Skip to main content

DataYoga for Python

Project description

DataYoga Core

Introduction

datayoga-core is the transformation engine used in DataYoga, a framework for building and generating data pipelines.

Installation

pip install datayoga-core

Quick Start

This demonstrates how to transform data using a DataYoga job.

Create a Job

Use this example.yaml:

steps:
  - uses: add_field
    with:
      fields:
        - field: full_name
          language: jmespath
          expression: concat([fname, ' ' , lname])
        - field: country
          language: sql
          expression: country_code || ' - ' || UPPER(country_name)
  - uses: rename_field
    with:
      fields:
        - from_field: fname
          to_field: first_name
        - from_field: lname
          to_field: last_name
  - uses: remove_field
    with:
      fields:
        - field: credit_card
        - field: country_name
        - field: country_code
  - uses: map
    with:
      expression:
        {
          first_name: first_name,
          last_name: last_name,
          greeting: "'Hello ' || CASE WHEN gender = 'F' THEN 'Ms.' WHEN gender = 'M' THEN 'Mr.' ELSE 'N/A' END || ' ' || full_name",
          country: country,
          full_name: full_name
        }
      language: sql

Transform Data Using datayoga-core

Use this code snippet to transform a data record using the job defined above. The transform method returns a tuple of processed, filtered, and rejected records:

import datayoga_core as dy
from datayoga_core.job import Job
from datayoga_core.result import Result, Status
from datayoga_core.utils import read_yaml

job_settings = read_yaml("example.yaml")
job = dy.compile(job_settings)

assert job.transform([{"fname": "jane", "lname": "smith", "country_code": 1, "country_name": "usa", "credit_card": "1234-5678-0000-9999", "gender": "F"}]).processed == [
  Result(status=Status.SUCCESS, payload={"first_name": "jane", "last_name": "smith", "country": "1 - USA", "full_name": "jane smith", "greeting": "Hello Ms. jane smith"})]

The job can also be provided as a parsed json inline:

import datayoga_core as dy
from datayoga_core.job import Job
from datayoga_core.result import Result, Status
import yaml
import textwrap

job_settings = textwrap.dedent("""
  steps:
    - uses: add_field
      with:
        fields:
          - field: full_name
            language: jmespath
            expression: concat([fname, ' ' , lname])
          - field: country
            language: sql
            expression: country_code || ' - ' || UPPER(country_name)
    - uses: rename_field
      with:
        fields:
          - from_field: fname
            to_field: first_name
          - from_field: lname
            to_field: last_name
    - uses: remove_field
      with:
        fields:
          - field: credit_card
          - field: country_name
          - field: country_code
    - uses: map
      with:
        expression:
          {
            first_name: first_name,
            last_name: last_name,
            greeting: "'Hello ' || CASE WHEN gender = 'F' THEN 'Ms.' WHEN gender = 'M' THEN 'Mr.' ELSE 'N/A' END || ' ' || full_name",
            country: country,
            full_name: full_name
          }
        language: sql
""")
job = dy.compile(yaml.safe_load(job_settings))

assert job.transform([{"fname": "jane", "lname": "smith", "country_code": 1, "country_name": "usa", "credit_card": "1234-5678-0000-9999", "gender": "F"}]).processed == [
  Result(status=Status.SUCCESS, payload={"first_name": "jane", "last_name": "smith", "country": "1 - USA", "full_name": "jane smith", "greeting": "Hello Ms. jane smith"})]

As can be seen, the record has been transformed based on the job:

  • fname field renamed to first_name.
  • lname field renamed to last_name.
  • country field added based on an SQL expression.
  • full_name field added based on a JMESPath expression.
  • greeting field added based on an SQL expression.

Examples

  • Add a new field country out of an SQL expression that concatenates country_code and country_name fields after upper case the later:

    uses: add_field
    with:
      field: country
      language: sql
      expression: country_code || ' - ' || UPPER(country_name)
    
  • Rename fname field to first_name and lname field to last_name:

    uses: rename_field
    with:
      fields:
        - from_field: fname
          to_field: first_name
        - from_field: lname
          to_field: last_name
    
  • Remove credit_card field:

    uses: remove_field
    with:
      field: credit_card
    

For a full list of supported block types see reference.

Expression Language

DataYoga supports both SQL and JMESPath expressions. JMESPath are especially useful to handle nested JSON data, while SQL is more suited to flat row-like structures.

For more information about custom functions and supported expression language syntax see reference.

Project details


Release history Release notifications | RSS feed

Download files

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

Source Distribution

datayoga_core-1.92.0.tar.gz (38.5 kB view details)

Uploaded Source

Built Distribution

datayoga_core-1.92.0-py3-none-any.whl (67.4 kB view details)

Uploaded Python 3

File details

Details for the file datayoga_core-1.92.0.tar.gz.

File metadata

  • Download URL: datayoga_core-1.92.0.tar.gz
  • Upload date:
  • Size: 38.5 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/4.0.2 CPython/3.9.18

File hashes

Hashes for datayoga_core-1.92.0.tar.gz
Algorithm Hash digest
SHA256 67131755de55f3211d282163d22c1cfc6378e842a72b55965bef617c0adcd7b0
MD5 135925150f1914cb7551606b2335ef2b
BLAKE2b-256 6327e8d19689b4d45a1a7b658d8b3a1c2ef107635f005a2d8709d79edb8b0bd3

See more details on using hashes here.

File details

Details for the file datayoga_core-1.92.0-py3-none-any.whl.

File metadata

File hashes

Hashes for datayoga_core-1.92.0-py3-none-any.whl
Algorithm Hash digest
SHA256 9525b977a8c1aaae08aa5f20ea154ad695aaa306b904ae9716d8a86782df86e3
MD5 162dfdebf5128a4d359d8228c0a11a54
BLAKE2b-256 2bacbdfb2eefc4d8c12f4255e5f474c0068f506e11f144969a18d8017c068521

See more details on using hashes here.

Supported by

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