Agilent Technologies logo
Agilent Technologies

Premier Laboratory Partner for a Better World

Lead, AI Engineering & SDLC Automation

AI EngineerMachine Learning EngineerFull TimeRemoteLeadTeam 10,001+Since 1999H1B SponsorCompany SiteLinkedIn

Location

Spain

Posted

1 day ago

Salary

$168.2K - $315.3K / year

Seniority

Lead

No structured requirement data.

Job Description

Lead, AI Engineering & SDLC Automation

Agilent Technologies

Role Description We’re looking for a Lead, AI Engineering & SDLC Automation (Director) to define and lead PSD’s AI-enabled engineering automation strategy, roadmap, and delivery function. This role will lead a team responsible for delivering AI-assisted engineering capabilities, agentic workflow automation, and SDLC automation that meaningfully improve developer productivity and software delivery across the Productivity Solutions Division. You will own the selection, integration, governance, and adoption of AI-enabled engineering tools and automation within developer workflows, partnering across DevSecOps, Developer Experience, Security, QE, IT, and engineering teams to scale safe, reliable, and measurable AI-enabled software delivery practices. Your leadership will help PSD accelerate software delivery by embedding AI-powered automation into the core of engineering workflows. You will improve developer productivity, reduce manual toil, increase consistency across the SDLC, and help teams adopt AI-enabled practices safely, reliably, and at scale. What You’ll Do - Lead and develop the AI Engineering & Automation team responsible for AI-assisted SDLC automation, developer workflow integration, and engineering productivity tooling. - Define team priorities, resource needs, operating cadence, performance expectations, and execution plans. - Own the roadmap for AI-enabled engineering automation across PSD, from tool selection and integration to adoption, measurement, and continuous improvement. - Deliver AI-assisted engineering tools, agentic workflows, copilots, and workflow automation with measurable productivity uplift. - Integrate AI automation into CI/CD pipelines, developer paved roads, engineering workflows, and platform services. - Establish governance, safety guardrails, evaluation criteria, usage standards, and secure integration patterns for responsible AI adoption in engineering workflows. - Partner with DevSecOps, Developer Experience, Security, QE, IT, and engineering teams to embed automation into software delivery practices. - Prioritize AI automation investments based on productivity uplift, developer experience, quality, reliability, security, cost, and platform strategy. - Drive cross-organization adoption through enablement, documentation, training, feedback loops, and measurable adoption plans. - Resolve conflicting priorities across engineering productivity, security, reliability, cost, and responsible AI adoption. - Define and track success measures for AI-enabled engineering automation, including productivity, adoption, toil reduction, quality, reliability, and developer experience. Qualifications - Typically 5+ years of experience formally or informally leading people, projects, and/or programs. - Bachelor’s or Master’s degree or equivalent experience. - Strong background in AI-enabled engineering, platform engineering, DevOps, developer productivity, workflow automation, or SDLC automation. - Experience leading teams, programs, or cross-functional initiatives in complex software engineering environments. - Experience translating organizational strategy into roadmaps, execution plans, governance models, and measurable outcomes. - Experience with AI agents, copilots, AI-assisted software engineering tools, ML-driven automation, or agentic workflow automation. - Strong understanding of CI/CD, SDLC tooling, developer workflows, engineering productivity tooling, and secure integration patterns. - Understanding of responsible AI adoption, AI governance, usage controls, safety guardrails, and secure deployment patterns. - Ability to influence senior stakeholders across engineering, product, security, QE, IT, and platform organizations. - Experience driving adoption, enablement, and behavior change across distributed engineering teams. - Ability to balance speed, productivity, quality, reliability, security, cost, and responsible AI use. - Strong analytical and communication skills, with the ability to translate productivity and adoption insights into practical roadmap decisions. Additional Details - This job has a full time weekly schedule. - It includes the option to work remotely. - Applications for this job will be accepted until at least July 1, 2026 or until the job is no longer posted. - The full-time equivalent pay range for this position is $168,160.00 - $315,300.00/yr plus eligibility for bonus, stock and benefits.

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