ai-data-analysisAutomates CSV/Excel data cleaning, statistical analysis, trend detection, anomaly identification, visualization, and report generation.
Install via ClawdBot CLI:
clawdbot install arthasking123/ai-data-analysis自动化数据处理和洞察分析服务。
# 分析CSV数据
openclaw run data-analysis --file data.csv --analysis "sales_trends"
# 处理Excel
openclaw run data-analysis --file sales.xlsx --output report.md
# 数据清洗
openclaw run data-analysis --file data.csv --action "clean" --format "json"
# 生成可视化图表
openclaw run data-analysis --file metrics.csv --chart "bar" --output charts/
OpenClaw AI Agent
License: MIT
Version: 1.0.0
Generated Feb 25, 2026
A retail business uses this skill to analyze monthly sales data from CSV files, identifying top-selling products and seasonal trends. It generates bar charts for visualization and exports reports to PDF for management review.
A finance team processes Excel files containing transaction data, cleaning inconsistencies and detecting anomalies. The skill automates report generation in HTML format, streamlining compliance and audit processes.
A healthcare provider analyzes patient metrics from CSV files to track treatment outcomes and identify trends. It creates visual charts for presentations and exports insights to support data-driven decision-making.
A marketing agency uses this skill to process campaign data in JSON format, analyzing performance trends and generating comparative reports. It helps optimize strategies by visualizing key metrics in charts.
A manufacturing plant analyzes production data from Excel files to detect anomalies in quality metrics. The skill generates reports with trend analysis, aiding in process improvement and reducing defects.
Users pay per analysis task, such as processing a CSV file or generating a chart, with costs ranging from $15 to $50. This model suits occasional users who need specific data insights without long-term commitments.
Offers unlimited access to data processing and analysis features for a flat monthly fee of $100 to $300. Ideal for small to medium businesses requiring regular data insights and report generation.
Provides tailored solutions for large organizations, including advanced analytics, custom report templates, and integration support. Revenue is negotiated based on specific needs and usage volume.
💬 Integration Tip
Use the command-line interface with simple flags like --file and --analysis for quick setup; ensure input data files are in supported formats like CSV or Excel for seamless processing.
Use the @steipete/oracle CLI to bundle a prompt plus the right files and get a second-model review (API or browser) for debugging, refactors, design checks, or cross-validation.
Manage Things 3 via the `things` CLI on macOS (add/update projects+todos via URL scheme; read/search/list from the local Things database). Use when a user asks Clawdbot to add a task to Things, list inbox/today/upcoming, search tasks, or inspect projects/areas/tags.
Local search/indexing CLI (BM25 + vectors + rerank) with MCP mode.
Use when designing database schemas, writing migrations, optimizing SQL queries, fixing N+1 problems, creating indexes, setting up PostgreSQL, configuring EF Core, implementing caching, partitioning tables, or any database performance question.
Connect to Supabase for database operations, vector search, and storage. Use for storing data, running SQL queries, similarity search with pgvector, and managing tables. Triggers on requests involving databases, vector stores, embeddings, or Supabase specifically.
Query, design, migrate, and optimize SQL databases. Use when working with SQLite, PostgreSQL, or MySQL — schema design, writing queries, creating migrations, indexing, backup/restore, and debugging slow queries. No ORMs required.