Skip to main content

Industrial Model ORM

Project description

📦 industrial-model

industrial-model is a Python ORM-style abstraction for querying views and data models in Cognite Data Fusion (CDF). It provides a declarative and type-safe way to model CDF views using pydantic, build queries, and interact with the CDF API in a Pythonic fashion.


✨ Features

  • Define CDF views using Pydantic-style classes.
  • Build complex queries using fluent and composable filters.
  • Easily fetch data using standard or paginated query execution.
  • Automatic alias and field transformation support.
  • Extensible and test-friendly design.

📦 Installation

pip install industrial-model

🛠️ Usage Example

import datetime
from cognite.client import CogniteClient
from pydantic import Field

from industrial_model import (
    AsyncEngine,
    DataModelId,
    Engine,
    ViewInstance,
    select,
    col,
    and_,
    or_,
)

# Define entities (view instances)


class Car(ViewInstance):
    name: str


class Region(ViewInstance):
    name: str


class Country(ViewInstance):
    name: str
    region: Region = Field(
        alias="regionRef"
    )  # Maps property to field if names differ


class Person(ViewInstance):
    name: str
    birthday: datetime.date
    lives_in: Country
    cars: list[Car]


# By default, the ORM maps the class name to the view in the data model.
# You can override this behavior using the `view_config` field.

# For improved query performance, you can configure `instance_spaces` or `instance_spaces_prefix`
# in the `view_config`. These options include space filters in the generated queries,
# which can significantly reduce response times when working with large datasets.

class AnotherPerson(ViewInstance):
    view_config = ViewInstanceConfig(
        view_external_id="Person",                    # Maps this class to the 'Person' view
        instance_spaces_prefix="Industr-",            # Filters queries to spaces with this prefix
        instance_spaces=["Industrial-Data"]           # Alternatively, explicitly filter by these spaces
    )

    name: str
    birthday: datetime.date
    lives_in: Country
    cars: list[Car]


# Initialize Cognite client and data model engine

cognite_client = CogniteClient()

data_model_id = DataModelId(
    external_id="IndustrialData",
    space="IndustralSpaceType",
    version="v1"
)

engine = Engine(cognite_client, data_model_id)
async_engine = AsyncEngine(cognite_client, data_model_id)  # Optional async engine


# -----------------------------------
# Example Queries
# -----------------------------------

# 1. Basic query: Find person named "Lucas"
statement = select(Person).where(Person.name == "Lucas").limit(1)
result = engine.query(statement)


# 2. Combined filter with AND/OR
statement = select(Person).where(
    (Person.name == "Lucas") & (Person.birthday > datetime.date(2023, 1, 2)) |
    (Person.name == "Another")
)
result = engine.query(statement)


# 3. Same logic using `col()` expressions
statement = select(Person).where(
    (col("name").equals_("Lucas")) &
    (col(Person.birthday).gt_("2023-01-02")) |
    (Person.name == "Another")
)
result = engine.query(statement)


# 4. Nested filtering using relationships
statement = select(Person).where(
    or_(
        col(Person.lives_in).nested_(Country.name == "usa"),
        and_(
            col(Person.lives_in).nested_(col(Country.name).equals_("bra")),
            col(Person.birthday).equals_("2023-01-01")
        )
    )
)
result = engine.query(statement)


# 5. Paginated query with sorting and cursor
statement = (
    select(Person)
    .where(
        (Person.name == "Lucas") &
        (Person.birthday > datetime.date(2023, 1, 2)) |
        (Person.name == "Another")
    )
    .limit(10)
    .cursor("NEXT CURSOR")
    .asc(Person.name)
)
result = engine.query(statement)


# 6. Fetch all pages of a query
statement = select(Person).where(
    (Person.name == "Lucas") &
    (Person.birthday > datetime.date(2023, 1, 2)) |
    (Person.name == "Another")
)
all_results = engine.query_all_pages(statement)

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

industrial_model-0.1.5.tar.gz (43.7 kB view details)

Uploaded Source

Built Distribution

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

industrial_model-0.1.5-py3-none-any.whl (20.3 kB view details)

Uploaded Python 3

File details

Details for the file industrial_model-0.1.5.tar.gz.

File metadata

  • Download URL: industrial_model-0.1.5.tar.gz
  • Upload date:
  • Size: 43.7 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: uv/0.4.22

File hashes

Hashes for industrial_model-0.1.5.tar.gz
Algorithm Hash digest
SHA256 3778607730e2bc44b47614d0e60173cfd8cb2b5bac475c3274529bb36b611f64
MD5 eabc3007ba09fd3fa2f72b526ff2eb88
BLAKE2b-256 5bf5267d8f73320119cc62173d8f5d48711a3625b9801867ad48215417296319

See more details on using hashes here.

File details

Details for the file industrial_model-0.1.5-py3-none-any.whl.

File metadata

File hashes

Hashes for industrial_model-0.1.5-py3-none-any.whl
Algorithm Hash digest
SHA256 85668ccd144c34a39396bfa04df7e344a3bf71171f99cf693712716cee5461ad
MD5 5238a06e9fcd329096fe8d1c6132d253
BLAKE2b-256 0557e244ea00172fe61cbae3598cd571ceaa74088b44787c809237d7590bb7a5

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