Skip to main content

airflow provider for intersystems

Project description

airflow-provider-iris


Table of Contents


Overview

image

one one one one License

InterSystems IRIS Provider for Apache Airflow enables seamless integration between Airflow workflows and the InterSystems IRIS data platform. It provides native connection support and operators for executing IRIS SQL and automating IRIS-driven tasks within modern ETL/ELT pipelines.

Designed for reliability and ease of use, this provider helps data engineers and developers build scalable, production-ready workflows for healthcare, interoperability, analytics, and enterprise data processing—powered by InterSystems IRIS.

Features

  • ✔️ IrisHook – for managing IRIS connections
  • ✔️ IrisSQLOperator – for running SQL queries
  • ✔️ Support for both SELECT/CTE and DML statements
  • ✔️ Native Airflow connection UI customization
  • ✔️ Examples for real-world ETL patterns

Installation

pip install airflow-provider-iris

Quick Start

Configure Connection in Airflow UI Go to Admin → Connections → Add Connection

  • Conn Id: Connection ID
  • Description : Connection Description
  • Conn Type: InterSystems IRIS
  • Host: IRIS server hostname
  • Username: User Name
  • Password: Password
  • Port : IRIS Superserver Port
  • Namespace : Namespace
image

Use your InterSystems IRIS connection by setting the iris_conn_id parameter in any of the provided operators.

In the example below, the IrisSQLOperator uses the iris_conn_id parameter to connect to the IRIS instance when the DAG is defined:

from airflow_provider_iris.operators.iris_operator import IrisSQLOperator

with DAG(
    dag_id="01_IRIS_Raw_SQL_Demo_Local",
    start_date=datetime(2025, 12, 1),
    schedule=None,
    catchup=False,
    tags=["iris-contest"],
) as dag:
    
    create_table = IrisSQLOperator(
        task_id="create_table",
        iris_conn_id="ContainerInstance",
        sql="""CREATE TABLE IF NOT EXISTS Test.AirflowDemo (
               ID INTEGER IDENTITY PRIMARY KEY,
               Message VARCHAR(200),
               RunDate TIMESTAMP DEFAULT CURRENT_TIMESTAMP
            )""",
    )

Connector Parameters

When you create a connection in Airflow UI (Admin → Connections), use the following fields:

Parameter Description Type / Default Required
sql SQL query or template str Yes
iris_conn_id IRIS connection identifier str / iris_default Yes
task_id DAG task name str Yes
autocommit Commit changes automatically bool / True No
**kwargs Airflow BaseOperator arguments -- No

Examples

1. IRIS Raw SQL Demo

# dags/01_IRIS_Raw_SQL_Demo.py
from datetime import datetime
from airflow import DAG
from airflow_provider_iris.operators.iris_operator import IrisSQLOperator

with DAG(
    dag_id="01_IRIS_Raw_SQL_Demo",
    start_date=datetime(2025, 12, 1),
    schedule=None,
    catchup=False,
    tags=["iris-contest"],
) as dag:
    
    create_table = IrisSQLOperator(
        task_id="create_table",
        sql="""CREATE TABLE IF NOT EXISTS Test.AirflowDemo (
               ID INTEGER IDENTITY PRIMARY KEY,
               Message VARCHAR(200),
               RunDate TIMESTAMP DEFAULT CURRENT_TIMESTAMP
            )""",
    )

    insert = IrisSQLOperator(
        task_id="insert_row",
        sql="INSERT INTO Test.AirflowDemo (Message) VALUES ('Hello from raw SQL operator')",
    )

    select = IrisSQLOperator(
        task_id="select_rows",
        sql="SELECT ID, Message, RunDate FROM Test.AirflowDemo ORDER BY ID DESC",
    )

    create_table >> insert >> select

2. IRIS ORM Demo

Uses SQLAlchemy + pandas with the only known reliable method for bulk inserts into IRIS.

# dags/example_sqlalchemy_dag.py

from datetime import datetime
from airflow import DAG
from airflow.operators.python import PythonOperator
import pandas as pd

# Import your hook and model
from airflow_provider_iris.hooks.iris_hook import IrisHook
from sqlalchemy import Column, Integer, String, DateTime, Float
from sqlalchemy.orm import declarative_base

Base = declarative_base()

class SalesRecord(Base):
    __tablename__ = "SalesRecord"
    __table_args__ = {"schema": "Test"}

    id        = Column(Integer, primary_key=True)
    region    = Column(String(50))
    amount    = Column(Float)
    sale_date = Column(DateTime)

def create_and_insert_orm(**context):
    hook = IrisHook()
    engine = hook.get_engine()

    # Create table if not exists
    Base.metadata.create_all(engine)

    # THIS IS THE ONLY METHOD THAT WORKS RELIABLY WITH IRIS RIGHT NOW
    data = [
        {"region": "Europe",        "amount": 12500.50, "sale_date": "2025-12-01"},
        {"region": "Asia",          "amount": 8900.00,  "sale_date": "2025-12-02"},
        {"region": "North America", "amount": 56700.00, "sale_date": "2025-12-03"},
        {"region": "Africa",        "amount": 34200.00, "sale_date": "2025-12-03"},
    ]
    df = pd.DataFrame(data)
    df["sale_date"] = pd.to_datetime(df["sale_date"])

    # pandas.to_sql with single-row inserts → IRIS accepts this perfectly
    df.to_sql(
        name="SalesRecord",
        con=engine,
        schema="Test",
        if_exists="append",
        index=False,
        method="multi",           # still fast
        chunksize=1               # ← THIS IS THE MAGIC LINE
    )
    print(f"Successfully inserted {len(df)} rows using pandas.to_sql() (chunksize=1)")


def query_orm(**context):
    hook = IrisHook()
    engine = hook.get_engine()
    df = pd.read_sql("SELECT * FROM Test.SalesRecord ORDER BY id", engine)
    for _, r in df.iterrows():
        print(f"ORM → {int(r.id):>3} | {r.region:<15} | ${r.amount:>10,.2f} | {r.sale_date.date()}")


with DAG(
    dag_id="02_IRIS_ORM_Demo",
    start_date=datetime(2025, 12, 1),
    schedule=None,
    catchup=False,
    tags=["iris-contest", "orm"],
) as dag:

    orm_create = PythonOperator(task_id="orm_create_and_insert", python_callable=create_and_insert_orm)
    orm_read   = PythonOperator(task_id="orm_read",               python_callable=query_orm)

    orm_create >> orm_read

3. Synthetic Sales Pipeline

Generate realistic sales data and load efficiently.

from datetime import datetime, timedelta
from airflow import DAG
from airflow.operators.python import PythonOperator
import pandas as pd
import numpy as np
from airflow_provider_iris.hooks.iris_hook import IrisHook
from sqlalchemy import Column, Integer, String, DateTime, Float
from sqlalchemy.orm import declarative_base

Base = declarative_base()

class SalesRecord(Base):
    __tablename__ = "SalesRecord"
    __table_args__ = {"schema": "Test"}

    id        = Column(Integer, primary_key=True)
    region    = Column(String(50))
    amount    = Column(Float)
    sale_date = Column(DateTime)


# ----------- SYNTHETIC DATA GENERATION -----------
def generate_synthetic_sales(num_rows=500):
    """Create synthetic sales data for testing."""
    
    regions = [
        "North America", "South America", "Europe",
        "Asia-Pacific", "Middle East", "Africa"
    ]

    # Randomly pick regions
    region_data = np.random.choice(regions, size=num_rows)

    # Generate synthetic amounts between 10k and 120k
    amounts = np.random.uniform(10000, 120000, size=num_rows).round(2)

    # Generate random dates within last 30 days
    start_date = datetime(2025, 11, 1)
    sale_dates = [start_date + timedelta(days=int(x)) for x in np.random.randint(0, 30, size=num_rows)]

    df = pd.DataFrame({
        "region": region_data,
        "amount": amounts,
        "sale_date": sale_dates
    })

    return df


# ----------- AIRFLOW TASK FUNCTION -----------
def bulk_load_from_csv(**context):

    df = generate_synthetic_sales(num_rows=200)   # Change number as needed

    hook = IrisHook()
    engine = hook.get_engine()

    Base.metadata.create_all(engine)

    df.to_sql("SalesRecord", con=engine, schema="Test", if_exists="append", index=False)
    print(f"Bulk loaded {len(df)} synthetic rows via pandas.to_sql()")


# ----------- DAG DEFINITION -----------
with DAG(
    dag_id="03_IRIS_Load_CSV_Synthetic_Demo",
    start_date=datetime(2025, 12, 1),
    schedule=None,
    catchup=False,
    tags=["iris-contest", "etl", "synthetic"],
) as dag:

    bulk_task = PythonOperator(
        task_id="bulk_load_synthetic_to_iris",
        python_callable=bulk_load_from_csv
    )

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

airflow_provider_iris-0.2.5.tar.gz (10.4 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

airflow_provider_iris-0.2.5-py3-none-any.whl (8.2 kB view details)

Uploaded Python 3

File details

Details for the file airflow_provider_iris-0.2.5.tar.gz.

File metadata

  • Download URL: airflow_provider_iris-0.2.5.tar.gz
  • Upload date:
  • Size: 10.4 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.11.0

File hashes

Hashes for airflow_provider_iris-0.2.5.tar.gz
Algorithm Hash digest
SHA256 a17f3a587de6db1161a432a83c0272bda4a901737dc83fa311dcdf0ac96279bb
MD5 471d7bb6d8f137062bf0ba9aabfb9e1e
BLAKE2b-256 649ddfa4ad625c74c42a27c80d7d9f76b67e3986f1b416dffdd76aa6879b2500

See more details on using hashes here.

File details

Details for the file airflow_provider_iris-0.2.5-py3-none-any.whl.

File metadata

File hashes

Hashes for airflow_provider_iris-0.2.5-py3-none-any.whl
Algorithm Hash digest
SHA256 2c490100b385de5bdefe0874b02e4847ab59443026049beaf6863ee3bad9d002
MD5 45a953eee4967d3fda025c6d72053c9b
BLAKE2b-256 387841aa5141bb8ec8295900a2aca3a5fe5ef6ee2ece48e9fe6f3d9d41f1c62c

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page