Posted 02 June, 2026
Agentic AI Engineer
BayOne
Pleasanton,India
Full Time
Reference: 365_553037_26-01837
Agentic AI Engineer
BayOne Solutions, AI Strategy and Innovation Office | India (Remote)
About the Role
We are hiring an Agentic AI Engineer to build and ship production AI systems as part of BayOne's AI Strategy andInnovation Office. The role sits within a collaborative, distributed engineering team and contributes to both internal projectsand solutions developed for the practice's client portfolio. Our portfolio extends across many industries and business areas,and the work shifts across technical areas from one engagement to the next. The role requires adaptability, breadth ofthinking, and the discipline to bring rigorous engineering to every deliverable.
The Agentic AI Engineer is personally accountable for the quality and reliability of every deliverable produced, on bothinternal and client engagements. The work spans agent-based systems, web applications, data engineering, andinfrastructure, with agentic pair programming as the primary working mode. Engineering discipline, sound technicaljudgment, and adherence to the team's quality standards are expected on every piece of work.
The ideal candidate is currently working with agentic AI systems in a hands-on capacity and has a track record of shippingproduction systems. Professional experience extends beyond generative AI alone, with a broader engineering foundationthat demonstrates range across problem types. The role calls for an engineer who delivers consistently, owns what theyship, and brings the same rigor to unfamiliar problems as to familiar ones.
Key Responsibilities
Agentic AI Development (45%)
Build AI systems for internal and client engagements, from initial POC through production delivery.
Design and implement agent-based solutions for complex, multi-step problems across the practice's diverseengagement portfolio.
Build POCs and demos that demonstrate technical feasibility and value to stakeholders.
Evaluate and select the right approach for each problem, including knowing when an agent-based approach isappropriate and when a simpler method fits.
Participate in system design within the team, contributing architectural thinking and implementation expertise.
Own the full lifecycle of systems built: design, implementation, evaluation, and reliability.
Engineering and Development (25%)
Build and maintain web applications, APIs, and backend services for internal and client engagements.
Design and work with database schemas, write and optimize queries, and manage data across relational and vectordatabase systems.
Build data pipelines and integrations across the practice's data platforms.
Contribute to infrastructure work, including containerized deployments and cloud configuration.
Move between technical areas with engineering discipline, applying the same rigor regardless of the specifictechnology or context.
Deliver work that meets the team's standards across both internal initiatives and solutions developed for the practice'sclient portfolio.
Quality and Delivery Excellence (20%)
Write and maintain tests (unit, integration, end-to-end) as part of every deliverable.
Participate in code reviews with substantive technical feedback, both giving and receiving.
Maintain documentation for systems built, including architecture decisions, setup instructions, and integration points.
Apply evaluation discipline to agent systems, including structured evaluation harnesses and observability for deployedsystems.
Meet delivery commitments on time and communicate accurately on progress and blockers.
Uphold the team's code quality standards, testing practices, and documentation requirements across all work.
Growth and Collaboration (10%)
Stay current with developments in the agentic AI landscape, language-model orchestration, and the broader AIengineering field.
Learn new tools, frameworks, and patterns as the practice adopts them, working from reference implementations andteam guidance.
Actively expand technical skills and depth across the practice's engineering domains, pursuing breadth as theengagement portfolio evolves.
Contribute to team knowledge by sharing findings from new tools, techniques, and engagement experiences.
Incorporate feedback from code reviews, system evaluations, and team retrospectives into ongoing work.
Collaborate effectively within the distributed team, including responsive communication and proactive escalation ofblockers.
Required Qualifications
Engineering Experience
Professional engineering experience that extends beyond generative AI, demonstrating a broader technicalfoundation.
Currently or recently working with agentic AI systems in a hands-on capacity.
Experience building POCs, demos, or production systems using agentic methods.
Technical Breadth
Demonstrated range across engineering disciplines, comfortable moving between generative AI development, webdevelopment, database work, and infrastructure as the practice's engagements shift.
Technical Requirements
Python as primary language.
Microsoft Azure required as the primary cloud platform.
Hands-on experience building with Azure AI Foundry.
Claude Code experience and expertise required, including hands-on development of skills and plugins on the platform.This is non-negotiable for the role.
LangGraph experience required. Demonstrated ability to design state graphs, conditional edges, and multi-agentcompositions.
Model Context Protocol experience required. Comfortable designing tool calls and building protocol wrappers.
Agentic pair programming with generative AI as the primary working mode. Prior experience is required.
Pydantic for data validation and structured outputs across agent systems and APIs.
SQL proficiency and PostgreSQL experience.
Vector database experience (pgvector, Azure AI Search, or similar).
Familiarity with modern data platforms such as Snowflake and Databricks.
Multi-step agent systems with proper evaluation and validation.
Strong fluency across modern frontier language models such as the GPT, Claude, and Gemini model families. Modelselection is driven by the requirements of each task and the practical considerations of cost.
The discipline to choose mature, proven frameworks for AI engineering work. Technical decisions are grounded inclear engineering justification and supported by data.
Docker and containerization for development and deployment workflows.
FastAPI or equivalent web frameworks for building APIs and backend services.
Working knowledge of GitHub workflows, code review discipline, and infrastructure-as-code patterns.
Working Style
The candidate's professional identity centers on engineering practice. The role centers on building and deliveringsystems that meet production standards, and every deliverable is expected to reflect engineering discipline.
Adaptable and comfortable with ambiguity, able to take on unfamiliar work and deliver with the same discipline asfamiliar work.
Capacity to step into new problem shapes and reason from first principles.
Personal accountability for the quality and reliability of all delivered work.
Excellent communication skills, both written and verbal, with clear and accurate communication on project status,blockers, and progress.
Strong risk discipline, demonstrated by early recognition of trouble signals and appropriate escalation. Defaults toproven, battle-tested infrastructure for production work.
Operates within the team's established technical direction. Architectural decisions and technology choices align withthat direction.
Considers AI-specific constraints during design and delivery, including ethical, legal, and privacy concerns, andensuring best practices of responsible AI engineering are preserved.
Education
A Bachelor's degree in any branch of engineering or related fields is strongly preferred as the educational baseline for therole. Equivalent demonstrated experience will be considered.
Preferred Qualifications
Although Microsoft Azure is the primary platform, Google Cloud Platform experience is also valuable and applicable tothe practice's work.
Familiarity with Azure Container Apps, Azure Kubernetes Services, or similar container orchestration platforms.
Familiarity with Apache Software Foundation tools such as Apache Airflow, Apache Kafka, and Apache Flink.
Experience with LangChain, PyTorch, or other AI and machine learning frameworks.
CrewAI or other multi-agent frameworks.
LlamaIndex for RAG and data ingestion workflows.
Celery and Redis for background task processing and caching.
Familiarity with A2A (Agent-to-Agent) protocol for inter-agent communication.
Experience with modern natural language processing tools, including embedding models and entity recognition.
Familiarity with vision-language model integration for multi-modal AI use cases.
Experience working in regulated markets, including the compliance and risk-management disciplines suchenvironments require.
Playwright for end-to-end testing automation.
Familiarity with hybrid architectures that integrate deterministic and generative AI techniques.
Application Process
To apply, share your resume. For expedited consideration, please also include a brief note describing a recent AI systemyou personally built and shipped to production. Include the technical context: the framework choices, the model or models,the scale, what you owned, and what made the work technically demanding.
Equal Opportunity Employer
: BayOne Solutions is an Equal Employment Opportunity employer. We consider all qualifiedcandidates without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, disability, orveteran status.
About BayOne Solutions
BayOne Solutions is a minority-owned Technology and Talent Solutions Partner that has appeared on the Inc. 5000 list fourtimes and the San Francisco Business Times Fast 100 list five times. We are committed to diversity, innovation, and buildinghuman-centric technology solutions.
BayOne Solutions, AI Strategy and Innovation Office | India (Remote)
About the Role
We are hiring an Agentic AI Engineer to build and ship production AI systems as part of BayOne's AI Strategy andInnovation Office. The role sits within a collaborative, distributed engineering team and contributes to both internal projectsand solutions developed for the practice's client portfolio. Our portfolio extends across many industries and business areas,and the work shifts across technical areas from one engagement to the next. The role requires adaptability, breadth ofthinking, and the discipline to bring rigorous engineering to every deliverable.
The Agentic AI Engineer is personally accountable for the quality and reliability of every deliverable produced, on bothinternal and client engagements. The work spans agent-based systems, web applications, data engineering, andinfrastructure, with agentic pair programming as the primary working mode. Engineering discipline, sound technicaljudgment, and adherence to the team's quality standards are expected on every piece of work.
The ideal candidate is currently working with agentic AI systems in a hands-on capacity and has a track record of shippingproduction systems. Professional experience extends beyond generative AI alone, with a broader engineering foundationthat demonstrates range across problem types. The role calls for an engineer who delivers consistently, owns what theyship, and brings the same rigor to unfamiliar problems as to familiar ones.
Key Responsibilities
Agentic AI Development (45%)
Build AI systems for internal and client engagements, from initial POC through production delivery.
Design and implement agent-based solutions for complex, multi-step problems across the practice's diverseengagement portfolio.
Build POCs and demos that demonstrate technical feasibility and value to stakeholders.
Evaluate and select the right approach for each problem, including knowing when an agent-based approach isappropriate and when a simpler method fits.
Participate in system design within the team, contributing architectural thinking and implementation expertise.
Own the full lifecycle of systems built: design, implementation, evaluation, and reliability.
Engineering and Development (25%)
Build and maintain web applications, APIs, and backend services for internal and client engagements.
Design and work with database schemas, write and optimize queries, and manage data across relational and vectordatabase systems.
Build data pipelines and integrations across the practice's data platforms.
Contribute to infrastructure work, including containerized deployments and cloud configuration.
Move between technical areas with engineering discipline, applying the same rigor regardless of the specifictechnology or context.
Deliver work that meets the team's standards across both internal initiatives and solutions developed for the practice'sclient portfolio.
Quality and Delivery Excellence (20%)
Write and maintain tests (unit, integration, end-to-end) as part of every deliverable.
Participate in code reviews with substantive technical feedback, both giving and receiving.
Maintain documentation for systems built, including architecture decisions, setup instructions, and integration points.
Apply evaluation discipline to agent systems, including structured evaluation harnesses and observability for deployedsystems.
Meet delivery commitments on time and communicate accurately on progress and blockers.
Uphold the team's code quality standards, testing practices, and documentation requirements across all work.
Growth and Collaboration (10%)
Stay current with developments in the agentic AI landscape, language-model orchestration, and the broader AIengineering field.
Learn new tools, frameworks, and patterns as the practice adopts them, working from reference implementations andteam guidance.
Actively expand technical skills and depth across the practice's engineering domains, pursuing breadth as theengagement portfolio evolves.
Contribute to team knowledge by sharing findings from new tools, techniques, and engagement experiences.
Incorporate feedback from code reviews, system evaluations, and team retrospectives into ongoing work.
Collaborate effectively within the distributed team, including responsive communication and proactive escalation ofblockers.
Required Qualifications
Engineering Experience
Professional engineering experience that extends beyond generative AI, demonstrating a broader technicalfoundation.
Currently or recently working with agentic AI systems in a hands-on capacity.
Experience building POCs, demos, or production systems using agentic methods.
Technical Breadth
Demonstrated range across engineering disciplines, comfortable moving between generative AI development, webdevelopment, database work, and infrastructure as the practice's engagements shift.
Technical Requirements
Python as primary language.
Microsoft Azure required as the primary cloud platform.
Hands-on experience building with Azure AI Foundry.
Claude Code experience and expertise required, including hands-on development of skills and plugins on the platform.This is non-negotiable for the role.
LangGraph experience required. Demonstrated ability to design state graphs, conditional edges, and multi-agentcompositions.
Model Context Protocol experience required. Comfortable designing tool calls and building protocol wrappers.
Agentic pair programming with generative AI as the primary working mode. Prior experience is required.
Pydantic for data validation and structured outputs across agent systems and APIs.
SQL proficiency and PostgreSQL experience.
Vector database experience (pgvector, Azure AI Search, or similar).
Familiarity with modern data platforms such as Snowflake and Databricks.
Multi-step agent systems with proper evaluation and validation.
Strong fluency across modern frontier language models such as the GPT, Claude, and Gemini model families. Modelselection is driven by the requirements of each task and the practical considerations of cost.
The discipline to choose mature, proven frameworks for AI engineering work. Technical decisions are grounded inclear engineering justification and supported by data.
Docker and containerization for development and deployment workflows.
FastAPI or equivalent web frameworks for building APIs and backend services.
Working knowledge of GitHub workflows, code review discipline, and infrastructure-as-code patterns.
Working Style
The candidate's professional identity centers on engineering practice. The role centers on building and deliveringsystems that meet production standards, and every deliverable is expected to reflect engineering discipline.
Adaptable and comfortable with ambiguity, able to take on unfamiliar work and deliver with the same discipline asfamiliar work.
Capacity to step into new problem shapes and reason from first principles.
Personal accountability for the quality and reliability of all delivered work.
Excellent communication skills, both written and verbal, with clear and accurate communication on project status,blockers, and progress.
Strong risk discipline, demonstrated by early recognition of trouble signals and appropriate escalation. Defaults toproven, battle-tested infrastructure for production work.
Operates within the team's established technical direction. Architectural decisions and technology choices align withthat direction.
Considers AI-specific constraints during design and delivery, including ethical, legal, and privacy concerns, andensuring best practices of responsible AI engineering are preserved.
Education
A Bachelor's degree in any branch of engineering or related fields is strongly preferred as the educational baseline for therole. Equivalent demonstrated experience will be considered.
Preferred Qualifications
Although Microsoft Azure is the primary platform, Google Cloud Platform experience is also valuable and applicable tothe practice's work.
Familiarity with Azure Container Apps, Azure Kubernetes Services, or similar container orchestration platforms.
Familiarity with Apache Software Foundation tools such as Apache Airflow, Apache Kafka, and Apache Flink.
Experience with LangChain, PyTorch, or other AI and machine learning frameworks.
CrewAI or other multi-agent frameworks.
LlamaIndex for RAG and data ingestion workflows.
Celery and Redis for background task processing and caching.
Familiarity with A2A (Agent-to-Agent) protocol for inter-agent communication.
Experience with modern natural language processing tools, including embedding models and entity recognition.
Familiarity with vision-language model integration for multi-modal AI use cases.
Experience working in regulated markets, including the compliance and risk-management disciplines suchenvironments require.
Playwright for end-to-end testing automation.
Familiarity with hybrid architectures that integrate deterministic and generative AI techniques.
Application Process
To apply, share your resume. For expedited consideration, please also include a brief note describing a recent AI systemyou personally built and shipped to production. Include the technical context: the framework choices, the model or models,the scale, what you owned, and what made the work technically demanding.
Equal Opportunity Employer
: BayOne Solutions is an Equal Employment Opportunity employer. We consider all qualifiedcandidates without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, disability, orveteran status.
About BayOne Solutions
BayOne Solutions is a minority-owned Technology and Talent Solutions Partner that has appeared on the Inc. 5000 list fourtimes and the San Francisco Business Times Fast 100 list five times. We are committed to diversity, innovation, and buildinghuman-centric technology solutions.