Skip to main content

Data Validation Gini (DVG) CLI for row count, row/column comparison, and schema validation with HTML reports

Project description

Data Validation Gini (DVG)

Data Validation Gini is a lightweight Python CLI for validating source and target datasets and generating a rich HTML reconciliation report.

The repository also includes a CSV data mutation utility (data_corruptor.py) to create controlled mismatches for validation testing.

Latest Updates (v0.3.13)

  • NEW: SCHEMA_VALIDATION - Full implementation of schema validation:
    • Validates column count, column names, and inferred data types
    • Detects INTEGER, FLOAT, BOOLEAN, DATE, and STRING types from sample data
    • Can be combined with ROWCOUNT_VALIDATION and ROW_COL_VALIDATION
    • See scripts/data/007_run_schema_validation.bat for examples
  • Migrated to a src/ package layout (data_validation_gini) while preserving root-level compatibility wrappers.
  • Enhanced CLI contract with explicit source/target kind flags (--src-kind, --tgt-kind) and compatibility shims.
  • Added canonical validation-type normalization (ROWCOUNT alias -> ROWCOUNT_VALIDATION).
  • Added mismatch capping with --max-mismatches.
  • Added reusable file I/O classes:
    • IniConfigStore for INI read/write operations
    • JsonFileStore for JSON read/write operations
  • Refactored test and coverage scripts for reliable local execution on Windows and Linux/macOS.
  • Expanded automated tests and achieved 100% package coverage for data_validation_gini.

What This Project Does

  • Compares source vs target files using row-level and cell-level checks.
  • Supports CSV and Excel (.xlsx, .xlsm, .xltx) inputs.
  • Supports single-sheet and multi-sheet validation (via sheet mapping).
  • Produces a styled, filterable HTML report with KPI summary cards.
  • Includes repeatable batch scripts for common mutation and validation scenarios.

Current Validation Modes

  • ROWCOUNT_VALIDATION: checks source/target data row counts.
  • ROWCOUNT: compatibility alias of ROWCOUNT_VALIDATION.
  • ROW_COL_VALIDATION: checks headers and row/column values.
  • SCHEMA_VALIDATION: checks column count, column names (order-sensitive), and inferred data types.
  • Combined mode: pass multiple as comma-separated values:
    • ROWCOUNT_VALIDATION,ROW_COL_VALIDATION
    • SCHEMA_VALIDATION,ROW_COL_VALIDATION
    • ROWCOUNT_VALIDATION,SCHEMA_VALIDATION,ROW_COL_VALIDATION

Key Features in Current Implementation

  • Header mismatch detection:
    • header length mismatches
    • header name mismatches
  • Row alignment using preferred key columns:
    • employee_id, id, emp_id, record_id, pk
    • falls back to first column if no preferred key exists
  • Mismatch classification:
    • CELL - cell value mismatch
    • SRC_ONLY - value in source only
    • TGT_ONLY - value in target only
    • HEADER_LENGTH - header column count mismatch
    • HEADER_NAME - header name mismatch
    • ROWCOUNT - row count mismatch
    • SCHEMA_COLUMN_COUNT - schema column count mismatch
    • SCHEMA_COLUMN_NAME - schema column name mismatch
    • SCHEMA_DATA_TYPE - schema data type mismatch (INTEGER, FLOAT, BOOLEAN, DATE, STRING)
  • HTML report KPIs:
    • SRC Count
    • TGT Count
    • PASSED
    • FAILED
    • Pass Rate
    • Failed Rate
    • SRC Only
    • TGT Only
  • Per-column filter inputs in mismatch table for quick triage.

Requirements

  • Python 3.9+
  • Packages:
    • openpyxl
    • pytest (for tests)
    • python-dotenv

Install dependencies:

pip install -r requirements.txt

Quick Start (Windows Batch Flow)

From project root:

scripts\001_env.bat
scripts\002_activate.bat
scripts\003_setup.bat

Run all mutation scenarios:

scripts\004_run.bat

Run a DVG validation and generate HTML:

scripts\dvg.bat

Run sheet mapping validation (Excel to Excel):

scripts\006_run_sheet_mapping.bat

Deactivate venv:

scripts\008_deactivate.bat

CLI Usage

DVG Validator

python dvg.py \
  --src-kind csv \
  --tgt-kind csv \
  --src-path inputs/employees.csv \
  --tgt-path outputs/employees.csv \
  --validation-type ROWCOUNT_VALIDATION,ROW_COL_VALIDATION \
  --html-output output/report_<datetime>.html

Legacy compatibility mode is still available:

python dvg.py \
  --file-type EXCEL \
  --src-path inputs/employees.csv \
  --tgt-path outputs/employees.csv \
  --validation-type ROWCOUNT,ROW_COL_VALIDATION

Optional arguments:

  • --src-sheet <sheet_name>
  • --tgt-sheet <sheet_name>
  • --sheet-mapping "SRC1:TGT1,SRC2:TGT2"
  • --chunk-size <positive_int> (default: 1000)
  • --src-db-alias <alias>, --tgt-db-alias <alias>
  • --src-env <env>, --tgt-env <env>, --allow-cross-env
  • --max-mismatches <int>
  • --key-mode <AUTO|PRIMARY_KEY|COLUMNS|GROUP_CANONICAL|HASH>

Notes:

  • --sheet-mapping is supported only for Excel file pairs.
  • Provide either --file-type or both --src-kind and --tgt-kind.
  • --file-type remains supported for backward compatibility.
  • DB kind declarations include sqlserver and oracle, but current implementation supports DB execution only for sqlite, postgresql, and mysql.
  • Mixed file<->DB validation in a single run is not implemented yet.
  • <datetime> token in --html-output is replaced at runtime with YYYYMMDD_HHMMSS.
  • --chunk-size controls the number of data rows read per batch for CSV/XLSX loading.
  • --max-mismatches truncates mismatch details included in console preview and HTML report.
  • Console output now shows chunk progress for source/target loading: total chunks, current chunk, and completion summary.

Large-file tuning tip:

  • Start with --chunk-size 1000 (default), then increase to 2000 or 5000 for faster reads if memory allows.
  • In dvg.bat, set CHUNK_SIZE in the config block to tune batch size without changing CLI commands.

Installed CLI Entry Point

If installed as a package, you can run:

dvg --src-kind csv --tgt-kind csv --src-path ... --tgt-path ... --validation-type ROWCOUNT_VALIDATION

Data Mutation Utility (data_corruptor.py)

Use this utility to generate controlled data drift before validation.

Example:

python data_corruptor.py \
  --input inputs/employees.csv \
  --output outputs/employees_typos.csv \
  --column email \
  --percentage 1.0 \
  --type typo

Batch Scripts for Mutation Scenarios

Located in the scripts/ folder:

  • run_case_swap.bat - Swap character cases
  • run_date_shift.bat - Shift dates by random days
  • run_nullify.bat - Replace values with NULL/empty
  • run_numeric_shift.bat - Shift numeric values
  • run_typo.bat - Introduce character typos

Example:

scripts\run_case_swap.bat

Supported mutation types:

  • nullify
    • Replaces selected values with blank strings.
    • Purpose: validate missing-value detection.
  • case_swap
    • Swaps letter casing in selected values.
    • Purpose: validate case sensitivity behavior.
  • numeric_shift
    • Adds/subtracts a numeric offset (--value).
    • Purpose: validate precision and tolerance checks.
  • date_shift
    • Shifts date/datetime values by day count (--value).
    • Supported formats: YYYY-MM-DD, YYYY-MM-DD HH:MM:SS.
    • Purpose: validate temporal drift handling.
  • typo
    • Randomly replaces one character in selected strings.
    • Purpose: validate strict text/hash mismatch detection.

Sample Scenario Scripts

  • run_case_swap.bat
  • run_date_shift.bat
  • run_nullify.bat
  • run_numeric_shift.bat
  • run_typo.bat

Each script mutates inputs/employees.csv into a corresponding file under outputs/.

Reports

Generated reports are written under output/ and include:

  • high-level pass/fail status
  • validation metadata (source, target, validation type, timestamp)
  • KPI cards
  • detailed mismatch table with filters

Tests

Run tests with:

pytest

Local Test Scripts

Windows:

scripts\005_run_unit_tests.bat
scripts\005_run_code_cov.bat

Linux/macOS:

bash scripts/005_run_unit_tests.sh
bash scripts/005_run_code_cov.sh

Coverage command used by the scripts:

python -m pytest --cov=data_validation_gini --cov-report=term-missing --cov-report=html

Current target and baseline: 100% coverage for package modules under src/data_validation_gini.

Security Audits

The project includes comprehensive security scanning with automated HTML report generation. See docs/security/SECURITY_AUDITS.md for detailed documentation.

Quick Start

Run all security audits:

scripts\013_run_all_security_audits.bat

Or on Linux/macOS:

bash scripts/013_run_all_security_audits.sh

Individual audit scripts:

  • scripts/010_run_pip_audit.bat - Scan Python dependencies for known vulnerabilities
  • scripts/011_run_trivy_audit.bat - Scan filesystem for misconfigurations and secrets
  • scripts/012_run_gitleaks_audit.bat - Detect accidentally committed secrets

Reports Generated:

  • audits/pip_audit_report.html - Dependency vulnerability report
  • audits/trivy_fs_report.html - Filesystem audit report
  • audits/gitleaks_report.html - Secret detection report

Install Security Tools:

# Windows (Chocolatey)
choco install trivy gitleaks
pip install pip-audit

# macOS (Homebrew)
brew install trivy gitleaks
pip install pip-audit

See docs/security/SECURITY_AUDITS.md for:

  • Detailed tool documentation
  • CI/CD integration examples
  • Troubleshooting guides
  • Report interpretation tips

Project Structure (High Level)

Core Files

  • src/data_validation_gini/dvg.py - validation CLI implementation
  • src/data_validation_gini/dvg_report.py - HTML report generation
  • src/data_validation_gini/data_corruptor.py - mutation utility implementation
  • src/data_validation_gini/dvg_db.py - database connectivity and table loading
  • src/data_validation_gini/file_stores.py - INI/JSON file reader-writer classes
  • dvg.py, dvg_db.py, dvg_report.py, data_corruptor.py - root compatibility wrappers
  • README.md - Main documentation
  • docs/CONTRIBUTING.md - contributor workflow and repository boundaries
  • docs/security/SECURITY_AUDITS.md - Security audit scripts documentation

Scripts Folder (scripts/)

Setup & Environment:

  • 001_env.bat/sh - Python environment setup
  • 002_activate.bat/sh - Activate virtual environment
  • 003_setup.bat/sh - Install dependencies
  • 008_deactivate.bat/sh - Deactivate virtual environment

Domain Implementations:

  • scripts/data/ - operational data workflows (mutations, sheet mapping, DB startup/seed/compare)
  • scripts/testing/ - local test and coverage workflows
  • scripts/security/ - security audit workflows and consolidated run

Compatibility Wrappers (root scripts):

  • Existing root scripts remain valid (for example 004_run.bat, 005_run_unit_tests.bat, 010_run_pip_audit.bat).
  • Each wrapper forwards to the new domain script path so existing entrypoints and automation remain unchanged.

Validation & CLI:

  • dvg.bat/sh - Run DVG validation

Directories

  • inputs/ - baseline sample datasets
  • outputs/ - mutated sample datasets
  • output/ - generated validation report files
  • audits/ - generated security audit reports (JSON & HTML)
  • tests/ - unit tests
  • data_validation_gini.egg-info/ - package metadata

License

MIT

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

data_validation_gini-0.3.13.tar.gz (47.6 kB view details)

Uploaded Source

Built Distribution

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

data_validation_gini-0.3.13-py3-none-any.whl (37.5 kB view details)

Uploaded Python 3

File details

Details for the file data_validation_gini-0.3.13.tar.gz.

File metadata

  • Download URL: data_validation_gini-0.3.13.tar.gz
  • Upload date:
  • Size: 47.6 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? Yes
  • Uploaded via: twine/6.1.0 CPython/3.13.12

File hashes

Hashes for data_validation_gini-0.3.13.tar.gz
Algorithm Hash digest
SHA256 e51182445c00b770357dfc4739c52086f5cb9559bfe8897921b94833d3597f93
MD5 8f70e725a27bca62ecca1d7eeb9133b6
BLAKE2b-256 66c04cfed43c9b625eecac0b016dfd49cc353a866ab9a5c34657571f28b43f8a

See more details on using hashes here.

Provenance

The following attestation bundles were made for data_validation_gini-0.3.13.tar.gz:

Publisher: publish-pypi.yml on ShanKonduru/data-validation-gini

Attestations: Values shown here reflect the state when the release was signed and may no longer be current.

File details

Details for the file data_validation_gini-0.3.13-py3-none-any.whl.

File metadata

File hashes

Hashes for data_validation_gini-0.3.13-py3-none-any.whl
Algorithm Hash digest
SHA256 61a6c82a41a6db248f640e741805033945e350f73b064ee2a549391d55329342
MD5 c55d05c83a33a03d9af356a8b5775cfc
BLAKE2b-256 54a862fe931203319c9fd739a278a5d4986cca319161f6d0c88af39a0d934e11

See more details on using hashes here.

Provenance

The following attestation bundles were made for data_validation_gini-0.3.13-py3-none-any.whl:

Publisher: publish-pypi.yml on ShanKonduru/data-validation-gini

Attestations: Values shown here reflect the state when the release was signed and may no longer be current.

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