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LLM ComparisonGPT-4o mini AudioClaude 4.7 Opus

GPT-4o mini Audio vs Claude 4.7 Opus

Compare GPT-4o mini Audio and Claude 4.7 Opus. Build AI products powered by either model on Appaca.

Model Comparison

FeatureGPT-4o mini AudioClaude 4.7 Opus
ProviderOpenAIAnthropic
Model Typeaudiotext
Context Window128,000 tokens1,000,000 tokens
Input Cost
$0.15/ 1M tokens
$5.00/ 1M tokens
Output Cost
$0.60/ 1M tokens
$25.00/ 1M tokens

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Strengths & Best Use Cases

GPT-4o mini Audio

OpenAI

1. Affordable multimodal audio model

  • Extremely low-cost audio + text model for production-scale usage.
  • Ideal for startups and high-volume traffic apps.

2. Fast real-time performance

  • Low latency suitable for responsive voice assistants, AI phone bots, IVR flows, and audio chat apps.
  • Great when speed matters more than deep reasoning.

3. Audio input and audio output

  • Accepts raw audio (speech, recordings, commands).
  • Generates natural audio responses via the REST API.

4. Large 128K context window

  • Handles long conversations, transcriptions, and extended instructions.
  • Supports multi-step voice workflows or multi-part inputs.

5. Great for lightweight reasoning workloads

  • Performs well for classification, instructions, Q&A, rewriting, and audio-driven tasks.
  • Good for voice agents that don't need high-end reasoning like GPT-5.1.

6. Works across major endpoints

  • Chat Completions, Responses API, Realtime API, Assistants, Batch.
  • Supports streaming and function calling.

7. Scalable for commercial production

  • Perfect for customer support hotlines, appointment bots, FAQ voice agents, or embedded voice UI in apps.
  • Reliable and predictable output behavior given its price.

8. Preview model designed for experimentation

  • Lets teams prototype voice-first features with minimal cost.
  • Useful stepping-stone before upgrading to GPT-4o Audio or GPT-5 audio models.

Claude 4.7 Opus

Anthropic

1. State-of-the-art software engineering

  • A notable upgrade over Opus 4.6 on the hardest coding tasks, with users reporting they can hand off work that previously required close supervision.
  • Early partners reported double-digit gains on real-world benchmarks — e.g., Cursor saw CursorBench jump from 58% to 70%, and Rakuten-SWE-Bench resolution tripled versus Opus 4.6.
  • Handles complex, long-running tasks with rigor: plans carefully, catches its own logical faults, and verifies its outputs before reporting back.

2. Long-horizon agent reliability

  • Full 1M token context window at standard pricing, with state-of-the-art long-context consistency.
  • Far fewer tool errors, stronger recovery from tool failures, and better follow-through on multi-step workflows — designed for async work like CI/CD, automations, and managing multiple agents in parallel.
  • Stronger file-system-based memory, retaining useful notes across long, multi-session runs.

3. Sharper instruction following and honesty

  • Takes instructions literally and precisely — existing prompts may need re-tuning since earlier models were more lenient.
  • More honest about its own limits: reports missing data instead of fabricating plausible-but-wrong answers, and resists dissonant-data traps that tripped up Opus 4.6.

4. Substantially improved vision and multimodal reasoning

  • Accepts images up to 2,576 px on the long edge (~3.75 MP) — over 3x more than prior Claude models.
  • Unlocks dense-screenshot computer use, complex diagram extraction, and pixel-perfect reference tasks.
  • Stronger document reasoning for enterprise analysis (e.g., 21% fewer errors than Opus 4.6 on Databricks' OfficeQA Pro).

5. Top-tier professional knowledge work

  • State-of-the-art on the Finance Agent evaluation and GDPval-AA, with tighter, more professional finance analyses, models, and presentations.
  • Strong on legal work — e.g., 90.9% on BigLaw Bench at high effort, with better-calibrated reasoning on review tables and ambiguous edits.
  • Noted by design-focused partners as the best model for building dashboards and data-rich interfaces.

6. Modern effort and budget controls

  • Introduces a new xhigh effort level between high and max for finer control over reasoning vs. latency.
  • Task budgets (public beta) let developers guide token spend across long runs.
  • Recommended to start with high or xhigh effort for coding and agentic use cases.

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