Qdrant Enterprise Solutions
Qdrant Enterprise Solutions provide enterprise‑grade deployments and support for the Qdrant vector database, including advanced security, high availability, SLAs, and integration services for large‑scale AI search and recommendation use cases.
About this tool
title: Qdrant Enterprise Solutions slug: qdrant-enterprise-solutions category: commerce brand: Qdrant brand_logo: https://qdrant.tech/apple-touch-icon.png source_url: https://qdrant.tech/enterprise-solutions/ featured: false images:
- https://qdrant.tech/images/enterprise/enterprise-hero.png
- https://qdrant.tech/img/enterprise-solutions-hero.png
- https://qdrant.tech/img/enterprise-solutions-use-cases/managed-cloud.png
- https://qdrant.tech/img/enterprise-solutions-use-cases/hybrid-cloud.svg
- https://qdrant.tech/img/enterprise-solutions-use-cases/private-cloud.svg tags:
- enterprise
- vector-database
- services
- hybrid-cloud
- private-cloud
- managed-cloud
Overview
Qdrant Enterprise Solutions provide enterprise-grade deployments of the Qdrant vector database for large-scale AI search, RAG, recommendation, and similar workloads. The offering focuses on secure, compliant, and scalable vector search infrastructure that can be deployed in managed cloud, hybrid, or private environments.
Features
Deployment Models
-
Managed Cloud
- Fully managed Qdrant vector database service.
- Available on AWS, Google Cloud, and Azure.
- Focused on efficient and scalable vector search.
-
Hybrid Cloud
- Use your own Kubernetes clusters from any cloud provider, on‑premise, or edge locations.
- Connect self-managed clusters to Qdrant managed cloud.
- Suitable for highly regulated or mixed-environment setups.
-
Private Cloud
- Deploy Qdrant entirely within your own infrastructure or edge locations.
- Provides maximum control over environment and configuration.
- Supports data sovereignty and isolation requirements.
Security & Compliance
-
Compliance-ready architecture
- Designed to help meet enterprise compliance needs.
- SOC 2 Type 2 certification (for relevant managed environments).
- Options for hybrid and private deployments to support data residency and sovereignty.
-
Identity & Access Management
- Role-Based Access Control (Cloud RBAC).
- Single Sign-On (SSO) integration.
- Granular Database API Keys to control access at a fine-grained level.
Management & Operations
- Cloud API for Management
- API-driven control for provisioning and managing deployments.
- Enables automation and scaling of Qdrant clusters through APIs.
Use Cases
- Enterprise-grade vector search for applications at scale.
- Retrieval-Augmented Generation (RAG) workloads.
- Recommendation systems and personalization.
- Advanced similarity search over embeddings in regulated or security-sensitive environments.
Pricing
Pricing details and specific plans are not provided in the available content. Refer to the source URL or vendor directly for current pricing and plan information.
Loading more......
Information
Categories
Tags
Similar Products
6 result(s)Built into the Salesforce platform, Data Cloud Vector Database ingests various large datasets from customer interactions, classifies and organizes unstructured data, and merges it with structured data to enrich customer profiles and store as metadata in Data Cloud. It enhances generative AI by providing more relevant, accurate, and up-to-date responses through improved data retrieval and semantic search capabilities.
A fully managed vector database infrastructure and operations service provided by Nextbrick. It focuses on deployment, configuration, tuning, scaling, security, and maintenance of vector databases for AI and similarity search workloads. The service handles sharding, replication, query optimization, backups, and disaster recovery so organizations can offload operational management and focus on building AI applications.
QdrantCloud is the managed cloud version of Qdrant, a vector database tailored for AI-powered similarity search and matching.
Vectorflow is a vector database optimized for real-time vector indexing and search in distributed environments, suitable for AI and machine learning use cases.
Pinecone is a fully managed vector database designed for high‑performance semantic search and AI applications. It provides scalable, low-latency storage and retrieval of vector embeddings, allowing developers to build semantic search, recommendation, and RAG (Retrieval-Augmented Generation) systems without managing infrastructure.
Qdrant is an open‑source vector database designed for high‑performance similarity search and AI applications such as RAG, recommendation systems, advanced semantic search, anomaly detection, and AI agents. It provides scalable storage and retrieval of vector embeddings with features like filtering, hybrid search, and production‑grade APIs for integrating with machine learning workloads.