🔥 Viewed by 99 students today✓ Verified Listing

Apprentice - Data Engineering

EatonCompetition: Moderate • Entry Level
|Pune, Maharashtra, IND|Posted 6 days ago|Last verified 6 days ago
✓ Company career page verified✓ Application route verifiedLast checked on Jun 16, 2026
💼 Experience Required
Fresher
🕒 Employment Type
Full-time
🎓 Target Batch
2025, 2026
🚀 Role Category
Data Science / DevOps
📌 How to Apply
Click on the Apply button
💰 Salary
Not publicly disclosed
Compensation follows company standards.
Skills Recommended
SQLPythonrelational databasesdata conceptsdata engineeringanalyticscloud platformsSnowflakeSparkdata integration tools

Company Information

Official Job Details

Job Description

Apprentice - Data Engineering

Pune, Maharashtra, IND, 411013

Apply Now

Add to cart

Find out how well you match with this job

Upload your resume

Job description

Company and benefits

Job Req ID

63852

Work Type

Hybrid

Department

Finance

Hiring Program

Not Specified

What you’ll do:

Job Summary

The Data Engineering Apprentice will be part of the Digital Finance Data Engineering team and will support the design, development, and operation of enterprise data pipelines and data platforms. This role is intended for early career candidates who are eager to build strong foundations in modern data engineering practices while working in a governed, enterprise-scale environment.

The apprentice will work under the guidance of senior data engineers and managers, gaining hands-on experience with cloud data platforms, data integration, data modeling standards, and finance-domain datasets.

Key Responsibilities

Data Engineering & Platform Support

• Assist in building and maintaining data pipelines for ingesting, transforming, and validating data from various source systems.

• Support data transformations using SQL and Python under established engineering standards.

• Help with data quality checks, reconciliation processes, and basic troubleshooting of data issues.

• Participate in documenting data pipelines, table definitions, and engineering artifacts.

Learning & Engineering Practices

• Learn and apply modern data engineering practices including ELT/ETL pipelines, version control, and CI/CD fundamentals.

• Follow enterprise data engineering standards for naming conventions, data modeling, and code quality as defined by the team.

• Gain hands-on exposure to cloud data platforms such as Snowflake and Azure-based data services.

• Participate in code reviews and technical walkthroughs as a learning opportunity.

Collaboration & Communication

• Work closely with senior data engineers, analysts, and product owners to understand business and technical requirements.

• Support team activities such as sprint planning, backlog grooming, and sprint reviews in an Agile delivery model.

• Communicate progress, issues, and learnings clearly to mentors and team members.

Data Governance & Compliance

• Learn and adhere to data governance, security, and access control standards.

• Assist in implementing basic data validation, audit columns, and control checks required for enterprise and finance data.

Qualifications:

• Undergraduate (or recent graduate) in Computer Science, Information Technology, Data Science, Engineering, or a related field.

Technical Skills (Basic / Foundational)

Skills:

• Fundamental knowledge of SQL (SELECT, JOINs, basic aggregations).

• Basic programming knowledge in Python or a similar language.

• Understanding of relational databases and data concepts (tables, keys, data types).

• Familiarity with basic data engineering or analytics concepts is a plus.

• Strong willingness to learn and take feedback positively.

• Good analytical and problem-solving skills.

• Clear written and verbal communication skills.

• Ability to work collaboratively in a team environment.

• Exposure to cloud platforms (Azure, AWS, or GCP) in coursework or projects.

• Basic familiarity with Snowflake, Spark, or data integration tools (e.g., ADF) is an advantage but not mandatory.

• Academic or personal projects involving data pipelines or databases.

• Interest in finance or enterprise data domains.

💡 Editor's Career Guide for this Role

🎯 Why This Role Matters

This role provides direct hands-on experience with production-grade codebases, agile development lifecycles, and scalable architectures. It serves as a major accelerator for careers in backend, frontend, or full-stack software development.

⚡ Key Skills Needed

To stand out for this position, hiring managers for this Apprentice - Data Engineering role are looking for:

  • Strong foundational knowledge in core engineering principles.
  • Ability to adapt quickly to the fast-paced environment at Eaton.
  • Proficiency in SQL, Python, relational databases.

💡 Application Tips

  • Tailor your resume: Highlight specific projects or experiences that align directly with current initiatives at Eaton.
  • Prepare for behavioral rounds: Be ready to discuss times you have handled failure, tight deadlines, or team conflicts.
  • Leverage the AI Assistant: Use the AI Assistant button above to evaluate your resume against this specific Apprentice - Data Engineering description before applying.

CampusToCareer Analysis

⭐ Original AnalysisLast Verified: Jun 16, 2026

🎯 Should You Apply?

✓ Suitable for:

  • Business graduates
  • Engineering students
  • Students interested in consulting or analytics

✗ Not ideal if:

  • Looking strictly for software development/coding roles
  • Uncomfortable with stakeholder presentations

⚡ Difficulty Level

Application DifficultyMedium
Expected CompetitionHigh
Interview Rounds2–4 rounds
Note: These stats are evaluated by our editorial team based on past application metrics and hiring trends.

🎓 What You Will Learn

Skills you may develop through this role:

  • SQL
  • Python
  • relational databases
  • SQL database query optimization

📝 How to Prepare

  1. Master SQL basics (joins, subqueries, group by, window functions)
  2. Understand business analysis lifecycles and requirement gathering
  3. Practice communication and case study problems
  4. Learn key metrics (conversion, churn, retention) used in analysis

📄 Resume Match Tips

Highlight these on your resume to stand out:

  • Highlight communication projects and business case studies
  • List SQL and Excel proficiency with concrete project examples
  • Showcase leadership, clubs, or team collaboration experiences
⚠️

Reality Check

This role is less technical and more communication-oriented. Students expecting software development or compiler work may find the role different from expectations.

❓ Frequently Asked Questions

Editorial Analysis Disclaimer: The opinions expressed in this CampusToCareer Analysis are formulated by our platform editors to guide students. Please review the official company listing before applying.
Apply Now
Candidate Guide • 5 min role analysis

More than a copied JD: use this page to prepare before you apply.

Eaton is hiring for Apprentice - Data Engineering in Pune, Maharashtra, IND. This page goes beyond the raw listing so students can understand what the role usually expects, how to prepare for screening, and how to apply more thoughtfully instead of forwarding a resume blindly.

Application Difficulty: MediumCompetition: HighPreparation Time: 3–5 Days

⚡ Quick Preparation Snapshot

Role Fit:
8/10
Competition:
High
Interview Difficulty:
Medium
Freshers Friendly:
Yes
Remote:
No
Recommended:
2025, 2026 Batch

🏢 Why Students Consider Eaton

✓ Advantages

  • Accelerated path to Cloud/DevOps engineering
  • Deep systems-level architectural training
  • Exposure to security policies and compliance
  • Highly stable tech sector demand

⚠ Potential Challenges

  • May involve rotational monitoring duties
  • Steep learning curve for command-line setups

⚙️ Role Context & Recruiter Lens

Apprentice - Data Engineering is likely not just a keyword match. In real hiring, titles compress multiple operational expectations. You should read this listing as a signal of day-to-day team coordination and troubleshooting.

✓ What Recruiters Typically Evaluate

  • Operating Systems fundamentals (threads, memory)
  • Networking protocols (DNS, TCP/IP, routing)
  • Scripting capability (Bash or Python)
  • Troubleshooting logic under time constraints
  • Clear logging and escalation communication

❌ Common Mistakes Students Make

  • Applying with a generic resume that does not align with recommended skills.
  • Ignoring basic company research before the screening interview.
  • Using broken or inactive GitHub and portfolio showcase links.
  • Listing complex projects on the resume without being able to explain details.
  • Clicking apply without verifying batch eligibility or graduation cutoffs.

📅 30-Day Preparation Roadmap

Week 1: Linux Basics & Operating Systems

Study terminal commands, file permissions, memory management, and process life cycle.

Week 2: Networking Fundamentals

Review OSI models, HTTP requests, DNS resolution path, and packet routing.

Week 3: Scripting & Automation

Write small scripts in Bash or Python to parse log files or check server health.

Week 4: Scenario & Outage Diagnostics

Practice system outage diagnostic scenarios and response escalation flows.

📈 Typical Hiring Journey Timeline

1. Application
Initial profile submission
2. Shortlisting
Recruiter resume screening
3. Assessment
Aptitude/coding test assessment
4. Interview
Technical & HR conversation rounds
5. Offer
Letter of intent & onboarding

Recommended Guides

✍️ Reviewed by: CampusToCareer Editorial Team📅 Last Updated: 13 June 2026✓ Fact Check Status: Verified