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Generative AI Engineer

šŸ‡ŗšŸ‡ø United States

Python

Flask

Docker

Kubernetes

AWS

GCP

Azure

Terraform

Elasticsearch

Snowflake

Machine Learning

Design

Large Language Models

Backend

Data Science

Devops

SQL

Analyst

Security Engineer

Generative AI Engineer

from šŸ‡ŗšŸ‡ø United States

Afficiency is a rapidly growing Insurtech startup whose mission is to provide life insurance to everyone on the platforms they already trust. Located in NYC, we design life insurance products that can be purchased entirely digitally and can be easily embedded into distribution platforms or with agents who sell insurance. The company is experiencing rapid growth and is well-funded. We are looking for new team members to join us on our journey to shake up the life insurance industry. We need individuals who bring passion, curiosity, and a desire for excellence.Ā 

As aĀ Generative AI EngineerĀ atĀ Afficiency, you willĀ be responsible forĀ designing,Ā developingĀ and deploying Generative AI solutions that enhance our core product platforms and client implementations. You will work closely with engineering, data science, and infrastructure teams to build scalable AI-driven applications using Large Language Models (LLMs), Retrieval-Augmented Generation (RAG), model fine-tuning, and reinforcement learning approaches.Ā 

This role is ideal for someone who isĀ based in the NYC Metro Area,Ā passionate about building real-world GenAI applications and bringing them into production, while continuously improving performance,Ā reliability,Ā and user outcomes.Ā 

ResponsibilitiesĀ Ā 

  • Deliver GenAI solutions end-to-endĀ 

  • Own technical design and implementation of GenAI applications from discovery through production handoff.Ā 

  • Build APIs/services that integrate with enterprise systems and analytics platforms.Ā 

  • Implement enterprise-grade RAGĀ 

  • Design ingestion pipelines for internal content (PDFs, policies, research, dashboards, ticketing, wikis).Ā 

  • Build retrieval systems with hybrid search, filtering, re-ranking, query rewriting, and context optimization.Ā 

  • Implement permission-aware retrieval aligned to entitlements and data access policies.Ā 

  • Establish evaluation and quality controls.Ā 

  • Define metrics forĀ retrievalĀ quality and answer grounding (faithfulness, citation accuracy, coverage).Ā 

  • Create golden datasets, regression tests, and automated evaluation harnesses.Ā 

  • Operationalize GenAI (LLMOps)Ā 

  • Instrument observability (latency, cost, token usage, error rates) and implement safe rollout patterns.Ā 

  • Implement caching, rate limiting, fallbacks, and incident-ready operational practices.Ā 

  • Partner across teams to land solutionsĀ 

  • Collaborate with business owners to translate requirements into workable designs.Ā 

  • Work with Security/Compliance to embed guardrails, auditability, and privacy controls.Ā 

  • Provide clear documentation andĀ implementation ofĀ playbooks to enable internalĀ teams'Ā post-engagement.Ā 

Must HaveĀ 

  • Education: Master's degree or equivalent experienceĀ requiredĀ 

  • 3+ years in software engineering, data engineering, ML engineering, or applied AI, including recent GenAI delivery in production.Ā 

  • DemonstratedĀ expertiseĀ in RAG system design and optimization, including:Ā 

  • chunking + metadata enrichment, hybrid search, re-ranking, retrieval evaluationĀ 

  • grounding/citations and hallucination mitigation patternsĀ 

  • Strong Python and backend engineering skills (FastAPI/Flask), plus strong SQL.Ā 

  • Experience working in regulated or security-conscious environments, with knowledge of:Ā 

  • access controls/entitlements, data privacy, logging/audit trails, secure SDLC practicesĀ 

  • Proven ability to work effectively as an IC consultant:Ā 

  • communicate architecture decisions clearlyĀ 

  • influence cross-functional stakeholders without direct authority produce high-quality documentation and handoff materialsĀ 

Nice to HaveĀ 

  • Fine-tuning experience (SFT,Ā LoRA/QLoRA) and familiarity with preference optimization concepts (DPO/RLHF)Ā 

  • Vector/hybrid search platforms: Elasticsearch/OpenSearch vector, FAISS, Pinecone,Ā Weaviate, MilvusĀ 

  • LLMOpsĀ tooling:Ā MLflow/W&B,Ā OpenTelemetry, prompt registries, evaluation frameworksĀ 

  • Cloud + platform: AWS/Azure/GCP, Docker/Kubernetes, TerraformĀ 

Tools & TechnologiesĀ 

  • LLM frameworks:Ā LangChain,Ā LlamaIndex, Semantic Kernel (optional)Ā 

  • Vector/hybrid search:Ā Open to different skillsetsĀ 

  • Data:Ā (Snowflake/Databricks/warehouse), event pipelines, document storesĀ 

  • Observability: logging/tracing/metrics, dashboards, alertingĀ 

What We Offer   

  • Competitive salary with equity options
  • Robust health, dental, and vision benefits for employee and dependents
  • 401k matching contributions
  • Generous PTO policy
  • Provided work-from-home equipmentĀ 

Afficiency is an Equal Opportunity Employer. All your information will be kept confidential according to EEO guidelines.

by @maxrusakovic