Agentic AI and Data Engineer
Company: Booz Allen Hamilton
Location: Honolulu
Posted on: April 1, 2026
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Job Description:
Agentic AI and Data Engineer The Opportunity: As an experienced
engineer, you know how to design, develop, and deliver
production-grade agentic AI systems that demonstrate the practical
value of generative AI, large language models ( LLMs ) , and
autonomous workflows. This role combines deep technical expertise
with strong product skills to design AI applications that leverage
prompting, retrieval-augmented generation ( RAG ) , agentic
orchestration, evaluation pipelines, and human-in-the-loop systems
to deliver measurable impact. You will architect modular, reusable
AI application patterns, integrate multiple model providers such as
cloud-hosted, local, and hybrid , and apply modern GenAI stack
capabilities, including structured prompting, tool use, workflow
orchestration, and multi-modal reasoning. You will design solutions
deployable across various contexts, from cloud-hosted platforms to
portable, self-contained builds, optimizing for latency, cost
efficiency, observability, and safety. You will rapidly prototype
and iterate using AI-assisted development tools, validating
hypotheses through eval-driven development and continuous
experimentation. In this role, you’ll define the direction of
mission-critical agentic systems by selecting and combining
prompting strategies, RAG architectures, agentic workflows, and
fine-tuned or foundation models as appropriate. You’ll be part of a
large community of AI and ML engineers across the company,
collaborating with data engineers, data scientists, solutions
architects, and product owners to deliver world-class solutions.
What You’ll Do: Design adaptable agentic AI architectures that
support multiple model providers, tool ecosystems, modalities, and
deployment modes. Build modular and reusable components for
prompting, retrieval, orchestration, tool execution, memory
management, and evaluation to enable rapid development of new AI
capabilities. Integrate LLMs, embeddings, RAG pipelines, structured
outputs, and long-context or memory mechanisms into
production-ready systems. Apply advanced prompting techniques such
as few-shot, chain-of-thought, tool-calling, and function-calling,
orchestration frameworks such as LangChain or equivalent , and
agentic architectures such as MCP, A2A, or similar patterns, to
enable goal-directed autonomy with guardrails, observability, and
human oversight, including planning, tool use, delegation, and
recovery from failure. Design and implement evaluation frameworks,
both offline and online, to measure correctness, robustness,
safety, and business impact of AI systems. Optimize models and
workflows for cost, latency, reliability, and scalability, using
systematic benchmarking and experimentation. Develop data pipelines
for ingestion, cleaning, chunking, embedding, indexing, and
continuous refresh of structured and unstructured data for RAG and
memory systems. Combine text, audio, vision, and other modalities
in unified processing workflows, including document understanding,
transcription, summarization, and cross-modal reasoning. Leverage
vector databases, hybrid search, reranking, and retrieval
optimization techniques to enhance grounding and reduce
hallucination in RAG systems. Incorporate guardrails, safety
filters, access controls, and monitoring mechanisms to ensure
responsible and secure deployment of agentic AI systems. Deploy AI
services securely and at scale on AWS or equivalent cloud
platforms. Use containerizing, including in Docker or Kubernetes,
or serverless approaches for flexible deployment. Apply CI / CD and
eval-driven development best practices for AI systems, including
automated testing of prompts and workflows, versioning of prompts
and agents, and safe rollout of model updates. Use asynchronous
programming and event-driven patterns to support scalable,
long-running, or multi-agent workflows. Leverage modern build and
packaging workflows to deliver optimized, portable application
artifacts. Use AI assistance tools to accelerate development,
debugging, and system design while maintaining engineering rigor
and code quality. Collaborate with clients to identify high-value
AI opportunities and define solution requirements. Present AI
capabilities and technical solutions to both technical and
non-technical stakeholders. Lead workshops and prototyping sessions
to accelerate adoption. Provide guidance on responsible AI
practices, ethics, and compliance. Join us. The world can’t wait.
You Have: 2 years of experience with sof tware engineering 2 years
of experience in AI or ML-focused roles in a professional work
environment Experience with an object-oriented programming language
such as Python, and applying it to AI / ML solution development
Experience designing and implementing production-grade generative
or agentic AI applications Experience with AI orchestration
frameworks such as LangChain, agent workflows, tool integration,
and multi-provider model integration Experience with RAG
architectures, evaluation met hodologies, experimentation
workflows, and asynchronous or event-driven programming patterns
Knowledge of data processing techniques for AI, including text,
audio, and multi-modal Ability to obtain a Secret clearance
Bachelor’s degree in a CS or Engineering field Nice If You Have:
Experience with agent frameworks, interoperability standards, and
multi-agent patterns such as MCP, A2A, LangGraph, or equivalent
Experience with model fine-tuning, prompt tuning, domain
adaptation, or reinforcement learning from human or AI feedback
Experience designing evaluation suites or safety testing frameworks
for AI systems, and integrating AI systems with external tools,
APIs, or enterprise systems via tool-calling or computer-use
patterns Experience delivering AI solutions in client-facing e nga
gements Experience with modern front-end libraries and frameworks
for component-based UI development, including React, and with
workflows such as build pipelines, automated testing, and code
quality tooling Experience with in-browser or edge AI execution and
performance optimization techniques, as well as modern build and
packaging approaches for portable or offline-capable applications
Experience with developer productivity tools such as Cursor and
Windsurf Secret clearance Master’s degree in CS, AI, or a related
field AWS Machine Learning, Data Engineer, or Solutions Architect
Certification Clearance: Applicants selected will be subject to a
security investigation and may need to meet eligibility
requirements for access to classified information . Compensation At
Booz Allen, we celebrate your contributions, provide you with
opportunities and choices, and support your total well-being. Our
offerings include health, life, disability, financial, and
retirement benefits, as well as paid leave, professional
development, tuition assistance, work-life programs, and dependent
care. Our recognition awards program acknowledges employees for
exceptional performance and superior demonstration of our values.
Full-time and part-time employees working at least 20 hours a week
on a regular basis are eligible to participate in Booz Allen’s
benefit programs. Individuals that do not meet the threshold are
only eligible for select offerings, not inclusive of health
benefits. We encourage you to learn more about our total benefits
by visiting the Resource page on our Careers site and reviewing Our
Employee Benefits page. Salary at Booz Allen is determined by
various factors, including but not limited to location, the
individual’s particular combination of education, knowledge,
skills, competencies, and experience, as well as contract-specific
affordability and organizational requirements. The projected
compensation range for this position is $99,000.00 to $225,000.00
(annualized USD). The estimate displayed represents the typical
salary range for this position and is just one component of Booz
Allen’s total compensation package for employees. This posting will
close within 90 days from the Posting Date. Identity Statement As
part of the hiring process, we will ask you to complete an identity
verification process that leverages advanced biometrics and
artificial intelligence to ensure authenticity and protect against
identity fraud. You are expected to be on camera during interviews
and assessments. We reserve the right to take your picture to
verify your identity and prevent fraud. Candidate AI Usage Policy
AI is a part of our daily work at Booz Allen, and we are committed
to the responsible and ethical use of AI tools. However, we want to
ensure a fair candidate process based on your own skills and
knowledge. As part of this commitment, the use of artificial
intelligence (AI) or other tools to assist with responses during
interviews (whether in-person or virtual) is prohibited unless
permission is explicitly provided . Work Model Our people-first
culture prioritizes the benefits of collaboration, whether it
occurs in person or virtually. To support engagement and effective
communication, employees working virtually are generally expected
to have their cameras on during meetings. Remote : If this position
is listed as remote, there may still be occasions when you are
required to work in person at a Booz Allen or customer facility.
Hybrid : If this position is listed as hybrid, you will be expected
to work from a Booz Allen facility frequently, in alignment with
leadership expectations and the needs of the role. You may also be
required to work from or visit a customer facility. Onsite : If
this position is listed as onsite, work will primarily be performed
at a Booz Allen office or customer facility, where employees will
collaborate directly with colleagues and customers as required by
the role. Commitment to Non-Discrimination All qualified applicants
will receive consideration for employment without regard to
disability, status as a protected veteran or any other status
protected by applicable federal, state, local, or international
law.
Keywords: Booz Allen Hamilton, Honolulu , Agentic AI and Data Engineer, IT / Software / Systems , Honolulu, Hawaii