Websenor is hiring for Remote
Position:- Senior AI Engineer
Experience:- 5+ years
Location:Remote
Job Role:-
The Senior AI Engineer will work on building production-grade AI systems with a strong engineering focus. This role requires someone who can handle end-to-end AI system ownership, from model selection to deployment and scaling, while working on advanced agentic AI systems using LLMs.
Responsibilities:-
Infrastructure & Production Engineering
- Design and manage AI infrastructure and pipelines
- Build scalable systems including inference services, data pipelines, and evaluation pipelines
- Work with cloud platforms (AWS/GCP) and contribute to DevOps practices
- Ensure system reliability, scalability, and performance in production
End-to-End AI System Ownership
- Design, build, and maintain production-ready AI systems
- Handle full lifecycle: prototyping → evaluation → deployment → scaling → monitoring
- Ensure robustness and maintainability in real-world applications
Agentic AI System Design
- Architect and implement multi-agent workflows
- Develop prompt strategies, tool integrations, memory systems, and planning mechanisms
- Work on context management, long-horizon reasoning, and tool orchestration
Model Strategy & Optimization
- Select appropriate models based on cost, latency, and performance trade-offs
- Fine-tune or adapt open-source models where required
- Build evaluation frameworks for continuous system improvement
Cross-Functional Collaboration
- Work closely with product, research, and engineering teams
- Mentor junior engineers and contribute to technical direction
- Translate ambiguous requirements into scalable engineering solutions
Requirements:-
Core Engineering Skills
- 4+ years of experience in software or AI engineering
- Strong experience in building and deploying production systems
- Proficiency in Python and backend frameworks
- Strong understanding of system design, scalability, and reliability
AI / LLM Experience
- Hands-on experience with LLMs and agent-based systems
- Knowledge of retrieval techniques, fine-tuning, or model adaptation
- Experience in deploying AI models in real-world environments
System Thinking
- Ability to connect model capabilities with system design
- Strong understanding of trade-offs between cost, latency, and quality
- Ability to decide between engineering solutions vs model improvements
Good to Have:-
- Experience with multi-agent frameworks (LangGraph, AutoGen, etc.)
- Familiarity with vector databases or retrieval systems
- Experience with distributed systems or large-scale pipelines
- Exposure to scientific or domain-specific applications
What We’re Looking For:-
- Strong engineering mindset (not just model usage)
- Ability to handle complex, ambiguous problems
- Comfortable working across system design and implementation levels
Salary:- As per industry standards. No bar for the right candidate.





