Marklogic® Developer Training and Support

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Marklogic® Developer Training and Support MarkLogic® Developer Training and Support The Developer Training and Support package is a combination • Administering MarkLogic Server – a seat for your of pre-production training and support to help you and your database administrator at a hands-on course team get the most out of MarkLogic, getting you that much that will teach you about installing, deploying, monitoring, and maintaining your MarkLogic closer to a live application. database • Six months of email and web support for two named Overview contacts in your organization. With the release of the free Developer License for MarkLogic Enterprise Edition, developers can now begin Getting Started building pre-production applications without waiting Download a free Developer License for MarkLogic for funds to be allocated for production software Enterprise Edition and begin developing and testing an licenses. The Developer Training and Support package application on the only Enterprise NoSQL database. You is a cost-effective way to help your team become more can use the software for six months, giving you plenty proficient using MarkLogic, so you can reach your goals of time to get ready before your organization needs to even sooner. buy production licenses. The Developer License includes nearly all features of Enterprise Edition and can be used Details for databases up to 1TB, which makes it easy for you to The Developer Training and Support package includes try out MarkLogic for real problems you need to solve. a full-day MarkLogic Fundamentals workshop, a seat If you’ve already started working with MongoDB, use our in two of our public training courses, and six months of MarkLogic Converter for MongoDB to move your data support, as described below. into MarkLogic and start benefitting from MarkLogic’s • MarkLogic Fundamentals can be attended by up enterprise-grade database, search, and application to 10 people at your organization. The course is services platform. delivered by a MarkLogic University instructor and About MarkLogic will provide your entire team – technical project For over a decade, MarkLogic has delivered a powerful managers, architects, developers, testers, etc. – a and trusted enterprise-grade NoSQL (Not Only SQL) broad conceptual understanding of MarkLogic database that enables organizations to turn all data features and capabilities. This workshop is packed into valuable and actionable information. Key features with discussions, use cases, demos and hands-on include ACID transactions, horizontal scaling, real- exercises to expand your knowledge. The course can time indexing, high availability, disaster recovery, be delivered through MarkLogic University’s Live government-grade security, and more. Online capability – perfect for distributed teams or organizations who want to avoid travel costs MarkLogic is headquartered in Silicon Valley with field – or through a traditional classroom at one of our offices in Washington D.C., New York, Austin, London, MarkLogic Corporation facilities or at your location. Frankfurt, Utrecht, and Tokyo. www.marklogic.com • Developing MarkLogic Applications – a seat for For more information go to www.marklogic.com [email protected] +1 877 992 8885 your primary developer at a hands-on course that For more details, please contact your account Headquarters provides the information and experience you need representative, call us at 1-877-992-8885, or send 999 Skyway Road to build applications with MarkLogic us an email at [email protected] Suite 200 San Carlos, CA 94070 +1 650 655 2300 © 2013 MarkLogic Corporation. All rights reserved. This technology is protected by U.S. Patent No. 7,127,469B2, U.S. Patent No. 7,171,404B2, U.S. Patent No. 7,756,858 B2, and U.S. Patent No 7,962,474 B2. MarkLogic is a trademark or registered trademark of MarkLogic Corporation in the United States and/or other countries. All other trademarks mentioned are the property of their respective owners. [PS-DTS-13-03].
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