Senior Backend Engineer

JOB DESCRIPTION

Include, but not limited to the following
Participate in designing distributed system architecture for systems and services.
Participate in the development and maintenance of backend services in Python
Participate in the development and maintenance of services to work with third parties such as Spark, Kafka, Elastic Search, Kubernetes, etc …
Participate in the development and maintenance of monitoring services using SupervisorD, Prometheus, Sentry, Alerta, etc …
Coordinate with stakeholders such as the pure infrastructure team, business team, etc … to resolve crossing issues.

JOB REQUIREMENT

Bachelor’s degree in Computer Science or related discipline or equivalent job experience.
5+ years of hands-on industry experience developing scalable and robust software applications in web environments with exposure to backend stacks
Deep understanding in Spark, Kafka, K8s
Strong understanding of data structures, algorithms, Object-Oriented Programming, and Model-View-Controller web framework
Working knowledge of Unix/Linux environment.
Experience with microservices, caching tools, data visualization, queuing systems, or large-scale distributed systems is a great plus.
Excellent debugging and problem-solving skills.
Excellent interpersonal skills
Fluent in spoken and written English

WHAT'S ON OFFER

Competitive and attractive compensation package with a clear career road-map – where you feel challenged every day
We offer a strong culture of learning and development: training courses, library, speakers, share and learn events
Learn from who sits next to you! Working in the Company you are surrounded by smart and talented people
Employee resources groups with strong diversity and inclusion culture
Premium Health Insurance and Employee Assistance Program
Generous time-off policy, unlimited sick days, re-creation sabbatical leave (based on tenure), Trade Union benefits for staff and family
Team building activities every month: Local engagement events, monthly team lunch – Employee clubs: football, ping-pong, badminton, yoga, running, PS5, movies, etc.
Annual company trip and occasional global conferences – opportunity to travel and connect with our global teams
Happy hour with tea break, snacks, and meals every day in the office!

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

Technical Skills:

Backend, Python

Location:

Ho Chi Minh, Ha Noi - Viet Nam

Working Policy:

Salary:

Negotiation

Job ID:

J00645

Status:

Close

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