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Big Data Engineering for Machine Learning

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About Qubole Qubole is revolutionizing the way companies activate their data — the process of putting data into active use across their organizations. With Qubole's cloud-na- tive big data platform, companies exponentially activate petabytes of data faster, for everyone and any use case, while continuously lowering costs. Qubole over- comes the challenges of expanding users, use cases, and variety and volume of data while constrained by limited budgets and a global shortage of big data skills. Qubole offers the only platform that delivers freedom of choice, eliminating legacy lock in — use any engine, any tool, and any cloud to match your company's needs. Qubole investors include CRV, Harmony Partners, IVP, Lightspeed Venture Partners, Norwest Venture Partners, and Singtel Innov8. For more information visit www.qubole.com. 469 El Camino Real, Suite 201 Santa Clara, CA 95050 (855) 423-6674 | [email protected] WWW.QUBOLE.COM In addition to offering several engines that allow our customers to select the most adequate tool for each job, Qubole is the only cloud data platform that delivers a multi-cloud, multi- engine, self-service machine learning and analytics architecture. It automatically provisions, manages and optimizes cloud resources balancing cost, workloads, and performance requirements. Qubole's open data lake platform enables orchestration and execution of all types of data engineering tasks whether it is data exploration, building of data pipelines, orchestration or data delivery. When building a house, you would choose different tools for different tasks, it is impossible to build a house using only one tool. Similarly, when building data pipelines, you should choose the optimal big data engine by considering your specific use case and the specific business needs of your company or department. White Paper

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