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+ TEN_Turn_Detection-f16.gguf filter=lfs diff=lfs merge=lfs -text
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+ TEN_Turn_Detection-f16_q8_0.gguf filter=lfs diff=lfs merge=lfs -text
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+ TEN_Turn_Detection-bf16_q8_0.gguf filter=lfs diff=lfs merge=lfs -text
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+ TEN_Turn_Detection.imatrix filter=lfs diff=lfs merge=lfs -text
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+ ---
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+ pipeline_tag: text-generation
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+ tags:
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+ - turn detection
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+ - conversational
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+ - natural language understanding
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+ license: apache-2.0
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+ ---
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+ # **TEN Turn Detection**
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+
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+ ***Turn detection for full-duplex dialogue communication***
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+
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+
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+ ## Introduction
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+
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+ **TEN Turn Detection** is an advanced intelligent turn detection model designed specifically for natural and dynamic communication between humans and AI agents. This technology addresses one of the most challenging aspects of human-AI conversation: detecting natural turn-taking cues and enabling contextually-aware interruptions. TEN incorporates deep semantic understanding of conversation context and linguistic patterns to create more natural dialogue with AI.
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+ <div align="center">
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+ <img src="images/turn_detection.svg" alt="TEN Turn Detection SVG Diagram" width="800"/>
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+ </div>
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+
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+ **TEN Turn Detection** categorizes user's text into three key states:
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+
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+ **finished**: A finished utterance where the user has expressed a complete thought and expects a response. Example: "Hey there I was wondering can you help me with my order"
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+
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+ **wait**: An wait utterance where the user has explicitly instructed the AI not to speak. Example: "Shut up"
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+
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+ **unfinished**: A clearly unfinished utterance where the user has momentarily paused but intends to continue speaking. Example: "Hello I have a question about"
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+
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+ These three classification states allow the TEN system to create natural conversation dynamics by intelligently managing turn-taking, reducing awkward interruptions while maintaining conversation flow.
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+
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+ TEN Turn Detection utilizes a multi-layered approach based on the transformer-based language model(Qwen2.5-7B) for semantic analysis.
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+
33
+ ## Key Features
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+
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+ - **Context-Aware Turn Management**
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+ TEN Turn Detection analyzes linguistic patterns and semantic context to accurately identify turn completion points. This capability enables intelligent interruption handling, allowing the system to determine when interruptions are contextually appropriate while maintaining natural conversation flow across various dialogue scenarios.
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+
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+ - **Multilingual Turn Detection Support**
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+ TEN Turn Detection provides comprehensive support for both English and Chinese languages. It is engineered to accurately identify turn-taking cues and completion signals across multilingual conversations.
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+
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+ - **Superior Performance**
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+ Compared with multiple open-source solutions, TEN achieves superior performance across all metrics on our publicly available test dataset.
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+
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+ ## Prepared Dataset
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+ We have open-sourced the TEN-Turn-Detection TestSet, a bilingual (Chinese and English) collection of conversational inputs specifically designed to evaluate turn detection capabilities in AI dialogue systems. The dataset consists of three distinct components:
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+
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+ *wait.txt*: Contains expressions requesting conversation pauses or termination
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+
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+ *unfinished.txt*: Features incomplete dialogue inputs with truncated utterances
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+
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+ *finished.txt*: Provides complete conversational inputs across multiple domains
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+
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+
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+ ## Detection Performance
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+
56
+ We conducted comprehensive evaluations comparing several open-source models for turn detection using our test dataset:
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+
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+ <div align="center">
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+
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+
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+ | LANGUAGE | MODEL | FINISHED<br>ACCURACY | UNFINISHED<br>ACCURACY | WAIT<br>ACCURACY |
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+ |:--------:|:-----:|:--------------------:|:----------------------:|:----------------:|
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+ | English | Model A | 59.74% | 86.46% | N/A |
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+ | English | Model B | 71.61% | 96.88% | N/A |
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+ | English | **TEN Turn Detection** | **90.64%** | **98.44%** | **91%** |
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+
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+
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+
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+
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+ | LANGUAGE | MODEL | FINISHED<br>ACCURACY | UNFINISHED<br>ACCURACY | WAIT<br>ACCURACY |
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+ |:--------:|:-----:|:--------------------:|:----------------------:|:----------------:|
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+ | Chinese | Model B | 74.63% | 88.89% | N/A |
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+ | Chinese | **TEN Turn Detection** | **98.90%** | **92.74%** | **92%** |
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+
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+
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+ </div>
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+
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+ > **Notes:**
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+ > 1. Model A doesn't support Chinese language processing
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+ > 2. Neither Model A nor Model B support the "WAIT" state detection
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+
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+ ## Quick Start
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+
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+ TEN Turn Detection is also available on github [TEN-framework/ten-turn-detection](https://github.com/TEN-framework/ten-turn-detection)
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+
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+ ### Installation
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+
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+ ```
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+ pip install "transformers>=4.45.0"
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+ pip install "torch>=2.0.0"
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+ ```
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+
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+ ### Model Weights
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+
95
+ The TEN Turn Detection model is available on HuggingFace
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+
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+ ### Inference
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+
99
+ ```python
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+ from transformers import AutoTokenizer, AutoModelForCausalLM
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+ import torch
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+
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+ # Load model and tokenizer
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+ model_id = 'TEN-framework/TEN_Turn_Detection'
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+ model = AutoModelForCausalLM.from_pretrained(model_id, trust_remote_code=True, torch_dtype=torch.bfloat16)
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+ tokenizer = AutoTokenizer.from_pretrained(model_id, trust_remote_code=True)
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+
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+ # Move model to GPU
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+ model = model.cuda()
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+ model.eval()
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+
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+ # Function for inference
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+ def analyze_text(text, system_prompt=""):
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+ inf_messages = [{"role":"system", "content":system_prompt}] + [{"role":"user", "content":text}]
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+ input_ids = tokenizer.apply_chat_template(
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+ inf_messages,
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+ add_generation_prompt=True,
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+ return_tensors="pt"
119
+ ).cuda()
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+
121
+ with torch.no_grad():
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+ outputs = model.generate(
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+ input_ids,
124
+ max_new_tokens=1,
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+ do_sample=True,
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+ top_p=0.1,
127
+ temperature=0.1,
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+ pad_token_id=tokenizer.eos_token_id
129
+ )
130
+
131
+ response = outputs[0][input_ids.shape[-1]:]
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+ return tokenizer.decode(response, skip_special_tokens=True)
133
+
134
+ # Example usage
135
+ text = "Hello I have a question about"
136
+ result = analyze_text(text)
137
+ print(f"Input: '{text}'")
138
+ print(f"Turn Detection Result: '{result}'")
139
+ ```
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+
141
+ ## Citation
142
+ If you use TEN Turn Detection in your research or applications, please cite:
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+
144
+ ```
145
+ @misc{TEN_Turn_Detection,
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+ author = {TEN Team},
147
+ title = {TEN Turn Detection: Turn detection for full-duplex dialogue communication
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+
149
+ },
150
+ year = {2025},
151
+ url = {https://github.com/TEN-framework/ten-turn-detection},
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+ }
153
+ ```
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+ ## License
155
+ This project is Apache 2.0 licensed.
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+
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+ ## <span style="color: #7FFF7F;"> Quantization beyond the IMatrix</span>
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+
159
+ Testing a new quantization method using rules to bump important layers above what the standard imatrix would use.
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+
161
+ I have found that the standard IMatrix does not perform very well at low bit quantiztion and for MOE models. So I am using llama.cpp --tensor-type to bump up selected layers. See [Layer bumping with llama.cpp](https://github.com/Mungert69/GGUFModelBuilder/blob/main/model-converter/tensor_list_builder.py)
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+
163
+ This does create larger model files but increases precision for a given model size.
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+
165
+ ### **Please provide feedback on how you find this method performs**
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+
167
+ ---
168
+
169
+ ## **Choosing the Right Model Format**
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+
171
+ Selecting the correct model format depends on your **hardware capabilities** and **memory constraints**.
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+
173
+ ### **BF16 (Brain Float 16) – Use if BF16 acceleration is available**
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+ - A 16-bit floating-point format designed for **faster computation** while retaining good precision.
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+ - Provides **similar dynamic range** as FP32 but with **lower memory usage**.
176
+ - Recommended if your hardware supports **BF16 acceleration** (check your device's specs).
177
+ - Ideal for **high-performance inference** with **reduced memory footprint** compared to FP32.
178
+
179
+ 📌 **Use BF16 if:**
180
+ ✔ Your hardware has native **BF16 support** (e.g., newer GPUs, TPUs).
181
+ ✔ You want **higher precision** while saving memory.
182
+ ✔ You plan to **requantize** the model into another format.
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+
184
+ 📌 **Avoid BF16 if:**
185
+ ❌ Your hardware does **not** support BF16 (it may fall back to FP32 and run slower).
186
+ ❌ You need compatibility with older devices that lack BF16 optimization.
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+
188
+ ---
189
+
190
+ ### **F16 (Float 16) – More widely supported than BF16**
191
+ - A 16-bit floating-point **high precision** but with less of range of values than BF16.
192
+ - Works on most devices with **FP16 acceleration support** (including many GPUs and some CPUs).
193
+ - Slightly lower numerical precision than BF16 but generally sufficient for inference.
194
+
195
+ 📌 **Use F16 if:**
196
+ ✔ Your hardware supports **FP16** but **not BF16**.
197
+ ✔ You need a **balance between speed, memory usage, and accuracy**.
198
+ ✔ You are running on a **GPU** or another device optimized for FP16 computations.
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+
200
+ 📌 **Avoid F16 if:**
201
+ ❌ Your device lacks **native FP16 support** (it may run slower than expected).
202
+ ❌ You have memory limitations.
203
+
204
+ ---
205
+
206
+ ### **Hybrid Precision Models (e.g., `bf16_q8_0`, `f16_q4_K`) – Best of Both Worlds**
207
+ These formats selectively **quantize non-essential layers** while keeping **key layers in full precision** (e.g., attention and output layers).
208
+
209
+ - Named like `bf16_q8_0` (meaning **full-precision BF16 core layers + quantized Q8_0 other layers**).
210
+ - Strike a **balance between memory efficiency and accuracy**, improving over fully quantized models without requiring the full memory of BF16/F16.
211
+
212
+ 📌 **Use Hybrid Models if:**
213
+ ✔ You need **better accuracy than quant-only models** but can’t afford full BF16/F16 everywhere.
214
+ ✔ Your device supports **mixed-precision inference**.
215
+ ✔ You want to **optimize trade-offs** for production-grade models on constrained hardware.
216
+
217
+ 📌 **Avoid Hybrid Models if:**
218
+ ❌ Your target device doesn’t support **mixed or full-precision acceleration**.
219
+ ❌ You are operating under **ultra-strict memory limits** (in which case use fully quantized formats).
220
+
221
+ ---
222
+
223
+ ### **Quantized Models (Q4_K, Q6_K, Q8, etc.) – For CPU & Low-VRAM Inference**
224
+ Quantization reduces model size and memory usage while maintaining as much accuracy as possible.
225
+ - **Lower-bit models (Q4_K)** → **Best for minimal memory usage**, may have lower precision.
226
+ - **Higher-bit models (Q6_K, Q8_0)** → **Better accuracy**, requires more memory.
227
+
228
+ 📌 **Use Quantized Models if:**
229
+ ✔ You are running inference on a **CPU** and need an optimized model.
230
+ ✔ Your device has **low VRAM** and cannot load full-precision models.
231
+ ✔ You want to reduce **memory footprint** while keeping reasonable accuracy.
232
+
233
+ 📌 **Avoid Quantized Models if:**
234
+ ❌ You need **maximum accuracy** (full-precision models are better for this).
235
+ ❌ Your hardware has enough VRAM for higher-precision formats (BF16/F16).
236
+
237
+ ---
238
+
239
+ ### **Very Low-Bit Quantization (IQ3_XS, IQ3_S, IQ3_M, Q4_K, Q4_0)**
240
+ These models are optimized for **very high memory efficiency**, making them ideal for **low-power devices** or **large-scale deployments** where memory is a critical constraint.
241
+
242
+ - **IQ3_XS**: Ultra-low-bit quantization (3-bit) with **very high memory efficiency**.
243
+ - **Use case**: Best for **ultra-low-memory devices** where even Q4_K is too large.
244
+ - **Trade-off**: Lower accuracy compared to higher-bit quantizations.
245
+
246
+ - **IQ3_S**: Small block size for **maximum memory efficiency**.
247
+ - **Use case**: Best for **low-memory devices** where **IQ3_XS** is too aggressive.
248
+
249
+ - **IQ3_M**: Medium block size for better accuracy than **IQ3_S**.
250
+ - **Use case**: Suitable for **low-memory devices** where **IQ3_S** is too limiting.
251
+
252
+ - **Q4_K**: 4-bit quantization with **block-wise optimization** for better accuracy.
253
+ - **Use case**: Best for **low-memory devices** where **Q6_K** is too large.
254
+
255
+ - **Q4_0**: Pure 4-bit quantization, optimized for **ARM devices**.
256
+ - **Use case**: Best for **ARM-based devices** or **low-memory environments**.
257
+
258
+ ### **Ultra Low-Bit Quantization (IQ1_S IQ1_M IQ2_S IQ2_M IQ2_XS IQ2_XSS)**
259
+ - *Ultra-low-bit quantization (1 2-bit) with **extreme memory efficiency**.
260
+ - **Use case**: Best for cases were you have to fit the model into very constrained memory
261
+ - **Trade-off**: Very Low Accuracy. May not function as expected. Please test fully before using.
262
+
263
+ ---
264
+
265
+ ### **Summary Table: Model Format Selection**
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+
267
+
268
+ | Model Format | Precision | Memory Usage | Device Requirements | Best Use Case |
269
+ |--------------------------|------------------|------------------|----------------------------------|--------------------------------------------------------------|
270
+ | **BF16** | Very High | High | BF16-supported GPU/CPU | High-speed inference with reduced memory |
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+ | **F16** | High | High | FP16-supported GPU/CPU | Inference when BF16 isn’t available |
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+ | **Q4_K** | Medium-Low | Low | CPU or Low-VRAM devices | Memory-constrained inference |
273
+ | **Q6_K** | Medium | Moderate | CPU with more memory | Better accuracy with quantization |
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+ | **Q8_0** | High | Moderate | GPU/CPU with moderate VRAM | Highest accuracy among quantized models |
275
+ | **IQ3_XS** | Low | Very Low | Ultra-low-memory devices | Max memory efficiency, low accuracy |
276
+ | **IQ3_S** | Low | Very Low | Low-memory devices | Slightly more usable than IQ3_XS |
277
+ | **IQ3_M** | Low-Medium | Low | Low-memory devices | Better accuracy than IQ3_S |
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+ | **Q4_0** | Low | Low | ARM-based/embedded devices | Llama.cpp automatically optimizes for ARM inference |
279
+ | **Ultra Low-Bit (IQ1/2_*)** | Very Low | Extremely Low | Tiny edge/embedded devices | Fit models in extremely tight memory; low accuracy |
280
+ | **Hybrid (e.g., `bf16_q8_0`)** | Medium–High | Medium | Mixed-precision capable hardware | Balanced performance and memory, near-FP accuracy in critical layers |
281
+
282
+ ---
283
+
284
+ # <span id="testllm" style="color: #7F7FFF;">🚀 If you find these models useful</span>
285
+
286
+ Help me test my **AI-Powered Quantum Network Monitor Assistant** with **quantum-ready security checks**:
287
+
288
+ 👉 [Quantum Network Monitor](https://readyforquantum.com/?assistant=open&utm_source=huggingface&utm_medium=referral&utm_campaign=huggingface_repo_readme)
289
+
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+
291
+ The full Open Source Code for the Quantum Network Monitor Service available at my github repos ( repos with NetworkMonitor in the name) : [Source Code Quantum Network Monitor](https://github.com/Mungert69). You will also find the code I use to quantize the models if you want to do it yourself [GGUFModelBuilder](https://github.com/Mungert69/GGUFModelBuilder)
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+
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+ 💬 **How to test**:
294
+ Choose an **AI assistant type**:
295
+ - `TurboLLM` (GPT-4.1-mini)
296
+ - `HugLLM` (Hugginface Open-source models)
297
+ - `TestLLM` (Experimental CPU-only)
298
+
299
+ ### **What I’m Testing**
300
+ I’m pushing the limits of **small open-source models for AI network monitoring**, specifically:
301
+ - **Function calling** against live network services
302
+ - **How small can a model go** while still handling:
303
+ - Automated **Nmap security scans**
304
+ - **Quantum-readiness checks**
305
+ - **Network Monitoring tasks**
306
+
307
+ 🟡 **TestLLM** – Current experimental model (llama.cpp on 2 CPU threads on huggingface docker space):
308
+ - ✅ **Zero-configuration setup**
309
+ - ⏳ 30s load time (slow inference but **no API costs**) . No token limited as the cost is low.
310
+ - 🔧 **Help wanted!** If you’re into **edge-device AI**, let’s collaborate!
311
+
312
+ ### **Other Assistants**
313
+ 🟢 **TurboLLM** – Uses **gpt-4.1-mini** :
314
+ - **It performs very well but unfortunatly OpenAI charges per token. For this reason tokens usage is limited.
315
+ - **Create custom cmd processors to run .net code on Quantum Network Monitor Agents**
316
+ - **Real-time network diagnostics and monitoring**
317
+ - **Security Audits**
318
+ - **Penetration testing** (Nmap/Metasploit)
319
+
320
+ 🔵 **HugLLM** – Latest Open-source models:
321
+ - 🌐 Runs on Hugging Face Inference API. Performs pretty well using the lastest models hosted on Novita.
322
+
323
+ ### 💡 **Example commands you could test**:
324
+ 1. `"Give me info on my websites SSL certificate"`
325
+ 2. `"Check if my server is using quantum safe encyption for communication"`
326
+ 3. `"Run a comprehensive security audit on my server"`
327
+ 4. '"Create a cmd processor to .. (what ever you want)" Note you need to install a Quantum Network Monitor Agent to run the .net code from. This is a very flexible and powerful feature. Use with caution!
328
+
329
+ ### Final Word
330
+
331
+ I fund the servers used to create these model files, run the Quantum Network Monitor service, and pay for inference from Novita and OpenAI—all out of my own pocket. All the code behind the model creation and the Quantum Network Monitor project is [open source](https://github.com/Mungert69). Feel free to use whatever you find helpful.
332
+
333
+ If you appreciate the work, please consider [buying me a coffee](https://www.buymeacoffee.com/mahadeva) ☕. Your support helps cover service costs and allows me to raise token limits for everyone.
334
+
335
+ I'm also open to job opportunities or sponsorship.
336
+
337
+ Thank you! 😊
338
+
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