ntpq and DuckDB Integration
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Powerful Performance, Limitless Scale
Collect, organize, and act on massive volumes of high-velocity data. Any data is more valuable when you think of it as time series data. with InfluxDB, the #1 time series platform built to scale with Telegraf.
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Input and output integration overview
The ntpq plugin collects standard metrics related to the Network Time Protocol (NTP) by executing the ntpq command. It gathers essential information about the synchronization state of the local machine with remote NTP servers, providing valuable insights into timekeeping accuracy and network performance.
This plugin enables Telegraf to write structured metrics into DuckDB using SQLite-compatible SQL connections, supporting lightweight local analytics and offline metric analysis.
Integration details
ntpq
The ntpq Telegraf plugin provides a way to gather metrics from the Network Time Protocol (NTP) by querying the NTP server using the ntpq
executable. This plugin collects a variety of metrics related to the synchronization status with remote NTP servers, including delay, jitter, offset, polling frequency, and reachability. These metrics are crucial for understanding the performance and reliability of time synchronization efforts in systems that rely on accurate timekeeping. NTP plays a vital role in networked environments, enabling synchronized clocks across devices which is essential for logging, coordination of activities, and security protocols. Through this plugin, users can monitor the effectiveness of their time synchronization processes, making it easier to identify issues related to network delays or misconfigurations, thus ensuring that systems remain in sync and operate efficiently.
DuckDB
Use the Telegraf SQL plugin to write metrics into a local DuckDB database. DuckDB is an in-process OLAP database designed for efficient analytical queries on columnar data. Although it does not provide a traditional client-server interface, DuckDB can be accessed via SQLite-compatible drivers in embedded mode. This allows Telegraf to store time series metrics in DuckDB using SQL, enabling powerful analytics workflows using familiar SQL syntax, Jupyter notebooks, or integration with data science tools like Python and R. DuckDB’s columnar storage and vectorized execution make it ideal for compact and high-performance metric archives.
Configuration
ntpq
[[inputs.ntpq]]
## Servers to query with ntpq.
## If no server is given, the local machine is queried.
# servers = []
## If false, set the -n ntpq flag. Can reduce metric gather time.
## DEPRECATED since 1.24.0: add '-n' to 'options' instead to skip DNS lookup
# dns_lookup = true
## Options to pass to the ntpq command.
# options = "-p"
## Output format for the 'reach' field.
## Available values are
## octal -- output as is in octal representation e.g. 377 (default)
## decimal -- convert value to decimal representation e.g. 371 -> 249
## count -- count the number of bits in the value. This represents
## the number of successful reaches, e.g. 37 -> 5
## ratio -- output the ratio of successful attempts e.g. 37 -> 5/8 = 0.625
# reach_format = "octal"
DuckDB
[[outputs.sql]]
## Use the SQLite driver to connect to DuckDB via Go's database/sql
driver = "sqlite3"
## DSN should point to the DuckDB database file
dsn = "file:/var/lib/telegraf/metrics.duckdb"
## SQL INSERT statement with placeholders for metrics
table_template = "INSERT INTO metrics (timestamp, name, value, tags) VALUES (?, ?, ?, ?)"
## Optional: manage connection pooling
# max_open_connections = 1
# max_idle_connections = 1
# conn_max_lifetime = "0s"
## DuckDB does not require TLS or authentication by default
Input and output integration examples
ntpq
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Network Time Monitoring Dashboard: Utilize the ntpq plugin to create a centralized monitoring dashboard for tracking the reliability and performance of network time synchronization across multiple servers. By visualizing metrics such as delay and jitter, system administrators can quickly identify which servers are providing accurate time versus those with significant latency issues, ensuring that all systems remain synchronized effectively.
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Automated Alert System for Time Drift: Implement an automated alert system that leverages ntpq metrics to notify operations teams when time drift exceeds acceptable thresholds. By analyzing the offset and jitter values, the system can trigger alerts if any remote NTP server is out of sync, allowing for swift remediation actions to maintain time accuracy across critical infrastructure.
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Comparative Analysis of Time Sources: Use the ntpq plugin to perform a comparative analysis of different NTP servers over time. By querying multiple NTP sources and monitoring their metrics, organizations can evaluate the performance and reliability of their time sources, making informed decisions about which NTP servers to configure as primary or secondary in their environments.
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Historical Performance Tracking for NTP: Gather historical performance data on various NTP servers using the ntpq plugin, enabling long-term trend analysis for timekeeping accuracy. This can help organizations identify patterns or recurring issues related to specific servers, informing future decisions about infrastructure changes or adjustments related to time synchronization strategies.
DuckDB
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Embedded Metric Warehousing for Notebooks: Write metrics to a local DuckDB file from Telegraf and analyze them in Jupyter notebooks using Python or R. This workflow supports reproducible analytics, ideal for data science experiments or offline troubleshooting.
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Batch Time-Series Processing on the Edge: Use Telegraf with DuckDB on edge devices to log metrics locally in SQL format. The compact storage and fast analytical capabilities of DuckDB make it ideal for batch processing and low-bandwidth environments.
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Exploratory Querying of Historical Metrics: Accumulate system metrics over time in DuckDB and perform exploratory data analysis (EDA) using SQL joins, window functions, and aggregates. This enables insights that go beyond what typical time-series dashboards provide.
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Self-Contained Metric Snapshots: Use DuckDB as a portable metrics archive by shipping
.duckdb
files between systems. Telegraf can collect and store data in this format, and analysts can later load and query it using the DuckDB CLI or integrations with tools like Tableau and Apache Arrow.
Feedback
Thank you for being part of our community! If you have any general feedback or found any bugs on these pages, we welcome and encourage your input. Please submit your feedback in the InfluxDB community Slack.
Powerful Performance, Limitless Scale
Collect, organize, and act on massive volumes of high-velocity data. Any data is more valuable when you think of it as time series data. with InfluxDB, the #1 time series platform built to scale with Telegraf.
See Ways to Get Started
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