"""finesse-benchmark-database: Multilingual Atomic Probe Generator for Long-Context Evaluation This package provides a flexible, configurable library for generating high-quality, traceable datasets of 'strings of beads'— atomic 64-token text chunks sourced from multilingual Wikipedia articles. It serves as the foundational data generation pipeline for the Finesse long-context benchmarking framework, ensuring reproducibility, semantic diversity, and complete metadata tracking for advanced LLM evaluation. Core Principles: - Atomic Beads: Exact 64-token chunks (discard incompletes) to test pure memory granularity. - Traceable Origins: Each bead/string includes full metadata (dataset, article_id, lang) for debugging and verification. - Multilingual Balance: Supports 10+ languages with configurable quotas for fair coverage. - Library-First Design: Instantiable via ProbeConfig for custom experiments; no globals or hardcoding. - JSONL Output: Efficient streaming format for large-scale datasets. Key Components: - ProbeConfig: Dataclass for all settings (languages, samples, chunk size, etc.). - generate_all_strings_of_beads(config): Produces list of {'source': metadata, 'beads': [text_chunks]} dicts. - write_strings_to_probes_atomic(config, strings): Serializes to JSONL with auto-assigned string_ids. Example Usage: from finesse_benchmark_database import ProbeConfig, generate_all_strings_of_beads, write_strings_to_probes_atomic config = ProbeConfig( languages=['en', 'ko'], samples_per_language=100, chunk_token_size=64, output_file='my_probes.jsonl', seed=42 ) beads_strings = generate_all_strings_of_beads(config) write_strings_to_probes_atomic(config, beads_strings) # Outputs my_probes.jsonl with ~200 traceable strings of beads. Installation: pip install finesse-benchmark-database # Or via Poetry: poetry add finesse-benchmark-database This package powers the creation of ~1M+ atomic probes for rigorous long-context memory testing. See main.py for a full pipeline example. """ __version__ = "0.1.0" from .config import ProbeConfig from .chunker import generate_all_strings_of_beads from .writer import write_strings_to_probes_atomic from .main import generate_dataset