PostgresML

PostgresML

在几分钟内构建AI应用程序,PostgresML官网入口网址

免费 🌍 国外工具

功能特点

  • filter_dramaPostgresML Cloud(自动优化版)
  • vpn_keyVPC(自动优化版)
  • descriptionLLMs(自动优化版)
  • subtitlesEmbeddings(自动优化版)
  • open_withVector Database(自动优化版)
  • model_trainingSupervised Learning(自动优化版)
  • manage_searchRAG(自动优化版)
  • feature_searchSearch(自动优化版)

功能介绍

关于 PostgresML

Hear from our communityThis is why I’m bullish on@postgresml- devs will always prefer to do things in data stores they already use in productionJames yu@jamesyuGreat article by PostgresML, running@huggingfacemodels INSIDE@PostgreSQLnice tidbit on scalability: "Our example data is based on 5 million DVD reviews from Amazon ... that's more data than fits in a Pinecone Pod at the time of writing"Paul Copplestone@kiwicoppleLove the fact that@postgresmlcan run various algorithms to find the optimum one for model creationRebataurAI@rebataurYou can look at PostgresML. Its based on Postgres, not specifically a vector database but they've got a pleasantly full featured eco-system for the whole training process, fetching datasets, huggingface integration, training etc. of course they also have vector related functionsDushyant (e/acc)@DevDminGodIf you want to seamlessly integrate machine learning models into your#PostgreSQLdatabase, use PostgresML.Khuyen Tran@KhuyenTran16? there's also PostgresML if you wanna get a little more full featured - supports embedding in-database as well as CUBE / pgvectorMartin McFly@martinmarkTons of capability in that Postgres extension. It's an important part of the ML Stack atcloud.tembo.ioas well.Adam Hendel@adamhendelA game-changer indeed! By integrating ML and AI directly at the database level with@postgresml, we're not just streamlining processes but revolutionizing data handling and insights generation in one fell swoop.Pranay Suyash@pranaysuyashThis is why I’m bullish on@postgresml- devs will always prefer to do things in data stores they already use in productionJames yu@jamesyuGreat article by PostgresML, running@huggingfacemodels INSIDE@PostgreSQLnice tidbit on scalability: "Our example data is based on 5 million DVD reviews from Amazon ... that's more data than fits in a Pinecone Pod at the time of writing"Paul Copplestone@kiwicoppleLove the fact that@postgresmlcan run various algorithms to find the optimum one for model creationRebataurAI@rebataurYou can look at PostgresML. Its based on Postgres, not specifically a vector database but they've got a pleasantly full featured eco-system for the whole training process, fetching datasets, huggingface integration, training etc. of course they also have vector related functionsDushyant (e/acc)@DevDminGodIf you want to seamlessly integrate machine learning models into your#PostgreSQLdatabase, use PostgresML.Khuyen Tran@KhuyenTran16? there's also PostgresML if you wanna get a little more full featured - supports embedding in-database as well as CUBE / pgvectorMartin McFly@martinmarkTons of capability in that Postgres extension. It's an important part of the ML Stack atcloud.tembo.ioas well.Adam Hendel@adamhendelA game-changer indeed! By integrating ML and AI directly at the database level with@postgresml, we're not just streamlining processes but revolutionizing data handling and insights generation in one fell swoop.Pranay Suyash@pranaysuyash

What makes PostgresMLso powerfulIndex, filter and re-rank vector embeddings10x faster vector operationsPerform fast KNN and ANN searchIndex embeddings with HNSW or IVFFlatLearn Morearrow_forwardGenerate embeddingsChoose from state-of-the-art modelsBuilt-in data preprocessors for splitting and chunkingConvert text to vector embeddingsLearn Morearrow_forwardColocate data and computeEmbed, serve and store all in one processTerabytes of data on a single machineBuilt-in data privacy & securityTrain, tune and deployRegression, classification and clusteringFine-tune LLMs on your own dataMonitor model deployments over timeLearn Morearrow_forwardGet the most of LLMsUse open-source models (Mistral, LLama, etc.)Perform a range of NLP tasksServe with the same infrastructureLearn Morearrow_forwardComprehensive platformMultiple deployment optionsPerform several AI & machine learning tasksUse SQL or SDKs in JS and PythonIndex, filter and re-rank vector embeddings10x faster vector operationsPerform fast KNN and ANN searchIndex embeddings with HNSW or IVFFlatLearn Morearrow_forwardGenerate embeddingsChoose from state-of-the-art modelsBuilt-in data preprocessors for splitting and chunkingConvert text to vector embeddingsLearn Morearrow_forwardColocate data and computeEmbed, serve and store all in one processTerabytes of data on a single machineBuilt-in data privacy & securityTrain, tune and deployRegression, classification and clusteringFine-tune LLMs on your own dataMonitor model deployments over timeLearn Morearrow_forwardGet the most of LLMsUse open-source models (Mistral, LLama, etc.)Perform a range of NLP tasksServe with the same infrastructureLearn Morearrow_forwardComprehensive platformMultiple deployment optionsPerform several AI & machine learning tasksUse SQL or SDKs in JS and Python

This is why I’m bullish on@postgresml- devs will always prefer to do things in data stores they already use in productionJames yu@jamesyuGreat article by PostgresML, running@huggingfacemodels INSIDE@PostgreSQLnice tidbit on scalability: "Our example data is based on 5 million DVD reviews from Amazon ... that's more data than fits in a Pinecone Pod at the time of writing"Paul Copplestone@kiwicoppleLove the fact that@postgresmlcan run various algorithms to find the optimum one for model creationRebataurAI@rebataurYou can look at PostgresML. Its based on Postgres, not specifically a vector database but they've got a pleasantly full featured eco-system for the whole training process, fetching datasets, huggingface integration, training etc. of course they also have vector related functionsDushyant (e/acc)@DevDminGodIf you want to seamlessly integrate machine learning models into your#PostgreSQLdatabase, use PostgresML.Khuyen Tran@KhuyenTran16? there's also PostgresML if you wanna get a little more full featured - supports embedding in-database as well as CUBE / pgvectorMartin McFly@martinmarkTons of capability in that Postgres extension. It's an important part of the ML Stack atcloud.tembo.ioas well.Adam Hendel@adamhendelA game-changer indeed! By integrating ML and AI directly at the database level with@postgresml, we're not just streamlining processes but revolutionizing data handling and insights generation in one fell swoop.Pranay Suyash@pranaysuyash

核心功能

  • filter_dramaPostgresML Cloud(自动优化版)
  • vpn_keyVPC(自动优化版)
  • descriptionLLMs(自动优化版)
  • subtitlesEmbeddings(自动优化版)
  • open_withVector Database(自动优化版)
  • model_trainingSupervised Learning(自动优化版)
  • manage_searchRAG(自动优化版)
  • feature_searchSearch(自动优化版)
特别说明

本站AI工具导航提供的「PostgresML」来源于网络,不保证外部链接的准确性和完整性,同时,对于该外部链接的指向,不由本站实际控制,在2026-07-04收录时,该网页上的内容,都属于合规合法,后期网页的内容如出现违规,可以直接联系网站管理员进行删除,本站不承担任何责任。

AI工具导航致力于优质、实用的AI网站资源收集与分享!

💬 评论 (0)

登录 后发表评论

暂无评论,来当第一个评论者吧

🔗 相似工具推荐

工具信息

评分
⭐ 0.0
浏览量
3
价格
免费
来源
国外
收录时间
2026-07-04