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Use the PyArrow library to analyze data

Use PyArrow to read and analyze query results from InfluxDB Cloud Serverless. The PyArrow library provides efficient computation, aggregation, serialization, and conversion of Arrow format data.

Apache Arrow is a development platform for in-memory analytics. It contains a set of technologies that enable big data systems to store, process and move data fast.

The Arrow Python bindings (also named “PyArrow”) have first-class integration with NumPy, pandas, and built-in Python objects. They are based on the C++ implementation of Arrow.

Install prerequisites

The examples in this guide assume using a Python virtual environment and the InfluxDB v3 influxdb3-python Python client library. For more information, see how to get started using Python to query InfluxDB.

Installing influxdb3-python also installs the pyarrow library that provides Python bindings for Apache Arrow.

Use PyArrow to read query results

The following example shows how to use influxdb3-python and pyarrow to query InfluxDB and view Arrow data as a PyArrow Table.

  1. In your editor, copy and paste the following sample code to a new file–for example, pyarrow-example.py:

    # pyarrow-example.py
    
    from influxdb_client_3 import InfluxDBClient3
    import pandas
    
    def querySQL():
      
      # Instantiate an InfluxDB client configured for a bucket
      client = InfluxDBClient3(
        "https://cloud2.influxdata.com",
        database="
    BUCKET_NAME
    "
    ,
    token="
    API_TOKEN
    "
    )
    # Execute the query to retrieve all record batches in the stream formatted as a PyArrow Table. table = client.query( '''SELECT * FROM home WHERE time >= now() - INTERVAL '90 days' ORDER BY time''' ) client.close() print(querySQL())
  2. Replace the following configuration values:

    • API_TOKEN: An InfluxDB token with read permissions on the buckets you want to query.
    • BUCKET_NAME: The name of the InfluxDB bucket to query.
  3. In your terminal, use the Python interpreter to run the file:

    python pyarrow-example.py
    

The InfluxDBClient3.query() method sends the query request, and then returns a pyarrow.Table that contains all the Arrow record batches from the response stream.

Next, use PyArrow to analyze data.

Use PyArrow to analyze data

Group and aggregate data

With a pyarrow.Table, you can use values in a column as keys for grouping.

The following example shows how to query InfluxDB, and then use PyArrow to group the table data and calculate an aggregate value for each group:

# pyarrow-example.py

from influxdb_client_3 import InfluxDBClient3
import pandas

def querySQL():
  
  # Instantiate an InfluxDB client configured for a bucket
  client = InfluxDBClient3(
    "https://cloud2.influxdata.com",
    database="
BUCKET_NAME
"
,
token="
API_TOKEN
"
)
# Execute the query to retrieve data # formatted as a PyArrow Table table = client.query( '''SELECT * FROM home WHERE time >= now() - INTERVAL '90 days' ORDER BY time''' ) client.close() return table table = querySQL() # Use PyArrow to aggregate data print(table.group_by('room').aggregate([('temp', 'mean')]))

Replace the following:

  • API_TOKEN: An InfluxDB token with read permissions on the buckets you want to query.
  • BUCKET_NAME: The name of the InfluxDB bucket to query.

View example results

For more detail and examples, see the PyArrow documentation and the Apache Arrow Python Cookbook.


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The future of Flux

Flux is going into maintenance mode. You can continue using it as you currently are without any changes to your code.

Flux is going into maintenance mode and will not be supported in InfluxDB 3.0. This was a decision based on the broad demand for SQL and the continued growth and adoption of InfluxQL. We are continuing to support Flux for users in 1.x and 2.x so you can continue using it with no changes to your code. If you are interested in transitioning to InfluxDB 3.0 and want to future-proof your code, we suggest using InfluxQL.

For information about the future of Flux, see the following:

InfluxDB Cloud Serverless