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import os
import requests
import tellurium as te
import tempfile
import ollama
import streamlit as st
from langchain_text_splitters import CharacterTextSplitter
import chromadb
# Constants and global variables
GITHUB_OWNER = "sys-bio"
GITHUB_REPO_CACHE = "BiomodelsCache"
BIOMODELS_JSON_DB_PATH = "src/cached_biomodels.json"
LOCAL_DOWNLOAD_DIR = tempfile.mkdtemp()
cached_data = None
db = None
def fetch_github_json():
url = f"https://api.github.com/repos/{GITHUB_OWNER}/{GITHUB_REPO_CACHE}/contents/{BIOMODELS_JSON_DB_PATH}"
headers = {"Accept": "application/vnd.github+json"}
response = requests.get(url, headers=headers)
if response.status_code == 200:
data = response.json()
if "download_url" in data:
file_url = data["download_url"]
json_response = requests.get(file_url)
return json_response.json()
else:
raise ValueError(f"Unable to fetch model DB from GitHub repository: {GITHUB_OWNER} - {GITHUB_REPO_CACHE}")
else:
raise ValueError(f"Unable to fetch model DB from GitHub repository: {GITHUB_OWNER} - {GITHUB_REPO_CACHE}")
def search_models(search_str):
global cached_data
if cached_data is None:
cached_data = fetch_github_json()
query_text = search_str.strip().lower()
models = {}
for model_id, model_data in cached_data.items():
if 'name' in model_data:
name = model_data['name'].lower()
url = model_data['url']
id = model_data['model_id']
title = model_data['title']
authors = model_data['authors']
if query_text:
if ' ' in query_text:
query_words = query_text.split(" ")
if all(word in ' '.join([str(v).lower() for v in model_data.values()]) for word in query_words):
models[model_id] = {
'ID': model_id,
'name': name,
'url': url,
'id': id,
'title': title,
'authors': authors,
}
else:
if query_text in ' '.join([str(v).lower() for v in model_data.values()]):
models[model_id] = {
'ID': model_id,
'name': name,
'url': url,
'id': id,
'title': title,
'authors': authors,
}
return models
def download_model_file(model_url, model_id):
model_url = f"https://raw.githubusercontent.com/konankisa/BiomodelsStore/main/biomodels/{model_id}/{model_id}_url.xml"
response = requests.get(model_url)
if response.status_code == 200:
os.makedirs(LOCAL_DOWNLOAD_DIR, exist_ok=True)
file_path = os.path.join(LOCAL_DOWNLOAD_DIR, f"{model_id}.xml")
with open(file_path, 'wb') as file:
file.write(response.content)
print(f"Model {model_id} downloaded successfully: {file_path}")
return file_path
else:
raise ValueError(f"Failed to download the model from {model_url}")
def convert_sbml_to_antimony(sbml_file_path, antimony_file_path):
try:
r = te.loadSBMLModel(sbml_file_path)
antimony_str = r.getCurrentAntimony()
with open(antimony_file_path, 'w') as file:
file.write(antimony_str)
print(f"Successfully converted SBML to Antimony: {antimony_file_path}")
except Exception as e:
print(f"Error converting SBML to Antimony: {e}")
def split_biomodels(antimony_file_path):
text_splitter = CharacterTextSplitter(
separator=" // ",
chunk_size=1000,
chunk_overlap=20,
length_function=len,
is_separator_regex=False
)
final_items = []
directory_path = os.path.dirname(os.path.abspath(antimony_file_path))
if not os.path.isdir(directory_path):
print(f"Directory not found: {directory_path}")
return final_items
files = os.listdir(directory_path)
for file in files:
file_path = os.path.join(directory_path, file)
try:
with open(file_path, 'r') as f:
file_content = f.read()
items = text_splitter.create_documents([file_content])
for item in items:
final_items.append(item)
break
except Exception as e:
print(f"Error reading file {file_path}: {e}")
return final_items
def create_vector_db(final_items):
global db
client = chromadb.Client()
db = client.create_collection(
name="BioModelsRAG",
metadata={"hnsw:space": "cosine"}
)
documents = []
for item in final_items:
prompt = f"""
Summarize the following segment of Antimony in a clear and concise manner:
1. Provide a detailed summary using a limited number of words
2. Maintain all original values and include any mathematical expressions or values in full.
3. Ensure that all variable names and their values are clearly presented.
4. Write the summary in paragraph format, putting an emphasis on clarity and completeness.
Here is the antimony segment to summarize: {item}
"""
documents5 = ollama.generate(model="llama3", prompt=prompt)
documents2 = documents5['response']
documents.append(documents2)
if final_items:
db.add(
documents=documents,
ids=[f"id{i}" for i in range(len(final_items))]
)
return db
def generate_response(db, query_text, previous_context):
query_results = db.query(
query_texts=query_text,
n_results=5,
)
if not query_results.get('documents'):
return "No results found."
best_recommendation = query_results['documents']
prompt_template = f"""
Using the context provided below, answer the following question. If the information is insufficient to answer the question, please state that clearly.
Context:
{previous_context} {best_recommendation}
Instructions:
1. Cross-Reference: Use all provided context to define variables and identify any unknown entities.
2. Mathematical Calculations: Perform any necessary calculations based on the context and available data.
3. Consistency: Remember and incorporate previous responses if the question is related to earlier information.
Question:
{query_text}
"""
response = ollama.generate(model="llama3", prompt=prompt_template)
final_response = response.get('response', 'No response generated')
return final_response
def streamlit_app():
st.title("BioModels Chat Interface")
search_str = st.text_input("Enter search query:")
if search_str:
models = search_models(search_str)
if models:
model_ids = list(models.keys())
selected_models = st.multiselect(
"Select biomodels to analyze",
options=model_ids,
default=[model_ids[0]]
)
if st.button("Analyze Selected Models"):
all_final_items = []
for model_id in selected_models:
model_data = models[model_id]
st.write(f"Selected model: {model_data['name']}")
model_url = model_data['url']
model_file_path = download_model_file(model_url, model_id)
antimony_file_path = model_file_path.replace(".xml", ".antimony")
convert_sbml_to_antimony(model_file_path, antimony_file_path)
final_items = split_biomodels(antimony_file_path)
if not final_items:
st.write("No content found in the biomodel.")
continue
all_final_items.extend(final_items)
global db
db = create_vector_db(all_final_items)
if db:
st.write("Models have been processed and added to the database.")
user_query = st.text_input("Ask a question about the biomodels:")
if user_query:
if 'previous_context' not in st.session_state:
st.session_state.previous_context = ""
response = generate_response(db, user_query, st.session_state.previous_context)
st.write(f"Response: {response}")
st.session_state.previous_context += f"{response}\n"
else:
st.write("No models found for the given search query.")
if __name__ == "__main__":
streamlit_app()
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