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Android Machine Learning with Tensorflow Lite – 2024 Edition

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Published 9/2024
Created by Mobile ML Academy by Hamza Asif
MP4 | Video: h264, 1280×720 | Audio: AAC, 44.1 KHz, 2 Ch
Genre: eLearning | Language: English | Duration: 141 Lectures ( 11h 56m ) | Size: 7.3 GB

Train Image Classification, Object Detection and Regression models for Android – Build Smart Android Kotlin Applications

What you’ll learn:
Train Machine Learning models for Android Applications
Train Image Classification and Object Detection Models for Android Apps
Train Linear Regression Models for Android Apps
Integrate Tensorflow Lite models in Android kotlin Apps
Use Computer Vision Models in Android with both Images and Live Camera Footage
Train Object Detection model to count and detect fruits and build Android Application
Train a fruit classification model and build a Fruit Recognition Android Application
Train a brain tumor classification model and build Android App
Train a machine learning model and build a fuel efficiency prediction Android Application
Train a machine learning model and build a house price prediction Android Application
Train Any Prediction, Classification & Object Detection Model & use it in Android Applications
Analysing & using advance regression models in Android Applications
Data Collection, Data Annotation & Preprocessing for ML model training for Android Application
Basics of Machine Learning & Deep Learning for training Machine learning Models for Android
Understand the working of artificial neural networks for training machine learning for Android
Basic syntax of Python programming language to train ML models for Android
Use of data science libraries like numpy, pandas and matplotlib

Requirements:
Visual Studio Code or Android Installed on Your System

Description:
Do you want to train different Machine Learning models and build smart Android applications then Welcome to this course.In this course, you will learn to train powerfulImage ClassificationObject DetectionLinear Regressionmodel in python from scratch. After that you will learn toUse your custom trained Machine Learning Models in AndroidUse existing tensorflow lite models in Android AppsRegressionRegression is one of the fundamental techniques in Machine Learning which can be used for countless applications. Like you can train Machine Learning models using regression to predict the price of the houseto predict the Fuel Efficiency of vehiclesto recommend drug doses for medical conditionsto recommend fertilizer in agriculture to suggest exercises for improvement in player performanceand so on. So Inside this course, you will learn to train your custom linear regression models in Tensorflow Lite format and build smart Android Applications.Image Classification & ApplicationsImage classification is the process of recognizing different entities or things in an image or video. You can recognize animals, plants, diseases, food, activities, colors, things, fictional characters, drinks, etc with image recognition.In e-commerce applications image classification can be used to categorize products based on their visual features, So it is used to organize products into categories for easy browsing.Image classification can be used to power visual search in mobile apps, so users can take a picture of an object and then find similar items for sale.Image classification can be used in medical apps to diagnose disease based on medical images, such as X-rays or CT scans.We can use image classification to build countless recognition applications for performing number of tasks, like we can train a model and build applications to recognizeDifferent Breeds of dogsDifferent Types of plantsDifferent Species of AnimalsDifferent kind of precious stonesImage Classification & ApplicationsObject detection is a powerful computer vision technique that can accurately identify and pinpoint the location of various objects within images or videos. By recognizing objects like cars, people, and animals, this technology empowers applications such as security surveillance, autonomous vehicles, and smartphone apps that can identify objects through the camera lens.Key Applications:Autonomous Vehicles: Cars equipped with object detection can safely navigate roads, avoid collisions, and enhance driver assistance systems.Surveillance Systems: Security cameras can identify individuals, track suspicious activity, and detect intrusions.Retail: Stores can monitor customer behavior, manage inventory, and prevent theft.Healthcare: Medical imaging systems can detect anomalies like tumors and fractures.Agriculture: Farmers can monitor crops, livestock, and detect pests or diseases.Manufacturing: Quality control and automation can be improved through object inspection and robotic guidance.Sports Analytics: Tracking player movements and equipment can enhance performance analysis and fan experience.Environmental Monitoring: Wildlife conservation and habitat protection can benefit from object detection.Smart Cities: Traffic management, public space monitoring, and waste management can be optimized.I’m Muhammad Hamza Asif, and in this course, we’ll embark on a journey to combine the power of predictive modeling with the flexibility of Android app development. Whether you’re a seasoned Android developer or new to the scene, this course has something valuable to offer youCourse Overview: We’ll begin by exploring the basics of Machine Learning and its various types, and then dive into the world of deep learning and artificial neural networks, which will serve as the foundation for training our machine learning models for Android.The Android-ML Fusion: After grasping the core concepts, we’ll bridge the gap between Android and Machine Learning. To do this, we’ll kickstart our journey with Python programming, a versatile language that will pave the way for our machine learning model trainingUnlocking Data’s Power: To prepare and analyze our datasets effectively, we’ll dive into essential data science libraries like NumPy, Pandas, and Matplotlib. These powerful tools will equip you to harness data’s potential for accurate predictions.Tensorflow for Mobile: Next, we’ll immerse ourselves in the world of TensorFlow, a library that not only supports model training using neural networks but also caters to mobile devices, including AndroidRegression Models TrainingTraining Your First Machine Learning Model:Harness TensorFlow and Python to create a simple linear regression modelConvert the model into TFLite format, making it compatible with AndroidLearn to integrate the tflite model into Android apps for AndroidFuel Efficiency Prediction:Apply your knowledge to a real-world problem by predicting automobile fuel efficiencySeamlessly integrate the model into a Android app for an intuitive fuel efficiency prediction experienceHouse Price Prediction in Android:Master the art of training machine learning models on substantial datasetsUtilize the trained model within your Android app to predict house prices confidentlyComputer Vision Model TrainingImage Classification in Android:Collect and process dataset for model trainingTrain image classification models on custom datasets with Teachable MachineTrain image classification models on custom datasets with Transfer LearningUse image classification models in Android with both images and live camera footageObject Detection in AndroidCollect and Annotate Dataset for Object Detection Model TrainingTrain Object Detection ModelsUse object detection models in Android with Images & VideosThe Android Advantage: By the end of this course, you’ll be equipped to:Train advanced machine learning models for accurate predictionsSeamlessly integrate tflite models into your Android applicationsAnalyze and use existing regression & vision (ML) models effectively within the Android ecosystemWho Should Enroll:Aspiring Android developers eager to add predictive modeling to their skillsetBeginner Android developer with very little knowledge of mobile app development Intermediate Android developer wanted to build a powerful Machine Learning-based applicationExperienced Android developers wanted to use Machine Learning models inside their applications.Step into the World of Android and Machine Learning: Join us on this exciting journey and unlock the potential of Android and Machine Learning. By the end of the course, you’ll be ready to develop Android applications that not only look great but also make informed, data-driven decisions.Enroll now and embrace the fusion of Android and Machine Learning!


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