Claude Opus 4.6: The Most Powerful AI Coding Model (2026)

Claude Opus 4.6: The Most Powerful AI Coding Model (2026)


opus 4.6

Key Takeaways

  • Claude Opus 4.6 is Anthropic’s most advanced AI model, achieving industry-leading scores across coding, reasoning, and agentic tasks
  • 1M token context window (first for Opus series) enables handling massive codebases without context degradation
  • 65.4% Terminal-Bench 2.0 score surpasses GPT-5.2 (64.7%) and all competing models
  • Pricing remains unchanged at $5/$25 per million tokens (input/output)
  • Agent Teams feature in Claude Code allows parallel autonomous collaboration
  • Available now on claude.ai, API (claude-opus-4-6), and major cloud platforms

What is Claude Opus 4.6?

Claude Opus 4.6 is Anthropic’s flagship AI model released in February 2026, representing a major upgrade to the Opus 4.5 architecture. The model achieves state-of-the-art performance in agentic coding, sustained long-context reasoning, and autonomous task execution while maintaining industry-leading safety alignment.

Unlike incremental updates, Opus 4.6 introduces qualitative improvements: it plans more deliberately, catches its own errors through enhanced self-review, and sustains productivity across extended sessions without the “context rot” that plagues other models.

How Does Claude Opus 4.6 Differ from Previous Versions?

Core improvements over Opus 4.5:

  • 5x larger context window: 1M tokens (beta) vs 200K tokens
  • Enhanced reasoning depth: Adaptive thinking automatically applies extended reasoning when beneficial
  • 76% vs 18.5% on MRCR v2 needle-in-haystack test: Dramatically better long-context retrieval
  • 190 Elo point improvement on GDPval-AA knowledge work evaluation
  • 80.8% SWE-bench Verified score: Nearly double the industry average for GitHub issue resolution

Claude Opus 4.6 Performance Benchmarks

Terminal-Bench 2.0: Industry-Leading Coding Performance

Direct Answer: Claude Opus 4.6 scored 65.4% on Terminal-Bench 2.0, the highest among all evaluated models, surpassing GPT-5.2’s 64.7% and Gemini 3 Pro’s 56.2%.

opus 4.6 coding performance

Terminal-Bench 2.0 evaluates AI models on 89 complex real-world tasks executed in terminal environments. Each task runs in an isolated Docker container, testing the model’s ability to:

  • Navigate file systems autonomously
  • Execute multi-step debugging workflows
  • Manage dependencies and configurations
  • Handle ambiguous requirements

This benchmark directly correlates with real-world coding productivity, making Opus 4.6’s leadership significant for developers.

ARC AGI 2: Breakthrough in Fluid Intelligence

Claude Opus 4.6 achieved 68.8% on ARC AGI 2, nearly doubling its predecessor’s 37.6% score. This evaluation measures “fluid intelligence”—the ability to solve novel problems without relying on pre-trained knowledge.

What this means practically: Opus 4.6 can tackle completely unfamiliar problem patterns, identify hidden logical structures, and generalize from minimal examples—capabilities that approach human-level abstract reasoning.

GDPval-AA: Economic Value Performance

The bottom line: Opus 4.6 scored 1606 Elo on GDPval-AA, approximately 70% win rate against GPT-5.2 (1462 Elo) on real-world knowledge work tasks.

gdpval aa leaderboard

This evaluation covers:

  • Financial analysis and modeling
  • Legal document review
  • Technical documentation
  • Research synthesis
  • Strategic planning

Each task represents approximately 7 hours of expert human work, making this benchmark directly relevant to professional productivity.

BrowseComp: Superior Information Retrieval

With an 84.0% score on BrowseComp (86.8% with multi-agent framework), Opus 4.6 excels at locating hard-to-find information online—a critical capability for research and fact-checking workflows.

Opus 4.6 vs 4.5: What Changed?

Performance Comparison Table

BenchmarkOpus 4.6Opus 4.5Improvement
Terminal-Bench 2.065.4%59.8%+5.6pp
ARC AGI 268.8%37.6%+83%
GDPval-AA (Elo)16061416+190
MRCR v2 (8-needle, 1M)76%18.5%*+311%
SWE-bench Verified80.8%~65%**+24%

Context Window Breakthrough

The most impactful upgrade: Opus 4.6 supports 1M token context (beta), compared to 200K in Opus 4.5.

Real-world implications:

  • Analyze entire codebases (hundreds of files) in a single session
  • Review multi-hundred-page legal documents without chunking
  • Maintain conversation quality across extended debugging sessions
  • Process year-long chat histories for comprehensive analysis

Critical distinction: Large context windows alone don’t guarantee performance. Opus 4.6’s 76% MRCR v2 score demonstrates it actually uses this extended context effectively, avoiding the “context rot” where models lose track of earlier information.

Output Capacity Doubled

Opus 4.6 supports 128K output tokens, double the previous 64K limit. This enables:

  • Generating complete application codebases
  • Producing comprehensive technical documentation
  • Creating detailed research reports without pagination
  • Refactoring large code sections in single operations

Claude Opus 4.6 Pricing

API Pricing Structure

Standard pricing (unchanged from Opus 4.5):

  • Input tokens: $5 per million tokens
  • Output tokens: $25 per million tokens

Premium pricing (prompts exceeding 200K tokens):

  • Input tokens: $10 per million tokens
  • Output tokens: $37.50 per million tokens

US-only inference: Available at 1.1× standard pricing for workloads requiring US data residency.

Cost Comparison: Opus 4.6 vs Competitors

For a typical 10,000 token input / 2,000 token output request:

ModelInput CostOutput CostTotal
Claude Opus 4.6$0.05$0.05$0.10
GPT-5.2$0.05$0.06$0.11
Gemini 3 Pro$0.035$0.04$0.075

Value proposition: Despite higher per-token costs, Opus 4.6’s efficiency often results in lower total cost due to:

  • Fewer retry attempts due to higher accuracy
  • Single-pass task completion vs multi-turn corrections
  • Reduced context usage through better comprehension

Claude Code Opus 4.6: Enhanced Developer Experience

What is Claude Code?

Claude Code is Anthropic’s command-line tool that integrates Claude directly into developer workflows. With Opus 4.6, it gains substantial capabilities.

Agent Teams (Research Preview)

Direct answer: Agent Teams allow you to spawn multiple Claude agents that work in parallel, coordinate autonomously, and communicate directly without routing through a central coordinator.

How it works:

1. Team lead agent receives your high-level task

2. Automatically spawns specialized agents for subtasks (e.g., frontend review, backend testing, documentation)

3. Agents work in parallel with independent context windows

4. Direct inter-agent communication for dependency coordination

5. Results synthesized by team lead for final delivery

    When to use Agent Teams vs Subagents:

    • Subagents: Single session, fast focused tasks, report-only to main agent
    • Agent Teams: Parallel work, mutual coordination, complex multi-domain tasks

    Example workflow: Code review across 6 repositories

    Opus 4.6 in Claude Code: Setup Guide

    Installation (if not already installed):

    Select Opus 4.6 as default model:

    Enable Agent Teams (research preview):

    Example usage:

    New API Features in Opus 4.6

    1. Adaptive Thinking

    What it solves: Previous models required manually enabling/disabling extended thinking—a binary choice that wasted resources on simple tasks or underperformed on complex ones.

    How it works: At the default effort: high setting, Opus 4.6 automatically detects when deeper reasoning would improve results and activates extended thinking accordingly.

    Implementation:

    2. Effort Level Controls

    Four granular settings:

    • Low: Minimal thinking, fastest responses, lowest cost
    • Medium: Selective thinking, balanced performance
    • High (default): Adaptive thinking, general-purpose
    • Max: Maximum reasoning depth, premium quality

    When to adjust:

    3. Context Compaction (Beta)

    The problem: Long-running agents and extended conversations eventually exceed context windows, causing task failure or quality degradation.

    The solution: Context compaction automatically summarizes and replaces older context when approaching configurable thresholds, enabling unlimited task duration.

    Configuration:

    Use cases:

    • Multi-hour debugging sessions
    • Iterative codebase refactoring
    • Extended research synthesis
    • Long-form content creation with multiple revision cycles

    Claude in Excel and PowerPoint Integration

    Claude in Excel: Major Capability Upgrade

    New capabilities in Opus 4.6:

    • Conditional formatting: Apply complex rules based on data patterns
    • Data validation: Create dynamic validation rules
    • Multi-step operations: Complete complex transformations in single pass
    • Structure inference: Process unstructured data without explicit schema
    • Pivot table editing: Modify and create pivot analyses
    • Chart modifications: Update visualizations intelligently

    Example workflow:

    Claude in Excel:

    1. Calculates quota attainment

    2. Applies conditional formatting rules

    3. Creates pivot table with correct aggregations

    4. Suggests actionable insights

    Claude in PowerPoint (Research Preview)

    Key features:

    • Brand consistency: Reads existing layouts, fonts, and slide masters
    • Template-based generation: Builds presentations matching corporate templates
    • Text-to-deck: Creates full presentations from descriptions
    • Targeted edits: Modifies specific slides while maintaining design coherence

    Integrated workflow example:

    Availability: Max, Team, and Enterprise plans

    Safety and Alignment Improvements

    Most Comprehensive Safety Evaluation Ever

    Anthropic conducted expanded safety testing for Opus 4.6:

    • User wellbeing evaluations: New assessments for mental health impact
    • Complex refusal testing: Enhanced detection of dangerous request variations
    • Covert behavior detection: Monitoring for models attempting to hide harmful actions
    • Interpretability methods: Understanding why the model makes certain decisions

    Safety Performance Results

    Overall alignment: Equal to Opus 4.5 (Anthropic’s previous best-aligned model)

    Over-refusal rate: Lowest among recent Claude models—fewer false rejections of benign queries

    Cybersecurity safeguards: Six new probes developed specifically for Opus 4.6’s enhanced security capabilities to detect:

    • Malware generation attempts
    • Exploit development
    • Social engineering content
    • Credential harvesting techniques
    • Network intrusion guidance
    • Data exfiltration methods

    Cyberdefense Applications

    Anthropic is actively deploying Opus 4.6 for defensive cybersecurity:

    • Automated vulnerability discovery in open-source projects
    • Patch generation for identified security flaws
    • Security code review at scale
    • Threat modeling and analysis

    Philosophy: Accelerate defender capabilities to maintain security balance as offensive AI capabilities advance.

    Real-World Use Cases and Partner Feedback

    Software Development

    Cursor (IDE integration):

    Bolt.new (AI development platform):

    Practical application: Full-stack application development

    • Frontend component generation
    • Backend API implementation
    • Database schema design
    • Test suite creation
    • Documentation writing All in cohesive single session with maintained context.

    Enterprise Knowledge Work

    Notion (productivity platform):

    Use case: Automated documentation systems

    • Ingests meeting transcripts, Slack threads, email chains
    • Synthesizes comprehensive project documentation
    • Maintains consistency across multiple document types
    • Updates documentation as projects evolve

    Financial Services

    NBIM (Norwegian Central Bank Investment Management):

    Application: Risk analysis automation

    • Parse regulatory filings across multiple jurisdictions
    • Identify compliance gaps
    • Generate risk assessment reports
    • Flag portfolio exposure concerns

    DevOps and Site Reliability

    SentinelOne (cybersecurity):

    Workflow example: Legacy system modernization

    1. Analyzes deprecated framework dependencies

    2. Creates migration plan with risk assessment

    3. Implements incremental refactoring

    4. Generates comprehensive test coverage

    5. Documents architectural changes

      Team Coordination

      Rakuten (e-commerce):

      Capability demonstrated: AI-augmented project management

      • Triages incoming issues based on content analysis
      • Routes to appropriate team members by expertise
      • Closes resolved issues with verification
      • Escalates ambiguous cases requiring human judgment

      How to Get Started with Claude Opus 4.6

      For Web Users (claude.ai)

      1. Navigate to claude.ai

      2. Select model: Click model selector dropdown

      3. Choose “Claude Opus 4.6”

      4. Start conversing: Model is immediately available

        Pro tip: Use /effort command to adjust reasoning depth mid-conversation.

        For Developers (API)

        Quick start code:

        Enable advanced features:

        For Cloud Platform Users

        Amazon Bedrock:

        Google Cloud Vertex AI:

        Azure OpenAI (via partner integration): Contact Microsoft Azure support for Anthropic model access configuration.

        Common Issues and Troubleshooting

        Problem: “Model Overthinking Simple Tasks”

        Symptom: Opus 4.6 takes too long or uses excessive tokens on straightforward requests.

        Solution: Reduce effort level

        Problem: “Context Window Exceeded Despite 1M Limit”

        Symptom: Receiving context limit errors with long conversations.

        Solution 1: Enable context compaction

        Solution 2: Use premium pricing tier for 1M context (prompts >200K trigger automatically)

        Problem: “Agent Teams Not Coordinating Effectively”

        Symptom: Agents working in silos or duplicating effort.

        Solution: Refine task decomposition in initial prompt

        # Instead of: “Review the codebase”

        # Use: “Coordinate review:

        Problem: “High API Costs”

        Symptom: Opus 4.6 costs exceeding budget.

        Solutions:

        1. Use Sonnet 4.5 for simpler tasks: Reserve Opus 4.6 for complex reasoning

        2. Optimize prompts: Reduce unnecessary context in requests

        3. Set max_tokens conservatively: Prevent runaway generations

        4. Monitor effort levels: Use “medium” or “low” when appropriate

          Opus 4.6 vs GPT-5.2 vs Gemini 3 Pro

          claude opus 4.6 performance benchmarks

          Head-to-Head Comparison

          CapabilityOpus 4.6GPT-5.2Gemini 3 Pro
          Context Window1M tokens128K tokens2M tokens
          Terminal-Bench 2.065.4%64.7%56.2%
          GDPval-AA (Elo)16061462~1380*
          Long-Context RetrievalExcellent (76%)GoodExcellent
          Code GenerationExcellentExcellentVery Good
          MultimodalImage + DocImage + AudioImage + Video
          Price (Input)$5/M$5/M$2.50/M
          Price (Output)$25/M$20/M$10/M

          *Estimated based on public benchmarks

          When to Choose Each Model

          Choose Claude Opus 4.6 when:

          • Maximum code quality and reliability required
          • Working with large codebases or documents
          • Long-running autonomous tasks
          • Complex multi-step reasoning
          • Safety and alignment are priorities

          Choose GPT-5.2 when:

          • Multimodal needs (audio processing)
          • Real-time applications (faster response)
          • Lower output costs critical
          • Integration with Microsoft ecosystem

          Choose Gemini 3 Pro when:

          • Budget constraints (lowest cost)
          • Video understanding required
          • Google Workspace integration
          • Extremely long context (>1M tokens)

          Future Roadmap and Expectations

          What’s Coming for Opus Series

          Near-term (Q1-Q2 2026):

          • Agent Teams general availability (exit research preview)
          • Claude in PowerPoint full release
          • Extended platform integrations (VS Code, IntelliJ)
          • Improved context compaction algorithms

          Medium-term (2026):

          • Multi-modal expansion (audio, video understanding)
          • Real-time streaming improvements
          • Enhanced collaborative agent workflows
          • Industry-specific fine-tuned variants

          Community Speculation: Opus 4.7 or Sonnet 5?

          Current signals suggest:

          • Anthropic may prioritize Sonnet 5 for broader accessibility
          • Opus line may move to 6-month major update cycle
          • Focus on efficiency improvements to reduce costs
          • Potential specialized variants (Opus-Medical, Opus-Legal)

          Frequently Asked Questions (FAQ)

          Is Claude Opus 4.6 better than GPT-5.2?

          Claude Opus 4.6 outperforms GPT-5.2 on most coding and agentic benchmarks, particularly Terminal-Bench 2.0 (65.4% vs 64.7%) and knowledge work tasks on GDPval-AA (1606 vs 1462 Elo). However, GPT-5.2 may have advantages in specific domains like audio processing and real-time applications. The best choice depends on your specific use case.

          How much does Claude Opus 4.6 cost compared to Opus 4.5?

          Pricing is identical: $5 per million input tokens and $25 per million output tokens. Premium pricing ($10/$37.50) applies when prompts exceed 200K tokens to access the 1M context window. There is no price increase despite significant capability improvements.

          Can I use Claude Opus 4.6 in Claude Code?

          Yes. Claude Opus 4.6 is fully integrated into Claude Code and is the recommended model for complex development tasks. You can set it as default with claude-code config set model claude-opus-4-6. The new Agent Teams feature is particularly powerful in Claude Code workflows.

          What is the 1M token context window good for?

          The 1M token context window enables:

          • Analyzing entire large codebases (hundreds of files) in one session
          • Processing comprehensive legal documents without chunking
          • Maintaining conversation quality across extended debugging sessions
          • Reviewing complete project histories
          • Synthesizing year-long communication threads

          Critically, Opus 4.6 scores 76% on MRCR v2 long-context retrieval, proving it actually uses this context effectively unlike models that “forget” earlier information.

          How do Agent Teams differ from regular Claude conversations?

          Agent Teams allow multiple Claude instances to work in parallel, each with independent context windows, while coordinating directly with each other. Unlike sequential conversations, agents can:

          • Work simultaneously on different subtasks
          • Communicate findings without routing through you
          • Specialize in different domains (frontend, backend, security)
          • Scale to complex multi-repository workflows

          This is ideal for large-scale code reviews, comprehensive audits, and parallel research tasks.

          Does Opus 4.6 support images and documents?

          Yes. Opus 4.6 accepts image inputs (PNG, JPEG, WebP, GIF) and document formats (PDF). It can analyze diagrams, screenshots, UI mockups, charts, and scanned documents. Maximum file size is 10MB per image and 100MB per document.

          How accurate is Claude Opus 4.6 for coding tasks?

          Opus 4.6 achieves 80.8% on SWE-bench Verified, meaning it successfully resolves approximately 4 out of 5 real GitHub issues. It scores 65.4% on Terminal-Bench 2.0, the highest among all evaluated models. These benchmarks demonstrate production-ready coding capabilities, though human review is still recommended for critical systems.

          Can Claude Opus 4.6 write entire applications from scratch?

          Yes, particularly with the 128K output token limit and 1M context window. Users report successful generation of complete games, full-stack web applications, and complex data processing systems in single sessions. However, quality depends on:

          • Clear requirements specification
          • Proper task decomposition
          • Iterative refinement
          • Human oversight for critical decisions

          What programming languages does Opus 4.6 support best?

          Opus 4.6 demonstrates strong performance across:

          • Python (strongest based on training data prevalence)
          • JavaScript/TypeScript
          • Java, C++, C#
          • Go, Rust
          • Ruby, PHP
          • SQL, Shell scripting

          Multilingual coding benchmarks show consistent quality across these languages, with slight advantages in Python and JavaScript ecosystems.

          Is Claude Opus 4.6 safe for enterprise use?

          Yes. Anthropic conducted the most comprehensive safety evaluation in their history, including:

          • Enhanced cybersecurity safeguards (6 new probes)
          • User wellbeing assessments
          • Covert behavior detection
          • Compliance with SOC 2 Type II, GDPR, HIPAA

          Opus 4.6 shows equal or better alignment than Opus 4.5 (previously the safest model) with the lowest over-refusal rate among recent Claude models.

          How do I enable adaptive thinking in my API calls?

          Set the thinking parameter with effort level:

          At “high” (default), Claude automatically determines when extended reasoning improves results. Use “max” for maximum quality or “medium”/”low” for faster, lower-cost responses on simpler tasks.

          What happens when I exceed the 1M token context limit?

          You have two options:

          1. Enable context compaction (beta): Claude automatically summarizes older context to free space

            2. Manual context management: Split conversations or summarize history yourself

              Context compaction allows effectively unlimited task duration by maintaining compressed history.

              Can Claude Opus 4.6 access the internet?

              Not directly through the API. However:

              • Claude.ai web interface: Has web search capabilities built-in
              • API developers: Can provide web access via function calling/tools
              • Claude Code: Has browser automation capabilities
              • Claude in Excel/PowerPoint: Can reference cloud-stored documents

              The model itself doesn’t browse independently but can process web content you provide.

              How long does Opus 4.6 take to respond?

              Response time varies by:

              • Effort level: “low” ~2-5 seconds, “high” ~5-15 seconds, “max” ~15-60 seconds
              • Task complexity: Simple queries faster, complex reasoning slower
              • Output length: Longer generations take proportionally more time
              • Context size: Larger contexts add ~1-2 seconds processing time

              Adaptive thinking balances speed vs quality automatically.

              Does Claude Opus 4.6 support function calling?

              Yes. Opus 4.6 fully supports function calling (tool use) with improvements:

              • More reliable tool selection
              • Better parameter extraction
              • Enhanced multi-tool orchestration
              • Improved error recovery

              Particularly strong for agentic workflows requiring 10+ sequential tool calls.

              What’s the difference between Claude Opus 4.6 and Sonnet 4.5?

              AspectOpus 4.6Sonnet 4.5
              IntelligenceHighestVery High
              SpeedSlowerFaster (2-3x)
              Cost$5/$25$3/$15
              Context1M tokens200K tokens
              Best forComplex reasoning, codingEveryday tasks, chat
              Long-context retrieval76%18.5%

              Use Opus for maximum capability, Sonnet for balanced cost-performance.

              Can I fine-tune Claude Opus 4.6 on my data?

              Not currently. Anthropic does not offer fine-tuning for any Claude models. However, you can achieve customization through:

              • Prompt engineering: Detailed instructions and examples
              • Few-shot learning: Providing examples in context
              • System prompts: Setting behavior guidelines
              • RAG (Retrieval-Augmented Generation): Providing relevant documents

              The 1M context window makes in-context learning highly effective.

              How does Claude in Excel compare to ChatGPT plugins?

              Claude in Excel is a native integration rather than a plugin, offering:

              • Direct spreadsheet manipulation: Modifies cells, formats, formulas
              • Multi-step operations: Complex transformations in single command
              • Structure inference: Handles messy data without explicit schema
              • Context awareness: Understands entire workbook structure

              ChatGPT plugins typically require exporting data, processing externally, and reimporting results.

              Is there a usage limit for Claude Opus 4.6?

              Limits vary by plan:

              • Free tier: Not available (use Sonnet or Haiku)
              • Pro ($20/month): Rate-limited, daily message cap
              • Team ($25/user/month): Higher limits
              • Enterprise: Custom limits based on contract
              • API: Rate limits by tier, pay-per-token (no message caps)

              Check claude.ai/pricing for current limits.

              What makes Opus 4.6’s context handling better?

              Traditional models suffer “context rot”—performance degradation as conversations grow. Opus 4.6 achieves 76% on MRCR v2 (8-needle, 1M tokens) versus Sonnet 4.5’s 18.5%, demonstrating:

              • Consistent retrieval across entire context window
              • No attention degradation in later portions
              • Better factual grounding from earlier context
              • Maintained coherence over extended sessions

              This is a qualitative improvement, not just quantitative.

              Can Claude Opus 4.6 generate images?

              No. Claude models (including Opus 4.6) do not generate images. They can:

              • Analyze and describe images
              • Provide detailed image generation prompts for other tools
              • Modify image-related code (HTML/CSS, canvas, SVG)
              • Design UI layouts and wireframes in code

              For image generation, use specialized models like DALL-E 3, Midjourney, or Stable Diffusion.

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              Final Words

              Claude Opus 4.6 represents a significant leap in AI capability, particularly for coding, long-context reasoning, and autonomous agentic work. With industry-leading benchmarks, unchanged pricing, and powerful new features like Agent Teams and adaptive thinking, it’s positioned as the premier choice for developers and knowledge workers tackling complex tasks.

              Key advantages:

              • Unmatched coding performance (65.4% Terminal-Bench 2.0)
              • Revolutionary 1M context window with 76% retrieval accuracy
              • Cost-effective pricing despite capability improvements
              • Enhanced safety and alignment
              • Comprehensive tool ecosystem (Code, Excel, PowerPoint)

              Whether you’re building production applications, conducting research, or automating knowledge work, Claude Opus 4.6 delivers the intelligence, reliability, and scalability required for demanding professional workflows.

              Get started today: Visit claude.ai or access via API with model name claude-opus-4-6.

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