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    Data Science With Python

    Posted By: ELK1nG
    Data Science With Python

    Data Science With Python
    Published 5/2023
    MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
    Language: English | Size: 6.74 GB | Duration: 11h 21m

    Analysis, Visualisation & Machine Learning

    What you'll learn

    Become a Certified Data Scientist

    Add Data Engineer to your CV

    Master Python with a crash course

    Implement Machine Learning Algorithms

    Perform Classification and Regression

    Grasp practical Natural Language Processing skills with Python

    Master Data Science and the Machine Learning workflow

    Gain an understanding on the correct model to choose for a given problem

    Explore, visualise, pre-process and interpret large datasets

    Perform statistical analysis on datasets

    Work on an entire Data Science and Machine Learning project in Python and add it to your Portfolio

    Requirements

    There are no requirements for this course.

    Students possessing a basic understanding of any programming language will find it easier to follow the course. But it is not a requirement.

    Description

    Are you interested in learning data science and machine learning with Python? If so, this course is for you! Designed for students and professionals who want to acquire practical knowledge and skills in data science and machine learning using Python, this course  covers various topics that are essential for building a strong foundation in data analysis, visualisation, and machine learning. The course covers various essential topics such as an overview of data science and machine learning concepts and terminology. Students will follow a crash course on Python Programming for a strong foundation for Data Science. They will learn about data analysis using Numpy and pandas, and data visualization using Matplotlib and seaborn. Students will also learn about data preprocessing, cleaning, encoding, scaling, and splitting for machine learning. The course covers a range of machine learning techniques, including supervised, unsupervised, and reinforcement learning, and various models such as linear regression, logistics regression, naives bayes, k-nearest neighbours, decision trees and random forests, support vector machines, and k-means clustering. In addition, students will get hands-on training with scikit-learn to train, evaluate, tune, and validate models. They will also learn about natural language processing techniques, including pre-processing, sentence segmentation, tokenization, POS tagging, stop word removal, lemmatization, and frequency analysis, and visualizing dependencies in NLP data. The final week of the course involves working on a final project and taking certification exams.

    Overview

    Section 1: Introduction

    Lecture 1 Introduction

    Lecture 2 Introduction to Data Science

    Section 2: Python Crash Course

    Lecture 3 Python Fundamentals

    Lecture 4 Advanced Python concepts

    Lecture 5 Advanced Python programming

    Section 3: Data Analysis

    Lecture 6 Data analysis

    Section 4: Machine Learning

    Lecture 7 Machine learning

    Lecture 8 Hands on: Machine Learning

    Section 5: Natural Language Processing

    Lecture 9 Natural Language Processing

    Section 6: Project

    Section 7: Exam

    Anyone can take this course as it includes a Python Programming crash course to build your fundamentals too.,Students seeking to gain practical knowledge and skills in data analysis, visualisation, and machine learning using Python,Students who want to possess a highly sought skillset that will open up new career opportunities. (Data scientist, Data engineer, Data analyst)