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Posted on 2026/01/01

Solution Architect, Agentic AI, NYC

West Monroe

New York, NY, United States

Full-time

Qualifications

  • Google Cloud Platform (GCP): Strong experience with GCP services, including Vertex AI, BigQuery, Cloud Functions, Kubernetes Engine, and Pub/Sub
  • AI/ML Architecture: Deep understanding of AI/ML systems, including agent-based models, reinforcement learning, and adaptive decision-making
  • Agentic Patterns & Frameworks: Hands-on experience with common agentic design patterns such as RAG, orchestrator–worker, planner–executor, and collaborative multi-agent architectures
  • Agent Communication & Protocols: Proficient in MCP (Model Context Protocol) and A2A (agent-to-agent) standards for interoperable, distributed agent systems
  • Solution Architecture: Proven experience in designing scalable, secure, and extensible solutions for enterprise environments
  • Integration Patterns: Expertise in API design, microservices, and event-driven architectures
  • Security & Compliance: Knowledge of cloud security best practices, data privacy regulations, and governance frameworks
  • Programming: Strong proficiency in Python; working knowledge of Java and Go for agent services, tooling, and orchestration
  • Strong ability to create high-quality architectural diagrams, technical specifications, and documentation
  • Experience in translating business requirements into technical solutions and ensuring alignment with enterprise standards
  • Familiarity with Agile methodologies and iterative solution delivery
  • Excellent communication and stakeholder management skills, with the ability to explain complex technical concepts to non-technical audiences
  • Experience working with cross-functional teams, including product managers, engineers, and business leaders
  • Strong problem-solving skills and the ability to navigate ambiguity and complexity
  • Google Cloud certifications (e.g., Professional Cloud Architect, Professional Machine Learning Engineer)
  • Experience designing and implementing agent-based systems in a production environment
  • Familiarity with MLOps practices and tools for managing the AI/ML lifecycle
  • Knowledge of ethical AI principles and frameworks
  • Experience in scaling proof-of-concept solutions to production-grade systems

Benefits

  • Employees (and their families) are covered by medical, dental, vision, and basic life insurance
  • Employees are able to enroll in our company’s 401k plan, purchase shares from our employee stock ownership program and be eligible to receive annual bonuses
  • Employees will also receive unlimited flexible time off and ten paid holidays throughout the calendar year
  • Eligibility for ten weeks of paid parental leave will also be available upon hire date

Responsibilities

  • This role will focus on designing POC’s & prototypes, establishing architectural guardrails and integration patterns, and ensuring that solutions are feasible, secure, and extensible beyond the proof-of-concept (PoC) phase
  • Design the end-to-end architecture for Agentic AI use cases, ensuring alignment with enterprise goals and platform capabilities as defined by the CREATe process
  • Develop the agent operating model, including decision-making frameworks, interaction protocols, and lifecycle management
  • Define and implement architectural patterns that enable scalability, security, and extensibility for AI-driven solutions
  • Collaborate with engineering teams to ensure the architecture is actionable and meets performance, reliability, and compliance requirements
  • Define architectural guardrails to ensure consistency, security, and adherence to platform standards
  • Develop integration patterns for seamless interaction between Agentic AI solutions, enterprise systems, and external services
  • Ensure all designs incorporate best practices for security, data privacy, and governance
  • Proactively identify and mitigate architectural risks, ensuring solutions are robust and resilient
  • Evaluate the feasibility of proposed solutions, ensuring they are technically achievable within project constraints
  • Design architectures that are secure by design, addressing data protection, identity management, and compliance requirements
  • Ensure solutions are extensible beyond the proof-of-concept phase, enabling future enhancements and scaling for broader use cases
  • Conduct technical reviews and validations to ensure the architecture aligns with business objectives and technical standards
  • Partner with product managers, data scientists, engineers, and business stakeholders to align on requirements and solution designs
  • Act as a trusted advisor to stakeholders, providing guidance on architectural decisions and trade-offs
  • Facilitate workshops and design sessions to gather requirements, validate designs, and drive consensus
  • Provide technical leadership and mentorship to engineering teams during implementation

Full Description

About the position

Are you ready to make an impact?

West Monroe is seeking a highly skilled Solution Architect to lead the end-to-end design and development of Agentic use cases & prototypes on Google Cloud Platform (GCP).

This role will focus on designing POC’s & prototypes, establishing architectural guardrails and integration patterns, and ensuring that solutions are feasible, secure, and extensible beyond the proof-of-concept (PoC) phase. Requirement to be in New York City in a hybrid capacity.

Responsibilities

• Design the end-to-end architecture for Agentic AI use cases, ensuring alignment with enterprise goals and platform capabilities as defined by the CREATe process.

• Develop the agent operating model, including decision-making frameworks, interaction protocols, and lifecycle management.

• Define and implement architectural patterns that enable scalability, security, and extensibility for AI-driven solutions.

• Collaborate with engineering teams to ensure the architecture is actionable and meets performance, reliability, and compliance requirements.

• Define architectural guardrails to ensure consistency, security, and adherence to platform standards.

• Develop integration patterns for seamless interaction between Agentic AI solutions, enterprise systems, and external services.

• Ensure all designs incorporate best practices for security, data privacy, and governance.

• Proactively identify and mitigate architectural risks, ensuring solutions are robust and resilient.

• Evaluate the feasibility of proposed solutions, ensuring they are technically achievable within project constraints.

• Design architectures that are secure by design, addressing data protection, identity management, and compliance requirements.

• Ensure solutions are extensible beyond the proof-of-concept phase, enabling future enhancements and scaling for broader use cases.

• Conduct technical reviews and validations to ensure the architecture aligns with business objectives and technical standards.

• Partner with product managers, data scientists, engineers, and business stakeholders to align on requirements and solution designs.

• Act as a trusted advisor to stakeholders, providing guidance on architectural decisions and trade-offs.

• Facilitate workshops and design sessions to gather requirements, validate designs, and drive consensus.

• Provide technical leadership and mentorship to engineering teams during implementation.

Requirements

• Google Cloud Platform (GCP): Strong experience with GCP services, including Vertex AI, BigQuery, Cloud Functions, Kubernetes Engine, and Pub/Sub.

• AI/ML Architecture: Deep understanding of AI/ML systems, including agent-based models, reinforcement learning, and adaptive decision-making.

• Agentic Patterns & Frameworks: Hands-on experience with common agentic design patterns such as RAG, orchestrator–worker, planner–executor, and collaborative multi-agent architectures.

• Agent Communication & Protocols: Proficient in MCP (Model Context Protocol) and A2A (agent-to-agent) standards for interoperable, distributed agent systems.

• Solution Architecture: Proven experience in designing scalable, secure, and extensible solutions for enterprise environments.

• Integration Patterns: Expertise in API design, microservices, and event-driven architectures.

• Security & Compliance: Knowledge of cloud security best practices, data privacy regulations, and governance frameworks.

• Programming: Strong proficiency in Python; working knowledge of Java and Go for agent services, tooling, and orchestration.

• Strong ability to create high-quality architectural diagrams, technical specifications, and documentation.

• Experience in translating business requirements into technical solutions and ensuring alignment with enterprise standards.

• Familiarity with Agile methodologies and iterative solution delivery.

• Excellent communication and stakeholder management skills, with the ability to explain complex technical concepts to non-technical audiences.

• Experience working with cross-functional teams, including product managers, engineers, and business leaders.

• Strong problem-solving skills and the ability to navigate ambiguity and complexity.

Nice-to-haves

• Google Cloud certifications (e.g., Professional Cloud Architect, Professional Machine Learning Engineer).

• Experience designing and implementing agent-based systems in a production environment.

• Familiarity with MLOps practices and tools for managing the AI/ML lifecycle.

• Knowledge of ethical AI principles and frameworks.

• Experience in scaling proof-of-concept solutions to production-grade systems.

Benefits

• Employees (and their families) are covered by medical, dental, vision, and basic life insurance.

• Employees are able to enroll in our company’s 401k plan, purchase shares from our employee stock ownership program and be eligible to receive annual bonuses.

• Employees will also receive unlimited flexible time off and ten paid holidays throughout the calendar year.

• Eligibility for ten weeks of paid parental leave will also be available upon hire date.

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