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. ✌

    ( • )( • ) ( ͡⚆ ͜ʖ ͡⚆ ) (‿ˠ‿)
    SpicyMags.xyz

    Master Software Testing With Gen Ai

    Posted By: ELK1nG
    Master Software Testing With Gen Ai

    Master Software Testing With Gen Ai
    Published 1/2025
    MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
    Language: English | Size: 1.51 GB | Duration: 5h 57m

    Learn to automate, optimize, and transform QA workflows with AI-driven strategies and tools

    What you'll learn

    Master the principles and applications of Generative AI in software testing.

    Automate test case generation and data creation with cutting-edge tools.

    Integrate AI with popular frameworks like Selenium and Cypress.

    Build expertise in AI-driven exploratory and performance testing

    Requirements

    The prerequisites for this course are: A basic understanding of Quality Assurance (QA) principles and practices. Some level of experience working as a QA professional, including familiarity with testing methodologies and tools. A willingness to explore AI-driven approaches to improve testing efficiency and effectiveness. This course is ideal for learners with foundational QA knowledge who want to enhance their skills with Generative AI in testing.

    Description

    Unlock the potential of Generative AI to transform your software testing skills with ArkaTalent Tech’s comprehensive course, “Master Software Testing with Gen AI: Cutting-Edge Tools.” Designed by industry leaders with years of expertise in AI testing, this course bridges the skills gap in the booming AI landscape.In today’s fast-evolving tech world, companies increasingly rely on AI-driven tools for innovation. Yet, ensuring the quality and reliability of these systems remains a challenge. This course equips you with the knowledge and hands-on skills to excel as a QA professional, using AI to revolutionize your testing workflows.You’ll begin by exploring the foundations of software testing and understanding how Generative AI integrates into QA processes. The course progresses to advanced modules covering test case generation, synthetic data creation, bug detection, exploratory testing, and more. Learn how to enhance popular frameworks like Selenium and Cypress with AI-powered capabilities and gain expertise in AI tools like OpenAI’s API, Hugging Face Transformers, and JMeter.Whether you’re a QA professional looking to upgrade your skills or a developer exploring AI in testing, this course will prepare you to lead in the next generation of software testing. Join us and stay ahead in the competitive world of AI-driven technology!

    Overview

    Section 1: Introduction

    Lecture 1 Introduction

    Section 2: Module 1: Foundations of Software Testing and Generative AI

    Lecture 2 Software testing basics: principles, lifecycle, and methodologies

    Lecture 3 Introduction to Generative AI and its role in software engineering

    Lecture 4 Comparison: Traditional testing vs AI-powered testing

    Lecture 5 Overview of AI technologies used in testing

    Section 3: Module 2: Generative AI in Test Case Design

    Lecture 6 Automating test case generation using AI models

    Lecture 7 Benefits, Challenges and Considerations of Automating Test Case Generation

    Lecture 8 AI in Creating edge cases and handling boundary value analysis.

    Lecture 9 Identifying high-risk scenarios with AI insights.

    Lecture 10 Tools: OpenAI API, Hugging Face Transformers

    Section 4: Module 3: Test Data Generation and Management

    Lecture 11 Generating synthetic data using Generative AI

    Lecture 12 Anonymizing sensitive data for compliance

    Lecture 13 Advanced Anonymization Techniques

    Lecture 14 AI techniques for creating realistic, domain-specific datasets , GAN's hands on

    Lecture 15 Step by Step guide for data generation using Pytorch and Tensorflow - VAE model

    Lecture 16 LLM's and Diffusion models - hands on

    Lecture 17 Practical session : How to use Faker, DataSynth or custom Generative AI models

    Section 5: Module 4 : Bug Detection & Static Code Analysis with AI

    Lecture 18 AI-driven static code analysis for vulnerability detection

    Lecture 19 Identifying code smells and performance bottlenecks

    Lecture 20 Tools: SonarQube, DeepCode and AI-powered linters

    Section 6: Module 5 : Automating Test Execution with Generative AI

    Lecture 21 Hands on : Enhancing traditional frameworks -Selenium with AI

    Lecture 22 Hands on : Enhancing traditional frameworks - Cypress with AI

    Lecture 23 Steps to Use AI for Flaky Test Detection

    Lecture 24 Self-Healing Scripts: Adapting Tests for Dynamic UI Changes

    Lecture 25 Tools: Selenium with AI Plugins, Testim.io

    Section 7: Module 6: Exploratory Testing with AI

    Lecture 26 AI-generated exploratory scenarios to uncover hidden issues

    Lecture 27 Simulating user behavior with AI-driven agents

    Lecture 28 Introduction to Reinforcement Learning Frameworks

    Lecture 29 Introduction to Robotic Process Automation (RPA) Tools

    Section 8: Module 7: Performance and Load Testing with Generative AI

    Lecture 30 Creating intelligent performance test scenarios with AI

    Lecture 31 Using AI for Predictive Performance Analysis

    Lecture 32 Hands on : AI Integrations in JMeter

    Lecture 33 Hands on : AI Integrations in Locust

    Lecture 34 The Future of AI in Performance Testing

    Section 9: Module 8: Testing APIs and Microservices with AI

    Lecture 35 Automated API testing with Generative AI

    Lecture 36 Using AI to Analyze API Contracts and Generate Test Cases

    Lecture 37 Postman with AI Enhancements

    Lecture 38 Swagger/OpenAPI with AI Enhancements

    Section 10: Module 9: Continuous Testing and DevOps Integration

    Lecture 39 Role of AI in CI/CD pipelines.

    Lecture 40 Automating regression and acceptance tests in DevOps workflows

    Lecture 41 Hands on : Jenkins with AI Integrations

    Lecture 42 Hands on : GitHub Actions Integration with AI

    Section 11: Module 10: Testing AI and ML Systems

    Lecture 43 Testing AI & ML Systems

    Lecture 44 Challenges in Functional Testing of AI and Machine Learning Models

    Lecture 45 Challenges in Non-Functional Testing of AI/ML models

    Lecture 46 AI Tools for Model Evaluation and Fairness

    Lecture 47 Methods for Generating Synthetic Data

    Section 12: Module 11: NLP Applications in Testing

    Lecture 48 Introduction to NLP Applications in Software Testing

    Lecture 49 Log analysis and error clustering with NLP

    Lecture 50 NLP Techniques in Testing

    Lecture 51 Hands on : Tools and Libraries for NLP in Testing - Stacy

    Lecture 52 Hands on with NLTK

    Lecture 53 Hands on with Hugging Face Model

    Section 13: Module 12: Ethical and Practical Considerations in AI Testing

    Lecture 54 Ethical issues: Bias, data privacy, and security concerns

    Lecture 55 Limitations of Generative AI in testing

    Lecture 56 Best practices for responsible AI-driven testing

    Section 14: Module 13: Advanced techniques for AI-driven testing

    Lecture 57 AI for dynamic test prioritization and risk-based testing

    Lecture 58 Self-healing tests for frequently updated applications

    Lecture 59 Emerging AI techniques for test optimization

    Lecture 60 Key Takeaways

    QA Professionals looking to enhance testing with Generative AI. Software Testers wanting to adopt AI-powered techniques. Developers aiming to integrate AI-driven testing into their workflows. AI Enthusiasts curious about Generative AI in software engineering. Tech Professionals addressing AI skills gaps in testing. Beginners in software testing seeking a competitive edge through AI techniques