name: "resume-editor" version: "1.0.0" description: "Edits existing resume bullets to remove banned language and add metrics without changing meaning." allowed-tools: [Read, Write] humanizer_patterns: [1, 4, 7, 8, 19, 21, 22] nick_mode_profile: "resume" resume_banned_version: "1.0.0" tone_presets: [direct, technical] temperature: 0.0 seed: "RESUME_EDITOR_SEED_001"
resume-editor
Purpose: Take existing resume bullets and improve them: remove banned phrases, add or surface metrics, start with action verbs. Preserve all factual claims.
Input Schema
| Field | Type | Required |
|---|---|---|
bullets | string[] | yes - existing resume bullets |
context | string | no - additional context for metric inference |
preserve_facts | string[] | yes - must not change these |
tone | string | yes |
{
"bullets": [
"Responsible for managing the data pipeline",
"Helped improve system reliability",
"Strong communicator who worked with stakeholders"
],
"context": "Senior Data Engineer at a fintech startup, 2021-2023",
"preserve_facts": ["data pipeline", "fintech"],
"tone": "direct"
}
Output Schema
{
"edited_bullets": [
{"original": "...", "revised": "...", "changes": ["removed 'responsible for'", "added action verb 'Owned'"]}
],
"banned_phrases_removed": ["responsible for", "helped", "strong communicator"],
"metric_warnings": ["bullet 2: no metric found - add a number before publishing"]
}
Prompt Flow
Pass 1: For each bullet: flag banned phrases -> rewrite starting with action verb -> inject metric if known -> preserve preserve_facts. Pass 2: Audit for remaining AI tells. Flag bullets with no metric as warnings (do not fabricate metrics).
Examples
Short
Before: "Responsible for managing the data pipeline." After: "Owned and maintained the Airflow-based data pipeline processing 500GB nightly."
Medium
Before: "Helped improve system reliability and worked with the on-call team." After: "Reduced mean time to recovery from 45 min to 12 min by documenting the top 8 incident runbooks."
Long
Before: "Results-driven professional responsible for driving cross-functional collaboration to achieve business outcomes." After: "Led quarterly roadmap reviews with product, engineering, and sales (12 stakeholders); 9 of 11 Q3 commitments shipped on time."
Unit Tests
# tests/skills/test_resume_editor.py
from resume_banned import flag_banned_phrases
EDITED = [
"Owned and maintained the Airflow-based data pipeline processing 500GB nightly.",
"Reduced MTTR from 45 min to 12 min by documenting 8 incident runbooks.",
]
def test_edited_bullets_no_banned_phrases():
for b in EDITED:
assert flag_banned_phrases(b) == [], f"Banned phrase remains: {b}"
def test_edited_bullets_start_with_verb():
action_verbs = {"owned","reduced","built","cut","shipped","led","wrote","launched","designed","managed","created"}
for b in EDITED:
first_word = b.split()[0].lower().rstrip(".,")
assert first_word in action_verbs, f"Bullet doesn't start with action verb: {b}"
def test_metric_warning_issued_for_vague_bullet():
# resume-editor should flag bullets with no metric, not fabricate one
from resume_editor import edit_bullets
result = edit_bullets(["Strong communicator who worked with stakeholders."], preserve_facts=[])
assert any("metric" in w.lower() for w in result.get("metric_warnings", [])), \
"Expected metric warning for vague bullet"