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Duration

20 hours

Price

Level

Any Level

Certification

Available

Instructor

John Bura

Mammoth Interactive

Detect emotions, faces, analyze images & predict the stock market! Build neuron functions, convolutions, graphs & apps.

Expected learning & outcomes

  • Build Linear Regression Models
  • Build Computational Graphs
  • Train and Test Machine Learning Models
  • Making Prediction Using Models
  • Explore Datasets Like CIFAR 10
  • Collaborate with the Mammoth Interactive Community
  • Build, Train and Test Datasets
  • Detect Features in Images Like Faces and Emotions
  • Build Advanced Projects with Large Datasets
  • Parse JSON Data for Simple Stock Market Prediction

    Skills you will learn

    Android, Artificial Intelligence, Concentration, Data Science, Java, Library, machine learning, Machine Learning Models, Python

    About this course

    Build Incredible Machine Learning Projects

    Machine learning allows you to analyze data (or past experiences) and use this knowledge to make decisions in the present or predict what might happen in the future.

    Sneak peek all the amazing projects we will build in this course:

    Tensorflow Linear Regression Model
    Simple MNIST Digit Recognition Model
    Detecting Emotions Image Recognition Model
    Advanced MNIST Neural Network
    CIFAR 10 Data Model
    Detecting Faces Machine Learning Model
    Advanced CIFAR 100 Machine Learning Model
    Stock Market Prediction Model

    What Makes This Course Unique

    There are next to no courses that focus on mobile machine learning in particular. All of them focus specifically on machine learning for a desktop or laptop environment.

    As well, I’ve found that most courses don’t do a great job of explaining exactly what is going on at each step in the process and why we choose to build models the way we do. I aim to provide clear, concise explanations at each step along the way so that viewers can not only replicate, but also understand and expand upon what I teach.Included in this course is material for beginners to get comfortable with the interfaces. Please note that we reuse this content in similar courses because it is introductory material. You can find some material in this course in the following related courses:

    • Predict the stock market with data and model building!

    • Predict the Stock Market and Learn NumPy with Python AI

    • Detect Fraud and Predict the Stock Market with TensorFlow

    • The Complete Unity and Artificial Intelligence Masterclass

    • The Ultimate Unity Games & Python Artificial Intelligence

    • Hands-On Machine Learning: Learn TensorFlow, Python, & Java!

    Grow Your Portfolio

    1. Discover the Keras library

      1. What Keras is used for

      2. Compare and contrast Keras to TensorFlow

      3. Learn where and how to use Keras

    2. Build a simple image recognition project using the CIFAR-10 library

      1. Build a basic version in PyCharm

      2. Save the trained model

      3. Export the trained model to Android Studio

      4. Build an app around the model

    3. Build a facial recognition project

      1. Build a basic version in PyCharm

      2. Save the trained model

      3. Export the trained model to Android Studio

      4. Build an app around the model

    4. Build a happy/sad face detection project

      1. Build a basic version in PyCharm

      2. Save the trained model

      3. Export the trained model to Android Studio

      4. Build an app around the model

    5. Advanced Topics to build more complex models

    Enroll Now To Learn The Most In Demand Skills Today

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