Data Analyst Intern
@ UM IT Solutions

Hybrid
₹33,750
Hybrid
Intern
Posted 6 hours ago

Your Application Journey

Personalized Resume
Apply
Email Hiring Manager
Interview

Email Hiring Manager

XXXXXXXXXX XXXXXXXXX XXXXXX******* @umitsolutions.com
Recommended after applying

Job Details

Data Analyst Intern at UM IT Solutions

Unified Mentor offers a practical experience for students and graduates in data analysis. This opportunity is a 3-month internship with potential full-time performance opportunities and a Certificate of Internship.

Responsibilities

  • Collect, clean, and analyze datasets.
  • Develop reports and data visualizations.
  • Identify trends and patterns in data.
  • Collaborate on presentations and insights.

Requirements

  • Enrollment in or graduation from a relevant program.
  • Strong analytical skills and attention to detail.
  • Familiarity with Excel, SQL, or Python (preferred).
  • Excellent communication and teamwork abilities.

Benefits

  • Stipend: ₹7,500 - ₹15,000 (performance-based).
  • Real-world data analysis experience.
  • Certificate of Internship and Letter of Recommendation.
  • Opportunity to build your portfolio with impactful projects.

How to Apply

Submit your application with 'Data Analyst Intern Application' as the subject before the deadline on 13th October 2025.

Key skills/competency

  • Data Collection
  • Data Cleaning
  • Data Analysis
  • Data Visualization
  • Reporting
  • SQL
  • Python
  • Excel
  • Analytical Skills
  • Teamwork

How to Get Hired at UM IT Solutions

🎯 Tips for Getting Hired

  • Research UM IT Solutions: Learn about their mission and projects.
  • Customize your resume: Highlight analytical data skills.
  • Showcase project work: Include data visualization examples.
  • Prepare for interviews: Review technical and behavioral questions.

📝 Interview Preparation Advice

Technical Preparation

Practice SQL queries.
Review Python data libraries.
Enhance Excel modeling skills.
Develop sample data dashboards.

Behavioral Questions

Describe a data project experience.
Explain teamwork during data analysis.
Discuss handling tight deadlines.
Share learning from past mistakes.

Frequently Asked Questions