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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 - 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Monitor BigQuery with Datadog
2024-01-23 · via Datadog | The Monitor blog

BigQuery is Google Cloud Platform’s fully managed serverless data warehouse. It enables data analysis and storage at petabyte scale while eliminating the overhead of managing infrastructure. As a managed service, BigQuery autoscales and provisions compute resources and storage as needed, helping you reduce the overhead of managing infrastructure but also reducing your visibility into performance. And BigQuery users face other challenges when it comes to visibility: BigQuery offers various pricing models and is often shared as a service by many different teams within organizations, making it difficult to track storage and compute costs.

Datadog’s BigQuery integration helps you track and analyze your BigQuery usage and gauge the efficiency of your queries in order to help you optimize costs and performance. In this post, we’ll cover how you can use the new out-of-the-box (OOTB) dashboard for our BigQuery integration to:

Track BigQuery cost drivers and resource consumption

BigQuery costs for both compute and storage are driven by a range of factors. When it comes to compute, users can choose between (or mix and match) two distinct pricing models for their workloads: on-demand pricing, which is based on the amount of data users process in their queries and other jobs, and capacity pricing, which allows customers to provision fixed allotments of compute capacity (as measured in slots, which are the virtual CPUs BigQuery uses to execute SQL queries).

Datadog’s new OOTB BigQuery dashboard visualizes a variety of key metrics to help you track and analyze your BigQuery usage and primary cost drivers across both of these pricing models, whether you’re using BigQuery primarily for data analytics or for storage. Three high-level metrics at the top of the dashboard help provide an overview of your consumption of compute resources and storage:

  • Number of jobs in flight: the overall number of actions—such as querying, loading, exporting, and copying data—in progress.
  • Bytes scanned: the amount of data processed by your queries.
  • BigQuery storage: the volume of your data in active storage in BigQuery.
Get a high-level picture of your consumption of BigQuery compute resources and storage

For more granular cost analysis, this dashboard provides key Query Execution metrics, which help you identify overall usage trends and inefficiencies. And to help you analyze your resource usage in depth, the dashboard provides dedicated sections for tracking slot allocation and storage usage. By breaking down the number of slots allocated to each of your Google Cloud projects, as well as the slots allocated to query, export, and reservation processes per project, the dashboard enables you to quickly attribute BigQuery compute costs to specific teams and projects.

Quickly attribute compute and storage costs to specific teams and projects

Storage metrics help you track your overall usage of BigQuery storage and analyze what is driving that usage. The aggregate table count, upload rate, and uploaded row count metrics enable you to gauge the rate at which your storage footprint is growing. To analyze precisely what’s driving that growth, you can filter the dashboard by project, location, or dataset.

Monitor and optimize query performance

Efficient query design is essential to ensuring optimal performance and cost-effective data management. Queries that take a long time to execute or include a high number of operations per result can eat up excessive compute resources, leading to exorbitant costs. Inefficient queries can also be a major detriment to user experience—by blocking other queries from running, they can drag down the performance of any applications that use BigQuery as a service, increasing application latency and potentially causing downtime in dependent services.

This dashboard provides several key metrics for your queries in order to help you analyze usage trends and optimize performance:

  • The queries in flight metric tracks the overall volume of your queries, including everything from recurring automated jobs to ad hoc queries.
  • Query execution count helps you assess compute usage trends over time.
  • The query execution times metric helps you track querying efficiency and identify suboptimal performance. High execution times may indicate excessive compute usage, pointing to room for optimization of performance as well as costs. In addition to tracking these execution times via this dashboard, you may want to configure metric monitors to alert you when query execution times breach acceptable limits.
Analyze querying trends and performance

For any application relying on BigQuery as a data store or analytics service, efficient query performance is key. These metrics enable you to monitor that performance in order to ensure that you stay on track with your SLOs and help you troubleshoot performance issues.

Get comprehensive visibility into your data analytics stack

Datadog’s dashboard for BigQuery provides key insights into BigQuery costs and query efficiency. These insights enable you to rein in your cloud spend, troubleshoot issues, and optimize performance. Once you’ve installed the BigQuery integration, you can search for “Google BigQuery” in Datadog to get started.

Because Datadog integrates with over 600 other technologies, including Spark, Airflow, and Kafka, this dashboard can help you get comprehensive visibility into your data stack. If you’re new to Datadog, you can sign up for a 14-day free trial.