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This video is part of the appearance, “NeuroBlade Presents at Cloud Field Day 19“. It was recorded as part of Cloud Field Day 19 at 8:00-9:30 on January 31, 2024.
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Elad Sity leads a deep dive into the future of big data analytics with the unveiling of NeuroBlade’s SQL Processing Unit (SPU). This presentation highlights how the SPU is a cornerstone technology for data analytics acceleration, offering rapid and scalable processing capabilities that transform big data into actionable insights. Discover NeuroBlade’s role in advancing big data analytics, making it more accessible through partnerships that enhance market adoption.
Elad Sity, CEO of NeuroBlade, presents an overview of his company, which was founded in 2018 with the aim to revolutionize data processing. NeuroBlade has grown to over 120 employees and raised over $100 million. The company has a presence in Tel Aviv, Israel, and Palo Alto, California. They are focused on accelerating big data analytics, specifically targeting the acceleration of SQL queries and data lookups. NeuroBlade’s SQL processing unit (SPU) is designed to run data analytics more efficiently, boasting performance improvements up to 30x with a third of the cost.
NeuroBlade’s SPU is an accelerator built specifically for data analytics and is not a CPU or GPU. It integrates with existing analytics engines that customers already use, such as Spark, Presto, and ClickHouse, through a software layer and API. The SPU is designed for modern cloud environments and supports containerized workloads but not virtualized ones currently. It is also optimized for structured data analytics.
The company has partnered with Dell to offer the SPU in PowerEdge servers for enterprise customers, while hyperscale customers can integrate the SPU card into their own server designs. NeuroBlade has conducted benchmarks showing significant performance improvements, such as reducing query times from minutes to seconds.
The presentation includes a Q&A session where Elad addresses questions about the SPU’s integration with query optimizers, its support for containerization, its focus on structured data, and its ease of integration with customers’ existing infrastructure and analytics engines. He clarifies that while they are not currently targeting traditional RDBMS platforms like Oracle or SQL Server, they are open to working with such vendors in the future.
Personnel: Elad Sity