February 25th, 2018

Congratulations – H2O is a leader in the Gartner Magic Quadrant for Data Science and Machine Learning Platforms

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Graph for completness vision

Graph for completness vision
Congratulations – Thanks to the support of our customer community over the past years, H2O.ai is a leader and one with the most completeness of vision in Gartner Magic Quadrant for Data Science and Machine Learning Platforms. It is an ecosystem we dedicated a good part of this decade to open up and spring. This is testimony to the incredibly community-centric maker culture of team H2O in our relentless support of our customers with beautiful intelligent products. Our partnership with NVIDIA and IBM helped bring GPUs to Machine Learning this past year. Our work with Azure, AWS and Google Cloud to make it easy to try, train and deploy AI. Automation of AI pipelines with AI in DriverlessAI will help maximize extremely scarce data science talent and bring it to many more enterprises. We will make it cheaper, faster and easier to experiment and build AI products. This is fast moving AI space with tectonic shifts and very high product innovation from great players – even we are only getting started. We seek your partnership to further transform your problems and verticals with AI to build solutions together.
From the first to our latest investors, our amazing team members: past, present, new and future ones and supportive families; our community of data scientists who attended the first and recent meetups to spread the word, believers and our customers who backed our vision and execution – Each and every one of you are part of this incredibly fun journey. Thank you. Gratitude is the word that comes to mind. Your support inspires us to do great things, in the pursuit of magic! (and magic quadrants) 🙂
this will be fun, Sri

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