Senior Data Integration Engineer

JOB DESCRIPTION

Work alongside highly talented & motivated team members passionate about solving hard, real-world problems with our unique and category-defining SaaS platform.
Work on latest Micro-services, Service Mesh, Big Data, AI/Machine Learning & IoT technologies.
Collaborate with other technology teams and architects to define and develop solutions.
Extract, transform and integrate large and small datasets.
Delight enterprise customers across multi-billion dollar industries in APAC.
Have a voice and make a tremendous impact on what you're building from the ground up.
Have a huge room to grow, not only on tech side but also on team management & client dealings.  

JOB REQUIREMENT

Broad background in Computer Science, especially with Data Structures & Algorithm. 
Have good experience with SaaS product product development
Have good programming experience with Python/Java 
Have experience with stream processing / batch processing
Experience in 3rd Party System Integrations/API Programming
Have experience ETL Development, Testing, Maintenance and Troubleshooting.
Experience in some ETL frameworks: Airflow, Apache spark, Dbt, Singer Tab …
Knowledge with multiple relational databases (RDBMS) platforms, particularly with developing data models and writing SQL queries.
Have experience with AWS IoT / Azure IoT is a huge plus.
Have experience with development and rollout a hardware/IoT product could be a plus
Good understanding of data lifecycle and architecture best practices
Nice to have plus experiences: security communicate and encrypted data
Fair English speaking, reading and writing. 
Basic understanding of Scrum and Agile.
Strong communication & possessing a “sales” mindset.

WHAT'S ON OFFER

Work with experienced & strong technical veterans (software architects with 10+ years of experience).
Start-up working environment with flexibilities to work & learn & enjoy outside-work life.
Work on various bleeding-edge technologies such as big data processing, video streaming, cloud computing.
Social and Health insurance under Vietnamese Labor Law.
Twice-yearly salary review based on actual ability and contribution.
Annual health check (premium healthcare), company trip, frequent team building activities.

CONTACT

PEGASI – IT Recruitment Consultancy | Email: recruit@pegasi.com.vn | Tel: +84 28 3622 8666
We are PEGASI – IT Recruitment Consultancy in Vietnam. If you are looking for new opportunity for your career path, kindly visit our website www.pegasi.com.vn for your reference. Thank you!

Job Summary

Company Type:

Product, IoT

Technical Skills:

Data Engineering, Java, Python, IoT

Location:

Ho Chi Minh - Viet Nam

Working Policy:

Salary:

$ 1,500 - $ 5,000

Job ID:

J00636

Status:

Close

Related Job:

Senior Business Analyst

Ho Chi Minh - Viet Nam


Outsource

  • Business Analyst

Negotiation

View details

AI-Native Software Engineering Lead

Ho Chi Minh - Viet Nam


Outsource

  • Backend
  • AI

Responsible for developing and evolving the AI-native SDLC operating model, including agent workflow designs, verification gates, context management standards, and evaluation frameworks Build and lead multi-agent systems using orchestration layers such as Claude Code, GitHub Copilot Workspace, Cursor, LangGraph, CrewAI, or equivalent, from prototype to production Collaborate with the Director of Engineering to contribute to and maintain the company's AI toolchain selection criteria and evaluate tools with engineering rigor, providing internal guidance on when AI is beneficial and when it is not Establish engineering standards, agent evaluation loops, and AI output quality gates across the delivery organization Previous experience in a lead, principal, or staff engineer role with demonstrated cross-team influence Experience in outsourcing, consulting, or multi-client delivery environments Track record of building or leading an internal community of practice, guild, or AI adoption program Develop and continuously evolve the company's AI-native SDLC playbook, including standards, workflow templates, case studies, and guardrails that delivery teams can adopt immediately Design and lead internal upskilling programs that transition engineers from AI-assisted to AI-native working patterns Keep track of the AI capability frontier, model improvements, new agent frameworks, and emerging risks, translating signals into timely updates to KMS's practices Work closely alongside Delivery Teams as an AI transformation advisor and execution partner, identifying the highest-value automation opportunities across the SDLC and coordinating with the team to implement them Design and deploy agent-orchestrated workflows tailored to each client's stack, team maturity, and delivery context, with measurable ROI Build business cases for AI-native adoption with clients and account managers, framing the value in terms of velocity, quality, and cost Represent the company's AI-native engineering capabilities in client conversations, QBRs, and RFP responses as a credible technical authority

Negotiation

View details

Platform Lead

Others - Singapore


Product

  • Backend
  • Devops
  • Data Engineering

Develop and expand distributed systems to handle large volumes of sensory, telemetry, and control data across cloud and edge environments, facilitating real-time connections for fleets of robots. Create the API Platform with a focus on high reliability, exceptional developer experience, and robust multimodal AI capabilities accessible through user-friendly APIs and SDKs. Establish extensive training and inference platforms for foundation models used in robot autonomy, teleoperation, and developer integrations. Devise data ingestion and streaming pipelines for real-time connectivity of robot fleets to the cloud, covering various data inputs such as video, LiDAR, joint states, and audio. Oversee and advance a modern cloud native infrastructure stack employing Kubernetes, Docker, and infrastructure as code tools. Ensure platform reliability through telemetry, monitoring, alerting, autoscaling, failover, and disaster recovery measures. Make infrastructure decisions pertaining to distributed storage, consensus protocols, GPU orchestration, network reliability, and API security. Foster collaboration across ML, robotics, and product teams to facilitate hardware in the loop simulation, policy rollout, continuous learning, and CI/CD workflows. Implement secure APIs featuring fine-grained access control, usage metering, rate limiting, and billing integration to accommodate a growing user base.

Negotiation

View details