NEW YORK - February 17, 2020 -- Today Dataiku, one of the world's most advanced Enterprise AI platforms, was named a Leader in the Gartner 2020 Magic Quadrant for Data Science and Machine-Learning Platforms. Dataiku credits its placement to its completeness of vision and ability to execute. This marks the fourth consecutive year of Dataiku’s inclusion in the report and the first year in the Leaders quadrant.
Data democratization via collaboration across and among people of different skillsets has been at the core of Dataiku since its inception. Throughout 2019, Dataiku has allowed organizations to bring even more scalability and elasticity to this vision with more robust features around white box AI and regulatory compliance.
“At Dataiku, we are always looking at what’s next and how we can help organizations not just get started with Enterprise AI, but build a sustainable, responsible, and flexible strategy that will work this year and 10+ years in the future, no matter what happens next in the AI space. We believe that being named a Leader by Gartner validates this approach,” said Florian Douetteau, Dataiku CEO. “In 2020, we’re looking forward to helping even more companies build their path to Enterprise AI, turning data into an organizational asset with the only truly end-to-end, collaborative solution on the market.”
Today, more than 300 customers across retail, e-commerce, health care, finance, transportation, the public sector, manufacturing, pharmaceuticals, and more use Dataiku to massively scale AI efforts. In December 2019, following the release of Dataiku 6, the company announced that CapitalG - the late-stage growth venture capital fund financed by Alphabet Inc. - joined Dataiku as an investor and that it had achieved unicorn status, valued at $1.4 billion. Dataiku currently employs more than 400 people worldwide between offices in New York, Paris, London, Munich, Sydney, and Singapore.
Learn more about Dataiku and get a complimentary copy of the Gartner 2020 Magic Quadrant for Data Science and Machine-Learning Platforms here, or visit Dataiku at Gartner’s Data & Analytics Summit 2020, February 17-18 in Sydney and March 23-26 in Grapevine, TX.
Gartner, Magic Quadrant for Data Science and Machine-Learning Platforms, Peter Krensky, Pieter den Hamer, Erick Brethenoux, Jim Hare, Carlie Idoine, Alexander Linden, Svetlana Sicular, Farhan Choudhary, 11 February 2020.The report was previously titled Magic Quadrant for Data Science Platforms.
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About the Gartner Data & Analytics Summit: Data and analytics leaders are fueling digital transformation, creating monetization opportunities, improving the customer experience and reshaping industries. The Gartner Data & Analytics Summit provides the tools to build on the fundamentals of data management, business intelligence (BI), and analytics; harness innovative technologies such as artificial intelligence (AI), blockchain and the Internet of Things (IoT); and accelerate the shift toward a data-driven culture to lead the way to better business outcomes.
Dataiku is the centralized data platform that democratizes the use of data science, machine learning, and AI in the enterprise. With Dataiku, businesses are uniquely empowered to move along their data journey from data preparation to analytics at scale to Enterprise AI. By providing a common ground for data experts and explorers, a repository of best practices, shortcuts to machine learning and AI deployment/management, and a centralized, controlled environment, Dataiku is the catalyst for data-powered companies.
Ali Donzanti, for Dataiku