Learnlm 1.5 Pro Experimental

Google AI chat

Learnlm 1.5 Pro Experimental is a Google AI chat model.It supports a 32,767-token context windowwith up to 8,192 output tokens. Capabilities include function calling, vision. Route Learnlm 1.5 Pro Experimental via Future AGI's Agent Command Center for unified observability, caching, and 15 routing strategies including cost-optimized fallback.

Pricing source: unknown Last verified: May 12, 2026 View source ↗
Pricing not yet public

We don't have verified per-token pricing for Learnlm 1.5 Pro Experimental yet. If you have a source from Google AI's documentation, help us add it — your submission gets reviewed within 48 hours.

Pricing

Per-token rates, expressed in USD per 1M tokens. Verified May 12, 2026.

0 0
Input
Output

Limits

Context window
32,767 tokens
Max input
32,767 tokens
Max output
8,192 tokens
Modalities
vision, text

Capabilities

  • Function calling ✓ supported
  • Parallel tool calls — not advertised
  • Vision input ✓ supported
  • Audio input — not advertised
  • Audio output — not advertised
  • PDF input — not advertised
  • Streaming ✓ supported
  • Structured output ✓ supported
  • Prompt caching — not advertised
  • Reasoning — not advertised

Where it's strong

  • +agentic workflows that depend on reliable tool calls
  • +document, chart, and screenshot understanding

Watch out for

  • !limited context — 32,767-token window is in the bottom quartile; not ideal for long documents or large RAG

Benchmarks pending

We haven't logged public benchmark scores for Learnlm 1.5 Pro Experimental yet. Have one to contribute? Submit a source — citations help us prioritise.

Try it

Call Learnlm 1.5 Pro Experimental via Agent Command Center

One OpenAI-compatible endpoint. Routing, fallback, semantic caching, guardrails, and cost tracking come along for the ride. First 100K requests + 100K cache hits free every month.

SDK
Native Future AGI client (agentcc / @agentcc/client). Per-call metadata — provider, cost, latency, cache hit, request id — is returned on x-agentcc-* response headers, so any HTTP client can read it.
# Learnlm 1.5 Pro Experimental via the Agent Command Center Python SDK
# pip install agentcc
import os
from agentcc import AgentCC

client = AgentCC(
    api_key=os.environ["AGENTCC_API_KEY"],   # from app.futureagi.com → Settings → API Keys
    base_url="https://gateway.futureagi.com/v1",
)

resp = client.chat.completions.create(
    model="google/learnlm-1-5-pro-experimental",
    messages=[{"role": "user", "content": "Hello, Learnlm 1.5 Pro Experimental!"}],
)

print(resp.choices[0].message.content)
print(f"Tokens: {resp.usage.total_tokens}")

# Per-call gateway metadata is returned on x-agentcc-* response headers.
# When you need it programmatically, use .with_raw_response to get them:
raw = client.chat.completions.with_raw_response.create(
    model="google/learnlm-1-5-pro-experimental",
    messages=[{"role": "user", "content": "Same call, but I want the headers."}],
)
print("Provider:", raw.headers.get("x-agentcc-provider"))
print("Latency:", raw.headers.get("x-agentcc-latency-ms"), "ms")
print("Cost:   ", raw.headers.get("x-agentcc-cost"), "USD")
print("Cache:  ", raw.headers.get("x-agentcc-cache"))
Set AGENTCC_API_KEY with a key fromapp.futureagi.com.Gateway docs ↗

Compare with similar models

Learnlm 1.5 Pro Experimental doesn't have a public Arena ELO score yet, so we group by provider only — quality-tier comparisons need a benchmark.

FAQ

How much does Learnlm 1.5 Pro Experimental cost?

Public per-token pricing for Learnlm 1.5 Pro Experimental is not yet published. Submit a source on this page to help us add it.

What is the context window of Learnlm 1.5 Pro Experimental?

Learnlm 1.5 Pro Experimental supports a 32,767-token context window with up to 8,192 output tokens.

Does Learnlm 1.5 Pro Experimental support function calling?

Yes — Learnlm 1.5 Pro Experimental supports function (tool) calling.

Is Learnlm 1.5 Pro Experimental good for production?

Learnlm 1.5 Pro Experimental is well-suited for agentic workflows that depend on reliable tool calls and document, chart, and screenshot understanding. Consider alternatives if you need limited context — 32,767-token window is in the bottom quartile; not ideal for long documents or large RAG.

How can I route to Learnlm 1.5 Pro Experimental with fallback?

Use Agent Command Center: a single OpenAI-compatible endpoint that supports cost-optimized routing, latency-aware retries, model fallback, and shadow traffic. Configure once, swap models without app changes.

Useful links for Learnlm 1.5 Pro Experimental

Official sources, independent benchmarks, and pricing aggregators — no random search-engine guesses.