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from fasthtml.common import *
from fasthtml.components import *
from fasthtml.components import D_title, D_article, D_front_matter, D_contents, D_byline
from plotly import graph_objects as go
from fh_plotly import plotly2fasthtml
import pandas as pd
import json
from rich import print
import overview
import curated
import web
import common
import results
app, rt = fast_app(
debug=True,
pico=False,
hdrs=(
Meta(charset="UTF-8"),
Meta(name="viewport", content="width=device-width, initial-scale=1.0"),
Script(src="https://distill.pub/template.v2.js"),
Script(src="https://unpkg.com/htmx.org@next/dist/htmx.min.js"),
Script(src="https://cdn.plot.ly/plotly-latest.min.js"),
Link(rel="stylesheet", href="style.css"),
MarkdownJS(),
),
)
@app.get("/")
def main():
return Div(
D_front_matter(),
D_title(
H1(
"TxT360: the most comprehensive, highest quality, and production ready pretraining dataset",
cls="l-body",
style="text-align: center;",
),
Div(
Img(src="images/llm360_logo.png"),
id="title-plot",
cls="main-plot-container l-page",
),
),
D_article(
D_contents(
Nav(
H3("Table of Contents"),
Div(
A("TxT360", href="#_self"),
hx_get="/intro",
hx_target="#inner-text",
),
Div(
Ul(
Li(
A(
"About TxT360",
href="/intro#section1",
hx_get="/intro#section1",
hx_target="#inner-text",
)
),
Li(
A(
"Globally Deduplicated",
href="/intro#section2",
hx_get="/intro#section2",
hx_target="#inner-text",
)
),
Li(
A(
"Controllable Upweighting",
href="/intro#section3",
hx_get="/intro#section3",
hx_target="#inner-text",
)
),
Li(
A(
"Fully Documented",
href="/intro#section4",
hx_get="/intro#section4",
hx_target="#inner-text",
)
),
),
),
Div(
A("Overview", href="#inner-text"),
hx_get="/overview",
hx_target="#inner-text",
),
Div(
A("Global Processing Steps", href="#inner-text"),
hx_get="/common",
hx_target="#inner-text",
),
Div(
A("Web Data Processing", href="#inner-text"),
hx_get="/webdata",
hx_target="#inner-text",
),
Div(
A("Curated Sources Processing", href="#inner-text"),
hx_get="/curated",
hx_target="#inner-text",
),
Div(
A("TxT360 Results", href="#inner-text"),
hx_get="/results",
hx_target="#inner-text",
),
role="navigation",
cls="l-text figcaption",
),
),
intro(),
),
)
intro_text = P("Pretraining performant large language models (LLMs) requires trillions of tokens of high quality data. Many prior work, including our previous pretraining projects ",
A("Amber-7B", href = "https://huggingface.co/LLM360/Amber"),
", ",
A("Crystal-7B", href = "https://huggingface.co/LLM360/CrystalCoder"),
", ",
A("K2-65B", href = "https://huggingface.co/LLM360/K2"),
" have demonstrated how data curation is a ‘make-or-break’ decision for model quality and capability.",)
intro_list = P("We present TxT360, the Trillion eXtracted Text corpus, a 5.7T token dataset for pretraining projects that:")
intro_list1 = Ol(
Li("Curates commonly used pretraining datasets, including all CommonCrawl", style = "margin-bottom: 5px"),
Li("Employs carefully selected filters designed for each data source", style = "margin-bottom: 5px"),
Li("Provides only unique data elements via globally deduplicated across all datasets", style = "margin-bottom: 5px"),
Li("Retains all deduplication metadata for custom upweighting", style = "margin-bottom: 5px"),
Li("Is Production ready! Download here [link to HF repo]", style = "margin-bottom: 5px")
)
previous_intro = P("""We are excited to introduce TxT360, a
large-scale, comprehensive, and fully transparent
dataset designed for Large Language Model (LLM)
pre-training. TxT360 is engineered to strike a
balance between the quantity and quality of
pre-training data, pushing the limit on both
fronts. This comprehensive dataset encompasses both
expansive web-based data and highly curated data
sources, making it one of the most robust LLM
pre-training corpora available today. Our web data
component includes 99 snapshots from Common Crawl,
amassing 5.7 trillion tokens and occupying 11 TB of
disk space in jsonl.gz format. On the curated side,
TxT360 integrates one of the most extensive
collections of high-quality sources across multiple
domains, ensuring diverse and rich content referred
to as curated sources, 14 sources across 10
domains. To maintain the highest quality, we
meticulously pre-processed the web data to filter
out low-quality content and conducted thorough
reviews of the curated sources. This process not
only unified their formats but also identified and
rectified any anomalies. Not only do we 100%
open-source our processing scripts, but we also
release the details of our data reviews, revealing
the decision-making processes behind data selection
and quality assurance. This level of transparency
allows researchers and practitioners to fully
understand the dataset’s composition and make
informed decisions when using TxT360 for training.
Additionally, TxT360 includes detailed
documentation and analysis of the data, covering
distribution statistics, domain coverage, and
processing pipeline, which helps users navigate and
utilize the dataset effectively. Overall, TxT360
represents a significant step forward in the
availability and transparency of large-scale
training data for language models, setting a new
standard for dataset quality and openness.""")
previous_background = P(
""" The quality and size of a pre-training dataset
play a crucial role in the performance of large
language models (LLMs). The community has
introduced a variety of datasets for this purpose,
including purely web-based datasets like RefinedWeb
[1], RedPajama-Data-V2 [2], DCLM [3], and
FineWeb [4], as well as comprehensive datasets
derived from multiple highly-curated data sources
such as The Pile [5], RedPajama-Data-V1 [6], and
Dolma [7] . It is commonly known that web-based
datasets provide a vast quantity of data, while
highly-curated multi-source datasets consistently
deliver high quality and diversity, both critical
for effective LLM pre-training. However, despite
the advancements in both types of data, each type
of dataset has its limitations. For instance, the
processing scripts for the web dataset, RefinedWeb,
known for its high quality, are not public, and
only about 10% of the entire dataset has been
disclosed. Conversely, the web component of
existing highly-curated multi-source datasets is
relatively small compared to purely web-based
datasets, limiting their coverage and diversity
compared to the scale of information from the
internet. By integrating the extensive reach of
web data with the exceptional quality of curated
sources, TxT360 is crafted to meet and surpass the
rigorous standards required for state-of-the-art
LLM pre-training. """
),
previous_content = P("""The performance of a large language model (LLM)
depends heavily on the quality and size of its
pretraining dataset. However, the pretraining
datasets for state-of-the-art open LLMs like Llama
3 and Mixtral are not publicly available and very
little is known about how they were created.
Reading time: 45 min. For the best reading
experience, we recommend not using a mobile phone.
Recently, we released 🍷 FineWeb, a new,
large-scale (15-trillion tokens, 44TB disk space)
dataset for LLM pretraining. FineWeb is derived
from 96 CommonCrawl snapshots and produces
better-performing LLMs than other open pretraining
datasets. To bring more clarity in machine learning
and advance the open understanding of how to train
good quality large language models, we carefully
documented and ablated all of the design choices
used in FineWeb, including in-depth investigations
of deduplication and filtering strategies. The
present long form report is a deep dive in how to
create a large and high-quality web-scale dataset
for LLM pretraining. The dataset itself, 🍷
FineWeb, is available here. We are extremely
thankful to the whole distill.pub team (Christopher
Olah, Shan Carter, Ludwig Schubert in particular)
for creating the template on which we based this
blog post. Thanks also for inspiring us with
exquisitely crafted articles and blog posts. In
this report we also introduce 📚 FineWeb-Edu, a
subset of FineWeb constructed using scalable
automated high-quality annotations for educational
value, and which outperforms all openly accessible
web-datasets on a number of educational benchmarks
such as MMLU, ARC, and OpenBookQA. 📚 FineWeb-Edu
is available in two sizes/filtering-level: 1.3
trillion (very high educational content) and 5.4
trillion (high educational content) tokens (all
tokens are measured with GPT2 tokenizer). You can
download it here. Both datasets are released under
the permissive ODC-By 1.0 license TLDR: This blog
covers a discussion on processing and evaluating
data quality at scale, the 🍷 FineWeb recipe
(listing and explaining all of our design choices),
and the process followed to create its 📚
FineWeb-Edu subset."""),
previous_conclusion = P("""This is the conclusion section where we
summarize the key points discussed in the blog post
and provide final thoughts."""),
@app.get("/intro")
def intro():
return Div(
Section(
H2("About TxT360"),
intro_text,
intro_list,
intro_list1,
id="section1",
),
Section(
H3("Global Deduplication"),
P("TxT360 curated a wide range of datasets, including a whopping 99 Common Crawl Dumps and a list of high quality datasets: StackExchange, Wikipedia, Arxiv, USPTO, DM Math, HackerNews, Ubuntu IRC, Europarl, FreeLaw, PG19, S2ORC, PhilPapers, PubMed Abstracts, and PubMed Central. For the first time in a released dataset, we locally and globally deduplicated the data across each dataset creating the highest quality data available."),
id="section2",
),
Section(
H3("Controllable Upweighting for Flexible Data Sample Weight Control"),
P("In large-scale corpora like CommonCrawl, text duplication is a frequent occurrence. Duplication can be considered as a natural upsampling of some data points. Recent studies have highlighted the potential drawbacks of oversampling specific data points, which can negatively impact pretraining performance [2205.10487]. However, when samples are repeated appropriately, the performance can actually improve [2306.01116, 2305.16264, 2406.11794, FineWeb]. Despite this, there is currently no widely accepted best practice for data sampling, and it’s unlikely that a one-size-fits-all approach will emerge given the scale of these datasets. Previous work either leaves the deduplication process to the user (as seen in RedPajama V2 and DCLM-Pool) or provides a corpus that has been downsampled in a specific manner (such as in FineWeb and RefinedWeb)."),
P("Given the high cost of deduplication, TxT360 offers a complete deduplication across all datasets (so you don’t have to). Additionally, TxT360 maintains detailed metadata for each sample, including the frequency and location of duplicates. This metadata gives pretrainers the flexibility to adjust the weight of samples as needed. In principle, one can recover the original dataset distribution (footnote: this approach also means a smaller size on disk). We will demonstrate a simple upsampling strategy that results in an effective pretraining dataset. "),
id="section3",
),
Section(
H3("Full and Openly Documented Production Ready Pretraining Corpus"),
P("We cover every aspect of the decisions made to produce the dataset, including document selection, filtering, quality assurance, deduplication, standardization and PII. Our reasoning is thoroughly explained, ensuring transparency and replicability. "),
P("Our code is open sourced here[link to github]."),
P("The dataset is ready for immediate download directly from Hugging Face [link]."),
P("In the remainder of this blog post, we will walk you through the entire process and the rationale behind each decision. Enjoy!"),
id="section4",
),
id="inner-text",
)
rt("/overview")(overview.overview)
rt("/curated")(curated.curated)
rt("/curated/{target}")(curated.update)
rt("/webdata")(web.web_data)
rt("/webdata/{target}")(web.update)
rt("/common")(common.common_steps)
rt("/results")(results.results)
serve()
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