RapidFire AI

9 posts

RapidFire AI banner
RapidFire AI

RapidFire AI

@RapidFireAIHQ

Faster LLM fine-tuning: parallel runs, real-time control, auto multi-GPU optimization.

United States Katılım Eylül 2025
6 Takip Edilen18 Takipçiler
Sabitlenmiş Tweet
RapidFire AI
RapidFire AI@RapidFireAIHQ·
RapidFire AI is now officially integrated with Hugging Face TRL 🎉 👉 Official TRL integration doc: huggingface.co/docs/trl/v0.25… Why it’s cool: • 16–24× faster experimentation vs. sequential runs • Drop-in wrappers around TRL & PEFT (SFT/DPO/GRPO supported) • Interactive Control (IC Ops): stop, resume, clone-modify runs in flight • Auto multi-GPU orchestration with intelligent chunk scheduling • MLflow dashboard for live metrics & artifacts 👉 GitHub Repo: github.com/RapidFireAI/ra… #HuggingFace #TRL #LLM #FineTuning #RLHF #MLOps #LoRA
English
0
1
2
276
RapidFire AI
RapidFire AI@RapidFireAIHQ·
A lot of multi-agent workflows are really ensembles in a new form. That is the point Arun Kumar, Co-founder & CTO of RapidFire AI, makes in this conversation, and it is a compelling one. lnkd.in/e8P-DT5C It also means agent builders should borrow more from classical ML, including evals, ablations, and disciplined optimization, instead of doing “YOLO agent engineering.” Strong conversation. Worth the listen. hashtag#AI hashtag#Agents hashtag#Ensembles hashtag#AgentEngineering hashtag#LLM hashtag#RapidFireAI
English
0
0
0
8
RapidFire AI
RapidFire AI@RapidFireAIHQ·
🚀 New: RapidFire AI #RAG. Open-source engine for hyperparallel experiments across chunking, retrieval, rerankers and prompts, with live control and automatic optimization so your #RAG stays grounded in your data. Learn more: rapidfire.ai
English
0
0
0
59
RapidFire AI retweetledi
Kirk Borne
Kirk Borne@KirkDBorne·
Welcome to the future of RAG and context engineering with RapidFire AI, where systematic experimentation—not guesswork—drives success. Retrieval-Augmented Generation (RAG) is one of the most powerful ways to make LLMs more accurate and grounded in factual knowledge. But success isn’t just about plugging in a retriever — it’s about experimenting with how retrieval, chunking, and prompt design interact to shape model performance. That's why I'm excited about what @RapidFireAIHQ has just announced. They have extended their open-source engine to bring rapid experimentation to RAG and context engineering, making it faster, more empirical and more reproducible, helping teams move from intuition-driven development to data-driven RAG optimization. To learn more, visit rapidfire.ai and explore the open-source repository on GitHub at github.com/RapidFireAI, which introduces these key RapidFire AI features: Hyperparallelized Execution, Interactive Control (IC Ops), and Automatic Optimization.
Kirk Borne tweet media
English
7
10
29
89.7K
RapidFire AI
RapidFire AI@RapidFireAIHQ·
🚀 RapidFire AI now runs in Google Colab Try it now (Colab notebook📒): tinyurl.com/rapidfireai-co… ✅ Run in the cloud — no local install ✅ Real-time training metrics with integrated TensorBoard ✅ Start in under 3 minutes ✅ Train & fine-tune without infra hassles Perfect for: • Quick prototyping & experiments • Testing RapidFire without local setup • Learning with an interactive tutorial • Using free GPU resources Documentation: oss-docs.rapidfire.ai Discord: discord.com/invite/6vSTtnc… Got feedback or questions? Drop a comment — we’re listening. Happy training! 🔥 #MachineLearning #GoogleColab #TensorBoard #OpenSource #AI #MLOps
English
1
6
9
4.3K
RapidFire AI retweetledi
Arun Kumar
Arun Kumar@TweetAtAKK·
LLM customization should not require weeks of waiting and massive GPU spend. That is why RapidFire AI just released our OSS package (Apache v2.0) to make LLM customization easier, faster, and cheaper! 🚀 Check out our feature by @VentureBeat: venturebeat.com/data-infrastru… #LLMs #AI
VentureBeat@VentureBeat

Instead of just one configuration, RapidFire users can analyze 20 or more all at once, resulting in a 20X higher experimentation throughput. #AI #ArtificialIntelligence #GenerativeAI #data bit.ly/3Vwijiw

English
2
5
13
4.2K