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

宝玉的分享
宝玉的分享
T
Threat Research - Cisco Blogs
H
Hacker News: Front Page
N
News and Events Feed by Topic
Know Your Adversary
Know Your Adversary
Cisco Talos Blog
Cisco Talos Blog
SecWiki News
SecWiki News
C
Cisco Blogs
D
Darknet – Hacking Tools, Hacker News & Cyber Security
T
Tor Project blog
K
Kaspersky official blog
Forbes - Security
Forbes - Security
Webroot Blog
Webroot Blog
Schneier on Security
Schneier on Security
P
Privacy & Cybersecurity Law Blog
H
Heimdal Security Blog
Y
Y Combinator Blog
The GitHub Blog
The GitHub Blog
S
SegmentFault 最新的问题
V
Vulnerabilities – Threatpost
T
Tenable Blog
T
Tailwind CSS Blog
P
Privacy International News Feed
WordPress大学
WordPress大学
大猫的无限游戏
大猫的无限游戏
小众软件
小众软件
博客园 - Franky
Hacker News: Ask HN
Hacker News: Ask HN
Jina AI
Jina AI
C
Cybersecurity and Infrastructure Security Agency CISA
CTFtime.org: upcoming CTF events
CTFtime.org: upcoming CTF events
雷峰网
雷峰网
Vercel News
Vercel News
A
About on SuperTechFans
爱范儿
爱范儿
Simon Willison's Weblog
Simon Willison's Weblog
AWS News Blog
AWS News Blog
The Last Watchdog
The Last Watchdog
Engineering at Meta
Engineering at Meta
Spread Privacy
Spread Privacy
Security Archives - TechRepublic
Security Archives - TechRepublic
博客园 - 司徒正美
量子位
博客园 - 三生石上(FineUI控件)
J
Java Code Geeks
Hacker News - Newest:
Hacker News - Newest: "LLM"
Recorded Future
Recorded Future
H
Hackread – Cybersecurity News, Data Breaches, AI and More
Martin Fowler
Martin Fowler
Project Zero
Project Zero

Datadog | The Monitor blog

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 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 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 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 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 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 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 Move fast, don’t break things: Consistent testing standards at scale Enrich logs with ServiceNow CMDB context before routing to any SIEM or logging tool Monitor Lustre with Datadog Make faster, better product decisions with Datadog Product Analytics Surface and remediate runtime posture issues with Workload Protection Findings Protect agentic AI applications with Datadog AI Guard How to optimize JavaScript code with CSS Trace Google Pub/Sub workloads in Cloud Run with Datadog Detect human names in logs with ML in Sensitive Data Scanner How we cut our NLQ agent debugging time from hours to minutes with LLM Observability Debug PostgreSQL query latency faster with EXPLAIN ANALYZE in Datadog Database Monitoring Datadog acquires Propolis Unify and correlate frontend and backend data with retention filters Scale compliance across global frameworks with Datadog Cloud Security Monitor Arista VeloCloud SD-WAN performance with Datadog Building reliable dashboard agents with Datadog LLM Observability Simplify log collection and aggregation for MSSPs with Datadog Observability Pipelines Mitigation for Node.js denial-of-service vulnerability affecting Datadog APM Automate flaky test fixes with the Bits AI Dev Agent and Test Optimization How we built an AI SRE agent that investigates like a team of engineers Datadog integrations 2025 recap: Observability for AI, security, and hybrid cloud Design effective executive dashboards with Datadog Implement dbt data quality checks with dbt-expectations Bring faster visibility into AWS Lambda functions with remote instrumentation Troubleshoot faster with the GitLab Source Code integration in Datadog How Cambia Health Solutions saved $30,000 monthly with Cloud Cost Management and the Datadog Resource Catalog Normalize any logs for Cloud SIEM with Datadog's OCSF processor Optimizing Datadog at scale: Cost-efficient observability at Zendesk Detect, diagnose, and resolve network issues easily with CNM Network Health Connect engineering errors to user impact in early-stage products Cilium configuration for Kubernetes operations at scale Designing feedback loops for progressive delivery Ship features faster and safer with Datadog Feature Flags Choosing the right OpenTelemetry Collector distribution Route your monitor alerts with Datadog monitor notification rules Automate Cloud SIEM investigations with Bits AI Security Analyst Cloud threat detection: How to identify risky activity across control and data planes Collecting Kafka performance metrics Monitoring Kafka with Datadog Monitoring Kafka performance metrics
How we saved $1.5 million per year with Cloud Cost Management
2025-08-20 · via Datadog | The Monitor blog

In collecting and analyzing trillions of events each day, Datadog ingests a massive amount of data. We spend substantially to process and store this data in the cloud, and teams across the organization are committed to optimizing the return on this investment. To this end, our FinOps analysts have always tracked the costs of delivering our services and identified opportunities for savings. They use this information to partner with engineering teams who then seek to improve the cost efficiency of their services and realize those savings.

But these partnerships can falter when teams work in separate environments that don’t provide a consistent, unified view into the relevant cost data. For example, a finance team’s cost data spreadsheets aren’t useful to engineers. We built Datadog Cloud Cost Management (CCM) to solve this problem. CCM provides centralized visibility into cost data so that FinOps, engineering, and stakeholders throughout the organization can actively monitor and manage cloud costs. It also surfaces cost data where engineers work day to day so that they can own and optimize costs with the same discipline they apply to their services’ performance, reliability, and security.

In this post, we’ll share how one of our cost optimization initiatives, powered by CCM, brought us surprising success. In the first quarter of 2025, our FinOps team identified a storage cost optimization and collaborated with engineers to implement it. Once the collaboration began, the engineering team discovered further opportunities for cost savings that were even greater than those proposed by FinOps. The associated cost optimizations we implemented will save us an estimated $1.5 million annually. Additionally, we customized CCM to help identify further opportunities for cost efficiency and enable even greater savings.

Spotting inefficient costs with CCM

One recent initiative illustrates how Datadog benefits from this process. To begin, FinOps set out to optimize the storage costs incurred by one of the services supporting the Datadog platform. In this case, CCM’s Cloud Cost Recommendations suggested migrating Amazon S3 objects from Standard storage to the more cost-efficient S3 Intelligent-Tiering class.

Screenshot of Datadog Cloud Cost Management showing a donut chart labeled $143.15k, with a recommendation card reading Transition S3 Standard objects to Intelligent Tiering. Estimated monthly cost is $197K, with potential savings of $143K per month.

With this recommendation in hand, FinOps analysts approached the engineering team to collaborate on a plan for cost savings. This type of collaboration is facilitated by the consistent tagging of our cloud cost data, which enables teams to allocate cloud costs and analyze them across any tagged dimensions such as teams, services, or environments. The tagging made it easy for the FinOps team to identify the engineering team whose storage costs they wanted to optimize.

Using Datadog Notebooks for collaboration

FinOps compiled the relevant data into a collaborative workspace by using Datadog Notebooks, which combines live graphs, recommendations, and performance data with text and images. The shared notebook illustrated the cost inefficiency and conveyed the initial hypothesis that centered on the storage classes used by the service.

The notebook also provided a starting point for the engineering team to implement the recommendation. It included step-by-step instructions that engineers could follow for assigning the most cost-optimal storage class to their service. And it helped them verify savings by tracking cost changes resulting from their optimizations, which in turn made it easy to watch for any unexpected regressions.

Digging deeper to find more savings

FinOps analysts at Datadog use CCM for a broad view of cloud costs, but the product is just as powerful for engineers, who combine deep knowledge of their services with CCM’s cost data. This cost data empowers engineers to pursue independent, and in some cases deeper, investigations into the costs of running their own services.

Leading up to this particular episode, the engineering team involved in the storage cost investigation had primarily focused on performance and reliability, but not cost. They didn’t regularly review the costs incurred by their service, and they believed their S3 use was already highly efficient. When the FinOps team reached out with the identified inefficiency and a recommended solution, the engineers implemented the recommendation. But more significantly, the recommendation sparked the engineers’ interest in finding out more.

Uncovering a second cost-saving opportunity

Inspired by the FinOps team’s cost investigation, the engineering team dug deeper and discovered an even bigger opportunity to optimize their service’s costs. By surfacing both cost data and storage usage in their service dashboards, engineers quickly discovered that the FinOps team’s initial hypothesis—that S3 storage classes accounted for the service’s cloud costs—wasn’t the full story. The engineers came up with a second hypothesis, which focused on the service’s use of object versioning, and asked the FinOps team to investigate.

The FinOps team investigated this new theory by visualizing the service’s cost data in the Cloud Cost Explorer. They confirmed that, indeed, the service’s primary cost driver was actually a large number of non-current object versions that S3 retained as a function of its versioning feature. Storage costs could thus be reduced by minimizing non-current versions.

Datadog Cloud Cost Explorer screenshot with a top recommendation: Expire old noncurrent version objects to save $8890/month. Red action button reads Delete Non-Current Version Objects. Chart below shows rising storage costs from noncurrent versions.

Applying the fixes

After identifying the opportunities for cost saving with the FinOps team, the engineers created Jira tickets directly within CCM to assign and track the work required for the identified optimizations. This gave them visibility into the work to be done and the progress made as changes were implemented.

As part of these requested changes, and to reduce expenditures related to non-current object versions, the team implemented new S3 Lifecycle rules. These rules would automatically prevent wasteful storage costs by managing non-current object versions in the service’s buckets. This simple change by our engineering team will save an estimated $1.5 million annually, even though the opportunity wasn’t immediately apparent.

Beyond immediate cost optimizations, this collaboration between FinOps and engineering gave both teams steps forward to realize ongoing efficiencies. After the engineering team shared their findings with FinOps, FinOps created new Custom Recommendations based on those discoveries. The cost recommendation customizations the FinOps team implemented in this case automatically identify similar optimization opportunities across other teams. This enables us to apply what we learned in this investigation to more easily find wasted spend going forward.

Building trust and reducing cloud costs

In this post, we’ve described just one example of a successful, collaborative cloud cost optimization effort at Datadog. The initial hypothesis about S3 storage classes didn’t lead to the greatest impact, but it kicked off a deeper investigation that yielded significant savings. By putting actionable cost data into the hands of our engineering teams, we successfully identified and eliminated inefficiencies that allowed us to save $1.5 million annually on cloud storage.

More importantly, this episode exemplifies how we are building a culture of cost-consciousness across the company. When our FinOps team reaches out to partners in engineering, they can all collaborate around cost insights within the Datadog platform, where engineers already work. Transparent and trustworthy data enables engineering teams to own their costs and make efficiency a top priority—on par with performance, reliability, and security. To further increase our organization’s cloud cost awareness, teams share their cost-saving achievements as examples that motivate other teams to prioritize ongoing optimizations.

If you’re interested in learning more, see our blog posts about Datadog’s FinOps practice and how we’ve made other major cost optimizations. To get started with Cloud Cost Management, see the documentation. If you haven’t yet started using Datadog, you can sign up for a 14-day free trial.