qdrant-deployment-options
$
npx mdskill add github/awesome-copilot/qdrant-deployment-optionsSelect the right Qdrant deployment for your project needs.
- Helps users choose between local, Docker, or cloud options.
- Integrates with Qdrant documentation and quick start guides.
- Evaluates requirements like latency, control, and scale.
- Delivers specific deployment paths based on project context.
SKILL.md
.github/skills/qdrant-deployment-optionsView on GitHub ↗
--- name: qdrant-deployment-options description: "Guides Qdrant deployment selection. Use when someone asks 'how to deploy Qdrant', 'Docker vs Cloud', 'local mode', 'embedded Qdrant', 'Qdrant EDGE', 'which deployment option', 'self-hosted vs cloud', or 'need lowest latency deployment'. Also use when choosing between deployment types for a new project." --- # Which Qdrant Deployment Do I Need? Start with what you need: managed ops or full control? Network latency acceptable or not? Production or prototyping? The answer narrows to one of four options. ## Getting Started or Prototyping Use when: building a prototype, running tests, CI/CD pipelines, or learning Qdrant. - Use local mode (Python only): zero-dependency, in-memory or disk-persisted, no server needed [Local mode](https://search.qdrant.tech/md/documentation/quickstart/) - Local mode data format is NOT compatible with server. Do not use for production or benchmarking. - For a real server locally, use Docker [Quick start](https://search.qdrant.tech/md/documentation/quickstart/?s=download-and-run) ## Going to Production (Self-Hosted) Use when: you need full control over infrastructure, data residency, or custom configuration. - Docker is the default deployment. Full Qdrant Open Source feature set, minimal setup. [Quick start](https://search.qdrant.tech/md/documentation/quickstart/?s=download-and-run) - You own operations: upgrades, backups, scaling, monitoring - Must set up distributed mode manually for multi-node clusters [Distributed deployment](https://search.qdrant.tech/md/documentation/operations/distributed_deployment/) - Consider Hybrid Cloud if you want Qdrant Cloud management on your infrastructure [Hybrid Cloud](https://search.qdrant.tech/md/documentation/hybrid-cloud/) ## Going to Production (Zero-Ops) Use when: you want managed infrastructure with zero-downtime updates, automatic backups, and resharding without operating clusters yourself. - Qdrant Cloud handles upgrades, scaling, backups, and monitoring [Qdrant Cloud](https://search.qdrant.tech/md/documentation/cloud-quickstart/) - Supports multi-version upgrades automatically - Provides features not available in self-hosted: `/sys_metrics`, managed resharding, pre-configured alerts ## Need Lowest Possible Latency Use when: network round-trip to a server is unacceptable. Edge devices, in-process search, or latency-critical applications. - Qdrant EDGE: in-process bindings to Qdrant shard-level functions, no network overhead [Qdrant EDGE](https://search.qdrant.tech/md/documentation/edge/edge-quickstart/) - Same data format as server. Can sync with server via shard snapshots. - Single-node feature set only. No distributed mode. ## What NOT to Do - Use local mode for production or benchmarking (not optimized, incompatible data format) - Self-host without monitoring and backup strategy (you will lose data or miss outages) - Choose EDGE when you need distributed search (single-node only) - Pick Hybrid Cloud unless you have data residency requirements (unnecessary Kubernetes complexity when Qdrant Cloud works)
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