Data Science with Machine Learning Algorithm using Python
Data Science with Machine Learning Algorithm using Python, available at $19.99, has an average rating of 3.9, with 88 lectures, based on 56 reviews, and has 716 subscribers.
You will learn about The course provides path to become a data scientist Problem Solving Approach Impress interviewers by showing an understanding of the data science concept with Machine Learning Python Basic to Advance Concept Python Libraries for Data Analysis such Numpy, Scipy, Pandas Python Libraries for Data Visualization such Matplotlib, Seaborn, Plotlypy Case Studies of Data Science with Coding Machine Learning With Linear Regression, Logistic Regression, SVM, NLP This course is ideal for individuals who are The course is ideal for beginners, as it starts from the fundamentals and gradually builds up your skills in Data Science with Machine Learning or People interested to learn data science with Machine Learning using Python It is particularly useful for The course is ideal for beginners, as it starts from the fundamentals and gradually builds up your skills in Data Science with Machine Learning or People interested to learn data science with Machine Learning using Python.
Enroll now: Data Science with Machine Learning Algorithm using Python
Summary
Title: Data Science with Machine Learning Algorithm using Python
Price: $19.99
Average Rating: 3.9
Number of Lectures: 88
Number of Published Lectures: 88
Number of Curriculum Items: 88
Number of Published Curriculum Objects: 88
Original Price: ₹999
Quality Status: approved
Status: Live
What You Will Learn
- The course provides path to become a data scientist
- Problem Solving Approach
- Impress interviewers by showing an understanding of the data science concept with Machine Learning
- Python Basic to Advance Concept
- Python Libraries for Data Analysis such Numpy, Scipy, Pandas
- Python Libraries for Data Visualization such Matplotlib, Seaborn, Plotlypy
- Case Studies of Data Science with Coding
- Machine Learning With Linear Regression, Logistic Regression, SVM, NLP
Who Should Attend
- The course is ideal for beginners, as it starts from the fundamentals and gradually builds up your skills in Data Science with Machine Learning
- People interested to learn data science with Machine Learning using Python
Target Audiences
- The course is ideal for beginners, as it starts from the fundamentals and gradually builds up your skills in Data Science with Machine Learning
- People interested to learn data science with Machine Learning using Python
This Course Cover Topics such as Python Basic Concepts, Python Advance Concepts, Numpy Library , Scipy Library , Pandas Library, Matplotlib Library, Seaborn Library, Plotlypy Library, Introduction to Data Science and steps to start Project in Data Science, Case Studies of Data Science and Machine Learning Algorithms such as Linear, Logistic, SVM, NLP
This is best course for any one who wants to start career in data science. with machine Learning.
Data science continues to evolve as one of the most promising and in-demand career paths for skilled professionals. Today, successful data professionals understand that they must advance past the traditional skills of analyzing large amounts of data, data mining, and programming skills. In order to uncover useful intelligence for their organizations, data scientists must master the full spectrum of the data science life cycle and possess a level of flexibility and understanding to maximize returns at each phase of the process.
The course provides path to start career in Data Analysis. Importance of Data, Collection of Data with Case Study is covered.
Machine Learning Types such as Supervise Learning, Unsupervised Learning, are also covered. Machine Learning concept such as Train Test Split, Machine Learning Models, Model Evaluation are also covered.
This Course will design to understand Machine Learning Algorithms with case Studies using Scikit Learn Library. The Machine Learning Algorithms such as Linear Regression, Logistic Regression, SVM, K Mean, KNN, Naïve Bayes, Decision Tree and Random Forest are covered with case studies
Course Curriculum
Chapter 1: Everything about Python used for Data Science and Machine Learning
Lecture 1: Why to join this course?
Lecture 2: Introduction of Python and Python Libraries
Lecture 3: Meet Trainer for this Course
Lecture 4: Set Up – Python IDLE and Google Colab
Lecture 5: Data Type and Variable, Keywords
Lecture 6: How to take input?
Lecture 7: How to produce output?
Lecture 8: Introduction to List, Tuple, Dictionary, Set
Lecture 9: String Operations
Lecture 10: Operators in details
Lecture 11: List Operations in details
Lecture 12: Tuple Operations in details
Lecture 13: Set Operations in details
Lecture 14: Dictionary Operations in details
Lecture 15: Data Type Conversion
Lecture 16: Importance of Indentation
Lecture 17: Random Number, Range Function
Lecture 18: Sequential, Selection & Repetition -for, while, break, continue, if-elif else
Lecture 19: Math Library
Lecture 20: Datetime and Calendar Module
Lecture 21: Create, Edit, Write, Read Text File
Lecture 22: Exception Handling in Python
Lecture 23: Collection Module
Lecture 24: Python Queue
Lecture 25: User Define Functions and inbuilt Function
Lecture 26: Global and local Variables in Functions
Lecture 27: Lambda, Map, Filter and Reduce Function
Lecture 28: isinstance, Use of format, Timeit(), round(), Slice and abs()
Lecture 29: Iterator
Lecture 30: Generator and Decorators
Lecture 31: List Comprehension, Sets, Frozensets and Assertion
Lecture 32: Python CSV file Operations
Lecture 33: Zip Function
Lecture 34: eval(),exec(),repr() function
Lecture 35: Switch Case
Lecture 36: Ternary Operator
Lecture 37: Logging Module
Lecture 38: Python Crash Course
Lecture 39: Numpy Library Tutorial 1
Lecture 40: Numpy Library Tutorial 2
Lecture 41: Numpy Library Tutorial 3
Lecture 42: Numpy Library Tutorial 4
Lecture 43: Numpy Library Tutorial 5
Lecture 44: Numpy Library Tutorial 6
Lecture 45: Numpy Library Tutorial 7
Lecture 46: Numpy Library Office Site
Lecture 47: Scipy Tutorial 1
Lecture 48: Scipy Tutorial 2
Lecture 49: Pandas Library Tutorial 1
Lecture 50: Pandas Library Tutorial 2
Lecture 51: Pandas Library Tutorial 3
Lecture 52: Pandas Library Tutorial 4
Lecture 53: Pandas Library Tutorial 5
Lecture 54: Pandas Library Tutorial 6
Lecture 55: Pandas Library Tutorial 7
Lecture 56: Pandas Library Tutorial 8
Lecture 57: Pandas Library Tutorial 9
Lecture 58: Matplotlib Library Tutorial 1
Lecture 59: Matplotlib Library Tutorial 2
Lecture 60: Matplotlib Library Tutorial 3
Lecture 61: Matplotlib Library Tutorial 4
Lecture 62: Matplotlib Library Tutorial 5
Lecture 63: Seaborn Library Tutorial 1
Lecture 64: Seaborn Library Tutorial 2
Lecture 65: Seaborn Library Tutorial 3
Lecture 66: Plotly Library Tutorial
Lecture 67: How to choose the RIGHT Charts & Graph for your Data
Chapter 2: Data Science Introduction
Lecture 1: Data Science Introduction
Chapter 3: Data Science Example
Lecture 1: Case Study of Suicides in India 2001-2012
Lecture 2: Case Study of Titanic
Lecture 3: Case Study on Google Review using various different plot using Matplotlib
Chapter 4: Machine Learning Introduction
Lecture 1: Training, Testing and Model Evaluation in Machine Learning
Lecture 2: Supervise Learning made easy in Animation
Lecture 3: Unsupervised Machine Learning
Lecture 4: Reinforcement Learning
Lecture 5: Confusion Matrix
Lecture 6: Reasons to Learn Probability for Machine Learning
Lecture 7: Dimension Reduction is Curse in Machine Learning
Chapter 5: Steps to Start Project in Data Science
Lecture 1: Steps to Start Project in Data Science
Chapter 6: Data Science with Machine Learning Algorithms
Lecture 1: Linear Regression
Lecture 2: Logistic Regression
Lecture 3: Support Vector Machines (SVM)
Lecture 4: Support Vector Machines (SVM)
Lecture 5: K Mean Algorithm
Lecture 6: KNN Algorithm
Chapter 7: Scikit Learn Library Tutorial
Lecture 1: Complete Guide to Scikit Learn Library with Case Study on Diabetes Dataset
Lecture 2: Complete Guide to Scikit Learn Library with Case Study on Titanic Dataset
Chapter 8: Natural Language Processing
Lecture 1: NLP Tutorial
Instructors
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Piyushh n Dave9
Professional Trainer of Python, Data Science, AI, ML, DL
Rating Distribution
- 1 stars: 0 votes
- 2 stars: 3 votes
- 3 stars: 5 votes
- 4 stars: 9 votes
- 5 stars: 39 votes
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