openashbyhqcostanoavc
Software Engineer, Artificial Intelligence/LLM (Multiple Seniority Levels)
Beacon AI
LocationSan Carlos - Hybrid
WorkplaceHybrid
EmploymentFullTime
Posted2026-05-15T00:39:20.953+00:00
Last observed2026-06-29 02:03:24.782052
Job idcostanoavc-beacon-ai:ashbyhq:3d334d75-bb74-4151-a372-9d5ebd68d954
ABOUT BEACON AI We’re a fast-moving team of aviators, engineers, and operators building an AI platform to make flying safer, more efficient, and more capable. Backed by top investors, we’ve secured a dozen Department of Defense contracts and partnered with major airlines to deliver mission-critical systems. We operate without silos or heavy processes. Small, focused teams own what they build, ship quickly, and learn fast, pushing the boundaries of how humans and AI work together in aviation. You will ship LLM-powered product features end-to-end. That means designing retrieval and tool-calling flows, writing the services that run them, building evals and guardrails, and watching cost, latency, and quality in production. You’ll partner with the ML/infra teammates on embeddings, indexing, and model hosting, and with the product teammates on user experience and outcomes. We move fast, and we care about reliability in a safety-critical domain. We’re hiring across levels. Senior engineers own features and services. Staff engineers own systems, standards, and cross-team technical direction. WHAT YOU’LL DO Build user-facing LLM features - Design and implement retrieval-augmented generation and tool-calling flows using frameworks like LangChain or equivalent primitives, where simpler is better. - Deliver robust JSON and schema-bound outputs with validation, retries, and fallbacks. - Add function calling to integrate with internal tools, search, routing, and data services. Own the service layer - Ship APIs and workers in Python or TypeScript with clear contracts, streaming, and backoff. - Add caching, request shaping, prompt templates, and context packing to control latency and cost. - Integrate with AWS Bedrock, OpenAI, Anthropic, or self-hosted endpoints as needed. Retrieval and data prep - Collaborate with infrastructure teammates to develop chunking, embeddings, and indexing capabilities for documents, time series, and multimedia. - Choose and tune vector backends such as OpenSearch, pgvector, or Pinecone. - Keep knowledge bases fresh with data syncs from S3, Aurora, DynamoDB, and external sources. Evaluation and quality - Create offline evals and golden sets for prompts, retrievers, and tools. - Stand up online metrics for task success, hallucination rate, retrieval precision/recall, p95 latency, and cost per request. - Run A/B tests and prompt/version rollouts with guardrails and canaries. Safety, privacy, and compliance - Implement content and policy checks, PII detection and redaction, access controls, and auditing. - Design human-in-the-loop paths for sensitive actions. - Handle aviation data with care and follow internal security standards. Operate what you build - Add tracing, logs, and dashboards for model calls, token usage, errors, and saturation. - Debug tricky failures across retrieval, prompts, tools, and providers. WHAT WILL MAKE YOU SUCCESSFUL - Shipped LLM apps: You’ve put LLM features in front of users and improved them with data. - Strong builder: Comfortable writing production code, tests, and docs. You keep things simple and observable. - RAG and tools depth: You understand embeddings, chunking, vector search tradeoffs, and function calling. - Quality mindset: You design evals, define success metrics, and iterate based on evidence. - Cost and latency aware: You track p95, hit SLAs, and reduce cost without hurting quality. - Clear communicator: You explain tradeoffs and align partners across product, infra, and security. NICE TO HAVE - Experience with Bedrock, OpenSearch Serverless, pgvector, Pinecone, or Weaviate. - Prompt versioning, guardrails, and provider routing in production. - Multimodal work with time series or video. - Familiarity with GPU inference, Triton, or TensorRT-LLM. - Aviation or other safety-critical domain exposure. - DevOps basics for CI/CD, IaC, and secure secrets handling. EXAMPLE PROBLEMS YOU MIGHT TACKLE IN MONTH ONE - Transform an internal knowledge base into a low-latency RAG service, c
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