Frank Liu (@frankzliu) 's Twitter Profile
Frank Liu

@frankzliu

Professional presser of buttons on computer keyboards @VoyageAI

ID: 1471764159998328837

linkhttp://frankzliu.com calendar_today17-12-2021 08:48:21

581 Tweet

572 Takipçi

28 Takip Edilen

Voyage AI (part of MongoDB) (@voyageai) 's Twitter Profile Photo

Thrilled to share that we've closed $28M in funding, led by CRV, with continued support from Wing VC and sarah guo // conviction. Also excited to onboard strategic partners SnowflakeDB and Databricks! voyage.ai Building the world’s best models for RAG and search 🧵🧵🧵:

Frank Liu (@frankzliu) 's Twitter Profile Photo

Recently, I've shared how I believe that "native multimodality" is the future. voyage-multimodal-3, trained end-to-end on text, photos, figures, PDFs, PPTs, and more, is the first embedding model that fits this concept. No more unstructured data ETL. Screenshot is all you need.

Voyage AI (part of MongoDB) (@voyageai) 's Twitter Profile Photo

Vector-based code retrieval is a critical building block in code assistants and agents. However, many people complained about the lack of diverse, high-quality evaluation datasets for it. We surveyed existing ones and proposed some methods to build better ones. 🧵🧵

Vector-based code retrieval is a critical building block in code assistants and agents. However, many people complained about the lack of diverse, high-quality evaluation datasets for it. We surveyed existing ones and proposed some methods to build better ones. 🧵🧵
Frank Liu (@frankzliu) 's Twitter Profile Photo

voyage-code-3 is one of the first embedding models trained with both Matryoshka learning as well as quantization awareness. More in our blog post: blog.voyageai.com/2024/12/04/voy…

Timescale (@timescaledb) 's Twitter Profile Photo

🚀 General vs. Domain-Specific: Which Embedding Model Should You Choose for Your RAG App? We tested OpenAI’s text-embedding-3-small vs. Voyage AI’s finance-2 on SEC filings using pgai Vectorizer (PostgreSQL-based): 🔸 Voyage AI by MongoDB: +15.5% accuracy overall, +23.75% on financial

🚀 General vs. Domain-Specific: Which Embedding Model Should You Choose for Your RAG App?

We tested OpenAI’s text-embedding-3-small vs. Voyage AI’s finance-2 on SEC filings using pgai Vectorizer (PostgreSQL-based):
🔸 <a href="/VoyageAI/">Voyage AI by MongoDB</a>: +15.5% accuracy overall, +23.75% on financial
Michael (@michael_chomsky) 's Twitter Profile Photo

hyped for the reranking event I'm throwing in sf next thursday: speakers from: Exa, which just purchased a supercluster of 144 h100s to revolutionize search Voyage AI by MongoDB, which is so good at reranking two fortune 500 companies (allegedly) discussed acquiring them 🤫

Florian Reifschneider (@flo_re2003) 's Twitter Profile Photo

Had a really interesting discussion about agentic retrieval last night at a RAG event at Exa with Frank Liu from Voyage AI by MongoDB. The premise was basically whether there is sense in doing agentic retrieval or if regular RAG is enough. The two takeaways I got from the

Han (@hanchunglee) 's Twitter Profile Photo

Jo Kristian Bergum Jina AI 's definition of deep research is shallow. openai's deep research is a trained system. stanfords storm is a trained system. google's Google Gemini App deep research is, no one knows. jina ai's definition is search on a for loop.

Sonam Gupta, PhD (@coffee_and_nlp) 's Twitter Profile Photo

Among other things that make my day, one of them is a great podcast conversation with my guests. Thanks Frank Liu for a thought-provoking chat earlier... Stay tuned for the episode, coming up soon ..

Voyage AI (part of MongoDB) (@voyageai) 's Twitter Profile Photo

📢 Meet voyage-3.5 and voyage-3.5-lite! • flexible dim. and quantizations • voyage-3.5 & 3.5-lite (int8, 2048 dim.) are 8% & 6% more accurate than OpenAI-v3-large, and 2.2x & 6.5x cheaper, resp. Also 83% less vectorDB cost! • 3.5-lite ~ Cohere-v4 in quality, but 83% cheaper.

📢 Meet voyage-3.5 and voyage-3.5-lite!
• flexible dim. and quantizations
• voyage-3.5 &amp; 3.5-lite (int8, 2048 dim.) are 8% &amp; 6% more accurate than OpenAI-v3-large, and 2.2x &amp; 6.5x cheaper, resp. Also 83% less vectorDB cost! 
• 3.5-lite ~ Cohere-v4 in quality, but 83% cheaper.
MongoDB (@mongodb) 's Twitter Profile Photo

Our Multimodal Search Python Library is now in public preview. Giving developers a single interface to build applications that search across PDFs, images, and text, without the usual complexity. Built-in support for: 🧠 Voyage AI by MongoDB's voyage-multimodal-3 🗂️ Amazon Web Services S3 storage

Our Multimodal Search Python Library is now in public preview.

Giving developers a single interface to build applications that search across PDFs, images, and text, without the usual complexity.

Built-in support for:
 🧠 <a href="/VoyageAI/">Voyage AI by MongoDB</a>'s voyage-multimodal-3
 🗂️ <a href="/awscloud/">Amazon Web Services</a> S3 storage