Kumo Lands $18 Million Series B Led by Sequoia

<p><strong>SAN FRANCISCO<&sol;strong> &&num;8212&semi; Kumo&comma; a graph machine learning-centered AI platform that allows anyone in an organization to harness the power of data to make faster&comma; simpler&comma; and smarter predictions&comma;  has raised &dollar;18 million in Series B funding led by Sequoia Capital&period; This latest round also includes participation and&sol;or advisorship from existing and new investors including A Capital&comma; SV Angel&comma; Ron Conway&comma; Michael Ovitz&comma; Frank Slootman&comma; Kevin Hartz&comma; Clement Delangue&comma; and Michael Stoppelman&comma; among others&period;<&sol;p>&NewLine;<p>Kumo plans to use the new funding to continue its hiring efforts&comma; bring its leading AI technology to more companies&comma; and invest in R&amp&semi;D efforts to expand its platform and services&period; On October 16&comma; anyone can sign up for Kumo’s first release of the product via Kumo’s website&period;<&sol;p>&NewLine;<p>&OpenCurlyDoubleQuote;Kumo brings a new paradigm for predictive AI over cloud-based data powered by graph ML which we are thrilled to be in a position to introduce more broadly to the world&comma;&&num;8221&semi; said Vanja Josifovski&comma; Co-Founder and CEO&period; &&num;8220&semi;We are building a platform that is end-to-end&comma; automating every step from ingesting data from source systems all the way to making predictions that can directly help businesses grow faster and operate more efficiently&period; Democratization of AI to all users regardless of machine learning &lpar;ML&rpar; experience has been the promise for a long time&comma; but our unique approach&comma; leveraging the inherent connectedness of your data&comma; is the first to truly deliver on that promise&period; The Kumo product is also a huge win for CTOs and Chief Data Officers&comma; allowing their colleagues in other parts of the business to harness the predictive power of AI by their teams directly rather than needing to constantly rely on the data team&period;”<&sol;p>&NewLine;<p>The Kumo platform enables all non-technical and technical users&comma; regardless of ML experience&comma; to traverse all the major steps of a best practice ML lifecycle&comma; with just three steps&colon; &lpar;1&rpar; One-click ingestion of raw data tables from a wide variety of underlying source systems&comma; &lpar;2&rpar; Creating a &&num;8216&semi;Kumo Graph&&num;8217&semi; defining how different ingested tables connect to each other&comma; and &lpar;3&rpar; Querying the future as easily as you query the past today in SQL&comma; through its Predictive Querying language&period;<&sol;p>&NewLine;<p>With this dramatically simplified workflow&comma; users can immediately tackle a wide variety of predictive problems all in a single sitting&comma; in application areas such as new customer acquisition&comma; customer loyalty and retention&comma; personalization and next best action&comma; entity resolution and knowledge graph curation&comma; abuse detection&comma; financial crime detection&comma; generation of ML features for data science teams&comma; and more&period;<&sol;p>&NewLine;<p>Under the hood&comma; Kumo automates data preparation&comma; feature engineering&comma; neural architecture search&comma; model evaluation&comma; prediction-specific explainability&comma; and deployment for predictions&period; By doing so&comma; Kumo makes predictive tasks as easy as analytics tasks&comma; thus revolutionizing enterprise AI just as data warehouses revolutionized analytics&period;<&sol;p>&NewLine;<p>With a combined 50 plus years of experience in the AI and data field&comma; Kumo’s founding team has seen firsthand the incredible power of graph learning for AI and business ROI &&num;8212&semi; and also the massive effort to implement a single&comma; production-quality predictive model due to cost and time&period; To tackle this opportunity&comma; Kumo recently rolled out an early version of its product to a first wave of pilot enterprise customers&comma; many of whom have already seen promising results across use cases for customer churn and LTV prediction&comma; affinity modeling&comma; personalization&comma; and more&period;<&sol;p>&NewLine;<p>&OpenCurlyDoubleQuote;At Whatnot&comma; AI plays a critical role in personalizing the shopper experience&comma; driving cross-sell across categories and predicting future aggregate shopper behavior so we can shape our broader marketplace&comma;” said Ludo Antonov&comma; VP of Engineering at Whatnot<i>&period; &OpenCurlyDoubleQuote;<&sol;i>To this end&comma; we are working with Kumo to deliver a service that is truly ground-breaking&comma; allowing us to not only quickly launch these needed predictions with their very simple predictive querying language and accompanying APIs&comma; but also drive dramatic model quality gains&comma; including a doubling of both precision and recall over existing baselines in initial experiments&period; We&&num;8217&semi;ve been thrilled by the progress so far&comma; and the ability of the Kumo product to allow even non-technical teams to harness the power of AI from our data in the future&period;”<&sol;p>&NewLine;<p>The core graph ML technology that underpins Kumo’s product has been in development for the past five years through Stanford and Dortmund University AI labs and <a href&equals;"https&colon;&sol;&sol;cts&period;businesswire&period;com&sol;ct&sol;CT&quest;id&equals;smartlink&amp&semi;url&equals;http&percnt;3A&percnt;2F&percnt;2Fpyg&period;org&amp&semi;esheet&equals;52920234&amp&semi;newsitemid&equals;20220927005002&amp&semi;lan&equals;en-US&amp&semi;anchor&equals;Py&amp&semi;index&equals;2&amp&semi;md5&equals;938d09c477b45cdf3b4a618ef76f4cb8" target&equals;"&lowbar;blank" rel&equals;"nofollow noopener" shape&equals;"rect">Py<&sol;a><a href&equals;"https&colon;&sol;&sol;cts&period;businesswire&period;com&sol;ct&sol;CT&quest;id&equals;smartlink&amp&semi;url&equals;http&percnt;3A&percnt;2F&percnt;2Fpyg&period;org&amp&semi;esheet&equals;52920234&amp&semi;newsitemid&equals;20220927005002&amp&semi;lan&equals;en-US&amp&semi;anchor&equals;torch&plus;Geometric&amp&semi;index&equals;3&amp&semi;md5&equals;f0dd4f3999ddff3ea44bb45538174d9f" target&equals;"&lowbar;blank" rel&equals;"nofollow noopener" shape&equals;"rect">torch Geometric<&sol;a> open-source software&comma; the world’s most widely used graph neural network open source framework&period; Kumo’s three founders&comma; Josifovski &lpar;former Airbnb CTO Homes&comma; Pinterest CTO&comma; Google&rpar;&comma; Jure Leskovec &lpar;Stanford professor&comma; former Pinterest Chief Scientist&rpar;&comma; and Hema Raghavan&comma; &lpar;former executive at LinkedIn&comma; IBM&comma; Yahoo&rpar; saw a tremendous opportunity to take graph learning expertise from an academic setting and operationalize that research for a broad set of use cases in a more user-friendly SaaS product&period;<&sol;p>&NewLine;

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