AI News 10月08日 15:58
AI可观测性工具推荐
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随着AI系统融入日常决策,可观测性变得至关重要。本文介绍了2025年最佳的五个AI可观测性工具,包括Logz.io、Datadog、EdenAI、Dynatrace和WhyLabs,它们通过提供实时监控、异常检测和性能分析等功能,帮助团队确保AI系统的可靠性和可扩展性。

📊 Logz.io是一个开放的云原生平台,融合了遥测、日志、指标和跟踪,提供AI驱动的根本原因分析、广泛的集成、工作流增强和成本优化功能。

🔍 Datadog从基础设施监控工具演变为企业级AI可观测性平台,提供全面的遥测、机器学习监控和统一界面,支持多种AI和数据科学平台。

🌐 EdenAI解决使用多个AI提供商的企业需求,提供供应商中立的观测平台,聚合遥测流,监控AI服务健康,并提供统一的响应中心。

🤖 Dynatrace以其自主DevOps监控而闻名,其AI可观测性功能包括Davis® AI引擎,可主动识别模型漂移、数据管道问题和异常行为,并提供拓扑映射和预测分析。

📈 WhyLabs采用数据为中心的方法,关注透明度、定量严谨性和主动风险检测,提供管道监控、模型性能仪表板和丰富的遥测集成功能。

Guest author: Or Hillel, Green Lamp

AI systems aren’t experimental anymore, they’re embedded in everyday decisions that affect millions. Yet as these models stretch into important spaces like real-time supply chain routing, medical diagnostics, and financial markets, something as simple as a stealthy data shift or an undetected anomaly can flip confident automation into costly breakdown or public embarrassment.

This isn’t just a problem for data scientists or machine learning engineers. Today, product managers, compliance officers, and business leaders are realising that AI’s value doesn’t just hinge on building a high-performing model, but on deeply understanding how, why, and when these models behave the way they do once exposed to the messiness of the real world.

Enter AI observability, a discipline that’s no longer an optional add-on, but a daily reality for teams committed to reliable, defensible, and scalable AI-driven products.

The best AI observability tools in 2025

1. Logz.io

Logz.io stands out in the AI observability landscape by providing an open, cloud-native platform tailored for the complexities of modern ML and AI systems. Its architecture fuses telemetry, logs, metrics, and traces into one actionable interface, empowering teams to visualize and analyse every stage of the AI lifecycle.

Key features include:

2. Datadog

Datadog has evolved from a classic infrastructure monitoring tool into a powerhouse for AI observability in the enterprise. The platform harnesses an integrated stack of telemetry capture, real-time analytics, and ML-specific dashboards that provide both high-level and granular perspectives in the entire AI lifecycle.

Key features include:

3. EdenAI

EdenAI addresses the needs of enterprises using multiple AI providers with a vendor-agnostic observability platform. The tool aggregates telemetry streams, monitors AI service health, and offers a unified response centre, regardless of the origin of the models, APIs, or data.

Key features include:

4. Dynatrace

Dynatrace has long been known for autonomous DevOps monitoring, and its AI observability features in 2025 carry that innovation into the AI realm. The platform’s core is the Davis® AI engine, which continuously analyses system health, model performance, and end-to-end dependencies throughout your ML pipelines.

Key features include:

5. WhyLabs

WhyLabs has a data-centric approach to AI observability that centres on transparency, quantitative rigor, and proactive detection of risk in ML operations. The platform is built for organisations that want to govern and monitor the entire AI lifecycle, from raw data ingestion to live model predictions.

Key features include:

The real-world impact of AI observability

What does it look like in practice when an organisation gets AI observability right?

Enabling proactive incident response

In a hospital using AI for radiology triage, an unexpected equipment firmware update subtly shifts the pixel values of incoming images. Without observability, this shift goes undetected, producing subtly degraded diagnoses. With observability, the shift triggers alerts, and the team retrains the model or adjusts preprocessing, avoiding patient harm.

Preventing bias and drift

A fintech company notices a sudden, unexplained dip in loan approval rates for a specific demographic. Deep observability enables rapid investigation, diagnosis of data drift due to shifts in an upstream data partner, and quick mitigation, ensuring fairness and compliance.

Supporting human-AI collaboration

Customer support uses AI to recommend ticket responses. Observability-powered dashboards flag when auto-generated advice is leading to longer ticket resolution times for one product line. Teams use this to retrain the model, improving both customer satisfaction and business outcomes.

Choosing the right AI observability tool: Alignment, scale, and ecosystem

Selecting the best observability platform for AI depends on alignment with your organisation’s size, complexity, and goals. Consider:

Investing in the right observability platform is foundational for a resilient, auditable, and high-velocity AI practice in 2025 and beyond.

Guest author: Or Hillel, Green Lamp

Image source: Unsplash

The post 5 best AI observability tools in 2025 appeared first on AI News.

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AI可观测性 Logz.io Datadog EdenAI Dynatrace WhyLabs 机器学习 数据监控
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