AI Engineer
Indexed description
You will work hands-on across the full delivery lifecycle—moving quickly from concept to prototype to production. Working closely with product, engineering, and data teams, you will help deliver intelligent applications built on modern AI infrastructure.
We value practical builders over academic theory. Success in this role is defined by your ability to design, implement, deploy, and operate real systems that deliver business value.
What You Will Build
You will design and implement systems across the AI stack, including:
- LLM-powered applications and intelligent agents
- Model orchestration and tool-use frameworks
- Retrieval systems and knowledge layers (RAG)
- MCP-style integration layers connecting models to tools, APIs, and data sources
- Scalable infrastructure supporting AI workloads
Key Responsibilities
Build AI Systems
- Design and implement production-grade systems powered by LLMs and modern AI frameworks
- Develop applications using technologies such as:
- OpenAI, Anthropic and other LLM APIs
- LLM gateway
- Vector databases
- Agent orchestration frameworks
- Build and operate the infrastructure required to run reliable AI services, including:
- API services supporting AI applications
- Orchestration layers between models and tools
- Retrieval pipelines and knowledge indexing
- Observability and monitoring for AI systems
- Scalable backend services
- Design integration layers that enable models to interact with external systems, including:
- API integrations
- Tool-use systems for agents
- Connectors to databases, SaaS tools, or internal platforms
- Structured prompting and function-calling architectures
- Move quickly from concept to working product
- Write clean, maintainable backend code
- Build testable services
- Deploy systems in production environments
- Iterate based on real user feedback
- Work closely with product managers, engineers, and designers to turn ideas into working solutions
- Strong backend engineering experience
- Proficiency in Python (preferred) or TypeScript
- Experience building REST APIs and backend services
- Solid system design fundamentals
- Debugging and production troubleshooting skills
- Understand software development lifecycle
- Experience building applications using large language models
- Prompt engineering and structured prompting
- Tool use and function calling
- Retrieval-Augmented Generation (RAG) architectures
- LLM evaluation and iterative improvement
- Hands-on experience deploying production systems
- Docker and containerization
- Cloud platforms (AWS, GCP, or Azure)
- CI/CD pipelines
- Scalable service architecture
- Experience building and operating knowledge layers
- Vector databases (e.g. Pinecone, Weaviate, pgvector)
- Document ingestion pipelines
- Embedding workflows
- Search and retrieval optimization
- MCP architectures or tool-connected AI systems
- Agent frameworks
- Knowledge graph systems
- Streaming or event-driven systems
- Distributed systems design
- Evaluation frameworks for AI systems
- Prefer building working systems over discussing them
- Move quickly while maintaining quality
- Enjoy solving messy, real-world problems
- Take ownership from prototype through to production
- Stay curious about emerging AI capabilities
Experience
- 2–5 years of experience in software engineering, AI engineering, or ML systems
- Shipped products
- Real systems running in production
- Open-source contributions
- Side projects and experimentation
Why Join SLR
Role
You will help build real AI systems at a time when the AI stack is still rapidly evolving. This role offers:
- Meaningful ownership and autonomy
- Real engineering challenges
- The opportunity to shape how intelligent software is designed, built, and deployed across SLR
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