启动 HN: Kita (YC W26) – 在新兴市场自动化信用审核

17作者: rheamalhotra1大约 5 小时前原帖
大家好!我们是Kita的创始人Carmel和Rhea(<a href="https://www.usekita.com/">https://www.usekita.com/</a>)。我们利用VLMs(变换语言模型)为新兴市场的贷款机构自动化信用审核。 在许多新兴市场,如菲律宾和墨西哥,信用基础设施相对薄弱。开放金融仍处于起步阶段,信用局的可靠性也不高。因此,贷款机构在申请贷款时依赖借款人提交的文件来了解其还款能力。借款人可以以任何格式提交财务文件,例如银行对账单和工资单,包括PDF、实体文件的图片和截图。此外,这些市场的财务文件高度不标准化,贷款机构无法依赖一致的模板。 现有的OCR(光学字符识别)和文档人工智能工具在处理这些高度变异、杂乱的真实世界文件时常常失效。通用工具并未针对贷款工作流程(如验证、欺诈检测和风险提取)进行设计。因此,信用团队不得不依赖人工审核,导致承保过程变得更慢、更昂贵且更容易出错。 我们在大学之前就认识,并一直是最好的朋友。毕业后,Rhea访问了在菲律宾的Carmel,我们从金融科技运营者那里了解到,基于文件的承保是他们最大的痛点。我们开始一起构建,并测试了所有能找到的OCR和文档AI工具。它们在贷款机构实际收到的杂乱真实文件上都失败了,即使提取成功,它们也无法生成贷款机构所需的结构化财务数据或欺诈检查。 这个问题比我们想象的还要严重。在印度尼西亚、墨西哥、菲律宾、南非,甚至在美国,大多数贷款工作都可以归结为信用分析师查看文件。2025年,全球贷款总额达到13.3万亿美元,其中90%的交易涉及文件审核。这在发达市场中同样适用。 Kita利用基于VLM的代理解析文件、检测欺诈并从杂乱的财务文件中提取承保信号。如今,我们支持50多种文件类型,包括PDF、扫描件、照片和截图。我们的处理流程增强了低质量输入,提取结构化财务数据,并通过跨文档检查、与我们的历史数据库验证以及市场特定的欺诈检测来进行验证。 我们的架构基础VLM是模型无关的,同时,我们训练了针对每个市场的超本地化信用信号的语言模型,使用本地贷款机构的数据——每个新模型都提升了我们的基础层,每个新市场都增强了我们的整体技术栈。我们将文档级信号与还款结果关联,使我们的模型能够随着时间的推移不断改善欺诈检测和风险评估。 Kita Capture是我们为贷款机构推出的首款文档智能产品。我们还将推出Kita Credit Agent,它通过WhatsApp和电子邮件自动化借款人在贷款发放过程中的跟进,以收集缺失文件并完成贷款申请。 Kita Capture可以免费试用(需注册邮箱):<a href="https://portal.usekita.com/">https://portal.usekita.com/</a>。这里有一个快速演示:<a href="https://www.youtube.com/watch?v=4-t_UhPNAvQ" rel="nofollow">https://www.youtube.com/watch?v=4-t_UhPNAvQ</a>。 我们非常希望能收到社区的反馈,特别是如果您曾在文档AI、欺诈检测或金融科技基础设施方面工作过。感谢您的阅读!
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Hey HN! We’re Carmel and Rhea, the founders of Kita (<a href="https:&#x2F;&#x2F;www.usekita.com&#x2F;">https:&#x2F;&#x2F;www.usekita.com&#x2F;</a>). We automate credit review for lenders in emerging markets using VLMs.<p>In many emerging markets, like the Philippines and Mexico, credit infrastructure is weak. Open finance is still nascent, and credit bureaus are unreliable. So to apply for a loan, lenders rely on borrowers submitting documentation to understand their ability to repay. A borrower can submit financial documents, such as bank statements and payslips, in any format, from pdfs, images of physical documents and screenshots. On top of that, financial documents in these markets are highly unstandardized, with no consistent templates lenders can rely on.<p>Existing OCR and document AI tools break on these highly variant, messy real-world documents. Generic tools are not built for lending workflows like verification, fraud detection, and risk extraction. As a result, credit teams fall back on manual review, making underwriting slower, more expensive, and more error-prone.<p>We met before college and stayed best friends. After graduating, Rhea visited Carmel in the Philippines, where we heard firsthand from fintech operators that document-based underwriting was their biggest pain point. We started building together and tested every OCR and document AI tool we could find. They all failed on the messy real-world documents lenders actually receive, and even when extraction worked, they still could not produce the structured financial data or fraud checks lenders needed.<p>The problem was even bigger than we thought. Across Indonesia, Mexico, the Philippines, South Africa, and even in the US, most of lending can be boiled down to credit analysts looking at documents. In 2025, 13.3T was lended globally, and 90% of those transactions involved document review. This includes in developed markets.<p>Kita uses VLM-based agents to parse documents, detect fraud, and extract underwriting signals from messy financial files. Today, we support 50+ document types across PDFs, scans, photos, and screenshots. Our pipeline enhances low-quality inputs, extracts structured financial data, and verifies it through cross-document checks, validation against our historical database, and market-specific fraud detection.<p>Our architecture’s base VLM is model agnostic, and simultaneously, we train language models finetuned to hyperlocalized credit signals in each market, using localized lender data – every new model improves our base layer, and every new market makes our overall stack stronger. We link document-level signals to repayment outcomes, allowing our models to continuously improve fraud detection and risk assessment over time.<p>Kita Capture is our first document intelligence product for lenders. We’re also launching Kita Credit Agent, which automates borrower follow-up during origination over WhatsApp and email to collect missing documents and complete loan applications.<p>Kita Capture is free to try (with email signup): <a href="https:&#x2F;&#x2F;portal.usekita.com&#x2F;">https:&#x2F;&#x2F;portal.usekita.com&#x2F;</a>. Here’s a quick demo: <a href="https:&#x2F;&#x2F;www.youtube.com&#x2F;watch?v=4-t_UhPNAvQ" rel="nofollow">https:&#x2F;&#x2F;www.youtube.com&#x2F;watch?v=4-t_UhPNAvQ</a>.<p>We’d love to get feedback from the community, especially if you’ve worked on document AI, fraud detection, or fintech infrastructure. Thanks for reading!