Head to head
DeepSeek V4 Pro vs Gemini 3.5 Flash
DeepSeek V4 Pro (DeepSeek) and Gemini 3.5 Flash (Google) compared on intelligence, speed, context, and price — and which to choose. Both run on just4o.chat from one chat.
| Metric | DeepSeek V4 Pro | Gemini 3.5 Flash |
|---|---|---|
| Intelligence (AA index) | 52 | 55 ✓ |
| Output speed (tokens/sec) | 79.8 | 280 ✓ |
| Context window | 1.0M | 1.0M |
| Max output | 384K ✓ | 66K |
| Input price / 1M | $1.74 | $1.5 ✓ |
| Output price / 1M | $3.48 ✓ | $9 |
| Released | 2026-04-24 | 2026-05 |
Choose DeepSeek V4 Pro if you want…
- Lower price ($2.17 / 1M blended)
Choose Gemini 3.5 Flash if you want…
- Higher intelligence (Artificial Analysis index 55)
- Faster output (~280 tokens/sec)
DeepSeek V4 Pro
DeepSeek V4 Pro makes a compelling case that frontier-class coding performance and a one-million-token context window do not have to cost frontier-class money. At roughly $0.18 per million tokens blended, it runs 10x cheaper on input and 30x cheaper on output than comparable models, while posting an 80.6% score on SWE-Bench Verified — the highest reported among open-weight models at launch. Users consistently praise its agentic coding ability, noting it competes with or beats larger closed models on multi-step coding tasks, and its hybrid attention architecture handles full-codebase analysis without collapsing under the token budget. The MIT license is a genuine differentiator: weights are freely available for self-hosting, fine-tuning, and commercial integration. The honest caveat: V4 Pro is verbose. It can generate four to five times more output tokens than comparable models on the same prompt, which erodes the per-token savings and makes cost estimation harder than it first appears. Still in preview as of mid-2026, with all benchmark scores currently vendor-reported, it is best suited for teams comfortable with that tradeoff.
Full DeepSeek V4 Pro details →Gemini 3.5 Flash
The first Flash-tier model to outperform a Pro on coding and agentic benchmarks, Gemini 3.5 Flash rewrites expectations for what a speed-optimized model can do. At over 280 tokens per second — roughly 4x faster than comparable frontier models — it sustains the throughput that production agent loops demand, while benchmark results on Terminal-Bench 2.1 (76.2%) and MCP Atlas (83.6%) put it ahead of Gemini 3.1 Pro on the tasks developers actually care about. Early users call it "an insane value" for delivering near-frontier intelligence at roughly a third of Pro's cost. The 31-point drop in hallucination rate over its predecessor makes it meaningfully more reliable in practice. The honest caveat: time to first token sits around 19 seconds, which stings in latency-sensitive interactions, and aggressive rate limiting has frustrated users hitting it hard. Deep reasoning, hard analytical problems, and ultra-long context retrieval still favor the Pro. But for teams running iterative coding agents, structured data pipelines, or high-throughput chatbots where cost and speed are the binding constraints, Flash 3.5 is the practical choice.
Full Gemini 3.5 Flash details →FAQ
Which is better, DeepSeek V4 Pro or Gemini 3.5 Flash?
Gemini 3.5 Flash leads on 2 of the headline metrics (higher intelligence (artificial analysis index 55); faster output (~280 tokens/sec)), while DeepSeek V4 Pro wins on lower price ($2.17 / 1m blended). The right pick depends on your priorities.
Is DeepSeek V4 Pro or Gemini 3.5 Flash cheaper?
DeepSeek V4 Pro is cheaper at $2.17 per 1M tokens (blended), versus $3.38.
Can I use both DeepSeek V4 Pro and Gemini 3.5 Flash?
Yes. Both are available on just4o.chat from a single chat — you can switch between them per message with no separate subscriptions.