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Domain Registrar Jobs in New York (NOW HIRING)

Insurance domain experience is mandatory for this role. Key Responsibilities 1) AI Architecture ... Implement MLOps pipelines: automated model testing, monitoring, drift detection, model registries ...

AI Engineer - Insurance Domain - HYBRID

Warren, NJ · On-site +1

$87.12K - $181.50K/yr

AI Engineer - Insurance Domain - HYBRID NTT DATA strives to hire exceptional, innovative and ... Manage the model registry and lineage tracking to maintain governance and auditability of all AI ...

New

AI Platform Engineer Energy & Utility domain with experience in Google solutions. 1 level in-person ... Build, Cloud Functions, and Artifact Registry. * Automate model training, deployment, and ...

Data Engineer

Edison, NJ · On-site

$116.10K - $139.40K/yr

... Schema Registry and Kafka Streamspreferred * Experience in integrating different systems using REST and SOAP Services preferred * Experience with Data Lakes preferred * Exposure to Banking domain ...

NYC, NY (Hybrid Model) Must have Energy & Utility domain with experience in Google solutions. AI/ML ... Registry. * utomate model training, deployment, and monitoring workflows using Vertex AI Pipelines ...

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Domain Registrar information

What is a Domain Registrar job?

A Domain Registrar manages the registration, renewal, and administration of domain names for individuals and businesses. They ensure compliance with domain regulations, handle customer inquiries, and provide technical support for domain-related issues. This role may also involve working with domain registries, maintaining DNS records, and ensuring domain security.

What are the key skills and qualifications needed to thrive in the Domain Registrar position, and why are they important?

To excel as a Domain Registrar, you need a solid understanding of DNS management, domain name systems, and internet protocols, often supported by experience in IT or web hosting. Familiarity with registrar platforms, ICANN regulations, and domain management tools is highly beneficial. Attention to detail, problem-solving abilities, and effective communication are essential soft skills for working with clients and resolving technical issues. These competencies ensure smooth domain registration processes, regulatory compliance, and high-quality client service in a highly detail-oriented industry.

What are the typical daily responsibilities of a Domain Registrar?

As a Domain Registrar, your daily tasks typically include processing domain registration and renewal requests, managing DNS configurations, and assisting clients with domain transfers or troubleshooting. You’ll regularly interact with both technical and non-technical customers, ensuring their queries are resolved within industry regulations and timelines. The role often involves monitoring domain status to prevent expiration and maintaining up-to-date records in compliance with governing bodies like ICANN. Strong organizational skills are important, as you may also coordinate with IT teams or legal departments to handle disputes or verify ownership documentation.
What are the most commonly searched types of Domain Registrar jobs in New York? The most popular types of Domain Registrar jobs in New York are:
What are popular job titles related to Domain Registrar jobs in New York? For Domain Registrar jobs in New York, the most frequently searched job titles are:
Infographic showing various Domain Registrar job openings in New York as of May 2026, with employment types broken down into 87% Full Time, and 13% Contract. Highlights an 70% In-person, and 30% Remote job distribution.
AI Architect- Insurance domain

AI Architect- Insurance domain

TMS

Edison, NJ • Remote

$75/hr

Contractor

Posted 11 days ago


Job description

Role: AI Architect– Insurance (Mandatory) | Azure | API-First Microservices (.NET Program)

Duration: Long Term

Location: Remote/ EST 
 
 

Experience: 15+ years overall; 4+ years in AI/ML architecture/engineering
 

Role Summary

We are building a next-generation insurance platform, including a greenfield P&C Policy Administration System (PAS) with a microservices-based, API-first architecture on Microsoft .NET.

As the AI / ML Architect, you will lead the design and delivery of AI-powered capabilities across underwriting, pricing, claims, fraud, and operations. You will define end-to-end AI architecture (data → model → MLOps → serving), ensure secure and compliant AI, and partner closely with product, actuarial, underwriting SMEs, and engineering teams to move from prototypes to production-scale AI.

Insurance domain experience is mandatory for this role.

Key Responsibilities

1) AI Architecture & Solution Design (End-to-End)

  • Define the target-state AI/ML architecture for insurance use cases: underwriting decision support, risk scoring, claims triage, fraud detection, pricing optimization, customer/agent assist, and personalization.
  • Select and guide model approaches: predictive MLLLMs/GenAINLP (and vision models where applicable), with clear tradeoffs and success metrics.
  • Design API-first AI services that integrate cleanly with microservices (REST/gRPC, event-driven triggers, idempotency, versioning).
  • Define patterns for feature pipelines, model serving, and governance that work across multiple pods and environments.

2) Model Engineering, MLOps & Deployment (Production Focus)

  • Lead model development lifecycle: training, evaluation, validation, release, monitoring, and periodic refresh.
  • Implement MLOps pipelines: automated model testing, monitoring, drift detection, model registries, approval workflows, and rollback strategies.
  • Define serving patterns (batch/real-time/streaming) and optimize for accuracy, latency, reliability, and cost.

3) Insurance Domain Alignment (Business + Actuarial + Underwriting)

  • Partner with product owners and translate requirements into AI-enabled components and measurable outcomes.
  • Ensure AI outputs comply with underwriting guidelines, rating practices, claims workflows, and internal governance.
  • Design human-in-the-loop controls where needed for regulated decisioning and operational safety.

4) Responsible AI, Security, Compliance & Risk

  • Establish responsible AI guardrails: explainability, fairness/bias mitigation, audit trails, traceability, and model documentation standards.
  • Ensure data privacy/security controls across the pipeline: PII handling, access controls, encryption, secrets management, and environment separation.
  • Collaborate with risk/compliance to meet insurance regulatory expectations for AI systems (governance, reproducibility, reviewability).

5) Platform Integration & Cross-Functional Leadership

  • Work closely with the Chief Architect, .NET architects, data architect, DevOps, and engineering pods to align AI services to platform standards.
  • Mentor data scientists/ML engineers; enforce engineering rigor (testing, reliability, monitoring, secure coding).
  • Drive POCs and technology evaluations, and productize successful capabilities into reusable platform services.

6) AI-Assisted Engineering Enablement (Claude Code, Cursor, MCP)

  • Use Claude Code and Cursor as first-class development accelerators (code generation, refactoring, test generation, documentation), with strong review and security guardrails.
  • Standardize patterns for tool usage across teams, including MCP-based workflows/integrations (where applicable), ensuring traceability and quality gates.
  • Define measurement for productivity and quality improvements (cycle time, rework, defect leakage, release stability).

 

Must-Have Qualifications

Insurance Domain (Mandatory)

  • Proven insurance industry experience is required (P&C preferred): underwriting, rating/pricing, claims triage, fraud, policy servicing, or insurance data/analytics.
  • Experience designing or integrating ML/AI solutions in insurance decisioning contexts (e.g., risk scoring, pricing, fraud, claims).

Technical (Azure-first)

  • 4+ years hands-on AI/ML engineering and/or architecture experience; overall experience typically 12+ years.
  • Strong experience with Azure AI ecosystem, including one or more of:
    • Azure Machine Learning (training, registries, endpoints)
    • Azure OpenAI / LLM integration patterns
    • Azure AI Services (language, vision, etc.)
  • Strong MLOps experience: CI/CD for ML, model registries, monitoring, drift detection, evaluation, and controlled rollouts.
  • Experience building API-first services and deploying ML systems using Docker and Kubernetes (AKS preferred).

Engineering & Collaboration

  • Strong communication skills: can explain model tradeoffs and risks to non-technical stakeholders and client executives.
  • Proven ability to lead cross-functional teams in fast-paced environments and ship production outcomes.
  • Strong P&C insurance experience (Auto/Home/Commercial) and familiarity with PAS workflows.
  • Experience with event streaming (Kafka/Event Hubs) and real-time inference/feature pipelines.
  • Experience with responsible AI frameworks and interpretable ML methods in regulated environments.
  • Azure certifications (Azure AI Engineer / Azure Solutions Architect).