Streamline-Analyst / app /src /llm_service.py
Wilson-ZheLin
Initial commit
9183c57
raw
history blame contribute delete
No virus
15.8 kB
import os
import yaml
import json
import re
import streamlit as st
from langchain.prompts import PromptTemplate
from langchain.schema import HumanMessage
from langchain.chat_models import ChatOpenAI
config_path = os.path.join(os.path.dirname(__file__), 'config', 'config.yaml')
with open(config_path, 'r') as file:
config = yaml.safe_load(file)
model4_name = config["model4_name"]
model3_name = config["model3_name"]
api_key = config["openai_api_key"]
def decide_encode_type(attributes, data_frame_head, model_type = 4, user_api_key = None):
"""
Decides the encoding type for given attributes using a language model via the OpenAI API.
Parameters:
- attributes (list): A list of attributes for which to decide the encoding type.
- data_frame_head (DataFrame): The head of the DataFrame containing the attributes. This parameter is expected to be a representation of the DataFrame (e.g., a string or a small subset of the actual DataFrame) that gives an overview of the data.
- model_type (int, optional): Specifies the model to use. The default model_type=4 corresponds to a predefined model named `model4_name`. Another option is model_type=3, which corresponds to `model3_name`.
- user_api_key (str, optional): The user's OpenAI API key. If not provided, a default API key `api_key` is used.
Returns:
- A JSON object containing the recommended encoding types for the given attributes. Please refer to prompt templates in config.py for details.
Raises:
- Exception: If there is an issue accessing the OpenAI API, such as an invalid API key or a network connection error, the function will raise an exception with a message indicating the problem.
"""
try:
model_name = model4_name if model_type == 4 else model3_name
user_api_key = api_key if user_api_key is None else user_api_key
llm = ChatOpenAI(model_name=model_name, openai_api_key=user_api_key, temperature=0)
template = config["numeric_attribute_template"]
prompt_template = PromptTemplate(input_variables=["attributes", "data_frame_head"], template=template)
summary_prompt = prompt_template.format(attributes=attributes, data_frame_head=data_frame_head)
llm_answer = llm([HumanMessage(content=summary_prompt)])
if '```json' in llm_answer.content:
match = re.search(r'```json\n(.*?)```', llm_answer.content, re.DOTALL)
if match: json_str = match.group(1)
else: json_str = llm_answer.content
return json.loads(json_str)
except Exception as e:
st.error("Cannot access the OpenAI API. Please check your API key or network connection.")
st.stop()
def decide_fill_null(attributes, types_info, description_info, model_type = 4, user_api_key = None):
"""
Decides the best encoding type for given attributes using an AI model via OpenAI API.
Parameters:
- attributes (list): List of attribute names to consider for encoding.
- data_frame_head (DataFrame or str): The head of the DataFrame or a string representation, providing context for the encoding decision.
- model_type (int, optional): The model to use, where 4 is the default. Can be customized to use a different model.
- user_api_key (str, optional): The user's OpenAI API key. If None, a default key is used.
Returns:
- dict: A JSON object with recommended encoding types for the attributes. Please refer to prompt templates in config.py for details.
Raises:
- Exception: If there is an issue accessing the OpenAI API, such as an invalid API key or a network connection error, the function will raise an exception with a message indicating the problem.
"""
try:
model_name = model4_name if model_type == 4 else model3_name
user_api_key = api_key if user_api_key is None else user_api_key
llm = ChatOpenAI(model_name=model_name, openai_api_key=user_api_key, temperature=0)
template = config["null_attribute_template"]
prompt_template = PromptTemplate(input_variables=["attributes", "types_info", "description_info"], template=template)
summary_prompt = prompt_template.format(attributes=attributes, types_info=types_info, description_info=description_info)
llm_answer = llm([HumanMessage(content=summary_prompt)])
if '```json' in llm_answer.content:
match = re.search(r'```json\n(.*?)```', llm_answer.content, re.DOTALL)
if match: json_str = match.group(1)
else: json_str = llm_answer.content
return json.loads(json_str)
except Exception as e:
st.error("Cannot access the OpenAI API. Please check your API key or network connection.")
st.stop()
def decide_model(shape_info, head_info, nunique_info, description_info, model_type = 4, user_api_key = None):
"""
Decides the most suitable machine learning model based on dataset characteristics.
Parameters:
- shape_info (dict): Information about the shape of the dataset.
- head_info (str or DataFrame): The head of the dataset or its string representation.
- nunique_info (dict): Information about the uniqueness of dataset attributes.
- description_info (str): Descriptive information about the dataset.
- model_type (int, optional): Specifies which model to consult for decision-making.
- user_api_key (str, optional): OpenAI API key for making requests.
Returns:
- dict: A JSON object containing the recommended model and configuration. Please refer to prompt templates in config.py for details.
Raises:
- Exception: If there is an issue accessing the OpenAI API, such as an invalid API key or a network connection error, the function will raise an exception with a message indicating the problem.
"""
try:
model_name = model4_name if model_type == 4 else model3_name
user_api_key = api_key if user_api_key is None else user_api_key
llm = ChatOpenAI(model_name=model_name, openai_api_key=user_api_key, temperature=0)
template = config["decide_model_template"]
prompt_template = PromptTemplate(input_variables=["shape_info", "head_info", "nunique_info", "description_info"], template=template)
summary_prompt = prompt_template.format(shape_info=shape_info, head_info=head_info, nunique_info=nunique_info, description_info=description_info)
llm_answer = llm([HumanMessage(content=summary_prompt)])
if '```json' in llm_answer.content:
match = re.search(r'```json\n(.*?)```', llm_answer.content, re.DOTALL)
if match: json_str = match.group(1)
else: json_str = llm_answer.content
return json.loads(json_str)
except Exception as e:
st.error("Cannot access the OpenAI API. Please check your API key or network connection.")
st.stop()
def decide_cluster_model(shape_info, description_info, cluster_info, model_type = 4, user_api_key = None):
"""
Determines the appropriate clustering model based on dataset characteristics.
Parameters:
- shape_info: Information about the dataset shape.
- description_info: Descriptive statistics or information about the dataset.
- cluster_info: Additional information relevant to clustering.
- model_type (int, optional): The model type to use for decision making (default 4).
- user_api_key (str, optional): The user's API key for OpenAI.
Returns:
- A JSON object with the recommended clustering model and parameters. Please refer to prompt templates in config.py for details.
Raises:
- Exception: If unable to access the OpenAI API or another error occurs.
"""
try:
model_name = model4_name if model_type == 4 else model3_name
user_api_key = api_key if user_api_key is None else user_api_key
llm = ChatOpenAI(model_name=model_name, openai_api_key=user_api_key, temperature=0)
template = config["decide_clustering_model_template"]
prompt_template = PromptTemplate(input_variables=["shape_info", "description_info", "cluster_info"], template=template)
summary_prompt = prompt_template.format(shape_info=shape_info, description_info=description_info, cluster_info=cluster_info)
llm_answer = llm([HumanMessage(content=summary_prompt)])
if '```json' in llm_answer.content:
match = re.search(r'```json\n(.*?)```', llm_answer.content, re.DOTALL)
if match: json_str = match.group(1)
else: json_str = llm_answer.content
return json.loads(json_str)
except Exception as e:
st.error("Cannot access the OpenAI API. Please check your API key or network connection.")
st.stop()
def decide_regression_model(shape_info, description_info, Y_name, model_type = 4, user_api_key = None):
"""
Determines the appropriate regression model based on dataset characteristics and the target variable.
Parameters:
- shape_info: Information about the dataset shape.
- description_info: Descriptive statistics or information about the dataset.
- Y_name: The name of the target variable.
- model_type (int, optional): The model type to use for decision making (default 4).
- user_api_key (str, optional): The user's API key for OpenAI.
Returns:
- A JSON object with the recommended regression model and parameters. Please refer to prompt templates in config.py for details.
Raises:
- Exception: If unable to access the OpenAI API or another error occurs.
"""
try:
model_name = model4_name if model_type == 4 else model3_name
user_api_key = api_key if user_api_key is None else user_api_key
llm = ChatOpenAI(model_name=model_name, openai_api_key=user_api_key, temperature=0)
template = config["decide_regression_model_template"]
prompt_template = PromptTemplate(input_variables=["shape_info", "description_info", "Y_name"], template=template)
summary_prompt = prompt_template.format(shape_info=shape_info, description_info=description_info, Y_name=Y_name)
llm_answer = llm([HumanMessage(content=summary_prompt)])
if '```json' in llm_answer.content:
match = re.search(r'```json\n(.*?)```', llm_answer.content, re.DOTALL)
if match: json_str = match.group(1)
else: json_str = llm_answer.content
return json.loads(json_str)
except Exception as e:
st.error("Cannot access the OpenAI API. Please check your API key or network connection.")
st.stop()
def decide_target_attribute(attributes, types_info, head_info, model_type = 4, user_api_key = None):
"""
Determines the target attribute for modeling based on dataset attributes and characteristics.
Parameters:
- attributes: A list of dataset attributes.
- types_info: Information about the data types of the attributes.
- head_info: A snapshot of the dataset's first few rows.
- model_type (int, optional): The model type to use for decision making (default 4).
- user_api_key (str, optional): The user's API key for OpenAI.
Returns:
- The name of the recommended target attribute. Please refer to prompt templates in config.py for details.
Raises:
- Exception: If unable to access the OpenAI API or another error occurs.
"""
try:
model_name = model4_name if model_type == 4 else model3_name
user_api_key = api_key if user_api_key is None else user_api_key
llm = ChatOpenAI(model_name=model_name, openai_api_key=user_api_key, temperature=0)
template = config["decide_target_attribute_template"]
prompt_template = PromptTemplate(input_variables=["attributes", "types_info", "head_info"], template=template)
summary_prompt = prompt_template.format(attributes=attributes, types_info=types_info, head_info=head_info)
llm_answer = llm([HumanMessage(content=summary_prompt)])
if '```json' in llm_answer.content:
match = re.search(r'```json\n(.*?)```', llm_answer.content, re.DOTALL)
if match: json_str = match.group(1)
else: json_str = llm_answer.content
return json.loads(json_str)["target"]
except Exception as e:
st.error("Cannot access the OpenAI API. Please check your API key or network connection.")
st.stop()
def decide_test_ratio(shape_info, model_type = 4, user_api_key = None):
"""
Determines the appropriate train-test split ratio based on dataset characteristics.
Parameters:
- shape_info: Information about the dataset shape.
- model_type (int, optional): The model type to use for decision making (default 4).
- user_api_key (str, optional): The user's API key for OpenAI.
Returns:
- The recommended train-test split ratio as a float. Please refer to prompt templates in config.py for details.
Raises:
- Exception: If unable to access the OpenAI API or another error occurs.
"""
try:
model_name = model4_name if model_type == 4 else model3_name
user_api_key = api_key if user_api_key is None else user_api_key
llm = ChatOpenAI(model_name=model_name, openai_api_key=user_api_key, temperature=0)
template = config["decide_test_ratio_template"]
prompt_template = PromptTemplate(input_variables=["shape_info"], template=template)
summary_prompt = prompt_template.format(shape_info=shape_info)
llm_answer = llm([HumanMessage(content=summary_prompt)])
if '```json' in llm_answer.content:
match = re.search(r'```json\n(.*?)```', llm_answer.content, re.DOTALL)
if match: json_str = match.group(1)
else: json_str = llm_answer.content
return json.loads(json_str)["test_ratio"]
except Exception as e:
st.error("Cannot access the OpenAI API. Please check your API key or network connection.")
st.stop()
def decide_balance(shape_info, description_info, balance_info, model_type = 4, user_api_key = None):
"""
Determines the appropriate method to balance the dataset based on its characteristics.
Parameters:
- shape_info: Information about the dataset shape.
- description_info: Descriptive statistics or information about the dataset.
- balance_info: Additional information relevant to dataset balancing.
- model_type (int, optional): The model type to use for decision making (default 4).
- user_api_key (str, optional): The user's API key for OpenAI.
Returns:
- The recommended method to balance the dataset. Please refer to prompt templates in config.py for details.
Raises:
- Exception: If unable to access the OpenAI API or another error occurs.
"""
try:
model_name = model4_name if model_type == 4 else model3_name
user_api_key = api_key if user_api_key is None else user_api_key
llm = ChatOpenAI(model_name=model_name, openai_api_key=user_api_key, temperature=0)
template = config["decide_balance_template"]
prompt_template = PromptTemplate(input_variables=["shape_info", "description_info", "balance_info"], template=template)
summary_prompt = prompt_template.format(shape_info=shape_info, description_info=description_info, balance_info=balance_info)
llm_answer = llm([HumanMessage(content=summary_prompt)])
if '```json' in llm_answer.content:
match = re.search(r'```json\n(.*?)```', llm_answer.content, re.DOTALL)
if match: json_str = match.group(1)
else: json_str = llm_answer.content
return json.loads(json_str)["method"]
except Exception as e:
st.error("Cannot access the OpenAI API. Please check your API key or network connection.")
st.stop()