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
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generation_config.json
162 Bytes
Generation-specific configurations
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merges.txt
515 kB
Merging information for tokenization
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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
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tokenizer.json
3.77 MB
Tokenizer configuration and vocabulary
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tokenizer_config.json
3.95 kB
Tokenizer configuration for loading and usage
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vocab.json
801 kB
Vocabulary for the tokenizer
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Key Features:
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.
Instruction-Tuned:
Specifically trained to follow structured queries and deliver clear, coherent outputs based on instructions, ensuring high-quality, relevant responses to prompts.
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.