HOME > IT & Software > Complete Machine Learning,NLP Bootcamp MLOPS Deployment

Complete Machine Learning,NLP Bootcamp MLOPS Deployment

SynopsisComplete Machine Learning,NLP Bootcamp MLOPS & Deployment...
Complete Machine Learning,NLP Bootcamp MLOPS Deployment  No.1

Complete Machine Learning,NLP Bootcamp MLOPS & Deployment, available at $44.99, has an average rating of 4.65, with 417 lectures, based on 3724 reviews, and has 25495 subscribers.

You will learn about Master foundational and advanced Machine Learning and NLP concepts. Apply theoretical and practical knowledge to real-world projects using Machine learning,NLP And MLOPS Understand and implement mathematical principles behind ML algorithms. Develop and optimize ML models using industry-standard tools and techniques. Understand The Core intuition of Deep Learning such as optimizers,loss functions,neural networks and cnn This course is ideal for individuals who are Aspiring data scientists and machine learning enthusiasts. or Students and professionals looking to enhance their ML and NLP skills. or Beginners with a basic understanding of programming and mathematics. or Anyone interested in understanding and applying machine learning and NLP techniques from scratch to advanced levels. or Beginners Python Developer who wants to get into the Data Science field It is particularly useful for Aspiring data scientists and machine learning enthusiasts. or Students and professionals looking to enhance their ML and NLP skills. or Beginners with a basic understanding of programming and mathematics. or Anyone interested in understanding and applying machine learning and NLP techniques from scratch to advanced levels. or Beginners Python Developer who wants to get into the Data Science field.

Enroll now: Complete Machine Learning,NLP Bootcamp MLOPS & Deployment

Summary

Title: Complete Machine Learning,NLP Bootcamp MLOPS & Deployment

Price: $44.99

Average Rating: 4.65

Number of Lectures: 417

Number of Published Lectures: 404

Number of Curriculum Items: 417

Number of Published Curriculum Objects: 404

Original Price: $19.99

Quality Status: approved

Status: Live

What You Will Learn

  • Master foundational and advanced Machine Learning and NLP concepts.
  • Apply theoretical and practical knowledge to real-world projects using Machine learning,NLP And MLOPS
  • Understand and implement mathematical principles behind ML algorithms.
  • Develop and optimize ML models using industry-standard tools and techniques.
  • Understand The Core intuition of Deep Learning such as optimizers,loss functions,neural networks and cnn
  • Who Should Attend

  • Aspiring data scientists and machine learning enthusiasts.
  • Students and professionals looking to enhance their ML and NLP skills.
  • Beginners with a basic understanding of programming and mathematics.
  • Anyone interested in understanding and applying machine learning and NLP techniques from scratch to advanced levels.
  • Beginners Python Developer who wants to get into the Data Science field
  • Target Audiences

  • Aspiring data scientists and machine learning enthusiasts.
  • Students and professionals looking to enhance their ML and NLP skills.
  • Beginners with a basic understanding of programming and mathematics.
  • Anyone interested in understanding and applying machine learning and NLP techniques from scratch to advanced levels.
  • Beginners Python Developer who wants to get into the Data Science field
  • Are you looking to master Machine Learning (ML) and Natural Language Processing (NLP) from the ground up? This comprehensive course is designed to take you on a journey from understanding the basics to mastering advanced concepts, all while providing practical insights and hands-on experience.

    What You’ll Learn:

  • Foundational Concepts: Start with the basics of ML and NLP, including algorithms, models, and techniques used in these fields. Understand the core principles that drive machine learning and natural language processing.

  • Advanced Topics: Dive deeper into advanced topics such as deep learning, reinforcement learning, and transformer models. Learn how to apply these concepts to build more complex and powerful models.

  • Practical Applications: Gain practical experience by working on real-world projects and case studies. Apply your knowledge to solve problems in various domains, including healthcare, finance, and e-commerce.

  • Mathematical Foundations: Develop a strong mathematical foundation by learning the math behind ML and NLP algorithms. Understand concepts such as linear algebra, calculus, and probability theory.

  • Industry-standard Tools: Familiarize yourself with industry-standard tools and libraries used in ML and NLP, including TensorFlow, PyTorch, and scikit-learn. Learn how to use these tools to build and deploy models.

  • Optimization Techniques: Learn how to optimize ML and NLP models for better performance and efficiency. Understand techniques such as hyperparameter tuning, model selection, and model evaluation.

  • Who Is This Course For:

    This course is suitable for anyone interested in learning machine learning and natural language processing, from beginners to advanced learners. Whether you’re a student, a professional looking to upskill, or someone looking to switch careers, this course will provide you with the knowledge and skills you need to succeed in the field of ML and NLP.

    Why Take This Course:

    By the end of this course, you’ll have a comprehensive understanding of machine learning and natural language processing, from the basics to advanced concepts. You’ll be able to apply your knowledge to build real-world projects, and you’ll have the skills needed to pursue a career in ML and NLP.

    Join us on this journey to master Machine Learning and Natural Language Processing. Enroll now and start building your future in AI.

    Course Curriculum

    Chapter 1: Getting Started

    Lecture 1: Welcome To The Course

    Lecture 2: Complete Materials

    Lecture 3: Anaconda Installation

    Lecture 4: Getting Started With VS Code

    Chapter 2: Python Programming Language

    Lecture 1: Getting Started With VS Code

    Lecture 2: Different Ways of Creating Virtual Environment

    Lecture 3: Solve Conda Not Recognized Isssue

    Lecture 4: Python Basics-Syntax And Semantics

    Lecture 5: Variables In Python

    Lecture 6: Basics Data Types In Python

    Lecture 7: Operators In Python

    Lecture 8: Coding Excercise And Assignments

    Chapter 3: Python Control Flow

    Lecture 1: Conditional Statements (if, elif, else)

    Lecture 2: Loops In Python

    Lecture 3: Coding Excercise And Assignments

    Chapter 4: Inbuilt Data Structures In Python

    Lecture 1: List And List Comprehension In Python

    Lecture 2: List Practice Code And Assignment

    Lecture 3: Tuple In Python

    Lecture 4: Tuple Assignment And Practise Code

    Lecture 5: Sets In Python

    Lecture 6: Sets Assignment and Practise Code

    Lecture 7: Dictionaries In Python

    Lecture 8: Dictionaries Assignments And Practise Questions

    Lecture 9: Real world Usecases Of List

    Chapter 5: Functions In Python

    Lecture 1: Getting Started With Functions

    Lecture 2: More Coding Example With Functions

    Lecture 3: Lambda Function In Python

    Lecture 4: Map Function In Python

    Lecture 5: Filter Function In Python

    Lecture 6: Functions Assignments and Practise Content

    Chapter 6: Importing Creating Modules And Packages

    Lecture 1: Import Modules And Packages In Python

    Lecture 2: Standard Library Overview

    Lecture 3: Packages Assignment And Practise Questions With Solutions

    Chapter 7: File Handling In Python

    Lecture 1: File Operation In Python

    Lecture 2: Working With File Paths

    Lecture 3: File handling Operation Assignment With Solutions

    Chapter 8: Exception Handling In Python

    Lecture 1: Exception Handling With try except else and finally blocks

    Lecture 2: Exception Handling Practise Assignments And Solution

    Chapter 9: OOPS Concepts With Classes And Objects

    Lecture 1: Classes And Objects In Python

    Lecture 2: Classes And Objects Practise Questions And Solutions

    Lecture 3: Inheritance In OOPS

    Lecture 4: Polymorphism In OOPS

    Lecture 5: Encapsulation In OOPS

    Lecture 6: Abstraction In OOPS

    Lecture 7: Practise Assignments With Solutions

    Lecture 8: Magic Methods In Python

    Lecture 9: Operator Overloading In Python

    Lecture 10: Custom Exception Handling

    Lecture 11: Complete OOPS Practise Question With Solutions

    Chapter 10: Advance Python

    Lecture 1: Iterators In Python

    Lecture 2: Generators With Practical Implementation

    Lecture 3: Function Copy,Cloures And Decorators

    Lecture 4: Advance Python Practise Questions And Solutions

    Chapter 11: Data Analysis With Python

    Lecture 1: Numpy In Python

    Lecture 2: Pandas- DataFrame And Series

    Lecture 3: Data Manipulation With Pandas And Numpy

    Lecture 4: Reading Data From Various Data Source Using Pandas

    Lecture 5: Data Visualization With Matplotlib

    Lecture 6: Data Visualization With Seaborn

    Lecture 7: Pandas And Numpy Assignments And Solutions

    Chapter 12: Working With Sqlite3

    Lecture 1: SQLITE3 Assignments And Solutions

    Lecture 2: Crud Operation With SQLite3 And Python

    Chapter 13: Logging In Python

    Lecture 1: Logging Practical Implementation In Python

    Lecture 2: Logging With Multiple Loggers

    Lecture 3: Logging With A Real World Example

    Lecture 4: Logging Assignments And Solutions

    Chapter 14: Python Multi Threading and Multi Processing

    Lecture 1: What Is Process And Threads

    Lecture 2: 2-Multithreading Practical Implementation With Python

    Lecture 3: Multiprocessing Practical Implementation With Python

    Lecture 4: Thread Pool Executor and Process Pool

    Lecture 5: Implement Web Scraping Usecase With Multithreading

    Lecture 6: Real World Usecase Implementation With MultiProcessing

    Chapter 15: Memory Management With Python

    Lecture 1: Memory Allocation And DeallocationGarbage collection and Best Practises

    Chapter 16: Getting Started With Flask Framework

    Lecture 1: Introduction To Flask Framework

    Lecture 2: Understanding Simple Flask App Skeleton

    Lecture 3: Integrating HTML With Flask Web App

    Lecture 4: Working With HTTP Verbs Get And Post

    Lecture 5: Building Dynamic Url ,Variables Rule And Jinja 2 Template Engine

    Lecture 6: Working With Rest APIs And HTTP Verbs Put And Delete

    Chapter 17: Getting Started With Streamlit Web Framework

    Lecture 1: Building Web App Using Streamlit

    Lecture 2: Example Of ML App With Streamlit Web App

    Chapter 18: Getting Started With Statistics

    Lecture 1: What is Statistics And its Application

    Instructors

  • Complete Machine Learning,NLP Bootcamp MLOPS Deployment  No.2
    Krish Naik
    Chief AI Engineer
  • Complete Machine Learning,NLP Bootcamp MLOPS Deployment  No.3
    KRISHAI Technologies Private Limited
    Artificial intelligence and machine learning engineer
  • Rating Distribution

  • 1 stars: 28 votes
  • 2 stars: 34 votes
  • 3 stars: 187 votes
  • 4 stars: 1170 votes
  • 5 stars: 2305 votes
  • Frequently Asked Questions

    How long do I have access to the course materials?

    You can view and review the lecture materials indefinitely, like an on-demand channel.

    Can I take my courses with me wherever I go?

    Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don’t have an internet connection, some instructors also let their students download course lectures. That’s up to the instructor though, so make sure you get on their good side!