STACK Infrastructure

STACK INFRASTRUCTURE (STACK) provides digital infrastructure to scale the world’s most innovative companies. We are an award-winning industry leader in building, owning, and operating highly efficient, cost-effective wholesale, colocation, and cloud data centers. Each of our national facilities meets or exceeds the highest industry standards in all operational categories of availability, security, connectivity, and physical resilience. STACK offers the scale and geographic reach that rapidly growing hyperscale and enterprise companies need. The world runs on data. Data runs on STACK.

Director, Solutions Engineering

Location

United States

Posted

43 days ago

Salary

$197.6K - $221.3K / year

Seniority

Lead

Job Description

Director, Solutions Engineering

STACK Infrastructure

Role Description STACK is seeking a Director, Solutions Engineering, to lead client technical engagements through lease execution. This role combines technical precision with strategic leadership to ensure all engagements result in exceptional design quality, project success, and client satisfaction. This role uniquely blends client-facing engagement with multidisciplinary technical facilitation. The Director of Solutions Engineering acts as a technical integrator and decision leader, ensuring that complex engineering provisions are aligned, documented, and actionable across teams and clients. You will oversee engineering engagement, coordinate multidisciplinary teams, and guide governance across the full project lifecycle—from initial concept through design and contracting. This position reports to the Vice President, Solutions Engineering. The Director of Solutions Engineering serves as both technical project manager and engineering integrator, ensuring that engineering decisions are well-informed, documented, and aligned with client and project objectives. This role leverages technical fluency across disciplines to guide subject matter experts (SMEs), maintain focus during complex technical reviews, and ensure decisions translate into actionable outcomes. - Lead Client-Facing Engineering Engagements and Presentations - Support All Facility Types - Translate Complex Needs into Solutions - Develop and Negotiate Technical Lease Provisions and SLAs - Manage Cross-Functional Technical Teams - Ensure Design and Contract Governance Project Facilitation and Technical Integration: - Lead and structure technical review meetings, framing objectives, decision criteria, and expected outcomes. - Facilitate SME presentations, calling on technical leads to provide rationale for engineering provisions while maintaining meeting scope and time control. - Translate technical language across disciplines and for non-technical stakeholders, ensuring full comprehension and traceability of decisions. - Synthesize technical input into clear project recommendations, capturing what was decided, why, and what it impacts (cost, schedule, compliance, reliability). - Identify cross-discipline integration risks early, particularly around power, cooling, and infrastructure interfaces. - Maintain neutrality in technical discussions, guiding consensus and linking engineering outcomes to client priorities and contractual requirements. - Document decisions and actions in real time; track follow-ups through the project delivery system. Success Indicators: - Engineering reviews consistently conclude with clear, documented decisions. - Cross-discipline conflicts are resolved proactively before design freeze. - Clients and internal stakeholders report improved technical clarity and decision velocity. - Project risk related to integration and coordination is measurably reduced. Qualifications - Minimum of 10 years of experience leading strategic technical delivery within data center or mission-critical environments. - Proven ability to collaborate with multidisciplinary engineering and design teams, aligning strategic goals with execution excellence. - Deep understanding of data center design, construction, and operations. - Strong understanding of engineering disciplines (Mechanical, Electrical, or Architectural). - Experience with liquid cooling, GPU clusters, and high-density infrastructure. - Demonstrated success in client-facing technical roles, including RFP/RFI responses, presentations, and lease/SLA negotiations. - Strong grasp of the data center lifecycle, from concept through commissioning and lease execution. - Bachelor’s degree in a relevant engineering or design discipline. - Proficiency with MS Office, AutoCAD, Bluebeam, and CFD tools (Cadence Design Systems or equivalent). - Exceptional communication, organization, and leadership skills with a focus on results. - Self-starter with strong attention to detail and ability to thrive in a dynamic environment. Requirements - Location: Remote - Travel: 15–30% - Must be eligible to work in the United States - Must pass comprehensive background and drug screening Benefits - Healthcare - Dental Care - Vision Insurance - Life Insurance - Paid Time Off - Paid Leave Programs Company Description STACK INFRASTRUCTURE (STACK) provides digital infrastructure to scale the world’s most innovative companies. We are an award-winning industry leader in building, owning, and operating highly efficient, cost-effective wholesale, colocation, and cloud data centers. Each of our national facilities meets or exceeds the highest industry standards in all operational categories of availability, security, connectivity, and physical resilience. STACK offers the scale and geographic reach that rapidly growing hyperscale and enterprise companies need. The world runs on data. Data runs on STACK.

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