Spaces:
Runtime error
Runtime error
| import streamlit as st | |
| from .streamlit_utils import make_text_input | |
| from .streamlit_utils import ( | |
| make_multiselect, | |
| make_selectbox, | |
| make_text_area, | |
| make_text_input, | |
| make_radio, | |
| ) | |
| N_FIELDS_ORIGINAL = 4 | |
| N_FIELDS_LANGUAGE = 12 | |
| N_FIELDS_ANNOTATIONS = 0 | |
| N_FIELDS_CONSENT = 0 | |
| N_FIELDS_PII = 0 | |
| N_FIELDS_MAINTENANCE = 0 | |
| N_FIELDS_GEM = 0 | |
| N_FIELDS = ( | |
| N_FIELDS_ORIGINAL | |
| + N_FIELDS_LANGUAGE | |
| + N_FIELDS_ANNOTATIONS | |
| + N_FIELDS_CONSENT | |
| + N_FIELDS_PII | |
| + N_FIELDS_MAINTENANCE | |
| + N_FIELDS_GEM | |
| ) | |
| """ | |
| What was the selection criteria? [Describe the process for selecting instances to include in the dataset, including any tools used.] | |
| """ | |
| def curation_page(): | |
| st.session_state.card_dict["curation"] = st.session_state.card_dict.get( | |
| "curation", {} | |
| ) | |
| with st.expander("Original Curation", expanded=False): | |
| key_pref = ["curation", "original"] | |
| st.session_state.card_dict["curation"]["original"] = st.session_state.card_dict[ | |
| "curation" | |
| ].get("original", {}) | |
| make_text_area( | |
| label="Original curation rationale", | |
| key_list=key_pref + ["rationale"], | |
| help="Describe the curation rationale behind the original dataset(s).", | |
| ) | |
| make_text_area( | |
| label="What was the communicative goal?", | |
| key_list=key_pref + ["communicative"], | |
| help="Describe the communicative goal that the original dataset(s) was trying to represent.", | |
| ) | |
| make_radio( | |
| label="Is the dataset aggregated from different data sources?", | |
| options=["no", "yes"], | |
| key_list=key_pref + ["is-aggregated"], | |
| help="e.g. Wikipedia, movi dialogues, etc.", | |
| ) | |
| make_text_area( | |
| label="If yes, list the sources", | |
| key_list=key_pref + ["aggregated-sources"], | |
| help="Otherwise, type N/A", | |
| ) | |
| with st.expander("Language Data", expanded=False): | |
| key_pref = ["curation", "language"] | |
| st.session_state.card_dict["curation"]["language"] = st.session_state.card_dict[ | |
| "curation" | |
| ].get("language", {}) | |
| make_multiselect( | |
| label="How was the language data obtained?", | |
| options=[ | |
| "Found", | |
| "Created for the dataset", | |
| "Crowdsourced", | |
| "Machine-generated", | |
| "Other", | |
| ], | |
| key_list=key_pref + ["obtained"], | |
| ) | |
| make_multiselect( | |
| label="If found, where from?", | |
| options=["Multiple websites", "Single website", "Offline media collection", "Other", "N/A"], | |
| key_list=key_pref + ["found"], | |
| help="select N/A if none of the language data was found", | |
| ) | |
| make_multiselect( | |
| label="If crowdsourced, where from?", | |
| options=[ | |
| "Amazon Mechanical Turk", | |
| "Other crowdworker platform", | |
| "Participatory experiment", | |
| "Other", | |
| "N/A", | |
| ], | |
| key_list=key_pref + ["crowdsourced"], | |
| help="select N/A if none of the language data was crowdsourced", | |
| ) | |
| make_text_area( | |
| label="If created for the dataset, describe the creation process.", | |
| key_list=key_pref + ["created"], | |
| ) | |
| make_text_area( | |
| label="What further information do we have on the language producers?", | |
| key_list=key_pref + ["producers-description"], | |
| help="Provide a description of the context in which the language was produced and who produced it.", | |
| ) | |
| make_text_input( | |
| label="If text was machine-generated for the dataset, provide a link to the generation method if available (N/A otherwise).", | |
| key_list=key_pref + ["machine-generated"], | |
| help="if the generation code is unavailable, enter N/A", | |
| ) | |
| make_selectbox( | |
| label="Was the text validated by a different worker or a data curator?", | |
| options=[ | |
| "not validated", | |
| "validated by crowdworker", | |
| "validated by data curator", | |
| "other", | |
| ], | |
| key_list=key_pref + ["validated"], | |
| help="this question is about human or human-in-the-loop validation only", | |
| ) | |
| make_multiselect( | |
| label="In what kind of organization did the curation happen?", | |
| options=["industry", "academic", "independent", "other"], | |
| key_list=key_pref + ["organization-type"], | |
| ) | |
| make_text_input( | |
| label="Name the organization(s).", | |
| key_list=key_pref + ["organization-names"], | |
| help="comma-separated", | |
| ) | |
| make_text_area( | |
| label="How was the text data pre-processed? (Enter N/A if the text was not pre-processed)", | |
| key_list=key_pref + ["pre-processed"], | |
| help="List the steps in preprocessing the data for the dataset. Enter N/A if no steps were taken.", | |
| ) | |
| make_selectbox( | |
| label="Were text instances selected or filtered?", | |
| options=["not filtered", "manually", "algorithmically", "hybrid"], | |
| key_list=key_pref + ["is-filtered"], | |
| ) | |
| make_text_area( | |
| label="What were the selection criteria?", | |
| key_list=key_pref + ["filtered-criteria"], | |
| help="Describe the process for selecting instances to include in the dataset, including any tools used. If no selection was done, enter N/A.", | |
| ) | |
| with st.expander("Structured Annotations", expanded=False): | |
| key_pref = ["curation", "annotations"] | |
| st.session_state.card_dict["curation"][ | |
| "annotations" | |
| ] = st.session_state.card_dict["curation"].get("annotations", {}) | |
| with st.expander("Consent", expanded=False): | |
| key_pref = ["curation", "consent"] | |
| st.session_state.card_dict["curation"]["consent"] = st.session_state.card_dict[ | |
| "curation" | |
| ].get("consent", {}) | |
| with st.expander("Private Identifying Information (PII)", expanded=False): | |
| key_pref = ["curation", "pii"] | |
| st.session_state.card_dict["curation"]["pii"] = st.session_state.card_dict[ | |
| "curation" | |
| ].get("pii", {}) | |
| with st.expander("Maintenance", expanded=False): | |
| key_pref = ["curation", "maintenance"] | |
| st.session_state.card_dict["curation"][ | |
| "maintenance" | |
| ] = st.session_state.card_dict["curation"].get("maintenance", {}) | |
| with st.expander("GEM Additional Curation", expanded=False): | |
| key_pref = ["curation", "gem"] | |
| st.session_state.card_dict["curation"]["gem"] = st.session_state.card_dict[ | |
| "curation" | |
| ].get("gem", {}) | |
| def curation_summary(): | |
| total_filled = sum( | |
| [len(dct) for dct in st.session_state.card_dict.get("curation", {}).values()] | |
| ) | |
| with st.expander( | |
| f"Dataset Curation Completion - {total_filled} of {N_FIELDS}", expanded=False | |
| ): | |
| completion_markdown = "" | |
| completion_markdown += ( | |
| f"- **Overall competion:**\n - {total_filled} of {N_FIELDS} fields\n" | |
| ) | |
| completion_markdown += f"- **Sub-section - Original Curation:**\n - {len(st.session_state.card_dict.get('curation', {}).get('original', {}))} of {N_FIELDS_ORIGINAL} fields\n" | |
| completion_markdown += f"- **Sub-section - Language Data:**\n - {len(st.session_state.card_dict.get('curation', {}).get('language', {}))} of {N_FIELDS_LANGUAGE} fields\n" | |
| completion_markdown += f"- **Sub-section - Structured Annotations:**\n - {len(st.session_state.card_dict.get('curation', {}).get('annotations', {}))} of {N_FIELDS_ANNOTATIONS} fields\n" | |
| completion_markdown += f"- **Sub-section - Consent:**\n - {len(st.session_state.card_dict.get('curation', {}).get('consent', {}))} of {N_FIELDS_CONSENT} fields\n" | |
| completion_markdown += f"- **Sub-section - PII:**\n - {len(st.session_state.card_dict.get('curation', {}).get('pii', {}))} of {N_FIELDS_PII} fields\n" | |
| completion_markdown += f"- **Sub-section - Maintenance:**\n - {len(st.session_state.card_dict.get('curation', {}).get('maintenance', {}))} of {N_FIELDS_MAINTENANCE} fields\n" | |
| completion_markdown += f"- **Sub-section - GEM Curation:**\n - {len(st.session_state.card_dict.get('curation', {}).get('gem', {}))} of {N_FIELDS_GEM} fields\n" | |
| st.markdown(completion_markdown) | |