DatasetCardForm / datacards /considerations.py
Yacine Jernite
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import streamlit as st
from .streamlit_utils import (
make_multiselect,
make_selectbox,
make_text_area,
make_text_input,
make_radio,
)
N_FIELDS_PII = 1
N_FIELDS_LICENSES = 2
N_FIELDS_LIMITATIONS = 3
N_FIELDS = N_FIELDS_PII + N_FIELDS_LICENSES + N_FIELDS_LIMITATIONS
def considerations_page():
st.session_state.card_dict["considerations"] = st.session_state.card_dict.get(
"considerations", {}
)
with st.expander("PII Risks and Liability", expanded=False):
key_pref = ["considerations", "pii"]
st.session_state.card_dict["considerations"]["pii"] = st.session_state.card_dict[
"considerations"
].get("pii", {})
make_text_area(
label="Considering your answers to the PII part of the Data Curation Section, describe any potential privacy to the data subjects and creators risks when using the dataset.",
key_list=key_pref+["risks-description"],
help="In terms for example of having models memorize private information of data subjects or other breaches of privacy."
)
with st.expander("Licenses", expanded=False):
key_pref = ["considerations", "licenses"]
st.session_state.card_dict["considerations"]["licenses"] = st.session_state.card_dict[
"considerations"
].get("licenses", {})
make_multiselect(
label="Based on your answers in the Intended Use part of the Data Overview Section, which of the following best describe the copyright and licensing status of the dataset?",
options=[
"public domain",
"multiple licenses",
"copyright - all rights reserved",
"open license - commercial use allowed",
"research use only",
"non-commercial use only",
"do not distribute",
"other",
],
key_list=key_pref + ["dataset-restrictions"],
help="Does the license restrict how the dataset can be used?",
)
if "other" in st.session_state.card_dict["considerations"]["licenses"].get("dataset-restrictions", []):
make_text_area(
label="You selected `other` for the dataset licensing status, please elaborate here:",
key_list=key_pref+["dataset-restrictions-other"]
)
else:
st.session_state.card_dict["considerations"]["licenses"]["dataset-restrictions-other"] = "N/A"
make_multiselect(
label="Based on your answers in the Language part of the Data Curation Section, which of the following best describe the copyright and licensing status of the underlying language data?",
options=[
"public domain",
"multiple licenses",
"copyright - all rights reserved",
"open license - commercial use allowed",
"research use only",
"non-commercial use only",
"do not distribute",
"other",
],
key_list=key_pref + ["data-copyright"],
help="For example if the dataset uses data from Wikipedia, we are asking about the status of Wikipedia text in general.",
)
if "other" in st.session_state.card_dict["considerations"]["licenses"].get("data-copyright", []):
make_text_area(
label="You selected `other` for the source data licensing status, please elaborate here:",
key_list=key_pref+["data-copyright-other"]
)
else:
st.session_state.card_dict["considerations"]["licenses"]["data-copyright-other"] = "N/A"
with st.expander("Known Technical Limitations", expanded=False):
key_pref = ["considerations", "limitations"]
st.session_state.card_dict["considerations"]["limitations"] = st.session_state.card_dict[
"considerations"
].get("limitations", {})
make_text_area(
label="Describe any known technical limitations, such as spurrious correlations, train/test overlap, annotation biases, or mis-annotations, " + \
"and cite the works that first identified these limitations when possible.",
key_list=key_pref + ["data-technical-limitations"],
help="Outline any properties of the dataset that might lead a trained model with good performance on the metric to not behave as expected.",
)
make_text_area(
label="When using a model trained on this dataset in a setting where users or the public may interact with its predictions, what are some pitfalls to look out for? " + \
"In particular, describe some applications of the general task featured in this dataset that its curation or properties make it less suitable for.",
key_list=key_pref + ["data-unsuited-applications"],
help="For example, outline language varieties or domains that the model might underperform for.",
)
make_text_area(
label="What are some discouraged use cases of a model trained to maximize the proposed metrics on this dataset? " +
"In particular, think about settings where decisions made by a model that performs reasonably well on the metric my still have strong negative consequences for user or members of the public.",
key_list=key_pref + ["data-discouraged-use"],
help="For example, think about application settings where certain types of mistakes (such as missing a negation) might have a particularly strong negative impact but are not particularly singled out by the aggregated evaluation.",
)
def considerations_summary():
total_filled = sum(
[len(dct) for dct in st.session_state.card_dict.get("considerations", {}).values()]
)
with st.expander(
f"Considerations for Using Data Completion - {total_filled} of {N_FIELDS}", expanded=False
):
completion_markdown = ""
completion_markdown += (
f"- **Overall completion:**\n - {total_filled} of {N_FIELDS} fields\n"
)
completion_markdown += f"- **Sub-section - PII Risks and Liability:**\n - {len(st.session_state.card_dict.get('considerations', {}).get('pii', {}))} of {N_FIELDS_PII} fields\n"
completion_markdown += f"- **Sub-section - Licenses:**\n - {len(st.session_state.card_dict.get('considerations', {}).get('licenses', {}))} of {N_FIELDS_LICENSES} fields\n"
completion_markdown += f"- **Sub-section - Known Technical Limitations:**\n - {len(st.session_state.card_dict.get('considerations', {}).get('limitations', {}))} of {N_FIELDS_LIMITATIONS} fields\n"
st.markdown(completion_markdown)