Description
� SAIC is seeking a visionary� Senior Principal Big Data Engineer to support and expand our autonomous systems portfolio. This senior-level role requires a rare combination of strategic technology leadership, hands-on AI/ML delivery, enterprise-scale server infrastructure management. The successful candidate will contribute to the growth of the� while driving path-breaking ML/AI solutions and ensure the highest levels of server infrastructure availability, performance, and security.� �
The ideal candidate brings proven IT leadership, a demonstrated history of delivering first-of-kind technology solutions, and the analytical mindset of a strategic visionary capable of operating at both the executive and technical levels across massive server environments.�
This is a Hybrid/Remote role with expectations to be On-Site throughout the week in San Diego, CA. Must be local to area.
JOB DUTIES:
Autonomous Systems & AI/ML
- Lead design and implementation of ML/AI solutions supporting autonomous systems programs�
- Drive Big Data analytics frameworks enabling real-time autonomous decision-making pipelines
- Apply predictive modeling expertise — including high-frequency algorithmic model development — to autonomous system response and decision architectures�
- Develop and maintain autonomous systems data pipelines integrating server-side compute resources with edge autonomous platforms
Server Infrastructure Management & Support
- Plan, deploy, and manage scalable server environments� supporting autonomous systems compute workloads, drawing on proven experience�
- Oversee� end-to-end server lifecycle management� including procurement, provisioning, configuration, patching, performance tuning, and decommissioning
- Implement and maintain� high-availability (HA) and disaster recovery (DR)� architectures for mission-critical autonomous systems server infrastructure
- Manage� physical and virtual server environments� including bare-metal, VMware, Hyper-V, and containerized workloads supporting DoD program requirements
- Drive� server utilization optimization strategies� leveraging allocation-to-utilization based models, achieving measurable efficiency improvements across server fleets�
- Administer and support� Redhat, Linux (RHEL/CentOS/Ubuntu)� environments in classified and unclassified network enclaves
- Support� server hardening and STIG compliance� across all managed server assets in accordance with DoD cybersecurity requirements as required
- Monitor server health, performance metrics, and capacity planning using enterprise monitoring tools (SolarWinds, Nagios, Splunk, or equivalent)
- Manage� storage area networks (SAN), NAS, and direct-attached storage (DAS)� solutions supporting petabyte-scale data requirements
- Support� GPU server infrastructure� for AI/ML training and inference workloads critical to autonomous systems development
- Coordinate with network engineering teams to ensure optimal� server-to-network integration� across classified and unclassified environments
- Maintain� server asset inventory and configuration management databases (CMDB)� in compliance with DoD IT asset management standards
�
Data Center & Infrastructure Operations
- Manage Data Center operations supporting autonomous systems compute requirements including� CUI (Controlled Unclassified Information)� compliance and physical security�
- Implement� Infrastructure as Code (IaC)� practices using Ansible, Terraform, or equivalent tools for automated server provisioning and configuration management as required
- Drive� cloud-hybrid server strategies� integrating on-premises server infrastructure with Microsoft Azure and other cloud platforms�
- Manage� server backup and recovery� solutions ensuring data integrity and business continuity for autonomous systems program data
- Support� data center relocation and consolidation� initiatives leveraging experience with portable, deployable server infrastructure
- Ensure compliance with� FISMA, RMF (Risk Management Framework), and DoD 8570� requirements across all server infrastructure
�
Program & Stakeholder Management
- Support a cross-functional teams across software, data engineering, server administration, mechanical, and electrical disciplines in a matrix organization environment�
- Prepare and deliver technical briefings on server infrastructure status, capacity planning, and modernization roadmaps to internal and external stakeholders including Federal and DoD entities�
- Support RFP development and proposal responses for autonomous systems and server infrastructure opportunities�
- Develop and maintain� server infrastructure documentation� including architecture diagrams, standard operating procedures (SOPs), and continuity of operations plans (COOP)
�
Innovation & Emerging Technology
- Research, prototype, and deliver cutting-edge autonomous and AI-driven technologies leveraging next-generation server platforms�
- Evaluate and recommend� emerging server technologies� including ARM-based servers, composable infrastructure, and software-defined data center (SDDC) solutions
- Provide technical thought leadership on server infrastructure and autonomous systems capability gaps informing strategic investment decisions�
- Leverage IoT, NFC, and RFID sensor integration experience to support autonomous platform server-side data ingestion and processing�
- Drive adoption of� DevSecOps practices� across server infrastructure supporting autonomous systems CI/CD pipelines
Qualifications
REQUIRED QUALIFICATIONS
�
Requirement
Detail
Experience
14+ years in senior IT/technology leadership roles
Server Administration
10+ years managing large-scale enterprise server environments (1,000+ servers)
AI/ML
Hands-on ML/AI solution implementation in production server environments
DoD Experience
Prior NAVAIR or equivalent DoD program support
Cloud Platforms
Microsoft Azure, AWS, or equivalent hybrid cloud experience
Virtualization
VMware vSphere, Microsoft Hyper-V, or equivalent
OS Proficiency
Windows Server 2016/2019/2022, RHEL, CentOS, Ubuntu
Storage
SAN, NAS, and object storage management at petabyte scale
Program Scale
Demonstrated management of programs valued at $500M+
Clearance
Active Secret Clearance
Education
Bachelor of Science Degree or equivalent
REQUIRED CERTIFICATIONS
- � Certified Dataiku ML/AI Practitioner
- � Project Management Professional (PMP)
- � ITIL Foundation
- � Security+
- � OCP (Oracle Certified Professional)
- � MCSE (Microsoft Certified Solutions Expert)
- � CNE (Certified Novell Engineer)
- � MCP (Microsoft Certified Professional)�
�
Preferred Additional Certifications
- VMware Certified Professional (VCP)
- Red Hat Certified Engineer (RHCE)
- AWS Solutions Architect
- Microsoft Azure Administrator (AZ-104)
- CompTIA Server+
- DoD 8570 IAT Level II or III
�
PREFERRED QUALIFICATIONS
- Prior experience in technology organizations with direct server infrastructure oversight
- Experience designing and deploying� containerized server solutions� for rapid deployment in austere or forward-operating environments
- Familiarity with� change data capture (CDC)� methodologies across heterogeneous server and database environments
- Experience with� GPU cluster management� for AI/ML training workloads
- Background in� high-frequency trading (HFT) infrastructure� requiring ultra-low latency server configurations�
- Familiarity with� DoD RMF accreditation� processes for server systems
�
SERVER INFRASTRUCTURE TECHNICAL COMPETENCIES
Domain
Technologies
Server Platforms
Dell PowerEdge, HP ProLiant, IBM Power, Cisco UCS
Virtualization
VMware vSphere/vCenter, Microsoft Hyper-V, KVM
Containerization
Docker, Kubernetes, OpenShift
Operating Systems
Windows Server, RHEL, CentOS, Ubuntu, AIX
Storage
NetApp, EMC/Dell, Pure Storage, IBM Spectrum
Monitoring
SolarWinds, Nagios, Splunk, Dynatrace
Automation
Ansible, Terraform, PowerShell, Bash
Cloud Integration
Microsoft Azure, AWS GovCloud, DoD Cloud
Backup/Recovery
Veeam, Commvault, Veritas NetBackup
Security/Compliance
STIG, FISMA, RMF, CUI, NIST 800-53
Target salary range: $160,001 - $200,000. The estimate displayed represents the typical salary range for this position based on experience and other factors.