Generative AI: 1. Ethics 2.CLIP: Difference between revisions
Jump to navigation
Jump to search
Line 59: | Line 59: | ||
| | | | ||
* Evaluation of Llama model before and after fine-tuning with ETHICS dataset.<br> | * Evaluation of Llama model before and after fine-tuning with ETHICS dataset.<br> | ||
* Model Tuning. | |||
* Mid-term Presentation & Start writing the Wikipedia page with the plan. | * Mid-term Presentation & Start writing the Wikipedia page with the plan. | ||
|√ | |√ | ||
Line 78: | Line 79: | ||
* Start a simple reinforcement learning model setup.<br> | * Start a simple reinforcement learning model setup.<br> | ||
* Run preliminary tests and evaluate results.<br> | * Run preliminary tests and evaluate results.<br> | ||
| | | | ||
|- | |- |
Revision as of 22:39, 4 December 2023
Project Plan and Milestones
Weekly Plan
Date | Task | Completion |
---|---|---|
Week 4 |
|
√ |
Week 5 |
|
√ |
Week 6 |
|
√ |
Week 7 |
|
√ |
Week 8 |
|
√ |
Week 9 |
|
√ |
Week 10 |
|
√ |
Week 11 |
|
√ |
Week 12 |
|
|
Week 13 |
|
|
Week 14 |
|
Milestone 1
- Define Research Questions: Establish clear, focused questions to guide the project.
- Literature Review: Conduct a comprehensive review of existing studies in AI ethics.
- Ethical Theory Exploration: Investigate various ethical theories to ground your research in a solid theoretical framework.
- Ethical Dataset Identification: Locate datasets for quantitative AI ethics evaluation, such as red teaming datasets.
Milestone 2
- Refine Research Goals: Sharpen the focus and scope of the research based on initial findings.
- Dataset Finalization: Select the most appropriate dataset after exploration and evaluation.
- Model Selection and Fine-Tuning: Settle on the LLaMA model and fine-tune it by deploying GPU resources.
- Model Evaluation: Conduct a thorough evaluation of the model, focusing on its ethical implications and performance.
Milestone 3
- Develop Advanced Models: Implement Preference and Reinforcement learning models, integrating them with the fine-tuned LLaMA model.
- In-Depth Analysis: Analyze the models' outcomes, assessing performance, identifying defects, and investigating specific issues like coherence and degeneration.
- Documentation and Dissemination: Create a comprehensive Wikipedia page summarizing the project's findings.
- Final Deliverables: Compile all project materials, including a well-documented GitHub repository.