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Forward Deployed Engineer - Applied AI - Manager - Financial Services - Consulting

Location:  New York
Other locations:  Anywhere in Region
Salary: Competitive
Date:  May 13, 2026

Job description

Requisition ID:  1708792

Location: Charlotte, Dallas, New York, Tampa

 

At EY, we’re all in to shape your future with confidence. 

 

We’ll help you succeed in a globally connected powerhouse of diverse teams and take your career wherever you want it to go.  Join EY and help to build a better working world.

 

Forward Deployed Engineer – Applied AI - Manager - Financial Services

 

EY is the only professional services firm with a separate business unit (“FSO”) that is dedicated to the financial services marketplace. Our FSO teams have been at the forefront of every event that has reshaped and redefined the financial services industry.  If you have a passion for rallying together to solve the most complex challenges in the financial services industry, come join our dynamic FSO team!

 

The business problems our clients are facing today are not the same problems they have faced in the past. The rapid pace of development in Artificial Intelligence and the technology that enables it has created an urgent need to innovate and adapt to the new global business paradigm. Financial institutions are looking to build smarter and more efficient ways to operate their business, create new revenue streams, and better manage risk, through new opportunities uncovered by their data. We believe that to fully unlock the potential of Artificial Intelligence, we need to look not only at its application, but also at the strategy level for how best to transform the enterprise into one that is technology and data focused and ready for the new age. Our clients’ problems are becoming increasingly complex while at the same time the need to automate and streamline is rising.

 

The Opportunity

 

Leads the delivery of solution or infrastructure development services for large or complex AI/ML initiatives, applying strong technical capability and hands-on engineering experience. Takes accountability for the design, development, delivery, and maintenance of AI-enabled solutions or infrastructure, while ensuring compliance with and contribution to relevant engineering standards. Understands business and user requirements and translates them into design specifications that are effective from both business and technical perspectives. Owns the implementation and integration of AI/ML capabilities into broader enterprise solutions, with a focus on reliability, scalability, user impact, and successful project delivery.

 

Your key responsibilities

  • Design, develop, test, deploy, and support production-grade AI/ML, generative AI, and intelligent automation solutions.
  • Solve complex technical problems through coding, debugging, testing, troubleshooting, and structured design remediation.
  • Translate business and user requirements into sound technical designs, APIs, workflows, and supportable implementation patterns.
  • Build and integrate LLM, RAG, and agentic solution components into enterprise applications and platforms.
  • Contribute to system design across service boundaries, orchestration layers, data flows, security controls, and external integrations.
  • Lead workstreams or project delivery responsibilities through planning, coordination, execution oversight, issue management, and stakeholder communication.
  • Drive engineering quality through strong coding standards, CI/CD practices, automated testing, observability, and documentation.
  • Partner with Development, Engineering, Product, Data, Architecture, and engagement leadership teams to deliver high-value AI capabilities.
  • Improve performance, resilience, maintainability, and cost efficiency of deployed AI systems.
  • Participate in architecture and design reviews, providing thoughtful trade-off analysis and implementation guidance.
  • Use modern AI-assisted software engineering tools such as Claude Code, Codex, or equivalent agentic coding platforms as part of delivery leadership and engineering execution.

 

AI and Engineering Skills:

 

Gen AI Foundational:

  • Ability to understand complex business challenges across banking, capital markets, insurance, and asset management and translate them into LLM-powered solutions that deliver measurable business value
  • Practical experience leading and managing multi-disciplinary teams through the full AI product lifecycle — requirements, architecture, build, evaluation, and production handoff
  • Demonstrated experience managing and mentoring teams of AI engineers and data scientists through the execution of specific business use cases, ensuring technical quality and delivery consistency across engagements
  • Advanced hands-on software engineering proficiency in Python, with the credibility to guide implementation decisions as well as architecture across delivery teams
  • Demonstrated experience architecting and delivering production-grade LLM applications including retrieval-augmented systems, agentic orchestration layers, and structured output pipelines at enterprise scale (e.g. LlamaIndex, LangChain,  Azure OpenAI, AWS Bedrock)
  • Strong knowledge of embedding models, vector search, semantic retrieval, and NLP similarity systems used in enterprise RAG and knowledge AI architectures (e.g. OpenAI Embeddings, Cohere Embed, Azure AI Search, FAISS etc.)

 

Agentic and LLM Ops:

  • Deep expertise in LLM Ops practices including model lifecycle management, versioning, CI/CD for AI systems, deployment governance, and continuous improvement loops in production environments (e.g. MLflow, Azure ML, GitHub Actions, Kubeflow etc.)
  • Expertise in agentic system architecture including multi-agent orchestration, tool use patterns, memory design, and human-in-the-loop workflows for high-stakes production environments (e.g. LangGraph, AutoGen, Semantic Kernel, CrewAI, NVIDIA NIM etc.)
  • Experience governing agent behavior in production environments including audit trail design, cost and latency controls, and reliability management across complex multi-agent pipelines
  • Demonstrated exploration of new LLM techniques and emerging agentic patterns, with the ability to assess their applicability to client challenges and translate them into practical delivery approaches
  • Experience defining and governing LLM evaluation frameworks across teams and engagements, ensuring consistent measurement of output quality, safety, and alignment with business requirements (e.g. RAGAS, DeepEval, Arize, Weights & Biases etc.)
  • Ability to drive performance, resilience, maintainability, and cost efficiency improvements in deployed LLM and agentic systems, including post-deployment optimization and operational tuning

 

Software Engineering:

  • Knowledge of MLOps practices for continuous integration and continuous deployment of AI systems in cloud environments, including containerization and orchestration for scalable and secure LLM deployment (Azure DevOps, GitHub Actions, Kubeflow, MLFlow etc.)
  • Experience governing API design standards for LLM and agentic systems including contract design, versioning, error handling, retry semantics, and decoupling of AI service consumers from internal model and workflow topology
  • Strong system design capability across service boundaries, asynchronous workflows, data contracts, cloud-native patterns, and secure deployment models for AI-enabled applications
  • Proficiency in containerization and orchestration for deploying and managing scalable LLM applications in production cloud environments (e.g. Docker, Kubernetes, Azure Container Apps, AWS ECS etc.)
  • Ability to collaborate with data engineers, ML engineers, and business stakeholders to align LLM solution design with enterprise data and technology constraints

 

Soft Skills and additional attributes for success:

  • Clear communicator able to explain complex AI system behavior and trade‑offs to technical and non‑technical stakeholders, including risk and compliance.
  • Strong ownership and accountability, taking responsibility for AI systems from design through production and issue resolution.
  • Comfort with ambiguity, able to operate effectively as requirements, regulations, and technologies evolve.
  • Collaborative and cross‑functional, working closely with engineering, product, risk, legal, and audit teams.
  • Sound judgment in regulated environments, with awareness of risk, controls, and when human oversight is required.
  • Bachelor’s degree preferred.
  • 7+ years of applied engineering experience, including significant experience in AI/ML engineering roles.

 

Demonstrated experience in the following areas will be a huge plus:

  • Experience advising clients on AI platform and infrastructure strategy including model access layer selection, build-vs-buy decisions, and integration with existing data and technology infrastructure (e.g. Azure OpenAI, AWS Bedrock,Google Vertex AI, NVIDIA AI Enterprise, Hugging Face etc.)
  • Ability to quantify business improvement resulting from LLM solutions through defined evaluation metrics, performance benchmarks, and client-facing reporting
  • Strong ability to design and govern model observability and monitoring strategies across engagements, covering output quality, behavioral drift, and multi-step agentic workflow tracing (e.g. LangSmith, Arize, Datadog, Azure Monitor etc.)
  • Understanding of LLM fine-tuning methodologies and the ability to advise clients on when and how to apply them, including data preparation, training approaches, and post-training evaluation (e.g. LoRA, QLoRA, PEFT, NeMo Framework etc.)
  • Experience leading controlled model rollout programs including shadow deployment, A/B testing, canary releases, and stakeholder sign-off processes with defined rollback criteria
  • Familiarity with AI security risks specific to LLM systems including prompt injection, data poisoning, and model extraction, and the ability to advise on mitigation and audit trail requirements
  • Familiarity with bias, fairness, and explainability approaches and their application in financial services AI systems
  • Familiarity with system design principles for AI — scalability, fault tolerance, and distributed architecture for production AI workloads
  • Familiarity with data pipeline architecture for enterprise AI workloads including ingestion, transformation, and governance
  • Understanding of data security and privacy best practices in cloud environments as they apply to LLM application development and deployment
  • Familiarity with AI-assisted software engineering tools as part of delivery leadership and engineering execution (e.g. Claude Code, GitHub Copilot, Codex etc.)
  • Familiarity with GPU-accelerated AI workloads and cloud AI services for model inference and deployment at scale (e.g. NVIDIA GPU platforms, Azure ML, AWS SageMaker etc.)
  • Familiarity with agile and modern engineering delivery methodologies as applied to AI/ML initiatives

 

Ideally, you’ll also have

  • Master’s degree in Business Administration (MBA) or Science (MS) preferred
  • Prior consulting experience

 

What we offer you

 

At EY, we’ll develop you with future-focused skills and equip you with world-class experiences. We’ll empower you in a flexible environment, and fuel you and your extraordinary talents in a diverse and inclusive culture of globally connected teams. Learn more.

 

Are you ready to shape your future with confidence? Apply today.

 

To help create the best experience during the recruitment process, please describe any disability-related adjustments or accommodations you may need.

 

EY | Building a better working world

EY is building a better working world by creating new value for clients, people, society and the planet, while building trust in capital markets.

 

Enabled by data, AI and advanced technology, EY teams help clients shape the future with confidence and develop answers for the most pressing issues of today and tomorrow.

 

EY teams work across a full spectrum of services in assurance, consulting, tax, strategy and transactions. Fueled by sector insights, a globally connected, multi-disciplinary network and diverse ecosystem partners, EY teams can provide services in more than 150 countries and territories.

 

 

What we offer you
At EY, we’ll develop you with future-focused skills and equip you with world-class experiences. We’ll empower you in a flexible environment, and fuel you and your extraordinary talents in a diverse and inclusive culture of globally connected teams. Learn more.

  • We offer a comprehensive compensation and benefits package where you’ll be rewarded based on your performance and recognized for the value you bring to the business.  The base salary range for this job in all geographic locations in the US is $125,500 to $230,200.  The base salary range for New York City Metro Area, Washington State and California (excluding Sacramento) is $150,700 to $261,600.  Individual salaries within those ranges are determined through a wide variety of factors including but not limited to education, experience, knowledge, skills and geography.  In addition, our Total Rewards package includes medical and dental coverage, pension and 401(k) plans, and a wide range of paid time off options.
  • Join us in our team-led and leader-enabled hybrid model. Our expectation is for most people in external, client serving roles to work together in person 40-60% of the time over the course of an engagement, project or year.
  • Under our flexible vacation policy, you’ll decide how much vacation time you need based on your own personal circumstances. You’ll also be granted time off for designated EY Paid Holidays, Winter/Summer breaks, Personal/Family Care, and other leaves of absence when needed to support your physical, financial, and emotional well-being.

 

Are you ready to shape your future with confidence? Apply today. 
EY accepts applications for this position on an on-going basis.  

 

For those living in California, please click here for additional information.

 

EY focuses on high-ethical standards and integrity among its employees and expects all candidates to demonstrate these qualities.

 

EY  |  Building a better working world

 

EY is building a better working world by creating new value for clients, people, society and the planet, while building trust in capital markets.

 

Enabled by data, AI and advanced technology, EY teams help clients shape the future with confidence and develop answers for the most pressing issues of today and tomorrow.

 

EY teams work across a full spectrum of services in assurance, consulting, tax, strategy and transactions. Fueled by sector insights, a globally connected, multi-disciplinary network and diverse ecosystem partners, EY teams can provide services in more than 150 countries and territories.

 

EY provides equal employment opportunities to applicants and employees without regard to race, color, religion, age, sex, sexual orientation, gender identity/expression, pregnancy, genetic information, national origin, protected veteran status, disability status, or any other legally protected basis, including arrest and conviction records, in accordance with applicable law.  

 

EY is committed to providing reasonable accommodation to qualified individuals with disabilities including veterans with disabilities. If you have a disability and either need assistance applying online or need to request an accommodation during any part of the application process,  please call 1-800-EY-HELP3, select Option 2 for candidate related inquiries, then select Option 1 for candidate queries and finally select Option 2 for candidates with an inquiry which will route you to EY’s Talent Shared Services Team (TSS) or email the TSS at ssc.customersupport@ey.com.

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