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Software Engineer – AI Code
Location
Mexico
Posted
1 day ago
Salary
0
Seniority
Senior
Job Description
Software Engineer – AI Code
matteria
• Own end-to-end delivery of features and projects: design, implementation, deployment, and the client conversation around them • Pair with senior engineers on complex builds, owning meaningful slices independently • Build production AI workflows: RAG components, integrations across cloud platforms, agentic automations • Review pull requests from associate engineers • Write design notes that the team uses; contribute to architectural conversations
Job Requirements
- Experience 3+ years shipping production code with end-to-end ownership of features
- Full-stack range across modern web (TypeScript, React, Next.js) and a backend language (Python or Node), with comfort across relational databases and a cloud platform (we use GCP)
- Working fluency with Claude Code or comparable agentic engineering tooling — used daily on real work, with the judgement to direct AI on multi-step tasks and identify when its output is wrong
- Strong async written communication: PR descriptions, design notes, written code reviews
- Direct comfort in front of a client: standups, demos, scoping conversations
- Bilingual English / Spanish
- Production experience with Vertex AI, Gemini, or the Claude / Anthropic API
- Specific GCP depth (Cloud Run, Cloud Build, Vertex AI, IAM)
- Experience with agentic workflow tooling, MCP servers, or RAG systems in production
- Open-source contributions or production-grade side projects
Benefits
- Trust-based time off (minimum 4 weeks per year)
- Equipment stipend
- Annual learning and conference budget
- Health coverage per local market
- Career progression: most Software Engineers progress to Senior Applied AI Engineer within 18–30 months based on demonstrated capability
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