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Five Ways Analytical Platforms Are Evolving for Your Hybrid, Multi-Cloud Future

Companies that are not innovating with data are in danger of being disrupted. And companies that are not at least considering the agility and flexibility of cloud options are missing a crucial path to data-driven innovation. The question is, how can organizations prepare for their cloud future without moving everything to the cloud today? And how can organizations future proof their investments, avoid both cloud lock-in and architecting for two separate (cloud and on-premises) worlds.

Join Doug Henschen, vice president and principal analyst at Constellation Research, and Mike Conway, CTO, Bidtellect for a discussion on the trends in data-driven innovation and next-generation analytical platforms that can span multiple cloud and on-premises deployment. You’ll learn:

• Why hybrid- and multi-cloud deployment flexibility is a must
• How separation of compute and storage changes the economics of analytics
• Why operationalizing data science innovation, leveraging machine learning, is crucial for business impact
• How data lakes are evolving, requiring yet more flexibility from analytical platforms
• Why it’s crucial to obtain scalability and performance proof points before choosing a platform
Recorded Oct 15 2020 60 mins
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Join Doug Henschen, Vice President and Principal Analyst at Constellation Research and Mike Conway CTO, Bidtellect
Presentation preview: Five Ways Analytical Platforms Are Evolving for Your Hybrid, Multi-Cloud Future

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    Join our webinar presentation and demo to learn how AutoML at scale using H2O.ai & Vertica enables you to retain your customers and increase profits with Auto-ML to dynamically act on the right customer, at the right time through the right channel.

    Vertica enables easy and fast access to the right historical & live data as the events occurs while H2O.ai facilitates the Auto-ML models to create accurate predictions. With the seamless integration back to Vertica, the AI models are deployed at scale for immediate business outcome so data science projects don’t remain in the “black box”.

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    Por qué Vertica: la carrera por un warehouse analítico unificado
    • Vertica ayuda a las empresas en su tranformación a data-driven y a que revolucionen sus industrias.
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    • ROI del cliente de Vertica: 4.07 $ por cada $ invertido
    • Posicionamiento competitivo
    Un programa de 5 estrellas reconocido por Computer Reseller News (CNR)
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Data Analytics without Limits
The Vertica Analytics Platform is built to handle the most demanding analytic use cases and is trusted by thousands of leading data-driven enterprises around the world, including Etsy, Bank of America, Intuit, Uber and more. Vertica delivers speed, scale and reliability on mission-critical analytics at a lower total cost of ownership than legacy systems. All based on the same powerful, unified architecture, the Vertica Analytics Platform provides you with the broadest range of deployment models, so that you have complete choice as your analytical needs evolve. Deploy Vertica on-premise, in the clouds (AWS, Azure and GCP), on Apache Hadoop, or as a hybrid model. Find more information on Vertica at www.vertica.com.

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  • Title: Five Ways Analytical Platforms Are Evolving for Your Hybrid, Multi-Cloud Future
  • Live at: Oct 15 2020 3:00 pm
  • Presented by: Join Doug Henschen, Vice President and Principal Analyst at Constellation Research and Mike Conway CTO, Bidtellect
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