import streamlit as st import pandas as pd import time import algs EDIT_ALGS = [ "MEND: Model editor networks using gradient decomposition", "SERAC: Semi-parametric editing with a retrieval-augmented counterfactual model", "ENN: Editable neural networks", "KE: KnowledgeEditor", "FT: Fine-tuning", "LU: Lookup Cache" ] def reset(): st.session_state.edits.drop(st.session_state.edits.index, inplace=True) st.session_state.model_outputs.drop(st.session_state.edits.index, inplace=True) selected_alg = st.session_state.alg_selector selected_alg_idx = EDIT_ALGS.index(selected_alg) ############# Need to reset the model here (and maybe show progress spinner?) def apply_edit(): st.session_state.edits.loc[len(st.session_state.edits)] = [str(edit_input), str(edit_label)] ############# Actually do the edit to the model def sample_model(): input_str = str(test_input) model_output = "blah blah blah" ############## Actually sample the model n_edits = len(st.session_state.edits) alg_name = st.session_state.alg_selector alg_abbrv = alg_name[:alg_name.index(":")] st.session_state.model_outputs.loc[len(st.session_state.model_outputs)] = [input_str, model_output, n_edits, alg_abbrv] ################################ #### Backend initialization #### ################################ if "init" not in st.session_state: st.session_state.edits = pd.DataFrame([], columns=["Edit input", "Edit label"]) st.session_state.model_outputs = pd.DataFrame([], columns=["Input", "Output", "N edits", "Alg"]) st.session_state.init = True st.session_state.model = None ############## ######################## #### Interface code #### ######################## st.title("Language Model Editing") st.markdown("**Note: this HF space is currently under development and doesn't actually work yet!**") st.markdown("The goal of this demo is to give you a sense of the *abilities* and *limitations* of existing methods for **editing** pre-trained language models. **Model editing** algorithms use a single input-output pair to update a pre-trained model's behavior for that input (and ideally, related inputs).") st.markdown("This demo uses a [T5-large](https://huggingface.co/google/t5-large-ssm-nq) model fine-tuned on [Natural Questions](https://arxiv.org/pdf/2002.08910.pdf) as the base pre-trained model.") st.write("You can choose from a variety of algorithms for model editing in the dropdown below. At the bottom of the page, you can query the model for whatever input you want before/after editing.") st.markdown("***") col1, col2 = st.columns([5,1]) with col1: alg_selector = st.selectbox("Editing algorithm:", EDIT_ALGS, key="alg_selector", on_change=reset) with col2: st.text("ㅤ") st.button("Clear edits", on_click=reset) st.write("Edits applied so far:") st.table(st.session_state.edits) col1, col2, col3 = st.columns([3, 2, 1]) with col1: edit_input = st.text_input("Edit input:", placeholder="e.g., 'What is the tallest mountain on Earth?'") with col2: edit_label = st.text_input("Edit target:", placeholder="e.g., 'Denali'") with col3: st.text("ㅤ") edit_button = st.button("Apply edit", on_click=apply_edit) st.markdown("***") if len(st.session_state.edits) == 0: title = "Input to sample from *unedited* model:" else: title = f"Input to sample from *edited* model:" col1, col2 = st.columns([5, 1]) with col1: test_input = st.text_input(title, placeholder="e.g., 'What is the earth's tallest mountain?'") with col2: st.text("ㅤ") generate_button = st.button("Generate", on_click=sample_model) st.write("Model generation history:") st.table(st.session_state.model_outputs)