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Novelty Grinder analyses chess games, compares analysis to database, and identifies novelties and rare moves.

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Novelty Grinder

Novelty Grinder is a tool to find potential surprise moves. This is done by analyzing games (or lines) as follows:

  1. Position is analyzed with an engine for initial candidate moves.
    • Initial search node count is specified with --nodes
    • Candidate move minimum score is TOP_MOVE_EVAL - eval-threshold - initial-eval-margin.
  2. Moves in the input PGN (including variations) are removed from candidate moves.
  3. Lichess master database is queried for popular moves.
  4. Popular moves are removed from the candidate moves set.
  5. Remaining candidate moves are analyzed until they have a sufficient number of nodes for minimum analysis quality.
    • Minimum number of nodes is specified with --double-check-nodes. By default, this is 10% of the initial search node count.
    • After analysis, candidate move minimum score is TOP_MOVE_EVAL - eval-threshold.
  6. The final candidate moves are the potential surprise moves.

PGN output is then produced with annotations.

Installation

Prerequisites

  • Python 3.8+ (or possibly a newer version is required)
  • Lc0, version 0.31+ is suggested for contempt
  • Nibbler. Optional, but highly recommended for Lc0 configuration.

Configuration

  • Run setup-python-venv.sh. This creates a Python virtual environment and fetches dependencies

Running

Run ./novelty-grinder without parameters for the built-in help.

For example:

./novelty-grinder --engine=lc0 --nodes=100000 --eval-threshold=100 --arrows --first-move=4 --book-cutoff=40 input-games.pgn | tee annotated-games.pgn

This command uses engine lc0 to analyze the game:

  • The full path in engines.json can be omitted.
  • Initial search is 100 kN per move, starting from move 4.
  • Moves less than 4% from the top move are considered initial candidate moves. That's 1% plus the default 3% initial margin.
  • Default popularity cutoff is used. That is, moves with at most 5% popularity are considered for surprises.
  • Unpopular alternative moves and novelties are analyzed further until they have at least 10 kN each. Suggested moves are those that are less than 1% from the top move.
  • Arrows are added in the PGN annotation for visualization. Red arrow = novelty; green arrow = unpopular engine move
  • Analysis is stopped when less than 40 games are in the database.

Tips

For proper surprises, configure Lc0 contempt. Contempt can find sharp moves that may not be objectively the best, but instead, they provide the best winning chances. A bit of experimentation with Nibbler is recommended to find suitable settings. See https://lczero.org/blog/2024/03/gm-matthew-sadler-on-wdl-contempt/ for further information.

Analysis examples

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Novelty Grinder analyses chess games, compares analysis to database, and identifies novelties and rare moves.

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  • Python 91.9%
  • Shell 8.1%