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Testing Lead-QA

Role overview

Qualifications

  • Strong background in software testing with lead or ownership experience
  • Hands-on experience testing LLMs, DL models, or GenAI systems
  • Strong Python skills for test automation and data validation
  • Proven ability to write clear, structured technical documentation

Responsibilities

  • Own quality documentation end-to-end
  • Define testing strategy for LLMs, VLMs, and DL pipelines
  • Design tests for prompt templates, RAG pipelines, and multi-turn conversations
  • Build Python-based automation for evaluation and regression testing

Key facts

  • Remote from: India
  • Full time
  • Senior (5-10 years)
  • English

Other skills

  • Communication
  • Mentorship
  • Problem Solving
  • Adaptability
  • Teamwork

About the company

Teleradiology Solutions logo

Teleradiology Solutions

Teleradiology Solutions (TRS), rated the number 1 National Teleradiology company in the United states by KLAS in 2011 was founded in 2002 by two Yale University trained physicians. It provides teleradiology services (i.e., CT, MRI, Xray, ultrasounds reports) to over 150 hospitals in the United States. Teleradiology Solutions was among the first teleradiology companies to be accredited by the US Joint Commission of Accreditation of Healthcare Organizations (JC). The company was showcased to US President Obama as an example of health care innovation on his Nov 2010 trip to India. Teleradiology Solutions is a health care company that uses technology for varied purposes from e-teaching to teleradiology to telemedicine, making it a company with a difference.

Company details

Company size501 - 1000

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Job description

Job Title: Testing Lead – Deep Learning / LLM / VLM

Location

Remote / Hybrid / On-site

Experience

3–4 years (hands-on ownership in DL / LLM / GenAI testing)

Employment Type

Full-time



Role Overview

We are seeking a hands-on Testing Lead to own quality and documentation for our Deep Learning, LLM, and Vision-Language Model (VLM) products. You will define how we test, measure, document, and communicate AI quality—working closely with ML, Engineering, and Product teams in a fast-paced startup environment.

This role is ideal for someone who believes clear documentation is as critical as good testing, especially for non-deterministic AI systems.



What You’ll Do

Own Quality & Documentation End-to-End

  • Define testing strategy for LLMs, VLMs, and DL pipelines.
  • Create and maintain clear, lightweight documentation covering:
    • Model testing strategies and assumptions
    • Evaluation metrics and acceptance criteria
    • Known limitations, risks, and failure modes
    • Release readiness and quality sign-off
  • Ensure documentation evolves with models, data, and prompts.

LLM / GenAI Testing

  • Design tests for:
    • Prompt templates and prompt changes
    • RAG pipelines (retrieval quality, grounding, hallucination control)
    • Multi-turn conversations and long-context behaviour
  • Maintain golden datasets, regression test suites, and test result summaries.
  • Document prompt behaviour, edge cases, and known model quirks.

Vision & Multimodal Testing

  • Test VLMs for image-text alignment, OCR, captioning, and reasoning.
  • Document model performance across different image types, quality levels, and domains.
  • Track and publish model behaviour changes between versions.

Automation, MLOps & Reporting

  • Build Python-based automation for evaluation and regression testing.
  • Integrate tests into CI/CD and MLOps pipelines.
  • Produce readable quality reports and dashboards for engineers and leadership.
  • Monitor and document production issues such as model/data drift and degradation.

Build a Quality-First Culture

  • Establish QA and documentation standards that scale with a startup.
  • Mentor engineers on writing testable code and meaningful documentation.
  • Act as the single source of truth for AI quality, testing, and known risks.


What we’re looking For

Must-Have

  • Strong background in software testing with lead or ownership experience.
  • Hands-on experience testing LLMs, DL models, or GenAI systems.
  • Strong Python skills for test automation and data validation.
  • Proven ability to write clear, structured technical documentation.
  • Understanding of:
    • Transformer-based models and DL workflows
    • Model evaluation metrics and non-deterministic system testing
  • Comfortable working in ambiguity and moving fast in a startup.

Nice-to-Have

  • Experience with VLMs, multimodal models, or computer vision.
  • Exposure to RAG architectures, vector databases, and embeddings.
  • Familiarity with tools like LangChain, LlamaIndex, MLflow, or similar.
  • Experience documenting AI risks, limitations, or compliance requirements.

 



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MR

Marcus Rivera

Chief Revenue Officer

m.rivera@company.com
linkedin.com/in/marcusrivera
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