SmolLM2-Math-IIO-1.7B-Instruct

The SmolLM2-Math-IIO-1.7B-Instruct model is a fine-tuned variant of the SmolLM2-1.7B architecture, optimized for mathematical instruction and reasoning tasks. It is particularly suited for applications that require mathematical problem-solving, logical inference, and detailed step-by-step explanations.

File Name Size Description Upload Status
.gitattributes 1.52 kB Git attributes configuration file Uploaded
README.md 287 Bytes Updated README file Updated
config.json 940 Bytes Model configuration settings Uploaded
generation_config.json 162 Bytes Generation-specific configurations Uploaded
merges.txt 515 kB Merging information for tokenization Uploaded
pytorch_model.bin 3.42 GB Full model weights (PyTorch format) Uploaded (LFS)
special_tokens_map.json 572 Bytes Mapping for special tokens used by the model Uploaded
tokenizer.json 3.77 MB Tokenizer configuration and vocabulary Uploaded
tokenizer_config.json 3.95 kB Tokenizer configuration for loading and usage Uploaded
vocab.json 801 kB Vocabulary for the tokenizer Uploaded

Key Features:

  1. Math-Focused Capabilities:
    This model is fine-tuned to handle a wide range of mathematical queries, from simple arithmetic to complex equations and mathematical proofs.

  2. Instruction-Tuned:
    Specifically trained to follow structured queries and deliver clear, coherent outputs based on instructions, ensuring high-quality, relevant responses to prompts.

  3. Tokenizer & Custom Tokens:
    Includes a robust tokenizer configuration with support for mathematical notation, custom tokens, and an extended vocabulary for accurate understanding and output generation.


Training Details:

  • Base Model: SmolLM2-1.7B
  • Dataset: Trained on Math-IIO-68K-Mini, a dataset focused on mathematical instructions and logic-based queries, with a total of 68.8k examples.

Capabilities:

  • Mathematical Problem-Solving: Solves and explains complex mathematical problems, including algebra, calculus, and more advanced topics.
  • Instruction-Following: Adheres to structured inputs and outputs, making it effective for generating step-by-step solutions.
  • Text Generation: Capable of generating mathematical proofs, explanations, and educational content tailored to various user queries.

Usage Instructions:

  1. Model Setup: Download all model files and ensure the PyTorch model weights and tokenizer configurations are included.
  2. Inference: Load the model in a Python environment using frameworks like PyTorch or Hugging Face's Transformers.
  3. Customization: Configure the model with the config.json and generation_config.json files for optimal performance during inference.

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