vibhorag101's picture
minor changes
bf3ca0c
raw
history blame contribute delete
No virus
12.4 kB
import locale
import gradio as gr
import pandas as pd
from pandas.tseries.offsets import DateOffset
from portfolio import calculate_portfolio_returns
from utils import get_all_mf_schemes_df, get_mf_scheme_data
js_func = """
function refresh() {
const url = new URL(window.location);
if (url.searchParams.get('__theme') !== 'dark') {
url.searchParams.set('__theme', 'dark');
window.location.href = url.href;
}
}
"""
locale.setlocale(locale.LC_MONETARY, 'en_IN')
def get_portfolio_report(*args):
period = args[0]
custom_start_date = args[1]
custom_end_date = args[2]
SIP_Date = args[3]
sip_amount = args[4]
lumpsum_amount = args[5]
stepup = args[6]
schemes_df = args[7]
# Extract scheme names and weights, into a dictionary from the args
scheme_name_and_weight = {}
for i in range(8, len(args) - 1, 2):
if args[i] and args[i+1]:
scheme_name_and_weight[args[i]] = float(args[i+1])
use_inception_date = args[-1]
if not scheme_name_and_weight:
return "Please add at least one scheme.", None, None, None
end_date = pd.Timestamp.now().floor('D')
if use_inception_date:
start_date = pd.Timestamp(custom_start_date)
elif period == "Custom":
if not custom_start_date or not custom_end_date:
return "Please provide both start and end dates for custom period.", None, None, None
start_date = pd.Timestamp(custom_start_date)
end_date = pd.Timestamp(custom_end_date)
elif period == "YTD":
start_date = pd.Timestamp(f"{end_date.year}-01-01")
elif not period:
return "Please select a period, provide custom dates, or use the inception date.", None, None, None
else:
period_parts = period.split()
if len(period_parts) < 2:
return "Invalid period selected.", None, None, None
if 'year' in period_parts[1]:
years = int(period_parts[0])
start_date = end_date - DateOffset(years=years)
else:
months = int(period_parts[0])
start_date = end_date - DateOffset(months=months)
portfolio_report_string = calculate_portfolio_returns(scheme_name_and_weight, sip_amount, lumpsum_amount, stepup, start_date, end_date, SIP_Date, schemes_df)
return portfolio_report_string
def quick_search_schemes(query, schemes_df):
if not query:
return []
matching_schemes = schemes_df[schemes_df['schemeName'].str.contains(query, case=False, na=False)]
return matching_schemes['schemeName'].tolist()[:40]
def update_scheme_dropdown(query, schemes_df, key_up_data: gr.KeyUpData):
schemes = quick_search_schemes(key_up_data.input_value, schemes_df)
return gr.update(choices=schemes, visible=True)
def update_schemes_list(schemes_list, updated_data):
new_schemes_list = []
for _, row in updated_data.iterrows():
scheme_name = row.get('Scheme Name')
weight = row.get('Weight (%)')
action = row.get('Actions')
if scheme_name and weight is not None and action != '🗑️': # Only keep rows that aren't marked for deletion
try:
weight_float = float(weight)
new_schemes_list.append((scheme_name, weight_float))
except ValueError:
# If weight is not a valid float, skip this row
continue
return new_schemes_list
def update_schemes_table(schemes_list):
df = pd.DataFrame(schemes_list, columns=["Scheme Name", "Weight (%)"])
df["Actions"] = "❌"
# Calculate the sum of weights
total_weight = df["Weight (%)"].sum()
# Add a row for the total
total_row = pd.DataFrame({
"Scheme Name": ["Total"],
"Weight (%)": [total_weight],
"Actions": [""]
})
# Concatenate the original dataframe with the total row
df = pd.concat([df, total_row], ignore_index=True)
# Add a warning if total weight exceeds 100%
if total_weight > 100:
df.loc[df.index[-1], "Actions"] = "⚠️ Exceeds 100%"
return df
def add_scheme_to_list(schemes_list, scheme_name, weight):
if scheme_name and weight:
new_list = schemes_list + [(scheme_name, float(weight))]
return new_list, update_schemes_table(new_list), None, 0
return schemes_list, update_schemes_table(schemes_list), scheme_name, weight
def update_schemes(schemes_list, updated_data):
try:
new_schemes_list = []
for _, row in updated_data.iterrows():
scheme_name = row.get('Scheme Name')
weight = row.get('Weight (%)')
if scheme_name != 'Total' and weight is not None:
try:
weight_float = float(weight)
new_schemes_list.append((scheme_name, weight_float))
except ValueError:
continue
if not new_schemes_list:
return schemes_list, update_schemes_table(schemes_list), "No valid schemes found in the table."
return new_schemes_list, update_schemes_table(new_schemes_list), None
except Exception as e:
error_msg = f"Error updating schemes: {str(e)}"
return schemes_list, update_schemes_table(schemes_list), error_msg
def prepare_inputs(period, custom_start, custom_end, SIP_Date, sip_amount, schemes_list, schemes_df):
inputs = [period, custom_start, custom_end, SIP_Date, sip_amount, schemes_df]
for name, weight in schemes_list:
inputs.extend([name, weight])
return inputs
def handle_row_selection(schemes_list, evt: gr.SelectData, table_data):
if evt.index is not None and len(evt.index) > 1:
column_index = evt.index[1]
if column_index == 2: # "Actions" column
row_index = evt.index[0]
if row_index < len(table_data) - 1: # Ensure we're not trying to delete the total row
# Remove the row
table_data = table_data.drop(row_index).reset_index(drop=True)
# Update the schemes_list
updated_schemes_list = [(row['Scheme Name'], row['Weight (%)']) for _, row in table_data.iterrows() if row['Scheme Name'] != 'Total']
# Recalculate the total
return update_schemes_table(updated_schemes_list), updated_schemes_list
return table_data, schemes_list
def create_ui():
schemes_df = get_all_mf_schemes_df()
with gr.Blocks(js=js_func) as demo:
gr.Markdown("# Mutual Fund SIP Returns Calculator")
with gr.Row():
period = gr.Dropdown(choices=["YTD", "1 month","3 months","6 months","1 year", "3 years", "5 years", "7 years", "10 years","15 years","20 years", "Custom"], label="Select Period",value="YTD")
custom_start_date = gr.Textbox(label="Custom Start Date (YYYY-MM-DD)", visible=False)
custom_end_date = gr.Textbox(label="Custom End Date (YYYY-MM-DD)", visible=False)
SIP_Date = gr.Dropdown(label="Monthly SIP Date", choices=["start","middle","end"],value="start")
with gr.Column():
use_inception_date = gr.Checkbox(label="Use Earliest Inception Date", value=False)
inception_date_display = gr.Textbox(label="Earliest Inception Date", interactive=False)
with gr.Row():
sip_amount = gr.Number(label="SIP Amount (₹)")
upfront_amount = gr.Number(label="Upfront Investment (₹)",value=0)
stepup = gr.Number(label="Stepup %",value=0)
schemes_list = gr.State([])
with gr.Row():
scheme_dropdown = gr.Dropdown(label="Select Scheme", choices=[], allow_custom_value=True, interactive=True)
scheme_weight = gr.Slider(minimum=0, maximum=100, step=1, label="Scheme Weight (%)")
add_button = gr.Button("Add Scheme")
schemes_table = gr.Dataframe(
headers=["Scheme Name", "Weight (%)", "Actions"],
datatype=["str", "number", "str"],
col_count=(3, "fixed"),
label="Added Schemes",
type="pandas",
interactive=True
)
update_button = gr.Button("Update Schemes")
error_message = gr.Textbox(label="Error", visible=False)
calculate_button = gr.Button("Calculate Returns")
result = gr.Textbox(label="Results",)
# pie_chart = gr.Plot(label="Scheme Weightages")
# final_value = gr.Number(label="Final Value (₹)", interactive=False)
# total_investment = gr.Number(label="Total Investment (₹)", interactive=False)
def update_custom_date_visibility(period):
return {custom_start_date: gr.update(visible=period=="Custom"),
custom_end_date: gr.update(visible=period=="Custom")}
period.change(update_custom_date_visibility, inputs=[period], outputs=[custom_start_date, custom_end_date])
scheme_dropdown.key_up(
fn=update_scheme_dropdown,
inputs=[scheme_dropdown, gr.State(schemes_df)],
outputs=scheme_dropdown,
queue=False,
show_progress="hidden"
)
add_button.click(add_scheme_to_list,
inputs=[schemes_list, scheme_dropdown, scheme_weight],
outputs=[schemes_list, schemes_table, scheme_dropdown, scheme_weight])
def update_schemes_and_show_error(schemes_list, updated_data):
new_schemes_list, updated_table, error = update_schemes(schemes_list, updated_data)
return (
new_schemes_list,
updated_table,
gr.update(value=error, visible=bool(error))
)
update_button.click(
update_schemes_and_show_error,
inputs=[schemes_list, schemes_table],
outputs=[schemes_list, schemes_table, error_message]
)
schemes_table.select(
handle_row_selection,
inputs=[schemes_list, schemes_table],
outputs=[schemes_table, schemes_list]
)
def get_earliest_inception_date(schemes_list, schemes_df):
inception_dates = []
for scheme_name, _ in schemes_list:
scheme_code = schemes_df[schemes_df['schemeName'] == scheme_name]['schemeCode'].values[0]
_, inception_date = get_mf_scheme_data(scheme_code)
inception_dates.append(inception_date)
return max(inception_dates).strftime("%Y-%m-%d") if inception_dates else ""
def update_inception_date(use_inception_date, schemes_list, schemes_df):
if use_inception_date and schemes_list:
earliest_inception_date = get_earliest_inception_date(schemes_list, schemes_df)
return gr.update(value=earliest_inception_date, visible=True)
else:
return gr.update(value="", visible=False)
use_inception_date.change(
update_inception_date,
inputs=[use_inception_date, schemes_list, gr.State(schemes_df)],
outputs=inception_date_display
)
def prepare_inputs_with_inception(period, custom_start, custom_end, SIP_Date, sip_amount, upfront_amount,stepup, schemes_list, schemes_df, use_inception_date, inception_date_display):
inputs = [period, custom_start, custom_end, SIP_Date, sip_amount, upfront_amount, stepup, schemes_df]
for name, weight in schemes_list:
inputs.extend([name, weight])
inputs.append(use_inception_date) # Add use_inception_date to the inputs
if use_inception_date and inception_date_display:
inputs[1] = inception_date_display # Replace custom_start with inception_date_display
return inputs
calculate_button.click(
lambda *args: get_portfolio_report(*prepare_inputs_with_inception(*args)),
inputs=[period, custom_start_date, custom_end_date, SIP_Date, sip_amount,upfront_amount,stepup,schemes_list, gr.State(schemes_df), use_inception_date, inception_date_display],
outputs=[result]
# outputs=[result, final_value, total_investment]
# outputs=[result, pie_chart, final_value, total_investment]
)
return demo
demo = create_ui()
demo.launch(debug=True)