Analysis updated 2026-05-18
Turn a rough resume bullet into clearer, more technical language without overstating what you actually did.
Check each resume line against your project evidence and get a verdict on whether it is safe to write, risky, or needs more proof.
Generate likely interview follow-up questions for each resume bullet, along with weak, acceptable, and strong example answers.
Get recommendations for specific open-source projects to study or reproduce so you have real evidence to support a resume claim.
| couragec/llminternskill | akii-technologies-ltd/akii-seo-ai-search-optimizer | haidrrrry/compose-kotlin-agent-skills | |
|---|---|---|---|
| Stars | 153 | 50 | 11 |
| Language | Markdown | Markdown | Markdown |
| Setup difficulty | easy | easy | easy |
| Complexity | 2/5 | 2/5 | 2/5 |
| Audience | pm founder | writer | developer |
Figures from each repo's GitHub metadata at analysis time.
Works as pasted prompts or as an installed Codex skill, a LaTeX toolchain is only needed for the PDF export step.
LLMInternSkill is a resume and job-search toolkit aimed at people applying for internships at AI companies, particularly roles involving large language model research and engineering. The primary audience is students and early-career candidates who want help making their experience sound clear and technical without overstating what they actually did. The tool works by reviewing a resume alongside supporting materials such as code files, project notes, papers, and awards. It then produces a set of documents: a polished version of each resume bullet, a verdict on whether the language is safe to use given the evidence available, a tailored version of the resume aimed at a specific job description, a list of questions a technical interviewer would likely ask, and suggested answers. The philosophy is that good resume polish makes real experience clearer rather than inflating it. If a candidate wrote a small demo, the tool will not rewrite that as a production system they deployed at scale. One module called Evidence Guard draws a boundary between what a candidate can honestly claim and what would be called out in an interview. Each bullet gets labeled as safe to write, risky, needs more evidence, or should not be written yet. If a claim lacks supporting evidence, the tool suggests specific open-source projects a candidate could study and reproduce to build that evidence before reapplying. Another module called Interview Drill generates the specific follow-up questions an interviewer would ask for each bullet on the resume, along with examples of weak, acceptable, and strong answers. This is meant to help candidates identify which parts of their resume they cannot defend yet. The toolkit installs as a plugin for AI coding tools like Codex and can also be used by pasting prompts directly. It includes a LaTeX resume template for producing a formatted PDF. The README is in both Chinese and English, and the examples focus on common AI internship tracks including search ranking, retrieval-augmented generation, agent systems, and model training.
A resume and job-search toolkit for AI internship applicants that polishes resume wording while flagging claims that lack supporting evidence.
Mainly Markdown. The stack also includes Markdown, LaTeX, Codex.
The README badge states an MIT license, so you can use, copy, and modify it freely, including commercially, as long as you keep the copyright notice.
Setup difficulty is rated easy, with roughly 5min to a first successful run.
Mainly pm founder.
This repo across BitVibe Labs
Verify against the repo before relying on details.