AwA - 1.5B
AwA (Answers with Athena) is my portfolio project, showcasing a cutting-edge Chain-of-Thought (CoT) reasoning model. I created AwA to excel in providing detailed, step-by-step answers to complex questions across diverse domains. This model represents my dedication to advancing AI’s capability for enhanced comprehension, problem-solving, and knowledge synthesis.
Key Features
Chain-of-Thought Reasoning: AwA delivers step-by-step breakdowns of solutions, mimicking logical human thought processes.
Domain Versatility: Performs exceptionally across a wide range of domains, including mathematics, science, literature, and more.
Adaptive Responses: Adjusts answer depth and complexity based on input queries, catering to both novices and experts.
Interactive Design: Designed for educational tools, research assistants, and decision-making systems.
Intended Use Cases
Educational Applications: Supports learning by breaking down complex problems into manageable steps.
Research Assistance: Generates structured insights and explanations in academic or professional research.
Decision Support: Enhances understanding in business, engineering, and scientific contexts.
General Inquiry: Provides coherent, in-depth answers to everyday questions.
Type: Chain-of-Thought (CoT) Reasoning Model
Base Architecture: Adapted from [qwen2]
Parameters: [1.54B]
Fine-tuning: Specialized fine-tuning on Chain-of-Thought reasoning datasets to enhance step-by-step explanatory capabilities.
Ethical Considerations
Bias Mitigation: I have taken steps to minimise biases in the training data. However, users are encouraged to cross-verify outputs in sensitive contexts.
Limitations: May not provide exhaustive answers for niche topics or domains outside its training scope.
User Responsibility: Designed as an assistive tool, not a replacement for expert human judgment.
Usage
Option A: Local
Using locally with the Transformers library
# Use a pipeline as a high-level helper
from transformers import pipeline
messages = [
{"role": "user", "content": "Who are you?"},
]
pipe = pipeline("text-generation", model="Spestly/AwA-1.5B")
pipe(messages)
Option B: API & Space
You can use the AwA HuggingFace space or the AwA API (Coming soon!)
Roadmap
- More AwA model sizes e.g 7B and 14B
- Create AwA API via spestly package
- Downloads last month
- 55