We’re excited to share the primary fashions within the Llama 4 herd can be found at present in Azure AI Foundry and Azure Databricks, which allows individuals to construct extra customized multimodal experiences. These fashions from Meta are designed to seamlessly combine textual content and imaginative and prescient tokens right into a unified mannequin spine. This progressive method permits builders to leverage Llama 4 fashions in functions that demand huge quantities of unlabeled textual content, picture, and video knowledge, setting a brand new precedent in AI improvement.
We’re excited to share the primary fashions within the Llama 4 herd can be found at present in Azure AI Foundry and Azure Databricks, which allows individuals to construct extra customized multimodal experiences. These fashions from Meta are designed to seamlessly combine textual content and imaginative and prescient tokens right into a unified mannequin spine. This progressive method permits builders to leverage Llama 4 fashions in functions that demand huge quantities of unlabeled textual content, picture, and video knowledge, setting a brand new precedent in AI improvement.
As we speak, we’re bringing Meta’s Llama 4 Scout and Maverick fashions into Azure AI Foundry as managed compute choices:
- Llama 4 Scout Fashions
- Llama-4-Scout-17B-16E
- Llama-4-Scout-17B-16E-Instruct
- Llama 4 Maverick Fashions
- Llama 4-Maverick-17B-128E-Instruct-FP8
Azure AI Foundry is designed for multi-agent use circumstances, enabling seamless collaboration between totally different AI brokers. This opens up new frontiers in AI functions, from advanced problem-solving to dynamic activity administration. Think about a crew of AI brokers working collectively to investigate huge datasets, generate artistic content material, and supply real-time insights throughout a number of domains. The chances are infinite.

To accommodate a variety of use circumstances and developer wants, Llama 4 fashions are available each smaller and bigger choices. These fashions combine mitigations at each layer of improvement, from pre-training to post-training. Tunable system-level mitigations defend builders from adversarial customers, empowering them to create useful, secure, and adaptable experiences for his or her Llama-supported functions.
Llama 4 Scout fashions: Energy and precision
We’re sharing the primary fashions within the Llama 4 herd, which can allow individuals to construct extra customized multimodal experiences. In response to Meta, Llama 4 Scout is without doubt one of the greatest multimodal fashions in its class and is extra highly effective than Meta’s Llama 3 fashions, whereas becoming in a single H100 GPU. And Llama4 Scout will increase the supported context size from 128K in Llama 3 to an industry-leading 10 million tokens. This opens up a world of prospects, together with multi-document summarization, parsing intensive consumer exercise for customized duties, and reasoning over huge codebases.
Focused use circumstances embody summarization, personalization, and reasoning. Because of its lengthy context and environment friendly measurement, Llama 4 Scout shines in duties that require condensing or analyzing intensive data. It could possibly generate summaries or stories from extraordinarily prolonged inputs, personalize its responses utilizing detailed user-specific knowledge (with out forgetting earlier particulars), and carry out advanced reasoning throughout massive information units.
For instance, Scout might analyze all paperwork in an enterprise SharePoint library to reply a selected question or learn a multi-thousand-page technical guide to offer troubleshooting recommendation. It’s designed to be a diligent “scout” that traverses huge data and returns the highlights or solutions you want.
Llama 4 Maverick fashions: Innovation at scale
As a general-purpose LLM, Llama 4 Maverick incorporates 17 billion lively parameters, 128 consultants, and 400 billion whole parameters, providing top quality at a lower cost in comparison with Llama 3.3 70B. Maverick excels in picture and textual content understanding with assist for 12 languages, enabling the creation of refined AI functions that bridge language obstacles. Maverick is right for exact picture understanding and artistic writing, making it well-suited for normal assistant and chat use circumstances. For builders, it affords state-of-the-art intelligence with excessive pace, optimized for greatest response high quality and tone.
Focused use circumstances embody optimized chat eventualities that require high-quality responses. Meta fine-tuned Llama 4 Maverick to be a superb conversational agent. It’s the flagship chat mannequin of the Meta Llama 4 household—consider it because the multilingual, multimodal counterpart to a ChatGPT-like assistant.
It’s significantly well-suited for interactive functions:
- Buyer assist bots that want to know photos customers add.
- AI artistic companions that may focus on and generate content material in numerous languages.
- Inner enterprise assistants that may assist workers by answering questions and dealing with wealthy media enter.
With Maverick, enterprises can construct high-quality AI assistants that converse naturally (and politely) with a worldwide consumer base and leverage visible context when wanted.

Architectural improvements in Llama 4: Multimodal early-fusion and MoE
In response to Meta, two key improvements set Llama 4 aside: native multimodal assist with early fusion and a sparse Combination of Specialists (MoE) design for effectivity and scale.
- Early-fusion multimodal transformer: Llama 4 makes use of an early fusion method, treating textual content, photos, and video frames as a single sequence of tokens from the beginning. This allows the mannequin to know and generate numerous media collectively. It excels at duties involving a number of modalities, resembling analyzing paperwork with diagrams or answering questions on a video’s transcript and visuals. For enterprises, this enables AI assistants to course of full stories (textual content + graphics + video snippets) and supply built-in summaries or solutions.
- Reducing-edge Combination of Specialists (MoE) structure: To attain good efficiency with out incurring prohibitive computing bills, Llama 4 makes use of a sparse Combination of Specialists (MoE) structure. Primarily, because of this the mannequin contains quite a few professional sub-models, known as “consultants,” with solely a small subset lively for any given enter token. This design not solely enhances coaching effectivity but in addition improves inference scalability. Consequently, the mannequin can deal with extra queries concurrently by distributing the computational load throughout numerous consultants, enabling deployment in manufacturing environments with out necessitating massive single-instance GPUs. The MoE structure permits Llama 4 to broaden its capability with out escalating prices, providing a big benefit for enterprise implementations.
Dedication to security and greatest practices
Meta constructed Llama 4 with the most effective practices outlined of their Developer Use Information: AI Protections. This consists of integrating mitigations at every layer of mannequin improvement from pre-training to post-training and tunable system-level mitigations that defend builders from adversarial assaults. And, by making these fashions accessible in Azure AI Foundry, they arrive with confirmed security and safety guardrails builders come to count on from Azure.
We empower builders to create useful, secure, and adaptable experiences for his or her Llama-supported functions. Discover the Llama 4 fashions now within the Azure AI Foundry Mannequin Catalog and in Azure Databricks and begin constructing with the most recent in multimodal, MoE-powered AI—backed by Meta’s analysis and Azure’s platform energy.
The supply of Meta Llama 4 on Azure AI Foundry and thru Azure Databricks affords prospects unparalleled flexibility in selecting the platform that most accurately fits their wants. This seamless integration permits customers to harness superior AI capabilities, enhancing their functions with highly effective, safe, and adaptable options. We’re excited to see what you construct subsequent.