Artificial Intelligence & Machine Learning
•343 stocks
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All Stocks (343)
| Company | Market Cap | Price |
|---|---|---|
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SMSI
Smith Micro Software, Inc.
AI capabilities in SafePath 8 (social insights, age-aware controls, AI assistant) align with AI/ML technology use cases.
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$11.57M |
$0.54
+0.43%
|
|
IQST
iQSTEL Inc.
IQSTEL emphasizes AI/ML capabilities across its product and service suite.
|
$11.00M |
$3.06
+5.33%
|
|
ONEI
OneMeta AI
AI/ML foundations power the translation, transcription, and NLP capabilities.
|
$10.72M |
$0.23
|
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MSAI
MultiSensor AI Holdings, Inc.
Artificial Intelligence & Machine Learning captures the AI/ML focus of MSAI's offerings.
|
$10.68M |
$0.31
+6.60%
|
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IDAI
T Stamp Inc.
Core AI/ML capabilities underpin the company's identity verification and fraud prevention solutions.
|
$10.27M |
$4.03
+2.94%
|
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HWH
HWH International Inc.
AI/ML capabilities underpin the platform's personalization and ecosystem planning.
|
$10.04M |
$1.50
+0.67%
|
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QURT
Quarta-Rad, Inc.
AI/ML-enabled software platform explicitly described; aligns with Artificial Intelligence & Machine Learning theme.
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$9.96M |
$0.65
|
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KRKR
36Kr Holdings Inc.
Core AI/ML technology and AI-driven products that power content creation and analytics.
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$9.83M |
$4.37
-8.19%
|
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NTCL
NetClass Technology Inc
NTCL's broader AI and ML capabilities support investable AI & Machine Learning themes beyond specific products.
|
$9.31M |
$0.53
+53.75%
|
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HCAI
Hauchen AI Parking Management Technology Holding Co., Ltd.
Emphasis on AI/ML capabilities for intelligent infrastructure aligns with Artificial Intelligence & Machine Learning.
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$8.97M |
$0.30
-13.00%
|
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REBN
Reborn Coffee, Inc.
Artificial Intelligence & Machine Learning: AI-driven hospitality model contemplated with MOU to enhance coffee experiences.
|
$8.52M |
$1.57
+5.37%
|
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GPOX
GPO Plus, Inc.
Artificial Intelligence & Machine Learning tag captures the broader AI focus beyond platform specifics.
|
$8.11M |
$0.09
|
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MYSE
Myseum Inc.
AI/ML technology underpinning RenAI and RPM Interactive supports AI-driven content organization and creation.
|
$7.53M |
$1.72
+0.58%
|
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TRSO
Transuite.Org Inc.
Core AI/ML capabilities and platform underpin the offering.
|
$6.01M |
$0.10
|
|
RVYL
Ryvyl Inc.
Artificial Intelligence & Machine Learning; AI capabilities powering platform features (fraud, security, automation).
|
$5.13M |
$5.63
-0.68%
|
|
LOBO
Lobo EV Technologies Ltd.
LOBO's AI and machine learning capabilities underpin its AI robotic products and AI-integrated scooters.
|
$4.95M |
$0.61
-1.03%
|
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EHGO
Eshallgo Inc. Class A Ordinary Shares
EHGO is pursuing investments in AI/ML platforms and enterprise AI capabilities.
|
$4.85M |
$0.20
-5.19%
|
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OBLG
Oblong, Inc.
Strategic pivot to decentralized AI aligns with AI/ML themes, reflecting involvement in AI-enabled networks and protocols.
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$4.63M |
$2.65
+46.13%
|
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YOUL
Youlife Group Inc. American Depositary Shares
YOUL’s AI/ML capabilities represent an investable AI & Machine Learning theme supporting its platform.
|
$4.54M |
$1.43
-0.42%
|
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SUIC
Suic Worldwide Holdings Ltd.
Strategic focus on Artificial Intelligence & Machine Learning technologies (AI/ML).
|
$4.54M |
$0.40
|
|
KITT
Nauticus Robotics, Inc.
Overall emphasis on Artificial Intelligence & Machine Learning within autonomous systems.
|
$4.19M |
$0.89
+16.21%
|
|
GBUX
GivBux, Inc.
The use of AI for personalization indicates broader AI/ML initiatives that align with the Artificial Intelligence & Machine Learning investable theme.
|
$4.14M |
$0.04
|
|
ORKT
Orangekloud Technology Inc.
Active involvement in AI/ML initiatives places the company within the broader AI/ML thematic space.
|
$4.10M |
$0.71
+5.15%
|
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VCIG
VCI Global Limited
The company is building sovereign AI infrastructure and deployment platforms (e.g., QuantGold/DeepAI).
|
$3.92M |
$0.59
+11.67%
|
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ONFO
Onfolio Holdings, Inc.
Company-wide AI/ML integration in its digital services.
|
$3.85M |
$0.76
+12.22%
|
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GTCH
GBT Technologies Inc.
Company operates in AI/ML-enabled networking and imaging technologies, reflecting core AI focus.
|
$3.70M |
$0.00
|
|
AIXI
Xiao-I Corporation
Core AI/ML technology focus, including development of universal LLM and related AI capabilities.
|
$3.55M |
$0.43
+4.90%
|
|
FRSX
Foresight Autonomous Holdings Ltd.
Artificial Intelligence & Machine Learning: Broad AI/ML capabilities powering perception and autonomous systems.
|
$3.14M |
$1.43
+10.85%
|
|
JYD
Jayud Global Logistics Limited
Incorporation of AI/ML capabilities within logistics IT systems.
|
$2.17M |
$5.03
+0.64%
|
|
JZ
Jianzhi Education Technology Group Company Limited
Active focus on AI/ML capabilities and AI-driven content, underpinning product offerings.
|
$2.16M |
$1.05
+1.94%
|
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IFBD
Infobird Co., Ltd
The company markets AI-enabled customer engagement software and AI-driven features.
|
$2.03M |
N/A
|
|
DRCT
Direct Digital Holdings, Inc.
Artificial Intelligence & Machine Learning underpins the platform’s optimization and audience targeting, representing a broad AI/ML investable theme.
|
$2.01M |
$0.09
+1.91%
|
|
ELAB
PMGC Holdings Inc.
Partnership with Yuva Biosciences highlights AI-powered therapeutic development collaboration.
|
$1.63M |
$3.35
-13.12%
|
|
SOND
Sonder Holdings Inc.
The company uses AI/ML-driven pricing, yield optimization, and guest experience personalization, indicating an AI/ML focus.
|
$1.46M |
$0.13
+5.70%
|
|
DUO
Fangdd Network Group Ltd.
AI/ML features embedded in the SaaS platform to automate tasks and improve efficiency.
|
$589799 |
$1.63
+11.64%
|
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VIVK
Vivakor, Inc.
Vivakor is pursuing AI integration in its operations via collaboration with Neuralix and AI-driven strategies.
|
$480511 |
$0.04
+255.56%
|
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WLDS
Wearable Devices Ltd.
AI capabilities underpin the wearable platform, warranting the broader AI/ML tagging.
|
$328977 |
$1.25
+9.21%
|
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CHR
Cheer Holding, Inc.
Artificial intelligence and machine learning capabilities underpin the CHEERS platform and services.
|
$308467 |
$1.29
+0.78%
|
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KXIN
Kaixin Auto Holdings
Artificial Intelligence & Machine Learning: The company’s strategic focus centers on AI-enabled education technology.
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$190781 |
$6.10
+17.53%
|
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PAVS
Paranovus Entertainment Technology Ltd.
General AI/ML capabilities across the company's technology stack and offerings.
|
$148207 |
$2.06
+19.08%
|
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MLGO
MicroAlgo Inc.
The company emphasizes artificial intelligence and machine learning capabilities powered by quantum tech and data science.
|
$148132 |
$5.12
+15.84%
|
|
MSPR
MSP Recovery, Inc.
General AI/ML capabilities underpin LifeWallet's platform and automation features.
|
$126763 |
$0.20
+91.52%
|
|
QH
Quhuo Limited
Exploring AI/ML integration to improve training, recruitment, and operational efficiency.
|
$114421 |
$1.12
+4.17%
|
Showing page 4 of 4 (343 total stocks)
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# Executive Summary
* The Artificial Intelligence & Machine Learning industry is defined by a historic, multi-hundred-billion-dollar infrastructure buildout, creating a massive revenue opportunity for hardware suppliers and a significant capital hurdle for AI developers.
* Intense competition is driving a record wave of M&A, as companies race to acquire critical technology and talent, leading to rapid market consolidation.
* A complex and evolving global regulatory landscape, exemplified by the EU AI Act, is creating material compliance costs and risks, while also allowing for differentiation through "responsible AI."
* Financially, the industry is bifurcating between hyper-growth technology enablers (hardware) and a broader set of companies leveraging AI for double-digit growth in software and services.
* Dominant competitive strategies include full-stack vertical integration from hardware to models, enterprise transformation services, and deep, domain-specific solutions for niche markets.
* The unprecedented demand for specialized AI talent is inflating operating costs and represents a key constraint on growth across the sector.
## Key Trends & Outlook
The Artificial Intelligence & Machine Learning industry is in the midst of an unprecedented infrastructure investment cycle, which stands as the primary driver of growth and competitive dynamics. Tech giants are collectively spending hundreds of billions on AI capital investments, with Alphabet (GOOG) alone projecting over $91 billion in CapEx for 2025 to support its AI services. This massive demand directly translates into hyper-growth for key suppliers like NVIDIA (NVDA), whose revenue surged 94% year-over-year, fueled by multi-billion dollar deals to equip new "AI factories." This capital-intensive arms race creates a significant barrier to entry and a competitive advantage for well-funded players, a dynamic exacerbated by physical bottlenecks like multi-year wait times for data center grid connections. This trend is happening now and is expected to accelerate, fundamentally shaping the industry's value chain for the next 3-5 years.
In response to the technological arms race, the industry is rapidly consolidating through a historic wave of M&A, with deal value increasing 294% year-over-year in 2025. Large incumbents are aggressively acquiring capabilities and talent, exemplified by Google's $32 billion purchase of cloud security firm Wiz. This trend is forcing a strategic decision for smaller innovators: scale rapidly or position for an acquisition.
The largest near-term opportunity lies with the technology enablers providing the foundational hardware and platforms for the AI buildout. The primary risk stems from the evolving and fragmented global regulatory landscape, which threatens to impose significant compliance costs, limit data usage, and introduce legal liabilities that could slow deployment and impact profitability.
## Competitive Landscape
The Artificial Intelligence & Machine Learning market is consolidating, yet distinct and viable competitive strategies are evident. NVIDIA, for instance, holds an an estimated 70-80% market share in the critical AI data center segment, underscoring the concentration in foundational hardware.
Some of the largest players, like Google, compete by building a fully integrated stack, from custom silicon up to foundational AI models and applications. This capital-intensive strategy creates a powerful technological moat and ecosystem lock-in, enabling superior performance and cost efficiency across its vast product portfolio from Search to Cloud. This approach, however, requires tens of billions in annual investment and attracts significant regulatory scrutiny.
In contrast, other firms such as Accenture focus on the enterprise services layer. Their strategy is not to invent foundational AI, but to act as transformation partners that help the global 2000 integrate these new technologies into existing workflows to drive productivity and business outcomes. This capital-light approach leverages deep client relationships and domain expertise, capturing the vast market of enterprise AI adoption, though it operates in a highly competitive space with structurally lower margins.
A third approach involves deep specialization in a single vertical. Companies like Cerence in the automotive sector build highly specific AI solutions that address unique industry needs, allowing them to compete effectively against larger, more generalized platforms. Cerence's development of the CaLLM family of models and the XUI platform is tailored specifically for the hybrid edge-cloud needs of the automotive market, a domain where general-purpose LLMs fall short, creating a defensible moat through proprietary data and deep understanding of specific requirements.
## Financial Performance
### Revenue
Revenue growth in the Artificial Intelligence & Machine Learning industry exhibits a clear bifurcation. This divergence is primarily driven by a company's position within the AI value chain. Hardware providers at the center of the infrastructure buildout are experiencing explosive growth, while software and services firms are seeing strong but less extreme growth fueled by the first wave of enterprise adoption.
NVIDIA (NVDA) exemplifies the hyper-growth driven by infrastructure, reporting a 94% year-over-year revenue increase in Q3 FY25. This surge is directly attributable to the massive demand for its GPUs and AI platforms. In the enterprise services segment, Accenture (ACN) demonstrates robust growth, with its advanced AI revenue tripling year-over-year to $2.7 billion in FY25, reflecting strong enterprise demand for AI integration and transformation services.
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### Profitability
Profitability patterns in the industry show a clear divergence based on proprietary technology and business model. Companies with monopolistic control over essential, proprietary technology command exceptional pricing power and margins. In contrast, service-based businesses, while profitable, operate in a more competitive environment with structurally lower margins.
NVIDIA's (NVDA) 58.03% TTM operating margin is proof of the pricing power that comes from its dominant position in AI hardware. This exceptional profitability is a direct result of its proprietary CUDA software ecosystem and rapid architectural innovation. This contrasts with Accenture's (ACN) healthy but much lower adjusted operating margin of 15.6% in FY25, which is typical for a large-scale professional services firm operating in a highly competitive market.
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### Capital Allocation
Capital allocation in the Artificial Intelligence & Machine Learning industry is singularly focused on investing for growth, either organically through massive capital expenditures or inorganically through strategic M&A. Given the industry is in a foundational, high-growth phase, companies are prioritizing capital deployment to secure a long-term competitive advantage over shareholder returns. The primary theme is aggressive investment in the future, best exemplified by Alphabet's (GOOG) projected $91-$93 billion CapEx plan for AI infrastructure in 2025. Similarly, Accenture (ACN) plans for $3 billion in strategic AI-related acquisitions in FY2026, highlighting the inorganic growth strategy to bolster capabilities and market reach.
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### Balance Sheet
The balance sheets of leading Artificial Intelligence & Machine Learning companies are generally strong and liquid, enabling aggressive investment. The strong profitability and cash generation of the industry leaders have resulted in robust balance sheets. This financial strength is a critical strategic asset, providing the necessary firepower to fund the multi-billion dollar investments in infrastructure and M&A required to compete. Alphabet (GOOG) holds $98.5 billion in cash, cash equivalents, and marketable securities as of September 30, 2025, and generated $73.6 billion in free cash flow for the trailing twelve months, a representative proof point of the financial fortitude of the industry's top players.