Vectorize now supports Couchbase! https://lnkd.in/gbCxmxRy
About us
Fast, accurate, production-ready AI. Vectorize takes the guess work out of rapidly building generative AI applications. Our automated experimentation engine will give you an immediate quantitative recommendation of how to get the best results from retrieval augmented generation, RAG, based on your unique data and use cases. Our powerful data pipeline capabilities ensure you can connect your LLMs to knowledge in every corner of your organization. Built for no-nonsense developers who want to ship product, including those who need to operate within the rules and regulations of an enterprise environment, Vectorize is your ultimate productivity accelerator for all things gen AI, retrieval augmented generation (RAG), and vector.
- Website
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https://vectorize.io
External link for Vectorize
- Industry
- Technology, Information and Internet
- Company size
- 2-10 employees
- Type
- Privately Held
- Founded
- 2023
Employees at Vectorize
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Scott Davis
Web Architect and Digital Accessibility Advocate
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Chris Bartholomew
Co-founder at vectorize.io. Transforming unstructured data into vectors to power AI RAG apps.
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Chris Latimer
Co-Founder @ vectorize.io | Turning unstructured data into generative AI apps | RAG made easy
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Grace Usleman
Audio Specialist 🎧 and Entertainment Industry Professional 🎬
Updates
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Vectorize reposted this
Vers3Dynamics is helping unveil the intricacies of supersymmetric theories with the power of Groq🚀 and Vectorize💫. By decoding Adinkra codes, we're venturing into uncharted worlds of theoretical physics, and visual symbols with historical and philosophical significance that originated from the Gyaman people of Ghana and La Côte d'Ivoire propelled by GenAI-driven insights.✨ Join us on our website we push the boundaries of innovation with #Groq and #Vectorize, to unlock the fascinating world of #AdinkraCodes and #Supersymmetry. RAG Sandbox: https://lnkd.in/eGykN6yX 🌌🔓 #Innovation #Startup #AI #TheoreticalPhysics #Ghana
platform.vectorize.io
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Groq's blazing inference speed brings the power of LLMs to places never thought possible! And the Vectorize RAG Sandbox makes it easy to find the embedding model and chunking strategy that will product the most accurate results for your unique data. Try it for yourself here: https://lnkd.in/eZRm9HKs
Powered by Groq, Vectorize delivers a powerful Retrieval Augmented Generation (#RAG) experimentation and pipeline platform. Read more here: https://hubs.la/Q02y2gXB0
Real-time Inference for the Real World: Vectorize - Groq
wow.groq.com
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Did you know that Vectorize experiments support Pinecone?🌲 It's the easiest way to see if your vector search indexes in Pinecone are optimized and delivering the optimal performance for your #RAG applications. 🚀 Check out the latest post on Pinecone's blog to read more about how #Pinecone and #Vectorize are making it easier than ever to build better #RAG applications! 📝📈 Blog post here 👉 https://lnkd.in/e65FXJkD
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🚀 Announcing Vectorize: The easy path to accurate RAG applications! 🚀 We're excited to announce that Vectorize is now available to the public! Designed to tackle the biggest challenges in building LLM-powered applications, Vectorize optimizes your vector search indexes and streamlines your development process. 🔹 Key Features 🔹 🔬 Experiments: Automate testing of embedding models, chunking strategies, and retrieval configurations. 🏖 RAG Sandbox: Real-time testing with top LLMs like Llama 3, Gemma, GPT-3.5 and the brand new GPT-4o! 📊 Seamless Integration: Supports Pinecone Serverless and DataStax Astra. Struggling with inaccurate AI results? Vectorize makes your work more efficient and effective. 🔗 Sign up for a free account today at https://lnkd.in/eZRm9HKs and start optimizing your RAG applications with Vectorize! Read more about on our blog: https://lnkd.in/eJhsUcMn #AI #MachineLearning #GenerativeAI #RAG #TechInnovation #AIDevelopment #VectorizeAI #VectorDatabase
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How can you keep AI from misleading your users with hallucinations? In today's blog post, we explore two popular approaches: #RAG and fine-tuning. https://lnkd.in/eHcwvEde #GenAI #LLM
RAG vs. Fine Tuning: Which One is Right for You?
https://vectorize.io
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Out-of-the-box large language models like GPT-4 have major limitations for real-world applications - they hallucinate 🌍, lack domain-specific knowledge 📚, and quickly become outdated ⌛ The solution? Retrieval Augmented Generation (RAG) architectures 🔧 RAG allows you to augment LLMs with your own data sources and business logic, providing grounded, up-to-date, and tailored outputs for your domain 🎯 In a new blog post, we explore the technical details of RAG and why it's a must for pushing LLMs beyond toy examples into production 🏭: https://lnkd.in/gaxV5BY3 #LLMs #RAG #AppliedAI
Make the Most of Retrieval Augmented Generation
https://vectorize.io
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What are the data challenges that can derail he delivery of your #RAG app? Today's post from guest author Abdelhadi Azzouni explores common pitfalls, and provides 8 expert insights from his experience overcoming them! https://lnkd.in/gQ3D3XS7
Triumph Over Data Obstacles In RAG: 8 Expert Tips
https://vectorize.io
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📚 RAG applications need data. If you aren't careful, you'll end up with a tangled mess of data integration scripts and stale data. 🔄 If you want your apps to have fresh data and you don't want to deal with troubleshooting brittle integrations when they break, you need a proper RAG pipeline. 🛠️ Our latest guide explains how to build your RAG pipeline to be resilient, real-time, and to automatically handle errors so you don't have to. 🙌 Read more here 👉 https://lnkd.in/ei4JhA4w
How to build a better RAG pipeline
https://vectorize.io
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Retrieval augmented generation (#RAG) is the new standard 🥇 for building #LLM powered applications. But one mistake can turn you from a 😎 #genAI hero to a genAI zero 💩 . Let's look at the 5 most common traps 🤔. 📏 Using the wrong chunk size - too much or too little context can reduce response accuracy. 🧩 Picking the wrong embedding models - benchmarks are great, but they don't necessarily translate to great performance *for your data* 🏷️ Not designing your metadata - as search indexes get big, metadata filtering becomes key. 🚧 Building fragile vector data pipelines - leads to unreliable vector indexes and data quality issues. 🕰️ Letting your vector search indexes get stale - misleads your users with information that's no longer up to date. Want to understand 📚 these traps better and learn how to avoid them? Full article here 👉 https://lnkd.in/grTyEuWw #Data #AI #ML #MachineLearning #Vectorize
5 RAG Vector Database Traps and How to Avoid Them
https://vectorize.io