惯性聚合 高效追踪和阅读你感兴趣的博客、新闻、科技资讯
阅读原文 在惯性聚合中打开

推荐订阅源

酷 壳 – CoolShell
酷 壳 – CoolShell
H
Hacker News: Front Page
P
Palo Alto Networks Blog
T
ThreatConnect
Apple Machine Learning Research
Apple Machine Learning Research
博客园_首页
T
True Tiger Recordings
P
Privacy & Cybersecurity Law Blog
B
Blog
IT之家
IT之家
Last Week in AI
Last Week in AI
F
Full Disclosure
Hacker News: Ask HN
Hacker News: Ask HN
C
Comments on: Blog
Microsoft Azure Blog
Microsoft Azure Blog
C
Cybersecurity and Infrastructure Security Agency CISA
Microsoft Security Blog
Microsoft Security Blog
博客园 - 【当耐特】
N
News and Events Feed by Topic
NISL@THU
NISL@THU
腾讯CDC
雷峰网
雷峰网
Security Latest
Security Latest
李成银的技术随笔
M
Microsoft Research Blog - Microsoft Research
L
LangChain Blog
L
Lohrmann on Cybersecurity
cs.CL updates on arXiv.org
cs.CL updates on arXiv.org
C
Check Point Blog
Y
Y Combinator Blog
Recent Announcements
Recent Announcements
博客园 - Franky
N
News | PayPal Newsroom
V
V2EX
A
About on SuperTechFans
The Register - Security
The Register - Security
月光博客
月光博客
奇客Solidot–传递最新科技情报
奇客Solidot–传递最新科技情报
Google Online Security Blog
Google Online Security Blog
MyScale Blog
MyScale Blog
Cisco Talos Blog
Cisco Talos Blog
Vercel News
Vercel News
WordPress大学
WordPress大学
C
Cyber Attacks, Cyber Crime and Cyber Security
The Hacker News
The Hacker News
IntelliJ IDEA : IntelliJ IDEA – the Leading IDE for Professional Development in Java and Kotlin | The JetBrains Blog
IntelliJ IDEA : IntelliJ IDEA – the Leading IDE for Professional Development in Java and Kotlin | The JetBrains Blog
爱范儿
爱范儿
A
Arctic Wolf
L
LINUX DO - 最新话题
freeCodeCamp Programming Tutorials: Python, JavaScript, Git & More

Datadog | The Monitor blog

Reduce CVE noise with OpenVEX assessments in Datadog How we made a SQL query optimization agent 59% more accurate using autoresearch and LLM Observability How to audit and clean up monitors effectively Diagnose slow PostgreSQL queries faster with explain plan correlation Explore Datadog metrics with Natural Language Queries Toto 2.0: Time series forecasting enters the scaling era Simplify micro-frontend observability with Datadog RUM Attribute AI costs across providers with Datadog Cloud Cost Management Diagnose and resolve database performance issues faster with Database Investigator Datadog for Government achieves FedRAMP® High certification Analyze cloud costs with flexible spreadsheets in Datadog Sheets Inside Datadog’s AI Research Lab: Meet two PhD candidates behind Toto Connect triage and investigation in a single workflow with Datadog Cloud SIEM This Month in Datadog - April 2026 Monitor and optimize Supabase query performance with Datadog Database Monitoring Add dynamically updating context to logs with Reference Tables and Observability Pipelines Introducing ARFBench: A time series question-answering benchmark based on real incidents The product signal latency gap slowing your growth Test network paths with TCP, UDP, and ICMP in Datadog Evaluate, optimize, and secure your Google Cloud AI stack with Datadog How to investigate cloud credential compromise with Bits AI Security Analyst Turn developer feedback into operational insight with Datadog Forms and Sheets Bringing observability data hosting to the UK on AWS Identify and fix code issues faster with Datadog’s Azure DevOps Source Code integration Steganography at scale: Embedding share URLs in Datadog widget screenshots Every team should be A/B testing Centralize observability management with Datadog Governance Console Manage service tracing across hosts with Single Step Instrumentation rules Route OTel data from AI apps to ClickHouse and Datadog using Observability Pipelines Spotting CI/CD misconfigurations before the bots do: Securing GitHub Actions with Datadog IaC Security Offline evaluation for AI agents: Best practices Detect runtime threats in Python Lambda functions with Datadog AAP Introducing our open source AI-native SAST Instrument and monitor Boomi integration flows with OpenTelemetry and Datadog Not all index scans are equal: How we cut query latency by over 99% Platform engineering metrics: What to measure and what to ignore Integrate Recorded Future threat intelligence with Datadog Cloud SIEM CI/CD security: threat modeling using a MITRE-style threat matrix CI/CD security: How to secure your GitHub ecosystem Ingress NGINX is EOL: A practical guide for migrating to Kubernetes Gateway API How we built a real-world evaluation platform for autonomous SRE agents at scale Operating agentic AI with Amazon Bedrock AgentCore and Datadog LLM Observability: Lessons from NTT DATA Introducing the Datadog Code Security MCP Capture and analyze custom heatmaps in Session Replay Understand session replays faster with AI summaries and smart chapters Monitor ClickHouse query performance with Datadog Database Monitoring How we designed empathetic alert sounds for on-call engineers Search and act across Datadog to resolve issues faster with Bits Assistant Measure the business impact of every product change with Datadog Experiments Analyzing round trip query latency Configuring JavaScript caches for better performance Introducing Bits AI Dev Agent for Code Security Datadog achieves ISO 42001 certification for responsible AI Monitor Nutanix clusters, hosts, and VMs with Datadog Monitor Juniper Mist in Datadog A new Host Map for modern infrastructure When upserts don't update but still write: Debugging Postgres performance at scale Annotate traces to improve LLM quality with Datadog LLM Observability What's new in Cloud SIEM: AI-powered investigations, enhanced threat intelligence, and scalable security operations Explore Kubernetes with native OpenTelemetry data Monitor Oracle Fusion Cloud Applications with Datadog Announcing the Datadog Terraform provider v4.0.0 Scaling Kubernetes workloads on custom metrics How to design cloud environments for AI-powered threat analysis Monitor Aruba Central in Datadog How we centralize and remediate risks with Datadog Case Management Accelerate incident response with Datadog and ServiceNow Monitor your application and network load balancer logs Understanding Karpenter architecture for Kubernetes autoscaling Tools for collecting metrics and logs from Karpenter Monitor Karpenter with Datadog What your product data is actually saying Key metrics for monitoring Karpenter Securing Datadog's platform in the AI age: The role of observability data Closing the verification loop: Observability-driven harnesses for building with agents When an AI agent came knocking: Catching malicious contributions in Datadog’s open source repos Closing the verification loop, Part 2: Fully autonomous optimization Four ways engineering teams use the Datadog MCP Server to power AI agents Approaching your observability migration with the right mindset Meet the new Bits AI SRE: Deeper reasoning, twice as fast Designing MCP tools for agents: Lessons from building Datadog's MCP server Key learnings from the 2026 State of DevSecOps study Use plain English to query your multi-cloud infrastructure in Resource Catalog Simplifying troubleshooting across the user journey with Datadog Synthetic Monitoring Protect your OCI resources with Datadog Cloud Security This Month in Datadog - February 2026 Fine-tune Toto for turbocharged forecasts Amazon EC2 security: How misconfigured and public AMIs expand your cloud attack surface Enable end-to-end visibility into your Java apps with a single command Measure and improve mobile app startup performance with Datadog RUM Evaluating our AI Guard application to improve quality and control cost Identify untested code across every level of your codebase Make use of guardrail metrics and stop babysitting your releases Monitor Versa Networks SD-WAN performance in Datadog How we reduced the size of our Agent Go binaries by up to 77% Improve performance and reliability with APM Recommendations Remediate transitive vulnerabilities faster with Datadog Software Composition Analysis Generate audit-ready vulnerability and compliance reports with Datadog Sheets Monitor Fortinet FortiManager performance in Datadog Improve test coverage across codebases with Datadog Code Coverage
Driving AI ROI: How Datadog connects cost, performance, and infrastructure so you can scale responsibly
2025-12-23 · via Datadog | The Monitor blog
Patrick Krieger

Patrick Krieger

Will Potts

Will Potts

Gillian McGarvey

Gillian McGarvey

AI innovation has accelerated faster than most organizations’ ability to monitor and manage it. The shift from experimentation to production-scale workloads has driven a new class of operational challenges: rising GPU costs, opaque model performance, and the difficulty of linking spend to business value. As AI investments grow, executives need a unified way to measure efficiency and return without slowing down innovation.

With end-to-end visibility across your applications, infrastructure, and AI workloads, Datadog provides a single platform to manage the cost, performance, and infrastructure efficiency of AI applications. By combining Cloud Cost Management (CCM), LLM Observability, and GPU Monitoring, organizations can gain real-time visibility across their AI stack, connect spend to performance, and help ensure that every token and GPU hour is used effectively.

In this post, we’ll explore how Datadog helps organizations:

Control AI spend with Cloud Cost Management

As organizations scale generative AI workloads, costs can grow unpredictably across model providers, regions, and internal teams. Datadog CCM gives finance, engineering, and operations leaders a shared view of AI spend, helping them take informed action in real time.

With CCM, teams can see exactly where AI budgets are going. CCM provides granular visibility into AI costs by breaking down spend by token, model, or project—for example, by tracking OpenAI usage by token type or Anthropic usage by model. As models evolve, teams can monitor how costs change with each new version or prompt and immediately understand the financial implications. Datadog also surfaces anomalies in usage or spend, alerting teams when inference volume spikes unexpectedly or API calls begin to exceed budget. Beyond visibility, CCM fosters accountability by putting cost data in front of finance, engineering, and FinOps teams so that they can align decisions around shared metrics.

Measure and improve AI application and agent performance with LLM Observability

Understanding spend is only part of the story. Accuracy, latency, and reliability directly affect the value of every dollar spent on AI. Datadog LLM Observability helps teams evaluate, iterate, and monitor how AI applications and agents perform in production so that financial efficiency does not come at the expense of quality.

Evaluate apps and agents for performance, quality, and cost

With LLM Observability, every model call and agent step is captured as part of a unified trace that shows how agents plan, hand off tasks, invoke tools, and retrieve information across dynamic workflows. This visibility helps teams understand how prompts, model interactions, tool usage, and retrieval steps contribute to the overall performance and cost of their AI applications, including token usage and estimated or actual cost (when billing data is connected).

LLM cost dashboard showing weekly spend, token usage, cost by prompt, and a table of the most expensive LLM calls.

Engineers can pinpoint inefficiencies in multi-agent systems, such as repeated retrievals, unnecessary retries, or oversized context windows that increase compute and diminish the return on AI investment. At the same time, built-in evaluations and security checks measure response quality, including accuracy and hallucinations, and detect critical issues like prompt injection attempts or potential sensitive data exposure.

Custom LLM-as-a-judge evaluations extend this capability by enabling teams to define domain-specific criteria by using natural language and any supported LLM provider. Because these evaluations run automatically on production traces and appear alongside operational metrics, organizations can track whether their AI systems are not only performing efficiently but also delivering high-quality outputs that support user adoption and ensure returns on AI spend.

Iterate your apps and agents to improve performance, quality, and cost-efficiency

LLM Observability also helps teams move beyond passive monitoring to actively improving their AI applications and agents. Features like Playground, Datasets, and Experiments let you take real production traces and turn them into high-quality, statistically meaningful datasets that reflect how users actually interact with your system. From there, you can run structured experiments that compare different configurations, such as by swapping model providers, iterating on system and user prompts, tuning parameters such as temperature, or adjusting tool call strategies.

LLM experiments view comparing models and prompt versions across accuracy, latency, cost, error rate, and token usage.

Each configuration is evaluated using the same signals you monitor in production, including operational metrics like latency, token usage, and cost, as well as semantic evaluations that measure response quality, hallucinations, and safety. By comparing these results side by side, teams can identify the configurations that deliver the best tradeoff between performance, cost, and quality—and confidently release those into production. This closes the loop between observing AI behavior in the wild and systematically improving it over time.

Improve GPU efficiency with GPU Monitoring

GPUs have become one of the largest cost drivers for AI workloads, yet teams often lack the visibility needed to understand how effectively these devices are used. Datadog GPU Monitoring, in Preview, provides a unified view of GPU fleet health, resource usage, and cost across cloud, on-prem, and GPU-as-a-Service environments.

GPU monitoring dashboard showing fleet size, active and effective GPUs, Kubernetes allocation, cloud cost, and usage over time.

By surfacing real-time metrics such as memory throughput, device performance, and activity levels, Datadog helps teams pinpoint idle or inefficient GPUs, detect contention that can delay workloads, and identify where compute hours are not contributing to model execution. This enables organizations to reduce waste and avoid unnecessary capacity increases, and helps ensure that GPU resources directly support high-priority AI tasks.

Datadog also correlates GPU behavior with application and model performance, enabling teams to diagnose issues such as stalled jobs, scheduling inefficiencies, or degraded interconnect performance that affect training and inference throughput. Leaders get clear insight into how infrastructure conditions influence AI delivery, while engineers have the detail required to resolve bottlenecks. This enables organizations to make informed decisions about workload placement, scaling, and capacity planning to help ensure that GPU spend consistently produces measurable outcomes.

Increase AI ROI with full life cycle visibility

Datadog’s unified view into the cost, performance, and infrastructure telemetry for AI workloads turns raw data into actionable insight by connecting every layer of the AI stack. By linking application metrics like accuracy, latency, and reliability with infrastructure metrics like GPU allocation and performance, Datadog enables real-time decisions about AI spend.

Datadog enriches this financial information with operational signals, giving teams a more complete picture of where resources are going and why. Organizations can attribute cost by token, model, user, or service, and analyze it alongside contextual performance data. With this context, decision-makers can tie every optimization—whether in application and agent tuning, GPU provisioning, or API design—to measurable improvements in cost and performance.

Build and scale AI responsibly with Datadog

AI initiatives succeed when visibility, cost management, and performance optimization are treated as a single continuous process. Datadog provides the platform to make that possible, helping organizations understand how every prompt, model, and GPU contributes to business value.

To learn more, visit the LLM Observability documentation and Cloud Cost Management documentation. If you’re new to Datadog, sign up for a 14-day free trial.