TechCrunch News 10月10日 00:04
Tigris Data:为AI工作负载提供分布式存储解决方案
index_new5.html
../../../zaker_core/zaker_tpl_static/wap/tpl_guoji1.html

 

随着AI公司爆炸式增长,计算能力需求激增,CoreWeave、Together AI和Lambda Labs等公司抓住了这一机遇。然而,大多数公司的数据仍存储在AWS、Google Cloud和Microsoft Azure这三大云服务商那里,它们的存储系统是为靠近自身计算资源而设计的,而非跨多云或多区域部署。Tigris Data,由Uber存储平台开发团队创立,正致力于构建一个本地化数据存储中心网络,以满足现代AI工作负载的分布式计算需求。其AI原生存储平台能够与计算同步,自动将数据复制到GPU所在位置,支持海量小文件,并为训练、推理和代理式工作负载提供低延迟访问。近期,Tigris Data完成了由Spark Capital领投的2500万美元A轮融资,旨在扩展其全球数据中心布局,应对日益增长的市场需求。

💡 **分布式存储满足AI新需求:** 传统云存储系统(AWS, Google Cloud, Azure)主要为靠近自身计算资源设计,无法满足AI工作负载对分布式计算的需求。Tigris Data正构建本地化数据存储中心网络,旨在提供与分布式计算相匹配的存储解决方案,实现数据随计算移动、自动复制到GPU位置、支持海量小文件,并提供低延迟访问。

💰 **打破“云税”与高延迟壁垒:** 现有云服务商常收取高昂的数据迁移费用(“云税”),限制了用户跨云或跨区域使用更优计算资源的灵活性。Tigris Data通过提供无需额外费用的数据访问,解决了这一痛点,同时其本地化存储也大幅降低了AI工作负载(如实时推理、代理式AI)的延迟问题,提高了模型性能和效率。

🔒 **增强数据控制与合规性:** 随着企业越来越重视数据价值及其对AI模型的重要性,对数据的所有权和控制权的需求日益增长。Tigris Data提供的解决方案,尤其在金融、医疗等监管严格的领域,能够帮助企业更好地管理数据安全和合规性,避免数据被第三方控制,从而掌握AI发展的主动权。

📈 **快速增长与全球扩张:** Tigris Data自2021年11月成立以来,每年增长8倍,已在美国弗吉尼亚、芝加哥和圣何塞设立了数据中心。公司近期获得了2500万美元A轮融资,计划进一步在美国、欧洲(伦敦、法兰克福)和亚洲(新加坡)扩展其数据中心网络,以满足全球日益增长的AI存储需求。


The explosion of AI companies has pushed demand for computing power to new extremes, and companies like CoreWeave, Together AI and Lambda Labs have capitalized on that demand, attracting immense amounts of attention and capital for their ability to offer distributed compute capacity.

But most companies still store data with the big three cloud providers, AWS, Google Cloud, and Microsoft Azure, whose storage systems were built to keep data close to their own compute resources, not spread across multiple clouds or regions.

“Modern AI workloads and AI infrastructure are choosing distributed computing instead of big cloud,” Ovais Tariq, co-founder and CEO of Tigris Data, told TechCrunch. “We want to provide the same option for storage, because without storage, compute is nothing.” 

Tigris, founded by the team that developed Uber’s storage platform, is building a network of localized data storage centers that it claims can meet the distributed compute needs of modern AI workloads. The startup’s AI-native storage platform “moves with your compute, [allows] data [to] automatically replicate to where GPUs are, supports billions of small files, and provides low-latency access for training, inference, and agentic workloads,” Tariq said. 

To do all of that, Tigris recently raised a $25 million Series A round that was led by Spark Capital and saw participation from existing investors, which include Andreessen Horowitz, TechCrunch has exclusively learned. The startup is going against the incumbents, who Tariq calls “Big Cloud.”

Ovais Tariq, CEO of Tigris, at a Tigris data center in VirginiaImage Credits:Tigris Data

Tariq feels these incumbents not only offer a more expensive data storage service, but also a less efficient one. AWS, Google Cloud, and Microsoft Azure have historically charged egress fees (dubbed “cloud tax” in the industry) if a customer wants to migrate to another cloud provider, or download and move their data if they want to, say, use a cheaper GPU or train models in different parts of the world simultaneously. Think of it like having to pay your gym extra if you want to stop going there.

According to Batuhan Taskaya, head of engineering at Fal.ai, one of Tigris’ customers, those costs once accounted for the majority of Fal’s cloud spending.

Techcrunch event

Join 10k+ tech and VC leaders for growth and connections at Disrupt 2025

Netflix, Box, a16z, ElevenLabs, Wayve, Hugging Face, Elad Gil, Vinod Khosla — just some of the 250+ heavy hitters leading 200+ sessions designed to deliver the insights that fuel startup growth and sharpen your edge. Don’t miss the 20th anniversary of TechCrunch, and a chance to learn from the top voices in tech. Grab your ticket before doors open to save up to $444.

Join 10k+ tech and VC leaders for growth and connections at Disrupt 2025

Netflix, Box, a16z, ElevenLabs, Wayve, Hugging Face, Elad Gil, Vinod Khosla — just some of the 250+ heavy hitters leading 200+ sessions designed to deliver the insights that fuel startup growth and sharpen your edge. Don’t miss a chance to learn from the top voices in tech. Grab your ticket before doors open to save up to $444.

San Francisco|October 27-29, 2025

Beyond egress fees, Tariq says there’s still the problem of latency with larger cloud providers. “Egress fees were just one symptom of a deeper problem: centralized storage that can’t keep up with a decentralized, high-speed AI ecosystem,” he said. 

Most of Tigris’ 4,000+ customers are like Fal.ai: generative AI startups building image, video, and voice models, which tend to have large, latency-sensitive datasets.  

“Imagine talking to an AI agent that’s doing local audio,” Tariq said. “You want the lowest latency. You want your compute to be local, close by, and you want your storage to be local, too.” 

Big clouds aren’t optimized for AI workloads, he added. Streaming massive datasets for training or running real-time inference across multiple regions can create latency bottlenecks, slowing model performance. But being able to access localized storage means data is retrieved faster, which means developers can run AI workloads reliably and more cost-effectively using decentralized clouds. 

“Tigris lets us scale our workloads in any cloud by providing access to the same data filesystem from all these places without charging egress,” Fal’s Taskaya said.

There are other reasons why companies want to have data closer to their distributed cloud options. For example, in highly regulated fields like finance and healthcare, one large roadblock to adopting AI tools is that enterprises need to ensure data security.

Another motivation, says Tariq, is that companies increasingly want to own their data, pointing to how Salesforce earlier this year blocked its AI rivals from using Slack data. “Companies are becoming more and more aware of how important the data is, how it’s fueling the LLMs, how it’s fueling the AI,” Tariq said. “They want to be more in control. They don’t want someone else to be in control of it.” 

With the fresh funds, Tigris intends to continue building its data storage centers to support increasing demand — Tariq says the startup has grown 8x every year since its founding in November 2021. Tigris already has three data centers in Virginia, Chicago, and San Jose, and wants to continue expanding in the U.S. as well as in Europe and Asia, specifically in London, Frankfurt, and Singapore.  

Fish AI Reader

Fish AI Reader

AI辅助创作,多种专业模板,深度分析,高质量内容生成。从观点提取到深度思考,FishAI为您提供全方位的创作支持。新版本引入自定义参数,让您的创作更加个性化和精准。

FishAI

FishAI

鱼阅,AI 时代的下一个智能信息助手,助你摆脱信息焦虑

联系邮箱 441953276@qq.com

相关标签

Tigris Data AI存储 分布式存储 云原生 低延迟 数据中心 Spark Capital Tigris Data AI Storage Distributed Storage Cloud Native Low Latency Data Centers Spark Capital
相关文章