Nanonets Raises $29M from Accel to create Autonomous AI Agent for back office operations
Nanonets
Nanonets, a leading AI-based workflow automation platform, raised $29 million in a Series B funding round led by Accel. The funding round also saw participation from existing investors Elevation Capital, YCombinator and others. This takes the total funding raised till date to $42M. Over the last 2 years, Nanonets has seen extensive growth in their customer base, with over 34% of the Global Fortune 500 companies having used their AI-based workflow automation platform across Finance, Accounting, Operations and several other business use-cases. Their user base has grown 4x in the last 12 months. "The internet was going to kill paper but businesses today are producing more documents than ever, just in new forms. Email, PDF contracts, whitepapers, etc. There are millions of highly skilled professionals stuck looking for needles in haystacks and entering this data from these documents into different software. Nanonets uses cutting edge AI to automate these different processes. We are taking the most repetitive and mundane office work and automating it” said Sarthak Jain, CEO and Co-Founder of Nanonets. A majority of Nanonets’ revenue comes from automating finance processes such as Accounts Payable, Reconciliation, etc. A typical invoice takes 15 minutes to process manually, with processes such as entering an invoice into the ERP, matching against the purchase order, GL-code lookup followed by approvals; Nanonets brings this down to under a minute. Nanonets’ primary innovation is their ability to guarantee Straight Through Processing (STP), the percentage of data processed without any manual intervention. Other Generative LLMs tend to struggle with STP due to data hallucinations, hindering the large-scale adoption of Autonomous Agents for end-to-end tasks. The Turing test has evolved from humans being unable to differentiate an AI in conversation to humans being unable to differentiate an AI in performing tasks. Nanonets' Autonomous agents excel at performing tasks end-to-end. Additionally, their models, unlike other LLMs, learn instantly from new information, eliminating the need for complex training. Processing millions of documents monthly, Nanonets delivers over 90% STP rate, leading to significant productivity and cost savings. Abhinav Chaturvedi, partner at Accel, said, “We are thrilled to partner with Nanonets in their mission to revolutionize back-office operations with AI. Sarthak and his team have been dedicated to getting to the bottom of customer pain-points, and have built a powerful solution that fully automates business processes end-to-end. Nanonets stood out to us due to its comprehensive platform and its capability for Straight Through Processing (STP)- these qualities set Nanonets apart in the field of automation and have already demonstrated their positive impact to customers." About Nanonets Nanonets is a leading provider of intelligent automation solutions, revolutionizing business processes across industries. With a no-code platform and learnable decision engines, Nanonets enables organizations to make faster decisions and achieve unprecedented efficiency. Founded by Sarthak Jain and Prathamesh Juvatkar in 2017, Nanonets is headquartered in San Francisco. Learn more at https://nanonets.com About Accel Accel is a global venture capital firm that invests in people and their companies from the earliest days through all phases of private company growth. Investing in India for more than a decade, they have been the first, or among the earliest partners to many category-defining startups such as: Acko, Blackbuck, BrowserStack, Chargebee, CultFit, FalconX, Infra.Market, Moglix, Spinny, Swiggy, UrbanCompany, Zetwerk, and others. Accel helps ambitious entrepreneurs build innovative and durable businesses. More at https://www.accel.com/india-home Contact Details Nanonets Bilal Mahmood +44 7714 007257 b.mahmood@stockwoodstrategy.com Company Website https://nanonets.com/
March 12, 2024 09:00 AM Eastern Daylight Time
Image