--- language: - en - ru license: apache-2.0 pipeline_tag: text-generation base_model: nyuuzyou/SmolLM2-1.7B-Eagle datasets: nyuuzyou/EagleSFT co2_eq_emissions: emissions: 11163 # in grams of CO2 source: "Calculated based on power consumption and regional carbon intensity" training_type: "fine-tuning" geographical_location: "Kazan, Russia" hardware_used: "1 RTX 5090 GPU" --- # SmolLM2-1.7B-Eagle SmolLM2-1.7B-Eagle-GGUF is a GGUF conversion of the [SmolLM2-1.7B-Eagle](https://huggingface.co/nyuuzyou/SmolLM2-1.7B-Eagle) model, which itself is a fine-tuned version of [SmolLM2-1.7B](https://huggingface.co/HuggingFaceTB/SmolLM2-1.7B) on the [EagleSFT](https://huggingface.co/datasets/nyuuzyou/EagleSFT) dataset. This model is designed to improve capabilities in both Russian and English language tasks while being optimized for efficient local deployment. ## Model Description SmolLM2-1.7B-Eagle is a lightweight language model that has been fine-tuned specifically to handle bilingual content. This fine-tuning extends the base model's capabilities to better understand and generate content in Russian while maintaining its English competency. ### Base Model The model is built upon SmolLM2-1.7B, a compact language model with 360 million parameters that offers a good balance between performance and resource requirements. ## Fine-tuning Details ### Dataset The model was fine-tuned on the EagleSFT dataset, which contains 536,231 pairs of human questions and machine-generated responses in both Russian and English languages. The dataset primarily focuses on educational content but also includes everyday questions and casual conversations. ### Environmental Impact - **Training duration**: 79.73h total in Kazan, Russia - **Power consumption**: 400W average - **Hardware**: 1 x RTX 5090 - **Carbon emissions**: Approximately 11.16 kg CO2eq - Calculated based on average power consumption and average CO2eq/kWh (350g) in this region - Kazan: 400W * 79.73h * 350g/kWh = 11.16 kg CO2eq ### Training Parameters - **Training approach**: Supervised Fine-Tuning (SFT) - **Training epochs**: 2 - **Learning rate**: 3.0e-04 - **Precision**: bfloat16 ## Limitations and Capabilities It's important to note that this model was not pre-trained but only underwent SFT on a relatively small number of tokens. This means that the model has a limited amount of data to rely on when answering in Russian compared to its English capabilities. Despite extensive limitations, the model shows minimal improvement in: - Basic recognition of Russian prompts (though with frequent misunderstandings) - Handling simple tasks formatted as "{question in Russian}, answer in English" - Basic translation from Russian to English (though quality remains poor) The model's minimal understanding of Russian language comes solely from the supervised fine-tuning process without any proper pre-training with Russian text corpus, resulting in severely limited capabilities. ## Experimental Capabilities The model demonstrates some experimental capabilities, but with significant limitations: - Basic Russian text understanding (with frequent errors and misinterpretations) - Limited question answering in Russian (quality significantly lower than English) - Basic Russian to English translation (better than English to Russian) ## Limitations - **NOT SUITABLE FOR PRODUCTION USE**: This model should not be used in production environments in any form - Extremely limited knowledge base for Russian language due to lack of pre-training with Russian text - Unoptimized tokenizer performance for Russian language results in inefficient token usage - Output quality in Russian will be unsatisfactory for most use cases - May produce inaccurate, inconsistent, or inappropriate responses, especially in Russian - All limitations of the base SmolLM2-1.7B model still apply