TechCrunch News 前天 20:41
Lightrun grabs $70M using AI to debug code in production
index_new5.html
../../../zaker_core/zaker_tpl_static/wap/tpl_guoji1.html

 

Lightrun是一家以色列初创公司,专注于构建可观测性平台,旨在识别和调试代码,从而在问题发生前解决。近期,该公司宣布获得7000万美元B轮融资,突显了市场对这类工具的需求及其在该领域的吸引力。Lightrun的解决方案能够监控IDE中的代码,了解其在生产环境中的行为,并通过AI模拟进行自动调整,从而避免中断和崩溃。AI代码激增导致代码量大增,进而增加了bug出现的可能性,Lightrun的AI调试工具应运而生,旨在解决这一难题。

💡Lightrun是一家以色列初创公司,开发了一个可观测性平台,用于在问题发生前识别和调试代码,从而解决因AI代码激增而导致的bug问题。

💰Lightrun获得了7000万美元的B轮融资,由Accel领投,Insight Partners跟投,表明市场对该公司及其解决方案的需求强劲。

🤖Lightrun的Runtime Autonomous AI Debugger是一款基于AI的调试工具,可在集成开发环境(IDE)中使用,帮助企业应对AI驱动的编码所带来的挑战。

🛡️Lightrun的工具集可以监控IDE中的代码,了解其在生产环境中的行为,并通过AI模拟进行自动调整,从而避免中断和崩溃。

AI-based coding has exploded in popularity on the promise that it will make developers’ jobs faster and easier. But it’s also resulted in something else: a vast increase in lines of code, and thus the likelihood of bugs resulting in crashes or other mishaps. Today, an Israeli startup called Lightrun — which has built an observability platform to identify and debug (remediate) code before those problems arise — is announcing a Series B of $70 million. The funding underscores the not just the gap in the market for tools like these, but also Lightrun’s traction in meeting that demand. 

New backer Accel is co-leading the round alongside previous investor Insight Partners, with participation from Citi, Glilot Capital, GTM Capital, and Sorenson Capital. Lightrun has now raised $110 million to date, including a Series A led by Insight we covered in 2021.

The startup is not disclosing valuation, but there are some strong signs that it’s doing well. 

First, there are its customers. Citi is a strategic backer and is one of an impressive list of big-name clients that also includes ADP, AT&T, ICE/NYSE, Inditex, Microsoft, Priceline, Salesforce, and SAP. 

Second, there is the product and the company’s timing for how it fits into the current market landscape. Back in July 2024, Lightrun announced a new AI-based debugging tool to use within organizations’ integrated developer environments (IDEs), appropriately called the Runtime Autonomous AI Debugger. Although the company’s platform was already delivering impressive results, this was the product that really spoke to the current predicament many enterprises are facing: AI is leading to a lot more coding and a lot more problems, and Lightrun had built an AI tool to address that. 

The company said that revenues have grown 4.5X since it was launched, and that is what got investors knocking. Andrei Brasoveanu, the Accel partner who led the investment for the firm, said that he’d had his eye on Lightrun (observing, even) for years before this, and he finally took the plunge after that launch. 

“Everything came together last year,” he said. “They saw acceleration in the enterprise, all because of AI.”

Timing is something that Ilan Peleg, the CEO who co-founded the company with CTO Leonid Blouvshtein, knows something about. Before turning his attention to further education and eventually building Lightrun, Peleg was a champion middle-distance runner, winning 4 national championships in Israel and ranked in the top 16 of all middle-distance runners across Europe. 

As Peleg sees it, there are dozens of companies building observability tools in the market today (some of the most prominent include the likes of Datadog and App Dynamics). 

But none have yet reached “the holy grail” of such work: not only being able to get a big picture of all the code that is being shipped in production, but to understand how it will interact with what is already being used, and how to anticipate where problems might arise. And to do so with minimal interruption and thus minimal cost to the organization. 

“Code is becoming cheap but bugs are expensive,” he said.

That problem, meanwhile, has reached “an inflection point,” he said. “Developers now can ship more code than ever before,” due to all the automation that is being used, thanks to AI. “But it’s still a very manual process to fix it when things go wrong.”

Lightrun’s breakthrough has been to build an observability toolset that can monitor code just as it is in the IDE and understand how it will behave alongside code that is actively in production. It is then able to automatically made adjustments to the code as it moves into production to continue operating without interruption and crashes. It does this by way of being able to create AI-based simulations to understand that behaviour, and then to fix the code before issues arise. 

“This is the part where we are unique,” Peled said. 

There are a lot of options for how Lightrun might develop, given how close observability sits to other activities in organizations. 

One of those is building tools more specifically for cybersecurity teams, given the obvious security implications that arise out of bugs. Another is potentially building some of its tooling even closer to the point of code creation, to make finding and fixing possible bugs even more efficient. 

For now, the plan is to remain focused on building out its tools, talent and business specifically in the IDE, Peled said. “Everything that poses risk to resilience, we are mitigating,” he said, although he didn’t rule out more purpose-specific tooling in the future. 

As for code assistants, “these might be in our future,” he said, “but even focusing and working only on the problem of software remediation once executed is complex and wide.” It will be hard to anticipate, he said, what code creation will look like in the future. Today, with between 30% and 60% of all production issues estimated to come from code issues generated by both humans and machines, providing a way to observe and fix everything — regardless of how it was created — is what Lightrun is racing to fix.

Fish AI Reader

Fish AI Reader

AI辅助创作,多种专业模板,深度分析,高质量内容生成。从观点提取到深度思考,FishAI为您提供全方位的创作支持。新版本引入自定义参数,让您的创作更加个性化和精准。

FishAI

FishAI

鱼阅,AI 时代的下一个智能信息助手,助你摆脱信息焦虑

联系邮箱 441953276@qq.com

相关标签

Lightrun AI调试 可观测性 代码质量
相关文章