Skip to main content

Crate engram

Crate engram 

Source
Expand description

Engram — durable memory layer for AI agents.

Provides a temporal knowledge graph, semantic search, and MCP-native tools for agents running on the JamJet runtime. Memory is scoped, versioned, and queryable across time — enabling agents to reason over what they knew, when.

Re-exports§

pub use consolidation::ConsolidationConfig;
pub use consolidation::ConsolidationEngine;
pub use consolidation::ConsolidationOp;
pub use consolidation::ConsolidationResult;
pub use context::CharTokenEstimator;
pub use context::ContextBlock;
pub use context::ContextBuilder;
pub use context::ContextConfig;
pub use context::OutputFormat;
pub use context::TokenEstimator;
pub use embedding::EmbeddingProvider;
pub use embedding_ollama::OllamaEmbeddingProvider;
pub use extract::ExtractedFact;
pub use extract::ExtractionConfig;
pub use extract::ExtractionResult;
pub use extract::Message;
pub use fact::Entity;
pub use fact::EntityId;
pub use fact::Fact;
pub use fact::FactFilter;
pub use fact::FactId;
pub use fact::FactPatch;
pub use fact::MemoryTier;
pub use fact::Relationship;
pub use fact::RelationshipId;
pub use fact::SubGraph;
pub use graph::GraphStore;
pub use graph_sqlite::SqliteGraphStore;
pub use llm::LlmClient;
pub use llm_anthropic::AnthropicLlmClient;
pub use llm_command::CommandLlmClient;
pub use llm_google::GoogleLlmClient;
pub use llm_ollama::OllamaLlmClient;
pub use llm_openai::OpenAiLlmClient;
pub use memory::Memory;
pub use pipeline::ExtractionPipeline;
pub use scope::Scope;
pub use store::FactStore;
pub use store::MemoryError;
pub use store::StoreStats;
pub use store_sqlite::SqliteFactStore;
pub use vector::VectorFilter;
pub use vector::VectorMatch;
pub use vector::VectorStore;
pub use vector_embedded::EmbeddedVectorStore;

Modules§

conflict
Conflict detection — Stage 2 of the extraction pipeline.
consolidation
Consolidation engine — background memory maintenance.
context
Context assembly — token-budgeted context building for LLM prompts.
embedding
EmbeddingProvider trait — pluggable text-embedding interface for Engram.
embedding_ollama
Ollama-backed EmbeddingProvider implementation.
extract
Extraction pipeline — types and configuration.
fact
Core domain types for the Engram memory layer.
graph
GraphStore trait — the storage interface for the entity-relationship graph.
graph_sqlite
SQLite-backed GraphStore implementation.
llm
LlmClient trait — lightweight LLM interface for extraction.
llm_anthropic
Anthropic Claude LLM client — Messages API.
llm_command
CommandLlmClient — the shell-out extensibility escape hatch.
llm_google
Google Gemini LLM client — generateContent API.
llm_ollama
Ollama LLM client — free, local chat completion.
llm_openai
OpenAI-compatible LLM client — chat completions with native JSON mode.
llm_util
Shared utilities for LLM clients.
memory
Memory — the primary public API for the Engram memory layer.
pipeline
Extraction pipeline — LLM-based fact, entity, and relationship extraction.
retrieve
Hybrid retrieval — merges vector, keyword, and graph search results.
scope
Scope — hierarchical identity context for memory isolation.
store
FactStore trait — the primary storage interface for Engram.
store_sqlite
SQLite-backed FactStore implementation.
vector
VectorStore trait — semantic similarity search interface for Engram.
vector_embedded
EmbeddedVectorStore — in-process brute-force cosine-similarity store.