import json import pandas as pd import requests from multiprocessing import Pool from functools import partial import streamlit as st GITHUB_CODE = "https://huggingface.co/datasets/lvwerra/github-code" INCODER_IMG = ( "https://huggingface.co/datasets/loubnabnl/repo-images/raw/main/incoder.png" ) @st.cache() def load_examples(): with open("utils/examples.json", "r") as f: examples = json.load(f) return examples def generate_code(model_name, gen_prompt, max_new_tokens, temperature, seed): url = ( f"https://hf.space/embed/loubnabnl/{model_name.lower()}-subspace/+/api/predict/" ) r = requests.post( url=url, json={"data": [gen_prompt, max_new_tokens, temperature, seed]} ) generated_text = r.json()["data"][0] return generated_text st.set_page_config(page_icon=":laptop:", layout="wide") st.sidebar.header("Models") models = ["CodeParrot", "InCoder"] selected_models = st.sidebar.multiselect( "Select code generation models to compare", models, default=["CodeParrot"] ) st.sidebar.header("Tasks") tasks = [ " ", "Pretraining datasets", "Model architecture", "Model evaluation", "Code generation", ] selected_task = st.sidebar.selectbox("Select a task", tasks) if selected_task == " ": st.title("Code Generation Models") with open("utils/intro.txt", "r") as f: intro = f.read() st.markdown(intro) elif selected_task == "Pretraining datasets": st.title("Pretraining datasets 📚") st.markdown( f"Preview of some code files from Github repositories in [Github-code dataset]({GITHUB_CODE}):" ) df = pd.read_csv("utils/data_preview.csv") st.dataframe(df) for model in selected_models: with open(f"datasets/{model.lower()}.txt", "r") as f: text = f.read() st.markdown(f"### {model}") st.markdown(text) elif selected_task == "Model architecture": st.title("Model architecture") for model in selected_models: with open(f"architectures/{model.lower()}.txt", "r") as f: text = f.read() st.markdown(f"## {model}") st.markdown(text) if model == "InCoder": st.image(INCODER_IMG, caption="Figure 1: InCoder training", width=700) elif selected_task == "Model evaluation": st.title("Code models evaluation 📊") with open("evaluation/intro.txt", "r") as f: intro = f.read() st.markdown(intro) elif selected_task == "Code generation": st.title("Code generation 💻") st.sidebar.header("Examples") examples = load_examples() example_names = [example["name"] for example in examples] name2id = dict([(name, i) for i, name in enumerate(example_names)]) selected_example = st.sidebar.selectbox( "Select one of the following examples or implement yours", example_names ) example_text = examples[name2id[selected_example]]["value"] default_length = examples[name2id[selected_example]]["length"] st.sidebar.header("Generation settings") temperature = st.sidebar.slider( "Temperature:", value=0.2, min_value=0.0, step=0.1, max_value=2.0 ) max_new_tokens = st.sidebar.slider( "Number of tokens to generate:", value=default_length, min_value=8, step=8, max_value=256, ) seed = st.sidebar.slider( "Random seed:", value=42, min_value=0, step=1, max_value=1000 ) gen_prompt = st.text_area( "Generate code with prompt:", value=example_text, height=220, ).strip() if st.button("Generate code!"): with st.spinner("Generating code..."): # Create a multiprocessing Pool pool = Pool() generate_parallel = partial( generate_code, gen_prompt=gen_prompt, max_new_tokens=max_new_tokens, temperature=temperature, seed=seed, ) output = pool.map(generate_parallel, selected_models) for i in range(len(output)): st.markdown(f"**{selected_models[i]}**") st.code(output[i])