| | ---
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| | library_name: transformers
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| | tags:
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| | - text-generation-inference
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| | - PRM
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| | - Code
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| | - Math
|
| | license: apache-2.0
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| | language:
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| | - zho
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| | - eng
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| | - fra
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| | - spa
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| | - por
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| | - deu
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| | - ita
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| | - rus
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| | - jpn
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| | - kor
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| | - vie
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| | - tha
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| | - ara
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| | base_model:
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| | - Qwen/Qwen2.5-1.5B-Instruct
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| | pipeline_tag: text-generation
|
| | ---
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| |
|
| | 
|
| |
|
| | # **Deepthink-1.5B-Open-PRM**
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| |
|
| | > **Deepthink-1.5B-Open-PRM** is a **process-supervised reasoning model** fine-tuned from **Qwen2.5 1.5B** using **Process Reward Models (PRM)**. It excels at **step-by-step mathematical problem solving** in both **English** and **Simplified Chinese**, offering interpretable, logically structured responses for use in **education**, **STEM tutoring**, and **lightweight math agents**.
|
| |
|
| | ## **Key Features**
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| |
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| | 1. **Process Reward Model Supervision (PRM)**
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| | Fine-tuned with PRMs to reward high-quality intermediate reasoning steps — fostering step-by-step interpretability, accuracy, and educational transparency.
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| |
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| | 2. **Compact Foundation (Qwen2.5 0.5B)**
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| | Built upon the highly efficient Qwen2.5 1.5B architecture and scaled up through distillation and reward-based alignment to 1.5B parameters, balancing reasoning quality and deployment efficiency.
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| |
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| | 3. **Bilingual Math Capability**
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| | Fluent in solving and explaining math problems in both **English** and **Simplified Chinese**, making it ideal for multilingual classrooms and tutoring platforms.
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| |
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| | 4. **Process-Supervised Math Reasoning**
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| | Trained to reason like a teacher — showing each logical step before delivering an answer. Ideal for learners who need to understand the “how” and “why” behind each solution.
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| |
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| | 5. **Long-Context & Word Problem Reasoning**
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| | Especially proficient with multi-step arithmetic, word problems, logic puzzles, and middle school to early college-level math.
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| |
|
| | ## **Quickstart with Transformers**
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| |
|
| | ```python
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| | from transformers import AutoModelForCausalLM, AutoTokenizer
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| |
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| | model_name = "prithivMLmods/Deepthink-1.5B-Open-PRM"
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| |
|
| | model = AutoModelForCausalLM.from_pretrained(
|
| | model_name,
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| | torch_dtype="auto",
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| | device_map="auto"
|
| | )
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| | tokenizer = AutoTokenizer.from_pretrained(model_name)
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| |
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| | prompt = "Solve: A tank can be filled by one pipe in 6 hours and emptied by another in 9 hours. How long will it take to fill the tank if both pipes are opened together?"
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| |
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| | messages = [
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| | {"role": "system", "content": "You are a helpful math tutor who explains each step clearly."},
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| | {"role": "user", "content": prompt}
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| | ]
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| |
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| | text = tokenizer.apply_chat_template(
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| | messages,
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| | tokenize=False,
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| | add_generation_prompt=True
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| | )
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| | model_inputs = tokenizer([text], return_tensors="pt").to(model.device)
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| |
|
| | generated_ids = model.generate(
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| | **model_inputs,
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| | max_new_tokens=512
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| | )
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| | generated_ids = [
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| | output_ids[len(input_ids):] for input_ids, output_ids in zip(model_inputs.input_ids, generated_ids)
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| | ]
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| |
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| | response = tokenizer.batch_decode(generated_ids, skip_special_tokens=True)[0]
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| | ```
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| |
|
| | ## **Intended Use**
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| |
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| | - **Math Education Agents**: Tutors that explain problems step by step, helping users build understanding through reasoning.
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| | - **Bilingual Learning Platforms**: Apps that teach math in both Chinese and English.
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| | - **STEM-Oriented Assistants**: Supports early-stage problem solving in science and engineering contexts.
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| | - **Lightweight LLM Deployments**: Optimized for low-resource environments, from browsers to mobile devices.
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| |
|
| | ## **Limitations**
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| |
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| | 1. **Domain Specificity**
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| | Primarily tuned for math reasoning — performance may degrade on unrelated tasks like creative writing or open dialogue.
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| |
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| | 2. **Model Size Constraint**
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| | While efficient, 1.5B parameters may struggle with highly abstract or very long multi-domain tasks.
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| |
|
| | 3. **PRM Bias Generalization**
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| | PRM training can bias toward rewardable structures — results should still be reviewed for correctness and completeness.
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| |
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| | 4. **Prompt Structure Sensitivity**
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| | Well-structured queries yield more accurate and educationally useful outputs. |