GPT-4.1 Nano vs Claude 4.7 Opus
Compare pricing, context windows, and strengths for GPT-4.1 Nano by OpenAI and Claude 4.7 Opus by Anthropic - and see how to put either to work in Appaca.
GPT-4.1 Nano
Fastest and most cost-efficient GPT-4.1 model with strong instruction following, tool calling, and a 1M-token context window for lightweight, real-time tasks.
View GPT-4.1 NanoClaude 4.7 Opus
Anthropic's latest frontier Opus model, purpose-built for advanced software engineering, long-horizon agent work, and high-resolution multimodal reasoning.
View Claude 4.7 OpusGPT-4.1 Nano vs Claude 4.7 Opus at a glance
Specs and pricing side by side, from the Appaca AI models directory.
| Spec | GPT-4.1 Nano | Claude 4.7 Opus |
|---|---|---|
| Provider | OpenAI | Anthropic |
| Model type | Text | Text |
| Context window | 1.05M tokens | 1M tokens |
| Input price | $0.1 / 1M tokens | $5 / 1M tokens |
| Output price | $0.4 / 1M tokens | $25 / 1M tokens |
| Status | Superseded by GPT-5 Mini | Current |
How GPT-4.1 Nano and Claude 4.7 Opus differ
What the numbers mean in practice when choosing between GPT-4.1 Nano and Claude 4.7 Opus.
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GPT-4.1 Nano is 98% cheaper on input tokens ($0.1 vs $5 per million), which adds up quickly in document-heavy workloads.
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GPT-4.1 Nano is 98% cheaper on output tokens ($0.4 vs $25 per million) - the bigger factor for tools that generate long documents.
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Context windows are close: GPT-4.1 Nano handles 1.05M tokens and Claude 4.7 Opus handles 1M tokens.
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GPT-4.1 Nano has been superseded by GPT-5 Mini - for new builds, consider the newer model first.
Strengths side by side
Where each model shines, according to benchmarks and provider positioning.
GPT-4.1 Nano
1. Ultra-Fast, Low-Latency Performance
- The fastest model in the GPT-4.1 family, ideal for real-time interactions and high-throughput applications.
- Designed for scenarios where speed matters more than complex reasoning.
2. Most Cost-Efficient GPT-4.1 Variant
- Lowest price point among GPT-4.1 models.
- Enables large-scale deployments such as support bots, routing systems, and lightweight assistants without high compute costs.
3. Solid Instruction Following
- Consistent and reliable at following clear instructions.
- Well-suited for:
- Classification
- Simple reasoning
- Data extraction
- Content rewriting
- Chat-style responses
4. Strong Tool Calling Capabilities
- Built with robust support for:
- Function calling
- Structured outputs (e.g., JSON)
- Lightweight automation tasks
- Works well within multi-step agent workflows that rely on simple tools.
5. Basic Multimodal Input
- Supports text and image input.
- Useful for:
- Simple visual recognition
- Alt-text generation
- Reading graphics or screenshots
6. Text-Only Output
- Produces text only, ensuring:
- Clean structured outputs
- High reliability for downstream processing
- Ease of integration into backend systems
7. 1M-Token Context Window
- Supports up to 1,047,576 tokens, allowing:
- Long documents
- Multiple files
- Large prompt memory
- Reduces or eliminates the need for chunking and retrieval in many simple workflows.
8. Ideal Use Cases
- Customer support bots
- Routing and intent detection
- Simple agents and workflow automation
- Content cleanup and rewriting
- Basic Q&A, summaries, and extraction
9. Broad API Integration
- Available across major API endpoints:
- Chat Completions
- Responses
- Realtime
- Assistants
- Fine-tuning
- Supports predicted outputs for reliability and determinism.
Claude 4.7 Opus
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
xhigheffort level betweenhighandmaxfor finer control over reasoning vs. latency. - Task budgets (public beta) let developers guide token spend across long runs.
- Recommended to start with
highorxhigheffort for coding and agentic use cases.
Use GPT-4.1 Nano or Claude 4.7 Opus - or both
Appaca is the AI workspace for operators. Build internal tools and AI co-workers powered by GPT-4.1 Nano or Claude 4.7 Opus - connected to your real data and ready for your whole team. No code, no deployment.
Describe it, and it's built
Tell the Appaca agent the internal tool you need and it builds a working app powered by GPT-4.1 Nano or Claude 4.7 Opus. No code, no API keys, no deployment.
Switch models without rebuilding
Start on GPT-4.1 Nano, test the same tool on Claude 4.7 Opus, and keep whichever performs better - the rest of your app stays exactly as it is.
Automated for the whole team
Schedule tools to run on autopilot - daily digests, weekly reports, real-time triggers - and share them with your whole team from one workspace.
Describe it, and it's built
Tell the Appaca agent what your team needs and it builds a working app powered by GPT-4.1 Nano or Claude 4.7 Opus - connected to the tools you already use.







Related comparisons
See how GPT-4.1 Nano and Claude 4.7 Opus stack up against other models in the directory.
FAQs
GPT-4.1 Nano is generally cheaper: $0.1 input / $0.4 output per million tokens, versus $5 / $25 for Claude 4.7 Opus. Actual cost depends on how many tokens your workload reads and writes.
GPT-4.1 Nano has the larger context window at 1.05M tokens, compared to 1M tokens for Claude 4.7 Opus. A larger window means the model can consider more text at once - useful for long contracts, codebases, or months of records.
It depends on the job. Compare the pricing, context window, and strengths above against your workload - and remember the choice isn't permanent. In Appaca you can build a tool on GPT-4.1 Nano, test the same tool on Claude 4.7 Opus, and switch at any time without rebuilding anything.
Yes. Appaca is a no-code AI workspace: describe the internal tool your team needs and the Appaca agent builds it as a working app powered by GPT-4.1 Nano, Claude 4.7 Opus, or any other model in the directory - with a built-in database, team access, and integrations. No API keys to wire up and nothing to deploy.
Build AI tools with GPT-4.1 Nano or Claude 4.7 Opus
Describe the tool your team needs and get a working app powered by the model you choose - with a built-in database, team access, and integrations. No code, no deployment.