QA Lead
Auto Import<p><strong>Location: This position is remote within Colombia</strong></p> <h3 data-path-to-node="5">About the Role</h3> <p data-path-to-node="6">We are seeking a seasoned, battle-tested <strong data-path-to-node="6" data-index-in-node="41">QA Lead & AI Brand Evaluation Strategist</strong> to take full ownership of the quality, integrity, and strategic evaluation of our rapidly expanding suite of agentic and AI-powered product features.</p> <p data-path-to-node="7">This is not a traditional, checklist-driven QA role. You will operate in a highly dynamic, non-deterministic environment, leading the strategy to evaluate probabilistic software at scale. Your core mission is to <strong data-path-to-node="7" data-index-in-node="212">transform complex, ambiguous business requirements into robust evaluation criteria</strong> and scoring systems. You will lead the design of tools and frameworks that process massive volumes of data, ensuring our brand scoring metrics are precise, reliable, and actionable.</p> <p data-path-to-node="8">If you have a proven track record of leading QA initiatives, navigating technical ambiguity with leadership, and building evaluation architectures for complex data ecosystems, this role is for you.</p> <h3 data-path-to-node="10">What you'll do</h3> <ul data-path-to-node="11"> <li> <p data-path-to-node="11,0,0"><strong data-path-to-node="11,0,0" data-index-in-node="0">Strategic QA Leadership:</strong> Own the end-to-end testing and evaluation strategy for multi-agent architectures and high-volume data pipelines, defining direction even when product requirements are fluid or ambiguous.</p> </li> <li> <p data-path-to-node="11,1,0"><strong data-path-to-node="11,1,0" data-index-in-node="0">Business-to-Evaluation Translation:</strong> Act as the primary bridge between Product, Data Science, and Engineering. Translate complex business objectives into concrete, data-driven evaluation criteria and operational rubrics.</p> </li> <li> <p data-path-to-node="11,2,0"><strong data-path-to-node="11,2,0" data-index-in-node="0">Brand Scoring Architecture:</strong> Oversee the methodology for scoring brands against complex criteria, ensuring that automated systems accurately transform massive datasets into precise, reliable business metrics (e.g., Share of Model, Net Sentiment).</p> </li> <li> <p data-path-to-node="11,3,0"><strong data-path-to-node="11,3,0" data-index-in-node="0">Framework & Tool Building:</strong> Drive the creation of internal tools, data-driven testing pipelines, and validation frameworks capable of handling non-deterministic AI outputs and large-scale information ingestion.</p> </li> <li> <p data-path-to-node="11,4,0"><strong data-path-to-node="11,4,0" data-index-in-node="0">System Integrity & Governance:</strong> Establish risk-adaptive guardrails and checkpoints to ensure data precision, compliance (PII), and logical reasoning across complex, multi-step agentic workflows.</p> </li> <li> <p data-path-to-node="14,0,0"><strong data-path-to-node="14,0,0" data-index-in-node="0">Lead & Orchestrate Evaluation Frameworks:</strong> Define, architect, and oversee validation processes for application layers, complex API workflows, and the data transformation engine.</p> </li> <li> <p data-path-to-node="14,1,0"><strong data-path-to-node="14,1,0" data-index-in-node="0">Define Brand Scoring Criteria:</strong> Establish the mathematical and logical rules that operate over massive data volumes to audit whether brand evaluations match underlying raw metrics reliably.</p> </li> <li> <p data-path-to-node="14,2,0"><strong data-path-to-node="14,2,0" data-index-in-node="0">Direct "Golden" Test Set Curation:</strong> Lead the strategy for compiling, synthesizing, and maintaining massive baseline validation datasets to test edge cases, user intent, and model drift.</p> </li> <li> <p data-path-to-node="14,3,0"><strong data-path-to-node="14,3,0" data-index-in-node="0">Drive Adversarial & Ambiguity Testing:</strong> Design "red-teaming" scenarios and boundary testing to evaluate how gracefully the system handles prompt variations, conversational drift, and highly ambiguous data inputs.</p> </li> <li> <p data-path-to-node="14,4,0"><strong data-path-to-node="14,4,0" data-index-in-node="0">Tooling Innovation:</strong> Collaborate with engineering to build proprietary testing tools or automation scripts that streamline the ingestion and analysis of high-volume data for QA purposes.</p> </li> <li> <p data-path-to-node="14,5,0"><strong data-path-to-node="14,5,0" data-index-in-node="0">Defect Profiling & Root-Cause Strategy:</strong> Move beyond simple bug logging; analyze trends in statistical behavioral defects and guide cross-functional teams toward systemic root-cause resolution.</p> </li> <li> <p data-path-to-node="14,6,0"><strong data-path-to-node="14,6,0" data-index-in-node="0">Platform Observability & Metrics:</strong> Monitor cloud logging and data observability dashboards to track execution latency, data drift, and accuracy trends, transforming insights into platform optimizations.</p> </li> </ul> <h3 data-path-to-node="16">What we're looking for</h3> <ul data-path-to-node="17"> <li> <p data-path-to-node="17,0,0"><strong data-path-to-node="17,0,0" data-index-in-node="0">Experience:</strong> 8+ years of proven experience in QA Engineering, Systems Analysis, or Software Testing, with <strong data-path-to-node="17,0,0" data-index-in-node="105">at least 2+ years in a Lead or Strategic role</strong> managing complex, data-heavy digital platforms.</p> </li> <li> <p data-path-to-node="17,1,0"><strong data-path-to-node="17,1,0" data-index-in-node="0">Leadership in Ambiguity:</strong> Proven "cancha" (battle-tested experience) leading QA initiatives in fast-paced environments where requirements are not fully defined, showing a high capacity to resolve ambiguity and establish order.</p> </li> <li> <p data-path-to-node="17,2,0"><strong data-path-to-node="17,2,0" data-index-in-node="0">Data & Statistical Mindset:</strong> Strong data-driven background. Exceptional capability to shift away from purely binary (pass/fail) testing toward evaluating data trends, composite scoring, and statistical outcomes.</p> </li> <li> <p data-path-to-node="17,3,0"><strong data-path-to-node="17,3,0" data-index-in-node="0">High-Volume Data Literacy:</strong> Comfortable working with big data contexts—understanding how information flows from raw ingestion (data lakes) through transformation layers to user-facing dashboards.</p> </li> <li> <p data-path-to-node="17,4,0"><strong data-path-to-node="17,4,0" data-index-in-node="0">Core QA Mastery:</strong> Deep expertise in traditional and modern software testing methodologies, Agile environments, risk management, and project tracking ecosystems (such as JIRA).</p> </li> <li> <p data-path-to-node="17,5,0"><strong data-path-to-node="17,5,0" data-index-in-node="0">Scripting & Data Querying:</strong> Practical experience with Python, JavaScript, or SQL to query databases, manipulate data structures, and trigger/build automated evaluation pipelines.</p> </li> <li> <p data-path-to-node="17,6,0"><strong data-path-to-node="17,6,0" data-index-in-node="0">Conceptual AI Fluency:</strong> Deep operational awareness of LLM behaviors, agentic workflows, and typical AI challenges (hallucinations, context limits, instruction adherence).</p> </li> </ul> <h3 data-path-to-node="19">Preferred Skills and Qualifications</h3> <ul data-path-to-node="20"> <li> <p data-path-to-node="20,0,0"><strong data-path-to-node="20,0,0" data-index-in-node="0">AI Tooling & Observability:</strong> Experience with LLM evaluation frameworks (e.g., Ragas, LangSmith, TruLens) or prompt engineering playgrounds.</p> </li> <li> <p data-path-to-node="20,1,0"><strong data-path-to-node="20,1,0" data-index-in-node="0">Advanced Data Infrastructure:</strong> Familiarity with cloud data warehouses and analytics platforms (e.g., BigQuery, Databricks, Google Cloud Platform components).</p> </li> <li> <p data-path-to-node="20,2,0"><strong data-path-to-node="20,2,0" data-index-in-node="0">Custom Tool Development:</strong> Experience building internal scripts or lightweight tools specifically designed to automate QA data validation.</p> </li> </ul> <p>If the selected candidate holds a degree in Engineering or a related profession, they must present their professional license. To verify your degree requires this license, please visit <a id="OWA30055432-7edb-e3b5-bdb0-059fdcb815b5" href="http://www.copnia.gov.co/" data-stringify-link="http://www.copnia.gov.co" data-sk="tooltip_parent" data-auth="NotApplicable" data-linkindex="0">www.copnia.gov.co</a> and <a id="OWA9c0f7ac0-12a0-a847-2612-fad51935751f" href="https://www.consejoprofesional.org.co/" data-stringify-link="https://www.consejoprofesional.org.co/" data-sk="tooltip_parent" data-auth="NotApplicable" data-linkindex="1">https://www.consejoprofesional.org.co/</a>. </p> <p><strong><span style="font-family: arial, sans-serif;">About Huge</span></strong></p> <p>Huge is a design and technology company. We create products and experiences that grow the world’s most ambitious brands. We do this by designing experiences for people, not users, and uncovering new sources of growth by leveraging our creative talent, our proprietary platform LIVE and unlocking the advantages brought to us by emerging technologies. We believe all experiences should be intelligent, shoppable and unique to every brand.<br><br>Huge’s nearly 1,000 thinkers, tinkerers, makers and creators, have been problem-solving across North America, Europe, and Latin America for over 25 years. Interested? You’ll find more information at <a class="c-link" href="http://www.hugeinc.com/" target="_blank" data-stringify-link="http://www.hugeinc.com" data-sk="tooltip_parent">www.hugeinc.com</a>.</p> <p><span style="font-weight: 400;">Huge is committed to creating an inclusive employee experience for all. Regardless of race, gender, religion, sexual orientation, age, disability, or if you’re parenting the next generation of innovators, we firmly believe that our work is at its best when everyone feels free to be their most authentic self.</span></p> <p><span style="font-weight: 400;">Huge is an equal opportunity employer (EOE). We strongly support diversity in the workforce. We are committed to an inclusive, barrier-free recruitment and selection process and work environment. If you are contacted for a job opportunity, please advise us of any accommodation needed to ensure you have access to a fair and equitable process. Any information received relating to accommodation will be addressed confidentially.</span></p> <p><span style="font-weight: 400;">Workers shall not be required to pay employers’ or agents’ recruitment fees or other related fees for their employment. If any such fees are found to have been paid by workers, such fees shall be repaid to the worker.</span></p> <p><span style="font-weight: 400;"><br></span>#LI-POST #LI-Remote</p>