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Artificial Intelligence Engineer

Job in Woodbridge Township, Middlesex County, New Jersey, 07095, USA
Listing for: Athena Executive Search & Consulting (AESC)
Full Time position
Listed on 2026-07-15
Job specializations:
  • Software Development
    AI Engineer (Applied/Software), Machine Learning/ ML Engineer, Cloud Engineer - Software
Salary/Wage Range or Industry Benchmark: 120000 - 190000 USD Yearly USD 120000.00 190000.00 YEAR
Job Description & How to Apply Below

We are an executive search firm currently hiring on behalf of our client. Our focus is on identifying professionals whose skills and experience align with our clients' strategic hiring needs.

About the Company

Our company is a leading operations management and analytics organization that helps businesses improve growth and profitability through analytics, AI, automation, and digital transformation. We partner with global organizations across insurance, healthcare, banking, financial services, utilities, retail, travel, and logistics to solve complex business challenges using data-driven solutions. This role sits within a team that builds enterprise‑grade AI capabilities for real business outcomes, combining machine learning, deep learning, cloud AI platforms, and modern software engineering practices.

The focus is on taking AI solutions from concept to production and making them reliable, scalable, and useful for internal teams and clients alike. The organization values practical innovation, cross‑functional collaboration, and measurable impact through AI‑powered products, copilots, intelligent agents, and automated workflows.

About the Role

This role owns the design, development, and deployment of production‑ready AI and Machine Learning solutions, including Generative AI applications, intelligent agents, and AI‑powered products. It requires strong execution across model development, MLOps, cloud deployment, and software engineering so solutions are not only accurate but also scalable, monitored, and maintainable. The successful candidate will work across the full delivery lifecycle, from experimentation and pipeline design to APIs, microservices, and production monitoring.

The role is best suited to someone who can combine hands‑on engineering with practical judgment, translating complex AI possibilities into business‑ready systems with clear performance, latency, and reliability outcomes.

Key Responsibilities
  • Design, develop, and deploy AI and machine learning models for production use so business teams can rely on solutions that are stable, measurable, and built for scale.
  • Build Generative AI applications, copilots, and intelligent agents that improve knowledge access, task automation, and user experience across business workflows.
  • Develop RAG pipelines using vector databases and large language models to improve retrieval quality, response relevance, and knowledge‑grounded outputs.
  • Create scalable data pipelines, feature engineering workflows, and model training pipelines that support repeatable experimentation and faster delivery.
  • Develop APIs and microservices using Python so AI capabilities can be integrated cleanly into enterprise applications and digital products.
  • Deploy and monitor models using MLflow, Docker, and CI/CD to keep releases controlled, observable, and production‑ready.
  • Work with Azure ML, Sage Maker, or Vertex AI to operationalize models in cloud environments with strong reliability and governance.
  • Collaborate with data scientists, engineers, and business stakeholders to align AI solutions with real priorities, delivery constraints, and measurable impact.
  • Strong Python programming skills with the ability to build production‑grade services, automation, and AI workflows that are maintainable and efficient.
  • Hands‑on experience with Tensor Flow, PyTorch, and Scikit‑learn to develop, train, evaluate, and refine machine learning and deep learning models.
  • Practical knowledge of machine learning, deep learning, statistics, and feature engineering to convert data into robust and useful predictive systems.
  • Experience with MLOps practices using MLflow, Docker, and CI/CD so model deployment, monitoring, and iteration happen in a controlled and repeatable way.
  • Experience with Azure ML, AWS Sage Maker, or Google Vertex AI to run models on cloud AI platforms with production readiness in mind.
  • Knowledge of LLMs, prompt engineering, RAG, and vector databases to support modern Generative AI use cases with grounded responses.
  • Experience building REST APIs and microservices so AI capabilities can be exposed reliably to products, platforms, and internal systems.
  • Familiarity with modern AI engineering tools…
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