{"schemaVersion":"jobsearcher.job.v1","id":"570671f8a2b0a63b21e78c8d","url":"https://jobsearcher.com/jobs/570671f8a2b0a63b21e78c8d","canonicalUrl":"https://jobsearcher.com/jobs/570671f8a2b0a63b21e78c8d","title":"AI Engineer","description":"Role Overview\nWe’re looking for a hands‑on AI Engineer to ship on our platform: building agent harnesses, writing the tools those agents call, and owning the reliability and evaluation of what goes to production. This is not a research role. You’ll prototype, ship, monitor, and iterate on features used by real teams.\n\nOur team tends to be people who reason carefully, ship working code, and pick up new tools without a lot of handholding. There’s no single path into this role. We value the impact of what you’ve built and your track record of building things that hold up.\n\nAbout the team and what we’ll build together\nKobie runs some of the largest loyalty programs in the world. We’re building an internal agent platform on Amazon AgentCore that automates analyst workflows, surfaces insights from program data in Snowflake, and gives our teams and clients an LLM‑native way to work with complex loyalty logic.\n\nRole & Responsibilities – How you will make an impact\nAgent Development\n\nBuild agent harnesses in Python using LangChain and LangGraph, including tool‑calling, structured outputs (Pydantic/JSON schema), retries, streaming, and memory\n\nPackage agent harnesses for the AgentCore Runtime with appropriate context, tools, skills, and subagents that fit cleanly into production flows and scenarios\n\nWrite the tools and skills agents use: API integrations, SQL queries against Snowflake, and Snowflake‑backed knowledge retrieval with clear contracts and Pydantic validation\n\nEvaluation and Reliability\n\nBuild evaluation harnesses (golden datasets, LLM‑as‑judge, regression suites) using AgentCore Evaluations, and wire them into CI\n\nImplement guardrails around tool execution: auth scoping, input/output validation, PII and prompt‑injection protections, and hallucination mitigation\n\nOwn what you ship: prototype, deploy through Amazon AgentCore, monitor traces, and fix it when it breaks\n\nCollaboration\n\nPartner with data engineers on Snowflake‑backed retrieval patterns (Cortex Analyst and Cortex Search Services)\n\nContribute to refining our internal engineering patterns as the stack evolves\n\nSkill sets – What you need to be successful\nRequired\n\n3+ years of professional Python, with production experience building and operating services\n\n1+ years of hands‑on work with LLMs in production: prompt/context engineering, tool/function calling, structured outputs, RAG\n\nWorking knowledge of LangChain/LangGraph or a comparable framework like AgentCore Strands, CrewAI, or Semantic Kernel\n\nExperience with LLM observability tools: Amazon CloudWatch, LangSmith, Langfuse, MLflow, or OpenTelemetry\n\nExperience designing evaluation frameworks (MLFlow, DeepEval, LLM‑as‑judge, multi‑turn regression)\n\nFluency with Git, Docker, and modern API frameworks\n\nClear written communication and the judgment to know when something is ready to ship\n\nA bachelor's degree is not required. Equivalent practical experience – bootcamps, self‑taught work, career changes, or non‑CS technical degrees – counts.\n\nStrongly Preferred\n\nHands‑on experience with Amazon Bedrock and/or AgentCore as a developer: runtime, gateways, memory, policy, guardrails, observability, awscli, evaluations\n\nExperience with Snowflake, Snowpark, or Snowflake Cortex\n\nFluency in writing and reading SQL, as well as understanding semantic models\n\nFamiliarity with multi‑agent patterns: supervisor/router, subagent/handoff, reflection, human‑in‑the‑loop\n\nA considered view on where agents should and shouldn’t act and comfort pushing back when “let’s add an agent” isn’t the right answer\n\nExperience in Loyalty, MarTech, AdTech, or a comparable data‑rich B2B domain\n\nEqual Employment Opportunity\nEmployment at Kobie is based solely on an individual's merit and qualifications, which are directly related to professional competence. We do not discriminate against any teammate or applicant because of race, color, religion, gender, sexual orientation, gender identity/expression, national origin, disability, age, genetic information, veteran status, marital status, pregnancy, or any other characteristic protected by applicable law.\n\nWe are fiercely committed to fostering a workplace where teammates can bring their authentic selves to work every day. Our DEI initiatives, including various committees, ensure that principles of equity, diversity, and inclusion are deeply ingrained throughout Kobie. While our leadership team fully supports our policy of nondiscrimination and equal opportunity, it is the responsibility of all teammates to uphold these values.\n\n#J-18808-Ljbffr","company":"Medium","rawCompany":"medium","city":"St Louis","state":"MO","isRemote":false,"isActive":false,"createdAt":"2026-06-21T03:41:47.330Z","occupations":[{"code":"15-1252.00","title":"Software Developers","slug":"software-developers"},{"code":"15-1299.08","title":"Computer Systems Engineers/Architects","slug":"computer-systems-engineers-architects"},{"code":"15-2051.00","title":"Data Scientists","slug":"data-scientists"}],"industries":[{"code":"541511","title":"Custom Computer Programming Services","slug":"custom-computer-programming-services"},{"code":"513210","title":"Software Publishers","slug":"software-publishers"},{"code":"541512","title":"Computer Systems Design Services","slug":"computer-systems-design-services"}],"jobPosting":{"@context":"https://schema.org","@type":"JobPosting","title":"AI Engineer","description":"Role Overview\nWe’re looking for a hands‑on AI Engineer to ship on our platform: building agent harnesses, writing the tools those agents call, and owning the reliability and evaluation of what goes to production. This is not a research role. You’ll prototype, ship, monitor, and iterate on features used by real teams.\n\nOur team tends to be people who reason carefully, ship working code, and pick up new tools without a lot of handholding. There’s no single path into this role. We value the impact of what you’ve built and your track record of building things that hold up.\n\nAbout the team and what we’ll build together\nKobie runs some of the largest loyalty programs in the world. We’re building an internal agent platform on Amazon AgentCore that automates analyst workflows, surfaces insights from program data in Snowflake, and gives our teams and clients an LLM‑native way to work with complex loyalty logic.\n\nRole & Responsibilities – How you will make an impact\nAgent Development\n\nBuild agent harnesses in Python using LangChain and LangGraph, including tool‑calling, structured outputs (Pydantic/JSON schema), retries, streaming, and memory\n\nPackage agent harnesses for the AgentCore Runtime with appropriate context, tools, skills, and subagents that fit cleanly into production flows and scenarios\n\nWrite the tools and skills agents use: API integrations, SQL queries against Snowflake, and Snowflake‑backed knowledge retrieval with clear contracts and Pydantic validation\n\nEvaluation and Reliability\n\nBuild evaluation harnesses (golden datasets, LLM‑as‑judge, regression suites) using AgentCore Evaluations, and wire them into CI\n\nImplement guardrails around tool execution: auth scoping, input/output validation, PII and prompt‑injection protections, and hallucination mitigation\n\nOwn what you ship: prototype, deploy through Amazon AgentCore, monitor traces, and fix it when it breaks\n\nCollaboration\n\nPartner with data engineers on Snowflake‑backed retrieval patterns (Cortex Analyst and Cortex Search Services)\n\nContribute to refining our internal engineering patterns as the stack evolves\n\nSkill sets – What you need to be successful\nRequired\n\n3+ years of professional Python, with production experience building and operating services\n\n1+ years of hands‑on work with LLMs in production: prompt/context engineering, tool/function calling, structured outputs, RAG\n\nWorking knowledge of LangChain/LangGraph or a comparable framework like AgentCore Strands, CrewAI, or Semantic Kernel\n\nExperience with LLM observability tools: Amazon CloudWatch, LangSmith, Langfuse, MLflow, or OpenTelemetry\n\nExperience designing evaluation frameworks (MLFlow, DeepEval, LLM‑as‑judge, multi‑turn regression)\n\nFluency with Git, Docker, and modern API frameworks\n\nClear written communication and the judgment to know when something is ready to ship\n\nA bachelor's degree is not required. Equivalent practical experience – bootcamps, self‑taught work, career changes, or non‑CS technical degrees – counts.\n\nStrongly Preferred\n\nHands‑on experience with Amazon Bedrock and/or AgentCore as a developer: runtime, gateways, memory, policy, guardrails, observability, awscli, evaluations\n\nExperience with Snowflake, Snowpark, or Snowflake Cortex\n\nFluency in writing and reading SQL, as well as understanding semantic models\n\nFamiliarity with multi‑agent patterns: supervisor/router, subagent/handoff, reflection, human‑in‑the‑loop\n\nA considered view on where agents should and shouldn’t act and comfort pushing back when “let’s add an agent” isn’t the right answer\n\nExperience in Loyalty, MarTech, AdTech, or a comparable data‑rich B2B domain\n\nEqual Employment Opportunity\nEmployment at Kobie is based solely on an individual's merit and qualifications, which are directly related to professional competence. We do not discriminate against any teammate or applicant because of race, color, religion, gender, sexual orientation, gender identity/expression, national origin, disability, age, genetic information, veteran status, marital status, pregnancy, or any other characteristic protected by applicable law.\n\nWe are fiercely committed to fostering a workplace where teammates can bring their authentic selves to work every day. Our DEI initiatives, including various committees, ensure that principles of equity, diversity, and inclusion are deeply ingrained throughout Kobie. While our leadership team fully supports our policy of nondiscrimination and equal opportunity, it is the responsibility of all teammates to uphold these values.\n\n#J-18808-Ljbffr","datePosted":"2026-06-21T03:41:47.330Z","dateModified":"2026-06-21T03:41:47.330Z","hiringOrganization":{"@type":"Organization","name":"Medium","sameAs":"https://jobsearcher.com"},"jobLocation":{"@type":"Place","address":{"@type":"PostalAddress","addressLocality":"St Louis","addressRegion":"MO","addressCountry":"US"}},"identifier":{"@type":"PropertyValue","name":"JobSearcher","value":"570671f8a2b0a63b21e78c8d"},"url":"https://jobsearcher.com/jobs/570671f8a2b0a63b21e78c8d"}}