--- license: apache-2.0 library_name: peft tags: - axolotl - generated_from_trainer base_model: mistralai/Mistral-7B-v0.3 model-index: - name: hc-mistral-7B-v0.3-alpaca-first-100 results: [] --- # Usage You can use this model with the following code: First, download the model ```python from peft import AutoPeftModelForCausalLM from transformers import AutoTokenizer model_id='lawrencewu/hc-mistral-7B-v0.3-alpaca-first-100' model = AutoPeftModelForCausalLM.from_pretrained(model_id).cuda() tokenizer = AutoTokenizer.from_pretrained(model_id) tokenizer.pad_token = tokenizer.eos_token ``` Then, construct the prompt template like so: ```python def prompt(nlq, cols): return f"""Honeycomb is an observability platform that allows you to write queries to inspect trace data. You are an assistant that takes a natural language query (NLQ) and a list of valid columns and produce a Honeycomb query. ### Instruction: NLQ: "{nlq}" Columns: {cols} ### Response: """ def prompt_tok(nlq, cols): _p = prompt(nlq, cols) input_ids = tokenizer(_p, return_tensors="pt", truncation=True).input_ids.cuda() out_ids = model.generate(input_ids=input_ids, max_new_tokens=5000, do_sample=False) return tokenizer.batch_decode(out_ids.detach().cpu().numpy(), skip_special_tokens=True)[0][len(_p):] ``` Finally, you can get predictions like this: ```python # model inputs nlq = "Exception count by exception and caller" cols = ['error', 'exception.message', 'exception.type', 'exception.stacktrace', 'SampleRate', 'name', 'db.user', 'type', 'duration_ms', 'db.name', 'service.name', 'http.method', 'db.system', 'status_code', 'db.operation', 'library.name', 'process.pid', 'net.transport', 'messaging.system', 'rpc.system', 'http.target', 'db.statement', 'library.version', 'status_message', 'parent_name', 'aws.region', 'process.command', 'rpc.method', 'span.kind', 'serializer.name', 'net.peer.name', 'rpc.service', 'http.scheme', 'process.runtime.name', 'serializer.format', 'serializer.renderer', 'net.peer.port', 'process.runtime.version', 'http.status_code', 'telemetry.sdk.language', 'trace.parent_id', 'process.runtime.description', 'span.num_events', 'messaging.destination', 'net.peer.ip', 'trace.trace_id', 'telemetry.instrumentation_library', 'trace.span_id', 'span.num_links', 'meta.signal_type', 'http.route'] # print prediction out = prompt_tok(nlq, cols) print(nlq, '\n', out) ``` This will give you a prediction that looks like this: ```md "{'breakdowns': ['exception.message', 'exception.type'], 'calculations': [{'op': 'COUNT'}], 'filters': [{'column': 'exception.message', 'op': 'exists'}, {'column': 'exception.type', 'op': 'exists'}], 'orders': [{'op': 'COUNT', 'order': 'descending'}], 'time_range': 7200}" ``` [Built with Axolotl](https://github.com/OpenAccess-AI-Collective/axolotl)
See axolotl config axolotl version: `0.4.0` ```yaml base_model: mistralai/Mistral-7B-v0.3 model_type: MistralForCausalLM tokenizer_type: LlamaTokenizer is_mistral_derived_model: true load_in_8bit: false load_in_4bit: true strict: false lora_fan_in_fan_out: false data_seed: 49 seed: 49 datasets: - path: data/output_first_100.jsonl type: sharegpt conversation: alpaca dataset_prepared_path: last_run_prepared val_set_size: 0.1 output_dir: ./qlora-alpaca-out hub_model_id: lawrencewu/hc-mistral-7B-v0.3-alpaca-first-100 adapter: qlora lora_model_dir: sequence_len: 896 sample_packing: false pad_to_sequence_len: true lora_r: 32 lora_alpha: 16 lora_dropout: 0.05 lora_target_linear: true lora_fan_in_fan_out: lora_target_modules: - gate_proj - down_proj - up_proj - q_proj - v_proj - k_proj - o_proj wandb_project: hc-axolotl-mistral wandb_entity: law gradient_accumulation_steps: 4 micro_batch_size: 16 eval_batch_size: 16 num_epochs: 3 optimizer: adamw_bnb_8bit lr_scheduler: cosine learning_rate: 0.0002 max_grad_norm: 1.0 adam_beta2: 0.95 adam_epsilon: 0.00001 save_total_limit: 12 train_on_inputs: false group_by_length: false bf16: true fp16: false tf32: false gradient_checkpointing: true early_stopping_patience: resume_from_checkpoint: local_rank: logging_steps: 1 xformers_attention: flash_attention: false loss_watchdog_threshold: 5.0 loss_watchdog_patience: 3 warmup_steps: 20 evals_per_epoch: 4 eval_table_size: eval_table_max_new_tokens: 128 saves_per_epoch: 6 debug: weight_decay: 0.0 fsdp: fsdp_config: special_tokens: bos_token: "" eos_token: "" unk_token: "" save_safetensors: true ```

# hc-mistral-7B-v0.3-alpaca-first-100 This model is a fine-tuned version of [mistralai/Mistral-7B-v0.3](https://huggingface.co./mistralai/Mistral-7B-v0.3) on the None dataset. It achieves the following results on the evaluation set: - Loss: 1.0883 ## Model description More information needed ## Intended uses & limitations More information needed ## Training and evaluation data More information needed ## Training procedure ### Training hyperparameters The following hyperparameters were used during training: - learning_rate: 0.0002 - train_batch_size: 16 - eval_batch_size: 16 - seed: 49 - gradient_accumulation_steps: 4 - total_train_batch_size: 64 - optimizer: Adam with betas=(0.9,0.95) and epsilon=1e-05 - lr_scheduler_type: cosine - lr_scheduler_warmup_steps: 20 - num_epochs: 3 ### Training results | Training Loss | Epoch | Step | Validation Loss | |:-------------:|:------:|:----:|:---------------:| | 1.2291 | 0.6667 | 1 | 1.1299 | | 1.2111 | 1.3333 | 2 | 1.1216 | | 1.2203 | 2.0 | 3 | 1.0883 | ### Framework versions - PEFT 0.10.0 - Transformers 4.40.2 - Pytorch 2.1.2+cu118 - Datasets 2.19.1 - Tokenizers 0.19.1