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Everything Home - All in one PLACE
Senior AI Engineer
Location
United States
Posted
12 days ago
Salary
$90K - $150K / year
Seniority
Senior
Job Description
Senior AI Engineer
PLACE
• Design and deliver production AI and agentic systems across document intelligence, workflow automation, and copilots • Own architecture decisions for LLM-based systems, including retrieval, orchestration, memory, tool use, and evaluation • Build and maintain evals and observability frameworks to ensure system quality, reliability, and performance • Optimize systems for cost and latency at production scale • Partner closely with AI Product to scope, sequence, and deliver high-impact features • Collaborate with Data Engineering on pipelines, schemas, and data quality foundations • Mentor engineers working on AI-adjacent systems and elevate team capabilities • Evaluate vendors, models, and tools through POCs, benchmarking, and cost-performance analysis • Ship quickly, iterate in production, and continuously improve system performance
Job Requirements
- 6+ years of software engineering experience, including 2+ years building and shipping production LLM/ML systems
- Proven experience designing and deploying agentic systems (tool use, orchestration, multi-step workflows)
- Strong Python proficiency with production-grade coding, testing, and deployment practices
- Hands-on experience with LLM APIs (e.g., OpenAI, Anthropic, AWS Bedrock), including prompting, structured outputs, and function calling
- Deep experience with evals and observability for LLM systems (accuracy measurement, regression detection, drift monitoring)
- Experience building retrieval systems (RAG), working with vector databases and embedding models
- Solid cloud infrastructure experience (AWS preferred), including APIs, containers, and serverless architecture
- Strong system design mindset across LLM architecture (retrieval, memory, orchestration, tool use) with pragmatic tool selection
- Ability to manage cost and latency tradeoffs in production AI systems
- Clear communicator who can write design docs, explain tradeoffs, and collaborate cross-functionally
- Ownership mindset: ships end-to-end and operates effectively in production environments
Benefits
- PTO as needed
- Comprehensive insurance coverage
- 401(k) match
- Stock option grants
- Stock purchase plan
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Senior AI Engineer – Clients
Infinity ConstellationAmplifying founders and building companies with exponential potential, founded by Invisible with a focus on AI services
• Build production software with code and Supernal's proprietary platform, including backend services, data models, and CRUD applications • Build and maintain integrations with external systems (APIs, webhooks, third-party tools, and data sources) that AI Employees can safely act on • Design, implement, and deploy conversational agents, including multi-turn flows, state management, and tool usage • Own end-to-end technical delivery for high-priority customer implementations, from architecture through production launch • Translate customer requirements and SOWs into clear technical designs, execution plans, and deliverables • Make and own architectural decisions across application design, API integrations, LLM orchestration, RAG design, and workflow decomposition • Handle real-world voice system challenges including latency, interruptions, fallbacks, error handling, and failure recovery • Write automated tests — unit tests for isolated logic and end-to-end tests for full system and user journey validation • Apply solid error handling: distinguish retryable vs. fatal failures, surface meaningful error messages, and avoid silent failures • Actively debug complex production issues across agent logic, prompts, integrations, and external dependencies • Partner with delivery and product leadership to manage timelines, scope, and technical tradeoffs during implementation • Review technical work for quality, scalability, and maintainability, setting a high bar for engineering excellence • Define, document, and evolve best practices for building and delivering reliable AI Employees
- Projetar, desenvolver e manter APIs e microsserviços backend em Python (FastAPI/Flask); - Construir e evoluir pipelines de IA: integração com LLMs (Azure OpenAI, OpenAI, Anthropic, Gemini), embeddings, vector search e orquestração de agentes; - Implementar e otimizar soluções de RAG (Retrieval-Augmented Generation) com bases vetoriais (Azure AI Search, Pinecone, Qdrant, pgvector); - Atuar em deploys cloud-native (Azure/GCP) com containers (Docker) e orquestração; - Colaborar com times de produto, frontend e dados para entregar features end-to-end, eventualmente contribuindo no frontend (React/Next.js ou Streamlit) quando necessário.



