
Splunk announced a five-year extension of its Strategic Collaboration Agreement (SCA) with Amazon Web Services, Inc. (AWS).
“Together with AWS, Splunk is committed to enabling joint customers to innovate with confidence, migrate and modernize existing environments, and safely scale without limits,” said Gretchen O’Hara, VP, Worldwide Partners and Alliances, Splunk. “For 10 years we have been better together, and we look forward to helping organizations worldwide solve their most significant business data challenges. This work would not have been possible without the long-standing strategic collaboration between our organizations. We are honored to be recognized as the ISV Partner of the Year in North America winner as well.”
“The strength of our collaboration with Splunk is amplified by our commitment to co-innovation and exceptional, data-driven outcomes for our joint customers,” said Ruba Borno, VP, Worldwide Channels and Alliances at AWS. “The focus of our collaboration is fueled by supporting our customers’ cloud migration journey, sustainability initiatives and strategies that expedite digital transformation and drive success.”
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