Key Takeaways:
• Extend secures $17 million to grow its AI-powered platform for turning complex PDFs into clean, structured data
• Built on large language models (LLMs), the platform delivers 95%+ accuracy—even on degraded scans with handwriting and signatures
• Extend’s new self-serve offering lets teams deploy document workflows in days instead of weeks

Extend, a startup focused on modernizing how companies extract information from documents, has raised $17 million across seed and Series A rounds. Led by Innovation Endeavors and supported by Y Combinator, Character VC, and angel investors including Scott Belsky, Guillermo Rauch, and Jeff Weinstein, the new capital will support go-to-market expansion, engineering growth, and product innovation.
The company’s platform helps teams transform unstructured documents—like scanned contracts or handwritten forms—into structured, production-ready data. Extend uses a full-stack approach, built on top of LLMs, to deliver high-accuracy extraction, classification, and document splitting tools.
“Documents are where critical business data lives, but extracting that data reliably has always been difficult,” said Kushal Byatnal, CEO and co-founder. “We’re making document processing fast, accurate, and intuitive for both developers and business users.”
AI-Powered Document Intelligence, Built from Scratch
Unlike legacy OCR and rules-based systems, Extend was designed from the ground up for flexibility and adaptability. Its platform handles structured PDFs, scanned images, handwritten forms, tables, and signatures with reported accuracy rates exceeding 95%.
The newly launched self-serve version of the platform allows teams to iterate quickly, evaluate extraction quality, and build automated workflows without waiting for lengthy implementation cycles. Technical users can fine-tune models for edge cases, while business users get clear, real-time validation and error correction tools.
Extend says its customers—ranging from fintech to healthcare—have processed millions of documents using the platform. Its clients include Square, Brex, Checkr, and Flatiron Health.
Revenue-Positive and Growing Fast
According to the company, Extend is already cash-flow positive and had more annual recurring revenue before raising its Series A than it did in outside funding. That efficiency has positioned it well as document automation becomes a priority across industries.
“We built Extend for teams that care about accuracy and speed—but also need modern infrastructure to scale,” said Byatnal.
A Market in Transition
The funding comes at a time when demand for document intelligence is surging. Businesses across healthcare, finance, and logistics are accelerating digital transformation but often run into data bottlenecks caused by scanned PDFs, legacy forms, and compliance-heavy documentation.
By combining LLMs with practical tools like confidence thresholds, schema mapping, and signature detection, Extend is offering a product that’s equal parts powerful and usable.
“Extend is reimagining document intelligence,” said an investor from Innovation Endeavors. “They’re delivering accuracy, scalability, and fast deployment in a space that desperately needs all three.”
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Rich Tehrani serves as CEO of TMC and chairman of ITEXPO #TECHSUPERSHOW Feb 10-12, 2026 and is CEO of RT Advisors and is a Registered Representative (investment banker) with and offering securities through Four Points Capital Partners LLC (Four Points) (Member FINRA/SIPC). He handles capital/debt raises as well as M&A. RT Advisors is not owned by Four Points.
The above is not an endorsement or recommendation to buy/sell any security or sector mentioned. No companies mentioned above are current or past clients of RT Advisors.
The views and opinions expressed above are those of the participants. While believed to be reliable, the information has not been independently verified for accuracy. Any broad, general statements made herein are provided for context only and should not be construed as exhaustive or universally applicable.
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