Vector Search: Powering the Next Generation of Applications

2024 ж. 15 Мам.
26 435 Рет қаралды

While Vector Databases have been around for some time, the advent of the transformer architecture has led to the supercharging of semantic search with vectors. With MongoDB Atlas’s new Vector Search offering, customers can take advantage of this transformative technology on top of their application data.
In this talk, we will focus on core concepts around Vectors, embedding your data, and the range of use cases we see our customers exploring with Vector Search. We’ll then go through a demo where we show what the experience would be when embedding/vectorizing a document, inserting it into the cluster and finally querying that data to find semantically similar data to our questions. Lastly, we’ll talk about some of the new exciting things we’re exploring during our Public Preview. Don’t miss out on this opportunity to learn about the next revolution in building applications.
Learn more → trymongodb.com/44dMMnG
Blog post → trymongodb.com/46g7OUC
View All Sessions → trymongodb.com/mongodblocalnyc23
Subscribe to our channel → mdb.link/subscribe
#MongoDBlocalNYC2023

Пікірлер
  • is there a soccer match going on in the meanwhile?

    @greendsnow@greendsnow10 ай бұрын
    • Women’s World Cup

      @bellahasguns@bellahasguns9 ай бұрын
  • One of the best presentation I have ever seen about an overview of embeddings/ vector data, Thank you for sharing. Ben Flast, you are brilliant, great job!

    @hanslanger4399@hanslanger43995 ай бұрын
  • Nice presentation . Finally Mongo into Vector Search . way to go

    @rajithkumar3424@rajithkumar34249 ай бұрын
  • Such a nice feature explaning for a late bed time. But hands down, that was really inspiring!

    @NeverReply@NeverReply10 ай бұрын
    • Thank you for the kind words!

      @MongoDB@MongoDB10 ай бұрын
  • Great presentation. One question , how this gonna work in distributed environent ? for suppose a new querry , the nearest neigbours may be present in different nodes / partitions.

    @darkstudio3170@darkstudio31709 ай бұрын
  • very informative presentation. How can I implement vector search on already inserted documents ?

    @siddheshshirawale4115@siddheshshirawale41158 ай бұрын
  • Damn people in the background are very hyped about vector search!

    @jorgegimenezperez9398@jorgegimenezperez93988 ай бұрын
  • What about the costs?

    @thehappycookiehour@thehappycookiehour9 ай бұрын
  • This is nice. How can we run vector search with a filter for geo location. Its asking for two indexes in the same pipeline, knnVector and geo type indexes - which is not possible as of now?

    @ajithkumar0@ajithkumar08 ай бұрын
  • Thanks for the presentation! It's a very nice feature, but will you release it outside of Atlas for on-premises systems?

    @MarcSalvat89@MarcSalvat8910 ай бұрын
    • For now the feature is only available for MongoDB Atlas

      @MongoDB@MongoDB10 ай бұрын
  • Would love to see MongoDB as embedded database for desktop application as well.

    @Tritoon710@Tritoon71010 ай бұрын
    • It is with MongoDB Realm! I just found out about it today actually.

      @justdoeverything8883@justdoeverything88839 ай бұрын
  • This was outstanding! I'm just a neophyte, but thinkng about an application involving vector embeddings of complex data, electron spectroscopy, probably a very high dimensional vector.

    @robertcormia7970@robertcormia79704 ай бұрын
  • @MongoDB Are there any additional costs for using that? Aside for the inherent costs of a little more storage and maybe a little more processing

    @pedrorabbi@pedrorabbi4 ай бұрын
  • Nice presentation. Are vectors only field level or could the embeddings be for all the fields in a document? Also will standalone servers support this in the near future not just Atlas based? tia

    @adrianthomas5934@adrianthomas59346 ай бұрын
  • great presentation. thank you. MongoDB, way to go!

    @harrykekgmail@harrykekgmail10 ай бұрын
    • We're glad you enjoyed it! 💚

      @MongoDB@MongoDB10 ай бұрын
KZhead