Software Engineer, GTM AI - Python
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Job description
We're looking for a Software Engineer who builds and operates the AI-native backend systems powering our go-to-market motion. You'll design multi-agent architectures, build reliable integrations across complex business systems, and own services end-to-end from prototype through production.
The systems you build orchestrate LLM-powered agents that handle real business workflows - qualifying leads, generating emails, routing meetings, enriching contacts, and managing outbound campaigns. These are stateful, multi-step agent systems running on Kubernetes that make decisions, call tools, and interact with external APIs under real constraints: rate limits, token budgets, cost targets, and data quality issues.
You'll partner with Engineering Leads and Technical Product Managers to understand the problem space, then translate those problems into well-architected, observable, and maintainable software. This isn't prompt engineering and it isn't gluing together SaaS tools - it's systems engineering with AI as a core primitive.
This is a hands-on builder role with high ownership. You'll make architectural decisions, ship iteratively, debug production issues, and care deeply about what happens after code merges., * Design and build multi-agent AI systems in Python that handle complex, multi-step business workflows - qualification, email generation, routing, enrichment, and outbound orchestration
- Architect model-agnostic abstraction layers that decouple business logic from LLM providers, enabling flexibility across Claude, GPT, and open-source models
- Build and operate backend services (FastAPI/Flask) deployed on Kubernetes with CI/CD, managing the full lifecycle from deployment configuration to production reliability
- Design tool-use patterns for AI agents - structured function calling, multi-step reasoning, state management across conversation turns, and graceful handling of model failures
- Build integrations across external systems (CRM, enrichment APIs, outreach platforms, Slack) with proper error handling, retries, rate limiting, and data contracts
- Instrument and monitor AI systems in production - build observability into agent behavior, track success rates, detect regressions, and debug non-deterministic failures
- Design and run experiments (A/B tests, prompt variations, model comparisons) with proper evaluation infrastructure to measure what's actually working
Requirements
Do you have experience in Systems integration?, * 2+ years of software engineering experience building backend services in Python
- Production experience building multi-step AI agent systems - stateful workflows where models make decisions, call tools, and operate across multiple turns, not single-shot API wrappers
- Strong understanding of LLM internals as they affect system design: context window management, token budgets, cost/latency/capability tradeoffs across models, structured outputs, and strategies for handling hallucination and refusals
- Experience testing and evaluating non-deterministic AI systems - you understand that assert output == expected doesn't work and have built or used alternatives
- Solid software architecture fundamentals: API design, state management, fault tolerance, and graceful degradation when upstream services fail
- Production experience with containerized deployments (Docker, Kubernetes) and CI/CD pipelines
- Experience integrating with external APIs at scale - auth flows, rate limiting, retries, data normalization, and managing the operational complexity of multiple third-party dependencies
- Proficiency with SQL and data systems for building targeting, enrichment, and analytics pipelines
- Built observability into production systems - structured logging, tracing, alerting, and monitoring that you actually use to debug issues
- High ownership: you deploy your own code, investigate your own incidents, and close the loop between what you shipped and how it performs
Nice to Have
- Experience with specific GTM/RevOps systems (Salesforce, Apollo, Lusha, enrichment providers) or similar complex business platforms
- Background in growth engineering, marketing automation, or revenue operations tooling
- Experience with Slack bot development or conversational AI interfaces
- Contributions to or experience with open-source AI agent frameworks
- Familiarity with ArgoCD, StatefulSets, or Kubernetes operations beyond basic deployments