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Learn Master Course Fundamentals of Machine Learning

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Learn Master Course : Fundamentals of Machine Learning (Free Udemy Course)

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Learn Master Course : Fundamentals of Machine Learning (Free Udemy Course) : Machine Learning, Supervised Machine Learning, Unsupervised Machine Learning, Deep Learning, TensorFlow, Keras, NLP

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What you’ll learn in the Learn Master Course : Fundamentals of Machine Learning

  • Foundations of Machine Learning: Preprocessing, Supervised Learning, and Beyond
  • Mastering Machine Learning: Unsupervised Techniques, Model Evaluation, and More
  • Feature Engineering and Deep Learning: Unlocking the Power of Data
  • TensorFlow, Keras, and NLP: Building Bridges to Natural Language Understanding
  • Visualizing the Future: Computer Vision, Reinforcement Learning, and Ethical Dilemmas in AI

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Learn Master Course : Fundamentals of Machine Learning Includes

  • 1 hour on-demand video
  • Access on mobile and TV
  • Full lifetime access
  • Certificate of completion

Requirement of the Learn Master Course : Fundamentals of Machine Learning

  • Basic skills and ideas of machine learning and deep learning

Description

  • Master Course : Fundamentals of Machine Learning (101 level)
  • Welcome to the exciting world of machine learning! In this master course, we’ll delve into the fundamental concepts of machine learning at a 101 level. Machine learning is a subset of artificial intelligence (AI) that empowers computers to learn from data and make predictions or decisions without explicit programming. Understanding these basics will lay the groundwork for your journey into the vast and ever-evolving field of machine learning.
  • Machine learning is a branch of AI that focuses on creating algorithms and models that can learn from data. Instead of being explicitly programmed to perform specific tasks, machine learning models can identify patterns and relationships in the data and make decisions or predictions based on those patterns.
  • Machine learning has the potential to revolutionize various industries and improve decision-making processes. In this master course, we’ve covered the fundamentals of machine learning at a 101 level, introducing you to key concepts like supervised and unsupervised learning, the machine learning process, and evaluation metrics.
  • Types of Machine Learning
  • There are three main types of machine learning:
  • a) Supervised Learning: In this type, the algorithm learns from labeled data, meaning it’s provided with input-output pairs during the training phase. The goal is for the model to learn a mapping function that can predict the output for unseen inputs accurately.
  • b) Unsupervised Learning: Unlike supervised learning, unsupervised learning works with unlabeled data. The algorithm’s objective is to find patterns and structures in the data without explicit guidance. Clustering and dimensionality reduction are typical tasks in unsupervised learning.
  • c) Reinforcement Learning: This type of learning is inspired by behavioral psychology, where an agent interacts with an environment and learns to take actions that maximize rewards or minimize penalties. The agent explores the environment and learns from the feedback it receives.
  • The Machine Learning Process
  • The typical machine learning process involves several key steps:
  • a) Data Collection: Obtaining relevant and high-quality data is crucial for successful machine learning models. The data should be representative of the problem you want to solve.
  • b) Data Preprocessing: This step involves cleaning the data, handling missing values, and transforming the data into a suitable format for training the models.
  • c) Feature Engineering: Selecting and creating relevant features from the data is an essential part of building effective machine learning models. Good features can significantly impact the model’s performance.
  • d) Model Selection: Choosing an appropriate algorithm or model architecture for the task at hand is essential. The choice of model depends on the problem type (classification, regression, etc.) and the nature of the data.
  • e) Model Training: In this step, the model is exposed to the training data to learn the underlying patterns and relationships. The algorithm adjusts its parameters to minimize the prediction errors.
  • f) Model Evaluation: Evaluating the model’s performance on a separate set of data (validation or test set) is essential to ensure it generalizes well to unseen data and avoids overfitting.
  • g) Model Deployment: After a successful evaluation, the model can be deployed in a real-world setting to make predictions or decisions.
  • Evaluation Metrics
  • To assess the performance of a machine learning model, various evaluation metrics are used, depending on the type of problem. For classification tasks, metrics like accuracy, precision, recall, and F1-score are commonly used. For regression tasks, mean squared error (MSE) and mean absolute error (MAE) are popular metrics.
  • As you continue your journey into the world of machine learning, remember that practice is crucial. Experiment with different datasets, algorithms, and model architectures to gain hands-on experience. Stay curious, keep learning, and don’t be afraid to explore the ever-expanding possibilities of machine learning!
  • In this master course, I would like to teach the 5 major topics:
  • 1. Foundations of Machine Learning: Preprocessing, Supervised Learning, and Beyond
  • 2. Mastering Machine Learning: Unsupervised Techniques, Model Evaluation, and More
  • 3. Feature Engineering and Deep Learning: Unlocking the Power of Data
  • 4. TensorFlow, Keras, and NLP: Building Bridges to Natural Language Understanding
  • 5. Visualizing the Future: Computer Vision, Reinforcement Learning, and Ethical Dilemmas in AI

Who this course is for :

  • All UG and PG Computer Science and Information Technology and Business Systems Domain Students
  • Interested students to learn about the concepts of Fundamentals of Machine Learning (101 level)

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How to Get this course FREE?

Price & Validity

Actual Price : Rs.1999/-
After 100% Discount : Rs.0/-

Valid for First 1000 Users or till the last date. Hurry up before it closes

Apply this Coupon : 04093BBAF4B1304A8D13 (For 100% Discount)

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Note : Udemy Courses listed here are offered FREE only for first 1000 users or are limited by a date. If the 1000 users limit or last date is completed, the course becomes paid.