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sqlite-map-parser

by @wu-uk

Parse SQLite databases into structured JSON data. Use when exploring unknown database schemas, understanding table relationships, and extracting map data as...

Versionv0.1.0
Downloads347
TERMINAL
clawhub install civ6-adjacency-optimizer-sqlite-map-parser

πŸ“– About This Skill


name: sqlite-map-parser description: Parse SQLite databases into structured JSON data. Use when exploring unknown database schemas, understanding table relationships, and extracting map data as JSON.

SQLite to Structured JSON

Parse SQLite databases by exploring schemas first, then extracting data into structured JSON.

Step 1: Explore the Schema

Always start by understanding what tables exist and their structure.

List All Tables

SELECT name FROM sqlite_master WHERE type='table';

Inspect Table Schema

-- Get column names and types
PRAGMA table_info(TableName);

-- See CREATE statement SELECT sql FROM sqlite_master WHERE name='TableName';

Find Primary/Unique Keys

-- Primary key info
PRAGMA table_info(TableName);  -- 'pk' column shows primary key order

-- All indexes (includes unique constraints) PRAGMA index_list(TableName);

-- Columns in an index PRAGMA index_info(index_name);

Step 2: Understand Relationships

Identify Foreign Keys

PRAGMA foreign_key_list(TableName);

Common Patterns

ID-based joins: Tables often share an ID column

-- Main table has ID as primary key
-- Related tables reference it
SELECT m.*, r.ExtraData
FROM MainTable m
LEFT JOIN RelatedTable r ON m.ID = r.ID;

Coordinate-based keys: Spatial data often uses computed coordinates

# If ID represents a linear index into a grid:
x = id % width
y = id // width

Step 3: Extract and Transform

Basic Pattern

import sqlite3
import json

def parse_sqlite_to_json(db_path): conn = sqlite3.connect(db_path) conn.row_factory = sqlite3.Row # Access columns by name cursor = conn.cursor()

# 1. Explore schema cursor.execute("SELECT name FROM sqlite_master WHERE type='table'") tables = [row[0] for row in cursor.fetchall()]

# 2. Get dimensions/metadata from config table cursor.execute("SELECT * FROM MetadataTable LIMIT 1") metadata = dict(cursor.fetchone())

# 3. Build indexed data structure data = {} cursor.execute("SELECT * FROM MainTable") for row in cursor.fetchall(): key = row["ID"] # or compute: (row["X"], row["Y"]) data[key] = dict(row)

# 4. Join related data cursor.execute("SELECT * FROM RelatedTable") for row in cursor.fetchall(): key = row["ID"] if key in data: data[key]["extra_field"] = row["Value"]

conn.close() return {"metadata": metadata, "items": list(data.values())}

Handle Missing Tables Gracefully

def safe_query(cursor, query):
    try:
        cursor.execute(query)
        return cursor.fetchall()
    except sqlite3.OperationalError:
        return []  # Table doesn't exist

Step 4: Output as Structured JSON

Map/Dictionary Output

Use when items have natural unique keys:
{
  "metadata": {"width": 44, "height": 26},
  "tiles": {
    "0,0": {"terrain": "GRASS", "feature": null},
    "1,0": {"terrain": "PLAINS", "feature": "FOREST"},
    "2,0": {"terrain": "COAST", "resource": "FISH"}
  }
}

Array Output

Use when order matters or keys are simple integers:
{
  "metadata": {"width": 44, "height": 26},
  "tiles": [
    {"x": 0, "y": 0, "terrain": "GRASS"},
    {"x": 1, "y": 0, "terrain": "PLAINS", "feature": "FOREST"},
    {"x": 2, "y": 0, "terrain": "COAST", "resource": "FISH"}
  ]
}

Common Schema Patterns

Grid/Map Data

  • Main table: positions with base properties
  • Feature tables: join on position ID for overlays
  • Compute (x, y) from linear ID: x = id % width, y = id // width
  • Hierarchical Data

  • Parent table with primary key
  • Child tables with foreign key reference
  • Use LEFT JOIN to preserve all parents
  • Enum/Lookup Tables

  • Type tables map codes to descriptions
  • Join to get human-readable values
  • Debugging Tips

    -- Sample data from any table
    SELECT * FROM TableName LIMIT 5;

    -- Count rows SELECT COUNT(*) FROM TableName;

    -- Find distinct values in a column SELECT DISTINCT ColumnName FROM TableName;

    -- Check for nulls SELECT COUNT(*) FROM TableName WHERE ColumnName IS NULL;