Accesses knowledge from winning Kaggle solutions including techniques, code templates, and best practices in NLP, CV, time series, tabular, and multimodal domains.
From claude-scholarnpx claudepluginhub galaxy-dawn/claude-scholar --plugin claude-scholarThis skill uses the workspace's default tool permissions.
references/knowledge/nlp/aimo-2-2025.mdreferences/knowledge/nlp/arc-prize-2025.mdreferences/knowledge/nlp/eedi-2024.mdreferences/knowledge/nlp/konwinski-prize-2025-6th-place-study.mdreferences/knowledge/nlp/konwinski-prize-2025-comparison.mdreferences/knowledge/nlp/konwinski-prize-2025.mdreferences/knowledge/nlp/map-2024.mdreferences/knowledge/tabular/amp-parkinsons-2021.mdreferences/knowledge/time-series/birdclef-2023.mdreferences/knowledge/time-series/birdclef-2024.mdreferences/knowledge/time-series/birdclef-plus-2025.mdreferences/knowledge/time-series/detect-behavior-sensor-2025.mdreferences/knowledge/time-series/detect-sleep-states-2023.mdreferences/knowledge/time-series/hms-2024.mdSearches prompts.chat for AI prompt templates by keyword or category, retrieves by ID with variable handling, and improves prompts via AI. Use for discovering or enhancing prompts.
Searches, retrieves, and installs Agent Skills from prompts.chat registry using MCP tools like search_skills and get_skill. Activates for finding skills, browsing catalogs, or extending Claude.
Guides agent creation for Claude Code plugins with file templates, frontmatter specs (name, description, model), triggering examples, system prompts, and best practices.
Extract and apply knowledge from Kaggle competition winning solutions. This skill provides access to a continuously updated knowledge base of techniques, code patterns, and best practices from top Kaggle competitors.
Kaggle competitions are at the forefront of practical machine learning. Winning solutions often innovate with novel techniques, clever feature engineering, and optimized pipelines. This skill captures that knowledge and makes it accessible for your projects.
Use this skill when:
| Category | Focus | Directory |
|---|---|---|
| NLP | Text classification, NER, translation, LLM applications | references/knowledge/nlp/ |
| CV | Image classification, detection, segmentation, generation | references/knowledge/cv/ |
| Time Series | Forecasting, anomaly detection, sequence modeling | references/knowledge/time-series/ |
| Tabular | Feature engineering, traditional ML, structured data | references/knowledge/tabular/ |
| Multimodal | Cross-modal tasks, vision-language models | references/knowledge/multimodal/ |
文件组织结构:每个竞赛一个独立的 markdown 文件,按 domain 分类到对应目录。
示例:
time-series/birdclef-plus-2025.mdnlp/aimo-2-2025.mdTo learn from a competition:
To browse existing knowledge:
references/knowledge/[domain]/This skill automatically updates its knowledge base when the kaggle-miner agent processes new competitions. The more you use it, the smarter it becomes.
每次从 Kaggle 竞赛提取知识时,必须包含以下标准部分:
| 部分 | 说明 | 必需性 |
|---|---|---|
| Competition Brief | 竞赛背景、任务描述、数据规模、评估指标 | ✅ 必需 |
| Original Summaries | 前排方案的简要概述 | ✅ 必需 |
| 前排方案详细技术分析 | Top 20 方案的核心技巧和实现细节 | ✅ 必需 ⭐ |
| Code Templates | 可复用的代码模板 | ✅ 必需 |
| Best Practices | 最佳实践和常见陷阱 | ✅ 必需 |
| Metadata | 数据源标签和日期 | ✅ 必需 |
每个前排方案应包含:
示例格式:
**排名 Place - 核心技术名称 (作者)**
核心技巧:
- **技巧1**: 简短说明
- **技巧2**: 简短说明
实现细节:
- 具体参数、模型、配置
- 数据和实验结果
建议覆盖 Top 20 方案,获取更多前排选手的创新技巧
references/knowledge/nlp/ - NLP competition techniquesreferences/knowledge/cv/ - Computer vision techniquesreferences/knowledge/time-series/ - Time series methodsreferences/knowledge/tabular/ - Tabular data approachesreferences/knowledge/multimodal/ - Multimodal solutionstime-series/birdclef-plus-2025.md) - 包含完整的 Top 14 前排方案详细技术分析time-series/birdclef-2024.md) - 包含 Top 3 方案详细技术分析nlp/aimo-2-2025.md) - 包含 Top 12+ 前排方案技术总结