INTERNSHIP DETAILS

Machine Learning Engineer (Intern)

CompanyAppier
LocationTaipei
Work ModeOn Site
PostedMarch 4, 2026
Internship Information
Core Responsibilities
The intern will assist in operating robust ML job execution frameworks for training and inference, and help build and maintain internal API servers and developer tools orchestrated on Kubernetes. They will also collaborate with senior engineers to transform research outputs into user-facing product features.
Internship Type
full time
Company Size
861
Visa Sponsorship
No
Language
English
Working Hours
32 hours
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About The Company
Appier is an AI-native Agentic AI as a Service (AaaS) company that empowers businesses to create value with cutting-edge AdTech and MarTech solutions. Guided by the vision of “Making AI Easy by Making Software Intelligent,” our mission is to help businesses turn Agentic AI into ROI. Founded in 2012, Appier is listed on the Tokyo Stock Exchange’s Prime Market (Ticker: 4180) and operates in 17 cities worldwide, enabling over 2,000 leading companies to enhance marketing performance with the latest AI technology. As AI enablers for our customers in the AI Era, Appier delivers innovative solutions that drive measurable results.
About the Role

About Appier 

Appier (TSE: 4180) is an AI-native Agentic AI as a Service (AaaS) company that empowers businesses to create value through cutting-edge AdTech and MarTech solutions. Founded in 2012 with the vision of “Making AI Easy by Making Software Intelligent,” Appier helps businesses turn AI into ROI through its Ad Cloud, Personalization Cloud, and Data Cloud—each powered by Agentic AI that enables autonomous, adaptive, and real-time decision-making. Today, Appier operates 17 offices across APAC, the US, and EMEA, and is listed on the Tokyo Stock Exchange. Learn more at www.appier.com.

About the role

We are looking for a Machine Learning Engineer Intern to join the Enterprise Solution Science Team.
This team focuses on applying cutting-edge ML technologies to real-world marketing problems by combining them with omnichannel customer data.
In this role, you will help bridge the gap between research and production by building and optimizing scalable, high-performance ML infrastructure — including data pipelines, dashboards, and monitoring systems.

We are currently looking for individuals who can commit to an internship schedule of 2~4 days (16~32 hours) per week. This internship opportunity entails a minimum duration of 6 months, beginning from the present date. We advise prospective applicants to carefully assess their availability for this commitment before submitting their applications.

[ Due to the hybrid work model, this position cannot be fully remote and requires working in the Taiwan office. ]

 

What You’ll Work On

 

  • Assist in operating robust ML job execution frameworks for training, inference, and post-processing.
  • Assist in building and maintaining internal API servers and developer tools to orchestrate ML jobs on Kubernetes (via Argo Workflows, Helm, Terraform).
  • Assist in implementing data infrastructure and monitoring tools like Prometheus and Grafana.
  • Create internal tools and services to simplify ML experimentation and production workflows.
  • Collaborate closely with senior ML engineers and scientists to turn research outputs into user-facing product features

 

 

What We’re Looking For

[Minimum qualifications]

 

  • Bachelor’s degree in Computer Science, Engineering, or a related field (Master’s degree preferred)
  • 2+ years of experience in ML or engineering
  • Proficiency in at least one programming language such as Python, Java, or Go, along with solid understanding of data structures and algorithms

 

[Preferred qualifications]

 

  • Impact-driven mindset, strong analytical and problem-solving skills, and a continuous passion for learning cutting-edge technologies.
  • Familiar in using LLM-powered tools (e.g., Github Copilot, ChatGPT) to boost development productivity
  • Understanding of core ML and deep learning concepts
  • Hands-on experience with end-to-end ML workflows and AI system architecture, and familiarity with platforms like Kubeflow, MLflow, or Apache Submarine.
  • Proficiency with cloud-native ecosystems (e.g., Kubernetes, Helm, Prometheus, Argo Workflows)

 

 

 

Key Skills
Machine LearningPythonJavaGoData StructuresAlgorithmsKubernetesArgo WorkflowsHelmTerraformPrometheusGrafanaAPI ServersData PipelinesInferenceDeep Learning
Categories
TechnologyEngineeringData & AnalyticsSoftwareScience & Research