Search by job, company or skills

VALSEA

Data Engineer / Analytics Engineer (Intern)

Fresher
new job description bg glownew job description bg glownew job description bg svg
  • Posted 2 days ago
  • Be among the first 10 applicants
Early Applicant

Job Description

About the RoleWe're looking for a Data Engineering / Analytics Intern who wants to build reliable data systemsnot just dashboards.

You'll work on designing and maintaining data pipelines for logs, usage, quality metrics, and customer analytics in a fast-moving environment where schemas and questions evolve constantly. This means ensuring data is accurate, trustworthy, and useful for decision-making across product and business teams.

You'll collaborate closely with founders, product, and engineering to turn raw data into actionable insights. Your work will directly impact experimentation, reporting, and how the company makes decisions.

If you enjoy working with messy data, building systems end-to-end, and improving data quality, this role will push you to grow quickly.

What You Will DoDesign and implement ETL/ELT pipelines for logs, usage, and analytics

Build and maintain transformation layers (dbt or similar)

Set up data quality checks and monitoring for key datasets

Model data in warehouses or lakes for analytics use cases

Support experimentation, reporting, and feedback loops with reliable data

Ensure privacy-aware handling of sensitive data (PII)

Document data models, metrics, and pipelines clearly

What We're Looking ForStrong SQL fundamentals

Familiarity with ETL/ELT workflows and tools

Exposure to dbt or similar transformation frameworks

Experience with a data warehouse or data lake

Basic understanding of batch vs real-time data processing

Awareness of data privacy and compliance considerations

Founding MindsetYou think in terms of decisions enabled, not just pipelines built

You ask who will use this and why before modeling data

You take ownership of data reliability and usability

You balance speed of iteration with long-term maintainability

You proactively identify and fix data quality issues

BonusExperience with experimentation or product analytics

Exposure to BI tools or metric layers

Experience working with event-based or high-volume data

What Success Looks LikeWithin 46 weeks, you should be able to:

Own a part of the data stack (e.g., usage or quality metrics)

Ship pipelines that are used for real product or business decisions

Catch and prevent at least one major data quality issue

Improve clarity and consistency of key metrics

What You'll GetHands-on experience building and owning a modern data stack

Direct collaboration with founders, product, and engineering teams

Ownership of meaningful data systems and pipelines

A portfolio of data models, pipelines, and analytics work

A strong pathway into data engineering, analytics, or product data roles

Who This Is Not ForIf you only want to write ad hoc queries

If you avoid ambiguity around metrics and definitions

If you prefer static, slow-changing data environments

If you're looking for a low-pressure internship

Who Will Thrive HereBuilders who treat data as a product

Engineers who think in end-to-end data flows

Calm debuggers of broken pipelines and inconsistent metrics

High-agency individuals who take ownership of data quality and outcomes

About the CompanyWe're building the speech intelligence layer for Southeast Asiaturning real-world, accented, code-switched speech into structured, usable outputs for businesses.

More Info

Job Type:
Industry:
Employment Type:

About Company

Job ID: 144720107