bitlysis-fullstack
Bitlysis — Fullstack Development
When to Use
- Building Next.js pages, layouts, or components
- Creating FastAPI API endpoints
- Designing database schemas with Drizzle ORM
- Implementing data fetching with TanStack Query
- Building full-stack features end-to-end
Instructions
Step 1: Next.js 15 / React 19 Rules
// ✅ Prefer Server Components — no 'use client' unless interactive
// app/dashboard/page.tsx
import { DataTable } from "@/components/data-table";
import { getAnalysisResults } from "@/lib/db/queries";
More from bernieweb3/bitlysis-skills
bitlysis-testing
Write comprehensive tests for Bitlysis using Vitest (TypeScript), pytest (Python), and Playwright (E2E). Use when adding unit tests, integration tests, E2E tests, or when improving test coverage for any part of the codebase.
1bitlysis-security-audit
Perform security review and apply security best practices for Bitlysis — authentication, authorization, input validation, smart contract security, OWASP Top 10, and dependency auditing. Use when reviewing auth flows, API security, contract audits, or before deploying to production.
1bitlysis-ai-agents-llm
Apply best practices for LLM applications, AI agents, RAG pipelines, and evaluations in Bitlysis. Use when building agentic workflows, integrating LLM APIs, designing RAG systems, writing eval test cases, or working in agent/llm/rag/eval/mcp directories.
1bitlysis-infrastructure
Apply Bitlysis DevOps and infrastructure best practices — Docker multi-stage builds, GitHub Actions CI/CD, environment management, Render and Vercel deployment, security headers, and observability. Use when working on Dockerfiles, CI workflows, deployment configs, or infrastructure code.
1bitlysis-project-core
Apply Bitlysis core project standards — tech stack validation, naming conventions, quality gates, and specialist agent routing. Use this skill before starting any feature, refactor, or debugging session in the Bitlysis codebase.
1bitlysis-data-science
Apply Bitlysis data science best practices for R, Python, Quarto, and reproducible analysis pipelines. Use when working on statistical analysis, data pipelines, notebooks, R packages, or any file with .R, .Rmd, .qmd, or .ipynb extensions.
1