""" Core Data Structure - MemoryEntry (Atomic Entry) Paper Reference: Section 3.1 - Atomic Entries {m_k} Each MemoryEntry represents a self-contained, disambiguated fact extracted from dialogue via the De-linearization transformation F_θ """ from typing import List, Optional from pydantic import BaseModel, Field import uuid class MemoryEntry(BaseModel): """ Atomic Entry - Self-contained memory unit indexed across three orthogonal layers Paper Reference: Section 3.1 - Eq. (3), (4) Generated by De-linearization: m_k = F_θ(W_t) = Φ_time ∘ Φ_coref ∘ Φ_extract(W_t) Indexed via: M(m_k) = {v_k (semantic), h_k (lexical), R_k (symbolic)} """ entry_id: str = Field(default_factory=lambda: str(uuid.uuid4())) # [Semantic Layer] - Dense embedding base (v_k = E_dense(S_k)) lossless_restatement: str = Field( ..., description="Self-contained fact with Φ_coref (no pronouns) and Φ_time (absolute timestamps)" ) # [Lexical Layer] - Sparse keyword vectors (h_k = Sparse(S_k)) keywords: List[str] = Field( default_factory=list, description="Core keywords for BM25-style exact matching" ) # [Symbolic Layer] - Metadata constraints (R_k = {(key, val)}) timestamp: Optional[str] = Field( None, description="Standardized time in ISO 8601 format (YYYY-MM-DDTHH:MM:SS)" ) location: Optional[str] = Field( None, description="Natural language location description" ) persons: List[str] = Field( default_factory=list, description="List of extracted persons" ) entities: List[str] = Field( default_factory=list, description="List of extracted entities (companies, products, etc.)" ) topic: Optional[str] = Field( None, description="Topic phrase summarized by LLM" ) class Config: json_schema_extra = { "example": { "entry_id": "550e8400-e29b-41d4-a716-446655440000", "lossless_restatement": "Alice discussed the marketing strategy for new product XYZ with Bob at Starbucks in Shanghai on November 15, 2025 at 14:30.", "keywords": ["Alice", "Bob", "product XYZ", "marketing strategy", "discussion"], "timestamp": "2025-11-15T14:30:00", "location": "Starbucks, Shanghai", "persons": ["Alice", "Bob"], "entities": ["product XYZ"], "topic": "Product marketing strategy discussion" } } class Dialogue(BaseModel): """ Original dialogue entry """ dialogue_id: int speaker: str content: str timestamp: Optional[str] = None # ISO 8601 format def __str__(self) -> str: time_str = f"[{self.timestamp}] " if self.timestamp else "" return f"{time_str}{self.speaker}: {self.content}"