AI Engineer
Job
IBM
Atlanta, GA (In Person)
Full-Time
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Job Description
- Introduction
- The IBM Customer Zero initiative builds internal AI tooling that improves how the IBM workforce operates.
- Your role and responsibilities
- As an AI Engineer on the IBM Customer Zero initiative, you will build internal AI-powered tools that help IBM sales teams identify, engage, and support customers and prospective customers across the IBM software portfolio.
Your primary responsibilities will include:
- Design and build AI-powered applications. Architect and deliver production-grade tools that apply current agentic frameworks, coding agents, and large language model APIs to real sales workflows. Ship working software, not prototypes.
- Work directly with sales stakeholders. Observe sales workflows, identify high-impact problems, translate those observations into requirements, and validate solutions against real use. Communication skill matters as much as engineering skill in this role.
- Apply the full model spectrum. Build solutions that draw on the appropriate model for the task, including IBM Granite, open-weight and open-source models, and current frontier models from major providers. Understand the tradeoffs between them.
- Operate effectively in coding-agent-driven engineering. Contribute to a codebase where agents accelerate development substantially, including the disciplines required to manage merge volume, code collisions, and consistency drift that come with that pace.
- Establish evaluation and measurement discipline. Define how each tool will be measured before it is built. Build evaluation harnesses, monitor production behavior, and identify regressions before users do.
- Extend over time toward buyer-facing tooling. As the team matures, contribute to tools that help software buyers navigate solution design and the buying process. This is a roadmap direction, not a day-one responsibility.
- Required technical and professional expertise
- Fluency in Python, with working knowledge of at least one additional modern language such as JavaScript or TypeScript. Several years of professional engineering experience.
- Fluency in React, with working knowledge of another modern framework such as Vue or Angular acceptable
- Hands-on experience building applications that use large language model APIs across multiple providers, including frontier models and open-weight or open-source models.
- Working experience with current agentic frameworks and coding agents, including the ability to assess which framework fits a given problem.
- Working knowledge of relevant AI and integration protocols, including standard API design, Model Context Protocol, and Agent-to-Agent communication. Candidates are not expected to have shipped production A2A systems, but should understand what A2A is and the problems it addresses.
- Working knowledge of vector search tooling and the database interactions that support retrieval at production scale.
- Working knowledge of CI/CD practices and the disciplines that keep modern application codebases deployable and consistent.
- Exposure to coding-agent-driven engineering at pace, including the practical reality of managing merge volume and code collisions when agents contribute substantial portions of a codebase.
- Demonstrated ability to define how an AI application will be evaluated, including the construction of evaluation datasets and the measurement of model and system behavior in production.
- Strong written and verbal communication, including the ability to translate between technical implementation and non-technical stakeholders.
- Preferred technical and professional experience
- Familiarity with the IBM AI portfolio, including WatsonX and the Granite model family, or clearly demonstrated interest in developing that familiarity.
- Experience designing or contributing to internal tools used by non-technical users in production settings.
- Working knowledge of production AI engineering practices, including observability for model-based systems, cost monitoring, and graceful handling of model API failures.
- Familiarity with sales workflows, CRM data models, or pipeline mechanics, sufficient to collaborate effectively with sales stakeholders.
- Experience with containerization, infrastructure-as-code, and deployment practices common to modern application engineering.
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