Skip to main content

A dataframe-like library for Dremio Cloud & Dremio Software

Project description

DremioFrame (currently in alpha)

DremioFrame is a Python library that provides a dataframe builder interface for interacting with Dremio Cloud & Dremio Software. It allows you to list data, perform CRUD operations, and administer Dremio resources using a familiar API.

Documentation

🚀 Getting Started

🛠️ Data Engineering

📊 Analysis & Visualization

🧠 AI Capabilities and AI Agent

note: this libraries embdedded agent is primarily meant as a code generation assist tool, not meant as an alternative to the integrated Dremio agent for deeper administration and natural language analytics. Login to your Dremio instance's UI to leverage integrated agent.

📐 Data Modeling

⚙️ Orchestration

✅ Data Quality

🔧 Administration & Governance

🔗 Integrations

🚀 Performance & Deployment

📚 Reference

🧪 Testing

Installation

[!NOTE] DremioFrame has many optional dependencies for advanced features like AI, Chart Exporting, and Distributed Orchestration. See Optional Dependencies for a full list.

pip install dremioframe

To install with optional dependencies (e.g., for static image export):

pip install "dremioframe[image_export]"

Quick Start

Dremio Cloud

from dremioframe.client import DremioClient

# Assumes DREMIO_PAT and DREMIO_PROJECT_ID are set in env
client = DremioClient()

# Query a table
df = client.table('finance.bronze.transactions').select("transaction_id", "amount", "customer_id").limit(5).collect()
print(df)

Dremio Software v26+

# Assumes DREMIO_SOFTWARE_HOST and DREMIO_SOFTWARE_PAT are set in env
client = DremioClient(mode="v26")

# Or with explicit parameters
client = DremioClient(
    hostname="v26.dremio.org",
    pat="your_pat_here",
    tls=True,
    mode="v26"
)

Dremio Software v25

client = DremioClient(
    hostname="localhost",
    username="admin",
    password="password123",
    tls=False,
    mode="v25"
)

Features

from dremioframe.client import DremioClient

# Assumes DREMIO_PAT and DREMIO_PROJECT_ID are set in env
client = DremioClient()

# List catalog
print(client.catalog.list_catalog())

# Query data
df = client.table('finance.bronze.transactions').select("transaction_id", "amount", "customer_id").filter("amount > 1000").collect()
print(df)

# Calculated Columns
df.mutate(amount_with_tax="amount * 1.08").show()

# Aggregation
df.group_by("customer_id").agg(total_spent="SUM(amount)").show()

# Joins
customers = client.table('finance.silver.customers')
df.join(customers, on="transactions.customer_id = customers.customer_id").show()

# Iceberg Time Travel
df.at_snapshot("123456789").show()

# API Ingestion
client.ingest_api(
    url="https://api.example.com/users",
    table_name="finance.bronze.users",
    mode="merge",
    pk="id"
)

# Charting
sales_summary = client.table('finance.gold.sales_summary')
sales_summary.chart(kind="bar", x="category", y="total_sales", save_to="sales.png")

# Export
df.to_csv("transactions.csv")
df.to_parquet("transactions.parquet")

# Insert Data (Batched)
import pandas as pd
data = pd.DataFrame({"id": [1, 2], "name": ["A", "B"]})
client.table("finance.bronze.raw_data").insert("finance.bronze.raw_data", data=data, batch_size=1000)

# SQL Functions
from dremioframe import F

client.table("finance.silver.sales") \
    .select(
        F.col("dept"),
        F.sum("amount").alias("total_sales"),
        F.rank().over(F.Window.order_by("amount")).alias("rank")
    ) \
    .show()

# Merge (Upsert)
client.table("finance.silver.customers").merge(
    target_table="finance.silver.customers",
    on="customer_id",
    matched_update={"name": "source.name", "updated_at": "source.updated_at"},
    not_matched_insert={"customer_id": "source.customer_id", "name": "source.name"},
    data=data
)

# Data Quality
df.quality.expect_not_null("customer_id")
df.quality.expect_row_count("amount > 10000", 5, "ge") # Expect at least 5 large transactions

# Query Explanation
print(df.explain())

# Reflection Management
client.admin.create_reflection(dataset_id="...", name="my_ref", type="RAW", display_fields=["col1"])

# Async Client
# async with AsyncDremioClient() as client: ...

# CLI
# dremio-cli query "SELECT * FROM finance.gold.sales_summary LIMIT 10"

# Local Caching
# client.table("finance.bronze.transactions").cache("my_cache", ttl_seconds=300).sql("SELECT * FROM my_cache").show()

# Interactive Plotting
# df.chart(kind="scatter", backend="plotly").show()

# UDF Manager
# client.udf.create("add_one", {"x": "INT"}, "INT", "x + 1")

# Raw SQL
# df = client.query("SELECT * FROM finance.silver.customers")

# Source Management
# client.admin.create_source_s3("my_datalake", "bucket")

# Query Profiling
# client.admin.get_job_profile("job_123").visualize().show()

# Iceberg Client
# client.iceberg.list_tables("finance")

# Orchestration CLI
# dremio-cli pipeline list
# dremio-cli pipeline ui --port 8080

# Data Quality Framework
# dremio-cli dq run tests/dq

Sample .env

# Dremio Cloud Configuration
# Required for Dremio Cloud connections
# DREMIO_PAT: Personal Access Token for Dremio Cloud
# DREMIO_PROJECT_ID: The Project ID of your Dremio Cloud project
DREMIO_PAT=your_dremio_cloud_pat_here
DREMIO_PROJECT_ID=your_dremio_project_id_here

# Optional Dremio Cloud Configuration
# DREMIO_URL: Custom base URL for Dremio Cloud (defaults to data.dremio.cloud)
# Note: DREMIO_URL is REQUIRED for running integration tests (tests/test_integration.py)
# DREMIO_URL=data.dremio.cloud

# Dremio Software Configuration
# Required for connecting to Dremio Software (v26+ recommended)
# DREMIO_SOFTWARE_PAT: Personal Access Token for Dremio Software
# DREMIO_SOFTWARE_HOST: Hostname/URL of your Dremio Software instance (e.g. dremio.example.com)
#
# The following variables are specifically used by the test suite (tests/test_integration_software.py)
# and for legacy authentication (v25 or v26 without PAT):
# DREMIO_SOFTWARE_PORT: Port for the Dremio Flight/REST service (default: 32010 for Flight)
# DREMIO_SOFTWARE_USER: Username for Dremio Software
# DREMIO_SOFTWARE_PASSWORD: Password for Dremio Software
# DREMIO_SOFTWARE_TLS: Enable TLS/SSL (true/false, default: false)
#
# Note: If using Software, comment out Cloud variables above to avoid confusion, though the client 'mode' determines which are used.
# DREMIO_SOFTWARE_PAT=your_software_pat_here
# DREMIO_SOFTWARE_HOST=dremio.example.com
# DREMIO_SOFTWARE_PORT=32010
# DREMIO_SOFTWARE_USER=your_username
# DREMIO_SOFTWARE_PASSWORD=your_password
# DREMIO_SOFTWARE_TLS=false
# DREMIO_SOFTWARE_TESTING_FOLDER=Space.Folder

# Test Suite Configuration
# TEST_FOLDER: The namespace (Space) to use for creating temporary test folders and tables.
# Defaults to "testing" if not set. Ensure this Space exists in Dremio.
# TEST_FOLDER=testing

# AI Provider Configuration
# Required for AI features (DremioAgent, SQL generation, etc.)
# Uncomment the one you wish to use.

# OpenAI (Default)
# OPENAI_API_KEY=sk-...

# Anthropic (Claude)
# ANTHROPIC_API_KEY=sk-ant-...

# Google (Gemini)
# GOOGLE_API_KEY=AIza...

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

dremioframe-0.22.0.tar.gz (91.0 kB view details)

Uploaded Source

Built Distribution

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

dremioframe-0.22.0-py3-none-any.whl (107.6 kB view details)

Uploaded Python 3

File details

Details for the file dremioframe-0.22.0.tar.gz.

File metadata

  • Download URL: dremioframe-0.22.0.tar.gz
  • Upload date:
  • Size: 91.0 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.10.1

File hashes

Hashes for dremioframe-0.22.0.tar.gz
Algorithm Hash digest
SHA256 cd5322323b251797e4e6b2e75bcb0f2912d01187dd9677615fe0af63182797a1
MD5 1e629f7d0f01733d26be28c4837aef24
BLAKE2b-256 2e8f6605b0a0880d7c5d43f025f1efcf0bda56cace842e7c2f055fa99e6a22e2

See more details on using hashes here.

File details

Details for the file dremioframe-0.22.0-py3-none-any.whl.

File metadata

  • Download URL: dremioframe-0.22.0-py3-none-any.whl
  • Upload date:
  • Size: 107.6 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.10.1

File hashes

Hashes for dremioframe-0.22.0-py3-none-any.whl
Algorithm Hash digest
SHA256 cb1f3fd91733f2233eab06ac90d804e732e10b05522c432c879f7d81968a2ac3
MD5 291f44891585c5e8f0647e1a8537fa06
BLAKE2b-256 b69c1eee609c6be76051cca07462f1d504403731c7f95462fc041f771c012941

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