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Analyse my resume freeOverall Resume Score
62
out of 100
This resume has a solid foundation but two critical issues — ATS compatibility and weak experience bullets — will significantly reduce interview call rates at most companies.
2
Critical issues
2
Improvements
Issues to fix
- 1
Two-column layout breaks ATS parsing — switch to single column
- 2
Summary is generic — rewrite with specific skills and target role
- 3
Experience bullets describe tasks, not results — add metrics to every bullet
- 4
No cloud platform skills listed — add AWS/GCP basics if applicable
What is working
Strong projects section with real GitHub links
Skills are well-grouped and relevant
Education section is clean and complete
Consistent formatting throughout
Section-by-section breakdown
Professional Summary
The summary is vague and generic. "Passionate data enthusiast with strong analytical skills" could describe anyone. It does not mention your specialisation, target role, or any concrete strength.
Suggested improvement
Rewrite to: "Data scientist with 2 years of experience building NLP pipelines at e-commerce scale. Proficient in Python, SQL, and PyTorch. Currently focused on production ML and LLM feature engineering."
Work Experience
Bullets describe responsibilities rather than accomplishments. "Worked on machine learning models for customer segmentation" gives no indication of impact, scale, or outcome.
Suggested improvement
Revise to: "Built customer segmentation model using k-means clustering on 1.2M user records, improving targeted email campaign CTR by 18%." Lead with the result.
Skills Section
Good coverage of core skills. Skills are logically grouped. However, listing "Microsoft Word" and "PowerPoint" wastes space in a technical resume — remove these.
Suggested improvement
Add cloud skills (AWS or GCP) if you have any experience. Consider adding "Model Deployment" or "MLOps" as a sub-category if applicable.
Projects
Strong projects section. Two projects include GitHub links and describe the problem clearly. The third project lacks a link and the description is too brief.
Suggested improvement
Add a GitHub link and 2–3 bullet points to the "Sentiment Analysis" project. Include the dataset size and your best evaluation metric.
Education
Education section is clean and well-formatted. GPA included and relevant coursework is listed. Minor issue: the CGPA abbreviation is not standard in international applications.
Suggested improvement
Write "GPA: 8.6/10" instead of "CGPA: 8.6" for broader readability.
ATS Compatibility
Resume uses a two-column layout and a table for the skills section. Most ATS systems cannot parse these correctly and may drop key information before a human sees your resume.
Suggested improvement
Switch to a single-column format with standard section headings: Summary, Experience, Skills, Projects, Education. Use plain text bullet points, not icons or symbol characters.
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Analyse my resume freeWhat Asuraa's AI analyses
ATS Compatibility
Checks format, structure, and whether your resume will parse correctly in applicant tracking systems.
Impact & Metrics
Identifies weak responsibility bullets and flags where you should be quantifying results.
Section Quality
Reviews each section (summary, experience, skills, projects, education) independently with a score.
Keyword Optimisation
Checks whether your skills and keywords align with the types of roles you are targeting.
Readability
Evaluates whether a recruiter can quickly scan and understand your value in 7–10 seconds.
Strengths Report
Highlights what is already working so you do not accidentally remove your strongest content.