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import os
from huggingface_hub import InferenceClient
import gradio as gr
import random
from transformers import pipeline, AutoModelForCausalLM, AutoTokenizer
import subprocess
import threading
import time
import json
import streamlit as st
# Initialize the session state
if 'current_state' not in st.session_state:
st.session_state.current_state = None
# Initialize the InferenceClient for Mixtral-8x7B-Instruct-v0.1
client = InferenceClient("mistralai/Mixtral-8x7B-Instruct-v0.1")
# Load the model and tokenizer from a different repository
model_name = "bigscience/bloom-1b7"
model = AutoModelForCausalLM.from_pretrained(model_name)
tokenizer = AutoTokenizer.from_pretrained(model_name)
from agent.prompts import (
AI_SYSTEM_PROMPT,
CODE_REVIEW_ASSISTANT,
CONTENT_WRITER_EDITOR,
PYTHON_CODE_DEV,
WEB_DEV,
QUESTION_GENERATOR,
HUGGINGFACE_FILE_DEV,
)
from agent.utils import parse_action, parse_file_content, read_python_module_structure
# Hugging Face model and tokenizer setup
model_name = "gpt2"
tokenizer = AutoTokenizer.from_pretrained(model_name)
model = AutoModelForCausalLM.from_pretrained(model_name)
generator = pipeline('text-generation', model=model, tokenizer=tokenizer)
VERBOSE = False
MAX_HISTORY = 100
def run_gpt(prompt_template, stop_tokens, max_tokens, module_summary, purpose, **prompt_kwargs):
content = PREFIX.format(
module_summary=module_summary,
purpose=purpose,
) + prompt_template.format(**prompt_kwargs)
if VERBOSE:
st.write(LOG_PROMPT.format(content))
resp = generator(content, max_length=max_tokens, stop=stop_tokens)[0]["generated_text"]
if VERBOSE:
st.write(LOG_RESPONSE.format(resp))
return resp
def compress_history(purpose, task, history, directory):
module_summary, _, _ = read_python_module_structure(directory)
resp = run_gpt(
COMPRESS_HISTORY_PROMPT,
stop_tokens=["observation:", "task:", "action:", "thought:"],
max_tokens=512,
module_summary=module_summary,
purpose=purpose,
task=task,
history=history,
)
history = "observation: {}\n".format(resp)
return history
def call_main(purpose, task, history, directory, action_input):
module_summary, _, _ = read_python_module_structure(directory)
resp = run_gpt(
ACTION_PROMPT,
stop_tokens=["observation:", "task:"],
max_tokens=256,
module_summary=module_summary,
purpose=purpose,
task=task,
history=history,
)
lines = resp.strip().strip("\n").split("\n")
for line in lines:
if line == "":
continue
if line.startswith("thought: "):
history += "{}\n".format(line)
elif line.startswith("action: "):
action_name, action_input = parse_action(line)
history += "{}\n".format(line)
return action_name, action_input, history, task
else:
assert False, "unknown action: {}".format(line)
return "MAIN", None, history, task
def call_test(purpose, task, history, directory, action_input):
result = subprocess.run(
["python", "-m", "pytest", "--collect-only", directory],
capture_output=True,
text=True,
)
if result.returncode != 0:
history += "observation: there are no tests! Test should be written in a test folder under {}\n".format(
directory
)
return "MAIN", None, history, task
result = subprocess.run(
["python", "-m", "pytest", directory], capture_output=True, text=True
)
if result.returncode == 0:
history += "observation: tests pass\n"
return "MAIN", None, history, task
module_summary, content, _ = read_python_module_structure(directory)
resp = run_gpt(
UNDERSTAND_TEST_RESULTS_PROMPT,
stop_tokens=[],
max_tokens=256,
module_summary=module_summary,
purpose=purpose,
task=task,
history=history,
stdout=result.stdout[:5000], # limit amount of text
stderr=result.stderr[:5000], # limit amount of text
)
history += "observation: tests failed: {}\n".format(resp)
return "MAIN", None, history, task
def call_set_task(purpose, task, history, directory, action_input):
module_summary, content, _ = read_python_module_structure(directory)
task = run_gpt(
TASK_PROMPT,
stop_tokens=[],
max_tokens=64,
module_summary=module_summary,
purpose=purpose,
task=task,
history=history,
).strip("\n")
history += "observation: task has been updated to: {}\n".format(task)
return "MAIN", None, history, task
def call_read(purpose, task, history, directory, action_input):
if not os.path.exists(action_input):
history += "observation: file does not exist\n"
return "MAIN", None, history, task
module_summary, content, _ = read_python_module_structure(directory)
f_content = (
content[action_input] if content[action_input] else "< document is empty >"
)
resp = run_gpt(
READ_PROMPT,
stop_tokens=[],
max_tokens=256,
module_summary=module_summary,
purpose=purpose,
task=task,
history=history,
file_path=action_input,
file_contents=f_content,
).strip("\n")
history += "observation: {}\n".format(resp)
return "MAIN", None, history, task
def call_modify(purpose, task, history, directory, action_input):
if not os.path.exists(action_input):
history += "observation: file does not exist\n"
return "MAIN", None, history, task
(
module_summary,
content,
_,
) = read_python_module_structure(directory)
f_content = (
content[action_input] if content[action_input] else "< document is empty >"
)
resp = run_gpt(
MODIFY_PROMPT,
stop_tokens=["action:", "thought:", "observation:"],
max_tokens=2048,
module_summary=module_summary,
purpose=purpose,
task=task,
history=history,
file_path=action_input,
file_contents=f_content,
)
new_contents, description = parse_file_content(resp)
if new_contents is None:
history += "observation: failed to modify file\n"
return "MAIN", None, history, task
with open(action_input, "w") as f:
f.write(new_contents)
history += "observation: file successfully modified\n"
history += "observation: {}\n".format(description)
return "MAIN", None, history, task
def call_add(purpose, task, history, directory, action_input):
d = os.path.dirname(action_input)
if not d.startswith(directory):
history += "observation: files must be under directory {}\n".format(directory)
elif not action_input.endswith(".py"):
history += "observation: can only write .py files\n"
else:
if d and not os.path.exists(d):
os.makedirs(d)
if not os.path.exists(action_input):
module_summary, _, _ = read_python_module_structure(directory)
resp = run_gpt(
ADD_PROMPT,
stop_tokens=["action:", "thought:", "observation:"],
max_tokens=2048,
module_summary=module_summary,
purpose=purpose,
task=task,
history=history,
file_path=action_input,
)
new_contents, description = parse_file_content(resp)
if new_contents is None:
history += "observation: failed to write file\n"
return "MAIN", None, history, task
with open(action_input, "w") as f:
f.write(new_contents)
history += "observation: file successfully written\n"
history += "observation: {}\n".format(description)
else:
history += "observation: file already exists\n"
return "MAIN", None, history, task
# Streamlit UI
st.title("AI Powered Code Assistant")
with st.sidebar:
st.header("Task Configuration")
purpose = st.text_input("Purpose")
task = st.text_input("Task")
directory = st.text_input("Directory")
action_input = st.text_input("Action Input")
action = st.selectbox("Action", ["main", "test", "set_task", "read", "modify", "add"])
if st.button("Run Action"):
history = ""
if action == "main":
action_name, action_input, history, task = call_main(purpose, task, history, directory, action_input)
elif action == "test":
action_name, action_input, history, task = call_test(purpose, task, history, directory, action_input)
elif action == "set_task":
action_name, action_input, history, task = call_set_task(purpose, task, history, directory, action_input)
elif action == "read":
action_name, action_input, history, task = call_read(purpose, task, history, directory, action_input)
elif action == "modify":
action_name, action_input, history, task = call_modify(purpose, task, history, directory, action_input)
elif action == "add":
action_name, action_input, history, task = call_add(purpose, task, history, directory, action_input)
st.subheader("History")
st.write(history) |