Qdrant Vector Database
QdrantReviews from AWS customer
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High Performance & Scalability
What do you like best about the product?
it is optimized for speed and scalability, capable of handling large datasets with high throughput. The engine uses state-of-the-art algorithms to ensure fast query responses.
What do you dislike about the product?
High performance comes with high resource usage, which might be a consideration for smaller deployments.
What problems is the product solving and how is that benefiting you?
The straightforward API and comprehensive documentation make it easy to set up and use, even for those new to vector search engines.Highly customizable to fit specific needs, including various distance metrics and index configurations.Provides high-precision results for nearest neighbor searches, crucial for applications needing exact matches.
Qdrant
What do you like best about the product?
Qdrant is an open source database. It allow to perform large queries on a large database.
What do you dislike about the product?
There is nothing to dislike about Qdrant.
What problems is the product solving and how is that benefiting you?
It Creates Qdrant API key for the cloud database to perform multiple actions.
Qdrant Vector DB
What do you like best about the product?
Qdrant is a open source
It is suitable for efficient vector search.
It allows to handle large datasets and high query loads.
It supports High Dimensional Vectors
Best thing of using Qdrant is its speed and reliability.
It is suitable for efficient vector search.
It allows to handle large datasets and high query loads.
It supports High Dimensional Vectors
Best thing of using Qdrant is its speed and reliability.
What do you dislike about the product?
I have deployed qdrant in Azure cloud using AKS, ACI,App service. The setup and integration is very complex.
I have faced timeout issues at initial creation of collection names with client. Due to less documentation it took some time for resolution.
I have faced timeout issues at initial creation of collection names with client. Due to less documentation it took some time for resolution.
What problems is the product solving and how is that benefiting you?
Qdrant allows the embeddings for matching, searching, recommending. It helps to get relevant data from the DB based on similarity search.
We are passing the matched content to LLMs. This helps in resolving model halucinations.
We are passing the matched content to LLMs. This helps in resolving model halucinations.
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