LEARNING OUTCOMES
Credits: 5
Schedule: 04.09.2023 - 27.11.2023
Teacher in charge (valid for whole curriculum period):
Teacher in charge (applies in this implementation): Pekka Marttinen
Contact information for the course (applies in this implementation):
CEFR level (valid for whole curriculum period):
Language of instruction and studies (applies in this implementation):
Teaching language: English. Languages of study attainment: English
CONTENT, ASSESSMENT AND WORKLOAD
Content
valid for whole curriculum period:
Introductory lecture, recent research articles on NLP.
applies in this implementation
Preliminary list of papers: https://docs.google.com/spreadsheets/d/14KMAYPSm9A_Z_R6EvWpSy58_GG4mPrVksvLN25NsyNE/edit#gid=0
Introductory lecture on transformers, encoder and decoder architectures, Large Language Models (LLMs), fine-tuning and OpenSource LLMs.22 seminar presentations (2 per lecture) on the following topics (order to be defined depending on the students' preferences):
- Transformer alternatives
- LLMs for coding
- In-Context Learning
- Mixture of Experts
- Multimodality
- Parameter-Efficient Fine-Tuning
- Performance improvements
- Positional Encodings
- Quantization
- Reasoning and acting with LLMs
- Reinforcement Learning from Human Feedback
- Scaling LLMs
- Security and alignment
- Open problems and limitations of the state-of-the-art approaches
Assessment Methods and Criteria
applies in this implementation
Students will be graded based on their presentation, opponent's task and writing assignments.
Workload
applies in this implementation
Attending meetings 12*2h=24h. Preparing the presentation 14h. Preparing to serve as opponent: 7h. Familiarizing oneself with the week’s papers: 11*2*3h=66h. Writing assignments: 11*2h=22h. Total: 133h, 133/26.7 = 5 cr.
DETAILS
Study Material
valid for whole curriculum period:
Articles and slides available online.
applies in this implementation
Articles and slides available online.
Substitutes for Courses
valid for whole curriculum period:
Prerequisites
valid for whole curriculum period:
FURTHER INFORMATION
Further Information
valid for whole curriculum period:
Seminar, one 2-hour meeting per week. No exam. In-person attendance required (minimum 10/12 weeks to pass).
Number of participating students: max. 22. If more students want to attend, the selection will be made based on the amount and average grade of Master's level machine learning courses.
Assesment criteria: Presentation, opponent's task, writing assignments.
Estimated workload: Attending meetings 12*2h=24h. Preparing the presentation 14h. Preparing to serve as opponent: 7h. Familiarizing oneself with the week’s papers: 11*2*3h=66h. Writing assignments: 11*2h=22h. Total: 133h, 133/26.7 = 5 cr
Details on the schedule
applies in this implementation
Ma 04.09.2023 klo 10:15 - 12:00, R030/A133 T5
Ma 11.09.2023 klo 10:15 - 12:00, R030/A133 T5
Ma 18.09.2023 klo 10:15 - 12:00, R030/A133 T5
Ma 25.09.2023 klo 10:15 - 12:00, R030/A140 T4
Ma 02.10.2023 klo 10:15 - 12:00, R030/A133 T5
Ma 09.10.2023 klo 10:15 - 12:00, R030/A133 T5
(exam week)
Ma 23.10.2023 klo 10:15 - 12:00, R030/A133 T5
Ma 30.10.2023 klo 10:15 - 12:00, R030/A133 T5
Ma 06.11.2023 klo 10:15 - 12:00, R030/A133 T5
Ma 13.11.2023 klo 10:15 - 12:00, R030/A133 T5
Ma 20.11.2023 klo 10:15 - 12:00, R030/A133 T5
Ma 27.11.2023 klo 10:15 - 12:00, R030/A133 T5