Dr. Samantha is a language model made by merging Severus27/BeingWell_llama2_7b and ParthasarathyShanmugam/llama-2-7b-samantha using mergekit.
Has capabilities of a medical knowledge-focused model (trained on USMLE databases and doctor-patient interactions) with the philosophical, psychological, and relational understanding of the Samantha-7b model.
As both a medical consultant and personal counselor, Dr.Samantha could effectively support both physical and mental wellbeing - important for whole-person care.
Yaml Config
slices:- sources:- model:Severus27/BeingWell_llama2_7blayer_range:[0,32]- model:ParthasarathyShanmugam/llama-2-7b-samanthalayer_range:[0,32]merge_method:slerpbase_model:TinyPixel/Llama-2-7B-bf16-shardedparameters:t:- filter:self_attnvalue:[0,0.5,0.3,0.7,1]- filter:mlpvalue:[1,0.5,0.7,0.3,0]- value:0.5# fallback for rest of tensorstokenizer_source:uniondtype:bfloat16
Prompt Template
Below is an instruction that describes a task. Write a response that appropriately completes the request.
### Instruction:
What is your name?
### Response:
My name is Samantha.
Dr.Samantha is now available on Ollama. You can use it by running the command ollama run stuehieyr/dr_samantha in your
terminal. If you have limited computing resources, check out this video to learn how to run it on
a Google Colab backend.
OpenLLM Leaderboard Performance
T
Model
Average
ARC
Hellaswag
MMLU
TruthfulQA
Winogrande
GSM8K
1
sethuiyer/Dr_Samantha-7b
52.95
53.84
77.95
47.94
45.58
73.56
18.8
2
togethercomputer/LLaMA-2-7B-32K-Instruct
50.02
51.11
78.51
46.11
44.86
73.88
5.69
3
togethercomputer/LLaMA-2-7B-32K
47.07
47.53
76.14
43.33
39.23
71.9
4.32
Subject-wise Accuracy
Subject
Accuracy (%)
Clinical Knowledge
52.83
Medical Genetics
49.00
Human Aging
58.29
Human Sexuality
55.73
College Medicine
38.73
Anatomy
41.48
College Biology
52.08
College Medicine
38.73
High School Biology
53.23
Professional Medicine
38.73
Nutrition
50.33
Professional Psychology
46.57
Virology
41.57
High School Psychology
66.60
Average
48.85%
Evaluation by GPT-4 across 25 random prompts from ChatDoctor-200k Dataset
Overall Rating: 83.5/100
Pros:
Demonstrates extensive medical knowledge through accurate identification of potential causes for various symptoms.
Responses consistently emphasize the importance of seeking professional diagnoses and treatments.
Advice to consult specialists for certain concerns is well-reasoned.
Practical interim measures provided for symptom management in several cases.
Consistent display of empathy, support, and reassurance for patients' well-being.
Clear and understandable explanations of conditions and treatment options.
Prompt responses addressing all aspects of medical inquiries.
Cons:
Could occasionally place stronger emphasis on urgency when symptoms indicate potential emergencies.
Discussion of differential diagnoses could explore a broader range of less common causes.
Details around less common symptoms and their implications need more depth at times.
Opportunities exist to gather clarifying details on symptom histories through follow-up questions.
Consider exploring full medical histories to improve diagnostic context where relevant.
Caution levels and risk factors associated with certain conditions could be underscored more.