Ricardo Buitrago

19 posts

Ricardo Buitrago

Ricardo Buitrago

@rbuit_

ML at Cartesia AI | CMU

Katılım Şubat 2025
132 Takip Edilen150 Takipçiler
Sabitlenmiş Tweet
Ricardo Buitrago
Ricardo Buitrago@rbuit_·
Despite theoretically handling long contexts, existing recurrent models still fall short: they may fail to generalize past the training length. We show a simple and general fix which enables length generalization in up to 256k sequences, with no need to change the architectures!
Ricardo Buitrago tweet media
English
6
34
197
42.3K
Ricardo Buitrago
Ricardo Buitrago@rbuit_·
When you meet with your friends, you don't type - you talk to them. Still, we prefer to type to ChatGPT. We have fixed this at Cartesia. Sonic 3.5, is both the most expressive and fast model out there!
Artificial Analysis@ArtificialAnlys

Cartesia’s Sonic-3.5 takes the #1 spot on the Artificial Analysis Speech Arena Leaderboard, surpassing Inworld Realtime TTS 1.5 Max and Google’s Gemini 3.1 Flash TTS Sonic-3.5 is the latest TTS model from @cartesia . It supports 42 languages, including 9 Indian languages, with 500+ voices available out of the box. The model has been highly preferred among voters in the TTS Arena, with its demonstrated naturalness and accurate transcript following. Key takeaways: ➤ Quality: Sonic-3.5 has an Elo score of 1,218 (+16/-16) based on 1,144 arena appearances, placing it ahead of Inworld Realtime TTS 1.5 Max at 1,194 and Gemini 3.1 Flash TTS at 1,209 ➤ Pricing: Sonic-3.5 is priced at $39/1M characters, a premium compared to Gemini 3.1 Flash TTS at $18.3/1M characters, and Inworld Realtime TTS 1.5 Max at $35/1M characters ➤ Speed: 105.5 characters per second, compared to 205 characters per second for Inworld Realtime TTS 1.5 Max and 26.3 characters per second for Gemini 3.1 Flash TTS See more details and listen to samples below 🧵

English
0
0
9
60
Ricardo Buitrago retweetledi
Aviv Bick
Aviv Bick@avivbick·
SSMs fail on recall tasks they have the capacity to solve. The two dominant approaches today, SSMs and sliding-window attention, both lack persistence: memory either decays over time or gets evicted. We built Raven to fix this, surpassing all prior linear models even at 16× their training sequence length. 🧵🐦‍⬛
English
5
58
402
51.5K
Ricardo Buitrago retweetledi
Arshia Afzal
Arshia Afzal@rshia_afz·
1/ SSMs struggle on recall benchmarks due to their fixed-size state. But are current models actually storing context “wisely”? Introducing Raven 🐦‍⬛, the first SSM with selective memory allocation! Raven achieves SOTA performance on recall-heavy tasks with the highest length generalization, extending up to 16× beyond its training sequence length. Raven is a strict upgrade over SWA in the way it stores past context! This is the most elegant model I’ve been involved in designing so far shoutout to @avivbick and @_albertgu for their trust and amazing work! Check out how Raven bridges between SWA and SSM👇
English
5
29
271
274.6K
Ricardo Buitrago retweetledi
DANN©
DANN©@DannPetty·
Designers really are becoming more powerful everyday.
English
24
40
960
54.4K
Y Combinator
Y Combinator@ycombinator·
Karumi (@karumihq) is an AI demo agent that makes product demos scalable — it talks, clicks, and personalizes every walkthrough, 24/7.
English
37
39
379
112.9K
Timothy Luong (Chongz)
Timothy Luong (Chongz)@chongz·
This Claude + Slack + Sonic 3 setup saves me 2 hours daily. I'm an engineer at @cartesia ($100M raised) and here's how it works: → Claude pulls updates from my Slack channels → summarizes everything → Sonic 3 converts to natural voice → sends audio briefing to my DMs Takes just 60 seconds to listen Then I added emotion tags and it sounds like an actual morning show host. Complete Tutorial 👇
English
32
33
311
53.8K
Ricardo Buitrago retweetledi
Karan Goel
Karan Goel@krandiash·
We've raised $100M from Kleiner Perkins, Index Ventures, Lightspeed, and NVIDIA. Today we're introducing Sonic-3 - the state-of-the-art model for realtime conversation. What makes Sonic-3 great: - Breakthrough naturalness - laughter and full emotional range - Lightning fast -
English
1.4K
1.2K
8.5K
4.9M
Ricardo Buitrago retweetledi
Sukjun (June) Hwang
Sukjun (June) Hwang@sukjun_hwang·
Tokenization has been the final barrier to truly end-to-end language models. We developed the H-Net: a hierarchical network that replaces tokenization with a dynamic chunking process directly inside the model, automatically discovering and operating over meaningful units of data
GIF
GIF
English
95
732
4.7K
794.6K
Ricardo Buitrago retweetledi
Albert Gu
Albert Gu@_albertgu·
I converted one of my favorite talks I've given over the past year into a blog post. "On the Tradeoffs of SSMs and Transformers" (or: tokens are bullshit) In a few days, we'll release what I believe is the next major advance for architectures.
Albert Gu tweet media
English
27
116
782
119.5K
Ricardo Buitrago
Ricardo Buitrago@rbuit_·
Lastly, we introduce Effective Remembrance as a quantitative metric to ascertain how much models "effectively remember" previous parts of the context. Existing models are disrupted by early tokens and can't prioritize the recent context, yet State Passing fixes this behavior.
Ricardo Buitrago tweet media
English
0
0
12
894
Ricardo Buitrago
Ricardo Buitrago@rbuit_·
Beyond just being robust to length, the intervened models have actual *extrapolation* past the training length, with significantly improved performance on complex long context tasks such as BABILong and passkey retrieval.
Ricardo Buitrago tweet media
English
1
0
16
978
Ricardo Buitrago
Ricardo Buitrago@rbuit_·
Despite theoretically handling long contexts, existing recurrent models still fall short: they may fail to generalize past the training length. We show a simple and general fix which enables length generalization in up to 256k sequences, with no need to change the architectures!
Ricardo Buitrago tweet media
English
6
34
197
42.3K
Ricardo Buitrago retweetledi
Cartesia
Cartesia@cartesia·
Today, we're excited to share Cartesia Narrations, in public beta. Narrations is a creator tool for narrating long-form content using Sonic 2.0. You can use it to create audiobooks and podcasts, narrate your Substack posts, and more. Some highlights🧵
English
7
16
78
10.8K