Pelica (YC P25) 正在招聘
Pelica (YC P25) Is Hiring

原始链接: https://www.ycombinator.com/companies/pelica/jobs/MDeC49o-machine-learning-engineer

Pelica Health 是一家获得 Y Combinator 支持的初创公司,致力于构建“价值导向医疗的操作系统”。该公司由前谷歌和 YouTube 的工程负责人创立,旨在将零散的医疗数据统一整合为全面的会员记录,并辅以 AI 副驾驶,协助团队处理风险调整、药学及护理管理等工作。 他们目前正在寻找一名拥有 3 年以上经验的机器学习工程师,负责全流程的机器学习生命周期——从数据管道设计、特征工程到模型部署与监控。理想的候选人需具备扎实的后端工程技能,熟悉结构化数据,并能够平衡模型复杂性与运行稳定性。 加入 Pelica 将置身于一个高影响力的环境,你将与经验丰富的工程师并肩作战,攻克复杂的医疗难题。该职位提供极高的自主权、广阔的职业成长空间,以及构建可扩展系统以直接改善患者治疗效果的机会。如果你是一位追求实效、乐于交付生产级 AI 的问题解决者,Pelica 将为你提供一个快节奏且协作互助的团队,共同致力于医疗基础设施的现代化。

```Hacker News最新 | 过往 | 评论 | 提问 | 展示 | 招聘 | 提交登录Pelica (YC P25) 正在招聘 (ycombinator.com)2小时前 | 隐藏 指南 | 常见问题 | 列表 | API | 安全 | 法律 | 申请YC | 联系 搜索:```
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原文

About Us

Pelica Health is the operating system for value-based care. We unify claims, EHR, pharmacy, lab, and ADT data into one live record per member, then put an AI copilot next to every team that depends on it, across risk adjustment, Quality and Stars, pharmacy and Part D, provider network, and care management.

Pelica was founded by former engineering and AI leaders from Google and YouTube, including co-founders who built large-scale infrastructure and machine learning systems. You will work alongside people who built massive systems at scale, a chance to learn a lot and contribute meaningfully from day one. We are backed by Y Combinator.

We believe in solving hard problems together as a team, iterating quickly, and building software with long-term thinking and ownership.

What You'll Do

  • Build and own production machine learning systems end-to-end, from data modeling and feature engineering to training, evaluation, deployment, and monitoring.
  • Design and implement data pipelines that turn raw, messy real-world healthcare data into reliable features for machine learning models.
  • Train and evaluate models for ranking, prioritization, and prediction problems, for example identifying high-risk or high-priority cases.
  • Deploy models into production as reliable services or batch jobs, with clear versioning, monitoring, and rollback strategies.
  • Work closely with backend engineers and product leaders to integrate machine learning into real workflows and decision-making systems.
  • Make architectural decisions around model choice, evaluation metrics, retraining cadence, and system guardrails, balancing accuracy, explainability, reliability, and operational constraints.
  • Collaborate directly with founders and engineers to translate product and operational needs into scalable, maintainable machine learning solutions.

What We're Looking For

  • At least 3 years of experience building and deploying machine learning systems in production.
  • Strong foundation in machine learning for structured (tabular) data, including feature engineering, regression or classification models, and ranking or prioritization problems.
  • Experience with the full machine learning lifecycle: data preparation, train/test splitting, evaluation, deployment, retraining, and monitoring.
  • Solid backend engineering skills: writing production-quality code, building services or batch jobs, and working with databases and data pipelines.
  • Good system design instincts. You understand trade-offs between model complexity, reliability, latency, scalability, and maintainability.
  • Comfort working in a fast-paced startup environment with high ownership and ambiguity.
  • Ability to clearly explain modeling choices, assumptions, and limitations to non-machine-learning stakeholders.

Bonus:

  • Experience working with healthcare or operational decision-support systems.
  • Experience building or integrating LLM systems in production, such as retrieval-augmented generation, fine-tuning, or structured prompting workflows.
  • Prior startup experience or founder mindset. We value ownership, pragmatism, and bias toward shipping.
  • Experience with model monitoring, data drift detection, or ML infrastructure tooling.

Why Join

  • Learn from seasoned Google and YouTube engineers who have operated at massive scale. You will build similar systems and learn best practices, scale thinking, and software design deeply.
  • High impact: on a small, ambitious team, your work shapes architecture, product direction, and core features. You will have real ownership and see results quickly.
  • Grow fast: you will work across AI/ML pipelines, system architecture, data modeling, and product-level decisions, a fast track to becoming a senior engineer or technical lead.
  • Meaningful work: we are bringing modern AI to the hardest problems in healthcare, helping the teams closest to patients close care gaps and improve outcomes. If you enjoy building reliable, scalable systems that matter, this is for you.
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