--- language: - en inference: false tags: - text-classification - onnx - int8 - optimum - multi-class-classification - ONNXRuntime license: apache-2.0 --- # LLM user flow classification This model identifies common events and patterns within the conversation flow. Such events include, for example, complaint, when a user expresses dissatisfaction. The flow labels can serve as foundational elements for sophisticated LLM analytics. It is ONNX quantized and is a fined-tune of [MiniLMv2-L6-H384](https://huggingface.co/nreimers/MiniLMv2-L6-H384-distilled-from-RoBERTa-Large). The base model can be found [here](https://huggingface.co/minuva/MiniLMv2-userflow-v2) This model is used *only* for the user texts. For the LLM texts in the dialog use this [agent model](https://huggingface.co/minuva/MiniLMv2-agentflow-v2-onnx). # Optimum ## Installation Install from source: ```bash python -m pip install optimum[onnxruntime]@git+https://github.com/huggingface/optimum.git ``` ## Run the Model ```py from optimum.onnxruntime import ORTModelForSequenceClassification from transformers import AutoTokenizer, pipeline model = ORTModelForSequenceClassification.from_pretrained('minuva/MiniLMv2-userflow-v2-onnx', provider="CPUExecutionProvider") tokenizer = AutoTokenizer.from_pretrained('minuva/MiniLMv2-userflow-v2-onnx', use_fast=True, model_max_length=256, truncation=True, padding='max_length') pipe = pipeline(task='text-classification', model=model, tokenizer=tokenizer, ) texts = ["that's wrong", "can you please answer me?"] pipe(texts) # [{'label': 'model_wrong_or_try_again', 'score': 0.9737648367881775}, # {'label': 'user_wants_agent_to_answer', 'score': 0.9105103015899658}] ``` # ONNX Runtime only A lighter solution for deployment ## Installation ```bash pip install tokenizers pip install onnxruntime git clone https://huggingface.co/minuva/MiniLMv2-userflow-v2-onnx ``` ## Run the Model ```py import os import numpy as np import json from tokenizers import Tokenizer from onnxruntime import InferenceSession model_name = "minuva/MiniLMv2-userflow-v2-onnx" tokenizer = Tokenizer.from_pretrained(model_name) tokenizer.enable_padding( pad_token="", pad_id=1, ) tokenizer.enable_truncation(max_length=256) batch_size = 16 texts = ["that's wrong", "can you please answer me?"] outputs = [] model = InferenceSession("MiniLMv2-userflow-v2-onnx/model_optimized_quantized.onnx", providers=['CPUExecutionProvider']) with open(os.path.join("MiniLMv2-userflow-v2-onnx", "config.json"), "r") as f: config = json.load(f) output_names = [output.name for output in model.get_outputs()] input_names = [input.name for input in model.get_inputs()] for subtexts in np.array_split(np.array(texts), len(texts) // batch_size + 1): encodings = tokenizer.encode_batch(list(subtexts)) inputs = { "input_ids": np.vstack( [encoding.ids for encoding in encodings], ), "attention_mask": np.vstack( [encoding.attention_mask for encoding in encodings], ), "token_type_ids": np.vstack( [encoding.type_ids for encoding in encodings], ), } for input_name in input_names: if input_name not in inputs: raise ValueError(f"Input name {input_name} not found in inputs") inputs = {input_name: inputs[input_name] for input_name in input_names} output = np.squeeze( np.stack( model.run(output_names=output_names, input_feed=inputs) ), axis=0, ) outputs.append(output) outputs = np.concatenate(outputs, axis=0) scores = 1 / (1 + np.exp(-outputs)) results = [] for item in scores: labels = [] scores = [] for idx, s in enumerate(item): labels.append(config["id2label"][str(idx)]) scores.append(float(s)) results.append({"labels": labels, "scores": scores}) res = [] for result in results: joined = list(zip(result['labels'], result['scores'])) max_score = max(joined, key=lambda x: x[1]) res.append(max_score) res #[('model_wrong_or_try_again', 0.9737648367881775), # ('user_wants_agent_to_answer', 0.9105103015899658)] ``` # Categories Explanation
Click to expand! - OTHER: Responses that do not fit into any predefined categories or are outside the scope of the specific interaction types listed. - agrees_praising_thanking: When the user agrees with the provided information, offers praise, or expresses gratitude. - asks_source: The user requests the source of the information or the basis for the answer provided. - continue: Indicates a prompt for the conversation to proceed or continue without a specific directional change. - continue_or_finnish_code: Signals either to continue with the current line of discussion or code execution, or to conclude it. - improve_or_modify_answer: The user requests an improvement or modification to the provided answer. - lack_of_understandment: Reflects the user's or agent confusion or lack of understanding regarding the information provided. - model_wrong_or_try_again: Indicates that the model's response was incorrect or unsatisfactory, suggesting a need to attempt another answer. - more_listing_or_expand: The user requests further elaboration, expansion from the given list by the agent. - repeat_answers_or_question: The need to reiterate a previous answer or question. - request_example: The user asks for examples to better understand the concept or answer provided. - user_complains_repetition: The user notes that the information or responses are repetitive, indicating a need for new or different content. - user_doubts_answer: The user expresses skepticism or doubt regarding the accuracy or validity of the provided answer. - user_goodbye: The user says goodbye to the agent. - user_reminds_question: The user reiterates the question. - user_wants_agent_to_answer: The user explicitly requests a response from the agent, when the agent refuses to do so. - user_wants_explanation: The user seeks an explanation behind the information or answer provided. - user_wants_more_detail: Indicates the user's desire for more comprehensive or detailed information on the topic. - user_wants_shorter_longer_answer: The user requests that the answer be condensed or expanded to better meet their informational needs. - user_wants_simplier_explanation: The user seeks a simpler, more easily understood explanation. - user_wants_yes_or_no: The user is asking for a straightforward affirmative or negative answer, without additional detail or explanation.

# Metrics in our private test dataset | Model (params) | Loss | Accuracy | F1 | |--------------------|-------------|----------|--------| | minuva/MiniLMv2-userflow-v2 (33M) | 0.6738 | 0.7236 | 0.7313 | | minuva/MiniLMv2-userflow-v2-onnx (33M) | - | 0.7195 | 0.7189 | # Deployment Check our [llm-flow-classification repository](https://github.com/minuva/llm-flow-classification) for a FastAPI and ONNX based server to deploy this model on CPU devices.