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Artem535
GitHub creator profile

Artem535

Repository-level view of 11 collected skills across 1 GitHub repositories.

skills collected
11
repositories
1
updated
2026-04-13
repository explorer

Repositories and representative skills

ml-llm-delivery-plan
project-management-specialists

Use when the user wants the rollout and ownership plan for an ML or LLM delivery: scope, workstreams, dependency map, rollout steps, blockers, readiness checklist, and transition notes.

2026-04-13
ml-llm-evaluation-plan
software-quality-assurance-analysts-and-testers

Use when the user wants a quality and release-readiness plan for an ML or LLM service: dimensions, thresholds, datasets, review process, regression rules, and post-release quality review.

2026-04-13
ml-llm-runbook
network-and-computer-systems-administrators

Use when the user wants the operational document for an ML or LLM service: ownership, alerts, common failures, incident response, degradation modes, recovery checks, and escalation contacts.

2026-04-13
ml-llm-service-spec
software-developers

Use when the user wants the integration contract for an ML or LLM service: API/tool methods, input/output schema, data contract rules, prompt hierarchy, retries, confidence routing, and fallback behavior.

2026-04-13
ml-llm-adr
software-developers

Use when the user wants to record one concrete architectural decision in an ML or LLM system, including alternatives, chosen option, rationale, risks, and impacted artifacts.

2026-04-13
ml-llm-delivery-pipeline
project-management-specialists

Use when the task is to create, update, sequence, or review the ML/LLM delivery document set as a pipeline rather than a single document. Covers PRD, system design, ADR, service spec, evaluation plan, delivery plan, runbook, security note, and prompt template.

2026-04-13
ml-llm-document-set
software-developers

Use when the user wants to review completeness, gaps, or consistency across the full ML/LLM document set, especially links between PRD, system design, ADR, service spec, evaluation, runbook, security, and prompt artifacts.

2026-04-13
ml-llm-prd
project-management-specialists

Use when the user wants a service PRD or PRD-lite for an ML or LLM feature, agent, retriever, evaluation service, or internal ML capability. Focus on business problem, scope, users, KPI, and release acceptance.

2026-04-13
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