Lead Software Engineer - AI Agents
TLDR
Play a critical role in building scalable backend systems for next-generation AI Agents, operating in high-volume enterprise environments and delivering intelligent AI experiences.
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Design and build scalable backend systems powering AI Agents that operate in real-time enterprise environments
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Develop agent orchestration frameworks (multi-step reasoning, tool usage, decisioning workflows)
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Build systems for agent memory, context management, and state persistence across interactions
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Architect low-latency inference pipelines integrating LLMs, SLMs, and external tools/services
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Implement evaluation (evals) frameworks to measure agent performance, accuracy, and reliability
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Enable continuous improvement loops (feedback → retraining → deployment) for AI agents in production
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Design and manage event-driven, asynchronous workflows for complex agent tasks
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Optimize systems for high throughput, low latency, and cost-efficient inference at scale
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Build and maintain robust APIs and service layers (REST / gRPC) for agent capabilities
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Partner closely with Applied AI / ML teams to productionize models and agent behaviors
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Collaborate with Product and Solutions teams to translate real customer workflows into agentic systems
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Drive best practices in observability, monitoring, safety, and guardrails for AI systems
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Contribute to architecture decisions for scaling multi-tenant, enterprise-grade AI platforms
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5+ years of experience in backend engineering, distributed systems, or platform engineering
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Strong experience building high-scale, production-grade backend systems
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Experience designing systems for real-time processing, streaming, or event-driven architectures
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Strong understanding of API design (REST, gRPC) and microservices architectures
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Experience with databases (SQL + NoSQL) and data modeling for high-scale systems
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Hands-on experience with Docker, Kubernetes, and cloud platforms (AWS/GCP/Azure)
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Strong fundamentals in system design, concurrency, and performance optimization
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Experience working with LLMs, conversational AI, or AI-powered products in production
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Familiarity with agent frameworks, tool calling, or multi-step reasoning systems
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Experience building or integrating RAG pipelines, vector databases, or retrieval systems
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Exposure to evaluation systems (offline/online evals, A/B testing for AI systems)
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Understanding of prompting strategies, context windows, and model behavior optimization
Experience with real-time decisioning systems or workflow orchestration engines
Strong Plus (Agent / AI focus):
Perks & Benefits
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Competitive compensation with performance-based upside
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Flexible vacation policy
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Health insurance coverage
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Work with a globally distributed, high-impact team
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Opportunity to build cutting-edge AI products at scale
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Regular team offsites and in-person collaboration
Benefits
Flexible Work Hours
Flexible vacation policy
Health Insurance
Health insurance coverage
Team offsites and collaboration
Regular team offsites and in-person collaboration
Level AI enhances customer engagement by transforming contact centers into strategic assets through an AI-native platform. By utilizing advanced technologies like Large Language Models, it extracts deep insights from customer interactions, providing organizations with actionable intelligence to improve customer experience and drive growth.