Feynman-Grpo-Exp is based on the Qwen 0.5B modality architecture, designed to enhance the reasoning capabilities of 0.5B-parameter models. It has been fine-tuned using the GRPO trainer on the OpenAI GSM8K dataset for reinforcement learning, improving its ability to handle complex reasoning tasks, multi-step problem-solving, and mathematical challenges. This model excels in chain-of-thought (CoT) reasoning and logical problem-solving, making it suitable for a variety of advanced tasks that require precise and structured outputs.
Key Improvements
Enhanced Knowledge and Expertise: Strengthened mathematical reasoning, code generation, and problem-solving skills, particularly in scientific and technical domains.
Fine-Tuned Instruction Following: Optimized for generating structured outputs like JSON and handling long-form text (up to 8K+ tokens).
Greater Adaptability: Enhanced role-playing capabilities, allowing for better responses to diverse prompts.
Long-Context Support: Capable of processing up to 64K tokens and generating up to 4K tokens per output.
Multilingual Proficiency: Supports over 29 languages, including Chinese, English, French, Spanish, Portuguese, German, and more.
Quickstart with Transformers
fromtransformersimportAutoModelForCausalLM,AutoTokenizermodel_name="prithivMLmods/Feynman-Grpo-Exp"model=AutoModelForCausalLM.from_pretrained(model_name,torch_dtype="auto",device_map="auto",trust_remote_code=True)tokenizer=AutoTokenizer.from_pretrained(model_name)prompt="Give me a short introduction to large language models."messages=[{"role":"system","content":"You are an advanced AI assistant with expert-level reasoning and knowledge."},{"role":"user","content":prompt}]text=tokenizer.apply_chat_template(messages,tokenize=False,add_generation_prompt=True)model_inputs=tokenizer([text],return_tensors="pt").to(model.device)generated_ids=model.generate(**model_inputs,max_new_tokens=512)generated_ids=[output_ids[len(input_ids):]forinput_ids,output_idsinzip(model_inputs.input_ids,generated_ids)]response=tokenizer.batch_decode(generated_ids,skip_special_tokens=True)[0]print(response)
Intended Use
Advanced Reasoning & Context Understanding: Ideal for logical deduction, multi-step problem-solving, and complex knowledge-based tasks.
Mathematical & Scientific Problem-Solving: Optimized for handling advanced calculations, theorem proving, and scientific queries.
Code Generation & Debugging: Capable of generating and optimizing code across multiple programming languages.
Structured Data Analysis: Processes structured data, including tables, JSON, and other formats, making it well-suited for data-centric tasks.
Multilingual Applications: Proficient in over 29 languages, enabling a global scale for applications.
Extended Content Generation: Supports detailed document writing, research reports, and instructional guides.
Limitations
Computational Requirements: Despite being a 0.5B-parameter model, it requires significant computational resources for efficient inference, especially when dealing with long-context processing.
Language-Specific Variability: Performance may vary across supported languages, with possible challenges for low-resource languages.
Potential Error Accumulation: Long-text generation can introduce inconsistencies or errors over extended outputs.
Limited Real-World Awareness: The model's knowledge is restricted to the training data, which may not reflect the most recent events or developments.
Prompt Sensitivity: Outputs depend heavily on the specificity and clarity of the input prompts.