AIモデルインテリジェンス

Llama 3.3 Nemotron Super 49B v1.5

nvidia/llama-3-3-nemotron-super-49b-v1-5

提供: NVIDIA · ファミリー: nemotron · リリース 2025-08-08 · 知識カットオフ: 2023-12

$0.050
入力 / 100万トークン
$0.250
出力 / 100万トークン
131K
コンテキスト長
131K
最大出力

Prices in USD per 1M tokens. Unknown means the provider does not publish per-token pricing.

機能一覧

ツール呼び出し推論? 構造化出力添付オープンウェイト温度制御
モダリティ: 入力 text · 出力 text

Model fit scores

0–100 · higher is better

These scores reward declared capabilities, context size, price and provider availability — they are not benchmark results. Use them as a directional signal alongside your own evaluation.

Coding55
  • Tool calling40/40
  • Structured output0/20
  • Reasoning10/10
  • Context window (100K → 1M)2/20
  • Provider availability3/10
Agents68
  • Tool calling35/35
  • Structured output0/25
  • Reasoning15/15
  • Output token limit15/15
  • Provider availability3/10
JSON / structured output49
  • Structured output / JSON mode0/50
  • Tool calling20/20
  • Temperature control10/10
  • Price-friendly for high-volume19/20
Cost efficiency75
  • Headline price (log-scaled)75/95
  • Has prompt-cache pricing0/5
Long context46
  • Context window (100K → 2M)36/90
  • Has published price for full window10/10
Production-readiness71
  • Number of independent providers15/40
  • Has published per-token price20/20
  • Context window ≥ 8K15/15
  • No data inconsistencies across providers6/10
  • Official model (not derivative)15/15

Cost Efficiency Index

Open full calculator →

Estimated cost using the recommended provider's headline rate. Each scenario fixes average input/output tokens — the assumptions are shown in the third column.

ScenarioCostAssumption
RAG answer
per 1,000 RAG answers
$0.38
< $0.01 per request
5K input tokens (query + 4 retrieved chunks of ~1K each) and a 500-token answer. Typical SaaS knowledge-base bot.
Support ticket triage
per 10,000 tickets
$0.75
< $0.01 per request
1K input tokens (ticket body + system prompt) and a 100-token JSON classification reply. High-volume customer support.
Data extraction
per 1,000 documents
$0.23
< $0.01 per request
2K input tokens (a single document page) and a 500-token JSON extraction. ETL / invoice / form pipelines.
Code review
per 1,000 PRs
$0.65
< $0.01 per request
8K input tokens (diff + surrounding files) and a 1K-token review comment. PR-bot workloads.
Agent step
per 1,000 steps
$0.75
< $0.01 per request
12K input tokens (long-running tool history) and a 600-token tool-call decision. Cost per agent step.

料金詳細

推奨料金 (提供元): nano-gpt · nvidia/Llama-3_3-Nemotron-Super-49B-v1_5

$0.050
入力
$0.250
出力

最安プロバイダー: nvidia · Unknown 入力 + Unknown 出力

3 か所で利用可能

プロバイダープロバイダーモデルID入力 / 1M出力 / 1Mコンテキストリリース日
Nvidia
nvidia
nvidia/llama-3_3-nemotron-super-49b-v1_5UnknownUnknown131K2025-07-25
NanoGPT
nano-gpt
nvidia/Llama-3_3-Nemotron-Super-49B-v1_5$0.050$0.250128K2025-08-08
Kilo Gateway
kilo
nvidia/llama-3.3-nemotron-super-49b-v1.5$0.100$0.400131K2025-03-16

プロバイダー間でデータに差異

  • context_window varies: 128000, 131072
  • release_date varies (span 145d): 2025-03-16, 2025-07-25, 2025-08-08

プロバイダーごとに本モデルの値が異なります。上部の「主要数値」は代表的プロバイダーを使用しています。詳細は表をご確認ください。

Frequently asked questions

How much does Llama 3.3 Nemotron Super 49B v1.5 cost?

Llama 3.3 Nemotron Super 49B v1.5 costs $0.050 per 1M input tokens and $0.250 per 1M output tokens, sourced from nano-gpt. Cache reads, audio tokens and >200K-context tiers (where applicable) are listed in the Pricing detail block above.

What is the context window of Llama 3.3 Nemotron Super 49B v1.5?

Llama 3.3 Nemotron Super 49B v1.5 has a context window of 131K tokens, with a max output of 131K tokens per reply. This is the total combined size of prompt + completion.

Does Llama 3.3 Nemotron Super 49B v1.5 support tool calling?

Yes. Llama 3.3 Nemotron Super 49B v1.5 supports tool calling (function calling). This makes it suitable for production agent and automation workloads where the model has to invoke external functions reliably.

Does Llama 3.3 Nemotron Super 49B v1.5 support structured output / JSON mode?

Support for structured output / JSON-schema-constrained decoding is not reported for Llama 3.3 Nemotron Super 49B v1.5 in our data source. Verify with NVIDIA's official documentation before relying on it in production.

Can Llama 3.3 Nemotron Super 49B v1.5 accept image input?

No. Llama 3.3 Nemotron Super 49B v1.5 only accepts text as input. If you need image input, see our /capabilities/vision list for current vision-capable models.

Is Llama 3.3 Nemotron Super 49B v1.5 open-weight?

Yes. Llama 3.3 Nemotron Super 49B v1.5's weights are publicly available, so you can self-host or fine-tune. Note that open weights ≠ open source — the training data and code are typically not released.

What are the best alternatives to Llama 3.3 Nemotron Super 49B v1.5?

If Llama 3.3 Nemotron Super 49B v1.5 doesn't fit, consider Nemotron 3 Super, nemotron-3-nano-30b-a3b, nvidia-nemotron-nano-9b-v2. Each one targets the same use case — see the Related links below for direct head-to-head pages.

Where does this data come from?

All numbers come from the public models.dev API and are normalised into a single canonical model record. We re-pull daily and write any changes (price, context, capability) to the /changelog page.

More NVIDIA models

Capability lists this model is in

最終更新:

Data is sourced from models.dev and normalized for comparison. Prices and capabilities may change. Always verify critical production decisions with the provider's official documentation.