Fugu Ultra API1M context
Fugu Ultra is the higher-performance model in Sakana AI's Fugu family.
Pricing & specs mirror our live pricing as of July 2026 (pay-as-you-go).
What is Fugu Ultra?
Fugu Ultra is the higher-performance model in Sakana AI's Fugu family. Rather than a single monolithic model, Fugu is a learned multi-agent orchestration system: a language model trained to route...
Fugu Ultra pricing
Pay-as-you-go on DataLLM Lab — these are our live list prices (identical to the pricing page):
| Model | Input / 1M | Output / 1M | Cache read | Cache write | Context |
|---|---|---|---|---|---|
| Fugu Ultra | $5.00 | $30.00 | $0.50 | — | 1M |
On output price, Fugu Ultra is cheaper than 5% of the 309 models in the catalog.
What Fugu Ultra costs per month
| Workload | Tokens in / out (monthly) | Est. cost |
|---|---|---|
| Support chatbot | 40M / 12M | $560 |
| RAG / knowledge base | 200M / 20M | $1,600 |
| Coding agent | 80M / 25M | $1,150 |
| Batch extraction | 150M / 8M | $990 |
| Content generation | 20M / 40M | $1,300 |
Estimate your own monthly cost
Cost = input price × input volume + output price × output volume. The same five workloads run on every model page, so any two compare directly.
Fugu Ultra vs alternatives
| Model | Input / 1M | Output / 1M | Context | Our test |
|---|---|---|---|---|
| Fugu Ultra | $5.00 | $30.00 | 1M | — |
| GPT-4 Turbo | $10.00 | $30.00 | 128K | — |
| GPT-4 Turbo Preview | $10.00 | $30.00 | 128K | — |
| GPT-5.5 | $5.00 | $30.00 | 1M | — |
When not to use Fugu Ultra
- It is premium-priced (output cheaper than only 5% of the catalog) — for routine work a cheaper model likely does the job.
- It is served by a single provider, so there is less failover headroom during an outage.
Specs
| Model ID | sakana/fugu-ultra |
| Modality | text+image->text (input: text, image) |
| Context window | 1,000,000 tokens |
| Max output | 128,000 tokens |
| Tool / function calling | ✅ Yes |
| Structured output (JSON) | ✅ Yes |
| Released | 2026-06-24 |
| Open weights | — (hosted API only) |
How to call Fugu Ultra
from openai import OpenAI
client = OpenAI(base_url="https://api.datallmlab.com/v1", api_key="YOUR_DATALLM_LAB_KEY")
resp = client.chat.completions.create(
model="sakana/fugu-ultra",
messages=[{"role": "user", "content": "Hello"}],
# supports tools=[...] and tool_choice
)
print(resp.choices[0].message.content)curl https://api.datallmlab.com/v1/chat/completions \
-H "Authorization: Bearer YOUR_KEY" \
-H "Content-Type: application/json" \
-d '{"model":"sakana/fugu-ultra","messages":[{"role":"user","content":"Hello"}]}'import OpenAI from "openai";
const client = new OpenAI({ baseURL: "https://api.datallmlab.com/v1", apiKey: process.env.DATALLM_KEY });
const r = await client.chat.completions.create({
model: "sakana/fugu-ultra",
messages: [{ role: "user", content: "Hello" }],
});
console.log(r.choices[0].message.content);The same key routes Fugu Ultra and 300+ other models — switch models by changing one string. How OpenAI-compatible APIs work.
Prompting tips for Fugu Ultra
- State the goal, not every step. Fugu Ultra reasons internally — give it the objective, constraints and success criteria and let it plan the approach; over-scripting each step tends to lower quality. Turn effort up for hard problems.
- Huge 1M context — but anchor the ask. You can paste whole documents or codebases; models attend most to the start and end, so put the key instruction at the top and restate it after long inputs.
- It reads images. Send image parts alongside your text and ask for specific outputs (named JSON fields, a table, "what changed") rather than "describe this".
- Give it real tools. Pass a
tools=[...]schema instead of asking it to "pretend" — let Fugu Ultra emit tool calls, execute them, and feed results back for the next turn. - Constrain JSON with a schema. Use
response_format/ structured outputs rather than "reply in JSON" to get valid, parseable objects every time.
Tips are derived from Fugu Ultra's actual capabilities — context window, tool & JSON support, modality and price tier — not generic advice.
Open-source tools for Fugu Ultra
Popular open-source frameworks and agents to build with Fugu Ultra over the API — star counts pulled from GitHub (July 2026).
Listed by GitHub stars; inclusion is by ecosystem relevance (agent frameworks, SDKs and gateways), not affiliation. Stars change — see each repo for current numbers.
Migrating to Fugu Ultra
Coming from OpenAI or another gateway? On an OpenAI-compatible setup the only changes are base_url → https://api.datallmlab.com/v1 and model → sakana/fugu-ultra. Messages, streaming, tool calls and the rest of your code stay the same. Routing & failover guide.
Rate limits & reliability
Rate limits here are the DataLLM Lab gateway's, not the upstream vendor's. On 429 (rate limited) or 503 (provider busy), retry with exponential backoff. See the error-code guide and failover setup.
Related reading
Call Fugu Ultra with one key
300+ models behind one OpenAI-compatible endpoint — better prices, better uptime, no subscriptions.
Get an API keyCompare pricingFrequently asked questions
What is Fugu Ultra?
Fugu Ultra is the higher-performance model in Sakana AI's Fugu family. It accepts text, image input with a 1M-token context window and was released on 2026-06-24. On DataLLM Lab it is callable through one OpenAI-compatible endpoint.
How much does Fugu Ultra cost?
On DataLLM Lab it is $5.00 per 1M input tokens and $30.00 per 1M output tokens, with cached input at $0.50/1M — cheaper than about 5% of the 309-model catalog on output price. Pay-as-you-go, no subscription.
What is the context window of Fugu Ultra?
1M tokens, with up to 128K max output tokens.
Is Fugu Ultra open source?
No open weights are published — it is available through hosted API access only.
How do I call the Fugu Ultra API?
Point any OpenAI SDK at https://api.datallmlab.com/v1 and set model to "sakana/fugu-ultra". One DataLLM Lab key routes this model and 300+ others; no code changes beyond the base URL and model string.
What are good alternatives to Fugu Ultra?
Close options by price and capability include GPT-4 Turbo, GPT-4 Turbo Preview, GPT-5.5 — all callable with the same DataLLM Lab key.