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Quality Assurance (QA) - Lead - MiDAS

šŸ‡®šŸ‡³ India

Python

GitHub

Machine Learning

UI/UX

Devops

Testing

Quality Assurance (QA) - Lead - MiDAS

from šŸ‡®šŸ‡³ India

Bosch Global Software Technologies Private LimitedĀ is a 100% owned subsidiary of Robert Bosch GmbH, one of the world's leading global supplier of technology and services, offering end-to-end Engineering, IT and Business Solutions. With over 27,000+ associates, it’s the largest software development center of Bosch, outside Germany, indicating that it is the Technology Powerhouse of Bosch in India with a global footprint and presence in the US, Europe and the Asia Pacific region.

Roles & Responsibilities :
AI Quality Strategy:Ā Develop and own the evaluation framework for GenAI solutions, focusing onĀ Faithfulness, Relevancy, and Hallucination detectionĀ using LLM-as-a-judge frameworks.

  • Hybrid Test Automation:Ā Architect a dual-layered automation suite:

    • Deterministic:Ā E2E UI (Playwright) and API testing (Pytest/Requests).

    • Probabilistic:Ā Automated evaluation of non-deterministic LLM outputs.

  • Shift-Left Integration:Ā Embed automated quality checks directly intoĀ GitHub Workflows, enabling seamless CI/CD.

Performance & Resilience:Ā Lead JMeter-based performance testing.
Ā 

Educational qualification:

  • Experience:Ā 8+ years in Software QA

  • Problem Solving:Ā Ability to define "quality" in an ambiguous, non-deterministic AI landscape.

  • Education:Ā Bachelor’s or Master’s degree in Computer Science, Software Engineering, or a related field.

Experience :

  • 8+ years in Software QA

Mandatory/requires Skills :
Automation & Tooling

  • Python Mastery:Ā Expert-level Python skills for building custom test tooling and automation scripts.

  • Testing Stack:Ā Hands-on proficiency withĀ PytestĀ (API),Ā PlaywrightĀ (E2E), andĀ JMeterĀ (Performance).

  • DevOps:Ā Advanced experience designing and maintainingĀ GitHub Actions/WorkflowsĀ for automated test execution.

Core AI & LLM Expertise

  • Learning Agility in GenAI: High capability and interest in rapidly mastering AI evaluation concepts. You should be prepared to quickly upskill in automated metrics for LLMs (such as Faithfulness, Relevancy, and Groundedness).

  • Exposure to LLM Logic: Basic familiarity with how LLMs function (e.g., prompting, context windows). You should be comfortable exploring and implementing "LLM-as-a-Judge" strategies, where high-reasoning models help grade application-specific outputs.

  • Orientation toward RAG Systems: Interest in understanding the mechanics of Retrieval-Augmented Generation (RAG). You will be responsible for defining how we validate the accuracy of data retrieved from our engineering context catalogues and vector databases.

  • Data-Driven Quality Mindset: A strong desire to move beyond binary "Pass/Fail" results toward probabilistic quality monitoring, utilizing tools like Langfuse to analyze live traces and performance trends.

Preferred Skills :

Why Join MiDAS?

You won't just be testing software; you will be defining the quality standards for the future ofĀ AI-First Engineering. Your work will directly impact the speed and reliability of vehicle software development globally.

by @maxrusakovic