#Quantizing

Schauen Sie sich Reels-Videos über Quantizing von Menschen aus aller Welt an.

Anonym ansehen ohne Anmeldung.

Trending Reels

(12)
#Quantizing Reel by @dailydoseofds_ - Query 36M+ vectors in under 30ms⚡

Here's the technique behind it:

(Perplexity, Azure AI, etc, use it in production)

We built a RAG system that quer
248
DA
@dailydoseofds_
Query 36M+ vectors in under 30ms⚡ Here's the technique behind it: (Perplexity, Azure AI, etc, use it in production) We built a RAG system that queries 36M+ vectors in <30ms using Binary Quantization. It's a vector compression technique that trades off speed, memory, and retrieval accuracy. Essentially, we generate text embeddings (in float32) and convert them to binary vectors, resulting in a 32x reduction in memory and storage. Here's the tech stack: → LlamaIndex for orchestration → Milvus (by Zilliz) as the vector DB → Moonshot AI's Kimi-K2 as the LLM hosted on Groq Here's the workflow: 1️⃣ Ingest documents and generate binary embeddings 2️⃣ Create a binary vector index and store embeddings in vector DB 3️⃣ Retrieve top-k similar documents to user's query 4️⃣ LLM generates a response based on additional context After building this, we wrapped up the app in a Streamlit interface. The video shows the interaction. We tested the deployed setup over the PubMed dataset (36M+ vectors). This app: ✅ Queried 36M+ vectors in <30ms ✅ Generated a response in <1s GitHub repo with the code in the comments! 👉 Over to you: Have you tried binary quantization for RAG? #ai #rag #PerplexityAI
#Quantizing Reel by @dev.sparks - Choosing a vector database isn't about hype.
It's about architecture.

Prototyping locally?
Scaling to millions of embeddings?
Need hybrid search with
234
DE
@dev.sparks
Choosing a vector database isn’t about hype. It’s about architecture. Prototyping locally? Scaling to millions of embeddings? Need hybrid search with filters? Don’t pick blindly. The right vector DB can make your RAG app fast. The wrong one will bottleneck everything. Save this before building your next AI app. #VectorDatabase #RAG #AIEngineering #LLMapps #MachineLearning
#Quantizing Reel by @3sigmacode - Vector Databases are DEAD Wrong!

Full Video Link 👇
https://youtu.be/Tl2u2EX644Y?si=C6v6iSyKmM8zp1K1

Is standard RAG dead? Everyone is using vector
236
3S
@3sigmacode
Vector Databases are DEAD Wrong! Full Video Link 👇 https://youtu.be/Tl2u2EX644Y?si=C6v6iSyKmM8zp1K1 Is standard RAG dead? Everyone is using vector databases to build AI apps, but this new Vectorless RAG architecture using PageIndex and Groq LPUs changes everything. No chunking, no vectors, just pure semantic reasoning. 👇 FOLLOW AND SUBSCRIBE for more AI engineering deep dives! #AI #MachineLearning #RAG #VectorDatabase #Python #Coding #Tech #SoftwareEngineering
#Quantizing Reel by @iamkrunalvaghela - Building with RAG? You need a vector database. It stores your data as embeddings and finds the most relevant results in milliseconds.

But not every v
4.1K
IA
@iamkrunalvaghela
Building with RAG? You need a vector database. It stores your data as embeddings and finds the most relevant results in milliseconds. But not every vector DB fits every use case. Pinecone → Fully managed, no DevOps, scales on its own. Best for teams who want to ship fast. Catch: vendor lock-in. Weaviate → Open source, hybrid search built-in (vector + keyword). Handles text, images, audio. Best for teams who want full control. Catch: heavier setup. Qdrant → Open source, built in Rust, blazing fast. Best for production apps where every millisecond counts. Catch: smaller community. Still confused? Ship fast → Pinecone Full control → Weaviate Max performance → Qdrant No best database. Only the best fit for YOUR project. Save this 🔖 #ai #rag #llm #generativeai #buildwithai
#Quantizing Reel by @akashcode.ai - Vector Databases in next 40 seconds 

#genai #vectordatabase #aiengineer #llm #generativeai
10.0K
AK
@akashcode.ai
Vector Databases in next 40 seconds #genai #vectordatabase #aiengineer #llm #generativeai
#Quantizing Reel by @msgopal.codes (verified account) - Vector databases are the backbone of modern AI applications 🚀
From semantic search to intelligent chatbots, they enable systems to search by meaning,
1.0K
MS
@msgopal.codes
Vector databases are the backbone of modern AI applications 🚀 From semantic search to intelligent chatbots, they enable systems to search by meaning, not just keywords. If you’re building with LLMs, RAG, or AI agents — understanding vector search is a must. Save this for later 🔖 Follow @levelup_with_gops for more 😍 #VectorDatabase #AIEngineering #GenerativeAI #rag #LLM
#Quantizing Reel by @codevisium - Build a real Gen AI search engine with Retrieval-Augmented Generation (RAG) and vector databases!
This short shows how to embed documents, store them
129
CO
@codevisium
Build a real Gen AI search engine with Retrieval-Augmented Generation (RAG) and vector databases! This short shows how to embed documents, store them in a vector database, search semantically, and generate grounded answers using an LLM. You’ll learn: • What RAG actually is • How vector DBs work • Simple Python code to build RAG • Tools: OpenAI, Chroma Perfect for beginners and builders learning how modern AI systems solve real problems. Follow CodeVisium for practical Gen AI breakdowns — one short at a time. #GenerativeAI #GenAI #RAG #VectorDB #CodeVisium
#Quantizing Reel by @algo0master - Standard AI models have a flaw: once the chat ends, they forget everything. They have no context of your data.
​Enter Vector Databases.
​Unlike tradit
246
AL
@algo0master
Standard AI models have a flaw: once the chat ends, they forget everything. They have no context of your data. ​Enter Vector Databases. ​Unlike traditional SQL databases that look for exact keywords, Vector DBs (like Pinecone, Weaviate, or Chroma) store data as mathematical coordinates (vectors). ​Why does this matter? It allows AI to understand the meaning and relationships behind data, not just the text. This is the technology that powers RAG (Retrieval-Augmented Generation), giving your AI custom, long-term memory. ​If you are building AI apps, stop relying solely on the model's pre-training. Give it its own brain. ​#VectorDatabase #AIInfrastructure #RAG #Pinecone #Weaviate TechTrends AlgoMaster
#Quantizing Reel by @doodle32090 - Data + Embeddings = Intelligence.
Vector Databases are the brain storage of modern AI. 🧠⚡
#vectordb #aistack #llm #artificialintelligence  #deeplearn
144
DO
@doodle32090
Data + Embeddings = Intelligence. Vector Databases are the brain storage of modern AI. 🧠⚡ #vectordb #aistack #llm #artificialintelligence #deeplearning
#Quantizing Reel by @ai_with_paawan - Follow for more such explanations of complex AI Terms and Concepts 

[Artificial Intelligence, AI, Vector database, Embedding models, Vector embedding
3.2K
AI
@ai_with_paawan
Follow for more such explanations of complex AI Terms and Concepts [Artificial Intelligence, AI, Vector database, Embedding models, Vector embeddings]
#Quantizing Reel by @sayed.developer (verified account) - What is a vector database 🤔
A vector database stores data as numerical embeddings (vectors) that represent meaning rather than exact text or values.
247.0K
SA
@sayed.developer
What is a vector database 🤔 A vector database stores data as numerical embeddings (vectors) that represent meaning rather than exact text or values. It enables similarity search by finding items that are mathematically close to a query vector instead of using exact matches. In short: vector databases power semantic search, recommendations, and AI retrieval by understanding context and meaning.🫡🤝 #softwareengineering #computerscience

✨ #Quantizing Entdeckungsleitfaden

Instagram hostet thousands of Beiträge unter #Quantizing und schafft damit eines der lebendigsten visuellen Ökosysteme der Plattform.

#Quantizing ist derzeit einer der beliebtesten Trends auf Instagram. Mit über thousands of Beiträgen in dieser Kategorie führen Creator wie @sayed.developer, @akashcode.ai and @iamkrunalvaghela mit ihren viralen Inhalten. Durchsuchen Sie diese beliebten Videos anonym auf Pictame.

Was ist in #Quantizing im Trend? Die meistgesehenen Reels-Videos und viralen Inhalte sind oben zu sehen.

Beliebte Kategorien

📹 Video-Trends: Entdecken Sie die neuesten Reels und viralen Videos

📈 Hashtag-Strategie: Erkunden Sie trendige Hashtag-Optionen für Ihren Inhalt

🌟 Beliebte Creators: @sayed.developer, @akashcode.ai, @iamkrunalvaghela und andere führen die Community

Häufige Fragen zu #Quantizing

Mit Pictame können Sie alle #Quantizing Reels und Videos durchsuchen, ohne sich bei Instagram anzumelden. Kein Konto erforderlich und Ihre Aktivität bleibt privat.

Content Performance Insights

Analyse von 12 Reels

✅ Moderate Konkurrenz

💡 Top-Posts erhalten durchschnittlich 66.1K Aufrufe (3.0x über Durchschnitt)

Regelmäßig 3-5x/Woche zu aktiven Zeiten posten

Content-Erstellung Tipps & Strategie

🔥 #Quantizing zeigt hohes Engagement-Potenzial - strategisch zu Spitzenzeiten posten

✨ Einige verifizierte Creator sind aktiv (17%) - studieren Sie deren Content-Stil

✍️ Detaillierte Beschreibungen mit Story funktionieren gut - durchschnittliche Länge 447 Zeichen

📹 Hochwertige vertikale Videos (9:16) funktionieren am besten für #Quantizing - gute Beleuchtung und klaren Ton verwenden

Beliebte Suchen zu #Quantizing

🎬Für Video-Liebhaber

Quantizing ReelsQuantizing Videos ansehen

📈Für Strategie-Sucher

Quantizing Trend HashtagsBeste Quantizing Hashtags

🌟Mehr Entdecken

Quantizing Entdecken#quantize recordings#quantize#quantized#quantization#vector quantization in ai#vector quantization signal processing technique#rekordbox quantize preference controller tab#quantize recordings releases