Need smarter insights in your inbox? Join our weekly newsletters to get solely what issues to enterprise AI, knowledge, and safety leaders. Subscribe Now
E2B, a startup offering cloud infrastructure particularly designed for synthetic intelligence brokers, has closed a $21 million Collection A funding spherical led by Perception Companions, capitalizing on surging enterprise demand for AI automation instruments.
The funding comes as an exceptional 88% of Fortune 100 firms have already signed up to make use of E2B’s platform, in line with the corporate, highlighting the fast enterprise adoption of AI agent know-how. The spherical included participation from present traders Decibel, Sunflower Capital, and Kaya, together with notable angels together with Scott Johnston, former CEO of Docker.
E2B’s know-how addresses a important infrastructure hole as firms more and more deploy AI brokers — autonomous software program applications that may execute complicated, multi-step duties together with code technology, knowledge evaluation, and internet looking. In contrast to conventional cloud computing designed for human customers, E2B gives safe, remoted computing environments the place AI brokers can safely run doubtlessly harmful code with out compromising enterprise programs.
“Enterprises have monumental expectations for AI brokers. Nevertheless, we’re asking them to scale and carry out on legacy infrastructure that wasn’t designed for autonomous brokers,” mentioned Vasek Mlejnsky, co-founder and CEO of E2B, in an unique interview with VentureBeat. “E2B solves this by equipping AI brokers with secure, scalable, high-performance cloud infrastructure designed particularly for production-scale agent deployments.”
The AI Impression Collection Returns to San Francisco – August 5
The following section of AI is right here – are you prepared? Be part of leaders from Block, GSK, and SAP for an unique take a look at how autonomous brokers are reshaping enterprise workflows – from real-time decision-making to end-to-end automation.
Safe your spot now – house is restricted: https://bit.ly/3GuuPLF
Seven-figure month-to-month income spike reveals enterprises betting huge on AI automation
The funding displays explosive income development, with E2B including “seven figures” in new enterprise simply up to now month, in line with Mlejnsky. The corporate has processed a whole bunch of hundreds of thousands of sandbox classes since October, demonstrating the dimensions at which enterprises are deploying AI brokers.
E2B’s buyer roster reads like a who’s who of AI innovation: search engine Perplexity makes use of E2B to energy superior knowledge evaluation options for Professional customers, implementing the aptitude in only one week. AI chip firm Groq depends on E2B for safe code execution in its Compound AI programs. Workflow automation platform Lindy built-in E2B to allow customized Python and JavaScript execution inside consumer workflows.
The startup’s know-how has additionally develop into important infrastructure for AI analysis. Hugging Face, the main AI mannequin repository, makes use of E2B to soundly execute code throughout reinforcement studying experiments for replicating superior fashions like DeepSeek-R1. In the meantime, UC Berkeley’s LMArena platform has launched over 230,000 E2B sandboxes to judge giant language fashions’ internet improvement capabilities.
Firecracker microVMs clear up the harmful code drawback plaguing AI improvement
E2B’s core innovation lies in its use of Firecracker microVMs — light-weight digital machines initially developed by Amazon Net Companies — to create fully remoted environments for AI-generated code execution. This addresses a elementary safety problem: AI brokers usually have to run untrusted code that might doubtlessly harm programs or entry delicate knowledge.
“When speaking to clients and particular enterprises, their largest resolution is nearly all the time construct versus purchase,” Mlejnsky defined in an interview. “With the construct versus purchase answer, all of it actually comes down as to whether you wish to spend subsequent six to 12 months constructing this hiring 5 to 10 particular person infrastructure group that can price you at the least half one million {dollars}…or you should utilize our plug and play answer.”
The platform helps a number of programming languages together with Python, JavaScript, and C++, and might spin up new computing environments in roughly 150 milliseconds — quick sufficient to keep up the real-time responsiveness customers anticipate from AI functions.
Enterprise clients significantly worth E2B’s open-source method and deployment flexibility. Firms can self-host your complete platform without cost or deploy it inside their very own digital personal clouds (VPCs) to keep up knowledge sovereignty — a important requirement for Fortune 100 corporations dealing with delicate data.
Excellent timing as Microsoft layoffs sign shift towards AI employee substitute
The funding comes at a pivotal second for AI agent know-how. Latest advances in giant language fashions have made AI brokers more and more able to dealing with complicated, real-world duties. Microsoft lately laid off 1000’s of workers whereas anticipating AI brokers to carry out beforehand human-only work, Mlejnsky identified in our interview.
Nevertheless, infrastructure limitations have constrained AI agent adoption. Business knowledge suggests fewer than 30% of AI brokers efficiently make it to manufacturing deployment, usually resulting from safety, scalability, and reliability challenges that E2B’s platform goals to resolve.
“We’re constructing the following cloud,” Mlejnsky mentioned, outlining the corporate’s bold imaginative and prescient. “The present world runs on Cloud 2.0, which was made for people. We’re constructing the open-source cloud for AI brokers the place they are often autonomous and run securely.”
The market alternative seems substantial. Code technology assistants already produce at the least 25% of the world’s software program code, whereas JPMorgan Chase saved 360,000 hours yearly by means of doc processing brokers. Enterprise leaders anticipate to automate 15% to 50% of guide duties utilizing AI brokers, creating huge demand for supporting infrastructure.
Open-source technique creates defensive moat in opposition to tech giants like Amazon and Google
E2B faces potential competitors from cloud giants like Amazon, Google, and Microsoft, which might theoretically replicate comparable performance. Nevertheless, the corporate has constructed aggressive benefits by means of its open-source method and deal with AI-specific use instances.
“We don’t actually care” concerning the underlying virtualization know-how, Mlejnsky defined, noting that E2B focuses on creating an open customary for the way AI brokers work together with computing assets. “We’re even like really partnering with a whole lot of these cloud suppliers too, as a result of a whole lot of enterprise clients really wish to deploy E2B inside their AWS account.”
The corporate’s open-source sandbox protocol has develop into a de facto customary, with a whole bunch of hundreds of thousands of compute cases demonstrating its real-world effectiveness. This community impact makes it troublesome for opponents to displace E2B as soon as enterprises have standardized on its platform.
Various options like Docker containers, whereas technically potential, lack the safety isolation and efficiency traits required for manufacturing AI agent deployments. Constructing comparable capabilities in-house usually requires 5-10 infrastructure engineers and at the least $500,000 in annual prices, in line with Mlejnsky.
Enterprise options like 24-hour classes and 20,000 concurrent sandboxes drive Fortune 100 adoption
E2B’s enterprise success stems from options particularly designed for large-scale AI deployments. The platform can scale from 100 concurrent sandboxes on the free tier to twenty,000 concurrent environments for enterprise clients, with every sandbox able to operating for as much as 24 hours.
Superior enterprise options embody complete logging and monitoring, community safety controls, and secrets and techniques administration — capabilities important for Fortune 100 compliance necessities. The platform integrates with present enterprise infrastructure whereas offering the granular controls safety groups demand.
“We’ve very sturdy inbound,” Mlejnsky famous, describing the gross sales course of. “As soon as we sort out the 87% we’ll come again for these 13%.” Buyer objections usually deal with safety and privateness controls slightly than elementary know-how considerations, indicating broad market acceptance of the core worth proposition.
Perception Companions’ $21M wager validates AI infrastructure as subsequent main software program class
Perception Companions‘ funding displays rising investor confidence in AI infrastructure firms. The worldwide software program investor, which manages over $90 billion in regulatory belongings, has invested in additional than 800 firms worldwide and seen 55 portfolio firms obtain preliminary public choices.
“Perception Companions is worked up to again E2B’s visionary group as they pioneer important infrastructure for AI brokers,” mentioned Praveen Akkiraju, Managing Director at Perception Companions. “Such fast development and enterprise adoption might be troublesome to attain, and we consider that E2B’s open-source sandbox customary will develop into a cornerstone of safe and scalable AI adoption throughout the Fortune 100 and past.”
The funding will fund growth of E2B’s engineering and go-to-market groups in San Francisco, improvement of further platform options, and assist for the rising buyer base. The corporate plans to strengthen its open-source sandbox protocol as a common customary whereas growing enterprise-grade modules like secrets and techniques vault and monitoring instruments.
The infrastructure play that might outline enterprise AI’s subsequent chapter
E2B’s trajectory reveals a elementary shift in how enterprises method AI deployment. Whereas a lot consideration has targeted on giant language fashions and AI functions, the corporate’s fast adoption amongst Fortune 100 corporations demonstrates that specialised infrastructure has develop into the important bottleneck.
The startup’s success additionally highlights a broader pattern: as AI brokers transition from experimental instruments to mission-critical programs, the underlying infrastructure necessities extra intently resemble these of conventional enterprise software program than client AI functions. Safety, compliance, and scalability — not simply mannequin efficiency — now decide which AI initiatives succeed at scale.
For enterprise know-how leaders, E2B’s emergence as important infrastructure means that AI transformation methods should account for extra than simply mannequin choice and utility improvement. The businesses that efficiently scale AI brokers can be those who make investments early within the specialised infrastructure layer that makes autonomous AI operation potential.
In an period the place AI brokers are poised to deal with an ever-growing share of information work, the platforms that maintain these brokers operating safely could show extra priceless than the brokers themselves.
