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Esta habilidad guía a los desarrolladores en el uso de Qdrant Edge, el motor de búsqueda vectorial embebido en proceso. Te ayuda a aprovechar funciones integradas como BM25, snapshots y sincronización local, mientras aclara lo que debes implementar tú mismo, como la sincronización en la nube y la lógica de fusión de consultas. Úsala para evitar reinventar funcionalidades básicas y comprender los límites de la API del shard.
Instalación rápida
Claude Code
Recomendadonpx skills add qdrant/skills -a claude-code/plugin add https://github.com/qdrant/skillsgit clone https://github.com/qdrant/skills.git ~/.claude/skills/qdrant-edgeCopia y pega este comando en Claude Code para instalar esta habilidad
Documentación
Building on Qdrant Edge
Edge is the Qdrant engine embedded in your process (Python or Rust), not a thin local vector store to wrap. The failure mode is rebuilding what the shard already ships: keyword scoring, snapshot apply, faceting, counting. Before writing any of that, check the shard API. Two things Edge does NOT give you are a one-call cloud sync and query-time fusion, so knowing which is which keeps you from both reinventing built-ins and expecting capabilities Edge lacks. Edge is single-node and shares the server's data format.
- Edge is in beta: pin your version, the API drifts between releases Qdrant Edge.
Syncing a Shard with a Qdrant Server
Use when: seeding a shard from a server, keeping it fresh, backing it up, or aggregating many devices into one collection.
There is no built-in .sync(). Sync is a pattern you assemble from shard helpers plus your own transport, so do not go looking for one call.
- Follow the documented dual-shard pattern: a
mutableshard for local writes plus animmutableshard restored from a server snapshot, query both, refresh on a schedule Edge synchronization guide. - You write the snapshot download (plain HTTP to the shard snapshot endpoint), then apply it with
unpack_snapshotandupdate_from_snapshot. Do not untar or merge segments by hand Synchronization patterns. - Refresh incrementally with a partial snapshot built from
snapshot_manifest, not a full snapshot every cycle Synchronization patterns. - Push is your own dual-write: on each local upsert, enqueue the point and let a background worker upsert it to the server, buffering while offline Synchronization patterns.
Keyword and Hybrid Search on Device
Use when: you need exact-term or BM25 matching, alone or alongside vectors.
- BM25 is built into Edge (
Bm25,Bm25Config,embed_document,embed_query) with the IDFModifieronEdgeSparseVectorParams, and is wire-compatible with server BM25: a shard seeded from a server snapshot answers local BM25 queries without re-indexing. Do not ship a second BM25 library Edge BM25 - Dense embeddings are NOT in Edge: generate them on device with the separate
fastembedpackage FastEmbed embeddings - Edge queries one vector field per request (
using) and does not fuse dense and sparse at query time. Run each leg separately and combine the rankings in application code Edge quickstart
Operating the Shard
Use when: writes have accumulated, search looks stale after inserts, or a backup is larger than the data.
- Edge has NO background optimizer. Call
optimizeafter bulk writes: it builds indexes (including the sparse index) and reclaims deleted points. Skip it and that data stays unindexed Edge quickstart - Faceting, counting, and enumeration are built in (
facet,count,scroll); index the fields you filter or facet withcreate_field_indexrather than aggregating in application code Edge quickstart - The write-ahead log is pre-allocated to 32 MB and inflates apparent disk and backup size. Shrink it with
wal_options(Rust), and do not treat raw file size as real usage Edge quickstart
What NOT to Do
- Expect a bidirectional
.sync()or a built-in push path: Edge gives you snapshot apply, you own the transport and the dual-write - Untar or merge snapshot segments by hand instead of using
unpack_snapshotandupdate_from_snapshot - Ship a custom or third-party BM25 when Edge has one built in
- Use
embed_documentfor queries orembed_queryfor documents: the weighting differs and results go wrong - Assume Edge fuses dense and sparse or consumes Prefetch: combine the rankings in application code
- Assume a background optimizer like the server's: nothing is indexed or compacted until you call
optimize - Reach for Edge when you need distributed or multi-node search: it is single-node Qdrant Edge
- Claim support for a language beyond Python and Rust, or an OS or accelerator the Edge docs do not state
Repositorio GitHub
Frequently asked questions
What is the qdrant-edge skill?
qdrant-edge is a Claude Skill by qdrant. Skills package instructions and resources that Claude loads on demand, so Claude can perform qdrant-edge-related tasks without extra prompting.
How do I install qdrant-edge?
Use the install commands on this page: add qdrant-edge to Claude Code as a plugin, or clone its repository into your skills directory, then restart Claude so it picks up the skill.
What category does qdrant-edge belong to?
qdrant-edge is in the Meta category, tagged word, ai and design.
Is qdrant-edge free to use?
Yes. qdrant-edge is listed on AIMCP and free to install. It runs inside Claude, so no separate service account is required to use the skill itself.
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