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Top 10 security categories where VC funding trails Gartner’s 2026 growth forecast, Crunchbase data

Top 10 security categories where VC funding trails Gartner’s 2026 growth forecast, Crunchbase data

Two of Gartner’s 10 fastest-growing security categories have zero venture-backed startups. Firewall equipment, a $26.7 billion market by 2030, and pure-play cloud access security brokers, projected at $7.1 billion, are controlled entirely by incumbent vendors. No startup has raised a dollar in either category since January 2025.

I cross-referenced Gartner’s 1Q26 Information Security forecast against CB Insights, Crunchbase, and PitchBook funding data for every one of the 10 fastest-growing security categories. The question: where is venture capital following Gartner’s growth signal, and where is it missing?

The answer is stark. $93.2 billion in projected 2030 spending across these 10 categories. $11.2 billion in total VC raised by 59 funded startups. That is an 8.3:1 gap between where enterprise demand is heading and where startup capital is flowing. In 5 of 10 categories, the gap exceeds 12:1. As I detailed in last week’s analysis of the 10 fastest-growing categories, growth is concentrating in cloud infrastructure, proactive intelligence, and privacy compliance. The VC data tells you whether anyone is building what CISOs need to buy.

“Cybersecurity leaders are navigating uncharted territory this year as these forces converge, testing the limits of their teams in an environment defined by constant change,” said Alex Michaels, Director at Gartner. The spending data confirms it. The startup funding data shows the supply side has not caught up.

Two of Gartner’s 10 fastest-growing security categories have zero venture-backed startups. Firewall equipment, a $26.7 billion market by 2030, and pure-play cloud access security brokers, projected at $7.1 billion, are controlled entirely by incumbent vendors. No startup has raised a dollar in either category since January 2025. I cross-referenced Gartner’s 1Q26 Information Security forecast against CB Insights, Crunchbase, and PitchBook funding data for every one of the 10 fastest-growing security categories. The question: where is venture capital following Gartner’s growth signal, and where is it missing? The answer is stark. $93.2 billion in projected 2030 spending across these 10 categories. $11.2 billion in total VC raised by 59 funded startups. That is an 8.3:1 gap between where enterprise demand is heading and where startup capital is flowing. In 5 of 10 categories, the gap exceeds 12:1. As I detailed in last week’s analysis of the 10 fastest-growing categories, growth is concentrating in cloud infrastructure, proactive intelligence, and privacy compliance. The VC data tells you whether anyone is building what CISOs need to buy. “Cybersecurity leaders are navigating uncharted territory this year as these forces converge, testing the limits of their teams in an environment defined by constant change,” said Alex Michaels, Director at Gartner. The spending data confirms it. The startup funding data shows the supply side has not caught up. ▼ GRAPHIC: GRAPHIC 2 — Paired bar chart: Gartner 2030 projection vs. VC raised (insert before master table) ▼ Figure 2: Gartner 2030 projections (dark) vs. total VC raised (light) for each of the 10 categories. The master table: Gartner forecast vs. startup funding by category I mapped each Gartner category against every cybersecurity startup that raised equity or debt since January 2025. Each company is assigned to one primary category to avoid double-counting. Gap Ratio is the Gartner 2030 market projection divided by total VC raised. Higher means wider gap. # Gartner Security Category 2025-26 GR 5yr CAGR 2030 Proj Startups Total VC Gap Ratio Verdict 1 Cloud Access Security Brokers (CASB) 27.2% 24.3% $7.1B 4 $182M 39:1 Critical Gap 2 Firewall Equipment (NGFW/FWaaS) 15.9% 9.1% $26.7B 0 $0 ∞ Incumbent Lock 3 Cloud Security Posture Mgmt (CSPM) 33.4% 27.6% $16.2B 6 $752M 21.5:1 Underfunded 4 Vulnerability Assessment 15.7% 12.0% $6.4B 6 $306M 20.9:1 Underfunded 5 Cloud Workload Protection (CWPP) 25.9% 21.0% $16.1B 8 $1.28B 12.6:1 Underfunded 6 Subject Rights Request Automation 16.2% 12.3% $2.3B 2 $240M 9.6:1 M&A Absorbed 7 Network Detection & Response (NDR) 15.6% 12.4% $4.1B 4 $701M 5.9:1 Moderate Gap 8 Zero Trust Network Access (ZTNA) 23.0% 20.9% $6.4B 10 $1.94B 3.3:1 VC Ahead 9 Threat Intelligence 27.3% 21.1% $6.9B 12 $3.16B 2.2:1 Oversupplied 10 Consent & Preference Mgmt 22.1% 18.6% $2.0B 7 $2.61B 0.8:1 Oversupplied Source: Gartner 1Q26 Information Security Market Current Outlook (G00846158, March 2026). Growth rates in constant currency. Funding data from CB Insights, Crunchbase, PitchBook. Analysis by Software Strategies Blog, April 2026. The table splits cleanly into three tiers. Five categories are underfunded or locked out (Gap Ratio above 9:1). Two sit in the middle. Three are oversupplied or ahead of the Gartner signal. I update this comparison every quarter as Gartner releases new forecast data. Get the next one in your inbox. The 3 widest gaps Gap #1: CASB — 39:1, and the category is disappearing Gartner projects cloud access security brokers reaching $7.1 billion by 2030 at a 24.3% CAGR. Total startup funding since January 2025: $182 million across just 4 companies. Company Total Funding Last Round Lead Investor HQ Founded Reco $85M $30M Series B Zeev Ventures New York 2020 Seraphic Security $44M $29M Series A GreatPoint Ventures Palo Alto / Israel 2020 Nudge Security $35M $22.5M Series A Cerberus Ventures Austin, TX 2021 Spin.AI $18M+ Undisclosed (K1) K1 Investment Mgmt Palo Alto 2017 The gap is structural, not cyclical. Pure-play CASB startups no longer exist as a standalone category. The buying motion has shifted to SASE platforms. Cato Networks raised $409 million in a Series G in June 2025, but that money funds a unified SASE platform spanning CASB, ZTNA, and SD-WAN. For CISOs, the implication is direct. If your CASB requirement is standalone, your vendor options are Netskope, Skyhigh, Forcepoint, and a handful of sub-$50 million startups. Expect fewer competitive bids and less pricing leverage than in categories where VC is abundant. Gap #2: CSPM — 21.5:1, the fastest-growing category is still starved Cloud security posture management is the single fastest-growing category in Gartner’s entire information security forecast. 33.4% growth in 2026. $16.2 billion by 2030 at a 27.6% five-year CAGR. Total startup funding: $752 million across 6 companies. Company Total Funding Last Round Lead Investor HQ Founded Upwind Security $430M $250M Series B Bessemer Venture Partners San Francisco 2022 Noma Security $132M $100M Series B Evolution Equity Partners New York / Tel Aviv 2023 Sentra $100M+ $50M Series B Key1 Capital New York / Tel Aviv 2021 Native Security $42M $31M Series A Ballistic Ventures Tel Aviv / Seattle 2024 Mondoo $32.5M $17.5M Series A Ext HV Capital San Francisco 2020 AccuKnox $15M $4M Venture DreamIt Ventures Menlo Park 2020 Upwind alone accounts for 57% of all CSPM startup capital. It hit unicorn status at a $1.5 billion valuation in January 2026. But one company cannot fill a $16.2 billion market. Alphabet’s $32 billion acquisition of Wiz in March 2026 removed the largest independent cloud security company from the startup market entirely. In my analysis of $3.6 billion in agentic AI security funding, I tracked how M&A is filling gaps that VC has not. CSPM is a category where that pattern is accelerating. Gap #3: Vulnerability Assessment — 20.9:1, the most active seed-stage category Gartner projects vulnerability assessment at $6.4 billion by 2030. Total VC: $306 million across 6 companies. Company Total Funding Last Round Lead Investor HQ Founded Zafran Security $130M $60M Series C Menlo Ventures New York 2022 Seemplicity $82M+ $50M Series B Sienna Venture Capital Tel Aviv 2020 Cogent Security $53M $42M Series A Bain Capital Ventures San Francisco 2024 Nucleus Security $20M+ $20M Series C Undisclosed Tampa, FL 2018 Onit Security $11M $11M Seed Hetz Ventures Tel Aviv 2025 ZAST.AI ~$10M $6M Pre-A Hillhouse Capital Seattle 2024 ▼ GRAPHIC: GRAPHIC 3 — Top funded startups in underfunded categories (insert after Vuln Assess table) ▼ Figure 3: Total funding by startup across the three underfunded categories (CSPM, CWPP, Vulnerability Assessment). This is the category with the most active early-stage investment. Cogent Security and Onit Security both use AI agents for autonomous vulnerability remediation. Zafran tripled ARR since its prior round. The agentic AI thesis is landing hardest in vulnerability management, and the funding trail shows it. Balbix, which had raised $98.6 million, was acquired in November 2025. For CISOs evaluating this category, the vendor field is young and fragmented. Half of the funded companies were founded in 2024 or later. Where VC is ahead of Gartner Three categories show the opposite pattern. In Consent & Preference Management, OneTrust alone has raised $2.1 billion against a $2.0 billion Gartner projection. In Threat Intelligence, $3.16 billion in VC against a $6.9 billion projection, but Dataminr ($1.24B) and ReliaQuest ($1.13B) account for 75% of the total. In ZTNA, Cato Networks’ $1.1 billion alone represents 57% of all category funding. ▼ GRAPHIC: GRAPHIC 4 — Concentration risk donut charts (insert after VC-ahead section) ▼ Figure 4: Single-company concentration in CWPP, ZTNA, and Threat Intelligence funding. The concentration risk matters. Strip out the single largest company in each oversupplied category and the gap ratios invert. Consent without OneTrust: $510 million, Gap Ratio 3.9:1. Threat Intelligence without Dataminr and ReliaQuest: $790 million, Gap Ratio 8.7:1. ZTNA without Cato: $835 million, Gap Ratio 7.7:1. M&A is filling the gaps VC won’t When startups cannot fill the gap, platform vendors acquire. The $3.6 billion in agentic AI security funding and $96 billion in M&A I tracked in March tells this story at scale. Palo Alto Networks assembled $29 billion in acquisitions. ServiceNow spent $11.6 billion. Alphabet closed $32 billion for Wiz. Veeam acquired Securiti.ai for $1.725 billion, removing the leading subject rights automation vendor from the independent market. Forrester’s 2026 cybersecurity budget data confirms the same pattern from the buyer side. Security budgets are growing, but the spend is concentrating in fewer, larger platform purchases. What this means for CISOs In underfunded categories, build internally or accept platform vendor lock-in. CSPM, vulnerability assessment, and CWPP all have Gap Ratios above 12:1. Fewer funded startups means fewer competitive alternatives. If your preferred vendor gets acquired, as Wiz, Securiti.ai, and Balbix all were, your roadmap depends on the acquirer’s priorities, not yours. In oversupplied categories, use the competition for better pricing. ZTNA, threat intelligence, and consent management have abundant VC-backed alternatives. Negotiate harder. Run competitive evaluations with three or more vendors. The funding data tells you which categories give you leverage. Watch for single-company concentration. Chainguard holds 70% of all CWPP startup funding. Cato holds 57% of ZTNA. OneTrust holds 80% of consent management. If any of these companies pivots, gets acquired, or fails, the category funding picture changes overnight. Bottom line Gartner projects $93.2 billion in 2030 spending across the 10 fastest-growing security categories. Venture capital has funded $11.2 billion in startups since January 2025. The 8.3:1 blended gap tells you the overall story. The category-level ratios tell you where to act. Cloud security posture management, vulnerability assessment, and cloud workload protection are growing at 2x to 3x the market average but remain underfunded relative to Gartner’s projections. Two categories, firewall equipment and pure-play CASB, have no startup investment at all. Platform vendors are filling gaps through acquisition at a pace that is reshaping every competitive evaluation. This is the third quarter I have tracked Gartner’s security forecast against independent funding data. The gap between enterprise demand and startup supply keeps widening. Gartner’s 2Q26 forecast lands in July. I will break down the updated Gap Ratios the week it drops. I wrote a shorter editorial take on what these gaps mean for CISO budgets on my Substack. Source: Gartner, Information Security Market Current Outlook, Worldwide, 1Q26 (G00846158), March 2026. Growth rates in constant currency. Dollar figures in current U.S. dollars. Funding data from CB Insights, Crunchbase, PitchBook, Statista. Cross-referenced against company press releases. Analysis by Software Strategies Blog.

The master table: Gartner forecast vs. startup funding by category

I mapped each Gartner category against every cybersecurity startup that raised equity or debt since January 2025. Each company is assigned to one primary category to avoid double-counting. Gap Ratio is the Gartner 2030 market projection divided by total VC raised. Higher means wider gap.

# Gartner Security Category 2025-26 GR 5yr CAGR 2030 Proj Startups Total VC Gap Ratio Verdict
1 Cloud Access Security Brokers (CASB) 27.2% 24.3% $7.1B 4 $182M 39:1 Critical Gap
2 Firewall Equipment (NGFW/FWaaS) 15.9% 9.1% $26.7B 0 $0 Incumbent Lock
3 Cloud Security Posture Mgmt (CSPM) 33.4% 27.6% $16.2B 6 $752M 21.5:1 Underfunded
4 Vulnerability Assessment 15.7% 12.0% $6.4B 6 $306M 20.9:1 Underfunded
5 Cloud Workload Protection (CWPP) 25.9% 21.0% $16.1B 8 $1.28B 12.6:1 Underfunded
6 Subject Rights Request Automation 16.2% 12.3% $2.3B 2 $240M 9.6:1 M&A Absorbed
7 Network Detection & Response (NDR) 15.6% 12.4% $4.1B 4 $701M 5.9:1 Moderate Gap
8 Zero Trust Network Access (ZTNA) 23.0% 20.9% $6.4B 10 $1.94B 3.3:1 VC Ahead
9 Threat Intelligence 27.3% 21.1% $6.9B 12 $3.16B 2.2:1 Oversupplied
10 Consent & Preference Mgmt 22.1% 18.6% $2.0B 7 $2.61B 0.8:1 Oversupplied

Source: Gartner 1Q26 Information Security Market Current Outlook (G00846158, March 2026). Growth rates in constant currency. Funding data from CB Insights, Crunchbase, PitchBook. Analysis by Software Strategies Blog, April 2026.

The table splits cleanly into three tiers. Five categories are underfunded or locked out (Gap Ratio above 9:1). Two sit in the middle. Three are oversupplied or ahead of the Gartner signal.

I update this comparison every quarter as Gartner releases new forecast data. Get the next one in your inbox.

The 3 widest gaps

Gap #1: CASB — 39:1, and the category is disappearing

Gartner projects cloud access security brokers reaching $7.1 billion by 2030 at a 24.3% CAGR. Total startup funding since January 2025: $182 million across just 4 companies.

Company Total Funding Last Round Lead Investor HQ Founded
Reco $85M $30M Series B Zeev Ventures New York 2020
Seraphic Security $44M $29M Series A GreatPoint Ventures Palo Alto / Israel 2020
Nudge Security $35M $22.5M Series A Cerberus Ventures Austin, TX 2021
Spin.AI $18M+ Undisclosed (K1) K1 Investment Mgmt Palo Alto 2017

The gap is structural, not cyclical. Pure-play CASB startups no longer exist as a standalone category. The buying motion has shifted to SASE platforms. Cato Networks raised $409 million in a Series G in June 2025, but that money funds a unified SASE platform spanning CASB, ZTNA, and SD-WAN.

For CISOs, the implication is direct. If your CASB requirement is standalone, your vendor options are Netskope, Skyhigh, Forcepoint, and a handful of sub-$50 million startups. Expect fewer competitive bids and less pricing leverage than in categories where VC is abundant.

Gap #2: CSPM — 21.5:1, the fastest-growing category is still starved

Cloud security posture management is the single fastest-growing category in Gartner’s entire information security forecast. 33.4% growth in 2026. $16.2 billion by 2030 at a 27.6% five-year CAGR. Total startup funding: $752 million across 6 companies.

Company Total Funding Last Round Lead Investor HQ Founded
Upwind Security $430M $250M Series B Bessemer Venture Partners San Francisco 2022
Noma Security $132M $100M Series B Evolution Equity Partners New York / Tel Aviv 2023
Sentra $100M+ $50M Series B Key1 Capital New York / Tel Aviv 2021
Native Security $42M $31M Series A Ballistic Ventures Tel Aviv / Seattle 2024
Mondoo $32.5M $17.5M Series A Ext HV Capital San Francisco 2020
AccuKnox $15M $4M Venture DreamIt Ventures Menlo Park 2020

Upwind alone accounts for 57% of all CSPM startup capital. It hit unicorn status at a $1.5 billion valuation in January 2026. But one company cannot fill a $16.2 billion market.

Alphabet’s $32 billion acquisition of Wiz in March 2026 removed the largest independent cloud security company from the startup market entirely. In my analysis of $3.6 billion in agentic AI security funding, I tracked how M&A is filling gaps that VC has not. CSPM is a category where that pattern is accelerating.

Gap #3: Vulnerability Assessment — 20.9:1, the most active seed-stage category

Gartner projects vulnerability assessment at $6.4 billion by 2030. Total VC: $306 million across 6 companies.

Company Total Funding Last Round Lead Investor HQ Founded
Zafran Security $130M $60M Series C Menlo Ventures New York 2022
Seemplicity $82M+ $50M Series B Sienna Venture Capital Tel Aviv 2020
Cogent Security $53M $42M Series A Bain Capital Ventures San Francisco 2024
Nucleus Security $20M+ $20M Series C Undisclosed Tampa, FL 2018
Onit Security $11M $11M Seed Hetz Ventures Tel Aviv 2025
ZAST.AI ~$10M $6M Pre-A Hillhouse Capital Seattle 2024

 

This is the category with the most active early-stage investment. Cogent Security and Onit Security both use AI agents for autonomous vulnerability remediation. Zafran tripled ARR since its prior round. The agentic AI thesis is landing hardest in vulnerability management, and the funding trail shows it.

Balbix, which had raised $98.6 million, was acquired in November 2025. For CISOs evaluating this category, the vendor field is young and fragmented. Half of the funded companies were founded in 2024 or later.

Where VC is ahead of Gartner

Three categories show the opposite pattern. In Consent & Preference Management, OneTrust alone has raised $2.1 billion against a $2.0 billion Gartner projection. In Threat Intelligence, $3.16 billion in VC against a $6.9 billion projection, but Dataminr ($1.24B) and ReliaQuest ($1.13B) account for 75% of the total. In ZTNA, Cato Networks’ $1.1 billion alone represents 57% of all category funding.

The concentration risk matters. Strip out the single largest company in each oversupplied category and the gap ratios invert. Consent without OneTrust: $510 million, Gap Ratio 3.9:1. Threat Intelligence without Dataminr and ReliaQuest: $790 million, Gap Ratio 8.7:1. ZTNA without Cato: $835 million, Gap Ratio 7.7:1.

M&A is filling the gaps VC won’t

When startups cannot fill the gap, platform vendors acquire. The $3.6 billion in agentic AI security funding and $96 billion in M&A I tracked in March tells this story at scale. Palo Alto Networks assembled $29 billion in acquisitions. ServiceNow spent $11.6 billion. Alphabet closed $32 billion for Wiz. Veeam acquired Securiti.ai for $1.725 billion, removing the leading subject rights automation vendor from the independent market.

Forrester’s 2026 cybersecurity budget data confirms the same pattern from the buyer side. Security budgets are growing, but the spend is concentrating in fewer, larger platform purchases.

What this means for CISOs

In underfunded categories, build internally or accept platform vendor lock-in. CSPM, vulnerability assessment, and CWPP all have Gap Ratios above 12:1. Fewer funded startups means fewer competitive alternatives. If your preferred vendor gets acquired, as Wiz, Securiti.ai, and Balbix all were, your roadmap depends on the acquirer’s priorities, not yours.

In oversupplied categories, use the competition for better pricing. ZTNA, threat intelligence, and consent management have abundant VC-backed alternatives. Negotiate harder. Run competitive evaluations with three or more vendors. The funding data tells you which categories give you leverage.

Watch for single-company concentration. Chainguard holds 70% of all CWPP startup funding. Cato holds 57% of ZTNA. OneTrust holds 80% of consent management. If any of these companies pivots, gets acquired, or fails, the category funding picture changes overnight.

Bottom line

Gartner projects $93.2 billion in 2030 spending across the 10 fastest-growing security categories. Venture capital has funded $11.2 billion in startups since January 2025. The 8.3:1 blended gap tells you the overall story. The category-level ratios tell you where to act.

Cloud security posture management, vulnerability assessment, and cloud workload protection are growing at 2x to 3x the market average but remain underfunded relative to Gartner’s projections. Two categories, firewall equipment and pure-play CASB, have no startup investment at all. Platform vendors are filling gaps through acquisition at a pace that is reshaping every competitive evaluation.

This is the third quarter I have tracked Gartner’s security forecast against independent funding data. The gap between enterprise demand and startup supply keeps widening. Gartner’s 2Q26 forecast lands in July. I will break down the updated Gap Ratios the week it drops. I wrote a shorter editorial take on what these gaps mean for CISO budgets on my Substack.

Source: Gartner, Information Security Market Current Outlook, Worldwide, 1Q26 (G00846158), March 2026. Growth rates in constant currency. Dollar figures in current U.S. dollars. Funding data from CB Insights, Crunchbase, PitchBook, Statista. Cross-referenced against company press releases. Analysis by Software Strategies Blog.

 

$3.6 Billion in Crunchbase funding, $96 Billion in M&A, and 10 Agentic AI security startups Reshaping 2026

Palo Alto Networks spent $29 billion acquiring three companies. ServiceNow spent $11.6 billion on three more. Alphabet paid $32 billion for Wiz. The startups building agentic AI defenses raised $3.6 billion. Total MCP security funding for 17,000+ deployed servers: $40 million. Then RSAC 2026 happened.

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Top ten cybersecurity startups to watch in 2025 according to $3.21B in investor bets

Top Ten Cybersecurity Startups to Watch in 2025 According to $3.21B in Investor Bets

While the industry still debates whether AI will transform cybersecurity, investors have already made up their minds.

Based on an analysis of the latest Crunchbase data compiled recently that spans January 2024 to October 2025, ten standout startups captured $1.41 billion in new funding, signaling that machine-speed defense against AI-driven threats is no longer optional; it’s an operational reality. Together, these ten startups have raised $3.21 billion, which represents one of the heaviest capital concentrations in cybersecurity startups to date.

Investors are gravitating to cybersecurity startups that solve complex problems

CrowdStrike’s Falcon 2025 event, held earlier this year in Las Vegas, showcased a series of new agentic AI developments that, taken together, reflect how cross-platform and cross-competitor collaboration aimed at shutting down increasingly complex weaponized AI threats leads to faster innovation. VentureBeat’s analysis of the many announcements there explains how the cybersecurity company is betting on agentic AI to defeat adversaries.

Interested in quantifying how AI is impacting investors’ decisions, I completed an analysis using Crunchbase data covering 342 verified cybersecurity startups with active funding. Selection was weighted toward recent momentum, total funding scale, stage maturity, AI integration, and proof through multiple rounds.

The key takeaway: Institutional capital is consolidating around companies that make autonomous security practical, and agentic AI is at the core of that direction. But AI is not enough; investors are looking for the ability to scale in enterprises once they have AI integrated into their core platforms.

AI in cybersecurity: Tablestakes, not a ticket to premium valuation

Sixty percent of startups integrate AI into their core technology. Yet contrary to hype, that hasn’t bought them higher valuations.

  • AI-integrated startups average $283M in funding.
  • Non-AI specialists average $378M.

Crunchbase data shows investors reward defensible specialization as much as AI capability. Quantinuum’s $925M for post-quantum cryptography and Zama’s $139M for homomorphic encryption prove that solving foundational security problems often supersedes AI as a differentiator.

Still, AI holds weight in investment decisions. Six AI-driven startups pulled $1.70B (52.8%), while four non-AI companies captured $1.51B (47.2%). Both models earn trust by underscoring AI for operational speed and deep tech for architectural resilience. And with seven of ten now at Series B maturity, investors are backing platforms that have already demonstrated enterprise traction, not experiments.

1. Quantinuum ($925M, Series B) Post-Quantum Defense. Closed a $600M Series B in August 2025. The company is building the only mathematical safeguard against the inevitable collapse of RSA and ECC encryption under quantum computing.

2. Saronic ($845M, Series B) Autonomous Maritime Security, Raised $175M in July 2024 for AI-powered unmanned surface vessels. With 90% of trade moving across exposed waterways, Saronic brings AI defense to the physical infrastructure that most enterprises overlook.

3. Auradine ($314M, Series B) AI Silicon for Security. Raised $80M to expand custom silicon that accelerates cryptographic workloads 10x faster than general-purpose hardware, eliminating bottlenecks in AI-driven security deployments.

4. Tines ($271M, Series B) No-Code Automation. Secured $50M Series B. Turns analysts into automation builders, saving 40+ hours weekly with drag-and-drop workflows that are proving critical for overextended SOC teams.

5. Dream Security ($198M, Series B) Critical Infrastructure Defense. Closed $100M in 2025. Their sovereign AI platform equips critical infrastructure with defenses calibrated to nation-state-level threats, providing a layer that traditional enterprise tools cannot reach.

6. Upwind Security ($180M, Series A)  Runtime Cloud Visibility. Raised $100M in December 2024. Focused on runtime intelligence, detecting abnormal behavior live rather than flagging static misconfigurations. Reduces false positives, elevates real threats.

7. Zama ($139M, Series B)  Homomorphic Encryption. Raised $57M in June 2025 after a $73M Series A in March 2024. Provides production-ready fully homomorphic encryption, enabling AI models to compute securely on encrypted data.

8. Noma Security ($132M, Series B)  Securing AI Agents. Closed $100M in 2025. Built to harden AI systems against prompt injection and model poisoning as enterprises push decision-making into autonomous agents.

9. ZeroEyes ($107M, Series B)  Firearm Detection AI. Raised $53M in 2025. Eleven rounds in, their AI models detect firearms on video feeds in seconds—cutting active shooter response time dramatically.

10. Upscale AI ($100M, Seed)  AI Networking Infrastructure. Raised a $100M Seed round in 2025. Building AI-native networking with hardware-accelerated encryption, aimed at high-performance compute environments.

The Bottom Line

Series B dominance (70%) shows that capital is flowing into platforms with market traction, not speculative bets. Forty-six rounds across these ten companies demonstrate durability and enterprise validation. The signal to security leaders is becoming clear based on the escalating nature of weaponized AI attacks: manual security processes are now liabilities. Defending at human speed against AI-enabled attackers is untenable. Investors understand this. $1.41B in recent capital confirms it.

The Top 20 Machine Learning Startups To Watch In 2021

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  • There are a record number of 9,977 machine learning startups and companies in Crunchbase today, an 8.2% increase over the 9,216 startups listed in 2020 and a 14.6% increase over the 8,705 listed in 2019.
  • Artificial Intelligence (A.I.) and machine learning (ML)-related companies received a record $27.6 billion in funding in 2020, according to Crunchbase. 
  • Of those A.I. and machine learning startups receiving funding since January 1, 2020, 62% are seed rounds, 31% early-stage venture rounds and 6.7% late-stage venture capital-funded rounds.
  • A.I. and machine learning startups’ median funding round was $4.4 million and the average was $29.8 million in 2020, according to Crunchbase.

Throughout 2020, venture capital firms continued expanding into new global markets, with London, New York, Tel Aviv, Toronto, Boston, Seattle and Singapore startups receiving increased funding. Out of the 79 most popular A.I. & ML startup locations, 15 are in the San Francisco Bay Area, making that region home to 19% of startups who received funding in the last year. Israel’s Tel Aviv region has 37 startups who received venture funding over the last year, including those launched in Herzliya, a region of the city known for its robust startup and entrepreneurial culture.  

The following graphic compares the top 10 most popular locations for A.I. & ML startups globally based on Crunchbase data as of today:

Top 20 Machine Learning Startups To Watch In 2021

Augury – Augury combines real-time monitoring data from production machinery with AI and machine learning algorithms to determine machine health, asset performance management (APM) and predictive maintenance (PdM) to provide manufacturing companies with new insights into their operations. The digital machine health technology that the company offers can listen to the machine, analyze the data and catch any malfunctions before they arise. This enables customers to adjust their maintenance and manufacturing processes based on actual machine conditions. The platform is in use with HVAC, industrial factories and commercial facilities.

Alation – Alation is credited with pioneering the data catalog market and is well-respected in the financial services community for its use of A.I. to interpret and present data for analysis. Alation has also set a quick pace to evolving its platform to include data search & discovery, data governance, data stewardship, analytics and digital transformation. With its Behavioral Analysis Engine, inbuilt collaboration capabilities and open interfaces, Alation combines machine learning with human insight to successfully tackle data and metadata management challenges. More than 200 enterprises are using Alation’s platform today, including AbbVie, American Family Insurance, Cisco, Exelon, Finnair, Munich Re, New Balance, Pfizer, Scandinavian Airlines and U.S. Foods. Headquartered in Silicon Valley, Alation is backed by leading venture capitalists including Costanoa, Data Collective, Icon, Sapphire and Salesforce Ventures.

Algorithmia – Algorithmia’s expertise is in machine learning operations (MLOps) and helping customers deliver ML models to production with enterprise-grade security and governance. Algorithmia automates ML deployment, provides tooling flexibility, enables collaboration between operations and development and leverages existing SDLC and CI/CD practices. Over 110,000 engineers and data scientists have used Algorithmia’s platform to date, including the United Nations, government intelligence agencies and Fortune 500 companies.

Avora – Avora is noteworthy for its augmented analytics platform, making in-depth data analysis intuitively as easy as performing web searches. The company’s unique technology hides complexity, empowering non-technical users to run and share their reports easily. By eliminating the limitations of existing analytics, reducing data preparation and discovery time by 50-80% and accelerating time to insight, Avora uses ML to streamline business decision-making. Headquartered in London with offices in New York and Romania, Avora helps accelerate decision making and productivity for customers across various industries and markets, including Retail, Financial Services, Advertising, Supply Chain and Media and Entertainment.

Boast.ai – Focused on helping companies in the U.S. and Canada recover their R&D costs from respective federal governments, Boast.ai enables engineers and accountants to gain tax credits using AI-based tools. Some of the tax programs Boast.ai works with include US R&D Tax Credits, Scientific Research and Experimental Development (SR&ED) and Interactive Digital Media Tax Credits (IDMTC). The startup has offices in San Francisco, Vancouver and Calgary.

ClosedLoop.ai – An Austin, Texas-based startup, ClosedLoop.ai has created one of the healthcare industry’s first data science platforms that streamline patient experiences while improving healthcare providers’ profitability.  Their machine learning automation platform and a catalog of pre-built predictive and prescriptive models can be customized and extended based on a healthcare provider’s unique population or client base needs. Examples of their technology applications include predicting admissions/readmissions, predicting total utilization & total risk, reducing out-of-network utilization, avoiding appointment no-shows, predicting chronic disease onset or progression and improving clinical documentation and reimbursement. The Harvard Business School, through its Kraft Precision Medicine Accelerator, recently named ClosedLoop.ai as one of the fastest accelerating companies in its Real World Data Analytics Landscapes report.

Databand – A Tel Aviv-based startup that provides a software platform for agile machine learning development, Databand was founded in 2018 by Evgeny Shulman, Joshua Benamram and Victor Shafran. Data engineering teams are responsible for managing a wide suite of powerful tools but lack the utilities they need to ensure their ops are running properly. Databand fills this gap with a solution that enables teams to gain a global view of their data flows, make sure pipelines complete successfully and monitor resource consumption and costs. Databand fits natively in the modern data stack, plugging seamlessly into tools like Apache Airflow, Spark, Kubernetes and various ML offerings from the major cloud providers.

DataVisor – DataVisor’s approach to using AI for increasing fraud detection accuracy on a platform level is noteworthy. Using proprietary unsupervised machine learning algorithms, DataVisor enables organizations to detect and act on fast-evolving fraud patterns and prevent future attacks before they happen. Combining advanced analytics and an intelligence network of more than 4.2B global user accounts, DataVisor protects against financial and reputational damage across various industries, including financial services, marketplaces, e-commerce and social platforms. They’re one of the more fascinating cybersecurity startups using AI today.

Exceed.ai – What makes Exceed.ai noteworthy is how their AI-powered sales assistant platform automatically communicates the lead’s context and enables sales and marketing teams to scale their lead engagement and qualification efforts accordingly. Exceed.ai follows up with every lead and qualifies them quickly through two-way, automated conversations with prospects using natural language over chat and email. Sales reps are freed from performing error-prone and repetitive tasks, allowing them to focus on revenue-generating activities such as phone calls and demos with potential customers.

Indico – Indico is a Boston-based startup specializing in solving the formidable challenge of how dependent businesses are on unstructured content yet lack the frameworks, systems and tools to manage it effectively. Indico provides an enterprise-ready A.I. platform that organizes unstructured content while streamlining and automating back-office tasks. Indico is noteworthy given its track record of helping organizations automate manual, labor-intensive, document-based workflows.  Its breakthrough in solving these challenges is an approach known as transfer learning, which allows users to train machine learning models with orders of magnitude fewer data than required by traditional rule-based techniques. Indico enables enterprises to deploy A.I. to unstructured content challenges more effectively while eliminating many common barriers to A.I. & ML adoption.

LeadGenius – LeadGenius is noteworthy for its use of AI to provide personalized and actionable B2B lead information that helps its clients attain their global revenue growth goals. LeadGenius’s worldwide team of researchers uses proprietary technologies, including AI and ML-based techniques, to deliver customized lead generation, lead enrichment and data hygiene services in the format, methods and frequency defined by the customer. Their mission is to enable B2B sales and marketing organizations to connect with their prospects via unique and personalized data sets.

Netra – Netra is a Boston-based startup that began as part of MIT CSAIL research and has multiple issued and pending patents on its technology today. Netra is noteworthy for how advanced its video imagery scanning and text metadata interpretation are, ensuring safety and contextual awareness. Netra’s patented A.I. technology analyzes videos in real-time for contextual references to unsafe content, including deepfakes and potential cybersecurity threats. 

Particle –  Particle is an end-to-end IoT platform that combines software including A.I., hardware and connectivity to provide a wide range of organizations, from startups to enterprises, with the framework they need to launch IoT systems and networks successfully.  Particle customers include Jacuzzi, Continental Tires, Watsco, Shifted Energy, Anderson EV, Opti and others. Particle is venture-backed and has offices in San Francisco, Shenzhen, Las Vegas, Minneapolis and Boston. Particle’s developer community includes over 200,000 developers and engineers in more than 170 countries today.

RideVision – RideVision was founded in 2018 by motorcycle enthusiasts Uri Lavi and Lior Cohen. The company is revolutionizing the motorcycle-safety industry by harnessing the strength of artificial intelligence and image-recognition technology, ultimately providing riders with a much broader awareness of their surroundings, preventing collisions and enabling bikers to ride with full confidence that they are safe. RideVision’s latest round was $7 million in November of last year, bringing their total funding to $10 million in addition to a partnership with Continental AG.

Savvie – Savvie is an Oslo-based startup specializing in translating large volumes of data into concrete actions that bakery and café owners can utilize to improve their bottom line every day.  In doing so, we help food businesses make the right decisions to optimize their operations and increase profitability while reducing waste at its source. What’s noteworthy about this startup is how adept they are at fine-tuning ML algorithms to provide their clients with customized recommendations and real-time insights about their food and catering businesses.  Their ML-driven insights are especially valuable given how bakery and café owners are pivoting their business models in response to the pandemic.

SECURITI.ai – One of the most innovative startups in cybersecurity, combining AI and ML to secure sensitive data in multi-cloud and mixed platform environments, SECURITI.ai is a machine learning company to watch in 2021, especially if you are interested in cybersecurity.  Their AI-powered platform and systems enable organizations to discover potential breach risk areas across multi-cloud, SaaS and on-premise environments, protect it and automate all private systems, networks and infrastructure functions.

SkyHive – SkyHive is an artificial intelligence-based SaaS platform that aims to reskill enterprise workforces and communities. It develops and commercializes a methodology, Quantum Labor Analysis, to deliver real-time, skill-level insights into internal workforces and external labor markets, identify future and emerging skills and facilitate individual-and company-level reskilling. SkyHive is industry-agnostic and supporting enterprise and government customers globally with a mission to reduce unemployment and underemployment. Sean Hinton founded the technology company in Vancouver, British Columbia, in 2017.

Stravito – Stravito is an A.I. startup that’s combining machine learning, Natural Language Processing (NLP) and Search to help organizations find and get more value out of the many market research reports, competitive, industry, market share, financial analysis and market projection analyses they have by making them searchable. Thor Olof Philogène and Sarah Lee founded the company in 2017, who identified an opportunity to help companies be more productive, getting greater value from their market research investments. Thor Olof Philogène and Andreas Lee were co-founders of NORM, a research agency where both worked for 15 years serving multinational brands, eventually selling the company to IPSOS. While at NORM, Anders and Andreas were receiving repeated calls from global clients that had bought research from them but could not find it internally and ended up calling them asking for a copy. Today the startup has Carlsberg, Comcast, Colruyt Group, Danone, Electrolux, Pepsi Lipton and others. Stravito has offices in Stockholm (H.Q.), Malmö and Amsterdam.

Verta.ai – Verta is a startup dedicated to solving the complex problems of managing machine learning model versions and providing a platform to launch models into production. Founded by Dr. Manasi Vartak, Ph.D., a graduate of MIT, who led a team of graduate and undergraduate students at MIT CSAIL to build ModelDB, Verta is based on their work define the first open-source system for managing machine learning models. Her dissertation, Infrastructure for model management and model diagnosis, proposes ModelDB, a system to track ML-based workflows’ provenance and performance. In August of this year, Verta received a $10 million Series A round led by Intel Capital and General Catalyst, who also led its $1.7 million seed round. For additional details on Verta.ai, please see How Startup Verta Helps Enterprises Get Machine Learning Right. The Verta MLOps platform launch webinar provides a comprehensive overview of the platform and how it’s been designed to streamline machine learning models into production:

V7 – V7 allows vision-based A.I. systems to learn continuously from training data with minimal human supervision. The London-based startup emerged out of stealth in August 2018 to reveal V7 Darwin, an image labeling platform to create training data for computer vision projects with little or no human involvement necessary. V7 specializes in healthcare, life sciences, manufacturing, autonomous driving, agri-tech, sporting clients like Merck, GE Healthcare and Toyota. V7 Darwin launched at CVPR 2019 in Long Beach, CA. Within its first year, it has semi-automatically annotated over 1,000 image and video segmentation datasets. V7 Neurons is a series of pre-trained image recognition applications for industry use. The following video explains how V7 Darwin works: