
$0-$0 / yr
Salary
mexico
Region
ASAP
Start Date
No company information provided.
The Role:
We are seeking a Senior AI Platform Engineer to own the core platform layer that powers every AI agent in production — from multi-tenant agent configuration and schema architecture, to data pipeline contracts, evaluation harnesses, and customer onboarding automation.
This role sits at the intersection of backend platform engineering, LangGraph-based orchestration, and AI evaluation systems. You won't just build features — you'll own the infrastructure that makes all features possible: the agent orchestration graph, the customer configuration schema, end-to-end conversation logging, automated eval pipelines, and the scripts that deploy new customers in under 30 minutes.
If you love owning systems that other engineers depend on, ship at high velocity across a wide surface area, and take pride in leaving codebases cleaner than you found them — we want to hear from you.
Responsibilities:
Core Platform & Schema Architecture
Multi-Tenancy Architecture
Data Pipelines & Conversation Logging
Eval Systems & Quality Gates
Onboarding Automation & Deployment
Reliability & Observability
Requirements:
Experience:
Must: Proficient or Advance use of agentic workflows for coding in tools like Cursor AI or Claude Code.
4+ years building and owning production-grade backend systems in Python.
Proven experience owning a core platform or shared infrastructure layer used by multiple teams or customers.
Hands-on track record with multi-tenant system design — schema isolation, config-driven parameterization, and deployment automation.
Experience building evaluation harnesses for LLM-based systems with quantitative metrics.
Tools / Technologies:
Python (advanced): async I/O, FastAPI, Pydantic, pytest, type hinting, data classes.
LangGraph: state machines, conditional edges, node composition, shared state management across modular agent layers.
PostgreSQL + pgvector: relational schema design, state persistence, multi-tenant data isolation.
RAG pipelines: vector DB (Pinecone or equivalent), embedding pipelines, retrieval evaluation.
Eval & tracing frameworks: LLM simulation testing, distributed tracing, automated scoring pipelines.
GitHub Actions / CI/CD: automated eval gates, schema validation hooks, environment promotion.
AWS: EC2, S3, RDS, IAM — production deployment and infrastructure operations.
YAML / config-driven deployment: customer configuration templating, parameterized onboarding scripts.
Skills:
Strong systems thinking — ability to see how schema decisions in the core platform ripple downstream to eval, logging, onboarding, and customer deployments.
Comfort owning wide surface area — this role crosses platform, data, eval, and ops without a narrow specialization.
High individual shipping velocity — ability to close multiple GitHub issues per day with clean PRs and minimal back-and-forth.
Strong schema discipline — treats data contracts as first-class artifacts, not afterthoughts.
Ability to work autonomously with minimal supervision in a fast-moving startup environment.
Strong written communication for PR descriptions, Notion documentation, and deployment SOPs.
Preferred Qualifications:
Experience with IP-aware architecture decisions or contributing to software patent documentation.
Familiarity with voice agent systems (Twilio, PSTN, LiveKit) and latency-constrained deployments.
Experience with multi-model evaluation (comparing models from OpenAI, Anthropic, Mistral) using quantitative benchmarks.
Prior work in self-storage, property management, or regulated verticals where data privacy and auditability matter.
Experience contributing to a modular / clean architecture codebase across multiple bounded contexts.
Prior experience in fast-growing startups where you owned infrastructure other engineers depended on daily.