When to Use This Skill
Design short-term, long-term, and graph-based memory architectures
Use this skill when working with design short-term, long-term, and graph-based memory architectures.
Memory System Design
Memory provides the persistence layer that allows agents to maintain continuity across sessions and reason over accumulated knowledge. Simple agents rely entirely on context for memory, losing all state when sessions end. Sophisticated agents implement layered memory architectures that balance immediate context needs with long-term knowledge retention. The evolution from vector stores to knowledge graphs to temporal knowledge graphs represents increasing investment in structured memory for improved retrieval and reasoning.
When to Use
Activate this skill when:
- Building agents that must persist across sessions
- Needing to maintain entity consistency across conversations
- Implementing reasoning over accumulated knowledge
- Designing systems that learn from past interactions
- Creating knowledge bases that grow over time
- Building temporal-aware systems that track state changes
Core Concepts
Memory exists on a spectrum from immediate context to permanent storage. At one extreme, working memory in the context window provides zero-latency access but vanishes when sessions end. At the other extreme, permanent storage persists indefinitely but requires retrieval to enter context.
Simple vector stores lack relationship and temporal structure. Knowledge graphs preserve relationships for reasoning. Temporal knowledge graphs add validity periods for time-aware queries. Implementation choices depend on query complexity, infrastructure constraints, and accuracy requirements.
Detailed Topics
Memory Architecture Fundamentals
The Context-Memory Spectrum Memory exists on a spectrum from immediate context to permanent storage. At one extreme, working memory in the context window provides zero-latency access but vanishes when sessions end. At the other extreme, permanent storage persists indefinitely but requires retrieval to enter context. Effective architectures use multiple layers along this spectrum.
The spectrum includes working memory (context window, zero latency, volatile), short-term memory (session-persistent, searchable, volatile), long-term memory (cross-session persistent, structured, semi-permanent), and permanent memory (archival, queryable, permanent). Each layer has different latency, capacity, and persistence characteristics.
Why Simple Vector Stores Fall Short Vector RAG provides semantic retrieval by embedding queries and documents in a shared embedding space. Similarity search retrieves the most semantically similar documents. This works well for document retrieval but lacks structure for agent memory.
Vector stores lose relationship information. If an agent learns that "Customer X purchased Product Y on Date Z," a vector store can retrieve this fact if asked directly. But it cannot answer "What products did customers who purchased Product Y also buy?" because relationship structure is not preserved.
Vector stores also struggle with temporal validity. Facts change over time, but vector stores provide no mechanism to distinguish "current fact" from "outdated fact" except through explicit metadata and filtering.
The Move to Graph-Based Memory Knowledge graphs preserve relationships between entities. Instead of isolated document chunks, graphs encode that Entity A has Relationship R to Entity B. This enables queries that traverse relationships rather than just similarity.
Temporal knowledge graphs add validity periods to facts. Each fact has a "valid from" and optionally "valid until" timestamp. This enables time-travel queries that reconstruct knowledge at specific points in time.
Benchmark Performance Comparison The Deep Memory Retrieval (DMR) benchmark provides concrete performance data across memory architectures:
| Memory System | DMR Accuracy | Retrieval Latency | Notes |
|---|---|---|---|
| Zep (Temporal KG) | 94.8% | 2.58s | Best accuracy, fast retrieval |
| MemGPT | 93.4% | Variable | Good general performance |
| GraphRAG | ~75-85% | Variable | 20-35% gains over baseline RAG |
| Vector RAG | ~60-70% | Fast | Loses relationship structure |
| Recursive Summarization | 35.3% | Low | Severe information loss |
Zep demonstrated 90% reduction in retrieval latency compared to full-context baselines (2.58s vs 28.9s for GPT-5.2). This efficiency comes from retrieving only relevant subgraphs rather than entire context history.
GraphRAG achieves approximately 20-35% accuracy gains over baseline RAG in complex reasoning tasks and reduces hallucination by up to 30% through community-based summarization.
Memory Layer Architecture
Layer 1: Working Memory Working memory is the context window itself. It provides immediate access to information currently being processed but has limited capacity and vanishes when sessions end.
Working memory usage patterns include scratchpad calculations where agents track intermediate results, conversation history that preserves dialogue for current task, current task state that tracks progress on active objectives, and active retrieved documents that hold information currently being used.
Optimize working memory by keeping only active information, summarizing completed work before it falls out of attention, and using attention-favored positions for critical information.
Layer 2: Short-Term Memory Short-term memory persists across the current session but not across sessions. It provides search and retrieval capabilities without the latency of permanent storage.
Common implementations include session-scoped databases that persist until session end, file-system storage in designated session directories, and in-memory caches keyed by session ID.
Short-term memory use cases include tracking conversation state across turns without stuffing context, storing intermediate results from tool calls that may be needed later, maintaining task checklists and progress tracking, and caching retrieved information within sessions.
Layer 3: Long-Term Memory Long-term memory persists across sessions indefinitely. It enables agents to learn from past interactions and build knowledge over time.
Long-term memory implementations range from simple key-value stores to sophisticated graph databases. The choice depends on complexity of relationships to model, query patterns required, and acceptable infrastructure complexity.
Long-term memory use cases include learning user preferences across sessions, building domain knowledge bases that grow over time, maintaining entity registries with relationship history, and storing successful patterns that can be reused.
Layer 4: Entity Memory Entity memory specifically tracks information about entities (people, places, concepts, objects) to maintain consistency. This creates a rudimentary knowledge graph where entities are recognized across multiple interactions.
Entity memory maintains entity identity by tracking that "John Doe" mentioned in one conversation is the same person in another. It maintains entity properties by storing facts discovered about entities over time. It maintains entity relationships by tracking relationships between entities as they are discovered.
Layer 5: Temporal Knowledge Graphs Temporal knowledge graphs extend entity memory with explicit validity periods. Facts are not just true or false but true during specific time ranges.
This enables queries like "What was the user's address on Date X?" by retrieving facts valid during that date range. It prevents context clash when outdated information contradicts new data. It enables temporal reasoning about how entities changed over time.
Memory Implementation Patterns
Pattern 1: File-System-as-Memory The file system itself can serve as a memory layer. This pattern is simple, requires no a