Udemy

Deep learning and Machine Learning with Python

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  • 136 Students
  • Updated 6/2024
4.5
(54 Ratings)
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Course Information

Registration period
Year-round Recruitment
Course Level
Study Mode
Duration
10 Hour(s) 12 Minute(s)
Language
English
Taught by
Selfcode Academy
Rating
4.5
(54 Ratings)

Course Overview

Deep learning and Machine Learning with Python

Master Artificial Intelligence and Deep Learning with Python


Master Deep Learning with Python for AI Excellence


Course Description:

This meticulously crafted course is designed to empower you with comprehensive knowledge and practical skills to thrive in the world of artificial intelligence.

Immerse yourself in engaging lectures and hands-on lab sessions that cover fundamental concepts, cutting-edge methodologies, and real-world applications of deep learning. Gain expertise in essential Python libraries, machine learning algorithms, and advanced techniques, setting a solid foundation for your AI career.


Course Highlights:

In-Demand Skills: Acquire the highly sought-after skills demanded by today's AI-centric job market, opening doors to data science, machine learning, and AI development roles.

Hands-On Learning: Learn by doing! Our interactive lab sessions ensure you gain practical experience, from data preprocessing to model evaluation, making you a proficient deep learning practitioner.

Comprehensive Curriculum: From foundational Python libraries like Pandas and NumPy to cutting-edge neural network architectures like CNNs and RNNs, this course covers it all. Explore linear regression, logistic regression, decision trees, clustering, anomaly detection, and more.

Expert Guidance: Our experienced instructors are committed to your success. Receive expert guidance, personalized feedback, and valuable insights to accelerate your learning journey.

Project-Based Learning: Strengthen your skills with real-world projects that showcase your deep learning capabilities, building a compelling portfolio.

Practical Applications: Understand how deep learning powers real-world applications, including image recognition, natural language processing, recommendation systems, and autonomous vehicles.


Who Should Enroll:

Aspiring Data Scientists: Start your journey into data science and AI with the skills and knowledge needed to excel.

Machine Learning Enthusiasts: Deepen your understanding of machine learning and take it to the next level with deep learning applications.

AI Developers: Enhance your proficiency in deep learning to stay ahead in this rapidly evolving field.


Whether you're new to AI or an experienced professional, this course empowers you to harness the full potential of deep learning and Python, opening doors to limitless opportunities. Don't miss this chance to shape your future in artificial intelligence.


Course Curriculum

Section 1: Introduction

Understand the significance of deep learning and its implications.

Get familiar with essential Integrated Development Environments (IDEs).


Section 2: Python Libraries

Master data manipulation with Pandas.

Explore numerical operations with NumPy.

Dive into scientific analysis using Scipy.

Create visually appealing graphics with Matplotlib.

Craft elegant visualizations with Seaborn.


Section 3: Introduction to Deep Learning

Uncover the fundamental principles of deep learning.

Grasp the pivotal role of neural networks.


Section 4: Supervised vs. Unsupervised Learning

Demystify supervised and unsupervised learning.


Section 5: Linear Regression

Master linear regression for prediction.


Section 6: Multiple Linear Regression

Predict multiple outcomes using advanced techniques.


Section 7: Logistic Regression

Equip computers with decision-making capabilities.


Section 8: Decision Trees

Explore decision trees and essential companions like Xgboost and Random Forest.


Section 9: Clustering

Organize data through clustering.


Section 10: Anomaly Detection

Identify anomalies in data.


Section 11: Collaborative and Content-Based Filtering

Deliver personalized recommendations.


Section 12: Reinforcement Learning

Immerse in dynamic reinforcement learning.


Section 13: Neural Networks

Delve into the core of AI with neural networks.


Section 14: TensorFlow

Master the acclaimed deep learning library.


Section 15: Keras

Build and train deep learning models with ease.


Section 16: PyTorch

Explore the dynamic and versatile deep-learning library.


Section 17: RNN and CNN

Unlock specialized architectures for sequential data and image processing.


Upon course completion, you'll possess a profound understanding of deep learning, ready to tackle diverse AI and machine learning challenges using Python's robust toolkit.

This course equips you to confidently step into the realm of AI mastery. Experience the magic of AI and command your computer to achieve remarkable feats!


Enroll now and unlock the magic of Deep Learning and Python!"


Course Content

  • 10 section(s)
  • 30 lecture(s)
  • Section 1 Introduction
  • Section 2 Python Libraries
  • Section 3 Introduction to Deep Learning
  • Section 4 Super vised vs Unsupervised
  • Section 5 Linear Regression
  • Section 6 Multiple Linear Regression
  • Section 7 Logistic Regression
  • Section 8 Decision Trees
  • Section 9 Clustering
  • Section 10 Anomaly Detection

What You’ll Learn

  • Data visualization libraries such as Pandas, Matplotlib, Seaborn, and NumPy.
  • Key concepts of machine learning, including supervised and unsupervised learning, and understand the differences between them.
  • Implementation of linear regression models.
  • Understanding the concept of cost functions.
  • Employing gradient descent for optimization.
  • Decision tree algorithms, including XGBoost and Random Forests.
  • Understand how ensemble methods work and their applications in predictive modeling, enabling them to construct more accurate and robust models.
  • They will also be able to extend their skills to logistic regression, including cost functions and gradient descent specific to classification problems.


Reviews

  • n
    neelam
    5.0

    excellent course.

  • K
    Karthik Mani
    5.0

    Thank you so much for the insightful learning experience with lots of examples and python coding.

  • A
    Arjun
    5.0

    Nice course with interactive content.

  • M
    Maya
    5.0

    Highly informative, well-paced course

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