Unisys Jobs in Usa
3 positions found
Overview
Architects and builds the infrastructure and tooling that powers AI agent development across the Software Development Lifecycle (SDLC). Develops production-grade agentic systems, orchestration frameworks, and observability solutions that enable teams to build, deploy, and monitor reliable AI agents at scale. Plays a key role in defining and implementing the next generation of SDLC through AI-first innovation and comprehensive instrumentation.
What We're Looking For
You demonstrate sharp product sense for high-impact automation opportunities, technical taste in implementation decisions, and the ability to clearly articulate trade-offs. You know when to apply AI agent solutions versus simpler approaches and can explain the \"why\" behind architectural choices.
You excel at 0-to-1 (and 1-to-100) product development, comfortable operating in ambiguous environments where requirements emerge through experimentation and iteration rather than upfront specification.
Key Responsibilities
AI Agent Development & Automation:
• Develop production-grade AI agents that eliminate manual handoffs across the SDLC
• Create custom integrations and CLI tools that give agents deep understanding of internal systems and codebases
• Design comprehensive testing strategies to ensure agent reliability and output quality
• Implement \"Golden Path\" scaffolding that embeds organizational standards into new projects
• Build AI solutions that improve codebase navigation, documentation, and developer workflows
• Identify workflow bottlenecks and deliver measurable impact through intelligent automation
• Shape SDLC evolution by identifying AI-first opportunities and proving outcomes through experimentation
Agent Infrastructure & Platform:
• Architect and maintain production infrastructure supporting agent deployment, lifecycle management, and scaling
• Develop agent frameworks, templates, and SDKs that accelerate agent development
• Create governed Model Context Protocol (MCP) catalog enabling compliant agent-to-agent and agent-to-MCP communication
• Implement governance controls for agent behavior, permissions, and system access
Observability & Performance Analytics:
• Design and implement metrics, monitoring, and logging infrastructure for AI agents and development workflows
• Build dashboards that provide actionable insights into developer productivity, tool adoption, and agent performance
• Establish KPIs and measurement frameworks to quantify the impact of AI-powered automation
• Create alerting and anomaly detection systems to ensure reliability of agents and tooling
• Analyze telemetry data to identify optimization opportunities and guide strategic investment decisions
Collaboration & Impact:
• Partner across teams to drive adoption of AI-powered tooling and process transformation
• Stay current with LLM technologies and coach colleagues on AI-assisted development and automation best practices
• Rapidly prototype solutions to validate use cases and prove value quickly
• Communicate data-driven insights to stakeholders through clear visualizations and reports
Preferred Qualifications:
• 5-7+ years of software engineering experience building production systems
• Proven experience building agentic systems using LLM orchestration frameworks
• Hands-on expertise with AI-powered development tools (code assistants, AI-enhanced editors)
• Strong foundation in SDLC, system design, and internal tooling development
• Experience with observability tools and practices including metrics collection, logging frameworks, and dashboard development
• Full-stack technical proficiency:
• Languages: Java, Python, JavaScript/TypeScript
• Frameworks: Angular, Spring Boot
• CI/CD platforms and cloud infrastructure (AWS)
• Monitoring/observability tools (e.g., Prometheus, Grafana, CloudWatch)
• Passion for transforming software development through AI innovation and data-driven decision making
# LI-CGTS
# TS-2505
The ideal candidate will have the following qualifications:
Documentum Expertise
7+ years of experience in designing, developing, and troubleshooting Documentum applications (Content Server, D2 Config, D2 Classic, D2 Smart View, Brava, CTS, Xplore, DFC Client).
Strong understanding of Documentum architecture, object model, and security.
Experience with platform upgrades and migrations.
API Development
2+ years of experience implementing REST APIs using Spring Framework, preferably for Documentum or similar ECM platforms.
Programming & Tools
5+ years of experience with Java and Python.
Proficient in tools and frameworks such as Git, Jenkins, Jira, IntelliJ, Tomcat/J2EE, and relational databases.
Cloud Experience (AWS)
3+ years of experience working with AWS services including EC2, ECS, RDS, ALB, SSM, SQS, SNS, Lambda, and AWS SDK.
Preferred certifications include AWS, Documentum, and Java.
#LI-CGTS
TS-2652
- We are seeking a seasoned professional with deep expertise in OpenText Documentum and Enterprise Content Management (ECM) systems.
The ideal candidate will have the following qualifications:
Documentum Expertise:
- 7+ years of experience in designing, developing, and troubleshooting Documentum applications (Content Server, D2 Config, D2 Classic, D2 Smart View, Brava, CTS, xPlore, DFC Client).
- Strong understanding of Documentum architecture, object model, and security.
- Experience with platform upgrades and migrations.
API Development:
- 2+ years of experience implementing REST APIs using Spring Framework, preferably for Documentum or similar ECM platforms.
Programming & Tools:
- 5+ years of experience with Java and/or Python.
- Proficient in tools and frameworks such as Git, Jenkins, Jira, IntelliJ, Tomcat/J2EE, and relational databases.
- Solid understanding of design patterns and software architecture.
Software Development Practices:
- Familiarity with unit testing, code coverage, deployment processes, vulnerability management, and system monitoring.
Cloud Experience (AWS):
- 3+ years of experience working with AWS services including EC2, ECS, RDS, ALB, SSM, SQS, SNS, Lambda, and AWS SDK.
- Skilled in troubleshooting AWS deployments, reviewing configurations, security policies, and analyzing logs.
Agile Methodology:
- Strong understanding of Agile Scrum practices such as sprint planning, backlog refinement, daily stand-ups, and retrospectives.
Collaboration & Communication:
- Ability to work effectively with cross-functional teams and communicate technical concepts clearly.
- Self-Management.
- Capable of managing time, tasks, and priorities independently.
Certifications:
- Preferred Certifications include AWS, Documentum, and Java.
#LI-CGTS
#TS-3142