
Weka
Founded Year
2013Stage
Series E | AliveTotal Raised
$373.2MValuation
$0000Last Raised
$100M | 1 yr agoMosaic Score The Mosaic Score is an algorithm that measures the overall financial health and market potential of private companies.
+20 points in the past 30 days
About Weka
Weka provides a software-defined, cloud-native data platform for seamless and sustainable data management in the cloud and on-premises environments. The company offers solutions that enable organizations to store, process, and manage data with high input-output performance and low latency, catering to next-generation workloads such as AI and high-performance computing (HPC). Weka was formerly known as WekaIO. It was founded in 2013 and is based in Campbell, California.
Loading...
ESPs containing Weka
The ESP matrix leverages data and analyst insight to identify and rank leading companies in a given technology landscape.
The metadata management market offers solutions that enable businesses to collect, organize, and maintain their metadata, i.e., structured information that describes and explains data assets. In addition to their metadata management offerings, companies in this market typically also offer data governance & privacy, data lineage, and data curation. The market enables firms to connect and visualize …
Weka named as Challenger among 15 other companies, including Snowflake, Oracle, and Databricks.
Loading...
Research containing Weka
Get data-driven expert analysis from the CB Insights Intelligence Unit.
CB Insights Intelligence Analysts have mentioned Weka in 2 CB Insights research briefs, most recently on Jun 20, 2024.

Expert Collections containing Weka
Expert Collections are analyst-curated lists that highlight the companies you need to know in the most important technology spaces.
Weka is included in 3 Expert Collections, including Unicorns- Billion Dollar Startups.
Unicorns- Billion Dollar Startups
1,270 items
Generative AI
1,299 items
Companies working on generative AI applications and infrastructure.
Artificial Intelligence
7,632 items
Weka Patents
Weka has filed 127 patents.
The 3 most popular patent topics include:
- computer storage devices
- data management
- computer memory

Application Date | Grant Date | Title | Related Topics | Status |
---|---|---|---|---|
10/16/2023 | 4/8/2025 | Computer storage devices, Cloud storage, Data management, Computer data storage, USB | Grant |
Application Date | 10/16/2023 |
---|---|
Grant Date | 4/8/2025 |
Title | |
Related Topics | Computer storage devices, Cloud storage, Data management, Computer data storage, USB |
Status | Grant |
Latest Weka News
Apr 10, 2025
By integrating KVCache into its filesystem, YanRong says it has dramatically improved the KV cache hit rates and long-context processing, making AI inferencing cheaper. Chinese storage software supplier YanRong provides the YRCloudFile distributed shared file system for HPC and AI workloads. It supports all-flash drives and Nvidia’s GPUDirect protocol. The KVCache is a way of storing intermediate results during an AI model’s inferencing stage so that they don’t have to be recomputed at every stage, lengthening response time. We understand that the KVCache in the YRCloudFile system likely serves as a distributed in-memory layer across a cluster of GPU servers to store frequently accessed metadata; the key-value pairs. To see how its YRCloudFile KVCache performs, YanRong simulated realistic workloads, using publicly available datasets, industry-standard benchmarking tools, and NVIDIA GPU hardware. It found that YRCloudFile KVCache supports significantly higher concurrent query throughput, and offers concrete, quantifiable value for inference workloads. YanRong conducted multi-phase tests comparing native vLLM performance against vLLM plus YRCloudFile KVCache across varying token counts and configurations. One test evaluated total response time for a single query with from 8,000 to c30,000 tokens as its context input. KVCached YRCloudFile provided a 3x to >13x performance improvement in TTFT (Time to First Token) as the context length increased: A second test measured how many concurrent queries were supported with a TTFT value of 2 seconds or less: It found YRCloudFile KVCache enabled 8x more concurrent requests compared to native vLLM. A third test result showed that, under high concurrency, YRCloudFile KVCache achieved over 4x lower TTFT across different context lengths. YanRong says that these results show “how extending GPU memory via distributed storage can break traditional compute bottlenecks – unlocking exponential improvements in resource utilization.” All-in-all, “YRCloudFile KVCache redefines the economics of AI inference by transforming storage resources into computational gains through PB-scale cache expansion.” You can find more details here . Comment We think YRCloudFile with KVCache shares some similarities with WEKA’s Augmented Memory Grid (AMG). This is a software-defined filesystem extension, which provides exascale cache capacity at microsecond latencies with multi-terabyte-per-second bandwidth, delivering near-memory speed performance. A WEKA blog says it “extends GPU memory to a token warehouse in the WEKA Data Platform to provide petabytes of persistent storage at near-memory speed. … The token warehouse provides a persistent, NVMe-backed store for tokenized data, allowing AI systems to store tokens and retrieve them at near-memory speed.” This “enables you to cache tokens and deliver them to your GPUs at microsecond latencies, driving the massive-scale, low-latency inference and efficient reuse of compute necessary for the next generation of AI factories.” The AMG is: “Persistently storing tokenized data in NVMe” and “tokens are stored, and pulled “off the shelf” at inference time, instead of continuously being re-manufactured on-demand for every single request.” AMG “extends GPU memory into a distributed, high-performance memory fabric that delivers microsecond latency and massive parallel I/O – critical for storing and retrieving tokens at scale in real-time.” TAGS
Weka Frequently Asked Questions (FAQ)
When was Weka founded?
Weka was founded in 2013.
Where is Weka's headquarters?
Weka's headquarters is located at 910 East Hamilton Avenue, Campbell.
What is Weka's latest funding round?
Weka's latest funding round is Series E.
How much did Weka raise?
Weka raised a total of $373.2M.
Who are the investors of Weka?
Investors of Weka include Qualcomm Ventures, Norwest Venture Partners, MoreTech Ventures, Hitachi Ventures, Valor Equity Partners and 24 more.
Who are Weka's competitors?
Competitors of Weka include SandStone, Unravel, Turntable, ForePaaS, Excelero and 7 more.
Loading...
Compare Weka to Competitors

OSNEXUS operates within the data storage industry, providing a platform for file, block, and object storage using their storage grid technology. The company serves sectors that require data storage and management, including energy and utilities, financial services, high-performance computing, and government. It is based in Bellevue, Washington.

ProphetStor Data Services provides IT and cloud efficiency, as well as GPU management, within the technology sector. The company offers data services that focus on resource allocation, managing cloud costs, and the performance of IT infrastructure and GPU operations. ProphetStor serves sectors that require cloud solutions and data management, including enterprises and cloud service providers. It is based in Milpitas, California.

SandStone provides cloud data storage and management solutions, focusing on the technology sector. The company offers products including a unified storage platform, metadata storage systems, and AI data processing tools, intended for handling large volumes of unstructured data across various industries. SandStone serves sectors such as finance, energy, manufacturing, IT infrastructure, and automotive, offering data management solutions to meet the needs of each industry. It was founded in 2014 and is based in Shenzhen, Guangdong.
Atlantis Computing focuses on software-defined storage (SDS) and operates within the data storage industry. The company offers a flexible and powerful SDS platform that can be delivered as an all-software solution or as a flash-based, hyperconverged appliance. Its platform accelerates physical storage performance, increases its capacity, and allows enterprises to transition from costly shared storage systems to lower-cost hyper-converged systems and public cloud storage. It was founded in 2006 and is based in Sunnyvale, California.

Solidigm focuses on providing flash memory solutions within the semiconductor industry. It offers a range of solid-state drives (SSDs) for various applications, including data centers, enterprises, workstations, gaming, and secure data storage. It was founded in and is based in Rancho Cordova, California.
Simplyblock specializes in storage solutions for cloud-native environments, focusing on the technology sector. The company offers distributed block storage software optimized for Kubernetes, providing elastic and scalable storage with low latency and high IOPS, suitable for IO-intensive and latency-sensitive workloads. Simplyblock's products are designed to serve sectors that require robust data storage solutions, such as the cloud computing industry and businesses leveraging containerized applications. It was founded in 2022 and is based in Teltow, Germany.
Loading...