Worley

Lead AI Engineer

Worley$120K — $160K *
Enterprise Technology
Less than 5 years of experience
Job Overview by Ladders

Qualifications

  • Bachelor's degree in Engineering, Data Science, Computer Science, or related discipline.
  • 4+ years of experience delivering AI/ML or GenAI solutions in production or near-production environments.
  • Proven experience designing and implementing RAG architectures and agentic workflows.
  • Strong proficiency in Python and modern AI frameworks (e.g., PyTorch, LangChain).
  • Experience with cloud platforms and MLOps practices (CI/CD, Docker, MLflow).
  • Solid understanding of system architecture patterns (APIs, microservices, event-driven systems).
  • Strong communication skills for collaboration across technical and business teams.

Responsibilities

  • Design and implement AI solutions leveraging advanced architectures and workflows.
  • Lead rapid MVP-based delivery approaches and iterate based on user feedback.
  • Apply AI to complex engineering datasets for improved decision-making and automation.
  • Partner with teams to identify and prioritize high-value AI opportunities and translate problems into designs.
  • Apply MLOps practices and define evaluation frameworks for performance monitoring and compliance.
  • Collaborate with cross-functional teams and mentor members on AI solutions and architectures.
  • Support broader digital transformation initiatives within engineering workflows.

Benefits

  • Opportunity to influence digital transformation in a leading engineering firm.
  • Work with cutting-edge AI technologies and modern engineering practices.
  • Collaborative and multidisciplinary team environment.
  • Opportunities for mentorship and professional development in AI and engineering.
  • Involvement in high-impact projects that enhance engineering workflows.
Full Job Description
Role Summary:

Our Lead AI Engineer role plays a key role in enabling Worley's digital transformation by designing, prototyping, and scaling AI-powered solutions that enhance engineering workflows, automate knowledge-driven processes, and unlock measurable business value across the project delivery lifecycle.

This role bridges deep engineering domain expertise and advanced AI/ML capabilities, translating complex engineering data (e.g., lifecycle data, technical documentation, and standards) into intelligent, production-ready systems.

Key Responsibilities:

1) AI Solution Design & Architecture

- Design and implement AI solutions leveraging:

o Retrieval-Augmented Generation (RAG)

o Agentic workflows (tool use, orchestration, planning)

o Structured outputs (schemas, JSON, function calling)

- Define reusable architecture patterns tailored to engineering use cases (e.g., PEP, MDR, technical documentation)

- Recommend model strategies aligned to cost, performance, and security constraints

- Ensure solutions remain model-agnostic and adaptable to evolving enterprise platforms

- Partner with Enterprise Architecture to align with standards, integration patterns, and security requirements

2) Rapid MVP Development  Scaling  Delivery

- Lead a rapid MVP-based delivery approach:

o Develop solutions in short cycles (weeks, not months)

o Validate with users using measurable success criteria

o Iterate based on feedback

- Transition validated solutions from Incubator environments to scalable enterprise architectures

- Optimize solutions across performance, latency, cost, and reliability

- Support structured handoff to production teams with clear architecture documentation and scaling guidance

3) Engineering Workflow Transformation

- Apply AI to complex engineering datasets (e.g., equipment lifecycle data, technical documentation, simulation-informed datasets) to improve decision-making and automation

- Develop AI-powered solutions that improve engineering workflows using Worley data, including:

o Standards, specifications, and knowledge bases

o Project documentation (e.g., PEPs, MDRs)

- Build and deploy RAG-based applications to generate, validate, and augment engineering outputs

- Design structured outputs and human-in-the-loop workflows for high-confidence engineering use cases

- Contribute to reusable datasets and knowledge systems that support scalable AI adoption

- Translate engineering lifecycle challenges into practical, deployable AI-enabled solutions

4) Product, Value, and Business Enablement

- Partner with engineering and business teams to identify and prioritize high-value AI opportunities

- Translate business problems into AI system designs, including:

o User interaction patterns

o Workflow integration approaches

o Measurable value frameworks (time savings, quality improvements, productivity gains)

- Support adoption of AI solutions by embedding them into engineering workflows

- Contribute to broader digital transformation initiatives

5) MLOps, Evaluation, and Responsible AI

- Apply MLOps / LLMOps practices, including:

o CI/CD pipelines, containerization, and deployment patterns

o Monitoring, observability, and performance tracking

- Define and apply evaluation frameworks:

o Grounding and hallucination risk

o Accuracy, usability, and performance metrics

o Model performance monitoring and drift awareness

- Ensure transparency, auditability, and traceability of AI outputs

- Align solutions with enterprise security, data governance, and Responsible AI principles

6) Stakeholder Collaboration & Mentorship

- Collaborate with cross-functional teams (Engineering, Data, Architecture, Security)

- Present insights, prototypes, and outcomes to stakeholders and leadership

- Mentor team members on AI solution design, prompting techniques, and architecture approaches

- Support adoption and scaling of AI capabilities across engineering teams

Skills & Experience Required:

- Bachelor's degree in Engineering, Data Science, Computer Science, or related discipline

- 4+ years of experience delivering AI/ML or GenAI solutions in production or near-production environments

- Proven experience designing and implementing:

o RAG architectures

o Agentic workflows and AI copilots

- Strong proficiency in Python and modern AI frameworks (e.g., PyTorch, LangChain or equivalent)

- Experience with cloud platforms and MLOps practices (CI/CD, Docker, MLflow or equivalent)

- Solid understanding of system architecture patterns (APIs, microservices, event-driven systems)

- Proven ability to translate complex engineering or business problems into scalable AI solutions with measurable impact

- Demonstrated ability to deliver AI solutions that drive measurable improvements in engineering productivity, quality, or efficiency

- Strong communication skills with ability to work across technical and business teams

Skills & Experience Preferred:

- Masters degree in AI-related discipline

- Experience applying AI within engineering, energy, or industrial environments

- Knowledge of engineering workflows and project delivery processes (e.g., PEPs, MDRs)

- Experience integrating AI into enterprise platforms (e.g., SharePoint, APIs, data platforms)

- Exposure to AI evaluation frameworks, LLMOps, or governance practices

- Experience with computer vision or advanced analytics

About Worley

Worley is a global engineering and construction company that provides services to the energy, chemicals, and resources sectors. The company was founded in 2019 through the merger of WorleyParsons and Jacobs' Energy, Chemicals and Resources division. Worley has over 48,000 employees in 49 countries and provides a range of services including consulting, engineering, procurement, construction, and project management. The company is committed to sustainability and has set ambitious targets to reduce its carbon footprint and increase the use of renewable energy in its operations.
Learn more about Worley
Size
47,700 employees
Industry
NASDAQ

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