Last verified 2026-03-12 (left) · 2026-03-19 (right)

DeepSeek Reasoner vs GPT-5.4 nano — Pricing & Capability Comparison

DeepSeek Reasoner charges $0.55 per million input tokens and $2.19 per million output tokens. GPT-5.4 nano comes in at $0.20 / $1.25. Context windows span 64K vs 400K tokens respectively.

TL;DR — Quick Comparison

  • GPT-5.4 nano is cheaper overall: $1.45 per 1M tokens (in+out) vs $2.74 for DeepSeek Reasoner — saves $1.29 per 1M tokens
  • Input pricing: DeepSeek Reasoner $0.55/1M vs GPT-5.4 nano $0.20/1M
  • Output pricing: DeepSeek Reasoner $2.19/1M vs GPT-5.4 nano $1.25/1M
  • Context window: GPT-5.4 nano offers more (400K vs 64K)
  • Use our calculator below to estimate costs for your specific usage pattern

Input price (per 1M)

DeepSeek Reasoner

$0.55

GPT-5.4 nano

$0.20

GPT-5.4 nano leads here

Output price (per 1M)

DeepSeek Reasoner

$2.19

GPT-5.4 nano

$1.25

GPT-5.4 nano leads here

Context window

DeepSeek Reasoner

64,000 tokens

GPT-5.4 nano

400,000 tokens

GPT-5.4 nano leads here

Cached input

DeepSeek Reasoner

$0.140

GPT-5.4 nano

$0.020

GPT-5.4 nano leads here

Which one should you choose?

Skip the spreadsheet if you just need the practical takeaway. Use these rules when deciding between DeepSeek Reasoner and GPT-5.4 nano.

Choose GPT-5.4 nano if input tokens dominate your bill

GPT-5.4 nano has the lower input rate, which usually matters most for chat, RAG, classification, and long-prompt workflows where prompt volume stays much larger than generated output.

Choose GPT-5.4 nano if you generate long answers

GPT-5.4 nano is cheaper on output tokens, so it tends to win for report generation, coding assistance, reasoning traces, and any workflow where completions are long.

Choose GPT-5.4 nano if context size is the blocker

GPT-5.4 nano offers the larger published context window, which is more important than small pricing differences when you need to fit large files, long chats, or multi-document prompts into one request.

Cost comparison for 10K-token workloads

Side-by-side pricing for identical workloads (10,000 total tokens per request) across different distributions.

ScenarioDeepSeek ReasonerGPT-5.4 nanoDeepSeek Reasoner cachedGPT-5.4 nano cached
Balanced conversation
50% input · 50% output
$0.0137$0.0073$0.0117$0.0064
Input-heavy workflow
80% input · 20% output
$0.0088$0.0041$0.0055$0.0027
Generation heavy
30% input · 70% output
$0.0170$0.0094$0.0158$0.0088
Cached system prompt
90% cached input · 10% fresh output
$0.0071$0.0030$0.0034$0.0014

Frequently asked questions

Which is cheaper: DeepSeek Reasoner or GPT-5.4 nano?

GPT-5.4 nano is cheaper for input tokens at $0.20 per 1M tokens compared to $0.55. For output, GPT-5.4 nano costs $1.25 per 1M tokens versus $2.19 for DeepSeek Reasoner.

What is the cost per 1M tokens for DeepSeek Reasoner?

DeepSeek Reasoner pricing: $0.55 per 1M input tokens and $2.19 per 1M output tokens. Context window: 64,000 tokens.

What is the cost per 1M tokens for GPT-5.4 nano?

GPT-5.4 nano pricing: $0.20 per 1M input tokens and $1.25 per 1M output tokens. Context window: 400,000 tokens.

How much does it cost per 1K tokens?

Per 1K tokens: DeepSeek Reasoner costs $0.0006 input / $0.0022 output. GPT-5.4 nano costs $0.0002 input / $0.0013 output. This is useful for calculating small-scale usage costs.

Which model supports a larger context window?

GPT-5.4 nano offers 400,000 tokens (400K) versus 64K for DeepSeek Reasoner.

What is the estimated monthly cost for typical usage?

For a typical workload of 10M input + 2M output tokens per month: DeepSeek Reasoner would cost approximately $9.88, while GPT-5.4 nano would cost $4.50. GPT-5.4 nano is more economical for this usage pattern.

Do these models support prompt caching?

DeepSeek Reasoner supports prompt caching at $0.140 per 1M cached tokens, reducing costs for repeated context by up to 75%. GPT-5.4 nano supports caching at $0.020 per 1M tokens, saving up to 90%.

Which model is best for my use case?

Choose GPT-5.4 nano for cost-sensitive applications with high input volume. Choose GPT-5.4 nano if you need 400K context for long documents or conversations. Consider prompt caching if you have repeated context. Use our token calculator to model your specific usage pattern.

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