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frascuchonΒ 
posted an update 5 months ago
frascuchonΒ 
posted an update 6 months ago
frascuchonΒ 
posted an update 6 months ago
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Extending datasets just got a whole lot easier! πŸš€ With Sheets, I was able to create a Spanish version of the popular fka/awesome-chatgpt-prompts dataset in just a few minutes ⏱️.

Check out the resulting dataset: frascuchon/fka_awesome_chatgpt_es πŸ“Š

Want to try it out for yourself? Head over to the Sheets space and see how easy it is to extend and modify existing datasets 🀯. The possibilities are endless! 🌐
frascuchonΒ 
posted an update 6 months ago
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Unlock the full potential of your datasets with SHEETS! It's incredibly easy to extend existing datasets and unlock new insights.

Leverage open-source models to translate, summarize, classify, and more - all directly within your existing columns.

Ready to give it a try? Explore the possibilities here: aisheets/sheets
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dvilasueroΒ 
posted an update 6 months ago
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Super excited to launch Hugging Face Sheets: Spreadsheets meet AI and unstructured data.

A few months ago, we started imagining new ways to build and transform datasets with the latest open-source models.

Today, I'm thrilled to introduce our first step in this direction.


In a nutshell:

πŸ“ Effortlessly run prompts and models over your data.
🌐 Agentic search for accuracy and real-time information.
πŸ–ΌοΈ Familiar, minimalistic interface for interacting with data.
🎯 Human feedback 2.0: Your input directly improves generated data.
πŸ’― Access hundreds of open models and leading inference providers.

Go to this space to try it out!

aisheets/sheets

Leave your questions below, we're just getting started!
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frascuchonΒ 
posted an update 6 months ago
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Hey! I built RAG MCP Server Space, a simple Gradio MCP server for RAG systems that allows you to search relevant results without passing huge contexts to your LLM.

You can use this space to integrate with your agents and improve the efficiency of your search results. Feel free to try it out and let me know if you have any feedback or questions!

frascuchon/rag-mcp-server

Thanks for checking it out!
dvilasueroΒ 
posted an update about 1 year ago
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🌐 Announcing Global-MMLU: an improved MMLU Open dataset with evaluation coverage across 42 languages, built with Argilla and the Hugging Face community.

Global-MMLU is the result of months of work with the goal of advancing Multilingual LLM evaluation. It's been an amazing open science effort with collaborators from Cohere For AI, Mila - Quebec Artificial Intelligence Institute, EPFL, Massachusetts Institute of Technology, AI Singapore, National University of Singapore, KAIST, Instituto Superior TΓ©cnico, Carnegie Mellon University, CONICET, and University of Buenos Aires.

🏷️ +200 contributors used Argilla MMLU questions where regional, dialect, or cultural knowledge was required to answer correctly. 85% of the questions required Western-centric knowledge!

Thanks to this annotation process, the open dataset contains two subsets:

1. πŸ—½ Culturally Agnostic: no specific regional, cultural knowledge is required.
2. βš–οΈ Culturally Sensitive: requires dialect, cultural knowledge or geographic knowledge to answer correctly.

Moreover, we provide high quality translations of 25 out of 42 languages, thanks again to the community and professional annotators leveraging Argilla on the Hub.

I hope this will ensure a better understanding of the limitations and challenges for making open AI useful for many languages.

Dataset: https://huggingface.co/datasets/CohereForAI/Global-MMLU
frascuchonΒ 
posted an update about 1 year ago
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πŸš€ Argilla v2.5.0 is out! πŸŽ‰
We’re excited to announce the latest version of Argilla, packed with features to make your data annotation workflows more powerful and seamless. Here’s what’s new:

✨ 1. Argilla Webhooks
With Argilla webhooks, you can:
* Trigger custom workflows
* Seamlessly integrate with external tools
* Build custom event-driven pipelines

🐍 2. Support for Python 3.13 and Pydantic v2
Argilla v2.5.0 now runs on:
* Python 3.13 for enhanced compatibility and speed
* Pydantic v2 for improved performance and type validation

🎨 3. Redesigned Home Page
Argilla's home page has been redesigned to provide a better user experience, showing a new
dataset card view, which provides a better overview of the datasets and annotation progress.

πŸ“– Read the full release notes πŸ‘‰ https://github.com/argilla-io/argilla/releases/tag/v2.5.0)
⬇️ Update now πŸ‘‰ https://pypi.org/project/argilla)
or use the live demo πŸ‘‰ argilla/argilla-template-space
dvilasueroΒ 
posted an update about 1 year ago
dvilasueroΒ 
posted an update about 1 year ago
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Build datasets for AI on the Hugging Face Hubβ€”10x easier than ever!

Today, I'm excited to share our biggest feature since we joined Hugging Face.

Here’s how it works:

1. Pick a datasetβ€”upload your own or choose from 240K open datasets.
2. Paste the Hub dataset ID into Argilla and set up your labeling interface.
3. Share the URL with your team or the whole community!

And the best part? It’s:
- No code – no Python needed
- Integrated – all within the Hub
- Scalable – from solo labeling to 100s of contributors

I am incredibly proud of the team for shipping this after weeks of work and many quick iterations.

Let's make this sentence obsolete: "Everyone wants to do the model work, not the data work."


Read, share, and like the HF blog post:
https://huggingface.co/blog/argilla-ui-hub
dvilasueroΒ 
posted an update about 1 year ago
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Big news! You can now build strong ML models without days of human labelling

You simply:
- Define your dataset, including annotation guidelines, labels and fields
- Optionally label some records manually.
- Use an LLM to auto label your data with a human (you? your team?) in the loop!

Get started with this blog post:
https://huggingface.co/blog/sdiazlor/custom-text-classifier-ai-human-feedback
dvilasueroΒ 
posted an update about 1 year ago
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Explore FinePersonas, visually with Argilla and black-forest-labs/FLUX.1-schnell


Excited to share this space where the community can explore a tiny subset of FinePersonas

argilla/finepersonas


Dataset built with distilabel and Free Serveless endpoints

This is just a first step towards more interesting experiments with FinePersonas, for example can we use it to assess biases in text2image models?

If you have ideas I'd love to hear them in the comments!

dvilasueroΒ 
posted an update over 1 year ago
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Today is a huge day in Argilla’s history. We couldn’t be more excited to share this with the community: we’re joining Hugging Face!

We’re embracing a larger mission, becoming part of a brilliant and kind team and a shared vision about the future of AI.

Over the past year, we’ve been collaborating with Hugging Face on countless projects: launching partner of Docker Spaces, empowering the community to clean Alpaca translations into Spanish and other languages, launching argilla/notus-7b-v1 building on Zephyr’s learnings, the Data is Better Together initiative with hundreds of community contributors, or releasing argilla/OpenHermesPreferences, one of the largest open preference tuning datasets

After more than 2,000 Slack messages and over 60 people collaborating for over a year, it already felt like we were part of the same team, pushing in the same direction. After a week of the smoothest transition you can imagine, we’re now the same team.

To those of you who’ve been following us, this won’t be a huge surprise, but it will be a big deal in the coming months. This acquisition means we’ll double down on empowering the community to build and collaborate on high quality datasets, we’ll bring full support for multimodal datasets, and we’ll be in a better place to collaborate with the Open Source AI community. For enterprises, this means that the Enterprise Hub will unlock highly requested features like single sign-on and integration with Inference Endpoints.

As a founder, I am proud of the Argilla team. We're now part of something bigger and a larger team but with the same values, culture, and goals. Grateful to have shared this journey with my beloved co-founders Paco and AmΓ©lie.

Finally, huge thanks to the Chief Llama Officer @osanseviero for sparking this and being such a great partner during the acquisition process.

Would love to answer any questions you have so feel free to add them below!
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dvilasueroΒ 
posted an update over 1 year ago
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πŸ”₯ Community and Data Quality Are More For Alignment

A recipe to replicate SPIN (Self-Play Fine Tuning) with 30x less data:

πŸ—£οΈ 50K samples vs 1.8K prompts curated by the 350+ amazing DIBT contributors.
βš—οΈ Distillation of Mistral Large instead of OpenAI
πŸ™Œ Open data & code with βš—οΈdistilabel

SPIN Paper:
Self-Play Fine-Tuning Converts Weak Language Models to Strong Language Models (2401.01335)

SPIN DIBT Collection with datasets and models:
argilla/dibt-prompt-collective-spin-65ef59062518776024395fc3

Repo:
https://github.com/argilla-io/distilabel-spin-dibt

Joint work with the amazing DIBT community πŸ‘‡
@aashish1904 , @flozi00 , @sayhan , @munish0838 , @0-hero , @dvilasuero , @eren23 , @davanstrien , @ahnz , @BlackKakapo , @kitano-o , @mmhamdy , @sdiazlor , @Stopwolf , @gabrielmbmb , @tculler91 , @plaguss , @ignacioct , @Hugi-R , @davidberenstein1957 , @Korla , @alvarobartt , @Hugs4Llamas , @Sumandora , @nataliaElv , @jfcalvo , @Averill , @steventrouble , @vasilis , @aeros93 , @kayyshf , @thomasgauthier , @jeromebas , @Ameeeee , @ayoubelmhamdi , @TuringsSolutions , @efels , @Haleyok , @abrazador , @emessy , @Nindaleth , @burtenshaw , @vicgalle , @CortexPE , @casey-martin , @Leire-aguirre-eguiluz , @mrfakename , @Portias600kNeurons , @nathaliepett , @Filippo
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dvilasueroΒ 
posted an update almost 2 years ago
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πŸš€πŸ§™πŸΌβ€β™‚οΈIntroducing OpenHermesPreferences: the largest open AI feedback dataset for RLHF & DPO

> Using LLMs to improve other LLMs, at scale!

Built in collaboration with the H4 Hugging Face team, it's a 1M preferences dataset on top of the amazing @teknium 's dataset.

Dataset:
argilla/OpenHermesPreferences

The dataset is another example of open collaboration:

> The H4 team created responses with Mixtral using llm-swarm

> Argilla created responses with NousResearch Hermes-2-Yi-34B using distilabel

> The H4 ranked these responses + original response with PairRM from AllenAI, University of Southern California, Zhejiang University ( @yuchenlin @DongfuTingle and colleagues)

We hope this dataset will help the community's research efforts towards understanding the role of AI feedback for LLM alignment.

We're particularly excited about the ability of filtering specific subsets to improve LLM skills like math or reasoning.

Here's how easy it is to filter by subset:

ds = load_dataset("HuggingFaceH4/OpenHermesPreferences", split="train")

# Get the categories of the source dataset
# ['airoboros2.2', 'CamelAI', 'caseus_custom', ...]
sources = ds.unique("source")

# Filter for a subset
ds_filtered = ds.filter(lambda x : x["source"] in ["metamath", "EvolInstruct_70k"], num_proc=6)


As usual, all the scripts to reproduce this work are available and open to the community!

argilla/OpenHermesPreferences

So fun collab between @vwxyzjn , @plaguss , @kashif , @philschmid & @lewtun !

Open Source AI FTW!
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dvilasueroΒ 
posted an update almost 2 years ago
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πŸ€— Data is better together!

Data is essential for training good AI systems. We believe that the amazing community built around open machine learning can also work on developing amazing datasets together.

To explore how this can be done, Argilla and Hugging Face are thrilled to announce a collaborative project where we’re asking Hugging Face community members to build a dataset consisting of LLM prompts collectively.

What are we doing?
Using an instance of Argilla β€” a powerful open-source data collaboration tool β€” hosted on the Hugging Face Hub, we are collecting ratings of prompts based on their quality.

How Can You Contribute?
It’s super simple to start contributing:

1. Sign up if you don’t have a Hugging Face account

2. Go to this Argilla Space and sign in: https://huggingface.co/spaces/DIBT/prompt-collective

3. Read the guidelines and start rating prompts!

You can also join the #data-is-better-together channel in the Hugging Face Discord.

Finally, to track the community progress we'll be updating this Gradio dashboard:

https://huggingface.co/spaces/DIBT/prompt-collective-dashboard
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dvilasueroΒ 
posted an update almost 2 years ago
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πŸš€ The Open Source AI community needs more open datasets for improving Open LLMs. Excited to share our new open dataset for boosting chat models:

πŸŽ‰ Welcome Distilabel Capybara DPO, a multi-turn, high-quality preference dataset.

argilla/distilabel-capybara-dpo-7k-binarized

Why?
Best closed chat models are built on top of multi-turn dialogue preference data. The OSS community lacks these datasets. This dataset is the first in the series to close this gap.

Is this dataset useful?
To test this dataset, we've built our virtual launching partner:

πŸŽ‰ Welcome CapybaraHermes, a preference tuned OpenHermes with increased second turn capabilities on MTBench

argilla/CapybaraHermes-2.5-Mistral-7B

As usual, models are the least important to us. We like to focus on the data. Our mission is to build and share high-quality datasets, sharing our methods in the open so the community can improve upon them.

That's why, we took some time to describe the full methodology on the dataset card, check it out and give us feedback! Data and methods are never perfect!

Finally, this is just a preview version and would love to collaborate with you to add more benchmarking results, what hyperparams work for DPO'ing models, what mix of datasets, etc.

Expect some more datasets in the coming weeks. Let's build the best data for AI, together.
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dvilasueroΒ 
posted an update almost 2 years ago
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πŸ”₯ Less is more for DPO, high quality matters!

πŸ“’ Dropping our first open dataset and LLM of the year:

πŸ’ΎMeet distilabel Orca Pairs DPO, an improved version of the now famous dataset from Intel:

argilla/distilabel-intel-orca-dpo-pairs


πŸ›οΈ And a new OpenHermes fine-tune outperforming baselines with 54% less DPO pairs:

https://huggingface.co/argilla/distilabeled-Hermes-2.5-Mistral-7B

You can use this new dataset for your DPO tuning, just like this:


from datasets import load_dataset

# Instead of this:
# dataset = load_dataset("Intel/orca_dpo_pairs", split="train")

# use this:
dataset = load_dataset("argilla/distilabel-intel-orca-dpo-pairs", split="train")

dataset = dataset.filter(
    lambda r: 
        r["status"] != "tie" and 
        r["chosen_score"] >= 8 and 
        not r["in_gsm8k_train"]
)

This will reduce the size of the original by 54% while giving you better quality preferences!

What should we build next?



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dvilasueroΒ 
posted an update almost 2 years ago
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πŸ‘‹ Hi there!

This is my very first post.

I'll use it to share some old news: a math preference dataset for DPO!

I created this dataset some time ago while we were developing distilabel (https://github.com/argilla-io/distilabel).

Some days ago we found out people are actually using it! So I'll use this post to explain how I built it in case it's useful for the community.

1. I used distilabel's SelfInstruct-inspired task to generate instructions about different math topics. I curated the instructions with Argilla (on Spaces!).
2. Then I used a distilabel Pipeline to build a preference dataset using gpt3.5 as generator and gpt4 as labeller. If I recall correctly I used our JudgeLM implementation (see https://distilabel.argilla.io/latest/technical-reference/tasks/#judgelmtask)

(see the screenshot with the dataset in the Argilla UI)

3. Then I just binarized into chosen, rejected pairs and voilΓ :

argilla/distilabel-math-preference-dpo

The funny thing is that I used this to do a second DPO run over Notus-7B. I hoped to see an improvement on math/reasoning skills but it actually improved in STEM and Humanities and did worse on Math 🀣 .

In conclusion, this dataset was only a quick experiement. I'm happy to see the community found it useful. Data for DPO and fine-tuning are still a mystery, let's unveil these mysteries in 2024 together!

Follow me for the most exciting datasets for LLMs (and maybe some great, small, efficient models). I plan to announce all Argilla open-source work here!
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