- 필수 기능
- 시작하기
- Glossary
- 표준 속성
- Guides
- Agent
- 통합
- 개방형텔레메트리
- 개발자
- API
- Datadog Mobile App
- CoScreen
- Cloudcraft
- 앱 내
- 서비스 관리
- 인프라스트럭처
- 애플리케이션 성능
- APM
- Continuous Profiler
- 스팬 시각화
- 데이터 스트림 모니터링
- 데이터 작업 모니터링
- 디지털 경험
- 소프트웨어 제공
- 보안
- AI Observability
- 로그 관리
- 관리
Sheets is available in private beta. To qualify for this product beta, you should have existing use cases where you currently use spreadsheets (such as Excel or Google Sheets) with Datadog’s metrics, logs, or RUM data. If you're interested in this feature, complete the form to request access.
Request AccessSheets is a spreadsheet tool that you can populate with Datadog data, enabling you to perform complex analysis and build reports without requiring technical expertise. It allows teams to use familiar spreadsheet functions like lookups, pivot tables, and calculations on Datadog data, so you don’t have to export and use another tool with stale data.
Sheets lets you manipulate, transform, and analyze data from logs, real user monitoring, and cloud cost monitoring in a familiar spreadsheet interface.
Start by creating a table of data, either by building a new query from Sheets or transferring a query from the logs explorer, RUM explorer or metrics explorer.
status:error
.You can use a calculated column to add a formula, parse a log message, or add business logic to your data. Your calculated columns can be used in the pivot table you’ll create later.
From the header of the far right column of your table, click the Plus icon to Add calculated column. Enter a function to view the syntax and description of the function. For a full list of supported functions, see the Functions and Operators documentation.
Lookup enriches your existing data and adds more context to your table. Click Add Lookup at the top of the page to add columns from another table or data source, such as Reference Tables. Lookup is like a left join or a vlookup in Excel or Google Sheets; it matches records on a common column, and returns additional columns of data to enrich your existing Sheets table.
For example, you have a table of RUM data with user emails, and you want to know which teams these users belong to. You can add a lookup that compares the user email column in your table with the work email column in a Reference Table. Lookup pulls the team from the Reference Table and adds it as a new column to your spreadsheet.
After you add a table of data to a spreadsheet, analyze and add context to your raw data with a Pivot table. Use pivot tables to summarize and organize large amounts of data into customized tables. It helps you analyze data to find patterns and trends, and see comparisons. For example, you can have a table of error logs with a hundred rows, but with a pivot table you can break down that data into a summary table that counts your error logs by method or region. To create a pivot table:
Create tables and analyze the data pulled from the following data sources:
Data Source | Product page |
---|---|
Logs | Logs Explorer |
Real User Monitoring | RUM Explorer |
Cloud Cost | Metrics ExplorerNote: The Cloud Cost data sources must be selected. |
추가 유용한 문서, 링크 및 기사: