Skip to contentSkip to footer
  • Community
  • Jobs
  • Companies
  • Salaries
  • For employers
      Notifications

      Loading...

      Elevate your career

      Discover your earning potential, land dream jobs, and share work-life insights anonymously.

      employer cover photo
      employer logo
      employer logo

      Tech Mahindra

      Engaged employer

      About
      Reviews
      Pay and benefits
      Jobs
      Interviews
      Interviews
      Related searches: Tech Mahindra reviews | Tech Mahindra jobs | Tech Mahindra salaries | Tech Mahindra benefits | Tech Mahindra conversations
      Tech Mahindra interviewsTech Mahindra core python - senior level interviewsTech Mahindra interview


      Glassdoor

      • About / Press
      • Awards
      • Blog
      • Research
      • Contact Us
      • Guides

      Employers

      • Free Employer Account
      • Employer Centre
      • Employers Blog

      Information

      • Help
      • Guidelines
      • Terms of Use
      • Privacy and Ad Choices
      • Do Not Sell Or Share My Information
      • Cookie Consent Tool
      • Security

      Work With Us

      • Advertisers
      • Careers
      Download the App

      • Browse by:
      • Companies
      • Jobs
      • Locations
      • Communities
      • Recent posts

      Copyright © 2008-2026. Glassdoor LLC. "Glassdoor," "Worklife Pro," "Bowls" and logo are proprietary trademarks of Glassdoor LLC.

      Company Bowl sample

      Want the inside scoop on your own company?

      Check out your Company Bowl for anonymous work chats.

      Bowls

      Get actionable career advice tailored to you by joining more bowls.

      Followed companies

      Stay ahead in opportunities and insider tips by following your dream companies.

      Job searches

      Get personalised job recommendations and updates by starting your searches.

      Top companies for "Compensation and Benefits" near you

      avatar
      Parsons Corporation
      3.7★Compensation and benefits
      avatar
      Hewlett Packard Enterprise | HPE
      3.6★Compensation and benefits
      avatar
      Concentrix
      3.6★Compensation and benefits
      avatar
      Dell Technologies
      3.5★Compensation and benefits

      core python - senior level Interview

      1 Jun 2026
      Anonymous employee
      Accepted offer
      Positive experience
      Difficult interview

      Application

      I applied through a recruiter. The process took 2 weeks. I interviewed at Tech Mahindra

      Interview

      “My interview process included a phone screen via FloCareer, followed by online coding editor assessments across three technical levels, project discussions, real‑time experience evaluation, hands‑on coding tasks, and a final HR round.”

      Interview questions [1]

      Question 1

      Questions asked in Tech Mahindra core Python interview One, if you’re working on a Django application that is experiencing performance issue due to insufficient database queries, so how will you optimise these database query in Django? 2, how to optimise insufficient database queries in Django application causing performance issue Three how to implement a custom cash? For mechanism in python, to optimise the performance of a function Five. If cash is expensive, how should you able to cachet and Store result be saved upon the functional inputs? Six. How would you implement this using a decorator? Basically accustom python decorator for cashing? Give a coding, example for the 7SAPA that allows a user to upload a large file, so what consideration would you make to ensure the process efficient and reliable? Seven implement a custom data structure in python, that support, efficient insertion, efficient, deletion, and random axis Eight how to optimise data processing of a large data set using panda set to reduce memory usage and improve performance, implement the same later and explain what is the efficiency reduce memory usage improve performance Nine. Write a quote to optimise large data set processing using data type junking and vectoring operations in pandas.
      Answer question