Senior AI & ML Engineer

Full-time
USA
$194k-$228k per year
Senior Level
Posted 6 hours ago
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About Us:
Live experiences help people cross today’s digital divide and focus on what truly connects us – the here, the now, this once-in-a-lifetime moment that’s bringing us together. To fulfill Gametime’s mission of uniting the world through shared experiences, we make it easy for people to discover and access the live experiences that matter most.
With platforms on iOS, Android, mobile web and desktop supporting more than 60,000 events across the US and Canada, we are reimagining the event ticket industry in order to move at the speed of life.

Engineering at Gametime

You will be a key contributor to the Engineering team responsible for building and maintaining the AI and ML platforms that help power the Gametime experience for millions of users. We empower engineers to take full ownership of their code and foster a culture grounded in testing, code reviews, observability, experimentation, and operational excellence. At Gametime, we value collaboration, inclusivity, and the strength of diverse perspectives — creating an environment where people love to build together.

The Role

The Senior AI & ML Engineer is responsible for building and scaling the agentic platform that powers Gametime's conversational experiences and agentic workflows. This person will design, ship, and evaluate LLM-powered features that real customers interact with, touching everything from orchestration and tool use to eval frameworks that keep quality high as the platform evolves. The ideal candidate moves fast without creating tech debt, thrives in ambiguity where goals are clear but implementation is open, and has a track record of putting LLM-powered products into production. 

Key Responsibilities:

  • Design, build, and ship LLM-powered features and agentic workflows that serve real Gametime users in production.
  • Build and maintain evaluation frameworks, prompt testing pipelines, and regression suites that ensure quality and reliability of AI-powered experiences.
  • Contribute to the orchestration layer, including agent routing, tool use, state management, and multi-step workflow coordination.
  • Develop and optimize prompt optimization strategies, structured outputs, and LLM integration patterns across the platform.
  • Propose architecture decisions and technical designs for review by the team's tech lead, balancing speed with long-term maintainability.
  • Collaborate cross-functionally with product, engineering, and data teams to translate customer needs into AI system design.
  • Stay current with the rapidly evolving LLM and agentic AI landscape, bringing practical new techniques into the team's toolkit.

Key Competencies:

List the specific competencies (skills, behaviors, and abilities) required for success in this role, organized into key areas. Each competency should have a description that connects directly to the tasks in the job.

Technical Skills:

  • Production LLM Engineering: Proven experience shipping LLM-powered features to real users, including prompt engineering, tool use / function calling, structured outputs, and retrieval patterns.
  • Evaluation & Testing: Hands-on experience building eval frameworks, prompt regression suites, LLM-as-judge pipelines, or similar quality infrastructure for AI systems.
  • Python Proficiency: Deep fluency in Python as the primary development language, including familiarity with LLM SDKs and multi-agent frameworks such as OpenAI Agents SDK.
  • Backend & Infrastructure: Solid backend engineering fundamentals including APIs, state management, data pipelines, and cloud infrastructure.
  • AI-First Engineering: You use AI agents daily to ship code. Experience with Claude Code, Codex, Cursor, or similar agentic coding tools is required. You direct agents, review their output, and help the team accelerate the development lifecycle.
  • AI-Augmented Development Practices: Own and evolve our AI-augmented development practices. You’ll build the context files, guardrails, review processes, and test strategies that make agent-driven development safe and fast.
  • Agentic Development Leadership: You don’t just use AI tools - you teach others how. You’ve helped a team adopt agentic workflows, built prompt libraries, or established review processes for agent-generated code.

Interpersonal Skills:

  • Collaborative Ownership: Contributes effectively to larger initiatives. Comfortable proposing solutions and iterating based on feedback from a tech lead.
  • Clear Communication: Articulates technical decisions, tradeoffs, and progress concisely to both technical and non-technical stakeholders.

Mentorship: You can teach others. We shouldn’t need to teach you AI-first — you should be teaching us.

Problem-Solving and Decision-Making:

  • Pragmatic Builder: Balances speed with quality. Ships fast without leaving a trail of tech debt. Knows when to cut corners and when not to.
  • High Agency: You move without permission. High agency, low drama. You take responsibility for outcomes in ambiguous situations.

Minimum Qualifications:

Define the minimum educational and experiential requirements necessary to apply for the role.

  • Education: Bachelor’s degree in Computer Science, Engineering, or a related field.
  • Experience: 5–8 years of professional software engineering experience, with at least 1 year of building LLM-powered or AI/ML systems in production.]
  • Other Requirements: [Skills like language proficiency, technical tools]

Preferred Qualifications:

Include any additional qualifications or experience that are not essential but would be beneficial.

  • Experience:
    • Hands-on experience with multi-agent orchestration patterns (handoffs, agents-as-tools), tool-use frameworks, or complex agentic workflow coordination.
    • Prior experience with ML model serving infrastructure, feature stores, or ML data pipelines.

Performance Metrics:

Outline specific measures of success in the role. These should be aligned with the key competencies and job responsibilities.

AI Delivery: Directly contribute to the buildout of the AI build team’s weekly ship goals and leverage learnings to build out platform featuresAI First: Contribute to direct team-related code repos reaching Level 4 by building context files, implementing automated checks to act as agent guardrails, and reducing PR review times through agentic workflows.AI Advisor: Serve as a technical advisor to other teams that are building out agents and agentic workflows. Help teams implement best practices – everything from tracing LLMs and token management to evaluation datasets and building LLMs as a judge.

At Gametime pay ranges are subject to change and assigned to a job based on specific market median of similar jobs according to 3rd party salary benchmark surveys. Individual pay within that range can vary for several reasons including skills/capabilities, experience, and available budget.

United States - Pay Range
$194,000$228,000 USD

Gametime is committed to bringing together individuals from different backgrounds and perspectives. We strive to create an inclusive environment where everyone can thrive, feel a sense of belonging, and do great work together. As an equal opportunity employer, we prohibit any unlawful discrimination against a job applicant on the basis of their race, color, religion, veteran status, sex, parental status, gender identity or expression, transgender status, sexual orientation, national origin, age, disability or genetic information. We respect the laws enforced by the EEOC and are dedicated to going above and beyond in fostering diversity across our company.

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About the Job
Full-time
USA
Senior Level
$194k-$228k per year
Posted 6 hours ago
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Senior AI & ML Engineer

About Us:
Live experiences help people cross today’s digital divide and focus on what truly connects us – the here, the now, this once-in-a-lifetime moment that’s bringing us together. To fulfill Gametime’s mission of uniting the world through shared experiences, we make it easy for people to discover and access the live experiences that matter most.
With platforms on iOS, Android, mobile web and desktop supporting more than 60,000 events across the US and Canada, we are reimagining the event ticket industry in order to move at the speed of life.

Engineering at Gametime

You will be a key contributor to the Engineering team responsible for building and maintaining the AI and ML platforms that help power the Gametime experience for millions of users. We empower engineers to take full ownership of their code and foster a culture grounded in testing, code reviews, observability, experimentation, and operational excellence. At Gametime, we value collaboration, inclusivity, and the strength of diverse perspectives — creating an environment where people love to build together.

The Role

The Senior AI & ML Engineer is responsible for building and scaling the agentic platform that powers Gametime's conversational experiences and agentic workflows. This person will design, ship, and evaluate LLM-powered features that real customers interact with, touching everything from orchestration and tool use to eval frameworks that keep quality high as the platform evolves. The ideal candidate moves fast without creating tech debt, thrives in ambiguity where goals are clear but implementation is open, and has a track record of putting LLM-powered products into production. 

Key Responsibilities:

  • Design, build, and ship LLM-powered features and agentic workflows that serve real Gametime users in production.
  • Build and maintain evaluation frameworks, prompt testing pipelines, and regression suites that ensure quality and reliability of AI-powered experiences.
  • Contribute to the orchestration layer, including agent routing, tool use, state management, and multi-step workflow coordination.
  • Develop and optimize prompt optimization strategies, structured outputs, and LLM integration patterns across the platform.
  • Propose architecture decisions and technical designs for review by the team's tech lead, balancing speed with long-term maintainability.
  • Collaborate cross-functionally with product, engineering, and data teams to translate customer needs into AI system design.
  • Stay current with the rapidly evolving LLM and agentic AI landscape, bringing practical new techniques into the team's toolkit.

Key Competencies:

List the specific competencies (skills, behaviors, and abilities) required for success in this role, organized into key areas. Each competency should have a description that connects directly to the tasks in the job.

Technical Skills:

  • Production LLM Engineering: Proven experience shipping LLM-powered features to real users, including prompt engineering, tool use / function calling, structured outputs, and retrieval patterns.
  • Evaluation & Testing: Hands-on experience building eval frameworks, prompt regression suites, LLM-as-judge pipelines, or similar quality infrastructure for AI systems.
  • Python Proficiency: Deep fluency in Python as the primary development language, including familiarity with LLM SDKs and multi-agent frameworks such as OpenAI Agents SDK.
  • Backend & Infrastructure: Solid backend engineering fundamentals including APIs, state management, data pipelines, and cloud infrastructure.
  • AI-First Engineering: You use AI agents daily to ship code. Experience with Claude Code, Codex, Cursor, or similar agentic coding tools is required. You direct agents, review their output, and help the team accelerate the development lifecycle.
  • AI-Augmented Development Practices: Own and evolve our AI-augmented development practices. You’ll build the context files, guardrails, review processes, and test strategies that make agent-driven development safe and fast.
  • Agentic Development Leadership: You don’t just use AI tools - you teach others how. You’ve helped a team adopt agentic workflows, built prompt libraries, or established review processes for agent-generated code.

Interpersonal Skills:

  • Collaborative Ownership: Contributes effectively to larger initiatives. Comfortable proposing solutions and iterating based on feedback from a tech lead.
  • Clear Communication: Articulates technical decisions, tradeoffs, and progress concisely to both technical and non-technical stakeholders.

Mentorship: You can teach others. We shouldn’t need to teach you AI-first — you should be teaching us.

Problem-Solving and Decision-Making:

  • Pragmatic Builder: Balances speed with quality. Ships fast without leaving a trail of tech debt. Knows when to cut corners and when not to.
  • High Agency: You move without permission. High agency, low drama. You take responsibility for outcomes in ambiguous situations.

Minimum Qualifications:

Define the minimum educational and experiential requirements necessary to apply for the role.

  • Education: Bachelor’s degree in Computer Science, Engineering, or a related field.
  • Experience: 5–8 years of professional software engineering experience, with at least 1 year of building LLM-powered or AI/ML systems in production.]
  • Other Requirements: [Skills like language proficiency, technical tools]

Preferred Qualifications:

Include any additional qualifications or experience that are not essential but would be beneficial.

  • Experience:
    • Hands-on experience with multi-agent orchestration patterns (handoffs, agents-as-tools), tool-use frameworks, or complex agentic workflow coordination.
    • Prior experience with ML model serving infrastructure, feature stores, or ML data pipelines.

Performance Metrics:

Outline specific measures of success in the role. These should be aligned with the key competencies and job responsibilities.

AI Delivery: Directly contribute to the buildout of the AI build team’s weekly ship goals and leverage learnings to build out platform featuresAI First: Contribute to direct team-related code repos reaching Level 4 by building context files, implementing automated checks to act as agent guardrails, and reducing PR review times through agentic workflows.AI Advisor: Serve as a technical advisor to other teams that are building out agents and agentic workflows. Help teams implement best practices – everything from tracing LLMs and token management to evaluation datasets and building LLMs as a judge.

At Gametime pay ranges are subject to change and assigned to a job based on specific market median of similar jobs according to 3rd party salary benchmark surveys. Individual pay within that range can vary for several reasons including skills/capabilities, experience, and available budget.

United States - Pay Range
$194,000$228,000 USD

Gametime is committed to bringing together individuals from different backgrounds and perspectives. We strive to create an inclusive environment where everyone can thrive, feel a sense of belonging, and do great work together. As an equal opportunity employer, we prohibit any unlawful discrimination against a job applicant on the basis of their race, color, religion, veteran status, sex, parental status, gender identity or expression, transgender status, sexual orientation, national origin, age, disability or genetic information. We respect the laws enforced by the EEOC and are dedicated to going above and beyond in fostering diversity across our company.