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Home›AI Companies›Llama

Llama

Foundation Models

by Meta Platforms🇺🇸

Discover Llama 4's class-leading AI models, Scout and Maverick. Experience top performance, multimodality, low costs, and unparalleled efficiency.

Generates text, translates languages, and assists coding.

Top 1%·24 GitHub stars·753K visits/mo
llama.comPricingX
Llama preview

Overall Score

41

Top 1%

of AI companies

Overall Score

41

Top 1%

GitHub Stars

24

JavaScript · updated 3y ago

Monthly Visits

753K

0m 32s avg visit

Community Rating

3.6

5 reviews

Executive summary

Generates text, translates languages, and assists coding.

Foundation ModelsOpen SourceAPI
  • Operates in foundation models.
  • Roughly 753K monthly visits — meaningful audience reach.
  • Open-source — self-host or use vendor cloud.
  • 210K community saves — strong watchlist signal.

Recent signals

Latest detected signals across traffic, developer activity and community mentions.

  1. HN: "Ollama Raises $65M to Accelerate Open Models"

    2 days ago·11 points · 0 comments
  2. Indexed by indexator.ai

    Mar 11, 2026

Traffic & Engagement

Apr 2026
Monthly Visits
753K
Visit Duration
0m 32s
Pages / Visit
1.83
Bounce Rate
48.9%

AI Referrals

3K / mo

Referral growth vs previous period

  • chatgpt.com+7399%
  • gemini.google.com+2601%

Top Keywords

Apr 2026
KeywordVolume / MoCPC
llama260,470$1.41
llama ai40,790$1.12
llama 322,160$1.39
llama 417,720$1.72
meta llama8,440$2.62

Top Countries

  • 🇺🇸US15.2%
  • 🇮🇳IN11.3%
  • 🇧🇷BR4.1%
  • 🇩🇪DE3.7%
  • 🇨🇳CN2.5%

About Llama

LLaMA is an open source Artificial Intelligence (AI) model designed with flexibility and versatility in mind. Developed to provide users with the capability to fine-tune its underlying algorithms to better align with their requirements, this tool stands out due to its customizability. Additionally, ...

GitHub24 stars
LanguageJavaScript
License

Track Llama

Get notified when score, traffic, GitHub or community signals change.

Recent signals

Latest detected signals across traffic, developer activity and community mentions.

  1. HN: "Ollama Raises $65M to Accelerate Open Models"

    2 days ago·11 points · 0 comments
  2. Indexed by indexator.ai

    Mar 11, 2026

Score

Score breakdown

Overall 41/100

Six signals, each 0–100, blended into the overall by their listed weight.

38·20%
5·10%
17·25%

Community snapshot
Featuredv4by Meta Platforms

YHacker News

Mentions

4

Show HN

1

Total points

12

Comments

0

1 mention in the last 30 days · 4 in 90 days

Faster Gemma 4 on MLX with multi-token prediction

Questions people ask

Generated from public signals and search intent.

Why it ranks

Overall 41/100
  • Traffic is moderate
    38/100
  • GitHub is light
    5/100
  • Community is light
    17/100
  • Momentum is light
    25/100

Each dimension is weighted (traffic 20% · community 25% · growth 15% · momentum 15% · innovation 10%) and combined into the overall.

View full analytics →

Last GitHub push

Apr 2023
  • Featured on Product Hunt

    Oct 2017
  • View all 5 signals →

    Traffic Sources

    Apr 2026
    • search73.0%
    • direct15.1%
    • referrals7.8%
    • social2.6%
    • mail0.1%
    • paid referrals0.1%
    MIT
    Founded2024
    HeadquartersUS
    Websitellama.com

    Last GitHub push

    Apr 2023
  • Featured on Product Hunt

    Oct 2017
  • Launched on Product Hunt

    Oct 2017·96 upvotes · 3 comments
  • 25·15%

    Score trend

    last 90 days

    Traffic

    Traffic & Engagement

    Apr 2026
    Monthly Visits
    753K
    Visit Duration
    0m 32s
    Pages / Visit
    1.83
    Bounce Rate
    48.9%

    Traffic Sources

    Apr 2026
    • search73.0%
    • direct15.1%
    • referrals7.8%
    • social2.6%
    • mail0.1%
    • paid referrals0.1%

    Top Countries

    • 🇺🇸US15.2%
    • 🇮🇳IN11.3%
    • 🇧🇷BR4.1%
    • 🇩🇪DE3.7%
    • 🇨🇳CN2.5%

    Discovery

    AI Referrals

    3K / mo

    Referral growth vs previous period

    • chatgpt.com+7399%
    • gemini.google.com+2601%

    Top Keywords

    Apr 2026
    KeywordVolume / MoCPC
    llama260,470$1.41
    llama ai40,790$1.12
    llama 322,160$1.39
    llama 417,720$1.72
    meta llama8,440$2.62

    Saves

    210.1K

    Rating

    3.6

    5 reviews

    Views

    5.2K

    Category

    Large Language Models

    Large Language Models

    Pros · 17

    • High customizability
    • In-built model distillation
    • Improved efficiency and performance
    • Offers various capacity variants
    • Portable across environments
    • Seamless system integration
    • Open to modifications
    • Versatile usage
    • Scalability in performance
    • Tuned for user needs
    • Different complexity levels
    • Open source transparency

    Cons · 8

    • Complex customization process
    • Difficult distillation functionality
    • Various versions add confusion
    • High system capabilities required
    • Collaborative approach can be chaotic
    • Transparency leads to security concerns
    • Scalability may affect performance
    • Variants could have compatibility issues

    Rating distribution

    5-star
    2
    4-star
    1
    3-star
    1
    2-star
    0
    1-star
    1

    User reviews · 1

    Tealgreen🙏 401@v4Apr 7, 2025

    A huge disappointment. It fails standard tasks that Sonnet 3.5 completes with no issue. I’ll be skipping this version.

    Supported features

    API

    Release history · 6+

    LLaMA v4Apr 5, 2025

    Model Sizes: - Scout: 109B parameters (17B active via MoE) - Maverick: 400B parameters - Behemoth: In training Multimodal Capabilities: Processes text, images, and videos. Architecture: Introduced Mixture-of-Experts (MoE) for computational efficiency. Performance Enhancements: Improved coding, reasoning, and multilingual tasks. Optimized for long-context processing. Applications: General assistant tasks, creative writing, document summarization, and advanced visual comprehension. Licensing: Stricter terms, especially in the EU; special approval required for enterprises with >700M MAUs.

    LLaMA v3.2Sep 25, 2024

    Llama 3.2 builds upon Llama 3.1 by introducing new model sizes—1B, 3B, 11B, and 90B parameters—allowing deployment on devices ranging from mobile to servers. The 11B and 90B models add multimodal capabilities, processing both text and images for tasks like visual reasoning, which Llama 3.1 lacks. Developer experience is enhanced with Llama Stack, offering streamlined development, better tool integration, and flexible deployment options across various programming languages. Overall, Llama 3.2 offers more versatility, multimodal support, and improved developer tools compared to Llama 3.1.

    LLaMA v3.1Jul 23, 2024

    LLaMA 3.1 is an updated version of LLaMA 3, bringing several key enhancements in performance, efficiency, and functionality. It offers improved accuracy and contextual relevance in responses, with better handling of complex queries and specialized tasks compared to LLaMA 3. Safety features in LLaMA 3.1 have been further advanced, incorporating enhanced mechanisms to minimize the risk of generating harmful or biased content. The model aligns more closely with ethical standards, ensuring that its outputs are even more reliable and responsible. LLaMA 3.1 benefits from an upgraded training dataset, providing access to a broader and more current range of information. This results in more precise and relevant answers, improving the quality of interactions and content creation beyond what was achieved with LLaMA 3. The user experience is smoother with LLaMA 3.1, featuring more natural conversation patterns and improved engagement. Enhanced support for diverse applications, including more sophisticated multimodal tasks, makes it a more versatile tool compared to LLaMA 3. Overall, LLaMA 3.1 builds on the foundation of LLaMA 3 with significant improvements in accuracy, safety, and usability, making it a more advanced and effective AI model.

    LLaMA v3Apr 18, 2024

    LLaMA 3 is a significant upgrade over LLaMA 2, offering notable improvements in performance, efficiency, and versatility. It provides more accurate and contextually nuanced responses, with enhanced capabilities in handling complex tasks and specialized domains compared to LLaMA 2. Safety features in LLaMA 3 have been further refined, reducing the risk of generating harmful or biased content. The model is better aligned with ethical standards and incorporates advanced mechanisms to ensure that its outputs are both reliable and responsible. LLaMA 3 benefits from an even more updated training dataset, which allows it to draw from a wider and more current range of information. This results in more precise, relevant, and up-to-date answers, significantly enhancing the overall quality of interactions and content generation. The user experience with LLaMA 3 is markedly improved, featuring smoother and more natural conversation patterns along with greater engagement. The model offers enhanced support for diverse applications, including more advanced multimodal tasks and integration with other data types. Overall, LLaMA 3 builds on the advancements of LLaMA 2 with substantial enhancements in accuracy, safety, and usability, making it a more advanced and capable AI tool for a wide range of applications.

    Q&A · 20

    What is Llama 3.1?

    Llama 3.1 is an open source Artificial Intelligence (AI) model designed for flexibility and versatility. Offering a range of functionalities, this tool allows for fine-tuning of its underlying algorithms to better meet user requirements. With the aid of distillation functionality, it supports simplification of complex AI models into more manageable sizes for improved efficiency and performance. Further, it is available in multiple variants and can be deployed across various environments with ease.

    How customizable is Llama 3.1?

    Llama 3.1 stands out with its high level of customizability. Users have the ability to fine-tune its underlying algorithms to better suit their needs. Additionally, its open-source nature enables the exploration, modification, and enhancement of its algorithms, fostering a collaborative approach towards AI development.

    What is the significance of distillation in Llama 3.1?

    Distillation in Llama 3.1 is a significant feature that aids in converting complex AI models into more manageably sized forms. This process improves efficiency and performance by delivering the same or similar outputs but with less computational requirements.

    What types of functionalities does Llama 3.1 offer?

    Llama 3.1 offers a range of functionalities to cater to different user needs and system capabilities. It provides capacity for fine-tuning algorithms, distilling complex AI models, integrating seamlessly with existing systems, and having the flexibility to be deployed across various environments. Moreover, it is available in different variants which extend its versatility and scalability.

    How does Llama 3.1 enhance AI efficiency and performance?

    Llama 3.1 enhances AI efficiency and performance via its distillation functionality, which simplifies complex AI models into smaller, more manageable sizes. This process minimizes computational requirements while maintaining the quality of outputs, thus fostering greater efficiency and high-performance results.

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    AIs built with LLaMA · 1

    Collate

    Community vote

    How do you feel about this company?

    Your vote helps improve ranking signals.

    6 points · 0 comments · by

    GitHub

    Repos

    23

    Total stars

    26

    Type

    User

    llama/roadli

    Find fastest route via a place.

    24174 issues· JavaScript· MIT· updated 3y ago

    GitHub commits — last 52 weeks

    llama/roadli · Jul 13, 2025 – Jul 11, 2026

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    Top 10 in Foundation Models.

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