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LLM for Use CaseSummarisationGPT-5.5 vs GPT-4o mini

GPT-5.5 vs GPT-4o mini for Summarisation

Which AI model is better for summarisation? We compare GPT-5.5 and GPT-4o mini on the criteria that matter most - with a clear verdict.

Why your summarisation LLM choice matters

Effective summarisation requires more than shortening text - it demands identifying what is genuinely important, preserving key nuance, and structuring the output for its intended use. For long documents, large context windows are essential: models that truncate input or hallucinate information they did not actually process are actively counterproductive.

Key evaluation criteria for summarisation

1Accuracy and completeness of key information
2Context window size for long document handling
3Structured output formats (bullets, sections)
4Reduction ratio without information loss

Side-by-Side Comparison

FeatureGPT-5.5WinnerGPT-4o mini
ProviderOpenAIOpenAI
Model Typetexttext
Context Window1,000,000 tokens128,000 tokens
Input Cost
$5.00/ 1M tokens
$0.15/ 1M tokens
Output Cost
$30.00/ 1M tokens
$0.60/ 1M tokens
Top pick for Summarisation

Strengths for Summarisation

GPT-5.5

OpenAI

1. Strongest Agentic Coding Model

  • State-of-the-art on Terminal-Bench 2.0 (82.7%), Expert-SWE (73.1%), and SWE-Bench Pro (58.6%), outperforming GPT-5.4 on complex coding tasks.
  • Holds context across large systems, reasons through ambiguous failures, and carries changes through surrounding codebases with fewer tokens.

2. Higher Intelligence at GPT-5.4 Latency

  • Co-designed, trained, and served on NVIDIA GB200/GB300 NVL72 systems to match GPT-5.4 per-token latency while performing at a significantly higher level.
  • Uses fewer tokens to complete the same tasks, making it more efficient as well as more capable.

3. Powerful for Knowledge Work & Computer Use

  • Scores 84.9% on GDPval (44 occupations) and 78.7% on OSWorld-Verified for autonomous computer operation.
  • Excels at generating documents, spreadsheets, and reports; naturally moves across finding information, using tools, and checking output.

4. Scientific Research Co-Scientist

  • Leading performance on GeneBench, BixBench, and FrontierMath; helped discover a new proof about Ramsey numbers verified in Lean.
  • Strong enough to meaningfully accelerate progress at the frontiers of biomedical and mathematical research.

GPT-4o mini

OpenAI

1. Fast, cost-efficient performance

  • Designed for low-latency, high-throughput workloads.
  • Ideal for production systems where speed and budget matter more than deep reasoning power.

2. Great for focused NLP tasks

  • Excels at classification, tagging, entity extraction, rewriting, paraphrasing, and SEO tasks.
  • Strong at translation and keyword generation due to efficient language understanding.

3. Multimodal input capable (text + image)

  • Accepts images for lightweight visual analysis, categorization, or extraction.
  • Outputs text only, ensuring deterministic and easily integrated responses.

4. Supports advanced developer features

  • Structured Outputs for predictable schemas.
  • Function calling for building tool-augmented agents.
  • Fully compatible with Batch API for large-scale processing.

5. Easy to fine-tune

  • One of the best OpenAI models for domain-specific fine-tuning.
  • Allows organizations to compress larger models' behavior (like GPT-4o) into a smaller footprint.

6. Suitable for distillation workflows

  • Can approximate GPT-4o or GPT-5 outputs using distillation, dramatically reducing cost.
  • Enables scalable deployment for high-volume applications.

7. Large context window for its size

  • 128K context supports multi-step tasks, multi-document inputs, and long-running conversations.
  • Useful for agents that need memory across extended sessions.

8. Reliable for commercial production

  • Stable, predictable, and low-variance outputs make it ideal for automation and enterprise stacks.
  • Works well in synchronous or asynchronous pipelines.

Verdict: Best LLM for Summarisation

For summarisation tasks, GPT-5.5 edges ahead based on its performance profile and design priorities. It scores higher on accuracy and completeness of key information - the criterion that matters most for summarisation workflows.

That said, GPT-4o mini remains a strong option. If reduction ratio without information loss is a higher priority than raw performance, or if your team is already using OpenAI's tooling, GPT-4o mini can deliver strong results for summarisation workloads.

With Appaca, you can build summarisation apps powered by either model and switch between them at any time - no rebuild required. Test what actually performs best for your users before committing.

You know GPT-5.5 wins for summarisation. Now build with it.

Most teams spend days comparing models and hours copy-pasting prompts. With Appaca, you build a dedicated summarisation app - powered by GPT-5.5 - in minutes. No code, no re-prompting, runs on any device.

Free to start. Switch models any time. No rebuild required.

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Frequently asked questions

Is GPT-5.5 or GPT-4o mini better for summarisation?

For summarisation tasks, GPT-5.5 has the edge based on its performance profile and design priorities. It ranks higher on accuracy and completeness of key information, which is the most important criterion for summarisation workflows. That said, both models can handle summarisation workloads - the best choice depends on your specific requirements and budget.

What are the key differences between GPT-5.5 and GPT-4o mini for summarisation?

The main differences are in accuracy and completeness of key information, context window size for long document handling, structured output formats (bullets, sections). GPT-5.5 is developed by OpenAI and shares the same provider as GPT-4o mini. Context window, pricing, and speed all differ - check the comparison table above for a side-by-side breakdown.

How much does it cost to use GPT-5.5 vs GPT-4o mini?

GPT-4o mini is cheaper at $0.15/million input tokens, versus $5.00/million for GPT-5.5. For summarisation workloads, the total cost difference depends on your average prompt length and volume.

Can I build a summarisation app with GPT-5.5 or GPT-4o mini?

Yes. Both models can power summarisation applications. With Appaca, you can build a summarisation app using either GPT-5.5 or GPT-4o mini - and switch between them at any time to find the model that performs best for your specific workflow, without rebuilding your product.

Which model should I choose if I care most about accuracy and completeness of key information?

GPT-5.5 is the stronger choice when accuracy and completeness of key information is your top priority. It ranks #3 overall for summarisation tasks. If cost or latency are constraints, GPT-4o mini may still meet your needs at a lower cost.