Launch HN: Risely (YC S25) – 面向大学的 AI 智能体
10 分•作者: danialasif•9 个月前
大家好,我是 Danial,Risely AI(<a href="https://risely.ai">https://risely.ai</a>)的联合创始人兼首席技术官。我们正在构建 AI 智能体,以自动化大学内部的运营工作流程。这里有一个演示:<a href="https://www.loom.com/share/d7a14400434144c490249d665a0d0499?sid=8d36736e-6c87-43d3-992d-203c6edb0cf9" rel="nofollow">https://www.loom.com/share/d7a14400434144c490249d665a0d0499?...</a>。
高等教育领域充满了低效率。每个部门都在使用过时的系统,这些系统之间无法互通。如今,辅导员需要从 PeopleSoft 或 Ellucian 中查找注册数据,在 Canvas 中查看成绩和作业,并尝试在 CRM 中跟踪学生参与度(如果他们有 CRM 的话)。通常,他们只能依靠电子表格和电子邮件。一位辅导员告诉我们,他们每周要花 8 个多小时来回答:“哪些学生遇到了困难?”。由于这种滞后性,学生很容易被忽视,而每个流失的学生都会给学校带来学费损失。
过去十年,我一直在构建大型系统,但大约一年前,我辞去了工作,开始构建一些个人项目。我在加州大学伯克利分校的经历强化了我的父母移民到美国时教我的东西——教育是向上流动的最强大工具。但近 40% 的学生无法毕业。许多学生有能力,只是需要支持,但旨在支持他们的系统却不堪重负,并且已经崩溃。
因此,我们创建了 Risely。我们的第一个智能体专注于学术辅导和学生保留。它连接到学校的系统,统一数据,标记高危学生,起草外展活动,并用自然语言回答有关案例量和课程进度的提问。它为工作人员提供了杠杆作用并节省了时间,同时帮助更多学生保持学习进度。
更难的部分在于幕后的一切:
* 连接到具有不一致 API 和数据模型的陈旧 SIS、LMS 和 CRM 系统
* 将混乱的机构数据规范化为智能体可以推理的数据
* 处理有关 FERPA 的实际策略约束,隔离租户数据,并满足学生 PII 的严格安全和隐私标准
* 设计可追溯、可审查且可在生产环境中安全运行的智能体工作流程
* 构建能够适应不同机构规则、流程和边缘情况的基础设施
我们从辅导开始,因为学生保留与收入和学生成功直接相关。但同样的基础也适用于注册、招生、经济援助、研究管理和其他关键职能。随着更多智能体上线,它们可以开始相互协调,并有望改善学院或大学的整体运营。
如果您使用 LLM 构建了必须协调混乱数据、不一致工作流程或策略约束的系统,我们很乐意听取您的方法。
我们很乐意听取您对上述内容的看法,以及您对这个领域的任何想法!
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Hi HN, I’m Danial, co-founder and CTO of Risely AI (<a href="https://risely.ai">https://risely.ai</a>). We're building AI agents that automate operational workflows inside universities. Here’s a demo: <a href="https://www.loom.com/share/d7a14400434144c490249d665a0d0499?sid=8d36736e-6c87-43d3-992d-203c6edb0cf9" rel="nofollow">https://www.loom.com/share/d7a14400434144c490249d665a0d0499?...</a>.<p>Higher ed is full of inefficiencies. Every department runs on outdated systems that don’t talk to each other. Today, advising staff are looking up enrollment data in PeopleSoft or Ellucian, checking grades and assignments in Canvas, and trying to track engagement in a CRM, if they even have one. Often, it’s just spreadsheets and email. One advisor told us they were losing 8+ hours/week just trying to answer: “Which students are struggling?”. During that lag, students slip through the cracks, and every lost student costs a school tuition.<p>I’ve spent the last decade building large-scale systems, but about a year ago, I left my job to build something personal. My time at UC Berkeley reinforced what my parents taught me when we immigrated to the U.S. - that education is the most powerful tool for upward mobility. But nearly 40% of students never graduate. Many of these students are capable and just need support, but the systems meant to support them are overwhelmed and broken.<p>So we built Risely. Our first agent focuses on academic advising and retention. It connects to a school’s systems, unifies the data, flags at-risk students, drafts outreach, and answers natural-language questions about caseloads and course progress. It gives staff leverage and time back, while helping more students stay on track.<p>The harder part is everything under the hood:
- Connecting to archaic SIS, LMS, and CRM systems with inconsistent APIs and data models
- Normalizing messy institutional data into something agents can reason over
- Handling real policy constraints around FERPA, isolating tenant data, and meeting strict security and privacy standards for student PII
- Designing agent workflows that are traceable, reviewable, and safe to run in production
- Building infrastructure that can adapt to different institutional rules, processes, and edge cases.<p>We started with advising because retention ties directly to both revenue and student success. But the same foundation applies to registrar, admissions, financial aid, research administration, and other critical functions. As more agents come online, they can begin to coordinate with each other and hopefully improve the entire operations of a college or university.<p>If you’ve built systems that had to reconcile messy data, inconsistent workflows, or policy constraints using LLMs, we’d love to hear how you approached it.<p>We’d love to hear your thoughts about the above, and anything in this space!