KAIST Visual AI Internship 2025-26 offers an incredible opportunity for undergraduate students passionate about artificial intelligence, visual computing, and machine learning. Hosted by the prestigious Korea Advanced Institute of Science and Technology (KAIST), this internship allows students to explore cutting-edge research in visual data analysis and AI-powered image generation. Participants will gain practical research experience through coding projects, paper discussions, and direct mentorship from leading researchers at the KAIST Visual AI Group. The program focuses on advanced technologies that process, interpret, and generalize complex visual data formats.
Interns will engage in projects across diverse research areas such as diffusion and flow-based generative models, neural rendering, 3D generation and editing, foundation models (LLMs and VLMs), neural operators, and video generative models. Students can either develop a project idea provided by the research team or propose their own concept. This hands-on experience will strengthen technical and research skills valuable for future graduate studies. Please note that while the KAIST Visual AI Internship 2025-26 is open to both local and international students, only those currently enrolled in Korean universities are eligible for paid positions due to administrative policies.
Benefits
- Interns will get paid by the host university.
- Students will get hands-on- experience in research related to their courses.
- Students can propose their own idea for the research project.
- Detailed discussion among students will add value in each other’s existing knowledge.
- A great opportunity to work in an international setting.
Eligibility Criteria
- Should have prior experience in developing any deep learning techniques.
- Will be given preference who have taken the courses Diffusion Models and Their Applications or Machine Learning for 3D Data.
- Should be physically present in the lab during the internship period.
- Will be preferred who can extend their internship for the next semester. (They might have the option to do remote work).
- Should commit to complete the internship for at least 8 weeks.
- Will only be paid if they are enrolled in a University inside Korea.
How to apply?
- Visit the official KAIST Visual AI Group website and access the internship application form.
- Fill in your personal details, academic background, and research interests accurately.
- Upload your updated CV or résumé, a short statement of purpose, and any relevant research work or code samples that demonstrate your skills in AI, machine learning, or computer vision.
- Indicate your preferred internship period and clarify whether you are currently enrolled in a Korean university or applying from abroad.
- Review all details carefully before submitting, as incomplete or inaccurate applications may not be considered.
- After submission, you will receive a confirmation email. Selected candidates will be contacted for further discussion or next steps.
- Keep in mind that only students enrolled in Korean universities are eligible for paid positions, though international students are welcome to apply.
Frequently Asked Questions (FAQs)
The KAIST Visual AI Internship 2025-26 is open to undergraduate students interested in visual AI research. The 8-week full-time program runs from Dec 22, 2025, to Feb 27, 2026, includes tutorials, projects, and meetings, and offers payment for students in Korean universities.
Who can apply for the KAIST Visual AI Internship 2025-26?
Undergraduate students with experience in deep learning are encouraged to apply. Both KAIST and non-KAIST students are welcome, though financial support is only available for students enrolled in Korean universities.
What is the duration of the KAIST Visual AI Internship 2025-26?
The internship will run from December 22, 2025, to February 27, 2026. There is a short break between December 26 and December 30, 2025, allowing interns to rest or attend personal matters.
Are international students eligible?
Yes, international students can apply, but financial compensation is limited to those studying at Korean universities due to administrative restrictions. All participants can gain hands-on experience in visual AI research.
What are the main research topics for this KAIST Visual AI Internship 2025-26?
The internship focuses on generative models, diffusion and flow-based models, multimodal foundation models, spatial intelligence, and reinforcement learning for fine-tuning visual AI systems.
What tasks will interns perform during the program?
Interns will engage in coding tutorials, work on small-scale research projects, participate in weekly technical paper meetings, and attend lighter paper digest sessions to explore recent AI research.
Do interns need prior coursework or experience?
Candidates with experience in deep learning or who have taken related courses in diffusion, flow, or 3D machine learning are preferred. However, previous coursework is recommended but not mandatory.
Will interns receive financial compensation?
Yes, interns enrolled at Korean universities will receive payment. Students attending universities outside Korea can participate but will not be paid due to administrative policies.
Can interns take a break during the KAIST Visual AI Internship 2025-26?
Yes, interns are allowed a break of up to one week. This must be arranged in advance and approved by the research group to ensure participation in core activities is not disrupted.
Can non-KAIST students stay in KAIST dormitories during the KAIST Visual AI Internship 2025-26?
Yes, non-KAIST interns can arrange dormitory accommodation during the KAIST Visual AI Internship 2025-26, ensuring proximity to the lab and participation in daily activities.
How do I apply for the KAIST Visual AI Internship 2025-26?
Applications are submitted via the online form. Applicants must provide a CV or résumé, transcript, and optionally, research experience, project work, or programming samples to strengthen their submission.
Discover more from Scholarship Union
Subscribe to get the latest posts sent to your email.