Skip to main content

Sibyl Memory SDK + bundled Hermes plugin payload. Local-first, SQLite-backed, structured-tier memory for Hermes v0.13+ (and any other Python orchestration that wants direct SDK access).

Project description

sibyl-memory-hermes

Sibyl Memory SDK + bundled Hermes plugin payload. Local-first, SQLite-backed, structured-tier memory for Hermes v0.13+ (and any Python orchestration that wants direct SDK access).

The package ships two things:

  1. SibylMemoryProvider — a framework-agnostic SDK class. Call it directly from any Python code that wants structured local memory.
  2. A bundled Hermes plugin payload — a thin adapter implementing Hermes v0.13's MemoryProvider ABC. Installed into $HERMES_HOME/plugins/sibyl/ by the sibyl-memory-hermes install-plugin console script.

Memory content lives on the user's own machine, never on our servers. Built on sibyl-memory-client, the SDK foundation.

Install (Hermes path)

Hermes' loader uses filesystem discovery, NOT pip entry points. A pip install alone won't make Sibyl visible to Hermes — the install-plugin console script bridges the gap.

pip install sibyl-memory-hermes
sibyl-memory-hermes install-plugin

Then edit ~/.hermes/config.yaml:

memory:
  provider: sibyl

Restart Hermes. Four tools become available to the agent:

  • sibyl_remember(category, name, body) — store a structured fact
  • sibyl_recall(category, name) — look up a known fact
  • sibyl_search(query) — FTS5 search across all four tiers (entities, state, journal, reference); hits are tier-tagged
  • sibyl_list(category?, status?) — browse what's remembered

Optional: lift the 2 MB free-tier cap by binding your account:

pip install sibyl-memory-cli
sibyl init

Direct SDK use (any Python orchestration)

from sibyl_memory_hermes import SibylMemoryProvider

provider = SibylMemoryProvider()         # auto-loads ~/.sibyl-memory/credentials.json
provider.remember("project", "atlas", {"status": "shipping v2 friday"})
provider.recall("project", "atlas")      # → {id, tenant_id, category, name, body, ...}
provider.set_state("active_branch", {"name": "v0.3.1"})
provider.save_context(
    inputs={"user": "what changed in v0.3.1?"},
    outputs={"assistant": "..."},
)
provider.search("v0.3.1")                # FTS5 across entities + state + reference + journal

Why "local-first"?

Mem0, Zep, Honcho, and most other agent-memory products centralize user context on their servers. The Sibyl Memory Plugin keeps the data on the user's disk. Our cloud schema has no memory-content tables. Even with admin DB access we cannot read what users have written. That's the difference between "we promise we don't" and "we structurally can't."

Sibyl Memory Plugin Typical hosted memory
Memory content lives on user's disk on vendor's servers
Query latency local SQLite (sub-ms) round-trip + vector search
Privacy claim structurally enforced policy-only
Free-tier cost to vendor near-zero scales with users

Architecture: five tiers, not one bucket

The provider routes operations onto the appropriate memory tier instead of dumping everything into a single vector store:

Intent Tier Storage call
save the conversation turn COLD journal save_context(inputs, outputs)
remember a fact WARM entity remember(category, name, body)
current state HOT state set_state(key, body)
lookup a runbook REFERENCE set_reference(key, body)
archive stale entity ARCHIVE archive(category, name)
search by content FTS5 cross-tier search(query) → tier-tagged hits

Different intents, different lookups, no embedding model required. FTS5 covers full-text search out of the box.

Hermes contract

The Hermes plugin is implemented by a bundled adapter at _hermes_plugin/adapter.py. The adapter is copied into $HERMES_HOME/plugins/sibyl/ by the install-plugin console script and is what Hermes' filesystem loader picks up. The adapter implements Hermes v0.13's MemoryProvider ABC and delegates every call to SibylMemoryProvider.

The SDK class itself (SibylMemoryProvider) is framework-agnostic — it does not inherit from any framework ABC. This is the v0.3.0 architecture shift. v0.2.x and earlier attempted soft-inheritance via a broken import path; that path was removed and the adapter pattern replaced it.

Activation

Most users get here via the sibyl init CLI (from sibyl-memory-cli), which writes ~/.sibyl-memory/credentials.json after browser authentication. The provider auto-detects this file on construction.

For pre-activation use (tests, internal tooling):

from sibyl_memory_hermes import SibylMemoryProvider

provider = SibylMemoryProvider(
    db_path="/tmp/test-memory.db",
    tenant_id="test-user",
    autoload_credentials=False,
)

Free tier

  • 2 MB local soft cap (with server-authoritative tier verification at the cap boundary)
  • Single device
  • All five tiers (HOT/WARM/COLD/REFERENCE/ARCHIVE)
  • FTS5 full-text search across entities + state + reference + journal
  • Multi-tenant isolation

Paid tiers (Stake, Sync, Lifetime, Enterprise) unlock self-learning, the memory check-up, no cap, and (in build) cross-device encrypted sync. See docs.sibyllabs.org/memory/tiers.

Documentation

License

MIT. Package on PyPI: pypi.org/project/sibyl-memory-hermes.

Citation

The Sibyl Memory Plugin holds #2 globally on the LongMemEval Oracle benchmark. The benchmark methodology and report are at blog.sibylcap.com/longmemeval-v2.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

sibyl_memory_hermes-0.3.2.tar.gz (31.3 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

sibyl_memory_hermes-0.3.2-py3-none-any.whl (26.5 kB view details)

Uploaded Python 3

File details

Details for the file sibyl_memory_hermes-0.3.2.tar.gz.

File metadata

  • Download URL: sibyl_memory_hermes-0.3.2.tar.gz
  • Upload date:
  • Size: 31.3 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.12.3

File hashes

Hashes for sibyl_memory_hermes-0.3.2.tar.gz
Algorithm Hash digest
SHA256 8de811d4aa8b57686ed849266bf282cfbde02cdadd890bc3e047719bfddfb7a7
MD5 de4e72374a4e9fc0bb2546fa31694c5e
BLAKE2b-256 55002a902579cab45e9e64348923281f0014cd4a03e1b26cd6a93c6c1d9d9b7e

See more details on using hashes here.

File details

Details for the file sibyl_memory_hermes-0.3.2-py3-none-any.whl.

File metadata

File hashes

Hashes for sibyl_memory_hermes-0.3.2-py3-none-any.whl
Algorithm Hash digest
SHA256 cc1894cec0556e850d7da76c1f64151f57679d131b32cb33043078479c9b7358
MD5 3a5f10ad2987f21f143a0ce397067aa1
BLAKE2b-256 d62c747f4efb1819e740681f2833cafb3e98b171425bde852a572262ac419733

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page