Skip to main content
Upload your CV and find your next job on Indeed!

Data Engineer jobs

Sort by: -
    • Experience with financial market data.
    • We need someone to own data.
    • Not manage a team that does data.
    • Negotiate contracts and manage commercial relationships…
    • Experience working in large-scale data warehouse and big data environments.
    • Integrate data across multiple enterprise systems while ensuring data quality,…
    • 6+ years of experience in data engineering,big data technologies, or a similar role.
    • Work closely with data analysts, data scientists, and business stakeholders…
    • Implement data quality checks and validation processes to ensure data integrity and reliability.
    • Collaborate with data scientists and analysts to understand…
    • Good experience designing data solutions including data modeling.
    • Develop data transformation routines to clean, normalize, and aggregate data.
    • Ensure physical security controls and authorized data centre access.
    • Follow operational and safety standards for data centre environments.
    • Manage and maintain scalable data warehousing solutions.
    • Design and implement ETL/ELT pipelines and data workflows.
    • 0 to 1 Year Experience in Data Engineering.
    • Good experience designing data solutions including data modeling.
    • Develop data transformation routines to clean, normalize, and aggregate data.
    • Direct experience supporting Bloomberg terminals and/or market data platforms.
    • Provide support for business-critical financial applications and market data…
    • Ensure strict adherence to data centre physical security procedures.
    • Minimum 5 years of experience in data centre facility management.
    • POSITION OVERVIEW : Testing Engineering Senior Analyst.
    • POSITION GENERAL DUTIES AND TASKS :
    • Review and analyze system specifications.
    • Set up data infrastructure, data pipelines, integrate source system data with data lakes and data mining models into data pipelines.
    • Re-engineer dataset onboarding frameworks by building automated data validation and metadata verification checks to catch anomalies early and ensure high data…
    • Demonstrated experience in data engineering, with a proven ability to build scalable data solutions.
    • Develop data solutions using Databricks Lakehouse and Delta…
    • Familiarity with data security and backup strategies.
    • Collaborate with developers to design efficient data structures.

People also searched:

ai engineer

Job Post Details

Data Engineer - job post

DGTL TECHNOLOGIES PTE. LTD.
SingaporeRemote
$11,700 - $15,000 a month - Permanent, Full-time
You must create an Indeed account before continuing to the company website to apply

Job details

Pay

  • $11,700 - $15,000 a month

Job type

  • Permanent
  • Full-time

Benefits

Pulled from the full job description

  • Tools provided
  • Work from home

Full job description

We're building an AI-powered research platform for institutional investors. Our platform turns vast amounts of market, alternative, and proprietary data into actionable intelligence — powered by AI agents that depend on clean, reliable, real-time data to do their job.

We need someone to own data. Not manage a team that does data. Own it — from finding the right sources, to getting them flowing, to making sure they stay healthy at scale.

Today we ingest from hundreds of sources. That number is growing fast. The sources are diverse: real-time market feeds, regulatory filings, news, social sentiment, alternative datasets, and proprietary client data. Some are free APIs. Some are $10K/month enterprise contracts. Some are clients pushing their own data into our platform. Every one of them is different, and most of them will break in ways you don't expect.

You'll evaluate vendors, negotiate deals, build integrations, monitor quality, track costs, and make the call on what's worth paying for. When something breaks at 2 AM, you'll know why before the alert finishes firing.

This is an end-to-end ownership role. No handoffs.

Responsibilities

  • Build and maintain integrations with a large and growing number of external data sources — APIs, WebSockets, file drops, streams, scrapers, and formats you haven't seen yet
  • Evaluate and compare data vendors across quality, reliability, coverage, cost, and terms of service
  • Negotiate contracts and manage commercial relationships with data providers
  • Design and operate high-throughput ingestion pipelines handling mixed workloads (real-time, near-real-time, batch, event-driven)
  • Build monitoring that tells you — before anyone else — when data is late, wrong, incomplete, or drifting
  • Manage data quality at scale: anomaly detection, cross-source validation, schema drift detection, gap filling
  • Handle both structured data (time-series, tabular) and unstructured data (documents, text, images) with appropriate extraction and storage
  • Track costs per source, usage per consumer, and ROI — recommend what to keep, upgrade, or cancel
  • Build tooling that makes adding the next data source faster than the last one
  • Use AI tools aggressively in your daily work — for code generation, testing, documentation, anomaly analysis, and anything else that makes you faster

Requirements

You've done this before:

  • 5+ years building data pipelines that run in production, 24/7, with real SLAs
  • Deep hands-on experience with SQL databases and time-series data
  • Python as your primary language, comfortable with async programming
  • You've integrated with dozens of external APIs and dealt with the reality of unreliable vendors, changing schemas, rate limits, and bad documentation
  • You've built monitoring and alerting for data systems — not as an afterthought but as part of how you work

You think about the whole picture:

  • You don't just connect to an API. You think about what happens when it goes down, when the schema changes, when the data is wrong, when the bill doubles
  • You understand that data has a cost and a value, and not every source is worth keeping
  • You've worked with data vendors commercially — contracts, pricing tiers, usage negotiations

You use AI daily:

  • AI coding tools are part of your workflow today, not something you're curious about
  • You can articulate specifically how AI makes you faster and where it doesn't help
  • You'd be frustrated if you couldn't use AI in your work

Nice to have

  • Experience with financial market data
  • Experience with streaming systems (Kafka or similar) at scale
  • Vector database or embedding pipeline experience
  • Experience with unstructured data extraction (PDFs, documents, NLP)

Perks & Benefits

  • Senior individual contributor role with full ownership of the data domain
  • Direct access to leadership — no bureaucracy, fast decisions
  • AI tools provided and encouraged across all work
  • Remote-friendly, async-first
  • Compensation commensurate with experience

Let Employers Find YouUpload Your Resume