招聘
Required Skills
Python
Backend development
System design
Distributed systems
Microservices
Docker
Kubernetes
Troubleshooting
At ABB, we help industries outrun - leaner and cleaner. Here, progress is an expectation - for you, your team, and the world. As a global market leader, we’ll give you what you need to make it happen. It won’t always be easy, growing takes grit. But at ABB, you’ll never run alone. Run what runs the world.
This Position reports to:
Senior Machine Learning Engineer:
What we believe in
Our mission in ABB IS (Information Systems) is to use information technology to provide valuable, reliable, and competitive IS services for ABB. If you offer deep technical experience, a methodical approach to solving problems, and the willingness to help us remain competitive, we want you on our team.
Your role and responsibilities
Own the stability, scalability, and performance of production-grade ML platforms by designing and enhancing backend services, orchestration layers, and system integrations that power critical ML workflows. Ensure resilient system architectures in distributed settings to preserve high availability, tolerate faults, and enable smooth operation. Own complex problem resolution and perform in-depth root-cause analysis across application, data, and infrastructure layers to reduce operational risk and downtime. Advocate for reliable deployment and DevOps workflows using Docker, Kubernetes (AKS), and CI/CD, ensuring configuration and release controls are applied. Act as a senior technical anchor for cross-functional teams and external vendors, translating complex ML and business requirements into resilient, scalable backend solutions.
The work model for the role is: Hybrid
You will be mainly accountable for:
- Oversee the design, improvement, and ownership of backend services that support ML workflows (model registry, deployments, APIs), ensuring well-architected systems across service boundaries, data flow, scalability, fault tolerance, performance, and maintainability, while advising internal teams and vendors on architecture.
- Diagnose and fix complex production incidents involving Spark jobs, Airflow pipelines, Azure ML runs, and AKS services through in-depth root-cause analysis across application, infrastructure, data, and configuration layers, while enhancing reliability, observability, and deployment stability.
- Design and maintain Dockerized services and Kubernetes (AKS) deployments, contribute to CI/CD pipelines, and establish best practices for configuration management, secrets handling, environment isolation, scaling strategies, upgrades, and rollback mechanisms.
- Serve as the primary technical contact, working with data scientists, ML engineers, business analysts, platform teams, and external vendors to convert business and ML workflow needs into scalable backend architectures, while coaching less experienced engineers on system design and complex debugging techniques.
Qualifications for the role:
- 3–5 years of experience as a Backend Engineer, Platform Engineer, Senior ML Engineer, or in a similar role.
- Demonstrated backend development skills in Python (or Java/Go) with direct experience creating APIs and services.
- Robust understanding of system design, covering distributed systems, microservices, scalability, fault tolerance, and reliability.
- Direct experience with AML and Airflow focused on platform or operational responsibilities.
- Working knowledge of Azure ML pipelines, endpoints, and deployment patterns.
- Solid practical experience with Docker and Kubernetes (AKS).
- Ability to identify and resolve complex production issues across application, data, and infrastructure layers.
More about us
At ABB IS (Information Systems), our mission is to apply information technology to deliver secure, reliable, and competitive digital solutions that create measurable value for ABB. Our commitment is to advance innovation, operational efficiency, and responsive business processes via reliable technical capabilities and strategic execution. If you possess deep technical capability, clear problem-solving skills, and the commitment to support our advancement in a rapidly developing landscape, we welcome you aboard
We value people from different backgrounds. Could this be your story? Apply today or visit www.abb.com to read more about us and learn about the impact of our solutions across the globe.
Fraud Warning: Any genuine offer from ABB will always be preceded by a formal application and interview process.
We never ask for money from job applicants.
For current open positions you can visit our career website https://global.abb/group/en/careers and apply.
Please refer to detailed recruitment fraud caution notice using the link https://global.abb/group/en/careers/how-to-apply/fraud-warning.
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About ABB

ABB
PublicABB is a multinational technology corporation that provides electrification, robotics, automation, and motion solutions for industrial and infrastructure applications.
10,001+
Employees
Zurich
Headquarters
Reviews
3.5
3 reviews
Work Life Balance
3.0
Compensation
2.0
Culture
2.5
Career
3.5
Management
2.0
35%
Recommend to a Friend
Pros
Award ceremonies and achievement recognition
Professional experience opportunities
Relevant marketing and writing experience
Cons
Awards only recognize sales and leadership teams
Auxiliary departments excluded and understaffed
No cost of living raises provided
Salary Ranges
405 data points
Mid/L4
Senior/L5
Mid/L4 · Project Manager
102 reports
$117,433
total / year
Base
$109,179
Stock
-
Bonus
$8,254
$79,130
$175,443
Interview Experience
5 interviews
Difficulty
3.8
/ 5
Duration
14-28 weeks
Offer Rate
20%
Experience
Positive 0%
Neutral 60%
Negative 40%
Interview Process
1
Application Review
2
Phone Screen
3
Technical Interview
4
System Design/Panel Interview
5
Onsite/Final Round
6
Offer Decision
Common Questions
Technical Knowledge
System Design
Behavioral/STAR
Past Experience
Problem Solving