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Alyka

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投稿

Qdrant v0.11: fully scalable vector search engine

github.com
4 ポイント·投稿者 Alyka·4 年前·1 コメント

Integration of Qdrant ANN vector database back end with txtai

github.com
2 ポイント·投稿者 Alyka·4 年前·1 コメント

Building a Semantic Search System

lukawskikacper.medium.com
4 ポイント·投稿者 Alyka·4 年前·1 コメント

Storing Multiple Vectors per Object

blog.qdrant.tech
2 ポイント·投稿者 Alyka·4 年前·1 コメント

Batch vector search – multiple vectors

blog.qdrant.tech
6 ポイント·投稿者 Alyka·4 年前·1 コメント

ARM architecture for vector search engine

blog.qdrant.tech
3 ポイント·投稿者 Alyka·4 年前·1 コメント

Show HN: Number of layers for efficient fine-tuning. Experiments

qdrant.tech
2 ポイント·投稿者 Alyka·4 年前·0 コメント

Vector search engine with dynamic cluster scaling capabilities

github.com
2 ポイント·投稿者 Alyka·4 年前·1 コメント

Qdrant vector search engine v0.9.0 update went live

github.com
2 ポイント·投稿者 Alyka·4 年前·1 コメント

[untitled]

1 ポイント·投稿者 Alyka·4 年前·0 コメント

Qdrant: Open-Source Vector Similarity Search Engine

qdrant.tech
2 ポイント·投稿者 Alyka·4 年前·0 コメント

Show HN: Finding errors in datasets with Similarity Search

qdrant.tech
3 ポイント·投稿者 Alyka·4 年前·0 コメント

Distributed approximate nearest neighbours with Qdrant

youtube.com
1 ポイント·投稿者 Alyka·4 年前·1 コメント

How to detect anomalies in coffee been industry by similarity learning

qdrant.tech
1 ポイント·投稿者 Alyka·4 年前·2 コメント

Open-Source Spotlight about Qdrant vector search engine

youtube.com
1 ポイント·投稿者 Alyka·4 年前·4 コメント

Show HN: Search Engine with On-Disk Payload Storage Reduces RAM Usage

github.com
3 ポイント·投稿者 Alyka·4 年前·0 コメント

New Vector Podcast Episode: Search Embeddings and Mighty

youtube.com
1 ポイント·投稿者 Alyka·4 年前·0 コメント

V0.8.0 Qdrant vector search engine went live

github.com
2 ポイント·投稿者 Alyka·4 年前·1 コメント

How to implement a visual search in no time

lukawskikacper.medium.com
2 ポイント·投稿者 Alyka·4 年前·1 コメント

Metric Learning for Anomaly Detection

qdrant.tech
2 ポイント·投稿者 Alyka·4 年前·1 コメント

コメント

Alyka
·4 年前·議論
A new release of Qdrant vector search engine went live! Version 0.11 brings the replication, making Qdrant fully scalable! There is a new administration API and exact search support, but also some more improvements. 0.11 is backwards compatible with 0.10.5 storage in single-node deployment!
Alyka
·4 年前·議論
ahh... lucky Australia))
Alyka
·4 年前·議論
Finally! I wish other domains do the same
Alyka
·4 年前·議論
Qdrant has implemented https://github.com/qdrant/qdrant-txtai, a library making it easy to combine both tools together
Alyka
·4 年前·議論
There are still other options available :) For example, Qdrant vector search engine. It's written in Rust, and it's not about crypto. And currently they are hiring Rust developer. Check job openings in LinkedIn
Alyka
·4 年前·議論
A case study on how to simply create a search system with txtai, Qdrant and pretrained language models. The cool thing about the semantic search is that none of the words used in a query has to be used in any document in our dataset, as the model is already capable of capturing synonyms. This is a huge advantage over conventional search algorithms like BM25.
Alyka
·4 年前·議論
Scary tendency. Was interesting to read
Alyka
·4 年前·議論
Qdrant 0.10 is the first version supporting storing multiple vectors per object. Kacper Łukawski shared how to set it up.
Alyka
·4 年前·議論
Because, solo traveling is a pretty good experience when you don't need to wait for smb if you want to travel (totally agree with it btw). And disaster is not about solo traveling.
Alyka
·4 年前·議論
The topic is interesting. But there way too many books and articles about it
Alyka
·4 年前·議論
I'd say that title is completely opposite to the article. But it was interesting to read)
Alyka
·4 年前·議論
The latest release of Qdrant 0.10.0 has introduced a lot of functionalities that simplify some common tasks. Those new possibilities come with some slightly modified interfaces of the client library. One of the recently introduced features is the possibility to query the collection with multiple vectors at once — a batch search mechanism.
Alyka
·4 年前·議論
Qdrant 0.10 supports ARM architecture out of the box! If you use Apple M1 or were wondering about using ARM processors in the cloud, you no longer need to emulate an x86 Docker image.
Alyka
·4 年前·議論
Qdrant has released the new version vector similarity search engine - v.0.9.0. It features the dynamic cluster scaling capabilities. Now Qdrant is more flexible with cluster deployment, allowing to move shards between nodes and remove nodes from the cluster.
Alyka
·4 年前·議論
Qdrant has released the new version vector similarity search engine - v.0.9.0. It features the dynamic cluster scaling capabilities. Now Qdrant is more flexible with cluster deployment, allowing to move shards between nodes and remove nodes from the cluster.
Alyka
·4 年前·議論
Andrey Vasnetsov, CTO at #Qdrant will speak about #VectorSearch and applications at #LearnNLP academy. 5.08.2022, at 15.00 CEST
Alyka
·4 年前·議論
Qdrant 0.8.x has introduced an experiment distributed mode. This tutorial covers the basics of running the Qdrant cluster with docker-compose.
Alyka
·4 年前·議論
But what is the point using another tag manager? All this advantages are true, but you can have them with google tag manager
Alyka
·4 年前·議論
Qdrant has an integration with them. Qdrant vector search engine powers Jina's DocArray library storage https://qdrant.tech/blog/qdrant_and_jina_integration/
Alyka
·4 年前·議論
A case study about applying similarity learning approach for anomaly detection for Agrivero.ai - is a company making AI-enabled solution for quality control & traceability of green coffee for producers, traders, and roasters. The result was reached by using only 0.66% of the labeled data with metric learning compared to supervised classification method.