By wshobson
Implement input validation, authentication, and API security for backend services, with hands-on guidance for fixing vulnerabilities and preventing injection attacks.
Uses power tools
Uses Bash, Write, or Edit tools
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npx claudepluginhub wshobson/agents --plugin data-validation-suiteDependency auditing, version management, and security vulnerability scanning
SAST analysis, dependency vulnerability scanning, OWASP Top 10 compliance, container security scanning, and automated security hardening
Database architecture, schema design, and SQL optimization for production systems
Comprehensive C4 architecture documentation workflow with bottom-up code analysis, component synthesis, container mapping, and context diagram generation
ML model training pipelines, hyperparameter tuning, model deployment automation, experiment tracking, and MLOps workflows
Data validation and backend security coding
Validate API schemas with JSON Schema, Joi, Yup, or Zod
DevsForge JSON validator with schema validation, formatting, JSONPath queries, diff comparison, and comprehensive error reporting
TypeScript-first schema validation and type inference. Use for validating API requests/responses, form data, env vars, configs, defining type-safe schemas with runtime validation, transforming data, generating JSON Schema for OpenAPI/AI, or encountering missing validation errors, type inference issues, validation error handling problems. Zero dependencies (2kb gzipped).
Backend development with security-first approach. Master REST/GraphQL APIs, OWASP security, LLM integration, authentication systems, and secure coding practices.
Implement data quality validation with Great Expectations, dbt tests, and data contracts. Use when building data quality pipelines, implementing validation rules, or establishing data contracts.