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from utils.prompts import generate_paper_prompts, generate_keywords_prompts, generate_experiments_prompts, generate_bg_summary_prompts | |
from utils.gpt_interaction import get_responses, extract_responses, extract_keywords, extract_json | |
from utils.figures import generate_random_figures | |
import time | |
import os | |
# three GPT-based content generator: | |
# 1. section_generation: used to generate main content of the paper | |
# 2. keywords_generation: used to generate a json output {key1: output1, key2: output2} for multiple purpose. | |
# 3. figure_generation: used to generate sample figures. | |
# all generator should return the token usage. | |
def section_generation_bg(paper, section, save_to_path, model): | |
""" | |
The main pipeline of generating a section. | |
1. Generate prompts. | |
2. Get responses from AI assistant. | |
3. Extract the section text. | |
4. Save the text to .tex file. | |
:return usage | |
""" | |
print(f"Generating {section}...") | |
prompts = generate_bg_summary_prompts(paper, section) | |
gpt_response, usage = get_responses(prompts, model) | |
output = extract_responses(gpt_response) | |
paper["body"][section] = output | |
tex_file = os.path.join(save_to_path, f"{section}.tex") | |
# tex_file = save_to_path + f"/{section}.tex" | |
if section == "abstract": | |
with open(tex_file, "w") as f: | |
f.write(r"\begin{abstract}") | |
with open(tex_file, "a") as f: | |
f.write(output) | |
with open(tex_file, "a") as f: | |
f.write(r"\end{abstract}") | |
else: | |
with open(tex_file, "w") as f: | |
f.write(f"\section{{{section.upper()}}}\n") | |
with open(tex_file, "a") as f: | |
f.write(output) | |
time.sleep(5) | |
print(f"{section} has been generated. Saved to {tex_file}.") | |
return usage | |
def section_generation(paper, section, save_to_path, model): | |
""" | |
The main pipeline of generating a section. | |
1. Generate prompts. | |
2. Get responses from AI assistant. | |
3. Extract the section text. | |
4. Save the text to .tex file. | |
:return usage | |
""" | |
print(f"Generating {section}...") | |
prompts = generate_paper_prompts(paper, section) | |
gpt_response, usage = get_responses(prompts, model) | |
output = extract_responses(gpt_response) | |
paper["body"][section] = output | |
tex_file = os.path.join(save_to_path, f"{section}.tex") | |
# tex_file = save_to_path + f"/{section}.tex" | |
if section == "abstract": | |
with open(tex_file, "w") as f: | |
f.write(r"\begin{abstract}") | |
with open(tex_file, "a") as f: | |
f.write(output) | |
with open(tex_file, "a") as f: | |
f.write(r"\end{abstract}") | |
else: | |
with open(tex_file, "w") as f: | |
f.write(f"\section{{{section.upper()}}}\n") | |
with open(tex_file, "a") as f: | |
f.write(output) | |
time.sleep(5) | |
print(f"{section} has been generated. Saved to {tex_file}.") | |
return usage | |
def keywords_generation(input_dict, model, max_kw_refs = 10): | |
title = input_dict.get("title") | |
description = input_dict.get("description", "") | |
if title is not None: | |
prompts = generate_keywords_prompts(title, description, max_kw_refs) | |
gpt_response, usage = get_responses(prompts, model) | |
keywords = extract_keywords(gpt_response) | |
return keywords, usage | |
else: | |
raise ValueError("`input_dict` must include the key 'title'.") | |
def figures_generation(paper, save_to_path, model): | |
prompts = generate_experiments_prompts(paper) | |
gpt_response, usage = get_responses(prompts, model) | |
list_of_methods = list(extract_json(gpt_response)) | |
generate_random_figures(list_of_methods, os.path.join(save_to_path, "comparison.png")) | |
return usage |