeline & ColumnTransformer for ML Model
24
Case Studies for Bias, Variance, Validation and Hyper-parameters
25
Dealing Heterogenous Data
26
Fundamentals of Decision Tree
27
Quiz-7: Pipelines & Hyper-parameter Tuning
28
Understand Decision Tree Algorithm
29
Quiz-8: Decision Trees
30
Implement Regression and Classification DC in Python
31
Support Vector Machines
32
Natural Language Processing
33
Text Preprocessing
34
Conditional Probability & Bayes Theorem
35
Types of Naive Bayes & Applications
36
Assignment Discussion
37
Assignment-4: Decision Tree
38
Case Studies: NLP
39
Assignment-5: Naive Bayes
40
Quiz 9 : NLP & Text Preprocessing
41
Dimensionality Reduction
42
Assignment-6: Machine Learning on Text
43
Revision Session
44
Feature Extraction
45
Quiz 10 : Conditional Probability & Bayes' Theorem
46
Handling of Outliers and imbalanced classes
47
Quiz-11: Dimesionality Reduction & Feature Extraction
48
Quiz-12: Ensemble Models
49
Ensemble Models
50
CNN for Image Classification
51
Discussion Session
52
Introduction To ANN
53
Overview Session
54
Implementation Of ANN
55
Introduction To CNN
56
Implementation Of CNN

Hello world!

Lesson is locked. Please Buy course to proceed.