Break Into AI Testing: The Next-Gen Quality Engineer Skillset

Break Into AI Testing: The Next-Gen Quality Engineer Skillset

Become an AI & LLM Testing Expert in 5 Weeks with the Only Live Program That Trains Manual QAs to Future-proof Their QA Careers.

Next cohort: Jan 10th

Live , Zoom

Become an AI & LLM Testing expert in 5 weeks. Hands-on, project-based training that future-proofs your QA career.

Next Cohort Starts: Jan 10th

Live, Online, Zoom

Work on a real US-based AI startup project you can add to your resume.


Secure Your Career. Only hands-on, project-based training in the world. Go from manual QA to next-gen AI QA Leader!

Work on a real US-based AI startup project you can add to your resume.


Secure Your Career. Only hands-on, project-based training in the world. Go from manual QA to next-gen AI QA Leader!

Work on a real US-based AI startup project that you can add to your resume.


Secure Your Career. Only hands-on, project-based training in the world. Go from manual QA to next-gen AI QA Leader!

40 seats only - 5 expert instructors

40 seats only - 5 expert instructors

40 seats only - 5 expert instructors

40 Live Hours + 80hrs hands-on exercises (5% theory, 95% practical)

40 Live Hours + 80hrs hands-on exercises (5% theory, 95% practical)

40 Live Hours + 80 hrs hands-on exercises (5% theory, 95% practical)

5 Weeks Long - Based on a US startup project you can add in your CV

5 Weeks Long - Based on a US startup project you can add in your CV

5 Weeks Long - Based on a US startup project you can add in your CV

Original Value: $4,999

For You:

$2,499

Payment Plan available via Klarna at checkout

Payment Plan available via Klarna at checkout

35
Days
07
Hours
51
Minutes
53
Seconds
35
Days
07
Hours
51
Minutes
53
Seconds

How Testers Like You Are Transforming Their Careers with This Program?

How Testers Like You Are Transforming Their Careers with This Program?

How Testers Like You Are Transforming Their Careers with This Program?

"I’d absolutely recommend it"

Hershal Walton

Product Manager, TIAA

"I left buzzing with so many ideas"

Max Volvich

QA Manager

What Makes This Program Truly Different from Other Online Programs

What Makes This Program Truly Different from Other Online Programs

What Makes This Program Truly Different from Other Online Programs

We are the only project-based training that teaches QA professionals with hands-on experience.

We focus on building QA careers so week 5 is all about career positioning with hands-on team exercises.

You’ll work on a real US based AI startup which you can add on your resume.

All live sessions are recorded and can be accessed up to 1 year.

Is this program for you?

Is this program for you?

Is this program for you?

You're a manual QA with 3+ years of experience

You're a manual QA with 3+ years of experience.

You don't need coding or AI experience.

You fear being replaced and want to secure your career to become a next-gen AI QA leader.

Requirements

Requirements

You must have 3+ years of manual QA experience

No coding or programming experience needed

Laptop with minimum specifications

See Requirements

Why learning AI & LLM Testing is a must for Every QA in 2025-2026?


Why learning AI & LLM Testing is a must for Every QA in 2025-2026?


Why learning AI & LLM Testing is a must for Every QA in 2025-2026?


AI Skills in QA have tripled in past years

More than 3,000+ job openings across the US

Top AI QAs earn over $250K/year

AI Testing Skills are in-demand in every company

Almost every company is building their AI products

The future of QA isn't about choosing between Selenium or Playwright - it's about Mastering Prompt Engineering, LLM Testing and AI Debugging.

The future of QA isn't about choosing between Selenium or Playwright - it's about Mastering Prompt Engineering, LLM Testing and AI Debugging.


The future of QA isn't about choosing between Selenium or Playwright - it's about Mastering Prompt Engineering, LLM Testing and AI Debugging.

100% Money-Back Guarantee

100% money-back guarantee

100% money-back guarantee

AI Skills in QA have tripled in past years

Top AI QAs earn over $250K+/ year

More than 3000+ job openings for AI testers across the US

AI Testing Skills are in-demand in every company

Almost every company is building their AI products

What you'll achieve in 5-weeks

Week 1 (Foundations and Tool Mastery)

Day 1: AI Fundamentals & Setup

Introduction: Course rules, setting up the permanent Discord community channel. Theory: LLM basics, transformer architecture, differences between traditional software testing and AI system testing. Hands-on: Environment setup (local and cloud models). Initial interactive model exploration comparing local (LM Studio) and commercial (OpenAI, Anthropic) models using the same prompt. Vulnerabilities: Introduction to the seven unique AI testing challenges (e.g., security, hallucination, bias). Homework: Complete environment setup and design 3+ test prompts targeting the vulnerabilities.


Day 2: PromptFoo Basics

Tool Introduction: Learning PromptFoo for systematic AI testing. Shift to hands-on, Q&A, and group exercises (minimal presentations). Configuration: Overview of PromptFoo's configuration (YAML structure), including providers (LLMs), prompts, and initial deterministic assertions (pass/fail checks). Practice utilizing variables within prompts. Integration: Testing commercial and local models via PromptFoo. Homework: Practice building test suites and reviewing assertions documentation.

Week 2 (Foundations and Tool Mastery)

Day 3: Prompt Engineering and Cost Evaluation

Prompt Engineering: Defining the rules and constraints of the system (System Prompt) and crafting effective test inputs (User Prompt). Using AI (LLMs) to generate effective test prompts. Evaluation: Hands-on workshop on LLM cost evaluation (budgeting) by running prompts against multiple models to compare cost per request. Organization: Structuring the testing framework using file-based prompt configurations.

Day 4: Advanced Assertion & Career Prep

Advanced Testing: Deep dive into assertions, particularly Model-Graded Assertions (MGA), where an LLM acts as a judge (LLM Rubric) to evaluate output quality (relevancy, factuality). Testing using CSV-based files for structured test data. Career Start: Introduction to LinkedIn Personal Branding; documenting early achievements and incorporating AI testing keywords (e.g., prompt engineering, LLM testing) to profiles. Homework: Review PromptFoo Red Teaming documentation.

Week 3 (Application Testing and Advanced Techniques)

Day 5: Red Teaming Concepts

Equator Point: Course halfway review. Red Teaming: Defining red teaming as simulating adversarial inputs (like a comprehensive baseline report) to find vulnerabilities (e.g., security, bias). Discussion of vulnerability frameworks like the OWASP Top 10 for AI. Strategy: Understanding Red Teaming workflow (defining strategy, execution, analysis) and configurations. Comparison of red teaming types (Small, Large, XXL/Extensive). Homework: Prepare application details required for WeOptimize red teaming configuration (using AI assistance).

Day 6: Testing a Real Application (WeOptimize)

Application Architecture: Reviewing the high-level architecture of the WeOptimize application (Orchestrator, Guard LLM, specialized LLMs, knowledge bases like Jira/Confluence/Figma). Testing Mode: Focusing on end-to-end black box exploratory testing via the application's chat interface. Using the provided "Source of Truth" as acceptance criteria. Bug Reporting: Hands-on exercise reporting and documenting bugs in ClickUp, including reproduction steps and linking them to specific AI vulnerabilities.

Week 4 (Application Testing and Advanced Techniques)

Day 7: Red Teaming Execution & Triage

Application Setup: Finalizing the Red Teaming configuration by inputting a comprehensive application context (main purpose, features, system rules) into PromptFoo. Group Triage: Teams exchange reported bugs and attempt to reproduce and validate issues found by classmates. Advanced Testing: Hands-on session applying PromptFoo for complex scenarios, including multi-turn conversation testing using JSON objects for regression. Tool Exposure: Alternative testing tool.

Day 8: Tool Exploration & Post-Launch Monitoring

Post-Launch Tools: Demo and discussion of tools used for monitoring and maintaining LLM models pre- and post-launch (e.g., ATARO wrapper). New Tool Assignment: Introduction to Agenta (a comparable, alternative LLM testing platform). Homework: Explore and evaluate Agenta to apply foundational testing concepts learned from PromptFoo. Research other AI testing tools in the market (consulting mindset).

Week 5 (Career Acceleration)

Day 9: Agenta Review & LinkedIn Strategy

Tool Comparison: Reviewing homework findings on Agenta, applying foundational concepts (Evals, variables) learned from PromptFoo to a new platform. Career Branding: Strategies for content creation and influence building on LinkedIn. Using generative AI tools (e.g., Claude, ChatGPT) as brainstorming partners for posts, while avoiding generic copy-paste content. Accomplishments: Workshop focused on drafting AI LLM testing accomplishment statements for resumes/profiles, quantifying the business impact of skills learned and bugs found in WeOptimize. Homework: Post tailored AI testing content on LinkedIn and engage (comment/repost) with classmates' posts.

Day 10: Final Optimization & Interview Prep

Final Profile Optimization: Updating LinkedIn profiles and resumes with core AI testing skills (prompt engineering, red teaming, hallucination detection, token consumption). Interview Preparation: Review of common AI testing interview questions (e.g., scaling tests, verifying factual responses, token consumption, security, testing LLMs with other LLMs). Wrap-up: Final remarks, community engagement commitment, and discussion of post-course resources.

What you'll achieve in 5-weeks

Week 1 (Foundations and Tool Mastery)

Day 1: AI Fundamentals & Setup

Introduction: Course rules, setting up the permanent Discord community channel. Theory: LLM basics, transformer architecture, differences between traditional software testing and AI system testing. Hands-on: Environment setup (local and cloud models). Initial interactive model exploration comparing local (LM Studio) and commercial (OpenAI, Anthropic) models using the same prompt. Vulnerabilities: Introduction to the seven unique AI testing challenges (e.g., security, hallucination, bias). Homework: Complete environment setup and design 3+ test prompts targeting the vulnerabilities.


Day 2: PromptFoo Basics

Tool Introduction: Learning PromptFoo for systematic AI testing. Shift to hands-on, Q&A, and group exercises (minimal presentations). Configuration: Overview of PromptFoo's configuration (YAML structure), including providers (LLMs), prompts, and initial deterministic assertions (pass/fail checks). Practice utilizing variables within prompts. Integration: Testing commercial and local models via PromptFoo. Homework: Practice building test suites and reviewing assertions documentation.

Week 2 (Foundations and Tool Mastery)

Day 3: Prompt Engineering and Cost Evaluation

Prompt Engineering: Defining the rules and constraints of the system (System Prompt) and crafting effective test inputs (User Prompt). Using AI (LLMs) to generate effective test prompts. Evaluation: Hands-on workshop on LLM cost evaluation (budgeting) by running prompts against multiple models to compare cost per request. Organization: Structuring the testing framework using file-based prompt configurations.

Day 4: Advanced Assertion & Career Prep

Advanced Testing: Deep dive into assertions, particularly Model-Graded Assertions (MGA), where an LLM acts as a judge (LLM Rubric) to evaluate output quality (relevancy, factuality). Testing using CSV-based files for structured test data. Career Start: Introduction to LinkedIn Personal Branding; documenting early achievements and incorporating AI testing keywords (e.g., prompt engineering, LLM testing) to profiles. Homework: Review PromptFoo Red Teaming documentation.

Week 3 (Application Testing and Advanced Techniques)

Day 5: Red Teaming Concepts

Equator Point: Course halfway review. Red Teaming: Defining red teaming as simulating adversarial inputs (like a comprehensive baseline report) to find vulnerabilities (e.g., security, bias). Discussion of vulnerability frameworks like the OWASP Top 10 for AI. Strategy: Understanding Red Teaming workflow (defining strategy, execution, analysis) and configurations. Comparison of red teaming types (Small, Large, XXL/Extensive). Homework: Prepare application details required for WeOptimize red teaming configuration (using AI assistance).

Day 6: Testing a Real Application (WeOptimize)

Application Architecture: Reviewing the high-level architecture of the WeOptimize application (Orchestrator, Guard LLM, specialized LLMs, knowledge bases like Jira/Confluence/Figma). Testing Mode: Focusing on end-to-end black box exploratory testing via the application's chat interface. Using the provided "Source of Truth" as acceptance criteria. Bug Reporting: Hands-on exercise reporting and documenting bugs in ClickUp, including reproduction steps and linking them to specific AI vulnerabilities.

Week 4 (Application Testing and Advanced Techniques)

Day 7: Red Teaming Execution & Triage

Application Setup: Finalizing the Red Teaming configuration by inputting a comprehensive application context (main purpose, features, system rules) into PromptFoo. Group Triage: Teams exchange reported bugs and attempt to reproduce and validate issues found by classmates. Advanced Testing: Hands-on session applying PromptFoo for complex scenarios, including multi-turn conversation testing using JSON objects for regression. Tool Exposure: Alternative testing tool.

Day 8: Tool Exploration & Post-Launch Monitoring

Post-Launch Tools: Demo and discussion of tools used for monitoring and maintaining LLM models pre- and post-launch (e.g., ATARO wrapper). New Tool Assignment: Introduction to Agenta (a comparable, alternative LLM testing platform). Homework: Explore and evaluate Agenta to apply foundational testing concepts learned from PromptFoo. Research other AI testing tools in the market (consulting mindset).

Week 5 (Career Acceleration)

Day 9: Agenta Review & LinkedIn Strategy

Tool Comparison: Reviewing homework findings on Agenta, applying foundational concepts (Evals, variables) learned from PromptFoo to a new platform. Career Branding: Strategies for content creation and influence building on LinkedIn. Using generative AI tools (e.g., Claude, ChatGPT) as brainstorming partners for posts, while avoiding generic copy-paste content. Accomplishments: Workshop focused on drafting AI LLM testing accomplishment statements for resumes/profiles, quantifying the business impact of skills learned and bugs found in WeOptimize. Homework: Post tailored AI testing content on LinkedIn and engage (comment/repost) with classmates' posts.

Day 10: Final Optimization & Interview Prep

Final Profile Optimization: Updating LinkedIn profiles and resumes with core AI testing skills (prompt engineering, red teaming, hallucination detection, token consumption). Interview Preparation: Review of common AI testing interview questions (e.g., scaling tests, verifying factual responses, token consumption, security, testing LLMs with other LLMs). Wrap-up: Final remarks, community engagement commitment, and discussion of post-course resources.

What you'll achieve in 5-weeks

Week 1 (Foundations and Tool Mastery)

Day 1: AI Fundamentals & Setup

Introduction: Course rules, setting up the permanent Discord community channel. Theory: LLM basics, transformer architecture, differences between traditional software testing and AI system testing. Hands-on: Environment setup (local and cloud models). Initial interactive model exploration comparing local (LM Studio) and commercial (OpenAI, Anthropic) models using the same prompt. Vulnerabilities: Introduction to the seven unique AI testing challenges (e.g., security, hallucination, bias). Homework: Complete environment setup and design 3+ test prompts targeting the vulnerabilities.


Day 2: PromptFoo Basics

Tool Introduction: Learning PromptFoo for systematic AI testing. Shift to hands-on, Q&A, and group exercises (minimal presentations). Configuration: Overview of PromptFoo's configuration (YAML structure), including providers (LLMs), prompts, and initial deterministic assertions (pass/fail checks). Practice utilizing variables within prompts. Integration: Testing commercial and local models via PromptFoo. Homework: Practice building test suites and reviewing assertions documentation.

Week 2 (Foundations and Tool Mastery)

Day 3: Prompt Engineering and Cost Evaluation

Prompt Engineering: Defining the rules and constraints of the system (System Prompt) and crafting effective test inputs (User Prompt). Using AI (LLMs) to generate effective test prompts. Evaluation: Hands-on workshop on LLM cost evaluation (budgeting) by running prompts against multiple models to compare cost per request. Organization: Structuring the testing framework using file-based prompt configurations.

Day 4: Advanced Assertion & Career Prep

Advanced Testing: Deep dive into assertions, particularly Model-Graded Assertions (MGA), where an LLM acts as a judge (LLM Rubric) to evaluate output quality (relevancy, factuality). Testing using CSV-based files for structured test data. Career Start: Introduction to LinkedIn Personal Branding; documenting early achievements and incorporating AI testing keywords (e.g., prompt engineering, LLM testing) to profiles. Homework: Review PromptFoo Red Teaming documentation.

Week 3 (Application Testing and Advanced Techniques)

Day 5: Red Teaming Concepts

Equator Point: Course halfway review. Red Teaming: Defining red teaming as simulating adversarial inputs (like a comprehensive baseline report) to find vulnerabilities (e.g., security, bias). Discussion of vulnerability frameworks like the OWASP Top 10 for AI. Strategy: Understanding Red Teaming workflow (defining strategy, execution, analysis) and configurations. Comparison of red teaming types (Small, Large, XXL/Extensive). Homework: Prepare application details required for WeOptimize red teaming configuration (using AI assistance).

Day 6: Testing a Real Application (WeOptimize)

Application Architecture: Reviewing the high-level architecture of the WeOptimize application (Orchestrator, Guard LLM, specialized LLMs, knowledge bases like Jira/Confluence/Figma). Testing Mode: Focusing on end-to-end black box exploratory testing via the application's chat interface. Using the provided "Source of Truth" as acceptance criteria. Bug Reporting: Hands-on exercise reporting and documenting bugs in ClickUp, including reproduction steps and linking them to specific AI vulnerabilities.

Week 4 (Application Testing and Advanced Techniques)

Day 7: Red Teaming Execution & Triage

Application Setup: Finalizing the Red Teaming configuration by inputting a comprehensive application context (main purpose, features, system rules) into PromptFoo. Group Triage: Teams exchange reported bugs and attempt to reproduce and validate issues found by classmates. Advanced Testing: Hands-on session applying PromptFoo for complex scenarios, including multi-turn conversation testing using JSON objects for regression. Tool Exposure: Alternative testing tool.

Day 8: Tool Exploration & Post-Launch Monitoring

Post-Launch Tools: Demo and discussion of tools used for monitoring and maintaining LLM models pre- and post-launch (e.g., ATARO wrapper). New Tool Assignment: Introduction to Agenta (a comparable, alternative LLM testing platform). Homework: Explore and evaluate Agenta to apply foundational testing concepts learned from PromptFoo. Research other AI testing tools in the market (consulting mindset).

Week 5 (Career Acceleration)

Day 9: Agenta Review & LinkedIn Strategy

Tool Comparison: Reviewing homework findings on Agenta, applying foundational concepts (Evals, variables) learned from PromptFoo to a new platform. Career Branding: Strategies for content creation and influence building on LinkedIn. Using generative AI tools (e.g., Claude, ChatGPT) as brainstorming partners for posts, while avoiding generic copy-paste content. Accomplishments: Workshop focused on drafting AI LLM testing accomplishment statements for resumes/profiles, quantifying the business impact of skills learned and bugs found in WeOptimize. Homework: Post tailored AI testing content on LinkedIn and engage (comment/repost) with classmates' posts.

Day 10: Final Optimization & Interview Prep

Final Profile Optimization: Updating LinkedIn profiles and resumes with core AI testing skills (prompt engineering, red teaming, hallucination detection, token consumption). Interview Preparation: Review of common AI testing interview questions (e.g., scaling tests, verifying factual responses, token consumption, security, testing LLMs with other LLMs). Wrap-up: Final remarks, community engagement commitment, and discussion of post-course resources.

What you'll achieve in 5-weeks

Week 1 (Foundations and Tool Mastery)

Day 1: AI Fundamentals & Setup

Introduction: Course rules, setting up the permanent Discord community channel. Theory: LLM basics, transformer architecture, differences between traditional software testing and AI system testing. Hands-on: Environment setup (local and cloud models). Initial interactive model exploration comparing local (LM Studio) and commercial (OpenAI, Anthropic) models using the same prompt. Vulnerabilities: Introduction to the seven unique AI testing challenges (e.g., security, hallucination, bias). Homework: Complete environment setup and design 3+ test prompts targeting the vulnerabilities.


Day 2: PromptFoo Basics

Tool Introduction: Learning PromptFoo for systematic AI testing. Shift to hands-on, Q&A, and group exercises (minimal presentations). Configuration: Overview of PromptFoo's configuration (YAML structure), including providers (LLMs), prompts, and initial deterministic assertions (pass/fail checks). Practice utilizing variables within prompts. Integration: Testing commercial and local models via PromptFoo. Homework: Practice building test suites and reviewing assertions documentation.

Week 2 (Foundations and Tool Mastery)

Day 3: Prompt Engineering and Cost Evaluation

Prompt Engineering: Defining the rules and constraints of the system (System Prompt) and crafting effective test inputs (User Prompt). Using AI (LLMs) to generate effective test prompts. Evaluation: Hands-on workshop on LLM cost evaluation (budgeting) by running prompts against multiple models to compare cost per request. Organization: Structuring the testing framework using file-based prompt configurations.

Day 4: Advanced Assertion & Career Prep

Advanced Testing: Deep dive into assertions, particularly Model-Graded Assertions (MGA), where an LLM acts as a judge (LLM Rubric) to evaluate output quality (relevancy, factuality). Testing using CSV-based files for structured test data. Career Start: Introduction to LinkedIn Personal Branding; documenting early achievements and incorporating AI testing keywords (e.g., prompt engineering, LLM testing) to profiles. Homework: Review PromptFoo Red Teaming documentation.

Week 3 (Application Testing and Advanced Techniques)

Day 5: Red Teaming Concepts

Equator Point: Course halfway review. Red Teaming: Defining red teaming as simulating adversarial inputs (like a comprehensive baseline report) to find vulnerabilities (e.g., security, bias). Discussion of vulnerability frameworks like the OWASP Top 10 for AI. Strategy: Understanding Red Teaming workflow (defining strategy, execution, analysis) and configurations. Comparison of red teaming types (Small, Large, XXL/Extensive). Homework: Prepare application details required for WeOptimize red teaming configuration (using AI assistance).

Day 6: Testing a Real Application (WeOptimize)

Application Architecture: Reviewing the high-level architecture of the WeOptimize application (Orchestrator, Guard LLM, specialized LLMs, knowledge bases like Jira/Confluence/Figma). Testing Mode: Focusing on end-to-end black box exploratory testing via the application's chat interface. Using the provided "Source of Truth" as acceptance criteria. Bug Reporting: Hands-on exercise reporting and documenting bugs in ClickUp, including reproduction steps and linking them to specific AI vulnerabilities.

Week 4 (Application Testing and Advanced Techniques)

  1. Deep dive into Promptfoo.

  2. Explore and integrate other open-source AI testing tools.

  3. Debugging AI Failures based on test results.

  4. Review/triage ClickUp Bugs

  5. Advanced Promptfoo against Live AI Application


    Tools:  Promptfoo, Live AI Application, JSON files

Week 5 (Career Acceleration)

Day 9: Agenta Review & LinkedIn Strategy

Tool Comparison: Reviewing homework findings on Agenta, applying foundational concepts (Evals, variables) learned from PromptFoo to a new platform. Career Branding: Strategies for content creation and influence building on LinkedIn. Using generative AI tools (e.g., Claude, ChatGPT) as brainstorming partners for posts, while avoiding generic copy-paste content. Accomplishments: Workshop focused on drafting AI LLM testing accomplishment statements for resumes/profiles, quantifying the business impact of skills learned and bugs found in WeOptimize. Homework: Post tailored AI testing content on LinkedIn and engage (comment/repost) with classmates' posts.

Day 10: Final Optimization & Interview Prep

Final Profile Optimization: Updating LinkedIn profiles and resumes with core AI testing skills (prompt engineering, red teaming, hallucination detection, token consumption). Interview Preparation: Review of common AI testing interview questions (e.g., scaling tests, verifying factual responses, token consumption, security, testing LLMs with other LLMs). Wrap-up: Final remarks, community engagement commitment, and discussion of post-course resources.

You have a 100% money-back guarantee.

Benefits You Won't Find Anywhere Else

Benefits You Won't Find Anywhere Else

Benefits You Won't Find Anywhere Else

Benefits You Won't Find Anywhere Else

Lifetime Community Access

Lifetime Community Access

Lifetime Community Access

Join our Discord community permanently

Ongoing support from instructors and alumni

Regular follow-up sessions and career guidance

Recorded Sessions

Recorded Sessions

Recorded Sessions

All sessions recorded and kept for 1 years

Review program materials and session recording anytime.

Never miss important concepts

Real Resume Experience

Real Resume Experience

Real Resume Experience

Work on actual WeOptimize AI startup project

Reference real US-based company in interviews

Get personalized CV review

Career Transformation Support

Career Transformation Support

Career Transformation Support

Resume and LinkedIn profile optimization

Interview preparation and positioning

Network with fellow AI testing professionals

Who Should Attend?

01

QA Engineers, SDETs, and Test Leads ready to upskill for the AI era.

02

Automation experts are curious about testing non-deterministic AI systems.

03

Tech professionals looking to future-proof their careers as AI reshapes quality engineering.

Who Should Attend?

01

QA Engineers, SDETs, and Test Leads ready to upskill for the AI era.

02

Automation experts are curious about testing non-deterministic AI systems.

03

Tech professionals looking to future-proof their careers as AI reshapes quality engineering.

Who Should Attend?

01

QA Engineers, SDETs, and Test Leads ready to upskill for the AI era.

02

Automation experts are curious about testing non-deterministic AI systems.

03

Tech professionals looking to future-proof their careers as AI reshapes quality engineering.

Who Should Attend?

01

QA Engineers, SDETs, and Test Leads ready to upskill for the AI era.

02

Automation experts are curious about testing non-deterministic AI systems.

03

Tech professionals looking to future-proof their careers as AI reshapes quality engineering.

  • A recruiter messaged me saying she is impressed with my resume and skills in AI testing during the second week of the course. I got a new job as a QA Manager at that startup. All thanks to this AI & LLM Testing course at Engenious University

    Sofiia Tsapchuk

    Quality Manager at Company Sage

  • My team failed to validate our AI system 4 times - we were stuck and didn't know where to start. After the AI Testing course, I now have the tools and confidence to eliminate unknown risks. I can finally set up proper AI testing frameworks that leadership trusts.

    Hershal Walton,

    Product Manager at TIAA

  • This training has been amazing fun, interactive, and full of hands-on exercises instead of boring lectures. I actually felt sad it was ending! I came here because I saw job descriptions for AI Test Engineers that I couldn’t even understand — and I realized I needed to catch up.

    Shiva Srinivasan

    QA Lead at Clari Health

  • The sessions showed me how to easily test different LLM models which is a game-changer for protecting company data in a closed environment. The hands-on approach helped me see how to apply AI testing directly in my work, and it sparked new ideas for improving our apps and APIs at GoTo Foods.

    Sanchit Agarwal

    QE Architect at GoTo Foods

  • A recruiter messaged me saying she is impressed with my resume and skills in AI testing during the second week of the course. I got a new job as a QA Manager at that startup. All thanks to this AI & LLM Testing course at Engenious University

    Sofiia Tsapchuk

    Quality Manager at Company Sage

  • My team failed to validate our AI system 4 times - we were stuck and didn't know where to start. After the AI Testing course, I now have the tools and confidence to eliminate unknown risks. I can finally set up proper AI testing frameworks that leadership trusts.

    Hershal Walton,

    Product Manager at TIAA

  • This training has been amazing fun, interactive, and full of hands-on exercises instead of boring lectures. I actually felt sad it was ending! I came here because I saw job descriptions for AI Test Engineers that I couldn’t even understand — and I realized I needed to catch up.

    Shiva Srinivasan

    QA Lead at Clari Health

  • The sessions showed me how to easily test different LLM models which is a game-changer for protecting company data in a closed environment. The hands-on approach helped me see how to apply AI testing directly in my work, and it sparked new ideas for improving our apps and APIs at GoTo Foods.

    Sanchit Agarwal

    QE Architect at GoTo Foods

  • A recruiter messaged me saying she is impressed with my resume and skills in AI testing during the second week of the course. I got a new job as a QA Manager at that startup. All thanks to this AI & LLM Testing course at Engenious University

    Sofiia Tsapchuk

    Quality Manager at Company Sage

  • My team failed to validate our AI system 4 times - we were stuck and didn't know where to start. After the AI Testing course, I now have the tools and confidence to eliminate unknown risks. I can finally set up proper AI testing frameworks that leadership trusts.

    Hershal Walton,

    Product Manager at TIAA

  • This training has been amazing fun, interactive, and full of hands-on exercises instead of boring lectures. I actually felt sad it was ending! I came here because I saw job descriptions for AI Test Engineers that I couldn’t even understand — and I realized I needed to catch up.

    Shiva Srinivasan

    QA Lead at Clari Health

  • The sessions showed me how to easily test different LLM models which is a game-changer for protecting company data in a closed environment. The hands-on approach helped me see how to apply AI testing directly in my work, and it sparked new ideas for improving our apps and APIs at GoTo Foods.

    Sanchit Agarwal

    QE Architect at GoTo Foods

  • The sessions showed me how to easily test different LLM models which is a game-changer for protecting company data in a closed environment. The hands-on approach helped me see how to apply AI testing directly in my work, and it sparked new ideas for improving our apps and APIs at GoTo Foods.

    Sanchit Agarwal

    QE Architect at GoTo Foods

  • My team failed to validate our AI system 4 times - we were stuck and didn't know where to start. After the AI Testing course, I now have the tools and confidence to eliminate unknown risks. I can finally set up proper AI testing frameworks that leadership trusts.

    Hershal Walton

    Product Manager at TIAA

  • A recruiter messaged me saying she is impressed with my resume and skills in AI testing during the second week of the course. I got a new job as a QA Manager at that startup. All thanks to this AI & LLM Testing course at Engenious University

    Sofiia Tsapchuk

    QA Manager at Company Sage

  • This training has been amazing fun, interactive, and full of hands-on exercises instead of boring lectures. I actually felt sad it was ending! I came here because I saw job descriptions for AI Test Engineers that I couldn’t even understand — and I realized I needed to catch up.

    Shiva Srinivasan

    QA Lead at Clari Health

  • The sessions showed me how to easily test different LLM models which is a game-changer for protecting company data in a closed environment. The hands-on approach helped me see how to apply AI testing directly in my work, and it sparked new ideas for improving our apps and APIs at GoTo Foods.

    Sanchit Agarwal

    QE Architect at GoTo Foods

  • My team failed to validate our AI system 4 times - we were stuck and didn't know where to start. After the AI Testing course, I now have the tools and confidence to eliminate unknown risks. I can finally set up proper AI testing frameworks that leadership trusts.

    Hershal Walton

    Product Manager at TIAA

  • A recruiter messaged me saying she is impressed with my resume and skills in AI testing during the second week of the course. I got a new job as a QA Manager at that startup. All thanks to this AI & LLM Testing course at Engenious University

    Sofiia Tsapchuk

    QA Manager at Company Sage

  • This training has been amazing fun, interactive, and full of hands-on exercises instead of boring lectures. I actually felt sad it was ending! I came here because I saw job descriptions for AI Test Engineers that I couldn’t even understand — and I realized I needed to catch up.

    Shiva Srinivasan

    QA Lead at Clari Health

Instructors

Instructors

Igor Dorovskikh

Igor Dorovskikh

Igor is an accomplished CEO and Founder of Engenious.io, with 15+ years of experience in software testing and development.

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Vladimir Tanev

Vladimir Tanev

Vladimir is an experienced engineer with 8+ years in iOS/macOS development, specializing in AI-powered solutions.

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Tagir has 10 years of experience in the tech industry; Senior Android Engineer in Platform team.

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Amanda Curtis

Amanda Curtis

Amanda is a QA leader and Lemonade Tech founder, she helps teams cut through tech overwhelm with responsible AI adoption.

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Jaime Mantilla

Jaime Mantilla

Jaime is a seasoned IT professional with 14+ years of experience in Software Engineering, Quality Assurance, and Automation.

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100% money back guarantee

100% Money-Back Guarantee: If you're not satisfied by Week 1, claim a full refund, no questions.


Seats are limited to 40 registrants. Secure your spot today.

100% money back guarantee

100% Money-Back Guarantee: If you're not satisfied by Week 1, claim a full refund, no questions.


Seats are limited to 40 registrants. Secure your spot today.

100% money back guarantee

100% Money-Back Guarantee: If you're not satisfied by Week 1, claim a full refund, no questions.


Seats are limited to 40 registrants. Secure your spot today.

100% money back guarantee

100% Money-Back Guarantee: If you're not satisfied by Week 1, claim a full refund, no questions.


Seats are limited to 40 registrants. Secure your spot today.

Next Cohort Starts

Next Cohort Starts

📆

📆

Starts Jan 10th

Starts Jan 10th

Starts Jan 10th

Seats Limited to 40

Seats Limited to 40

Upcoming Cohorts

Upcoming Cohorts

📆

📆

January 2026

January 2026

Apply Now

📆

📆

February 2026

February 2026

Apply Now

📆

📆

March 2026

March 2026

Feb 2026

Join Waitlist

FAQs

FAQs

What is the AI Career Accelerator program?

What is the duration of the training?

Who is this program for?

What will I achieve by completion?

What’s the weekly breakdown?

Are there prerequisites?

What makes this program different?

Which modules include RAG pipelines, grounding validation, and hallucination detection?

Do we cover data quality validation and production monitoring (data drift, model drift, feedback loops)?

Is there coverage beyond text-only LLMs (e.g., CV or audio)?

Do we work with agent frameworks like AutoGen, LangGraph, or CrewAI?

What portfolio deliverables will I graduate with?

What are the system requirements to join?

What career paths does this program prepare me for?

How do I apply?

Is there a Payment Plan Option?

Will Engenious University help with Career Search?

What is the AI Career Accelerator program?

What is the duration of the training?

Who is this program for?

What will I achieve by completion?

What’s the weekly breakdown?

Are there prerequisites?

What makes this program different?

Which modules include RAG pipelines, grounding validation, and hallucination detection?

Do we cover data quality validation and production monitoring (data drift, model drift, feedback loops)?

Is there coverage beyond text-only LLMs (e.g., CV or audio)?

Do we work with agent frameworks like AutoGen, LangGraph, or CrewAI?

What portfolio deliverables will I graduate with?

What are the system requirements to join?

What career paths does this program prepare me for?

How do I apply?

Is there a Payment Plan Option?

Will Engenious University help with Career Search?

What is the AI Career Accelerator program?

What is the duration of the training?

Who is this program for?

What will I achieve by completion?

What’s the weekly breakdown?

Are there prerequisites?

What makes this program different?

Which modules include RAG pipelines, grounding validation, and hallucination detection?

Do we cover data quality validation and production monitoring (data drift, model drift, feedback loops)?

Is there coverage beyond text-only LLMs (e.g., CV or audio)?

Do we work with agent frameworks like AutoGen, LangGraph, or CrewAI?

What portfolio deliverables will I graduate with?

What are the system requirements to join?

What career paths does this program prepare me for?

How do I apply?

Is there a Payment Plan Option?

Will Engenious University help with Career Search?

What is the AI Career Accelerator program?

What is the duration of the training?

Who is this program for?

What will I achieve by completion?

What’s the weekly breakdown?

Are there prerequisites?

What makes this program different?

Which modules include RAG pipelines, grounding validation, and hallucination detection?

Do we cover data quality validation and production monitoring (data drift, model drift, feedback loops)?

Is there coverage beyond text-only LLMs (e.g., CV or audio)?

Do we work with agent frameworks like AutoGen, LangGraph, or CrewAI?

What portfolio deliverables will I graduate with?

What are the system requirements to join?

What career paths does this program prepare me for?

How do I apply?

Is there a Payment Plan Option?

Will Engenious University help with Career Search?

What is the AI Career Accelerator program?

What is the duration of the training?

Who is this program for?

What will I achieve by completion?

What’s the weekly breakdown?

Are there prerequisites?

What makes this program different?

Which modules include RAG pipelines, grounding validation, and hallucination detection?

Do we cover data quality validation and production monitoring (data drift, model drift, feedback loops)?

Is there coverage beyond text-only LLMs (e.g., CV or audio)?

Do we work with agent frameworks like AutoGen, LangGraph, or CrewAI?

What portfolio deliverables will I graduate with?

What are the system requirements to join?

What career paths does this program prepare me for?

How do I apply?

Is there a Payment Plan Option?

Will Engenious University help with Career Search?

© 2025 Engenious Inc. (c) All rights reserved

© 2025 Engenious Inc. (c) All rights reserved

© 2025 Engenious Inc. (c) All rights reserved

+1 234 234 23 23

university@engenious.io

© 2025 Engenious Inc. (c) All rights reserved

+1 234 234 23 23

university@engenious.io