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import streamlit as st |
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from datasets import load_dataset |
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import os |
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HF_TOKEN = os.environ.get("HF_TOKEN", None) |
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st.set_page_config(page_title="FW Clusters inspection", layout="wide") |
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st.title("FW clusters inspection") |
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st.markdown(""" |
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We clustered 100k FineWeb samples using [text-clustering](https://github.com/huggingface/text-clustering). |
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Our approach involved prompting Mixtral to evaluate whether the topics in each cluster are educational or could be considered college material. |
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Additionally, the model was tasked with assigning a category to each cluster from 23 predefined categories found in [AFAIK](https://afaik.io/). |
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Sometimes, the model may define its own category. This can happen either within the context of AFAIK topics seperately. Hence the `Select Category Type` dropdown in our interface. |
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""") |
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@st.cache_data |
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def load_data(educational_topic): |
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ds = load_dataset("HuggingFaceTB/FW_clusters_under_afaik_topics", split="train", token=HF_TOKEN, num_proc=2) |
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if educational_topic in ['Yes', 'No']: |
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ds = ds.filter(lambda x: x['is_topic_educational'] == educational_topic) |
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return ds |
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@st.cache_data |
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def get_categories_by_type(_ds, category_type): |
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filtered_ds = _ds.filter(lambda x: x['category_type'] == category_type) |
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return list(set(filtered_ds['category'])) |
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st.subheader("Cluster information") |
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col_1, col_2, col_3 = st.columns(3) |
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with col_1: |
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educational_topic = st.selectbox('Are the topics deemed educational by the LLM?', ["Yes", "No"]) |
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ds = load_data(educational_topic) |
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with col_2: |
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category_types = ['afaik', 'defined_by_llm', 'defined_by_llm_under_afaik'] |
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default_index = 0 if educational_topic == "Yes" else 1 |
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selected_category_type = st.selectbox("Select Category Type", category_types, index=default_index) |
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with col_3: |
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categories = get_categories_by_type(ds, selected_category_type) |
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selected_category = st.selectbox("Select Category", categories) |
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selected_cluster = ds.filter(lambda x: x['category'] == selected_category) |
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print(f"selected_cluster is {selected_cluster}") |
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n_samples = len(selected_cluster) |
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if n_samples > 0: |
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col_1, col_2 = st.columns(2) |
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with col_1: |
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index_cluster = st.number_input(f"Found {len(selected_cluster)} clusters, choose one", min_value=0, max_value=len(selected_cluster)-1, value=0, step=1) |
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files = selected_cluster[index_cluster]["examples"] |
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with col_2: |
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index_example = st.number_input(f"Found {len(files)} files in the cluster, choose one", min_value=0, max_value=len(files)-1, value=0, step=1) |
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sample = files[index_example] |
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st.markdown(sample) |
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else: |
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st |