Every Hugging Face Statistics You Need to Know (2024)

Mukund Kapoor
By Mukund Kapoor - Author 18 Min Read
18 Min Read

Searching for the latest Hugging Face statistics?

Hugging Face is a platform for AI where users collaborate on machine learning projects. It hosts an open-source platform for training and deploying models. With over 200,000 models, it covers various fields like computer vision and natural language processing.

In this post, we will share all the important statistical data you need to learn more about Hugging Face.

Before we jump to the key statistics of Hugging Face, here’s a quick history of Hugging Face that you should not miss out on.

What is Hugging Face, Who Built It, Why, and When

Hugging Face, a French-American company headquartered in New York City, was established in 2016 by French entrepreneurs Clément Delangue, Julien Chaumond, and Thomas Wolf.

Initially, the company developed a chatbot app targeting teenagers before transitioning into a machine learning platform after open-sourcing the chatbot’s model.

The Hugging Face Hub, the company’s platform, acts as a collaborative space where users can develop, train, and deploy NLP and ML models using open-source code.

Hugging Face simplifies model development by providing pre-trained models that users can fine-tune for specific tasks, thus democratizing AI and making it more accessible to developers.

It offers user-friendly tokenizers for text preprocessing and a vast repository of NLP datasets through the Hugging Face Datasets library, supporting data scientists, researchers, and ML engineers in their projects.

Additionally, Hugging Face is renowned for its transformers library tailored for natural language processing applications.

What Does Hugging Face Mean, and Why Do They Use an Emoji?

“Hugging Face” was chosen because the founders wanted to be the first company to go public with an emoji rather than the traditional three-letter ticker symbol.

Huggingface logo

They chose the hugging face emoji because it was their favorite emoji, and they thought it would be a memorable and unique name for their company.

Well, this went well and the Hugging Face community has embraced the name, and it has become a recognizable brand in the machine learning and data science space.

Key Hugging Face Statistics at Glance

  • Over 1 million models, datasets, and apps hosted. In general it has 350k models, 75k datasets, and 150k demo apps. (Source)
  • Completed a $235 million Series D investment in 2023, reaching a $4.5 billion valuation. (Source)
  • Total funding raised: $395.2 million across six rounds since 2016. (Source)
  • Revenue was under $10 million in 2021, with a projection of $30 to $50 million in 2023. (Source)
  • Used by over 10,000 companies for AI and machine learning development. (Source)
  • Released BLOOM, a 176 billion-parameter language model. (Source)
  • Has over 1,000 paying customers, including Intel, Pfizer, and Bloomberg. (Source)
  • Competes directly with H2O.ai, spaCy, and indirectly with OpenAI. (Source)
  • Transformers library has over 100,000 stars on GitHub. (Source)
  • Website receives 18.9 Million visits in per month. (Source)
  • 75.25% of website visitors are male; 24.75% are female. (Source)
  • Age group 25-34 makes up 36.87% of the user base. (Source)
  • Hosts over 300k models, 250k datasets, and 250k spaces.
  • 170 employees as of 2023, up from 30 in 2021. (Source)
  • Hugging Face Pro offered at $25/month. (Source)
  • Largest model contributions from “Other” category: 129,157 models.
  • IBM contributed over 200 open models and datasets. (Source)
  • Fake news detector model has up to 95% accuracy. (Source)

Website Traffic and User Demographics

How Much Website Traffic Hugging Face Attracts?

Hugging Face, a prominent AI platform and community, has maintained consistent traffic levels recently.

In January 2024, the website attracted 28.81 million visits, with users spending an average of 10 minutes and 39 seconds per session. However, there was a slight decrease in traffic compared to November, amounting to -19.5%.

huggingface website traffic stat
Source: Semrush

The primary audience for Hugging Face is centered in the United States, with significant followings in Russia, India, Japan, and Indonesia.

huggingface country traffic high in USA
Source: Semrush

Traffic to the website is diverse in terms of device usage, with desktops representing 68.03% of visits, followed by mobile devices at 31.97%, and tablets at 7.22%. (Some data about device usage varies; however, it’s somewhere around 70-75% for Desktop.)

device usage huggingface
Source: SimilarWeb

In terms of marketing channels, direct traffic holds the largest share at 45.06%, closely followed by organic search at 28.67%. Referrals, social media, display ads, and paid searches comprise the remainder of the website’s traffic sources.

marketing channels stats huggingface

What is the User Base of Hugging Face?

Hugging Face attracts a diverse user base consisting mainly of AI researchers, data scientists, and developers.

As of 2023, the platform boasts more than 1.2 million registered users, with males making up 75.25% and females 24.75% of the total.

Hugging Face Statistics

Most users fall within the 25-34 age bracket, accounting for 36.87% of the user base, closely followed by 18-24-year-olds at 28.26%. In total, users aged 18-44 make up 83.03% of the platform’s users.

age group distribution of huggingface

Active Paying Users on Hugging Face

Hugging Face boasts more than 1,000 active paying users, which include prominent firms such as Intel, Pfizer, Bloomberg, and eBay. By 2025, Hugging Face’s projected active paying user base will increase by nearly 1500.

Active Paying Users on HuggingFace

The platform provides services like AutoTrain, Spaces, and Inference Endpoints, with charges billed directly to the linked credit card.

Moreover, Hugging Face collaborates with cloud providers like AWS and Azure to enable seamless integration into customers’ preferred cloud setups.

Geographical Distribution of Hugging Face

Hugging Face attracts users from diverse geographical locations, with the United States, India, and Russia emerging as pivotal hubs for its core audience.

Analyzing website traffic, it’s evident that the United States comprises 25.06% of visitors, trailed by India at 10.44%, and Russia at 7.06%.

CountryAll DevicesDesktopMobile
United States6.61M68.35%31.65%
Russian Federation1.64M50.87%49.13%
India1.62M73.01%26.99%
Japan1.54M71.76%28.24%
Indonesia1.23M19.54%80.46%
Source

Interestingly, device preferences vary across regions, with desktop usage dominating in the United States (68.03%), while mobile devices are favored in India (92.28%) and Russia (86.48%).

HuggingFace Website Traffic by Country

Average Time Users Spend on Hugging Face

Users spend an average of 4 minutes and 59 seconds on the Hugging Face website, which is quite low compared to OpenAI’s ChatGPT, Character AI, Claude, or Bing AI.

Average Time Spent on HuggingFace

Funding and Valuation Statistics

Now, let’s look at some of Hugging Face’s key funding, revenue, and valuation statistics.

Revenue and Valuation

According to estimates from Sacra, Hugging Face achieved $70 million in annual recurring revenue (ARR) by the end of 2023, showing an impressive 367% growth compared to the previous year.

This surge in revenue was mainly due to profitable consulting contracts with major AI companies like Nvidia, Amazon, and Microsoft. The company’s revenue model includes paid individual ($9/month) and team plans ($20/month), with a significant portion of revenue coming from enterprise-level services.

Regarding valuation, Hugging Face reached a valuation of $4.5 billion after securing $235 million in funding from investors such as Google, Amazon, Nvidia, Intel, Salesforce, and others.

This substantial valuation demonstrates the market’s confidence in Hugging Face’s innovative AI software solutions and hosting services.

MetricValue
Revenue (2021)$10 million
Valuation (May 2022)$2 billion
Latest Valuation (August 2023)$4.5 billion
Total Funding$235 million

Funding

As of 2023, Hugging Face has successfully raised $395 million in funding. This funding has been crucial in supporting the company’s growth initiatives, product development, and expansion into new markets.

Notable investors like Google, Nvidia, and other tech giants have expressed strong support for Hugging Face’s vision and offerings.

Does Hugging Face Make Money?

In 2023, Hugging Face reached an annual recurring revenue (ARR) of $70 million, showing a remarkable 367% increase from the previous year.

Hugging Face reached an annual recurring revenue

This surge in revenue was mainly driven by lucrative consulting contracts with leading AI companies such as Nvidia, Amazon, and Microsoft.

Here are the company’s revenue statistics:

YearRevenue (ARR)Growth Rate (y/y)
2022$10 millionN/A
2023$70 million367%

How Hugging Face Makes Money (Revenue Model)

Hugging Face generates revenue through various channels, including subscription plans, enterprise solutions, and cloud services. Here’s a breakdown of how Hugging Face earns money:

  1. Subscription Plans:
    • Hugging Face offers both individual and team subscription plans priced at $9 per month and $20 per month, respectively.
    • These plans grant users access to premium features like private dataset viewing, inference capabilities, and early access to new features.
  2. Enterprise Solutions:
  3. Cloud Services:
    • Through its cloud platform, Hugging Face offers NLP and AI services such as model hosting, inference, and optimization.
    • Users are billed based on their usage of these services, including fees for model hosting and optimization.
  4. Market Positioning:

Market Position and Competition

Direct and Indirect Competitors

Hugging Face competes in the rapidly growing generative AI market, particularly in large language and vision models.

It is not a direct competitor to ChatGPT or Google’s Bard but competes through strategic partnerships and the commercialization of AI models for enterprise use.

For instance, Hugging Face’s collaboration with AWS aims to make deploying generative AI applications more accessible to developers.

Based on the data from Similarweb, here’s a table outlining Hugging Face’s top competitors, their industry focus, and the total visits they received in December 2023:

RankCompetitorIndustry FocusTotal Visits (December 2023)Global Rank
1paperswithcode.comMachine learning research and implementation2.2M#29,926
2openai.comAdvanced AI systems (GPT-4)1.6B#25
3civitai.comStable diffusion AI art models24.2M#1,301
4wandb.aiMachine learning model tracking and comparison1.6M#32,001
5github.comSoftware development and open source collaboration424.8M#78
6raw.githubusercontent.com7.7M#11,474
7stablediffusionweb.comStable diffusion online demo for art creation3.5M#19,080
8notion.soWorkspace productivity tools141.2M#200
9replicate.comCloud API for machine learning models7.7M#7,370
10stability.aiAI technology development3.5M#19,790

Ways Hugging Face Differentiates Itself from Competitors

  • Open-Source Community: Hugging Face fosters an open-source community platform, enabling developers to collaborate on and share models, datasets, and APIs for NLP tasks. This stands in contrast to closed-source platforms like OpenAI and Perplexity. (Source)
  • Model-Agnostic Approach: Hugging Face’s approach allows users to utilize high-quality closed-source models to train their own low-cost, open-source models. This encourages flexibility among ML developers, who can mix and match models to find the best solution for their specific needs.
  • Collaborative Workspace: Hugging Face provides a collaborative workspace for ML developers, facilitating teamwork on projects, sharing insights, and refining each other’s work. (Source)
  • Diverse Model Library: Hugging Face offers a diverse library of pre-trained models for various tasks such as text classification, sentiment analysis, and translation. This extensive library distinguishes it from competitors focused solely on large language models.
  • Cloud Platform: Hugging Face operates a cloud platform offering NLP and AI services like model hosting, inference, and optimization. This allows users to easily deploy, manage, and scale their NLP models in a cloud environment. (Source)
  • Enterprise Solutions: Hugging Face delivers enterprise solutions leveraging its NLP and AI technology, including custom model training, deployment, integration services, and premium features and support.

Other Important Statistical Data for Hugging Face

There are many other statistics you need to know about Hugging Face other than traffic, revenue, demographics, etc. Let’s have a look at them:

What Products Hugging Face Has Built?

In 2020, they introduced products like Autotrain and Inference API, targeting enterprise clients.

Autotrain

In April 2023, they launched HuggingChat, an open-source generative AI.

huggingchat
HuggingChat

Their notable project, BLOOM, a 176 billion parameter large language model, was released in July 2022, showing their commitment to large language models. BLOOM, similar to GPT-3, supports multiple languages and programming languages.

Hugging Face also offers autoML solutions and the Hugging Face Hub platform for hosting code repositories and discussions.

Their NLP library aims to democratize NLP by providing datasets and tools. Popular among big tech companies, Hugging Face manages BigScience, a research initiative with 900 researchers training models on a massive multilingual dataset.

Models like BERT and DistilBERT see significant weekly downloads, and StarCoder, their AI coding assistant, supports 80 programming languages.

Collaborating with AWS, Hugging Face offers Deep Learning Containers for NLP model deployment on Amazon SageMaker.

NLP huggingface collaboration with AWS

How Many Models and Datasets Are Hosted by Hugging Face?

With over 300,000 models, 250,000 datasets, and 250,000 spaces, it provides the most extensive collection available.

Hugging Face Hub Statistics

The Hugging Face Hub hosts over 350,000 models, 75,000 datasets, and 150,000 demo apps, fostering collaboration and innovation. With support for over 130 architectures and more than 75,000 datasets in over 100 languages, users have access to a diverse range of resources.

Additionally, Hugging Face hosts popular machine-learning models like BERT and GPT-2, along with a Metrics library for evaluating model predictions.

Hugging Face Employee Data

Hugging Face has grown its workforce to 279 employees, marking a notable 39% increase over the last year, signaling significant expansion.

How many Employees does Hugging Face have?

With an estimated annual revenue of $40 million, the company’s revenue per employee is approximately $143,487.

Furthermore, Hugging Face has raised a total of $235 million in funding and currently holds a valuation of $4 billion as of August 2023.

Here is a table summarizing the employee data statistics for Hugging Face:

MetricValue
Number of Employees279
Employee Growth39%
Estimated Annual Revenue$40 million
Revenue per Employee$143,487
Total Funding$235 million
Valuation$4 billion

How Many Stars Does Hugging Face Has on GitHub?

Hugging Face has a substantial number of stars on GitHub indicating its popularity and community engagement.

Hugging Face’s Transformers tool has 121,000 stars on GitHub, often seen as a measure of success for developer tools.

GitHub stars comparison

For comparison, PyTorch, Meta’s popular machine-learning framework, has 76,000 stars, and Google’s TensorFlow has 181,000 stars. Snowflake’s Streamlit has 30,500 stars compared to Gradio’s 26,000.

And That’s a Wrap

Here are all the essential statistics you required about Hugging Face.

The remarkable growth of Hugging Face, particularly with their innovative AI models and collaborative platform, is truly impressive.

Now, over to you:

Will Hugging Face sustain this rapid growth momentum? Do you anticipate continued expansion from Hugging Face in the future?

If you have any further inquiries or thoughts on this topic, please feel free to share them in the comments below.

Let’s engage in a discussion about it.

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By Mukund Kapoor Author
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Mukund Kapoor, the enthusiastic author and creator of GreatAIPrompts, is driven by his passion for all things AI. With a special knack for simplifying complex AI concepts, he's committed to helping readers of all levels - be it beginners or experts - navigate the intriguing world of artificial intelligence. Through GreatAIPrompts, Mukund ensures that readers always have access to the most recent and relevant AI news, tools, and insights. His dedication to quality, accuracy, and clarity is what sets his blog apart, making it a reliable go-to source for anyone interested in unlocking the potential of AI. For more information visit Author Bio.
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