Qdrant Hybrid Cloud
Qdrant Hybrid Cloud is a deployment option for Qdrant that combines managed services with customer-controlled infrastructure, enabling flexible, secure, and compliant vector database deployments across cloud and private environments.
About this tool
Qdrant Hybrid Cloud
Category: Managed Vector Databases
Brand: Qdrant
Website: https://qdrant.tech/hybrid-cloud/
Qdrant Hybrid Cloud is a deployment option for the Qdrant vector database that combines a managed control plane with customer-owned infrastructure. It lets you run Qdrant clusters on your own Kubernetes environments (cloud, on‑premises, or edge) while Qdrant handles management and orchestration, keeping data under your control.
Features
Hybrid & Flexible Deployment
- Deploy managed Qdrant clusters on:
- Public cloud platforms
- On‑premises data centers
- Edge locations
- Uses your existing Kubernetes infrastructure.
- Integrates Kubernetes clusters from any setting into a unified, enterprise-grade managed service.
Kubernetes Integration & Management
- Seamless integration with Kubernetes clusters (cloud, on‑prem, edge).
- Uses a Kubernetes operator for cluster lifecycle management.
- Hands-off cluster management, including:
- Scaling (and other lifecycle operations; partially indicated: “including scal…”, i.e. scaling and related tasks).
Data Privacy & Sovereignty
- Separation of data and control layers:
- Data remains in your own infrastructure.
- Control and management are provided as a service.
- Sensitive data stays within your secure premises or chosen environment.
- Supports privacy and data sovereignty requirements.
Performance & Latency
- On‑premise and edge deployments enable ultra‑low latency access.
- Designed to ensure high performance for AI and vector search workloads.
Cost Optimization
- Ability to leverage the most cost‑effective compute and storage across:
- Cloud
- On‑premises
- Designed for cost efficiency while maintaining managed-service convenience.
Control & Ownership
- Transparent control over your data: data remains exclusively yours.
- Fully managed experience for Qdrant clusters without surrendering data ownership.
AI & Vector Search Use Cases
- Built to support AI-driven applications and vector search workloads.
- Aims to elevate performance, security, and efficiency for production AI systems.
How It Works
-
Integration
- Deploy managed Qdrant clusters on any cloud platform or on‑premises Kubernetes infrastructure.
- Data/control plane separation ensures data stays private in your environment.
-
Management
- Install a Kubernetes operator provided by Qdrant.
- Operator handles cluster management tasks (e.g., scaling and operational orchestration) with minimal manual intervention.
Pricing
The provided content does not include any pricing information or plan details for Qdrant Hybrid Cloud.
Loading more......
Information
Categories
Tags
Similar Products
6 result(s)Instaclustr offers comprehensive managed services for vector databases, handling deployment, configuration, ongoing maintenance, tuning, optimization, scalability, security, and data protection. This allows organizations to offload the complexities of managing their vector database infrastructure and focus on their core business objectives.
Fully managed cloud service for the open-source Typesense search engine, including support for vector search and hybrid search use cases.
AWS has introduced vector search in several of its managed database services, including OpenSearch, Bedrock, MemoryDB, Neptune, and Amazon Q, making it a comprehensive platform for vector search solutions.
Datastax offers a vector search solution integrated with its database platform, enabling approximate similarity search and hybrid queries for enterprise use cases.
Google Vertex AI offers managed vector search capabilities as part of its AI platform, supporting hybrid and semantic search for text, image, and other embeddings.
Azure AI Search provides vector search capabilities as a managed service, supporting approximate KNN, hybrid search, and integration with other Azure AI tools.