QDRANT
Qdrant is an open-source vector similarity search engine. It deploys as an API service providing search for the nearest high-dimensional vectors. With Qdrant, embeddings or neural network encoders can be turned into full-fledged applications for matching, searching, recommending, and much more. Make the most of your Unstructured Data!
QDRANT
Industry:
Cloud Data Services Search Engine Software
Founded:
2021-05-01
Address:
Berlin, Berlin, Germany
Country:
Germany
Website Url:
http://www.qdrant.tech
Total Employee:
1+
Status:
Closed
Email Addresses:
[email protected]
Total Funding:
2 M EUR
Technology used in webpage:
Cloudflare JS CDN JS Cloudflare Hosting COVID-19 Facebook Custom Audiences Facebook Conversion Tracking Google Analytics 4 MailChimp Stripe Envoy
Similar Organizations
Julia Computing
Julia is an open source, modern, easy, and high performance programming language.
Current Employees Featured
Founder
Investors List
IBB Ventures
IBB Ventures investment in Pre Seed Round - Qdrant
42CAP
42CAP investment in Pre Seed Round - Qdrant
Mรผcke Roth & Company
Mรผcke Roth & Company investment in Pre Seed Round - Qdrant
Official Site Inspections
http://www.qdrant.tech Semrush global rank: 1.84 M Semrush visits lastest month: 12.19 K
- Host name: acd89244c803f7181.awsglobalaccelerator.com
- IP address: 75.2.60.5
- Location: Seattle United States
- Latitude: 47.54
- Longitude: -122.3032
- Metro Code: 819
- Timezone: America/Los_Angeles
- Postal: 98108
More informations about "Qdrant"
About Us - Qdrant
Qdrant is an Open-Source Vector Database and Vector Search Engine written in Rust. It provides fast and scalable vector similarity search service with convenient API. ... Want to build the โฆSee details»
Qdrant - Crunchbase Company Profile & Funding
Qdrant may be growing as it has recently raised $28 million in funding, which is a significant financial boost that can support further development and โฆSee details»
Vector Database Benchmarks - Qdrant
Aug 23, 2022 Benchmarking Vector Databases. At Qdrant, performance is the top-most priority. We always make sure that we use system resources efficiently so you get the fastest and most accurate results at the cheapest cloud โฆSee details»
Qdrant - LinkedIn
Qdrant | 27,766 followers on LinkedIn. Massive-Scale Vector Database | Powering the next generation of AI applications with advanced and high-performant vector similarity search technology.See details»
Qdrant Company Profile 2024: Valuation, Funding & Investors
Developer of a vector similarity search technology designed to power the next generation of artificial intelligence (AI) applications. The company offers a high-performance vector database โฆSee details»
Open source vector database startup Qdrant raises $28M
Jan 23, 2024 Qdrant, the company behind the eponymous open source vector database, has raised $28 million in a Series A round of funding led by Spark Capital.. Founded in 2021, Berlin-based Qdrant is seeking ...See details»
GitHub - qdrant/qdrant: Qdrant - High-performance, โฆ
Vector Search Engine for the next generation of AI applications. Qdrant (read: quadrant) is a vector similarity search engine and vector database.It provides a production-ready service with a convenient API to store, search, and manage โฆSee details»
Qdrant - Google Summer of Code
Qdrant is powering the next generation of AI applications with advanced and high-performant vector similarity search technology. Our main project is the Vector Search Engine and โฆSee details»
Qdrant Company Profile - Office Locations, Competitors, Revenue โฆ
Qdrant Solutions is a company that provides vector similarity search solutions. Its products include the Qdrant Vector Database for distributed and cloud-native design, access โฆSee details»
Qdrant, an open source vector database startup, wants โฆ
Apr 19, 2023 That Qdrant has now raised $7.5 million in seed funding is somewhat telling about where investorsโ heads are right now โ any technology that promises to help advance AI and machine learning ...See details»
Qdrant - Hugging Face
Organization Card Community About org cards Powering the next generation of AI applications with advanced and high-performant vector similarity search technology. Qdrant is an โฆSee details»
Qdrant - GitHub
Powering the next generation of AI applications with advanced and high-performant vector similarity search technology. Qdrant is an enterprise-ready, high-performance, massive-scale โฆSee details»
What is Qdrant? The Ultimate Guide to Understanding This
Apr 29, 2024 Parameters Explained: Upload Time: Qdrant has a moderate upload time of 845.78 seconds, which is faster than Weaviate but slower than Milvus.. Indexing Time: The โฆSee details»
What is Qdrant? - Qdrant
Keep in mind that the specific benefits of using a vector database may vary depending on the use case of your organization and the features of the database you ultimately choose. Letโs now โฆSee details»
Qdrant Review: Features, Pricing, Pros & Cons | Your Guide
May 6, 2024 Speedometer. Advanced Compression: Qdrant employs Scalar, Product, and unique Binary Quantization features to significantly reduce memory usage. These techniques โฆSee details»
Qdrant Hybrid Cloud: the First Managed Vector Database You Can โฆ
Apr 15, 2024 By working with partners like Qdrant to enable streamlined integration experiences on Red Hat OpenShift for AI use cases, organizations can more effectively harness critical โฆSee details»
Build World-Class Applications - Qdrant
Start Building. Deploy and manage high-performance vector search clusters across cloud environments. Easily scale with fully managed cloud solutions, integrate seamlessly across โฆSee details»
How to Implement Multitenancy and Custom Sharding in Qdrant
Multitenancy & custom sharding with Qdrant. We have developed two major features just for this. You can now scale a single Qdrant cluster and support all of your customers worldwide. Under โฆSee details»
RAG Use Case: Advanced Vector Search for AI Applications - Qdrant
Discover why Qdrant is the perfect choice for your RAG project. Highest RPS. Qdrant leads with top requests-per-second, outperforming alternative vector databases in various datasets by up โฆSee details»