The #1 free app for everyday #wellbeing.
Senior Clinical AI Engineer
Location
Australia
Posted
6 days ago
Salary
0
Seniority
Senior
No structured requirement data.
Job Description
Senior Clinical AI Engineer
Insight Timer
Role Description We’re looking for a Senior Clinical AI Engineer to help build the next generation of intelligent wellbeing experiences for Insight Timer, the world’s largest meditation and wellness community, with over 30 million users. This is a rare hybrid role for someone who can both build production-grade AI systems and bring real clinical, psychological, medical, or mental health research judgment to the work. You’ll work directly with our Head of AI, backend engineers, product team, and clinical research collaborators to design and ship AI-powered experiences that are technically robust, clinically thoughtful, evidence-informed, and useful for real people. This is not a pure research, data science, or advisory role. You will be hands-on building agentic AI workflows, integrating with backend systems, designing evaluation and monitoring infrastructure, and helping turn prototypes into reliable product experiences. But unlike a standard AI engineering role, you will also help shape the clinical and wellbeing logic behind those systems: - How they reason - What they recommend - What they avoid - When they escalate - How we evaluate quality and safety We’re looking for someone who is comfortable moving between code, product, clinical reasoning, and research evidence. You might have a background in: - Software engineering plus psychology - Medicine - Psychiatry - Behavioral science - Neuroscience - Digital health - Mental health research - Meditation - Mindfulness - Wellbeing science If you’re motivated by the challenge of building safe, reliable, high-impact AI systems for meditation, mental health, and wellbeing at global scale, we’d love to meet you. Key Responsibilities - Design, build, and ship production-grade AI agents for meditation, wellbeing, mental health, sleep, anxiety, stress, and behavior change. - Build agentic workflows that combine technical reliability with clinical and evidence-informed reasoning. - Integrate AI agents with backend APIs, data systems, content systems, and product surfaces. - Build evaluation, testing, and monitoring systems for reliability, safety, quality, and continual improvement. - Design clinical and wellbeing evaluation rubrics for AI outputs, including clarity, usefulness, safety, evidence alignment, and risk. - Work with the Head of AI, clinical research team, product, and engineers to translate clinical and research requirements into product and system design. - Identify risks in AI-generated wellbeing outputs, including unsupported claims, unsafe recommendations, overstatement, inappropriate advice, and poor handling of vulnerable users. - Improve prompts, tools, agent workflows, and retrieval systems based on both engineering performance and clinical/product quality. - Architect flexible, modular workflows that make it easy to test, extend, and improve AI capabilities. - Help define when agentic systems should answer, ask for more context, escalate, refuse, or redirect. - Design data and feedback pipelines that improve agent performance through real-world usage, evaluation, and, where appropriate, fine-tuning. - Translate early AI prototypes into scalable, maintainable product systems used by millions of people. - Help shape Insight Timer’s internal standards for building safe, evidence-informed AI wellbeing products. Qualifications - 5+ years of software engineering experience, including production experience with AI agents, LLM-based systems, or AI-powered workflows. - Strong Python fundamentals and experience building reliable backend systems, APIs, or distributed workflows. - Hands-on experience with agent frameworks, orchestration tools, evaluation pipelines, prompt engineering, retrieval systems, or LLM application architecture. - Formal training, research experience, or applied expertise in psychology, medicine, psychiatry, neuroscience, behavioral science, digital health, mental health, meditation, mindfulness, or wellbeing science. - Strong judgment around clinical or wellbeing claims, evidence quality, risk, user vulnerability, and real-world applicability. - Comfortable evaluating AI outputs not only for technical correctness, but also for safety, clarity, appropriateness, and evidence alignment. - Able to translate clinical, psychological, or research concepts into product requirements, prompts, workflows, and engineering decisions. - Comfortable working across engineering, product, research, and clinical domains. - Pragmatic and product-minded. You know when to move quickly, when to slow down, and when quality or safety needs to come first. - Motivated by building systems that help millions of people live healthier, calmer, and more meaningful lives. Benefits - We offer competitive salaries and options. - The role is fully remote, but you must be based in Australia. - Extra leave days are available for your well-being and birthday. - A generous L&D budget and wellbeing bonus. - We host a global company retreat every other year.
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Role Description We’re looking for a Senior AI Engineer to help build the next generation of intelligent experiences for Insight Timer, the world’s largest meditation and wellness community, with over 30 million users. You’ll work directly with our Head of AI and backend engineers to turn ambitious ideas into production-grade systems that make a real impact on people’s wellbeing. This role is focused on building, scaling, and operating real AI systems, not a research or data science position. You’ll: - Design and deploy agent workflows - Integrate them with our backend APIs - Build the evaluation and monitoring infrastructure that keeps them reliable at scale - Help define the frameworks, tools, and practices that shape how AI gets built across Insight Timer We’re a fast-moving team that values thoughtful engineering and real-world results. You’ll have the autonomy to make pragmatic tradeoffs, sometimes moving quickly to ship, sometimes investing deeply in quality and stability, always guided by what best serves our users. If you’re motivated by the challenge of building reliable, high-impact systems that reach millions, we’d love to meet you. Key Responsibilities - Design, build, and ship production-grade AI agents that interact with real users and systems at scale. - Build evaluation, testing, and monitoring systems to ensure agent reliability, safety, and continual improvement. - Architect flexible, modular workflows that make it easy to extend and iterate on AI capabilities. - Integrate agents with existing backend APIs and data systems, collaborating with backend engineers to expose the right capabilities. - Translate early AI prototypes into scalable, maintainable production systems used by millions of people. - Take ownership of Insight Timer’s GenAI infrastructure, shaping best practices, frameworks, and internal tooling. - Design data and feedback pipelines that help improve agent performance through real-world usage and, when appropriate, fine-tuning. - Stay current with emerging agent frameworks and infrastructure approaches, such as LangGraph, CrewAI, and AutoGen, adopting new techniques when they support product goals. Qualifications - 5+ years of experience in software engineering, including at least one production system involving AI agents or LLM-based automation. - Strong Python fundamentals. You write clear, reliable code, and know how to move fast without losing sight of maintainability. - Solid understanding of software design principles, modular architecture, and system integration. - Experience building or operating backend services, APIs, or distributed workflows in production. - Familiarity with agent frameworks such as LangGraph, CrewAI, AutoGen, or confidence learning similar systems quickly. - Comfortable designing evaluation, monitoring, and feedback pipelines to keep systems improving over time. - Thrive in a fast-paced environment where pragmatic trade-offs and iteration speed matter. - Motivated by impact. You care about building reliable systems that help millions live healthier, more meaningful lives. Benefits - We offer competitive salaries and options. - The role is fully remote, but you must be based in Australia. - Extra leave days are available for your well-being and birthday. - A generous L&D budget and wellbeing bonus. - We host a global company retreat each year.
• Design, build, and ship production-grade AI agents that interact with real users and systems at scale. • Build evaluation, testing, and monitoring systems to ensure agent reliability, safety, and continual improvement. • Architect flexible, modular workflows that make it easy to extend and iterate on AI capabilities. • Integrate agents with existing backend APIs and data systems, collaborating with backend engineers to expose the right capabilities. • Translate early AI prototypes into scalable, maintainable production systems used by millions of people. • Take ownership of Insight Timer’s GenAI infrastructure, shaping best practices, frameworks, and internal tooling. • Design data and feedback pipelines that help improve agent performance through real-world usage and, when appropriate, fine-tuning. • Stay current with emerging agent frameworks and infrastructure approaches, such as LangGraph, CrewAI, and AutoGen, adopting new techniques when they support product goals.


