๐งก Yulya SmolLM2 135M ## ๐ฌ Micro Model. Maximum Experimentation. Pure Yulya Energy. > --- ## ๐ About Yulya SmolLM2 135M is the smallest and most experimental member of the Yulya model family. Built on , this model explores how much of Yulya's distinctive conversational personality can be adapted into an extremely small language model. At approximately 135 million parameters, this version is dramatically smaller than the 0.5B, 1B, 1.5B, 7B, and 8B models available in the Yulya family. The model is designed primarily for: - ๐ฌ AI experimentation - โก Fast local inference - ๐พ Extremely lightweight deployment - ๐ฅ๏ธ Low-resource environments - ๐ค Small conversational systems - ๐ Local AI integrations - ๐งช Fine-tuning research and testing Despite its extremely small size, the model is fine-tuned around Yulya's core conversational style. Expect: - ๐ Expressive responses - ๐ฅ Playful conversational behavior - ๐ Chaotic reactions - ๐ฃ๏ธ Casual language - ๐งก Character-driven interactions - โก Fast inference - ๐ชถ Extremely lightweight deployment - ๐ฌ Experimental conversational capabilities --- # โจ What Makes This Version Special? ## ๐ฌ The Smallest Yulya Model At approximately , Yulya SmolLM2 135M is the smallest model currently available in the Yulya model family. This makes it significantly smaller than: - Yulya Qwen2.5 0.5B - Yulya Llama 3.2 1B - Yulya Qwen2.5 1.5B - Yulya Qwen2.5 7B - Yulya Llama 3.1 8B The primary goal of this model is not to compete with larger language models in reasoning or general intelligence. Instead, it explores how effectively a highly distinctive conversational personality can be represented in an extremely small language model. --- ## ๐ฆ Complete V1 and V2 Releases Unlike several other models in the Yulya family, this repository provides complete release files for both V1 and V2. Both versions include: - ๐ฆ Fine-tuning adapters - โก Q4_K_M GGUF - ๐ Q8_0 GGUF - ๐ง Merged 16F model This makes Yulya SmolLM2 135M one of the most complete repositories in the Yulya model collection. --- ## โก Designed for Lightweight Experimentation The extremely small parameter count makes this model particularly interesting for: - Rapid testing - Local inference experiments - AI personality research - Small-device experimentation - Fine-tuning comparisons - Quantization comparisons - Model development testing --- ## ๐ The Yulya Personality Yulya is designed to communicate more like an expressive and chaotic character than a traditional AI assistant. Her intended conversational style focuses on: - Playful teasing - Dramatic reactions - Expressive responses - Casual language - Chaotic banter - Character-driven interactions Because this is an extremely small language model, its ability to consistently maintain complex personality traits may be significantly more limited than the larger Yulya models. --- # ๐ค Model Details | Information | Details | | --- | --- | | ๐ง Model Name | Yulya SmolLM2 135M | | ๐ฌ Edition | Micro Edge Model | | ๐๏ธ Base Model | SmolLM2 135M Instruct | | ๐ข Parameter Scale | Approximately 135M | | ๐ฌ Primary Use | Experimental Conversational AI | | ๐ญ Secondary Uses | Roleplay and Character Experiments | | ๐ Language | English | | ๐ License | Apache 2.0 | | ๐ฆ Available Formats | Adapters, GGUF, and Merged 16F | | ๐จโ๐ป Developed By | moheith | | ๐ฐ Funded By | moheith | | ๐ค Shared By | moheith | --- # ๐ฆ Available Versions This repository contains two complete versions of . # ๐ฃ Version 1 The first generation of the Yulya SmolLM2 135M fine-tune. ## ๐ Available Files Version 1 provides: - ๐ฆ Fine-tuning adapters - โก Q4_K_M quantized GGUF - ๐ Q8_0 quantized GGUF - ๐ง Merged 16F model --- # ๐ต Version 2 The second generation of the Yulya SmolLM2 135M fine-tune. ## ๐ Available Files Version 2 also provides: - ๐ฆ Fine-tuning adapters - โก Q4_K_M quantized GGUF - ๐ Q8_0 quantized GGUF - ๐ง Merged 16F model --- # ๐ Version Comparison | Feature | ๐ฃ V1 | ๐ต V2 | | --- | --- | --- | | Fine-Tuning Adapters | โ | โ | | Q4_K_M GGUF | โ | โ | | Q8_0 GGUF | โ | โ | | Merged 16F Model | โ | โ | | Complete Release | โ | โ | | Generation | First | Second | --- # ๐ Repository Structure --- # ๐ Which Version Should You Use? ## ๐ฃ Use V1 If... You want to: - Experiment with the original Yulya SmolLM2 135M fine-tune - Compare the first generation against V2 - Study the development of the model - Test the original adapters - Compare V1 quantizations - Work with the V1 merged model --- ## ๐ต Use V2 If... You want to: - Experiment with the second-generation fine-tune - Compare improvements or behavioral differences against V1 - Use the V2 adapters - Run the V2 Q4_K_M model - Run the V2 Q8_0 model - Work with the V2 merged model > --- # ๐พ Choosing a Model Format ## โก Q4_K_M Choose the model if you want: - A smaller model file - Lower memory usage - Fast local inference - A practical quantization for lightweight experimentation Available for: - ๐ฃ V1 - ๐ต V2 --- ## ๐ Q8_0 Choose the model if you want: - Higher quantization precision than Q4_K_M - A larger model file - Higher memory usage - A GGUF option that retains more numerical precision Available for: - ๐ฃ V1 - ๐ต V2 --- ## ๐ฆ Fine-Tuning Adapters Choose the adapter files if you want to work with the fine-tuning output together with the compatible base model. Available for: - ๐ฃ V1 - ๐ต V2 --- ## ๐ง Merged 16F Choose the merged 16F model if you want to work with a merged model rather than separate fine-tuning adapters or quantized GGUF files. Available for: - ๐ฃ V1 - ๐ต V2 Actual hardware requirements and compatibility depend on the software and configuration used to load the merged model. --- # โ๏ธ Quantization Options This repository provides two GGUF quantization options for both V1 and V2. | Quantization | File Size | Memory Usage | Numerical Precision | | --- | --- | --- | --- | | โก Q4_K_M | Smaller | Lower | Lower | | ๐ Q8_0 | Larger | Higher | Higher | The best option depends on your hardware and intended use case. Because SmolLM2 135M is already an extremely small model, both quantizations should remain relatively lightweight compared with the larger Yulya models. Actual performance and resource usage will depend on: - Available system RAM - Available VRAM - CPU performance - GPU performance - Context length - Inference software - Hardware configuration --- # ๐ป Compatible Software The GGUF versions may be used with compatible local inference software such as: - llama.cpp - LM Studio - text-generation-webui - Other GGUF-compatible inference engines The adapter files require the compatible base model and appropriate software for loading fine-tuning adapters. The merged model files may require software compatible with the format and model architecture contained inside the ZIP archives. Compatibility and setup requirements may vary depending on the application and software version being used. --- # ๐ฏ Intended Uses Yulya SmolLM2 135M is primarily intended for: - ๐ฌ AI experimentation - ๐ฌ Lightweight conversational AI - ๐ญ Character and personality experiments - ๐ฅ๏ธ Small local AI applications - ๐ค Personal AI projects - ๐ฎ Experimental interactive applications - ๐ Lightweight AI integrations - โก Fast conversational testing - ๐งช Fine-tuning experimentation - ๐ Model version comparisons - ๐พ Low-resource environments --- # ๐ฅ๏ธ Why Choose a 135M Model? Extremely small language models can be useful for applications where computational efficiency and experimentation are more important than maximum capability. Potential advantages include: - โก Very fast inference - ๐พ Low memory requirements compared with larger models - ๐ฅ๏ธ Greater hardware accessibility - ๐ Easier integration into experimental projects - ๐งช Faster fine-tuning and testing cycles - ๐ Easier comparison between model versions - ๐ฌ Useful for studying personality fine-tuning at small scales However, a 135M model also has substantial limitations. Compared with the larger Yulya models, this version may have significantly more limited: - Complex reasoning - Context understanding - Factual knowledge - Instruction following - Conversation consistency - Long-form generation - Emotional nuance - Personality retention The model should primarily be viewed as an experimental and lightweight member of the Yulya family. --- # ๐ซ Out-of-Scope Uses The model is not specifically designed or validated for: - โ Professional medical advice - โ Professional legal advice - โ Critical financial decisions - โ Safety-critical applications - โ Guaranteed factual accuracy - โ Complex reasoning tasks - โ Reliable long-context conversations - โ Formal academic research without independent verification Important information generated by the model should always be independently verified. --- # ๐ Training Details ## ๐ Training Data Yulya was fine-tuned using custom-curated conversational data. The training data was designed to encourage behaviors such as: - Modern texting styles - Expressive conversational responses - Conversational banter - Playful interactions - Personality expression - Emotional conversations - Character-driven responses - Context-dependent conversational shifts The goal of the fine-tuning process was to explore how much of Yulya's distinctive conversational personality could be adapted into an extremely small language model. Detailed information about the complete training dataset is not currently provided. --- # โ๏ธ Training Approach The model was fine-tuned from: The fine-tuning process focused on adapting the conversational behavior and response style of the base model. Both V1 and V2 fine-tuning outputs are included in this repository. --- # ๐งช Evaluation ## ๐ Evaluation Method Yulya SmolLM2 135M has primarily been evaluated through informal and qualitative conversational testing. No standardized benchmark scores are currently reported in this model card. Testing focused on areas such as: - Personality expression - Conversational behavior - Response style - Informal interactions - Version differences - Quantization behavior - Short multi-turn conversations --- # ๐ Qualitative Testing Areas The model was informally tested across conversational scenarios including: - Short conversations - Casual banter - Playful interactions - Basic topic changes - Character-driven responses - Short multi-turn interactions --- # ๐ Observed Behavior...
The smallest model in the Yulya family โ a 135M-parameter conversational AI experiment designed to bring Yulya's expressive and chaotic personality to extremely lightweight local AI applications.
Yulya SmolLM2 135M
SmolLM2 135M Instruct
135 million parameters
Yulya SmolLM2 135M
text Yulya-V1-SmolLM2-135M-Adapters.zip Yulya-V1-SmolLM2-135M-Instruct-Q4_K_M.gguf Yulya-V1-SmolLM2-135M-Instruct-Q8_0.gguf Yulya-V1-SmolLM2-135M-Merged-16F.zip
text Yulya-V2-SmolLM2-135M-Adapters.zip Yulya-V2-SmolLM2-135M-Instruct-Q4_K_M.gguf Yulya-V2-SmolLM2-135M-Instruct-Q8_0.gguf Yulya-V2-SmolLM2-135M-Merged-16F.zip