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Senior AI Developer (Automators)
Successfully
Req. VR-123781
We are building and maintaining one of the largest OTT platform test automation frameworks, serving millions of customers across streaming TV platforms. The team develops a Java/Appium-based automation framework for Android TV devices and is actively expanding it with AI-powered tooling.
We are looking for a Senior AI Developer. This is a hybrid role combining the design and development of AI-powered internal tools with hands-on test automation engineering skills. The ideal candidate is a software engineer who understands both QA automation and modern LLM/RAG systems — and can translate test engineering problems into practical AI solutions.
Design and implement AI-powered solutions focused on:
Automated test failure triage — LLM + RAG pipeline classifying ReportPortal failures (logs, stack traces, screenshots) into structured categories (PRODUCT_BUG, AUTOMATION_BUG, SYSTEM_ISSUE) using AWS Bedrock + Claude
AI-based Change-Based Testing (CBT) — LLM-driven test case selection using semantic similarity between code changes and test coverage
AI test case generation from feature specs, Jira tickets, and Confluence documentation
Build and maintain end-to-end RAG pipelines: document ingestion → chunking → embedding → OpenSearch Serverless vector store → retrieval → LLM response generation
Develop AWS Lambda functions (Python 3.12) and API Gateway REST endpoints to integrate AI capabilities into CI/CD pipelines
Apply prompt engineering best practices (system prompts, structured JSON output, guardrails) and drive continuous evaluation of LLM solution accuracy
Use Cursor IDE with MCP integrations, agentic workflows, and context/rules files to accelerate test code generation and maintenance
Write, maintain, and expand automated test suites in Java (Appium / UiAutomator2) for Android TV platforms
Develop and maintain functional, regression, NFR, and CBT test suites
Triage and resolve test failures in ReportPortal; integrate AI triage results with QMetry (QTM4J)
Support CI/CD pipeline health — participate in Nightly Build, RC, and release automation runs via Jenkins
Contribute to framework codebase improvements — bug fixes, refactoring, enhancements
Participate in Kanban ceremonies and PI planning under the ART team
Present AI solution demos to stakeholders and engineering leadership
Document AI system architecture, RAG pipelines, and tools in Confluence
Must have
AWS Bedrock — hands-on: model access, Knowledge Bases, Lambda integration (primary AI platform)
AI agents & Agentic tooling — practical knowledge of designing and operating AI agents, including agentic workflows, reusable skills, rules/guardrails, commands, and multi-tool/multi-agent orchestration
RAG pipeline — end-to-end implementation: chunking, embedding, vector indexing, retrieval, generation
Prompt engineering — zero-shot, few-shot, chain-of-thought, structured output (JSON mode), multi-turn
Vector databases — working knowledge of OpenSearch, Pinecone, or Faiss; understands vector vs. graph DB difference
LLM guardrails — input/output filtering, hallucination mitigation strategies
Fine-tuning vs. RAG — ability to reason through which approach fits a given problem
LLM orchestration — LangChain, LangGraph, or LlamaIndex
Embeddings — understands semantic similarity; experience with Amazon Titan Embed or equivalent
Python — for Lambda functions, AI pipeline scripting, and data processing
Java — 3+ years of hands-on test automation development
Appium / UiAutomator2 — mobile/Android UI automation
Android / ADB — device management, test execution
ReportPortal or equivalent test reporting tool
REST API — concepts and hands-on usage
Jenkins / CI-CD — pipeline debugging and integration
AWS — S3, Lambda, API Gateway, IAM, OpenSearch Serverless
Docker — containerized test execution environments
Nice to have
Cursor IDE advanced features — .cursorrules, memory-bank context files, MCP server integration, and agentic triage workflows
Android TV platforms — STB / embedded device testing experience (Fire TV, Roku, or similar)
QMetry (QTM4J) — test management integrated with Jira
Streamlit — for building internal AI dashboards
DSPy — programmatic prompt optimization
AWS SageMaker / MLflow — model evaluation and experiment tracking
Kotlin — for tooling alongside Java
Languages
English: C1 Advanced
Seniority
Senior
Remote Mexico, Mexico
Req. VR-123781
Domain Specific Languages
Cross Industry Solutions
15/07/2026
Req. VR-123781
Apply for Senior AI Developer (Automators) in Remote Mexico
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