Home/Models/Llama/Llama-4-Scout
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Llama-4-Scout

Masukan:$0.216/M
Keluaran:$1.152/M
Llama-4-Scout ist ein universelles Sprachmodell für assistentenähnliche Interaktionen und Automatisierung. Es beherrscht das Befolgen von Anweisungen, Schlussfolgern, Zusammenfassungen und Transformationsaufgaben und kann leichte codebezogene Unterstützung bieten. Typische Anwendungsfälle umfassen Chat-Orchestrierung, wissensangereichertes QA und die Generierung strukturierter Inhalte. Zu den technischen Highlights zählen die Kompatibilität mit Tool-/Funktionsaufrufmustern, retrieval-augmentiertes Prompting und schema-konforme Ausgaben zur Integration in Produkt-Workflows.
Penggunaan komersial
Gambaran Keseluruhan
Ciri-ciri
Harga
API

Technical Specifications of llama-4-scout

ParameterValue
Model Namellama-4-scout
ProviderMeta
Context Window10M tokens
Max Output Tokens128K tokens
Input ModalitiesText, image
Output ModalitiesText
Typical Use CasesAssistant-style interaction, automation, summarization, reasoning, structured generation
Tool / Function CallingSupported
Structured OutputsSupported
StreamingSupported

What is llama-4-scout?

llama-4-scout is a general-purpose language model designed for assistant-style interaction and workflow automation. It is well suited for instruction following, reasoning, summarization, rewriting, extraction, and transformation tasks across a wide range of product and internal tooling scenarios.

It can be used for conversational assistants, knowledge-augmented question answering, structured content generation, and light code-related assistance. In practical deployments, llama-4-scout fits well into systems that need reliable prompt adherence, reusable output structure, and compatibility with orchestration layers.

From an integration perspective, llama-4-scout is especially useful in applications that benefit from tool/function calling patterns, retrieval-augmented prompting, and schema-constrained outputs. This makes it a strong option for teams building automations, internal copilots, support workflows, and content pipelines on top of CometAPI.

Main features of llama-4-scout

  • General-purpose assistant behavior: Designed for multi-turn chat, task execution, and instruction-following workflows in both user-facing and backend applications.
  • Reasoning and summarization: Capable of handling synthesis, summarization, comparative analysis, and prompt-driven transformation tasks.
  • Automation-friendly outputs: Works well in structured pipelines where responses need to be predictable, parseable, and aligned with downstream systems.
  • Tool/function calling compatibility: Supports integration patterns where the model is prompted to call tools, APIs, or external functions as part of a larger agent workflow.
  • Retrieval-augmented prompting: Suitable for RAG-style applications that inject external knowledge, documents, or search results into prompts for grounded answers.
  • Schema-constrained generation: Can be used to produce JSON or other structured formats that map cleanly into application logic and validation layers.
  • Light code assistance: Useful for basic code explanation, transformation, and developer workflow support, especially when paired with clear instructions.
  • Product workflow integration: A practical fit for chat orchestration, support automation, internal knowledge tools, and structured content generation systems.

How to access and integrate llama-4-scout

Step 1: Sign Up for API Key

To start using llama-4-scout, first create an account on CometAPI and generate your API key from the dashboard. After signing in, store the key securely and avoid exposing it in client-side code or public repositories.

Step 2: Send Requests to llama-4-scout API

Once you have an API key, you can call the CometAPI chat completions endpoint and set the model field to llama-4-scout.

curl https://api.cometapi.com/v1/chat/completions \
  -H "Content-Type: application/json" \
  -H "Authorization: Bearer $COMETAPI_API_KEY" \
  -d '{
    "model": "llama-4-scout",
    "messages": [
      {
        "role": "user",
        "content": "Summarize the key points of this document in bullet points."
      }
    ]
  }'
from openai import OpenAI

client = OpenAI(
    api_key="YOUR_COMETAPI_KEY",
    base_url="https://api.cometapi.com/v1"
)

response = client.chat.completions.create(
    model="llama-4-scout",
    messages=[
        {"role": "user", "content": "Generate a structured summary of this support ticket."}
    ]
)

print(response.choices[0].message.content)

Step 3: Retrieve and Verify Results

After sending a request, parse the returned response object and extract the model output from the first choice. You can then validate formatting, enforce schema requirements, and add application-level checks before passing the result into downstream workflows or user-facing interfaces.

Ciri-ciri untuk Llama-4-Scout

Terokai ciri-ciri utama Llama-4-Scout, yang direka untuk meningkatkan prestasi dan kebolehgunaan. Temui bagaimana keupayaan ini boleh memberi manfaat kepada projek anda dan meningkatkan pengalaman pengguna.

Harga untuk Llama-4-Scout

Terokai harga yang kompetitif untuk Llama-4-Scout, direka bentuk untuk memenuhi pelbagai bajet dan keperluan penggunaan. Pelan fleksibel kami memastikan anda hanya membayar untuk apa yang anda gunakan, menjadikannya mudah untuk meningkatkan skala apabila keperluan anda berkembang. Temui bagaimana Llama-4-Scout boleh meningkatkan projek anda sambil mengekalkan kos yang terurus.
Harga Comet (USD / M Tokens)Harga Rasmi (USD / M Tokens)Diskaun
Masukan:$0.216/M
Keluaran:$1.152/M
Masukan:$0.27/M
Keluaran:$1.44/M
-20%

Kod contoh dan API untuk Llama-4-Scout

Akses kod sampel yang komprehensif dan sumber API untuk Llama-4-Scout bagi memperlancar proses integrasi anda. Dokumentasi terperinci kami menyediakan panduan langkah demi langkah, membantu anda memanfaatkan potensi penuh Llama-4-Scout dalam projek anda.

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