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comprehensive-research-agent
Ensure thorough validation, error recovery, and transparent reasoning in research tasks with multiple tool calls
用 Codex 或 Claude 帮你安装 复制这段 Prompt,粘贴到 Codex、Claude 或其他助手里,让它检查 Skill 页面并帮你完成安装。
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Ensure thorough validation, error recovery, and transparent reasoning in research tasks with multiple tool calls
用 Codex 或 Claude 帮你安装 复制这段 Prompt,粘贴到 Codex、Claude 或其他助手里,让它检查 Skill 页面并帮你完成安装。
基于 SOC 职业分类
A comprehensive collection of Agent Skills for context engineering, harness engineering, multi-agent architectures, and production agent systems. Use when building, optimizing, evaluating, or debugging agent systems that require effective context management and reliable operating loops.
This skill should be used when writing, enhancing, or evaluating the launch prompt for a long-running autonomous agent or a parallel multi-agent orchestration attacking a hard problem: pseudo-formal task briefs that define terms and an exact success predicate linguistically, enumerate non-counting outcomes, set persistence rules with explicit stop and return conditions and effort floors, manage a diverse portfolio of parallel approaches with an approach registry and blocked-route bookkeeping, and gate the return on adversarial audit. Route agent topology and coordination protocols to multi-agent-patterns, runtime control surfaces and loop governance to harness-engineering, evaluator and quality-gate construction to evaluation, judge design to advanced-evaluation, and compaction or memory mechanics to context-compression and memory-systems.
This skill should be used when the harness, scaffold, workflow, or optimizer itself is the optimization target: recursive self-improvement (RSI) loops, meta-harnesses, self-improving harnesses that mine their own failures and propose bounded edits, evolutionary or population-based search over agent scaffolds, acceptance gates for self-modifying systems, and agentic context evolution where the mechanism that produces context is versioned and evolved. Route governance of a single autonomous loop (locked surfaces, durable logs, rollback, novelty gates, approval boundaries) to harness-engineering, measurement and quality-gate design to evaluation, judge design to advanced-evaluation, and remote sandbox infrastructure to hosted-agents.
This skill should be used for book-to-SFT pipelines: ePub extraction, literary segmentation, author-voice dataset construction, style-transfer training, LoRA workflows, and model evaluation for voice replication.
This skill should be used for personal operating-system workflows: content creation, voice consistency, relationship lookup, meeting preparation, weekly review, goal tracking, personal brand management, and network management.
Debug and optimize AI agents by analyzing reasoning traces, context degradation, tool confusion, instruction drift, repeated task failures, and performance regressions.
| name | comprehensive-research-agent |
| description | Ensure thorough validation, error recovery, and transparent reasoning in research tasks with multiple tool calls |
This skill addresses common failures in multi-step research tasks: unhandled tool errors, missing validation, opaque reasoning, and premature conclusions. It provides structured protocols for source validation, error recovery, and thinking transparency that significantly improves research quality and reliability.
After (Pattern): 'Search returned 15 results on context engineering. Evaluating relevance: Liu et al. (2024) appears most authoritative on 'lost in the middle' phenomenon; Anthropic documentation likely has current context window specs; Patel (2023) covers RAG best practices. Ranking these as top 3 priorities. Reading top result first. If the primary source fails (URL error), will try backup search for correct documentation URL and note the gap in final report.'
After (Pattern): Tool returned 404 for Anthropic URL. Thinking: 'Primary source failed. Fallback: search for alternative Anthropic documentation URL or find archived version. If unavailable, note context window data from secondary sources only and add disclaimer about verification status.' Then: 'Cross-validated Claude context window: Anthropic blog (successfully read) and two developer documentation sources agree on 200K. Confident in this claim.' Source tracking table shows: Anthropic URL (failed, backup used), Blog (success), Dev docs (success).
Complex research tasks with multiple tools (6+) and multi-step reasoning chains typically achieve scores in the 65-75 range. This is not a limitation of the prompt but reflects:
Focus on relative improvement and pattern elimination rather than absolute scores. A 5-10% improvement from optimization is significant for complex tasks.
Generated: 2026-01-11 Source: Reasoning Trace Optimizer Optimization Iterations: 10 Best Score Achieved: 72/100 (iteration 4) Final Score: 70.0/100 Score Improvement: 67.6 → 70.0 (+3.6%)