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Synthetic Mock Data

Project description

Synthetic Mock Data 🔮

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Create data out of nothing. Prompt LLMs for Tabular Data.

Key Features

  • A light-weight python client for prompting LLMs for mixed-type tabular data
  • Select from a range of LLM endpoints, that provide structured output
  • Supports single-table as well as multi-table scenarios.
  • Supports variety of data types: string, categorical, integer, float, boolean, date, and datetime.
  • Specify context, distributions and rules via dataset-, table- or column-level prompts.
  • Tailor the diversity and realism of your generated data via temperature and top_p.

Getting Started

  1. Install the latest version of the mostlyai-mock python package.
pip install -U mostlyai-mock
  1. Set the API key of your LLM endpoint (if not done yet)
import os
os.environ["OPENAI_API_KEY"] = "your-api-key"
# os.environ["GEMINI_API_KEY"] = "your-api-key"
# os.environ["GROQ_API_KEY"] = "your-api-key"

Note: You will need to obtain your API key directly from the LLM service provider (e.g. for Open AI from here). The LLM endpoint will be determined by the chosen model when making calls to mock.sample.

  1. Create your first basic synthetic table from scratch
from mostlyai import mock

tables = {
    "guests": {
        "prompt": "Guests of an Alpine ski hotel in Austria",
        "columns": {
            "nationality": {"prompt": "2-letter code for the nationality", "dtype": "string"},
            "name": {"prompt": "first name and last name of the guest", "dtype": "string"},
            "gender": {"dtype": "category", "values": ["male", "female"]},
            "age": {"prompt": "age in years; min: 18, max: 80; avg: 25", "dtype": "integer"},
            "date_of_birth": {"prompt": "date of birth", "dtype": "date"},
            "checkin_time": {"prompt": "the check in timestamp of the guest; may 2025", "dtype": "datetime"},
            "is_vip": {"prompt": "is the guest a VIP", "dtype": "boolean"},
            "price_per_night": {"prompt": "price paid per night, in EUR", "dtype": "float"},
            "room_number": {"prompt": "room number", "dtype": "integer", "values": [101, 102, 103, 201, 202, 203, 204]}
        },
    }
}
df = mock.sample(
    tables=tables,  # provide table and column definitions
    sample_size=10,  # generate 10 records
    model="openai/gpt-4.1-nano",  # select the LLM model (optional)
)
print(df)
#   nationality            name  gender  age date_of_birth        checkin_time  is_vip  price_per_night  room_number
# 0          AT     Anna Müller  female   29    1994-09-15 2025-01-05 14:30:00    True            350.0          101
# 1          DE  Johann Schmidt    male   45    1978-11-20 2025-01-06 16:45:00   False            250.0          102
# 2          CH      Lara Meier  female   32    1991-04-12 2025-01-05 12:00:00    True            400.0          103
# 3          IT     Marco Rossi    male   38    1985-02-25 2025-01-07 09:15:00   False            280.0          201
# 4          FR   Claire Dupont  female   24    2000-07-08 2025-01-07 11:20:00   False            220.0          202
# 5          AT    Felix Gruber    male   52    1972-01-10 2025-01-06 17:50:00    True            375.0          203
# 6          DE   Sophie Becker  female   27    1996-03-30 2025-01-08 08:30:00   False            230.0          204
# 7          CH      Max Keller    male   31    1992-05-16 2025-01-09 14:10:00   False            290.0          101
# 8          IT  Giulia Bianchi  female   36    1988-08-19 2025-01-05 15:55:00    True            410.0          102
# 9          FR    Louis Martin    male   44    1980-12-05 2025-01-07 10:40:00   False            270.0          103
  1. Create your first multi-table synthetic dataset
from mostlyai import mock

tables = {
    "customers": {
        "prompt": "Customers of a hardware store",
        "columns": {
            "customer_id": {"prompt": "the unique id of the customer", "dtype": "integer"},
            "name": {"prompt": "first name and last name of the customer", "dtype": "string"},
        },
        "primary_key": "customer_id",
    },
    "warehouses": {
        "prompt": "Warehouses of a hardware store",
        "columns": {
            "warehouse_id": {"prompt": "the unique id of the warehouse", "dtype": "integer"},
            "name": {"prompt": "the name of the warehouse", "dtype": "string"},
        },
        "primary_key": "warehouse_id",
    },
    "orders": {
        "prompt": "Orders of a Customer",
        "columns": {
            "customer_id": {"prompt": "the customer id for that order", "dtype": "integer"},
            "warehouse_id": {"prompt": "the warehouse id for that order", "dtype": "integer"},
            "order_id": {"prompt": "the unique id of the order", "dtype": "string"},
            "text": {"prompt": "order text description", "dtype": "string"},
            "amount": {"prompt": "order amount in USD", "dtype": "float"},
        },
        "primary_key": "order_id",
        "foreign_keys": [
            {
                "column": "customer_id",
                "referenced_table": "customers",
                "prompt": "each customer has anywhere between 2 and 3 orders",
            },
            {
                "column": "warehouse_id",
                "referenced_table": "warehouses",
            },
        ],
    },
    "items": {
        "prompt": "Items in an Order",
        "columns": {
            "item_id": {"prompt": "the unique id of the item", "dtype": "string"},
            "order_id": {"prompt": "the order id for that item", "dtype": "string"},
            "name": {"prompt": "the name of the item", "dtype": "string"},
            "price": {"prompt": "the price of the item in USD", "dtype": "float"},
        },
        "foreign_keys": [
            {
                "column": "order_id",
                "referenced_table": "orders",
                "prompt": "each order has between 1 and 2 items",
            }
        ],
    },
}
data = mock.sample(
    tables=tables, 
    sample_size=2, 
    model="openai/gpt-4.1"
)
print(data["customers"])
#    customer_id             name
# 0            1  Matthew Carlson
# 1            2       Priya Shah
print(data["warehouses"])
#    warehouse_id                        name
# 0             1    Central Distribution Hub
# 1             2  Northgate Storage Facility
print(data["orders"])
#    customer_id  warehouse_id   order_id                                               text  amount
# 0            1             2  ORD-10294  3-tier glass shelving units, expedited deliver...  649.25
# 1            1             1  ORD-10541  Office desk chairs, set of 6, with assembly se...   824.9
# 2            1             1  ORD-10802  Executive standing desk, walnut finish, standa...   519.0
# 3            2             1  ORD-11017  Maple conference table, cable management inclu...  1225.5
# 4            2             2  ORD-11385  Set of ergonomic task chairs, black mesh, stan...  767.75
print(data["items"])
#      item_id   order_id                                        name   price
# 0  ITM-80265  ORD-10294         3-Tier Tempered Glass Shelving Unit   409.0
# 1  ITM-80266  ORD-10294  Brushed Aluminum Shelf Brackets (Set of 4)  240.25
# 2  ITM-81324  ORD-10541              Ergonomic Mesh-Back Desk Chair   132.5
# 3  ITM-81325  ORD-10541  Professional Office Chair Assembly Service    45.0
# 4  ITM-82101  ORD-10802      Executive Standing Desk, Walnut Finish   469.0
# 5  ITM-82102  ORD-10802         Desk Installation and Setup Service    50.0
# 6  ITM-83391  ORD-11017             Maple Conference Table, 10-Seat  1125.5
# 7  ITM-83392  ORD-11017       Integrated Table Cable Management Kit   100.0
# 8  ITM-84311  ORD-11385            Ergonomic Task Chair, Black Mesh  359.25
# 9  ITM-84312  ORD-11385                   Standard Delivery Service    48.5
  1. Create your first self-referencing synthetic table
from mostlyai import mock

tables = {
    "employees": {
        "prompt": "Employees of a company",
        "columns": {
            "employee_id": {"prompt": "the unique id of the employee", "dtype": "integer"},
            "name": {"prompt": "first name and last name of the president", "dtype": "string"},
            "boss_id": {"prompt": "the id of the boss of the employee", "dtype": "integer"},
            "role": {"prompt": "the role of the employee", "dtype": "string"},
        },
        "primary_key": "employee_id",
        "foreign_keys": [
            {
                "column": "boss_id",
                "referenced_table": "employees",
                "prompt": "each boss has at most 3 employees",
            },
        ],
    }
}
df = sample(tables=tables, sample_size=10, model="openai/gpt-4.1")
print(df)
#    employee_id             name  boss_id                      role
# 0            1  Sandra Phillips     <NA>                 President
# 1            2      Marcus Tran        1   Chief Financial Officer
# 2            3    Ava Whittaker        1  Chief Technology Officer
# 3            4    Sophie Martin        1  Chief Operations Officer
# 4            5      Chad Nelson        2           Finance Manager
# 5            6     Ethan Glover        2         Senior Accountant
# 6            7   Kimberly Ortiz        2         Junior Accountant
# 7            8     Lucas Romero        3                IT Manager
# 8            9      Priya Desai        3    Lead Software Engineer
# 9           10    Felix Bennett        3    Senior Systems Analyst

MCP Server

This repo comes with MCP Server. It can be easily consumed by any MCP Client by providing the following configuration:

{
  "mcpServers": {
      "mostlyai-mock-mcp": {
          "command": "uvx",
          "args": ["--from", "mostlyai-mock", "mcp-server"],
          "env": {
              "OPENAI_API_KEY": "PROVIDE YOUR KEY",
              "GEMINI_API_KEY": "PROVIDE YOUR KEY",
              "GROQ_API_KEY": "PROVIDE YOUR KEY",
              "ANTHROPIC_API_KEY": "PROVIDE YOUR KEY"
          }
      }
  }
}

For example:

  • in Claude Desktop, go to "Settings" > "Developer" > "Edit Config" and paste the above into claude_desktop_config.json
  • in Cursor, go to "Settings" > "Cursor Settings" > "MCP" > "Add new global MCP server" and paste the above into mcp.json

Troubleshooting:

  1. If the MCP Client fails to detect the MCP Server, provide the absolute path in the command field, for example: /Users/johnsmith/.local/bin/uvx
  2. To debug MCP Server issues, you can use MCP Inspector by running: npx @modelcontextprotocol/inspector -- uvx --from mostlyai-mock mcp-server
  3. In order to develop locally, modify the configuration by replacing "command": "uv" (or use the full path to uv if needed) and "args": ["--from", "mostlyai-mock", "mcp-server"]

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