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A robust JSON-to-CSV extraction engine for deeply nested payloads.

Project description

JSON Extract (json_extract_pandas)

A high-performance, reusable Python utility designed to natively flatten, parse, and filter deeply nested JSON data into clean, normalized Pandas DataFrames. It acts as a powerful JSON-to-CSV extraction engine for robust data pipelines.

Features

  • Deep Hierarchical Flattening: Uses recursive logic to safely flatten any nested JSON object, preserving exact path context via dot-notation (e.g. parent.child.property).
  • Cartesian List Explosion: Intelligently handles embedded lists/arrays, exploding them into new rows to prevent data loss or complex column bloat.
  • Dynamic Filtering: Robust API to slice your exact dataset out of massive payloads.
    • Column Filtering: Strict matching, 1-based numeric indexing (e.g., ["1-7", 10]), Prefix wildcards (parent.*), and Suffix wildcards (*.statusCode).
    • Row Filtering: Filter rows by exact values or lists of acceptable values.
  • Smart Data Cleaning: Natively deduplicate rows, drop NaN/blanks, and cleanly simplify column headers without causing naming collisions.
  • Self-Documenting Metadata: Instantly returns schema and dimension metadata (table_size, column_names mapped by 1-based index) alongside the DataFrame.

Requirements

  • Python 3.9+
  • pandas

Installation & Usage

Import extract_json directly into your data pipeline script:

import json
from json_extract_pandas import extract_json

# 1. Load your raw payload
with open('data.json', 'r') as f:
    payload = json.load(f)

# 2. Extract!
meta, df = extract_json(payload)
print(df.head())

Function Reference

extract_json(json_data, **kwargs)

The primary extraction engine.

Parameters

  • json_data (dict | list): (Required) The parsed JSON payload to process. It handles normal dictionaries, lists of dictionaries, or even raw primitive 2D arrays ([[0, 1], [2, 3]]) mapping them securely to col1, col2.

  • desired_columns (list): (Optional) A list of specific column names or numeric indices to retain. It natively supports numeric ranges and Unix-style wildcards (*, ?).

    • Numeric Ranges/Indices (1-based): ["1-7", "10", 12] (Gets columns 1 through 7, 10, and 12). Duplicate overlaps are safely ignored.
    • Exact Match: ["accountId"]
    • Prefix Wildcard: ["shippingAddress.*"] (Gets all properties starting with shippingAddress.)
    • Suffix Wildcard: ["*.statusCode"] (Gets every statusCode across the entire document)
  • row_filters (dict): (Optional) A dictionary mapping a specific column to a required value. You can supply a single exact match, or a list of matches.

    • Exact: {"accountId": "ACC-99823-XYZ"}
    • List: {"regionCode": ["US-EAST", "EU-WEST"]}
  • remove_duplicates (bool): (Optional, Default: False) If True, drops any completely identical rows generated from Cartesian explosions after all filters are applied.

  • simplify_columns (bool): (Optional, Default: False) If True, it trims away verbose parent hierarchies in the column names, leaving only the final child key (e.g., parent.child.shortName safely becomes shortName). Note: If simplifying causes a name collision (e.g., type.code and name.code both mapping to code), it intelligently retains the full dot-notation for those specific columns to prevent data overwrite.

  • remove_empty (bool | str): (Optional, Default: False) Cleans the dataset by dropping rows polluted with missing values (NaN, None) or blank strings ("").

    • 'any' (or True): Strict. Drops the row if any of the filtered columns are missing.
    • 'all': Lenient. Drops the row only if all of the filtered columns are entirely missing.
    • False: Disabled. Retains everything.

Full Example Pipeline

Here is an example demonstrating all parameters functioning in tandem to slice a massive, nested payload down to an exact, clean specification:

1. Sample Data (users_export.json)

[
  {
    "accountId": "ACC-123",
    "regionCode": "US-EAST",
    "shippingAddress": {
      "city": "New York",
      "zipCode": "10001"
    },
    "history": [
      {"orderId": "A1", "statusCode": "DELIVERED"},
      {"orderId": "A2", "statusCode": "PENDING"}
    ]
  },
  {
    "accountId": "ACC-999",
    "regionCode": "EU-WEST",
    "shippingAddress": {
      "city": "London",
      "zipCode": "E1 6AN"
    },
    "history": [
      {"orderId": "B1", "statusCode": "SHIPPED"}
    ]
  }
]

2. Python Script

import json
from json_extract_pandas import extract_json

with open('users_export.json', 'r') as f:
    data = json.load(f)

# Extract only the fields we care about, exactly for our target accounts
meta, df = extract_json(
    json_data=data,
    
    # 1. Grab Account ID, specific columns by index, and shipping address properties
    desired_columns=[
        "accountId", 
        "2-4",
        "shippingAddress.*",
        "*.statusCode"
    ],
    
    # 2. Filter to just these two specific regions
    row_filters={
        "regionCode": ["US-EAST", "EU-WEST"]
    },
    
    # 3. Clean up the resulting DataFrame
    remove_duplicates=True,
    simplify_columns=True,  # Turns "shippingAddress.zipCode" into "zipCode"
    remove_empty='all'      # Drop rows that are totally blank
)

print(df.to_csv(index=False))

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