{"package":"genetic.algo.optimizeR","ecosystem":"cran","latest_version":"0.3.3","description":"Genetic Algorithm Optimization. Genetic algorithm are a class of optimization algorithms inspired by the process of natural selection and genetics. This package is for learning purposes and allows users to optimize various functions or parameters by mimicking biological evolution processes such as selection, crossover, and mutatio","license":"MIT + file LICENSE","license_risk":"unknown","commercial_use_notes":"verify manually — license not parseable / not declared.","homepage":"https://danymukesha.github.io/genetic.algo.optimizeR/","repository":"https://github.com/danymukesha/genetic.algo.optimizeR","downloads_weekly":161,"health":{"score":41,"risk":"high","breakdown":{"maintenance":5,"popularity":3,"security":25,"maturity":6,"community":2},"deprecated":false,"max_score":100},"vulnerabilities":{"count":0,"critical":0,"high":0,"medium":0,"low":0,"details":[]},"versions":{"latest":"0.3.3","total_count":0,"recent":[]},"metadata":{"deprecated":false,"deprecated_message":null,"maintainers_count":1,"first_published":"2025-01-24 18:52:40","last_published":"2025-01-24T17:30:07+00:00","dependencies_count":9,"dependencies":["dplyr","ggplot2","magrittr","rsconnect","stats","stringr","tinytex","biocViews","DiagrammeR"]},"github_stats":null,"bundle":null,"typescript":null,"known_issues":{"bugs_count":0,"bugs_severity":{},"status_breakdown":{},"link":null,"scope":"none"},"historical_compromise":null,"recommendation":{"action":"safe_to_use","issues":[],"use_version":"0.3.3","version_hint":null,"summary":"genetic.algo.optimizeR@0.3.3 is safe to use (health: 41/100)"},"version_scoped":null,"requested_version":null,"_cache":"miss","_response_ms":507,"_powered_by":"depscope.dev — free package intelligence for AI agents","typosquat":{"is_suspected":false},"maintainer_trust":{"available":false},"malicious":{"is_malicious":false},"scorecard":{"available":false},"quality":{"available":false},"version_history_summary":{"total_versions":1,"first_release_age_days":462,"last_release_days_ago":462,"avg_days_between_releases":null,"release_velocity":"stale"}}