AI Developer | Solutioning & Architecture | On site (USA-Based Opportunities)
Skills
About the role
Solutioning & Architecture Design and prototype integrations between partner products and the company platform
DevOps tools: Docker, Kubernetes, Git Preferred
technical stack: Languages — Python
ML frameworks — vLLM, SGLang, TensorRT-LLM, Transformers,OpenAI / Anthropic SDKs
Agentic frameworks — LangChain, LangGraph, CrewAI, AutoGen, smolagents, or
equivalent Vector databases — Qdrant, Weaviate, Milvus, pgvector
API and web frameworks — FastAPI, Flask
DevOps — Kubernetes, Docker, Git
Cloud platforms — AWS, GCP, Azure
Experience: 3–6 Years
— fast, hands-on, and technically sound Define reference architectures for partner integrations
— not just what works, but how it should work at scale and in production Scope partner architectures against our platform
— how does this product actually work on our stack, where does it snap together, where does it break Build production-quality proof-of-concepts across the AI stack including agentic pipelines, RAG architectures, inference optimization patterns, and multi-model orchestration Produce working proof-of-concepts that serve as the starting point for product creation
— not a requirements doc, a working thing Maintain a library of reference architectures and integration patterns that internal product and engineering teams can build from Technical Partner Scoping Work directly with partner engineering teams to scope, prototype, and progress integrations Assess partner architectures honestly
— if the integration is painful, that is signal; if it snaps together in a weekend, that is also signal; report both Provide technical guidance to partners on how to maximize performance, reliability, and cost efficiency on Company infrastructure Produce technical scoping that gives your pod partner and internal teams a clear picture of integration feasibility, depth, and complexity Internal Translate external integration findings into actionable product requirements for Company platform teams Work with ISV partners, SI teams, and field teams to scale solution adoption and drive revenue once a solution is ready Surface recurring architectural patterns and integration gaps to inform platform roadmap decisions Participate in platform planning as the technical voice of what you are seeing and building in the field Ecosystem Presence Represent Company at hackathons, in open source communities, and at technical events Build in public
— demos, reference architectures, and integrations that establish Company as the platform serious AI builders choose Stay current with the AI tooling ecosystem
— you know what shipped last week and what it means for our stack Platform focus areas: Depending on your background and mutual fit, you will focus on one or more of the following: Agentic
— agent frameworks, memory systems, tool integration, orchestration, MCP, guardrails Managed Inference
— inference runtimes, model serving, optimization tooling, speculative decoding, KV-cache routing IaaS / Managed Infrastructure
— cloud-native integrations, GPU orchestration, enterprise platform connectors Data
— vector databases, retrieval systems, RAG architectures, data pipeline integrations, synthetic data tooling We expect you to have: 6+ years of hands-on engineering experience in AI application development, ML systems, or AI infrastructure Deep working knowledge of the AI developer stack
— LLM APIs, inference runtimes, orchestration frameworks, vector databases, RAG architectures, agentic pipelines
— built through shipping, not reading Hands-on experience with agentic frameworks such as LangChain, LangGraph, CrewAI, AutoGen, or equivalent Strong Python programming skills and comfort prototyping end-to-end AI systems quickly Experience defining reference architectures and technical patterns
— not just implementing them Proven ability to move from idea to working prototype fast — you have shipped meaningful things under time pressure and found it energizing Experience building integrations across APIs and developer platforms
— you understand where the complexity actually lives Comfortable working across both external partner engineering teams and internal Company product and engineering teams simultaneously Strong technical communication
— you can explain architecture decisions and integration findings to a founding CTO and a non-technical partner lead in the same day It will be an added bonus if you have: Experience with inference frameworks and optimization: vLLM, SGLang, TensorRT-LLM, speculative decoding, quantization, batching, KV-cache routing Familiarity with NVIDIA's software stack: CUDA, TensorRT, NeMo, or equivalent Experience with multimodal AI models
— vision-language, speech, or structured data Won or placed at major AI hackathons in the past 12 months Worked as a developer advocate, solutions engineer, or technical partner manager at a leading AI platform or developer tooling company Been an early engineer at a YC-backed AI startup
— you built the product under real constraints Open source projects or public demos with meaningful community adoption Proficiency with
Work Authorization: Open to Green Card holders & U.S. Citizens
interested candidates can reach out at: mandy@logicrays.us or shruti@logicrays.com
Pay: $10.00 - $20.00 per hour
Work Location: In person
Compensation
This Software Engineer role pays $10k-$20k/yr. Within typical range for software engineer roles in United States.
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