Skill needed: Python, LLMs, LangChain.
Employer: Axiomatic_AI
Axiomatic AI is building a new class of AI systems designed to reason with the rigor of the scientific method. By combining deep learning with formal logic and physics-based modeling, we create verifiable, interpretable AI systems that collaborate with and support human researchers in high-stakes scientific and engineering workflows. Our mission, 30×30, is to deliver a 30× improvement in the speed, accessibility, and cost of semiconductor and photonic hardware development by 2030. We aim to revolutionize hardware design and simulation in these industries and are building a team of highly motivated professionals to bring these innovations from research into commercial products.Position overview: As an Applied AI Engineer, you will be the bridge between the R&D team and the product, turning research prototypes into robust, production-ready AI capabilities. You will work hands-on across the stack to integrate LLM- and agent-based systems into real workflows, ensuring they are reliable, reproducible, and maintainable in production environments.This role requires strong engineering skills to implement, test, deploy, and operate AI-driven features in production, working closely with researchers and software engineers to meet real-world constraints such as quality, latency, cost, privacy, and reliability. You will also bring a solid understanding of modern AI models, including LLMs and agentic architectures, to make sound technical choices and anticipate failure modes.Your Mission1. Applied AI Product DevelopmentOwn applied AI features through the full delivery cycle: design → implementation → rollout → iterationTranslate user feedback and research prototypes into clear requirements and working softwareBuild LLM workflows such as tool-calling agents, structured output pipelines, retrieval/tool integrations, and safe prompting strategiesBalance iteration speed with production quality: readability, maintainability, and debuggability2. Model & Prompt ContributionWork with LLMs (OpenAI, Anthropic, HuggingFace, or similar) and contribute to prompt strategy and evaluationApply structured prompting patterns, schemas, and constraints under senior guidanceParticipate in lightweight evaluations to catch regressions (golden datasets, acceptance criteria, failure-mode tests)3. Production Engineering & QualityWrite clean, typed Python with solid API boundaries and consistent error handlingOwn unit tests, integration tests, and golden/regression tests for your featuresImplement logging, tracing, and basic metrics for AI features you buildFollow reliability and security best practices: rate limiting, safe input handling, prompt-injection awareness4. CollaborationWork closely with AI Developers and researchers to productionize experimentsFollow established deployment workflows: notebook/test repository → PR → staging → productionParticipate actively in code reviews and apply feedback consistentlyKey Requirements3+ years of software engineering experience, Python preferredFamiliarity with agent frameworks such as LangChain, PydanticAI, or similarKnowledge of prompt engineering and basic evaluation techniques for LLM systemsHands-on experience building with LLMs or AI/ML tools in production (OpenAI API, HuggingFace, LangChain, or similar — beyond prototypes)Strong programming fundamentals: design patterns, code structure, testing practices, and code review habitsAPI/service development experience (e.g., FastAPI, REST, async Python) and collaboration in shared codebases using GitBasic observability experience: logging and tracing for distributed or AI systemsProblem-solving mindset: comfortable debugging real issues in production systemsClear communication skills and a collaborative approachNice to HaveCI/CD experience: Docker and GitHub Actions or similarUnderstanding of RAG architectures and retrieval-based systemsExperience with real-time inference patterns, including streaming responsesBackground in ML engineering or data engineeringUnderstanding of Knowledge Graph concepts and how they can support AI systemsContributions to open-source AI/ML projectsWhat we offer:Competitive compensationStock Options Plan: Empowering you to share in our success and growth.Cutting-Edge Tools: Access to state-of-the-art tools and collaborative opportunities with leading experts in artificial intelligence, physics, hardware and electronic design automation.Professional Growth: Opportunities to attend industry conferences, present research findings, and engage with the global AI research community.Impact-Driven Culture: Join a passionate team focused on solving some of the most challenging problems at the intersection of AI and hardware. Why join us? At Axiomatic_AI, you will be working on technology that drives innovation in AI for scientific and engineering applications in line with our 30 x 30 mission. This is your opportunity to contribute to the development of new AI architectures that can reason coherently and produce interpretable and verifiable solutions. Consequently, see those ideas commercialized into products that will shape the future of hardware and computing, while collaborating with a global team of engineers and AI specialists. We believe in pushing the boundaries of what is possible and continuously seek to redefine the intersection of AI, with focus on formal consistency. If you're ready to take your expertise in artificial intelligence and physics to the next level, we want to hear from you!Worried about not meeting every qualification? Studies show that women and people of color are less likely to apply for jobs unless they meet every listed requirement. At Axiomatic-AI, we are dedicated to creating a diverse, inclusive, and authentic workplace. If this role excites you but your background doesn’t perfectly match every qualification, we still encourage you to apply. You could be the perfect fit for this position or another opportunity with us.