Data-as-a-Service (DaaS)
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All Stocks (328)
| Company | Market Cap | Price |
|---|---|---|
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IOTR
iOThree Limited Ordinary Shares
Data-as-a-Service capabilities providing cloud-based data provisioning and analytics.
|
$6.90M |
$2.69
-10.80%
|
|
UCAR
U Power Limited
Data-as-a-Service platform aggregating EV and energy data for analytics.
|
$6.86M |
$1.43
-5.00%
|
|
MRAI
Marpai, Inc.
Data-as-a-Service capabilities for data provisioning, curation, and analytics in healthcare cost management.
|
$6.08M |
$0.59
|
|
VCIG
VCI Global Limited
QuantGold enables encrypted data compute and data monetization as a Data-as-a-Service platform.
|
$5.54M |
$0.85
-10.73%
|
|
INTJ
Intelligent Group Limited
Use of data provisioning and GTM intelligence via the platform suggests a Data-as-a-Service component.
|
$5.51M |
$0.41
-3.31%
|
|
NISN
Nisun International Enterprise Development Group Co., Ltd
Nisun’s data-driven platforms imply data provisioning and analytics services akin to a Data-as-a-Service model.
|
$5.26M |
N/A
|
|
DSNY
Destiny Media Technologies Inc.
Longer-term analytics/data products from MTR and Play MPE align with Data-as-a-Service offerings.
|
$5.19M |
$0.50
|
|
TBH
Brag House Holdings, Inc.
Data-as-a-Service providing anonymized behavioral data to brands.
|
$5.11M |
$0.47
+2.52%
|
|
BNZI
Banzai International, Inc.
Data-as-a-Service to enrich GTM data and personalization in campaigns.
|
$4.76M |
$1.06
-0.47%
|
|
POAI
Predictive Oncology Inc.
Data-as-a-Service element through the biobank, historical drug-response data, and digitized pathology slides.
|
$4.32M |
$5.94
-0.17%
|
|
AIXI
Xiao-I Corporation
Data-as-a-Service capabilities through Hua Zang ecosystem, enabling data intelligence and model-driven insights.
|
$3.87M |
$0.38
+9.00%
|
|
ONFO
Onfolio Holdings, Inc.
Data provisioning/analytics dashboards as a service (DaaS) offerings.
|
$3.72M |
$0.73
-0.95%
|
|
DEVS
DevvStream Corp. Common Stock
DevvStream provides data provisioning and analytics around environmental assets and carbon credits as a service.
|
$3.71M |
$1.12
+4.17%
|
|
NAKA
Kindly MD, Inc.
Data-as-a-Service tag capturing data provisioning/curation/analytics capabilities via the EDM platform.
|
$3.47M |
$0.46
-5.66%
|
|
SFUNY
Fang Holdings Limited
Utilizes data mining and multi-dimensional user data to provide Data-as-a-Service offerings for targeted insights.
|
$3.20M |
$0.35
|
|
MGAM
Mobile Global Esports Inc.
The platform leverages live sports data and generates box scores, implying a data provisioning/data-as-a-service capability.
|
$2.97M |
$0.10
|
|
YOUL
Youlife Group Inc. American Depositary Shares
YOUL is building data-driven capabilities akin to Data-as-a-Service (DaaS) for enterprise data management.
|
$2.96M |
$0.96
-24.06%
|
|
SOBR
SOBR Safe, Inc.
Data-as-a-Service is leveraged via SOBRsafe’s data repository and analytics offerings for customers and partners.
|
$2.91M |
$1.91
+1.87%
|
|
HCTI
Healthcare Triangle, Inc.
Cloud-based data provisioning and data services oriented by DataEz align with Data-as-a-Service.
|
$2.64M |
$0.45
+0.04%
|
|
MLGO
MicroAlgo Inc.
Described as data processing and data intelligence services, aligning with Data-as-a-Service.
|
$2.52M |
$5.77
-4.79%
|
|
MOBQ
Mobiquity Technologies, Inc.
Data Intelligence Platform and MobiExchange provide location-based analytics and data services (DaaS) to entrants.
|
$2.45M |
$0.95
|
|
BMTM
Bright Mountain Media, Inc.
Data-as-a-Service providing data-driven consumer insights and GTM intelligence.
|
$1.20M |
$0.01
|
|
TGNT
Totaligent Inc.
Data-as-a-Service/Data provisioning via a proprietary DMP with 400+ data points.
|
$955255 |
$0.01
|
|
SPTY
Specificity, Inc.
Data-as-a-Service providing audience data and real-time intent insights to inform campaigns.
|
$837603 |
$0.06
|
|
LNBY
Lanbay Inc
LNBY provides data provisioning and data-as-a-service via its integrated platform.
|
$333000 |
$0.01
|
|
XTKG
X3 Holdings Co Ltd.
Data-as-a-Service capabilities implied by integrated data sharing for trade, logistics, and analytics within its platforms.
|
$315750 |
$0.14
-2.23%
|
|
ATDS
Data443 Risk Mitigation, Inc.
Data-as-a-Service aspects through data classification, governance, and discovery capabilities.
|
$97178 |
$0.00
|
|
MSPR
MSP Recovery, Inc.
Data-as-a-Service characteristics through LifeWallet's data provisioning and analytics capabilities.
|
$94263 |
$0.20
+192.30%
|
Showing page 4 of 4 (328 total stocks)
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# Executive Summary
* The Data-as-a-Service (DaaS) industry is undergoing a rapid transformation, with the integration of Generative AI emerging as the single most critical driver of competitive differentiation, new product creation, and efficiency.
* Despite strong secular tailwinds, macroeconomic pressures are creating a challenging operating environment, leading to cautious client spending, elongated sales cycles, and bifurcated performance across the sector.
* The competitive landscape is intensifying, forcing providers to build deeper moats through integrated, end-to-end platforms and highly specialized, vertical-specific solutions.
* Financial performance is diverging: AI-native and platform leaders are posting strong double-digit growth and high margins, while others face revenue declines and operational resets.
* Capital allocation is focused on a dual mandate: aggressively investing in AI and strategic M&A to secure technological leadership, while simultaneously returning significant capital to shareholders via buybacks.
## Key Trends & Outlook
The Data-as-a-Service industry is being fundamentally reshaped by the accelerating adoption of Artificial Intelligence and Generative AI. This technology is no longer theoretical; it is a core driver of new revenue streams and competitive advantage. For instance, Zeta Global's AI-powered platform is driving over 30% revenue growth, while RELX is seeing a double-digit spending uplift from clients adopting its Lexis+ AI tool. The mechanism for value creation is twofold: AI enhances data processing to deliver more valuable insights and automates workflows to drive significant operational efficiency. This trend is creating a clear performance gap between AI leaders and laggards, with Snowflake's Cortex AI suite influencing nearly 50% of new logo wins, demonstrating the demand for AI-native platforms. This transformation is happening now and will only accelerate over the next 12-24 months.
Despite the powerful AI tailwind, the industry faces significant near-term pressure from a cautious macroeconomic environment. This has resulted in elongated sales cycles and reduced spending, particularly from smaller customers. The impact is evident in the performance of companies like Definitive Healthcare, which saw a 5% revenue decline due to these pressures. This environment forces DaaS providers to focus on demonstrating clear ROI and serving more resilient, large enterprise clients.
The largest opportunity lies in developing vertical-specific, AI-powered platforms that become deeply embedded in customer workflows, as demonstrated by Veeva Systems' dominance in life sciences. The primary risk is failing to keep pace with AI innovation, leading to product obsolescence. Additionally, navigating the complex and evolving landscape of global data privacy regulations remains a significant operational and financial risk.
## Competitive Landscape
The DaaS market is highly competitive, with players differentiating through proprietary data, superior technology, or deep domain expertise.
One core strategy involves becoming an integrated, horizontal data powerhouse. Companies pursuing this model compete by providing a vast, proprietary, and comprehensive data ecosystem that serves a wide range of industries, primarily financial services. The goal is to become the indispensable, single source of truth. Key advantages include massive scale, high barriers to entry due to proprietary data assets, significant pricing power, and deep, enterprise-wide customer relationships. S&P Global exemplifies this model, with its competitive moat built on proprietary data, which accounts for over 95% of its revenue, and integrated workflow solutions like Capital IQ.
In contrast, other players adopt a technology-first, cloud-native platform strategy. These companies compete on the superiority of their underlying technology platform, emphasizing flexibility, scalability, ease of use, and an open ecosystem. The data itself is often the customer's, but the platform unlocks its value. This approach offers high scalability, benefits from network effects, and enables rapid innovation cycles, often displacing legacy on-premise solutions. Snowflake is a prime example, with its AI Data Cloud allowing customers to consolidate and analyze data across multiple public clouds. Its competitive edge comes from its cloud-native architecture, ease of use, and powerful data-sharing capabilities, rather than from owning proprietary datasets.
Finally, the deep vertical specialist model focuses on dominating a specific industry by offering a purpose-built platform that addresses the unique data, workflow, and regulatory requirements of that vertical. This strategy creates an extremely deep competitive moat due to domain expertise, high customer switching costs, and the ability to command premium pricing. Veeva Systems is a leading example, as the dominant cloud software and data provider for the global life sciences industry, with an estimated 80% market penetration in CRM. Its products are built with a deep understanding of the industry's complex regulatory and compliance needs.
## Financial Performance
Revenue growth across the DaaS industry is sharply bifurcating. This divergence is primarily driven by AI leadership and exposure to macroeconomic headwinds. AI-native platforms that deliver clear ROI are capturing market share and growing rapidly, while companies serving macro-sensitive customer segments or lacking differentiated technology are struggling. Zeta Global's 36% year-over-year growth in Q1 2025 exemplifies the AI-driven tailwind, while Definitive Healthcare's 5% year-over-year decline in Q2 2025 is a clear example of the impact of macro pressure and execution challenges.
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Margins are widely divergent, reflecting different business models and competitive positioning. Adjusted operating margins range from over 50% for market leaders to low double-digits for companies facing headwinds. Elite margins are commanded by companies with deep competitive moats, whether through proprietary data or vertical dominance, which grants them significant pricing power. S&P Global's 51.6% adjusted margins (TTM, ex-OSTTRA) and Veeva Systems' 88% subscription gross margin in Q1 FY26 exemplify the profitability of a strong competitive moat.
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The dominant theme in capital allocation is a dual focus on investing for future growth while simultaneously returning capital to shareholders. Confident in their long-term cash flow generation, leading DaaS companies are aggressively reinvesting in their core differentiators—primarily AI technology and strategic, capability-driven M&A. At the same time, they are using robust share repurchase programs to return excess capital. S&P Global's strategy is a perfect illustration, with a $1.8 billion acquisition of With Intelligence coupled with a planned $2.5 billion share repurchase in a single quarter.
The financial health of the industry is generally strong, with most leading players holding significant cash reserves and manageable debt loads. Strong recurring revenue models and high margins generate substantial and predictable cash flow, allowing companies to maintain robust balance sheets. This provides the financial flexibility to invest through economic cycles and pursue strategic opportunities. Veeva Systems, with $6.1 billion in cash and investments and no debt, is a prime example of the industry's potential for cash generation and financial strength.
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