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Explore Location
Thales
Singapore, Singapore
(on-site)
Job Type
Full-Time
Job Function
Other
Predictive Maintenance Intern
The insights provided are generated by AI and may contain inaccuracies. Please independently verify any critical information before relying on it.
Predictive Maintenance Intern
The insights provided are generated by AI and may contain inaccuracies. Please independently verify any critical information before relying on it.
Description
Location: Singapore, SingaporeThales is a global technology leader trusted by governments, institutions, and enterprises to tackle their most demanding challenges. From quantum applications and artificial intelligence to cybersecurity and 6G innovation, our solutions empower critical decisions rooted in human intelligence. Operating at the forefront of aerospace and space, cybersecurity and digital identity, we're driven by a mission to build a future we can all trust.
In Singapore, Thales has been a trusted partner since 1973, originally focused on aerospace activities in the Asia-Pacific region. With 2,000 employees across three local sites, we deliver cutting-edge solutions across aerospace (including air traffic management), defence and security, and digital identity and cybersecurity sectors. Together, we're shaping the future by enabling customers to make pivotal decisions that safeguard communities and power progress.
TOPIC : Condition-based Predictive Maintenance for Critical Systems
Description
Thales is a major supplier of critical systems, e.g. defense sensors and avionics parts. One of our missions is to revolutionize the way critical systems are maintained, ensuring maximum uptime, efficiency, and reliability. Joining the team means to be at the forefront of developing and implementing advanced machine learning models to predict and prevent equipment failures. Your work will directly impact the reliability and efficiency of our critical systems, ensuring they operate at peak performance. You will collaborate with a multidisciplinary team of engineers, data scientists, and domain experts to design, develop, and deploy predictive maintenance solutions.
Responsibilities:
- Collect / clean / transform / annotate data
- Survey / select / develop / compare candidate AI models
- Develop software codes to automate entire machine-learning lifecycle that meet corporate software engineering guidelines
Requirements:
- Hands-on experience with machine learning
- Proficient in at least two programming languages e.g. shell, Python, R, Matlab, C
- Preferably experience with various supervised / unsupervised AI models
- Preferably experience in making, serving and proxying API calls e.g. HTTP
- Keen interests in machine-learning operations for scale up and fast iteration
- Team player
Expected Outcomes
- Demonstration of a working system with well-defined end-to-end test scenarios
- Documentation of the finding, design and test cases / results
- Team sharing and communication of various forms, including but not limited to live demo, video and workshops
Commitment:
- Able to commit on a full-time basis for ideally 6 months (or a minimum of 5 months) from Jan 2026.
At Thales, we're committed to fostering a workplace where respect, trust, collaboration, and passion drive everything we do. Here, you'll feel empowered to bring your best self, thrive in a supportive culture, and love the work you do. Join us, and be part of a team reimagining technology to create solutions that truly make a difference for a safer, greener, and more inclusive world.
Job ID: 80833018
Median Salary
Net Salary per month
$4,558
Cost of Living Index
86/100
86
Median Apartment Rent in City Center
(1-3 Bedroom)
$3,000
-
$5,954
$4,477
Safety Index
78/100
78
Utilities
Basic
(Electricity, heating, cooling, water, garbage for 915 sq ft apartment)
$101
-
$262
$156
High-Speed Internet
$23
-
$54
$33
Transportation
Gasoline
(1 gallon)
$8.14
Taxi Ride
(1 mile)
$1.24
Data is collected and updated regularly using reputable sources, including corporate websites and governmental reporting institutions.
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