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Top 68 Big Data Software SaaS Companies in May 2026

As of May 2026, there are 68 SaaS companies in Big Data Software. They have combined revenues of $2.9B and employ 15.4K people. They have raised $4.1B and serve 20M customers combined.

Big Data Software encompasses tools and platforms designed to store, manage, analyze, and visualize large volumes of data that traditional data processing software cannot handle effectively. These solutions enable organizations to derive insights from various data sources, helping in making data-driven decisions. Primary use cases include predictive analytics, operational intelligence, customer behavior analysis, and fraud detection, among others. Typical features of Big Data Software include data ingestion, storage, processing frameworks, and visualization capabilities. Users range from data scientists and business analysts to IT professionals who are responsible for managing the data lifecycle and ensuring data security. Common buyer personas include professionals from finance, marketing, operations, and research and development, all seeking to leverage big data for enhanced strategic decision-making.

Companies
68
Revenue
$2.9B
Funding
$4.1B
Employees
15.4K

Filters

Sorting: Highest -> Lowest

Filters

Top Big Data Software Companies

Showing 10 of 6 companies ranked by annual revenue.

1
Cohesity

San Jose, California, United States

Our mission at Cohesity is simple: to protect, secure, and provide insights into the world’s data. The largest organizations around the globe rely on us to strengthen their business resilience.

Revenue
$1.3B
Customers
13K
Year founded
2013
Funding
$955M
Team size
7.7K
Growth
255.56%
2
Lambda AI

San Francisco, California, United States

Lambda is an AI infrastructure company providing cloud services, infrastructure, and software training and inferencing of AI models. It serves as a trusted AI Infrastructure advisor to the world's top AI Labs, Enterprises, and Hyperscalers.

Revenue
$303.3M
Customers
-
Year founded
2012
Funding
-
Team size
669
Growth
-
3
Denodo Technologies Inc

Palo Alto, California, United States

data virtualization software company

Revenue
$288.5M
Customers
-
Year founded
1999
Funding
-
Team size
771
Growth
68.39%
4
VAST Data

New York, New York, United States

Accelerating time-to-insight for workload-intensive applications, the VAST Data Platform delivers scalable performance, radically simple data management and enhanced productivity for the AI-powered world. Launched in 2019, VAST is the fastest-selling data infrastructure startup in history.

Revenue
$147M
Customers
-
Year founded
2016
Funding
$381M
Team size
825
Growth
-
5
Qumulo

Seattle, WA, United States

Modern enterprises have to manage exponentially-growing exabyte-scale data stores comprised mostly of unstructured data. Someone (often IT) has the difficult job of staying on top of managing these data stores, which becomes more difficult to do as enterprise datasets expand from the data center to the edge and cloud. And while scale and complexity are rising, budgets and staff are not. Existing solutions suffer from two crucial shortcomings: Complexity and platform lock-in. Legacy solutions are excruciatingly complex to deploy and manage. And nearly every solution restricts users to running in only the data center and on expensive, inflexible proprietary hardware platforms. Qumulo is the simple way to manage exabyte-scale data anywhere — edge, core, or cloud — on the platform of your choice. In a world with trillions of files and objects comprising 100+ zettabytes worldwide, companies need a solution that combines the ability to work anywhere with simplicity. This is precisely what Qumulo was founded to accomplish.

Revenue
$115.7M
Customers
-
Year founded
2012
Funding
$345.5M
Team size
569
Growth
-
6
SambaNova Systems

Palo Alto, California, United States

SambaNova is the leading Enterprise AI company that delivers a full-stack infrastructure from silicon to software, specializing in machine learning and big data analytics platforms.

Revenue
$100M
Customers
-
Year founded
2017
Funding
$982M
Team size
417
Growth
-

Inclusion Criteria

- Product must be capable of handling and processing large volumes of structured and unstructured data. - Must provide advanced analytics features such as machine learning or predictive modeling. - Should include data visualization tools to present insights clearly and effectively. - Must support integration with various data sources and formats. - Not just data storage; must also offer actionable insights and analytics capabilities.