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Android & Linear Regression: House Price Prediction App

 


Android & Linear Regression: House Price Prediction App


Published 11/2023

MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz

Language: English | Size: 2.98 GB | Duration: 4h 43mb


Train regression models for Android | Use regression models in Android | Tensorflow Lite models integration in Android


 


What you'll learn


 


Train linear regression models for Android Applications


 


Integrate regression models in Android Applications


 


Use of Tensorflow Lite models in Android


 


Train Any Prediction Model & use it in Android Applications


 


Data Collection & Preprocessing for model training


 


Basics of Machine Learning & Deep Learning


 


Understand the working of artificial neural networks for model training


 


Basic syntax of python programming language


 


Use of data science libraries like numpy, pandas and matplotlib


 


Analysing & using advance regression models in Android Applications


 


Requirements


 


Android studio installed in your PC


 


Description


 


Welcome to the exciting world of Android and Linear Regression! 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 delve into the world of deep learning and artificial neural networks, which will serve as the foundation for training our regression models in 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 regression 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 AndroidCourse Highlights:Training Your First Regression Model:Harness TensorFlow and Python to create a simple regression modelConvert the model into TFLite format, making it compatible with AndroidLearn to integrate the regression model into Android apps Fuel Efficiency Prediction:Apply your knowledge to a real-world problem by predicting automobile fuel efficiencySeamlessly integrate the model into an Android app for an intuitive fuel efficiency prediction experienceHouse Price Prediction in Android:Master the art of training regression models on substantial datasetsUtilize the trained model within your Android app to predict house prices confidentlyThe Android Advantage: By the end of this course, you'll be equipped to:Train advanced regression models for accurate predictionsSeamlessly integrate regression models into your Android applicationsAnalyze and use existing regression models effectively within the Android ecosystemWho Should Enroll:Aspiring Android developers eager to add predictive modeling to their skillsetEnthusiasts seeking to bridge the gap between Machine Learning and mobile app developmentData aficionados interested in harnessing the potential of data for real-world applicationsStep into the World of Android and Predictive Modeling: Join us on this exciting journey and unlock the potential of Android and Linear Regression. 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 predictive modeling!


 


Overview


 


Section 1: Introduction


 


Lecture 1 Introduction


 


Section 2: Machine Learning & Deep Learning Introduction


 


Lecture 2 What is Machine Learning


 


Lecture 3 Supervised Machine Learning: Regression & Classification


 


Lecture 4 Unsupervised Machine Learning & Reinforcement Learning


 


Lecture 5 Deep Learning and regression models training


 


Lecture 6 Basic Deep Learning Concepts


 


Section 3: Python: A simple overview


 


Lecture 7 Google Colab


 


Lecture 8 Python Introduction & its datatypes


 


Lecture 9 Lists in Python


 


Lecture 10 Dictionary and Tuples in Python


 


Lecture 11 Loops and Conditional Statements in Python


 


Lecture 12 File Handling In Python


 


Section 4: Data Science Libraries : Numpy, Pandas, Matplotlib


 


Lecture 13 Numpy Library


 


Lecture 14 Operations in Numpy


 


Lecture 15 Functions in Numpy


 


Lecture 16 Pandas library


 


Lecture 17 Loading CSV Files in Pandas


 


Lecture 18 Handling missing values in Pandas dataset


 


Lecture 19 Matplotlib library


 


Lecture 20 Images in Matplotlib


 


Section 5: Tensorflow and Tensorflow Lite


 


Lecture 21 Tensorflow : Variables & Constants


 


Lecture 22 Tensorflow: Shapes & Ranks of Tensors


 


Lecture 23 Ragged Tesnors & Matrix Multiplication in Tensorflow


 


Lecture 24 Tensorflow Operations


 


Lecture 25 Random Values in Tensorflow


 


Lecture 26 Tensorflow Checkpoints: Save ML models


 


Section 6: Train a simple Regression Model and build Android Application


 


Lecture 27 Training a simple regression model for mobile devices


 


Lecture 28 Model Testing and Conversion into Tensorflow Lite


 


Lecture 29 Tensorflow Lite Model Training Overview


 


Lecture 30 Analysing trained tflite model


 


Lecture 31 Creating a new Android Studio Project and GUI of Application


 


Lecture 32 Adding Tensorflow Lite Library In Android & Loading Tensorflow Lite Model


 


Lecture 33 Passing Input to Tensorflow Lite Model in Android and Getting Output


 


Lecture 34 Using basic tflite regression model in Android overview


 


Section 7: Fuel Efficiency Prediction: Training an advance regression model


 


Lecture 35 Section Introduction


 


Lecture 36 Data Collection: Finding Fuel Efficiency Prediction Dataset


 


Lecture 37 Loading Dataset in Python for Model Training


 


Lecture 38 Handling missing Values in Fuel Efficiency Prediction Dataset


 


Lecture 39 Handling Categorical Columns in Dataset for Model Training


 


Lecture 40 Dataset Normalization


 


Lecture 41 Training Fuel Efficiency Prediction Model in Tensorflow


 


Lecture 42 Testing Trained Model and converting it to Tensorflow Lite Model


 


Lecture 43 Training Fuel Efficiency Prediction Model Overview


 


Section 8: Fuel Efficiency Prediction Android Application


 


Lecture 44 Setting up Android Application for fuel efficiency prediction


 


Lecture 45 Starter Application Overview


 


Lecture 46 Loading Tensorflow Lite models in Android


 


Lecture 47 Data Normalization in Android


 


Lecture 48 Passing input to Tensorflow Lite model in Android and getting output


 


Lecture 49 Testing fuel efficiency prediction android application


 


Lecture 50 Fuel Efficiency Prediction Android App Overview


 


Section 9: Training a house price prediction Model


 


Lecture 51 Section Introduction


 


Lecture 52 Getting dataset for training house price prediction model


 


Lecture 53 Loading dataset for training tflite model


 


Lecture 54 Training & Evaluating house price prediction model


 


Lecture 55 Retraining House Price Prediction Model


 


Section 10: Building House Price Prediction Android Application


 


Lecture 56 Setting Up Android Studio Project


 


Lecture 57 What we have done so far


 


Lecture 58 Data Normalization in Android


 


Lecture 59 Passing Input to house price prediction model in Android


 


Lecture 60 Testing house price prediction Android Application


 


Beginner Android Developer who want to build Machine Learning based Android Applications,Aspiring Android developers eager to add predictive modeling to their skillset,Enthusiasts seeking to bridge the gap between Machine Learning and mobile app development.,Machine Learning Engineers looking to build real world applications with Machine Learning Models


 


Android & Linear Regression: House Price Prediction App


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