--- license: apache-2.0 library_name: transformers --- # Laser-Dolphin-Mixtral-2x7b-dpo ![laser_dolphin_image](./dolphin_moe.png) **New Version out now!** Credit to Fernando Fernandes and Eric Hartford for their project [laserRMT](https://github.com/cognitivecomputations/laserRMT) ## Overview This model is a medium-sized MoE implementation based on [cognitivecomputations/dolphin-2.6-mistral-7b-dpo-laser](https://huggingface.co/cognitivecomputations/dolphin-2.6-mistral-7b-dpo-laser) + The new version shows ~1 point on average. ## Process + The process is outlined in this [notebook](https://github.com/cognitivecomputations/laserRMT/blob/main/examples/laser-dolphin-mixtral-2x7b.ipynb) + The mergekit_config is in the files. + The models used in the configuration are not lasered, but the final product is. This is an update from the last version. + This process is experimental. Your mileage may vary. ## Future Goals + [ ] Function Calling + [ ] v2 with new base model to improve performance ## Quantizations **These Quants will result in unpredicted behavior. New quants are available as I have updated the model** Quatizations provided by [TheBloke](https://huggingface.co/TheBloke/laser-dolphin-mixtral-2x7b-dpo-GGUF) *Current [Quantizations](https://huggingface.co/macadeliccc/laser-dolphin-mixtral-2x7b-dpo-GGUF)* ## HF Spaces + GGUF chat available [here](https://huggingface.co/spaces/macadeliccc/laser-dolphin-mixtral-chat-GGUF) + 4-bit bnb chat available [here](https://huggingface.co/spaces/macadeliccc/laser-dolphin-mixtral-chat) ## Code Example Switch the commented model definition to use in 4-bit. Should work with 9GB and still exceed the single 7B model by 5-6 points roughly ```python from transformers import AutoModelForCausalLM, AutoTokenizer def generate_response(prompt): """ Generate a response from the model based on the input prompt. Args: prompt (str): Prompt for the model. Returns: str: The generated response from the model. """ # Tokenize the input prompt inputs = tokenizer(prompt, return_tensors="pt") # Generate output tokens outputs = model.generate(**inputs, max_new_tokens=256, eos_token_id=tokenizer.eos_token_id, pad_token_id=tokenizer.pad_token_id) # Decode the generated tokens to a string response = tokenizer.decode(outputs[0], skip_special_tokens=True) return response # Load the model and tokenizer model_id = "macadeliccc/laser-dolphin-mixtral-2x7b-dpo" tokenizer = AutoTokenizer.from_pretrained(model_id) model = AutoModelForCausalLM.from_pretrained(model_id, load_in_4bit=True) prompt = "Write a quicksort algorithm in python" # Generate and print responses for each language print("Response:") print(generate_response(prompt), "\n") ``` [colab](https://colab.research.google.com/drive/1cmRhAkDWItV7utHNqNANVZnqDqQNsTUr?usp=sharing) with usage example ## Eval ## EQ Bench
----Benchmark Complete----
2024-01-31 16:55:37
Time taken: 31.1 mins
Prompt Format: ChatML
Model: macadeliccc/laser-dolphin-mixtral-2x7b-dpo-GGUF
Score (v2): 72.76
Parseable: 171.0
---------------
Batch completed
Time taken: 31.2 mins
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evaluation [colab](https://colab.research.google.com/drive/1FpwgsGzCR4tORTxAwUxpN3PcP22En2xk?usp=sharing) ## Summary of previous evaluation | Model |AGIEval|GPT4All|TruthfulQA|Bigbench|Average| |---------------------------------------------------------------------------------------------------|------:|------:|---------:|-------:|------:| |[laser-dolphin-mixtral-2x7b-dpo](https://huggingface.co/macadeliccc/laser-dolphin-mixtral-2x7b-dpo)| 41.31| 73.67| 61.69| 42.79| 54.87| ## Detailed current evaluation | Model |AGIEval|GPT4All|TruthfulQA|Bigbench|Average| |---------------------------------------------------------------------------------------------------|------:|------:|---------:|-------:|------:| |[laser-dolphin-mixtral-2x7b-dpo](https://huggingface.co/macadeliccc/laser-dolphin-mixtral-2x7b-dpo)| 42.25| 73.45| 63.44| 43.96| 55.77| ### AGIEval | Task |Version| Metric |Value| |Stderr| |------------------------------|------:|--------|----:|---|-----:| |agieval_aqua_rat | 0|acc |21.26|± | 2.57| | | |acc_norm|21.65|± | 2.59| |agieval_logiqa_en | 0|acc |34.72|± | 1.87| | | |acc_norm|35.64|± | 1.88| |agieval_lsat_ar | 0|acc |26.96|± | 2.93| | | |acc_norm|26.96|± | 2.93| |agieval_lsat_lr | 0|acc |45.88|± | 2.21| | | |acc_norm|46.08|± | 2.21| |agieval_lsat_rc | 0|acc |59.48|± | 3.00| | | |acc_norm|59.48|± | 3.00| |agieval_sat_en | 0|acc |73.79|± | 3.07| | | |acc_norm|73.79|± | 3.07| |agieval_sat_en_without_passage| 0|acc |42.23|± | 3.45| | | |acc_norm|41.26|± | 3.44| |agieval_sat_math | 0|acc |37.27|± | 3.27| | | |acc_norm|33.18|± | 3.18| Average: 42.25% ### GPT4All | Task |Version| Metric |Value| |Stderr| |-------------|------:|--------|----:|---|-----:| |arc_challenge| 0|acc |58.36|± | 1.44| | | |acc_norm|58.02|± | 1.44| |arc_easy | 0|acc |82.20|± | 0.78| | | |acc_norm|77.40|± | 0.86| |boolq | 1|acc |87.52|± | 0.58| |hellaswag | 0|acc |67.50|± | 0.47| | | |acc_norm|84.43|± | 0.36| |openbookqa | 0|acc |34.40|± | 2.13| | | |acc_norm|47.00|± | 2.23| |piqa | 0|acc |81.61|± | 0.90| | | |acc_norm|82.59|± | 0.88| |winogrande | 0|acc |77.19|± | 1.18| Average: 73.45% ### GSM8K |Task |Version| Metric |Value| |Stderr| |-----|------:|-----------------------------|-----|---|------| |gsm8k| 2|exact_match,get-answer | 0.75| | | | | |exact_match_stderr,get-answer| 0.01| | | | | |alias |gsm8k| | | ### TruthfulQA | Task |Version|Metric|Value| |Stderr| |-------------|------:|------|----:|---|-----:| |truthfulqa_mc| 1|mc1 |45.90|± | 1.74| | | |mc2 |63.44|± | 1.56| Average: 63.44% ### Bigbench | Task |Version| Metric |Value| |Stderr| |------------------------------------------------|------:|---------------------|----:|---|-----:| |bigbench_causal_judgement | 0|multiple_choice_grade|58.42|± | 3.59| |bigbench_date_understanding | 0|multiple_choice_grade|60.70|± | 2.55| |bigbench_disambiguation_qa | 0|multiple_choice_grade|38.37|± | 3.03| |bigbench_geometric_shapes | 0|multiple_choice_grade|21.73|± | 2.18| | | |exact_str_match | 0.00|± | 0.00| |bigbench_logical_deduction_five_objects | 0|multiple_choice_grade|35.00|± | 2.14| |bigbench_logical_deduction_seven_objects | 0|multiple_choice_grade|23.57|± | 1.61| |bigbench_logical_deduction_three_objects | 0|multiple_choice_grade|50.33|± | 2.89| |bigbench_movie_recommendation | 0|multiple_choice_grade|45.00|± | 2.23| |bigbench_navigate | 0|multiple_choice_grade|50.00|± | 1.58| |bigbench_reasoning_about_colored_objects | 0|multiple_choice_grade|60.35|± | 1.09| |bigbench_ruin_names | 0|multiple_choice_grade|51.12|± | 2.36| |bigbench_salient_translation_error_detection | 0|multiple_choice_grade|32.26|± | 1.48| |bigbench_snarks | 0|multiple_choice_grade|67.96|± | 3.48| |bigbench_sports_understanding | 0|multiple_choice_grade|70.59|± | 1.45| |bigbench_temporal_sequences | 0|multiple_choice_grade|35.80|± | 1.52| |bigbench_tracking_shuffled_objects_five_objects | 0|multiple_choice_grade|22.56|± | 1.18| |bigbench_tracking_shuffled_objects_seven_objects| 0|multiple_choice_grade|17.20|± | 0.90| |bigbench_tracking_shuffled_objects_three_objects| 0|multiple_choice_grade|50.33|± | 2.89| Average: 43.96% Average score: 55.77% Elapsed time: 02:43:45 ## Citations Fernando Fernandes Neto and Eric Hartford. "Optimizing Large Language Models Using Layer-Selective Rank Reduction and Random Matrix Theory." 2024. ```bibtex @article{sharma2023truth, title={The Truth is in There: Improving Reasoning in Language Models with Layer-Selective Rank Reduction}, author={Sharma, Pratyusha and Ash, Jordan T and Misra, Dipendra}, journal={arXiv preprint arXiv:2312.13558}, year={2023} } ``` ```bibtex @article{gao2021framework, title={A framework for few-shot language model evaluation}, author={Gao, Leo and Tow, Jonathan and Biderman, Stella and Black, Sid and DiPofi, Anthony and Foster, Charles and Golding, Laurence and Hsu, Jeffrey and McDonell, Kyle and Muennighoff, Niklas and others}, journal={Version v0. 0.1. Sept}, year={2021} } ```