SAGE

Self-evolving agents with reflective and memory-augmented abilities. Neurocomputing 2025 .

At a glance

Type
Reflective memory-augmented agent
Tier
T3
Created
2024-09
Latest release
not applicable — not OSS
License
not applicable — not OSS
GitHub
not applicable — no GitHub repo
Pricing
not applicable — not commercial
Funding
not applicable — not commercial

Taxonomy

storage
vector
retrieval
similarity
persistence
long-term
update
extraction
unit
episode
governance
n/a
conflict
llm-arbitrate

When to use

Optimised for: not applicable - research paper

Anti-fit: not applicable - research paper

Pros & cons

Pros

Self-evolving agents with reflective and memory-augmented abilities; Neurocomputing 2025 venue.

Cons

Research scope; thin reproducibility evidence; smaller community than mainstream agent frameworks.

Claims & capabilities

Self-evolving agent framework integrating iterative feedback, reflective mechanisms, and memory optimization based on Ebbinghaus forgetting curve; targets continuous decision-making, multi-tasking, and long-span information handling; Neurocomputing 2025; abstract provides no specific quantitative metrics

Technical surface

API surface
not applicable — research paper
Backend storage
not applicable — research paper
Deployment
not applicable — not a deployable product
Embedding model
not applicable — research paper
Multi-tenancy
not applicable — research paper
MCP
not applicable — research paper, no deployed product
A2A
not applicable — research paper, no deployed product
OpenTelemetry
not applicable — research paper, no deployed product

Similar systems

Other recent method papers — theorized, no distinct product in the catalog, ranked by inbound references.

  • Compressive Transformer T3

    Maintains recent states in full resolution while compressing older memories with learned compression functions. DeepMind.

  • MemGPT v2 / agent-tools T3

    Already in catalog as the foundational MemGPT paper. Note: Letta is the productionised successor (cross-listed).

  • Transformer-XL T3

    Extends context through segment-level recurrence + caching of hidden states from prior segments. Foundational long-context architecture.

  • Generative Agents T3

    Park et al. — landmark agent-simulation paper. Reflection + memory stream + retrieval enable believable agent behavior.

  • MemoryBank T3

    Enhances LLMs with long-term memory. Early influential paper.

  • Reflexion T3

    Language agents with verbal reinforcement learning.

Row last verified 2026-05-14. Catalog data is CC-BY-4.0 — see how to read this.