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    Ios & Ml : Train Machine Learning Models For Ios Swift Apps

    Posted By: ELK1nG
    Ios & Ml : Train Machine Learning Models For Ios Swift Apps

    Ios & Ml : Train Machine Learning Models For Ios Swift Apps
    Published 1/2024
    MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
    Language: English | Size: 3.26 GB | Duration: 5h 19m

    Train Machine Learning Models for IOS Swift Applications | Use Tensorflow Lite models in IOS with Swift UI | IOS ML

    What you'll learn

    Train Machine Learning models for IOS Swift Applications

    Integrate Machine Learning models in IOS with SwiftUI

    Use of Tensorflow Lite models in IOS Swift App

    Analysing & using advance regression models in IOS Swift Applications

    Train a machine learning model and build a house price prediction IOS Application

    Train a machine learning model and build a fuel efficiency prediction IOS Swift Application

    Train Any Prediction Model & use it in IOS Swift Applications

    Data Collection & Preprocessing for ML model training for IOS Swift Application

    Basics of Machine Learning & Deep Learning for training Machine learning Models for smart IOS App Development

    Understand the working of artificial neural networks for training machine learning for IOS Swift Apps

    Basic syntax of python programming language to train ML models for IOS Swift Applications

    Use of data science libraries like numpy, pandas and matplotlib

    Requirements

    XCode Installed on your MAC

    Description

    Do you want to train different Machine Learning models and build smart IOS applications then Welcome to this course.Regression 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 machine learning models in Tensorflow lite and build smart IOS Swift applications.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 IOS app development. Whether you're a seasoned IOS 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 Tensorflow Lite  models for IOS Applications.The IOS-ML Fusion: After grasping the core concepts, we'll bridge the gap between IOS 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.Course Highlights:Training Your First Regression Model:Use TensorFlow and Python to create a simple regression modelConvert the model into TFLite format, making it compatible with IOS SwiftLearn to integrate the TFLite model into IOS Swift appsFuel Efficiency Prediction in IOS:Apply your knowledge to a real-world problem by predicting automobile fuel efficiencySeamlessly integrate the model into a IOS Swift app for an intuitive fuel efficiency prediction experienceHouse Price Prediction in IOS:Master the art of training regression models on substantial datasetsUtilize the trained model within your IOS app to predict house prices confidentlyThe IOS Advantage: By the end of this course, you'll be equipped to:Train advanced regression models for accurate predictionsSeamlessly integrate ML models into your IOS Swift applicationsAnalyze and use existing tflite models effectively within the IOS Swift ecosystemWho Should Enroll:Aspiring IOS developers eager to add predictive modeling to their skillsetBeginner IOS Swift developer with very little knowledge of mobile app development Intermediate IOS Swift developer wanted to build a powerful Machine Learning-based application in IOS SwiftExperienced IOS Swift developers wanted to use Machine Learning models inside their IOS applications.Enthusiasts seeking to bridge the gap between Machine Learning and IOS app developmentStep into the World of IOS and Predictive Modeling: Join us on this exciting journey and unlock the potential of IOS and Machine Learning. By the end of the course, you'll be ready to develop IOS applications that not only look great but also make informed, data-driven decisions.Enroll now and embrace the fusion of IOS and Machine Learning

    Overview

    Section 1: Introduction

    Lecture 1 Introduction

    Section 2: Machine Learning & Deep Learning for IOS Swift

    Lecture 2 Machine Learning Introduction

    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 Programming Language for IOS Swift

    Lecture 7 Google Colab Introduction

    Lecture 8 Python Introduction & data types

    Lecture 9 Python Lists

    Lecture 10 Python dictionary & tuples

    Lecture 11 Python loops & conditional statements

    Lecture 12 File handling in Python

    Section 4: Data Science Libraries for IOS

    Lecture 13 Numpy Introduction

    Lecture 14 Numpy Operations

    Lecture 15 Numpy Functions

    Lecture 16 Pandas Introduction

    Lecture 17 Loading CSV in pandas

    Lecture 18 Handling Missing values in dataset with pandas

    Lecture 19 Matplotlib & charts in python

    Lecture 20 Dealing images with Matplotlib

    Section 5: Tensorflow & Tensorflow Lite for IOS Swift

    Lecture 21 Tensorflow Introduction | Variables & Constants

    Lecture 22 Shapes & Ranks of Tensors

    Lecture 23 Matrix Multiplication & Ragged Tensors

    Lecture 24 Tensorflow Operations

    Lecture 25 Generating Random Values in Tensorflow

    Lecture 26 Tensorflow Checkpoints

    Section 6: Training a basic regression model for IOS Swift

    Lecture 27 Section Introduction

    Lecture 28 Train a simple regression model for IOS Swift

    Lecture 29 Testing model and converting it to a tflite(Tensorflow lite) format for IOS

    Lecture 30 Model training for IOS Swift app development overview

    Lecture 31 Creating a new IOS SwiftUI project and the GUI of Swift Application

    Lecture 32 Adding Tensorflow Lite Models in IOS Swift Application

    Lecture 33 Loading Tensorflow Lite Models in IOS Swift Application

    Lecture 34 Preparing Input for Tensorflow Lite Models and Passing it in IOS Swift App

    Lecture 35 Getting Output from Tensorflow Lite model and showing it on IOS Swift App

    Lecture 36 Tensorflow Lite Models Integration in IOS Swift App Overview

    Section 7: Training a Fuel Efficiency Prediction Model for IOS Swift Application

    Lecture 37 Section Introduction

    Lecture 38 Getting datasets for training regression models for IOS

    Lecture 39 Loading dataset in python with pandas

    Lecture 40 Handling Missing Values in Dataset

    Lecture 41 One Hot Encoding: Handling categorical columns

    Lecture 42 Training and testing datasets

    Lecture 43 Normalization: Bringing all columns to a common scale

    Lecture 44 Training a fuel efficiency prediction model for IOS Swift Application

    Lecture 45 Testing fuel efficiency prediction model and converting it to a tflite format

    Lecture 46 Fuel Efficiency Model Training Overview

    Section 8: Fuel Efficiency Prediction IOS Swift Application

    Lecture 47 Setup Starter IOS Application for Fuel Efficiency Prediction

    Lecture 48 GUI of Fuel Efficiency Prediction IOS Application

    Lecture 49 Adding Tensorflow Lite Library in IOS Swift Application

    Lecture 50 Loading Fuel Efficiency Prediction tflite model in IOS Swift Application

    Lecture 51 Preparing Input for Tensorflow Lite Model

    Lecture 52 Passing input to tflite model and getting output in IOS Swift Application

    Lecture 53 Normalizing Input for Tensorflow Lite Models in IOS Swift Application

    Lecture 54 Important things to remember while using Tensorflow Lite Models in IOS Apps

    Section 9: Training House Price Prediction Model for IOS

    Lecture 55 Section Introduction

    Lecture 56 Getting house price prediction dataset

    Lecture 57 Load dataset for training house price prediction tflite model for IOS

    Lecture 58 Training & evaluating house price prediction model for IOS

    Lecture 59 Retraining price prediction model

    Section 10: House Price Prediction IOS Application

    Lecture 60 Setting Up House Price Prediction IOS Swift Application

    Lecture 61 GUI of House Price Prediction IOS Swift Application With SwiftUI

    Lecture 62 Adding Tensorflow Lite Library in IOS Swift Application

    Lecture 63 Loading Tensorflow Lite Model in IOS Swift Application

    Lecture 64 Passing Input to Tensorflow Lite Model and Get prediction for House Price

    Lecture 65 House Price Prediction Application Testing

    Beginner IOS Developer who want to build Machine Learning based IOS Applications,Intermediate IOS developers eager to add Machine Learning to their skillset,IOS experts seeking to bridge the gap between Machine Learning and Mobile App Development