AI News 02月08日
Digma’s preemptive observability engine cuts code issues, streamlines AI
index_new5.html
../../../zaker_core/zaker_tpl_static/wap/tpl_guoji1.html

 

Digma公司发布了其预见性可观测性分析(POA)引擎,旨在通过检查、识别并提供修复建议,帮助平衡系统,减少代码库中发现的问题。尤其是在AI代码生成器日益普及的背景下,预见性可观测性的应用显得更为重要。该引擎通过模式匹配和异常检测技术分析数据,预测应用程序的响应时间和资源使用情况,从而在问题造成明显损害之前识别潜在问题。与传统的APM工具不同,Digma的POA引擎不仅限于生产环境,还可以在早期阶段识别性能和扩展问题,从而预防重大问题并降低云成本。

🐛Digma的预见性可观测性分析引擎旨在解决AI代码生成引入的bug,并应对公司在人工编写代码中遇到的长期存在的问题,这些问题可能导致服务水平协议(SLA)违规和性能问题。对于零售、金融科技和电子商务等高交易量的企业,这项技术可能变得非常有价值。

⏱️该引擎使用模式匹配和异常检测技术分析数据,能够预测应用程序的响应时间和资源使用情况,从而在问题造成任何明显损害之前识别潜在问题。Digma通过分析跟踪数据,精确定位导致问题的代码部分。

🛡️预见性可观测性分析可以预防问题,而不是在问题发生后才处理。团队可以进行整体监控,并解决在生产环境中经常被忽略的潜在问题。通过理解运行时行为并为性能问题、扩展问题和团队冲突提供修复建议,Digma正在帮助企业主动预防问题并降低风险,而不是在生产中“救火”。

Digma, a company offering products designed to act on pre-production observability data, has announced the launch of its preemptive observability analysis (POA) engine. The engine is designed to check, identify, and provide ‘fix’ suggestions, helping to balance systems and reduce issues found in codebases as their complexity increases.

The application of preemptive observability in pre-production may be more important as AI code generators become more common , the company claims. For instance, a 2023 Stanford University study revealed that developers using AI coding assistants were more likely to introduce bugs to their code. Despite this, major companies like Google are increasing their reliance on AI-generated code, with over 25% of the company’s new code being AI-created.

Nir Shafrir, CEO and Co-founder of Digma, commented on the growing resources that are being dedicated to ensuring systems perform well, saying, “We’re seeing a lot of effort invested in assuring optimal system performance, but many issues are still being discovered in complex code bases late in production.”

“Beyond this, scaling has often remained a rough estimation in organisations anticipating growth, and many are hitting barriers in technology growth that arise precisely during periods of significant organisational expansion. It means that engineering teams may spend between 20-40% of their time addressing issues discovered late in production environments, with some organisations spending up to 50% of engineering resources on fixing production problems.”

Preemptive observability is expected to become a key factor helping companies gain competitive advantage. It has several potential benefits for AI-generated code, including speed increases and improvements to the reliability of human-written code. According to Digma, preemptive observability helps ensure manually written code is more trustworthy, and reduces risk in the final product.

As well as tackling bugs introduced by AI code generation, Digma’s preemptive observability analysis engine has been designed to combat common, long-established issues companies may have experienced with human-made code, which may result in service level agreement (SLA) violations and performance issues. For high transactional establishments, like retail, fintech, and e-commerce, this technology could become valuable.

Digma’s algorithm has been designed to use pattern matching and anomaly detection techniques to analyse data and find specific behaviours or issues. It is capable of predicting what an application’s response times and resource usage should be, identifying possible issues before they can cause any noticeable damage. Digma specifically detects the part of the code that is causing an issue by analysing tracing data.

Preemptive observability analysis prevents problems rather than dealing with the aftermath of the issues. Teams can monitor holistically, and address potential issues in areas that are frequently ignored once in production.

Roni Dover, CTO and Co-founder of Digma, highlighted what differentiates Digma’s preemptive observability analysis engine from others: “By understanding runtime behaviour and suggesting fixes for performance issues, scaling problems, and team conflicts, we’re helping enterprises prevent problems and reduce risks proactively rather than putting out fires in production.”

Application performance monitoring (APM) tools are used to identify service issues, monitor production statuses, and highlight SLA errors. APMs are practical for sending alerts when services fail or slow during production. But unlike preemptive observability, APMs are limited in non-production settings, and can’t provide analysis of problems’ sources.

By identifying performance and scaling issues early on in the production process, even when data volumes are low, preemptive observability helps prevent major problems and reduce cloud costs.

Digma recently completed a successful $6 million seed funding round, indicating a growing confidence in the technology.

Image source: “Till Bechtolsheimer’s – Alfa Romeo Giulia Sprint GT No.40 – 2013 Donington Historic Festival” by Motorsport in Pictures is licensed under CC BY-NC-SA 2.0.

See also: Microsoft and OpenAI probe alleged data theft by DeepSeek

Want to learn more about AI and big data from industry leaders? Check out AI & Big Data Expo taking place in Amsterdam, California, and London. The comprehensive event is co-located with other leading events including Intelligent Automation Conference, BlockX, Digital Transformation Week, and Cyber Security & Cloud Expo.

Explore other upcoming enterprise technology events and webinars powered by TechForge here.

The post Digma’s preemptive observability engine cuts code issues, streamlines AI appeared first on AI News.

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

Digma 预见性可观测性 AI代码 代码质量 性能优化
相关文章