| from generators.model import ModelBase, Message |
| import random |
| import streamlit as st |
|
|
| from typing import Union, List, Optional, Callable |
|
|
|
|
| def generic_generate_func_impl( |
| func_sig: str, |
| model: ModelBase, |
| strategy: str, |
| prev_func_impl, |
| feedback, |
| self_reflection, |
| num_comps, |
| temperature, |
| reflexion_chat_instruction: str, |
| reflexion_few_shot: str, |
| simple_chat_instruction: str, |
| reflexion_completion_instruction: str, |
| simple_completion_instruction: str, |
| code_block_instruction: str, |
| parse_code_block: Callable[[str], str], |
| add_code_block: Callable[[str], str] |
| ) -> Union[str, List[str]]: |
| if strategy != "reflexion" and strategy != "simple": |
| raise ValueError( |
| f"Invalid strategy: given `{strategy}` but expected one of `reflexion` or `simple`") |
| if strategy == "reflexion" and (prev_func_impl is None or feedback is None or self_reflection is None): |
| raise ValueError( |
| f"Invalid arguments: given `strategy=reflexion` but `prev_func_impl`, `feedback`, or `self_reflection` is None") |
|
|
| if model.is_chat: |
| if strategy == "reflexion": |
| message = f"{reflexion_few_shot}\n[previous impl]:\n{add_code_block(prev_func_impl)}\n\n[unit test results from previous impl]:\n{feedback}\n\n[reflection on previous impl]:\n{self_reflection}\n\n[improved impl]:\n{func_sig}" |
| prompt = f"{reflexion_chat_instruction}\n{code_block_instruction}" |
| |
| print_messages(prompt, message) |
| messages = [ |
| Message( |
| role="system", |
| content=prompt, |
| ), |
| Message( |
| role="user", |
| content=reflexion_few_shot, |
| ), |
| Message( |
| role="assistant", |
| content=add_code_block(prev_func_impl), |
| ), |
| Message( |
| role="user", |
| content=f"[unit test results from previous impl]:\n{feedback}\n\n[reflection on previous impl]:", |
| ), |
| Message( |
| role="assistant", |
| content=self_reflection, |
| ), |
| Message( |
| role="user", |
| content=f"[improved impl]:\n{func_sig}", |
| ), |
| ] |
| func_bodies = model.generate_chat(messages=messages, num_comps=num_comps, temperature=temperature) |
| else: |
| system_prompt = f"{simple_chat_instruction}\n{code_block_instruction}" |
| print_messages(system_prompt, func_sig) |
| messages = [ |
| Message( |
| role="system", |
| content=f"{simple_chat_instruction}\n{code_block_instruction}", |
| ), |
| Message( |
| role="user", |
| content=func_sig, |
| ), |
| ] |
| func_bodies = model.generate_chat(messages=messages, num_comps=num_comps, temperature=temperature) |
| else: |
| if strategy == "reflexion": |
| prompt = f"{reflexion_completion_instruction}\n{add_code_block(prev_func_impl)}\n\nunit tests:\n{feedback}\n\nhint:\n{self_reflection}\n\n# improved implementation\n{func_sig}\n{code_block_instruction}" |
| func_bodies = model.generate( |
| prompt, num_comps=num_comps, temperature=temperature) |
| else: |
| prompt = f"{simple_completion_instruction}\n{func_sig}\n{code_block_instruction}" |
| func_bodies = model.generate( |
| prompt, num_comps=num_comps, temperature=temperature) |
|
|
| if num_comps == 1: |
| assert isinstance(func_bodies, str) |
| func_body_str = parse_code_block(func_bodies) |
| print_generated_func_body(func_body_str) |
| return func_body_str |
|
|
| else: |
| func_bodies = [parse_code_block(func_body) for func_body in func_bodies] |
| print_generated_func_body("\n\n".join(func_bodies)) |
| return func_bodies |
|
|
|
|
| def generate_with_accumulated_context( |
| func_sig: str, |
| model: ModelBase, |
| strategy: str, |
| prev_func_impl, |
| accumulated_feedback, |
| accumulated_reflection, |
| num_comps, |
| temperature, |
| reflexion_chat_instruction: str, |
| reflexion_few_shot: str, |
| simple_chat_instruction: str, |
| reflexion_completion_instruction: str, |
| simple_completion_instruction: str, |
| code_block_instruction: str, |
| parse_code_block: Callable[[str], str], |
| add_code_block: Callable[[str], str] |
| ) -> Union[str, List[str]]: |
| |
| if strategy != "reflexion" and strategy != "simple": |
| raise ValueError( |
| f"Invalid strategy: given `{strategy}` but expected one of `reflexion` or `simple`") |
| if strategy == "reflexion" and (prev_func_impl is None or accumulated_feedback is None or accumulated_reflection is None): |
| raise ValueError( |
| f"Invalid arguments: given `strategy=reflexion` but `prev_func_impl`, `feedback`, or `self_reflection` is None") |
|
|
| |
| accumulated_context = "\n\n".join( |
| [f"[previous impl {i+1}]:\n{add_code_block(impl)}\n[unit test results from previous impl {i+1}]:\n{feedback}\n[reflection on previous impl {i+1}]:\n{reflection}" |
| for i, (impl, feedback, reflection) in enumerate(zip(prev_func_impl, accumulated_feedback, accumulated_reflection))] |
| ) |
|
|
| if model.is_chat: |
| if strategy == "reflexion": |
| |
| messages = [ |
| Message(role="system", content=f"{reflexion_chat_instruction}\n{code_block_instruction}"), |
| Message(role="user", content=reflexion_few_shot) |
| ] |
| |
| for impl, feedback, reflection in zip(prev_func_impl, accumulated_feedback, accumulated_reflection): |
| messages.append(Message(role="assistant", content=add_code_block(impl))) |
| messages.append(Message(role="user", content=f"[unit test results from previous impl]:\n{feedback}\n\n[reflection on previous impl]:\n{reflection}")) |
| |
| messages.append(Message(role="user", content=f"[improved impl]:\n{func_sig}")) |
| prompt = "\n".join([message.content for message in messages]) |
| message = (f"{reflexion_few_shot}\n{accumulated_context}\n\n[improved impl]:\n{func_sig}") |
| print_messages(prompt, message) |
|
|
| func_bodies = model.generate_chat(messages=messages, num_comps=num_comps, temperature=temperature) |
| else: |
| system_prompt = f"{simple_chat_instruction}\n{code_block_instruction}" |
| print_messages(system_prompt, func_sig) |
| messages = [ |
| Message(role="system", content=f"{simple_chat_instruction}\n{code_block_instruction}"), |
| Message(role="user", content=func_sig) |
| ] |
| func_bodies = model.generate_chat(messages=messages, num_comps=num_comps, temperature=temperature) |
| else: |
| if strategy == "reflexion": |
| prompt = f"{reflexion_completion_instruction}\n{accumulated_context}\n\n# improved implementation\n{func_sig}\n{code_block_instruction}" |
| func_bodies = model.generate(prompt, num_comps=num_comps, temperature=temperature) |
| print_messages(prompt, "") |
| else: |
| prompt = f"{simple_completion_instruction}\n{func_sig}\n{code_block_instruction}" |
| func_bodies = model.generate(prompt, num_comps=num_comps, temperature=temperature) |
| print_messages(prompt, "") |
|
|
| if num_comps == 1: |
| assert isinstance(func_bodies, str) |
| func_body_str = parse_code_block(func_bodies) |
| print_generated_func_body(func_body_str) |
| return func_body_str |
|
|
| else: |
| func_bodies = [parse_code_block(func_body) for func_body in func_bodies] |
| print_generated_func_body("\n\n".join(func_bodies)) |
| return func_bodies |
| |
|
|
| def generic_generate_internal_tests( |
| func_sig: str, |
| model: ModelBase, |
| max_num_tests: int, |
| test_generation_few_shot: str, |
| test_generation_chat_instruction: str, |
| test_generation_completion_instruction: str, |
| parse_tests: Callable[[str], List[str]], |
| is_syntax_valid: Callable[[str], bool], |
| is_react: bool = False |
| ) -> List[str]: |
| """Generates tests for a function.""" |
| if model.is_chat: |
| if is_react: |
| messages = [ |
| Message( |
| role="system", |
| content=test_generation_chat_instruction, |
| ), |
| Message( |
| role="user", |
| content=f"{test_generation_few_shot}\n\n[func signature]:\n{func_sig}\n\n[think]:" |
| ) |
| ] |
| output = model.generate_chat(messages=messages, max_tokens=1024) |
| print(f'React test generation output: {output}') |
| else: |
| messages = [ |
| Message( |
| role="system", |
| content=test_generation_chat_instruction, |
| ), |
| Message( |
| role="user", |
| content=f"{test_generation_few_shot}\n\n[func signature]:\n{func_sig}\n\n[unit tests]:", |
| ) |
| ] |
| output = model.generate_chat(messages=messages, max_tokens=1024) |
| else: |
| prompt = f'{test_generation_completion_instruction}\n\nfunc signature:\n{func_sig}\nunit tests:' |
| output = model.generate(prompt, max_tokens=1024) |
| all_tests = parse_tests(output) |
| valid_tests = [test for test in all_tests if is_syntax_valid(test)] |
|
|
| |
|
|
| return (valid_tests) |
|
|
|
|
| def generic_generate_self_reflection( |
| func: str, |
| feedback: str, |
| model: ModelBase, |
| self_reflection_chat_instruction: str, |
| self_reflection_completion_instruction: str, |
| add_code_block: Callable[[str], str], |
| self_reflection_few_shot: Optional[str] = None, |
| ) -> str: |
| if model.is_chat: |
| if self_reflection_few_shot is not None: |
| messages = [ |
| Message( |
| role="system", |
| content=self_reflection_chat_instruction, |
| ), |
| Message( |
| role="user", |
| content=f'{self_reflection_few_shot}\n\n[function impl]:\n{add_code_block(func)}\n\n[unit test results]:\n{feedback}\n\n[self-reflection]:', |
| ) |
| ] |
| reflection = model.generate_chat(messages=messages) |
| print(f'|Self reflection output|: {reflection}') |
| else: |
| messages = [ |
| Message( |
| role="system", |
| content=self_reflection_chat_instruction, |
| ), |
| Message( |
| role="user", |
| content=f'[function impl]:\n{add_code_block(func)}\n\n[unit test results]:\n{feedback}\n\n[self-reflection]:', |
| ) |
| ] |
| reflection = model.generate_chat(messages=messages) |
| else: |
| reflection = model.generate( |
| f'{self_reflection_completion_instruction}\n{add_code_block(func)}\n\n{feedback}\n\nExplanation:') |
| return reflection |
|
|
|
|
| def sample_n_random(items: List[str], n: int) -> List[str]: |
| """Sample min(n, len(items)) random items from a list""" |
| assert n >= 0 |
| if n >= len(items): |
| return items |
| return random.sample(items, n) |
|
|
| def print_messages(system_message_text: str, user_message_text: str) -> None: |
| print(f"""{system_message_text}""") |
| print(f"""{user_message_text} \n""") |
|
|
| def print_generated_func_body(func_body_str: str) -> None: |
| print(f"""|GENERATED FUNCTION BODY| \n |
| ```python\n{func_body_str} \n |
| """) |
|
|