Track This Job
Add this job to your tracking list to:
- Monitor application status and updates
- Change status (Applied, Interview, Offer, etc.)
- Add personal notes and comments
- Set reminders for follow-ups
- Track your entire application journey
Save This Job
Add this job to your saved collection to:
- Access easily from your saved jobs dashboard
- Review job details later without searching again
- Compare with other saved opportunities
- Keep a collection of interesting positions
- Receive notifications about saved jobs before they expire
AI-Powered Job Summary
Get a concise overview of key job requirements, responsibilities, and qualifications in seconds.
Pro Tip: Use this feature to quickly decide if a job matches your skills before reading the full description.
- This ML Ops / Integration Engineer role focuses on building and integrating Generative AI and Agentic AI solutions into enterprise environments. You will work closely with data scientists, architects, and DevOps teams to design, implement, and optimize AI pipelines and infrastructure.
- Develop and maintain automation scripts using Linux shell scripting, Python, or other relevant tools.
- Ensure seamless deployment and integration between cloud/prem environments (AWS).
- Integrate AI models into production environments using containerized platforms such as OpenShift.
- Implement and maintain network security protocols to safeguard AI systems and data pipelines.
- Collaborate with cross-functional teams to understand AI workflows and translate them into robust engineering solutions.
- Monitor and optimize system performance, reliability, and scalability.
- Support CI/CD processes and infrastructure for AI model deployment and updates.
- Experience in Machine Learning engineering or AI system integration.
- Bash and Unix/Linux command-line toolkit is a must-have.
- Hands-on experience with OpenShift, Docker, Kubernetes.
- Knowledge of cloud platforms (e.g. AWS) is a must-have.
- Exposure to data and network security and compliance in AI systems.
- Knowledge of API integration and microservices architecture.
- Proficiency in Python used both for automation and ML-related tasks
- Knowledge of Workflow Orchestrator, such as Ctrl-M
- Good knowledge of Logging and Monitoring tools, such as Splunk and Geneos.
- Experience with Observability framework, such as Langfuse, Elastic Stack, Grafana, OpenTelemetry.
- Understanding of Generative AI (e.g. prompt engineering, RAG pipelines) and Agentic AI concepts.
Key Skills
Ranked by relevanceReady to apply?
Join Unison Group and take your career to the next level!
Application takes less than 5 minutes

