streamlit-common-issues
About
This skill provides solutions for common Streamlit development issues like excessive reruns, slow performance, and state management. It offers code patterns for form batching, data caching, chunking large files, and session state persistence. Use this reference when debugging typical Streamlit app performance and behavior problems.
Quick Install
Claude Code
Recommendednpx skills add vamseeachanta/workspace-hub -a claude-code/plugin add https://github.com/vamseeachanta/workspace-hubgit clone https://github.com/vamseeachanta/workspace-hub.git ~/.claude/skills/streamlit-common-issuesCopy and paste this command in Claude Code to install this skill
GitHub Repository
Related Skills
autoviz
OtherAutoViz automates exploratory data analysis with a single line of code, generating comprehensive visualizations and detecting patterns like correlations and outliers. It automatically selects chart types, handles both categorical and numerical features, and can export reports to HTML or Jupyter notebooks. Use this skill for rapid, automated EDA to understand your dataset's structure and key insights before deeper analysis.
bsee-sodir-extraction
OtherThis skill extracts and processes offshore energy data from the BSEE (Gulf of Mexico) and SODIR (Norway) regulatory databases. Use it to programmatically access production metrics, well information, field data, and HSE records for analysis. It supports tasks like economic modeling, compliance tracking, and comprehensive energy data aggregation.
dash
OtherThis skill enables developers to build production-ready, interactive web dashboards using Plotly Dash, featuring reactive callbacks, enterprise components, and scalable deployment. It's ideal for creating multi-page data applications with professional layouts and integrated visualizations. Use it when you need to move beyond prototypes to deployable, enterprise-grade dashboard solutions.
ydata-profiling-1-basic-profile-report-generation
OtherThis skill generates comprehensive data quality reports from pandas DataFrames using ydata-profiling. It creates interactive HTML reports with statistical summaries, visualizations, and data quality assessments. Developers should use it for initial exploratory data analysis to quickly understand dataset structure, distributions, and potential issues.
