AI Systems Engineer

Suffolk ConstructionBoston, MA
4hHybrid

About The Position

Join Suffolk’s AI Studio in Boston as a n AI Systems Engineer , a hybrid role responsible for architecting and building both: The distributed systems backbone that powers enterprise-scale AI , and The agentic and LLM-driven capabilities transforming construction workflows This role sits at the intersection of platform engineering and applied AI. You will design scalable APIs , event-driven services, and reliable infrastructure — while also implementing multi-model AI agents, retrieval pipelines, and AI orchestration frameworks that operate in real-world production environments. You will help define how AI is built, deployed, observed, and scaled across Suffolk’s national operations .

Requirements

  • 6+ years of professional software engineering experience (not including vibe coding)
  • Demonstrated experience designing distributed or service-oriented systems in production
  • Strong backend engineering skills in Python , and at least one of Java, NodeJS, Rust or Kotlin
  • Experience building and deploying event-driven architectures (SNS/SQS, Kafka, EventBridge , etc.)
  • Experience integrating LLMs into production systems (Bedrock, OpenAI, Anthropic, etc.).
  • Hands-on experience with RAG pipelines , vector databases and building multi-agent AI systems
  • Deep understanding of: Distributed system failure modes API lifecycle management Concurrency and consistency tradeoffs LLM cost, latency, and reliability constraints Tuning AI Age nts for accuracy and performance

Nice To Haves

  • Experience building internal AI platforms or shared infrastructure
  • Exposure to large-scale SaaS or mission-critical systems
  • Experience designing multi-agent or orchestration frameworks
  • Experience with Databricks Lakehouse architecture
  • Prior experience in construction, manufacturing, or operational industries

Responsibilities

  • AI & Agentic Systems Product Engineering & Deployment
  • Design and implement production-grade RAG architectures
  • Build and deploy multi-model AI agents leveraging AWS Bedrock and LLM providers (Claude, GPT, Llama, Titan, etc.)
  • Implement dynamic model routing strategies based on task complexity, cost, and latency
  • Develop multi-agent orchestration frameworks enabling collaborative workflows (planner, retriever, executor, summarizer)
  • Design safe tool invocation patterns and guardrails for enterprise AI agents
  • Optimize inference pipelines for cost, performance, and reliability
  • Implement evaluation frameworks to measure model performance, hallucination rates, and response quality
  • Design fallback and degradation strategies for model outages or latency spikes
  • Distributed Systems & Platform Architecture
  • Architect and evolve service-oriented and event-driven systems supporting AI workloads
  • Design REST/ GraphQL APIs with clear versioning, authentication, and backward compatibility strategies
  • Implement asynchronous processing pipelines using queues, event buses, and workflow orchestration
  • Ensure reliability through idempotent consumers, retry strategies, circuit breakers, and dead-letter queues
  • Make informed tradeoff s between relational, NoSQL, and vector storage systems
  • Build services that are observable, traceable, and production-ready
  • Define and document architectural standards for AI platform services
  • Implement LLMOps : cost monitoring, latency optimization, usage analytics, and model versioning
  • Enforce security, governance, and access standards in line with enterprise policies
  • Collaboration & Technical Leadership
  • Work closely with product managers, site AI engineers, and data scientists to iterate rapidly in Agile sprints
  • Communicate technical progress clearly to non-technical stakeholders; contribute to internal AI playbooks and templates

Benefits

  • competitive salaries
  • auto allowances and gas cards for certain roles
  • access to market leading medical and emotional and mental health benefits
  • dental, and vision insurance plans
  • virtual care options for physical therapy and primary care
  • generous paid time off
  • 401k plan with employer match and access to expert financial resources
  • company paid and voluntary life insurance
  • tax deferred savings accounts
  • 10 backup daycare days each year
  • short- and long-term disability
  • commuter benefits and more
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