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Composable, reproducible primitives for fortune-telling systems.

Project description

fortune-telling-core

fortune-telling-core is a composable, reproducible Python library for building fortune-telling and divination systems. It provides a small, deterministic, typed core of primitives for readings, symbols, spreads, draws, structural summaries, and provenance, with tradition-specific engines layered on top.

Design Principles

  • Deterministic and reproducible. Randomness enters through one narrow Rng protocol, and every reading records the exact Draw that produced it. A recorded draw can be replayed without any randomness.
  • Tradition-agnostic core. The core knows only symbols, positions, selections, deterministic summaries, and audit metadata. Tradition modules live behind their own packages and are not re-exported from the top-level package.
  • Interpretation belongs to harnesses. Discretionary meanings, localisation, and presentation copy are intentionally outside the library. Consumers can map stable symbol ids, position ids, modifiers, summaries, and provenance into their own interpretation layer.
  • Configurable where schools diverge. Where established schools or conventions disagree, such as house systems, zodiac/ayanamsa, time models, or the Nine Star Ki day-star escapement, the choice is a documented option recorded in reading provenance.

Included Systems

  • Core: Tradition-neutral value types, engine contracts, replay, serialisation, and provenance.
  • Astronomy: Shared, dependency-free astronomy including Julian-day helpers, solar terms, time models, the Ephemeris protocol, and a pure-Python BuiltinEphemeris.
  • Traditions: each exposes its engine and deck/spread data from its own subpackage. Drawn traditions take caller-provided randomness via read: tarot, lenormand (Petit Lenormand), dominoes, runes (Elder Futhark), geomancy (Western geomancy), and iching (I Ching). Computed traditions derive their draw from birth or identity data via cast: astrology, four_pillars (BaZi), sanmeigaku (算命学), sukuyo (宿曜 lunar mansions), koyomi (暦注 day quality), zi_wei (紫微斗数), nine_star_ki, numerology (Pythagorean), name_numerology, chaldean_numerology, hebrew_gematria, greek_isopsephy, cyrillic_slavonic_numerals, cyrillic_pythagorean, cjk_name_strokes (五格 name strokes), can_chi (Vietnamese), thaksa (Thai), weton (Javanese), celtic_tree (Ogham tree zodiac), haab (Maya Haab'), and tzolkin (Maya Tzolk'in).

Note on stroke counts: cjk_name_strokes resolves each character's stroke count from a pluggable provider, defaulting to the bundled Unicode Unihan table. Unihan records representative-glyph counts, which can differ from a divination school's — for example 郎 is 8 in Unihan but 9 in Japanese seimei-handan, so 田中太郎 totals 20 by default versus 21 traditionally. For tradition-faithful counts, register a stroke-count provider using your school's convention (e.g. parsed from KANJIDIC2/KanjiVG, which the library can parse but does not bundle) and select it via stroke_source.

Quick Start

from fortune_telling_core import RandomRng, ReadingRequest, reading_to_json
from fortune_telling_core.traditions.tarot import RWS_DECK, SINGLE_CARD, build_engine

engine = build_engine()
request = ReadingRequest(
    deck_id=RWS_DECK.id,
    spread_id=SINGLE_CARD.id,
)

reading = engine.read(request, rng=RandomRng(seed=42))
payload = reading_to_json(reading)

Computed traditions use cast() instead of caller-provided randomness:

from fortune_telling_core import Querent, ReadingRequest
from fortune_telling_core.traditions.nine_star_ki import (
    NINE_STAR_KI_DECK,
    NINE_STAR_KI_SPREAD,
    build_engine,
)

engine = build_engine()
request = ReadingRequest(
    deck_id=NINE_STAR_KI_DECK.id,
    spread_id=NINE_STAR_KI_SPREAD.id,
    querent=Querent(
        id="example",
        display_name="Example",
        attributes={
            "birth_datetime": "1990-05-17T09:30:00+09:00",
            "latitude": "35.6895",
            "longitude": "139.6917",
        },
    ),
)

reading = engine.cast(request)

Layout

.
├── AGENTS.md
├── README.md
├── pyproject.toml
├── src/
│   └── fortune_telling_core/
├── docs/
├── tests/
├── tools/
└── .agents/
    └── docs/

Development

This repository uses a src/ Python package layout.

python3 -m venv .venv
source .venv/bin/activate
python -m pip install -e ".[dev]"
python -m pytest

Run the deterministic demo CLI:

fortune-telling-demo all
fortune-telling-demo tarot --seed 7
fortune-telling-demo nine-star-ki --json --target-year 2026

For computed demos, a --birth-datetime without a timezone is interpreted in the terminal timezone and serialized with an offset.

Build or serve the API documentation:

python -m pip install -e ".[docs]"
mkdocs serve
mkdocs build --strict

Regenerate the built-in ephemeris series only when changing source tables or the truncation threshold. The large public VSOP87D source files are downloaded into .cache/ephemeris/vsop87d/, an ignored local cache outside tools/, and verified by checksum:

python tools/ephemeris/generate_builtin_series.py --download-missing
python tools/ephemeris/generate_builtin_series.py --check --download-missing

Canonical agent-facing project notes live in .agents/docs/.

Licence and Dependencies

fortune-telling-core is MIT licensed and is intended to remain zero-copyleft. The required runtime dependency set is empty.

Higher-precision astronomy is bring-your-own through the injectable Ephemeris Protocol. Consumers own the licensing review for any ephemeris backend they provide.

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