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    Introduction To Ai And Machine Learning With Go (Golang)

    Posted By: ELK1nG
    Introduction To Ai And Machine Learning With Go (Golang)

    Introduction To Ai And Machine Learning With Go (Golang)
    Published 9/2025
    MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
    Language: English | Size: 16.96 GB | Duration: 36h 1m

    Learn the fundamentals of Artificial Intelligence and Machine Learning and apply them to your Go programs.

    What you'll learn

    Learn the basic principles of artificial intelligence

    Learn AI search algorithms (BFS, DFS, GBFS, Dijkstra & A* Search)

    Learn the basic principles behind machine learning

    Learn about creating worlds with rules for artificial intelligence

    Learn how to manage probability with artificial intelligence

    Learn how to train a model using linear regression and multiple linear regression

    Learn how to implement and use a neural network

    Learn how to connect to and use remote models on services like Hugging Face

    Learn how to integrate a Go application with LLMs like ChatGPT, and locally hosted LLMs

    Requirements

    A basic understanding of the Go programming knowledge

    A basic understanding of the Python programming language

    Ideally, a computer with a GPU (helpful, but not strictly necessary)

    Description

    Are you a Go developer ready to explore the exciting world of AI and machine learning? This course is your comprehensive guide, designed specifically for Gophers who want to add powerful AI skills to their toolkit. Much of the code in this course is written in Go, but some of it is written in Python, where it makes sense to do so, and this means that before taking this course you should have a basic understanding of both languages.We'll start with fundamental AI concepts, building a strong foundation with practical, hands-on projects. Then, we'll dive into the world of machine learning, tackling everything from classic regression models to modern neural networks. You'll learn how to leverage Go for high-performance AI applications, and discover how to integrate it with Python and cutting-edge tools like Hugging Face and LLMs for state-of-the-art solutions.What You'll LearnSearch Algorithms & Intelligent Agents: Master core AI search algorithms like A* and Dijkstra's by solving mazes and building a robot vacuum. Propositional Logic & Model Checking: knowledge based AI agents often need to make decisions based on available information in the world they operate in. Propositional logic and model checking are two different approaches to solving this problem.Uncertainty: Learn how AI agents handle randomness by creating a Battleship AI and a card-counting Blackjack player.Machine Learning Fundamentals: Get a practical understanding of linear regression by building models in both Python and Go to predict housing prices.Deep Learning & Neural Networks: Build a neural network from scratch for housing price prediction and a Convolutional Neural Network (CNN) for image classification.Natural Language Processing (NLP): Discover the power of NLP by creating an extractive summarization program in Go. You'll also learn to interface with external models from Hugging Face and harness the power of Large Language Models (LLMs) to create hybrid summarization systems.Large Language Models (LLMs): Learn how to connect your Go programs to Large Language Models like ChatGPT. We'll use a locally hosted LLM using Ollama, but the code we write will be 100% compatible with OpenAI, which is used to connect to most LLMs.Course RequirementsThis course is for intermediate to advanced Go developers. You should be comfortable with Go syntax and core concepts. A basic understanding of data structures like graphs and trees is also helpful, but not required. You should also have a basic understanding of Python.All you need is a computer running Windows, macOS, or Linux. While a GPU will speed up certain deep learning tasks, it is not essential; everything will run on a CPU.Why This Course?This isn't just another machine learning course; it's tailored for Go programmers. You'll learn how to build production-ready AI and machine learning applications that leverage Go's performance and concurrency. By the end, you'll have a portfolio of projects and the skills to confidently build your own intelligent applications.Ready to build the future of AI with Go? Enroll now and start your journey!

    Overview

    Section 1: Introduction

    Lecture 1 Introduction

    Lecture 2 A bit about me

    Lecture 3 Installing Go

    Lecture 4 Installing an IDE

    Lecture 5 Setting up VS Code for Python

    Section 2: Search and Artificial Intelligence Part I

    Lecture 6 What we'll cover in this section

    Lecture 7 Defining a maze

    Lecture 8 Loading the maze from disk

    Lecture 9 Uninformed Search

    Lecture 10 Getting started with Depth First Search (DFS)

    Lecture 11 Trying out our DFS algorithm

    Lecture 12 Adding image output to our project

    Lecture 13 Producing an animation of the maze solving process

    Lecture 14 Implementing Breadth First Search (BFS)

    Lecture 15 Implementing Dijkstra's Search

    Lecture 16 Adding the Manhattan Cost to our generated images

    Lecture 17 Informed Search

    Lecture 18 Implementing Greedy Best First Search (GBFS)

    Lecture 19 A* Search: an Overview

    Lecture 20 Implementing A* Search

    Lecture 21 Adding obstructions to our maze

    Lecture 22 Calculating cost with obstructions

    Lecture 23 Summary

    Section 3: Search and Artificial Intelligence - Part II

    Lecture 24 What we'll cover in this section

    Lecture 25 Getting started with our robot vacuum

    Lecture 26 Loading the Room configuration

    Lecture 27 Getting started printing the room to the terminal

    Lecture 28 Finishing up printing the room to the terminal

    Lecture 29 Loading furniture and obstacles

    Lecture 30 The Random Walk algorithm overview

    Lecture 31 Setting up functions that every cleaning algorithm will need

    Lecture 32 Implementing A* for the Random Walk algorithm

    Lecture 33 Getting started with the Random Walk algorithm

    Lecture 34 Bresenham's line algorithm and moving along a line until obstructed

    Lecture 35 Finishing up the CleanRandomWalk function

    Lecture 36 Trying out our code with CleanRandomWalk

    Lecture 37 The SLAM algorithm

    Lecture 38 Getting started with the SLAM algorithm

    Lecture 39 Adding neighbors to the frontier

    Lecture 40 Continuing with the SLAM algorith

    Lecture 41 Adding a thorough frontier check and checking for sufficient coverage

    Lecture 42 Finishing up and trying our SLAM algorithm

    Lecture 43 The Spiral Algorithm

    Lecture 44 Getting started with the Spiral algorithm

    Lecture 45 Finding the room center and creating a spiral pattern

    Lecture 46 Finishing up the Spiral alogorithm

    Lecture 47 The Snaking (or Boustrophedon path) algorithm

    Lecture 48 Getting started with the Snaking algorithm

    Lecture 49 Finishing up the Snaking algorithm

    Lecture 50 Adding obstacle recognition

    Lecture 51 Complicating matters with a Cat

    Lecture 52 Finishing up the Cat logic

    Section 4: Knowledge Based Agents: Propositional Logic

    Lecture 53 What we'll cover in this section

    Lecture 54 Getting started with multiple rooms

    Lecture 55 Getting the code working for multiple rooms, but without logic

    Lecture 56 Defining our truth table and rules for propositional logic

    Lecture 57 Getting started with our logical world

    Lecture 58 Finishing up the methods for our logical world

    Lecture 59 Getting started with our logic enabled robot

    Lecture 60 Trying out our new logic aware robot and world

    Lecture 61 Finishing up the propositional logic robot

    Section 5: Knowledge Based Agents: Model Checking

    Lecture 62 What we'll build in this section

    Lecture 63 Getting started with our code

    Lecture 64 Loading applicants from the CSV file

    Lecture 65 Setting up the fairness property

    Lecture 66 Setting up the risk property

    Lecture 67 Finishing up our model checking logic and trying things out

    Section 6: Artificial Intelligence and Uncertainty I

    Lecture 68 What we'll cover in this section

    Lecture 69 Getting started with our Battleship game

    Lecture 70 Setting up the Human player

    Lecture 71 Setting up the AI player

    Lecture 72 Placing the AI player's ships

    Lecture 73 Placing the Human player's ships

    Lecture 74 Letting the Human player take a turn

    Lecture 75 Getting started with letting the AI player take a turn

    Lecture 76 Setting up huntModeBoosts

    Lecture 77 Finishing up letting the AI player take a turn

    Lecture 78 Displaying the heat map and trying things out

    Lecture 79 Improving our heatmap functionality

    Lecture 80 Sinking ships

    Lecture 81 Trying out the finished game

    Section 7: Artificial Intelligence and Uncertainty II

    Lecture 82 What we'll cover in this section

    Lecture 83 Getting started with our Blackjack game

    Lecture 84 Clearing the screen, creating a deck of cards, and shuffling them

    Lecture 85 The strategy our card counter will use

    Lecture 86 Card counting abilties for our AI player

    Lecture 87 Checking if the deck needs re-shuffled and creating players

    Lecture 88 Dealing cards to all three players and calculating scores

    Lecture 89 Displaying the players' hands

    Lecture 90 Playing a round for the Human player

    Lecture 91 Playing a round for the AI player

    Lecture 92 Playing a round for the Dealer and trying things out

    Section 8: Machine Learning in Python (supervised): Linear & Multiple Linear Regression

    Lecture 93 What we'll cover in this section

    Lecture 94 Getting started with our program: loading and pre-processing the data

    Lecture 95 Prepare data for modeling, split data, and train the model

    Lecture 96 Evaluating our model

    Lecture 97 Print the results of our training to the console

    Lecture 98 Display a visualization of the data

    Lecture 99 Predict a house's price based on data outside our dataset

    Lecture 100 Getting started with Multiple Linear Regression in Python

    Lecture 101 Implement data processing capabilities

    Lecture 102 Develop the model operations - Part I

    Lecture 103 Develop the model operations - Part II

    Lecture 104 Trying out the code we've written so far

    Lecture 105 Visualization: Display Results

    Lecture 106 Creating data for visualizations

    Lecture 107 Creating a 2d visualization

    Lecture 108 Creating a 3d visualization

    Section 9: Machine Learning in Go (supervised): Linear & Multiple Linear Regression

    Lecture 109 What we'll cover in this section

    Lecture 110 Getting started with our program: parsing command line flags

    Lecture 111 Setting up types, and loading and validating data

    Lecture 112 Setting up the Linear Regression Type, and persisting model data

    Lecture 113 Loading data and printing summary info

    Lecture 114 Setting up a Model handler and trying out loading data

    Lecture 115 Normalize Features

    Lecture 116 Training the model

    Lecture 117 Displaying trained model information

    Lecture 118 Trying out training a model

    Lecture 119 Saving and Loading a trained model

    Lecture 120 Setting up a Predict method on the LinearRegression type

    Lecture 121 Setting up the handlePrediction function

    Lecture 122 Displaying Predictions

    Lecture 123 Installing a sidecar application to create a visualization of the data (plot)

    Lecture 124 Writing the Go code to call the sidecar application: Part I

    Lecture 125 Writing the Go code to call the sidecar application: Part II

    Lecture 126 Trying out our plotting functionality

    Lecture 127 Updating our Python app to save to JSON format

    Lecture 128 Loading a model trained in Python in our Go application

    Section 10: Machine Learning: Neural Networks

    Lecture 129 What we'll cover in this section

    Lecture 130 Setting up a Python project for a Neural Network

    Lecture 131 Loading and preprocessing our data

    Lecture 132 Trying out loading data

    Lecture 133 Setting up the rest of our command line flags

    Lecture 134 Getting started with training our neural network

    Lecture 135 Setting up the training loop

    Lecture 136 Trying out the training loop

    Lecture 137 Saving the trained model

    Lecture 138 Loading a saved ONNX file and making predictions

    Lecture 139 Trying out our prediction function

    Lecture 140 Cats vs Dogs: Convolutional Neural Networks

    Lecture 141 Getting started with our CNN

    Lecture 142 Setting up GPUs, if available

    Lecture 143 Getting started with training our model: loading data

    Lecture 144 Defining our neural network

    Lecture 145 Setting up the forward pass for our network

    Lecture 146 Setting up the loss function, optimizer, and learning rate scheduler

    Lecture 147 Setting up the train_model function

    Lecture 148 Implementing early stopping

    Lecture 149 Best model restoration

    Lecture 150 Saving model state

    Lecture 151 Setting up inference

    Lecture 152 Trying things out

    Section 11: Natural Language Processing: Extractive Summarization

    Lecture 153 What we'll cover in this section

    Lecture 154 Getting started with our text summarization package

    Lecture 155 Setting up a simple application

    Lecture 156 Getting started with the summarizer module

    Lecture 157 Configuring our summarizer

    Lecture 158 Getting started with extractive summarization

    Lecture 159 Getting Named Entities

    Lecture 160 Calculate sentence position weights

    Lecture 161 Create a map of sentences containing important entities

    Lecture 162 Find title keywords if available

    Lecture 163 Create a graph representation for TextRank-like algorithm

    Lecture 164 Analyze sentence relationships

    Lecture 165 Named entity scoring

    Lecture 166 Title keyword overlap

    Lecture 167 Textrank-like score using similarity matrix

    Lecture 168 Cohesion score, sentence scoring, and taking top-ranked sentences

    Lecture 169 Extracting keywords

    Lecture 170 Implementing GetResponse

    Lecture 171 Setting up the web app

    Lecture 172 Calling the summarizer package from the web app

    Section 12: Natural Language Processing: Interfacing with Hugging Face

    Lecture 173 Getting a Hugging Face API key

    Lecture 174 Setting up a Taskfile

    Lecture 175 Setting up Hugging Face in the summarizer package

    Lecture 176 Setting up the summarizer function for Hugging Face

    Lecture 177 Updating GenerateSummary for Hugging Face

    Lecture 178 Setting up Hugging Face in the web app

    Lecture 179 Trying things out

    Section 13: Natural Language Processing: Summarizing text using LLMs

    Lecture 180 Installing and configuring Ollama

    Lecture 181 Setting up OpenAI in the summarizer package

    Lecture 182 Updating GenerateSummary for OpenAI

    Lecture 183 Update the web app for OpenAI

    Lecture 184 Trying things out

    Section 14: Natural Language Processing: Hybrid Summarization

    Lecture 185 Setting up hybrid summarization in the summarizer package

    Lecture 186 Updating GenerateSummary for Hybrid summaries

    Lecture 187 Update the web app for Hybrid summaries

    Lecture 188 Implementing CLI mode

    Developers who want to see how AI & Machine Learning can improve their development skills while working in the Go programming language.