Tags
Language
Tags
June 2025
Su Mo Tu We Th Fr Sa
1 2 3 4 5 6 7
8 9 10 11 12 13 14
15 16 17 18 19 20 21
22 23 24 25 26 27 28
29 30 1 2 3 4 5
    Attention❗ To save your time, in order to download anything on this site, you must be registered 👉 HERE. If you do not have a registration yet, it is better to do it right away. ✌

    https://sophisticatedspectra.com/article/drosia-serenity-a-modern-oasis-in-the-heart-of-larnaca.2521391.html

    DROSIA SERENITY
    A Premium Residential Project in the Heart of Drosia, Larnaca

    ONLY TWO FLATS REMAIN!

    Modern and impressive architectural design with high-quality finishes Spacious 2-bedroom apartments with two verandas and smart layouts Penthouse units with private rooftop gardens of up to 63 m² Private covered parking for each apartment Exceptionally quiet location just 5–8 minutes from the marina, Finikoudes Beach, Metropolis Mall, and city center Quick access to all major routes and the highway Boutique-style building with only 8 apartments High-spec technical features including A/C provisions, solar water heater, and photovoltaic system setup.
    Whether for living or investment, this is a rare opportunity in a strategic and desirable location.

    Ai-Assisted Android App Development - Gen Ai (Vibe Coding)

    Posted By: ELK1nG
    Ai-Assisted Android App Development - Gen Ai (Vibe Coding)

    Ai-Assisted Android App Development - Gen Ai (Vibe Coding)
    Last updated 6/2025
    MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
    Language: English | Size: 2.44 GB | Duration: 5h 56m

    Build real Android apps faster using AI tools like Cursor, Claude Sonnet, GPT, Copilot and Gemini in your daily workflow

    What you'll learn

    Develop an android app with the help of AI

    Integrate AI as a feature to an Android app

    Use cursor IDE to boost your productivity

    Pick the right AI for the right task

    Vibe coding

    Requirements

    Android development experience is nice to have but not a must: You will learn everything you need to know

    Description

    The AI-Assisted Android development by Petros Efthymiou.Learn how to leverage the best AI tools to build native Android apps really fast.AI is everywhere, your feed is full of posts about ChatGPT, Copilot, and how developers are 10x more productive.But when it’s time to actually build an Android app using AI… you’re on your own.Which tools should you use?How do you prompt effectively?How do you get AI to follow Clean Architecture?Can AI write Compose UI? Should it?Can you trust its code? How do you debug it?Most courses completely ignore this.They teach Android development the same way they did five years ago, as if AI doesn’t exist.But the game has changed.This course is your roadmap to building Android apps with AI as your pair programmer—from day one, in real-world conditions.What You’ll Build & LearnTogether, we’ll build a real production-level Android app, powered by:Clean ArchitectureJetpack ComposeHILT for dependency injectionCoroutines & StateFlow for async state handlingRetrofit for networkingBut here’s the twist:We won’t just build it manually.We’ll build it side-by-side with AI tools that accelerate your development process and act as your intelligent coding partners.You’ll learn how to prompt like a pro, avoid common pitfalls, and truly collaborate with:CursorGitHub CopilotChat GPTClaudeGeminiAnd more.We’ll even take things further and integrate generative AI as a feature inside our app—because the future of mobile development is not just building apps with AI, but building apps that use AI.Why Learn from Me?I'm Petros Efthymiou, a senior mobile engineer, author, and instructor with 11+ years of real-world experience in startups and multinational companies.I've trained 100K+ developers via Udemy, Amazon best-sellers, and live workshopsCreator of “Android TDD Masterclass”, a top-rated Android Udemy courseAuthor of “Clean Mobile Architecture”, a best-selling book that’s helped thousands of devs level upCurrently working as Mobile Trainer at Backbase, training:Internal R&D engineersProfessional services teamsThird-party developersOver the past 3 years, I’ve embedded AI tools into my daily workflow, building real products and discovering what truly works—and what doesn’t.This course distills all that experience into a step-by-step, production-focused learning path so you can build faster, smarter, and more confidently with AI.Why is it important?Because the way we write software is fundamentally shifting.Developers who know how to collaborate with AI tools will build faster, ship smarter, and outpace those who don’t.This isn’t about replacing developers. It’s about amplifying them.You’ll still need architectural thinking, design skills and debugging abilities but AI helps you:Write code faster without skipping best practicesOffload boilerplate and focus on the hard problemsCatch edge cases early by asking better questionsUse AI not just to code, but to think alongside youSoon, AI-assisted development will be the norm.The sooner you master it, the further ahead you’ll be—both technically and professionally.This course is here to get you there.

    Overview

    Section 1: Introduction

    Lecture 1 Introduction

    Lecture 2 Course Structure

    Lecture 3 AI Productivity boost

    Lecture 4 AI Power demonstration

    Section 2: Introduction to AI and AI Tooling

    Lecture 5 Section Intro

    Lecture 6 What is AI?

    Lecture 7 Generative AI

    Lecture 8 How LLMs work

    Lecture 9 AI Capabilities & Limitations

    Lecture 10 When to trust AI and when not to

    Lecture 11 AI Tooling

    Lecture 12 Tooling installation

    Section 3: Prompt Engineering 101

    Lecture 13 Section Intro

    Lecture 14 How to be Effective with AI

    Lecture 15 Prompting Types

    Lecture 16 RTF Prompting Framework

    Lecture 17 C.O.D.E Prompting Framework

    Lecture 18 Prompt Debugging and Refinement

    Lecture 19 Prompting Do's and Dont's

    Lecture 20 Common coding prompts

    Lecture 21 Improving prompts

    Section 4: AI-Powered Coding Workflow: From Idea to Production App with AI

    Lecture 22 Section Intro

    Lecture 23 Cursor Walkthrough

    Lecture 24 Cursor Rules

    Lecture 25 Initialize Project

    Lecture 26 How to make Architectural decisions

    Lecture 27 Architecture Prompt

    Lecture 28 Architecture Prompt (Cont)

    Lecture 29 Application Architecture

    Lecture 30 Domain Layer

    Lecture 31 Architecture Summarize

    Lecture 32 Architecture Prompt

    Lecture 33 Architecture Prompt (cont)

    Lecture 34 Packaging prompt

    Lecture 35 Tech stack prompt

    Lecture 36 Tech stack prompt (cont)

    Lecture 37 Commit after testing

    Lecture 38 Backend API Walkthrough

    Lecture 39 Data Layer prompt

    Lecture 40 Data Layer clear up

    Lecture 41 Picking the right AI to debug

    Lecture 42 Presentation Layer prompt

    Lecture 43 Presentation Layer implementation

    Lecture 44 Consulting on third party libraries

    Lecture 45 Articles Screen prompt

    Lecture 46 Articles Screen implementation

    Lecture 47 Articles Feature troubleshooting

    Lecture 48 Improved error handling

    Lecture 49 Adding complex Presentation logic

    Lecture 50 Refactoring with AI prompt

    Lecture 51 Refactoring with AI result

    Section 5: How to Keep the AI Focused: Context

    Lecture 52 Section Intro

    Lecture 53 Types of Context

    Lecture 54 When to switch Context

    Lecture 55 Do we need to switch Context now?

    Lecture 56 Summarize current State prompt

    Lecture 57 Gathering important Session Context

    Lecture 58 Cursor Project Rules

    Lecture 59 Token Optimization

    Lecture 60 Rules Logical Segregation

    Lecture 61 Segregating Rules to Layers

    Lecture 62 Automatic Context Inclusion

    Lecture 63 Bottom Navigation prompt

    Lecture 64 Bottom Navigation implementation

    Lecture 65 Sources Feature prompt

    Lecture 66 Sources Feature implementation

    Lecture 67 Sources Feature implementation (Cont)

    Lecture 68 Fixing and Testing the Sources Feature

    Lecture 69 Updating the Rules based on the session Learnings

    Section 6: Making Your App AI-Powered: Build Your First Smart Feature

    Lecture 70 Section Intro

    Lecture 71 AI Feature requirements

    Lecture 72 Steps to integrate the GPT model

    Lecture 73 GPT API key

    Lecture 74 AI Architecture

    Lecture 75 How to implement the GPT integration

    Lecture 76 AI Feature Data Layer implementation

    Lecture 77 Repository implementation

    Lecture 78 Constructing multiple Retrofit instances

    Lecture 79 UI & Presentation Layers prompt

    Lecture 80 UI & Presentation Layers implementation

    Lecture 81 Testing the AI feature

    Lecture 82 Trying out other Generative Models

    Lecture 83 Adding a loader to the FAB

    Lecture 84 Auth Feature prompt

    Lecture 85 Auth Screens implementation

    Lecture 86 Fine tuning the Auth Screens

    Lecture 87 Congratulations

    Lecture 88 Bonus Lecture

    Android developers,People interested in Android development,Devs interested in AI-assisted development,Devs interested in vibe coding,People who want to build a mobile product