Carlyle Group

Applied AI Engineer

Carlyle Group$150K — $170K *
Enterprise Technology
5 - 7 years of experience
Job Overview by Ladders

Qualifications

  • Bachelor's degree in technical field required; preferred concentration in Computer Science, Engineering, or Data Science.
  • Minimum 5+ years of relevant professional experience required; extensive background in building production systems preferred.
  • Hands-on experience with full-stack, backend, infrastructure, or data-intensive systems essential.
  • Expertise in designing and shipping AI-enabled applications or workflow automation preferred.
  • Strong familiarity with modern programming languages, particularly Python and TypeScript.

Responsibilities

  • Translate stakeholder needs into clear AI system requirements.
  • Design and maintain AI workflows that are clean, maintainable, and observable.
  • Own data contracts and define system inputs for workflows.
  • Establish criteria for autonomous operation versus human intervention.
  • Integrate identity, audit trails, and trust boundaries in system design.
  • Implement CI/CD and testing practices for safe AI deployments.
  • Partner with cross-functional teams to productionize AI systems.

Benefits

  • Comprehensive benefits package including retirement benefits, health insurance, life insurance, and disability coverage.
  • Paid time off and paid holidays offered.
  • Family planning benefits and wellness programs available.
  • Eligibility for an annual discretionary incentive program based on performance.
Full Job Description
Basic information

Job Name:

Applied AI Engineer

Location:

Washington, DC

Line of Business:

Global Technology & Solutions

Job Function:

Investor Services

Date:

Tuesday, June 2, 2026

Position Summary

The Applied AI Engineer role is designed for a technically strong, hands-on engineer who thrives at the intersection of full-stack software engineering, AI workflow development, and production reliability.

In this role, the Engineer will help turn frontier AI capabilities into trusted production systems by building platform patterns, workflows, data contracts, evals, observability, permissions, and governance that let the firm deploy AI safely at scale.

In-Office Requirement: 4 days a week

Responsibilities

AI & Software Engineering
  • Translate ambiguous stakeholder needs into clear, testable AI system requirements.
  • Design, build, and maintain AI workflows as clean, maintainable, testable, and observable systems that are safe to change.
  • Own the data contracts, context boundaries, and system inputs your workflows depend on.
  • Define what can run autonomously, what requires human review, and when escalation is required.
  • Build identity, permissions, audit trails, and trust boundaries into system design.
  • Make pragmatic trade-offs across cost, latency, reliability, autonomy, and user experience within clear security and compliance guardrails.

Reliability & Operations
  • Build eval harnesses, regression suites, and release checks for non-deterministic behavior.
  • Develop CI/CD and testing practices that let the team ship AI changes safely and quickly.
  • Implement logging, tracing, and observability based on mapped failure modes, so issues are visible, explainable, and recoverable. Build error handling, fallback paths, and operational resilience across AI pipelines.

Stakeholder Management & Influence
  • Partner with DevOps, data engineering, security, and technology solutions teams to productionize AI systems.
  • Help stakeholders distinguish between automation, decision support, and human-accountable work.
  • Manage competing priorities across stakeholders with clarity and discipline.
  • Present technical findings, trade-offs, and risks clearly to executive, technical, and business audiences.
  • Help foster a data-driven, AI-literate culture across the firm.

Team Contribution & Leadership
  • Operate with a manager mindset: set standards, mentor contract engineers, and improve ways of working.
  • Contribute to AI engineering standards for evals, versioning, releases, and ownership.
  • Design reusable platform patterns so new AI use cases do not rebuild the same foundations.
  • Apply AI-assisted development tools effectively and raise the team's standard of use.


Qualifications

Education & Certificates

  • Bachelor's degree, required
  • Concentration in Computer Science, Engineering, Information Systems, Data Science, or a related technical field, preferred


Professional Experience

  • Minimum 5+ years of overall relevant experience, required
  • Hands-on software, platform, infrastructure, or data engineering experience building production systems, preferred
  • Experience with full-stack, backend, infrastructure, or data-intensive systems.
  • Experience designing and shipping AI-enabled applications, workflow automation, agentic systems, or model-integrated products (preferred).
  • Experience owning production systems, including testing, observability, deployment, and operational support.


Competencies & Attributes

  • Experience with modern languages and frameworks. Python and TypeScript are our primary languages, with React experience useful. We are polyglot-friendly: if you learn quickly and build deeply, the exact stack matters less.
  • Strong systems thinker who can turn ambiguous stakeholder needs into clear, testable technical requirements.
  • Production-minded engineer who values reliability, maintainability, observability, and safe change management.
  • Comfortable building with non-deterministic systems. LLM outputs vary by nature, so you know how to design, monitor, test, and iterate without relying only on deterministic testing.
  • Strong understanding of data contracts, context management, permissions, auditability, and system trust boundaries.
  • Clear communicator who can explain technical trade-offs, risks, and recommendations to executive, technical, and business audiences.
  • Genuine passion for AI and emerging technologies, paired with practical judgment about where they create real business and operational value.


Benefits/Compensation

The compensation range for this role is specific to Washington, DC and takes into account a wide range of factors including but not limited to the skill sets required/preferred; prior experience and training; licenses and/or certifications.

The anticipated base salary range for this role is $150,000 to $170,000.

In addition to the base salary, the hired professional will enjoy a comprehensive benefits package spanning retirement benefits, health insurance, life insurance and disability, paid time off, paid holidays, family planning benefits and various wellness programs. Additionally, the hired professional may also be eligible to participate in an annual discretionary incentive program, the award of which will be dependent on various factors, including, without limitation, individual and organizational performance.

Due to the high volume of candidates, please be advised that only candidates selected to interview will be contacted by Carlyle.

About Carlyle Group

The Carlyle Group is a global investment firm that specializes in private equity, credit, and real estate investments. The firm was founded in 1987 and is headquartered in Washington, D.C. Carlyle manages more than $230 billion in assets across 389 investment vehicles as of December 31, 2020. The firm's private equity investments span a wide range of industries, including aerospace and defense, consumer and retail, energy and power, healthcare, and technology, media and telecommunications. Carlyle has offices in 22 countries and employs more than 1,800 people worldwide.
Learn more about Carlyle Group
Size
1,850 employees
Market Cap
$10.6 billion
Industry
Net Income
$348.2 million
Founded
1987
5 Year Trend
+31%
Revenue
$2.9 billion
NASDAQ

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