Google: Nano Banana Pro (Gemini 3 Pro Image Preview) vs Google: Gemini 3.1 Pro Preview

A head-to-head comparison of Google: Nano Banana Pro (Gemini 3 Pro Image Preview) (google) and Google: Gemini 3.1 Pro Preview (google) on OrcaRouter — pricing, context window, latency, throughput and benchmark quality, side by side, so you can pick the right model for your workload.

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Google: Nano Banana Pro (Gemini 3 Pro Image Preview)
$0.00 /M · p50 4290ms
Google: Gemini 3.1 Pro Preview
$2.00 /M · p50 6488ms

Model comparison

Pricing, context, latency, throughput and quality for Google: Nano Banana Pro (Gemini 3 Pro Image Preview) and Google: Gemini 3.1 Pro Preview.
MetricGoogle: Nano Banana Pro (Gemini 3 Pro Image Preview)Google: Gemini 3.1 Pro PreviewTakeaway
Input $/M$2.00
Output $/M$12.00
Context66K1MGoogle: Gemini 3.1 Pro Preview accepts a 94% larger context window than Google: Nano Banana Pro (Gemini 3 Pro Image Preview).
p50 latency4290 ms6488 msGoogle: Nano Banana Pro (Gemini 3 Pro Image Preview) responds 34% faster than Google: Gemini 3.1 Pro Preview at the median.
Throughput749 tok/s
Quality5.010.0Google: Gemini 3.1 Pro Preview scores 50% higher than Google: Nano Banana Pro (Gemini 3 Pro Image Preview) on the composite quality index.

For latency-sensitive workloads, Google: Nano Banana Pro (Gemini 3 Pro Image Preview) returns the first token sooner. On benchmark quality, Google: Gemini 3.1 Pro Preview leads the composite index.

Both Google: Nano Banana Pro (Gemini 3 Pro Image Preview) and Google: Gemini 3.1 Pro Preview are available through the same OrcaRouter endpoint at provider cost with zero token markup, so switching between them is a one-line change and the numbers below are what you actually pay. This comparison pulls live pricing, the published context window, and OrcaRouter's own latency and throughput measurements so you can weigh cost against performance for your specific workload rather than relying on a vendor's headline benchmark. The right choice almost always depends on the shape of your traffic — prompt length, how much text you generate, how latency-sensitive your users are, and how hard the reasoning is — so the sections below break the decision down one dimension at a time and end with a concrete recommendation. Wherever a metric is missing for one of the two models, that row is left out rather than guessed, so every claim here is backed by a real number.

Pricing & cost analysis

One or both of these models does not expose per-token pricing here (it may be a free-tier, per-call, or not-yet-priced model), so treat the cost columns as indicative and confirm the live rate on each model's own page before you budget against it.

Google: Nano Banana Pro (Gemini 3 Pro Image Preview) accepts up to 66K tokens of context and Google: Gemini 3.1 Pro Preview accepts 1M. The context window caps how much source material — documents, code, prior conversation — you can send in a single request. A larger window lets you skip chunking and retrieval plumbing for long inputs, but you still pay input-token rates for everything you send, so a bigger window is a capability, not a discount. Match the window to the longest single request your workload realistically produces rather than the largest number on the page. Also keep in mind that quality can degrade toward the end of a very long context on any model, so a large window is best treated as headroom for occasional long inputs rather than a licence to stuff every request to the limit.

Latency and throughput decide how the model feels in production. Median (p50) response latency is how long a typical request waits before the first token; throughput (tokens per second) sets how fast the answer streams once it starts. For interactive chat and agent loops, low p50 latency matters most because the user is waiting on the first token; for batch generation and long-form output, throughput dominates the wall-clock time because the answer is long. The 7-day trend charts above show whether each model's latency is stable or drifting, which a single headline number hides — a model with a great average but a noisy tail can still miss a strict p95 SLA. If your product has a latency budget, read both the median and the shape of the curve, and remember that end-to-end latency also includes your network hop and any retrieval or tool calls you make around the model.

Benchmark scores approximate capability but are not a substitute for testing on your own prompts. The composite indices shown here aggregate multiple public evaluations, and the percentile marks where each model lands against every comparable model in the catalog — a useful shortlist signal, not a guarantee for your task. A model that leads on a general intelligence index can still trail on your domain (coding, extraction, multilingual, long-context reasoning), so use the benchmarks to narrow the field, then run both models on a representative slice of your traffic. Pay attention to the specific index that matches your use case rather than the top-line number: a coding-heavy product should weight the coding index, a research assistant the reasoning index. Benchmarks also age as models are updated, so treat them as a starting hypothesis you confirm with your own evaluation set.

If cost is the binding constraint, start with the cheaper model on your actual input-to-output mix and only move up if quality misses. If responsiveness is the priority — user-facing chat, agents, anything where someone is waiting — weight p50 latency and throughput over a small price gap. If you are pushing the hardest reasoning, coding, or long-context work, let the benchmark and context-window winner lead and accept the higher rate where it pays for itself. Because both models sit behind the same API, the low-risk move is to route a fraction of real traffic to each and compare cost, latency, and answer quality on your own prompts before committing. A common pattern is to tier: send the bulk of easy, high-volume requests to the cheaper or faster model and reserve the stronger model for the requests that actually need it, which captures most of the quality upside at a fraction of the cost. Whichever you choose, keep the switch reversible — with a one-line model-name change you can move traffic back the moment the numbers or your requirements shift.

Performance comparison

Google: Nano Banana Pro (Gemini 3 Pro Image Preview)
Google: Gemini 3.1 Pro Preview
55.5
AA Coding
Better than 75% of models compared
#25 of 106
57.2
AA Intelligence
Better than 80% of models compared
#21 of 110

Across the last 7 days, Google: Nano Banana Pro (Gemini 3 Pro Image Preview) holds the lower median response latency.

Community head-to-head (Design Arena)Source: Design Arena Elo
Google: Nano Banana Pro (Gemini 3 Pro Image Preview)1283Elo rating66.2% win rate
Google: Gemini 3.1 Pro Preview1346Elo rating70.3% win rate

In head-to-head community tournaments, Google: Gemini 3.1 Pro Preview holds the higher Elo rating (1346 versus 1283), meaning it wins more direct match-ups against comparable models.

Google: Nano Banana Pro (Gemini 3 Pro Image Preview) vs Google: Gemini 3.1 Pro Preview FAQ

Which has the larger context window, Google: Nano Banana Pro (Gemini 3 Pro Image Preview) or Google: Gemini 3.1 Pro Preview?
Google: Gemini 3.1 Pro Preview accepts the larger context window, so it fits longer documents and conversations in a single request.
Which is faster, Google: Nano Banana Pro (Gemini 3 Pro Image Preview) or Google: Gemini 3.1 Pro Preview?
Google: Nano Banana Pro (Gemini 3 Pro Image Preview) has the lower median (p50) response latency in OrcaRouter's live measurements.
Which scores higher on benchmarks, Google: Nano Banana Pro (Gemini 3 Pro Image Preview) or Google: Gemini 3.1 Pro Preview?
Google: Gemini 3.1 Pro Preview leads on the composite quality index shown above, but benchmark leads don't always transfer to a specific domain — validate on your own prompts before standardizing.
Which wins more head-to-head match-ups, Google: Nano Banana Pro (Gemini 3 Pro Image Preview) or Google: Gemini 3.1 Pro Preview?
Google: Gemini 3.1 Pro Preview holds the higher Design Arena Elo rating (1346 versus 1283), so it wins more blind head-to-head comparisons against comparable models.
Should I use Google: Nano Banana Pro (Gemini 3 Pro Image Preview) or Google: Gemini 3.1 Pro Preview?
Choose Google: Nano Banana Pro (Gemini 3 Pro Image Preview) or Google: Gemini 3.1 Pro Preview based on your priority: cost, context window, latency, or benchmark quality. The table above shows which model wins on each, so match the winner to the dimension that matters most for your workload.
How are Google: Nano Banana Pro (Gemini 3 Pro Image Preview) and Google: Gemini 3.1 Pro Preview billed on OrcaRouter?
Both are billed at the upstream provider's rate with zero token markup — you pay the same per-token price you would pay the provider directly, through one OrcaRouter API key and endpoint.
Can I call both Google: Nano Banana Pro (Gemini 3 Pro Image Preview) and Google: Gemini 3.1 Pro Preview with the same code?
Yes. Both are exposed through OrcaRouter's OpenAI-compatible API, so you change only the model name to route between them — no SDK swap, no separate credentials.

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