The role involves managing AI agents for software delivery, crafting specifications, and reviewing AI-generated outputs to ensure quality and alignment with product requirements.
The Role
Fusion Engineering is building the agentic workflow that will power how our entire engineering organization delivers software. We have stood up a suite of AI agents capable of delivering features, enhancements, and bug fixes-and we are now looking for Harness Engineers to operate that system at scale and help it continuously improve.
This is not a role about building the harness from scratch. It is about becoming an expert operator of it: steering agents toward quality outcomes, translating product requirements into precise agent-ready specifications, reviewing and validating AI-generated solutions, and closing the feedback loop so the system gets smarter over time. You will be the manager in the loop-the engineer whose judgment, communication, and technical depth determines whether a feature ships with confidence.
Harness Engineers at Fusion work across the full delivery lifecycle: collaborating with product and design to scope requirements, crafting the context and prompts that direct agents, reviewing output for quality and correctness, and partnering with other engineering teams as embedded technical contributors. No two days look exactly the same-and the discipline itself is evolving fast. If you are energized by operating at the frontier of how software gets built, this role is for you.
Key Responsibilities• Translate feature requirements, enhancements, and product briefs into well-scoped, agent-ready specifications with clear acceptance criteria, constraints, and success conditions-including building Proof of Concepts (POCs) to validate approaches with Product Managers before full delivery begins• Operate a suite of AI agents to deliver working software-directing agents through the full delivery cycle from specification through review and validation• Review and validate agent-generated output for quality, correctness, edge case coverage, and alignment with product intent before solutions reach clients• Craft and iterate on prompts and context inputs that reliably direct agents toward high-quality outcomes across a variety of feature types• Collaborate with product managers, designers, and business stakeholders to refine requirements and ensure agents have the clarity they need to succeed• Work as an embedded technical contributor across product engineering teams, bringing agentic delivery capabilities to initiatives of varying scope and complexity• Identify recurring failure patterns in agent output and surface structured feedback to the platform team to improve harness guardrails and tooling over time• Champion quality and engineering standards in an AI-driven delivery model-advocating for rigor, transparency, and client-centered outcomes
Knowledge, Skills, and Abilities• Deep, hands-on familiarity with AI coding agents and agentic workflows-including how to direct them effectively, where they fail, and how to recover when they do• Strong ability to write precise, unambiguous specifications: requirements, acceptance criteria, and constraints that agents can act on without additional clarification• Sharp technical judgment to evaluate AI-generated code and solutions-identifying gaps, regressions, and quality issues without necessarily writing the fix yourself• Experience with prompt and context engineering as a practical discipline: iterating on inputs to produce more reliable, higher-quality agent outputs• Ability to collaborate effectively across functions-translating between the language of product, design, and engineering stakeholders with ease• Comfort operating in ambiguity and adapting quickly as tooling, workflows, and best practices evolve in real time• Strong communication and documentation habits: the ability to articulate decisions, capture context, and make agent interactions auditable and reproducible
Qualifications (Education and Experience)• Bachelor's degree in Computer Science, Engineering, or a related field (or equivalent experience)• 5+ years of software engineering experience, with a strong emphasis on directing AI coding agents to deliver production-ready software-hands-on agent management is the core of this role, not traditional coding• Demonstrated track record of delivering features or enhancements using agentic or AI-assisted workflows-not just experimenting, but shipping• Deep understanding of how large language models and coding agents behave: context windows, non-determinism, failure modes, and how harness constraints improve reliability• Experience working in enterprise B2B SaaS environments with cross-functional product and engineering teams• Familiarity with CI/CD pipelines, version control workflows, and modern software delivery practices-even if agents are doing the implementation• Experience with Microsoft Azure or Salesforce platforms is a plus, but not required
Compensation & Benefits
The annual base salary range for this position is $150,000-165,000, depending on the candidate's experience, qualifications, and relevant skill set. This role is eligible for executive-level bonus incentives and may participate in long-term incentive programs. Fusion offers a comprehensive benefits package including medical, dental, vision, and a 401(k) plan.
Fusion is an Equal Opportunity Employer. All qualified applicants will receive consideration for employment without regard to race, color, religion, disability, age, pregnancy, military service or discharge status, genetic information, sex, sexual orientation, gender identity, or national origin. Nothing in this job posting should be construed as an offer or guarantee of employment.
Fusion Engineering is building the agentic workflow that will power how our entire engineering organization delivers software. We have stood up a suite of AI agents capable of delivering features, enhancements, and bug fixes-and we are now looking for Harness Engineers to operate that system at scale and help it continuously improve.
This is not a role about building the harness from scratch. It is about becoming an expert operator of it: steering agents toward quality outcomes, translating product requirements into precise agent-ready specifications, reviewing and validating AI-generated solutions, and closing the feedback loop so the system gets smarter over time. You will be the manager in the loop-the engineer whose judgment, communication, and technical depth determines whether a feature ships with confidence.
Harness Engineers at Fusion work across the full delivery lifecycle: collaborating with product and design to scope requirements, crafting the context and prompts that direct agents, reviewing output for quality and correctness, and partnering with other engineering teams as embedded technical contributors. No two days look exactly the same-and the discipline itself is evolving fast. If you are energized by operating at the frontier of how software gets built, this role is for you.
Key Responsibilities• Translate feature requirements, enhancements, and product briefs into well-scoped, agent-ready specifications with clear acceptance criteria, constraints, and success conditions-including building Proof of Concepts (POCs) to validate approaches with Product Managers before full delivery begins• Operate a suite of AI agents to deliver working software-directing agents through the full delivery cycle from specification through review and validation• Review and validate agent-generated output for quality, correctness, edge case coverage, and alignment with product intent before solutions reach clients• Craft and iterate on prompts and context inputs that reliably direct agents toward high-quality outcomes across a variety of feature types• Collaborate with product managers, designers, and business stakeholders to refine requirements and ensure agents have the clarity they need to succeed• Work as an embedded technical contributor across product engineering teams, bringing agentic delivery capabilities to initiatives of varying scope and complexity• Identify recurring failure patterns in agent output and surface structured feedback to the platform team to improve harness guardrails and tooling over time• Champion quality and engineering standards in an AI-driven delivery model-advocating for rigor, transparency, and client-centered outcomes
Knowledge, Skills, and Abilities• Deep, hands-on familiarity with AI coding agents and agentic workflows-including how to direct them effectively, where they fail, and how to recover when they do• Strong ability to write precise, unambiguous specifications: requirements, acceptance criteria, and constraints that agents can act on without additional clarification• Sharp technical judgment to evaluate AI-generated code and solutions-identifying gaps, regressions, and quality issues without necessarily writing the fix yourself• Experience with prompt and context engineering as a practical discipline: iterating on inputs to produce more reliable, higher-quality agent outputs• Ability to collaborate effectively across functions-translating between the language of product, design, and engineering stakeholders with ease• Comfort operating in ambiguity and adapting quickly as tooling, workflows, and best practices evolve in real time• Strong communication and documentation habits: the ability to articulate decisions, capture context, and make agent interactions auditable and reproducible
Qualifications (Education and Experience)• Bachelor's degree in Computer Science, Engineering, or a related field (or equivalent experience)• 5+ years of software engineering experience, with a strong emphasis on directing AI coding agents to deliver production-ready software-hands-on agent management is the core of this role, not traditional coding• Demonstrated track record of delivering features or enhancements using agentic or AI-assisted workflows-not just experimenting, but shipping• Deep understanding of how large language models and coding agents behave: context windows, non-determinism, failure modes, and how harness constraints improve reliability• Experience working in enterprise B2B SaaS environments with cross-functional product and engineering teams• Familiarity with CI/CD pipelines, version control workflows, and modern software delivery practices-even if agents are doing the implementation• Experience with Microsoft Azure or Salesforce platforms is a plus, but not required
Compensation & Benefits
The annual base salary range for this position is $150,000-165,000, depending on the candidate's experience, qualifications, and relevant skill set. This role is eligible for executive-level bonus incentives and may participate in long-term incentive programs. Fusion offers a comprehensive benefits package including medical, dental, vision, and a 401(k) plan.
Fusion is an Equal Opportunity Employer. All qualified applicants will receive consideration for employment without regard to race, color, religion, disability, age, pregnancy, military service or discharge status, genetic information, sex, sexual orientation, gender identity, or national origin. Nothing in this job posting should be construed as an offer or guarantee of employment.
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