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InfluxDB
Store and query time-series data with proper schema design and retention.
通过合理的模式设计与保留策略存储和查询时序数据。
ivangdavila
内容创作
clawhub
v1.0.0 1 版本 99921.6 Key: 无需
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概述
Version Differences
- InfluxDB 2.x uses Flux query language, 1.x uses InfluxQL—syntax completely different
- 2.x: buckets, organizations, tokens; 1.x: databases, retention policies, users
- Don't mix documentation—check version before copying queries
Tags vs Fields (Critical)
- Tags are indexed, fields are not—filter on tags, aggregate on fields
- Tag values must be strings—numbers as tags work but waste index space
- Fields support numbers, strings, booleans—store metrics as fields
- Wrong choice kills query performance—can't change after data written
Cardinality Trap
- High-cardinality tags destroy performance—unique user IDs as tags = disaster
- Cardinality = unique combinations of tag values—grows multiplicatively
- Check with
SHOW CARDINALITY (1.x) or influx bucket inspect (2.x) - Rule of thumb: <100K series per measurement; millions = problems
Line Protocol
- Format:
measurement,tag1=v1,tag2=v2 field1=1,field2="str" timestamp - No spaces around
= in tags—space separates tags from fields - String fields need quotes, tag values don't—
field="text" vs tag=text - Timestamps in nanoseconds by default—specify precision to avoid mistakes
Timestamps
- Default precision is nanoseconds—sending seconds without precision flag = year 2000 data
- Specify on write:
precision=s for seconds, precision=ms for milliseconds - Missing timestamp uses server time—usually fine for real-time ingestion
- Timestamps are UTC—client timezone doesn't matter
Retention and Downsampling
- Set retention policy/bucket duration—data older than retention auto-deleted
- Raw data at 10s intervals for 7 days, downsample to 1min for 30 days, 1h for 1 year
- 2.x: Tasks for downsampling; 1.x: Continuous Queries
- Without downsampling, storage grows forever and queries slow down
Flux Query Patterns (2.x)
- Always start with
from(bucket:) then |> range(start:)—range is required |> filter(fn: (r) => r._measurement == "cpu") for filtering|> aggregateWindow(every: 1h, fn: mean) for time-based aggregation- Chain transforms with
|> pipe operator—order matters for performance
InfluxQL Patterns (1.x)
SELECT mean("value") FROM "measurement" WHERE time > now() - 1h GROUP BY time(5m)- Double quotes for identifiers, single quotes for string literals
GROUP BY time() for time-based aggregation—required for most dashboardsFILL(none) to skip empty intervals, FILL(previous) to carry forward
Schema Design
- Measurement name = table name—one per metric type (cpu, memory, requests)
- Tag for dimensions you filter/group by—host, region, service
- Field for values you aggregate—usage_percent, count, latency_ms
- Avoid encoding data in measurement names—
cpu.host1 wrong, cpu + host=host1 right
Write Performance
- Batch writes—individual points have HTTP overhead
- Telegraf for production ingestion—handles batching, buffering, retry
- Write to localhost if possible—network latency adds up at high throughput
async writes in client libraries—don't block on each write
Query Performance
- Always include time range—unbounded queries scan everything
- Filter on tags before fields—tags use index, fields scan data
- Limit results with
LIMIT or |> limit()—dashboard doesn't need 1M points - Use
GROUP BY / aggregateWindow to reduce data before returning
Common Errors
- "partial write: field type conflict"—same field with different types; fix at source
- "max-values-per-tag limit exceeded"—cardinality too high; redesign schema
- "database not found"—2.x uses buckets, not databases; check API version
- Query timeout—add narrower time range or aggregate more aggressively
版本历史
共 1 个版本
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v1.0.0
当前
2026-03-29 02:44 安全 安全
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