nastasiasnk's picture
Update app.py
a2eef60 verified
raw
history blame
9.43 kB
import gradio as gr
import pandas as pd
import numpy as np
import json
from io import StringIO
from collections import OrderedDict
import os
# ---------------------- Accessing data from Notion ---------------------- #
from notion_client import Client as client_notion
from imports_utils import fetch_all_database_pages
from imports_utils import get_property_value
#from imports_utils import notion
from imports_utils import getDataFromNotion
#from imports_utils import fetchDomainMapper
#from imports_utils import fetchSubdomainMapper
from imports_utils import notionToken
from config import useNotionData
from config import landuseDatabaseId , subdomainAttributesDatabaseId
from config import landuseColumnName
from config import subdomainColumnName
from config import sqmPerEmployeeColumnName
from config import thresholdsColumnName
from config import maxPointsColumnName
from config import domainColumnName
if notionToken is None:
raise Exception("Notion token not found. Please check the environment variables.")
else:
print("Notion token found successfully!")
if useNotionData:
notion = client_notion(auth=notionToken)
lu_mapperDict, subdomain_mapperDict = getDataFromNotion(
notion=notion,
notionToken=notionToken,
landuseDatabaseID=landuseDatabaseId,
subdomainDatabaseID=subdomainAttributesDatabaseId
)
# ---------------------- Accessing data from Speckle ---------------------- #
from specklepy.api.client import SpeckleClient
from specklepy.api.credentials import get_default_account, get_local_accounts
from specklepy.transports.server import ServerTransport
from specklepy.api import operations
from specklepy.objects.geometry import Polyline, Point
from specklepy.objects import Base
#import imports_utils
import speckle_utils
import data_utils
from config import landuseDatabaseId , streamId, dmBranchName, dmCommitId, luBranchName, luCommitId, distanceMatrixActivityNodes
from imports_utils import speckleToken
#from imports_utils import fetchDistanceMatrices
from config import useSpeckleData
from imports_utils import getDataFromSpeckle
if speckleToken is None:
raise Exception("Speckle token not found")
else:
print("Speckle token found successfully!")
if useSpeckleData == True:
CLIENT = SpeckleClient(host="https://speckle.xyz/")
account = get_default_account()
CLIENT.authenticate_with_token(token=speckleToken)
landuses, matrices = getDataFromSpeckle(speckleClient = CLIENT, streamID=streamId,matrixBranchName=dmBranchName, landuseBranchName=luBranchName)
df_dm = matrices[distanceMatrixActivityNodes]
df_dm_dict = df_dm.to_dict('index')
df_dm = df_dm.replace([np.inf, -np.inf], 10000).fillna(0)
df_dm = df_dm.apply(pd.to_numeric, errors='coerce')
df_dm = df_dm.round(0).astype(int)
mask_connected = df_dm.index.tolist()
df_lu = landuses.loc[mask_connected]
mergeAssetNonAssetLanduse = True
if mergeAssetNonAssetLanduse:
df_lu.columns = [col.replace('ASSETS+', '') for col in df_lu.columns]
df_lu = df_lu.replace([np.inf, -np.inf], 10000).fillna(0)
df_lu = df_lu.apply(pd.to_numeric, errors='coerce')
df_lu = df_lu.astype(int)
df_lu = df_lu.T.groupby(level=0).sum().T
def test(input_json):
print("Received input")
# Parse the input JSON string
try:
inputs = json.loads(input_json)
except json.JSONDecodeError:
inputs = json.loads(input_json.replace("'", '"'))
# ------------------------- Accessing input data from Grasshopper ------------------------- #
from imports_utils import getDataFromGrasshopper
from config import alpha as alphaDefault
from config import threshold as thresholdDefault
useGrasshopperData = inputs['input']["useGrasshopperData"] # fetch grasshoper data or not
if useGrasshopperData == "True": # grasshopper input
# fetch grasshoper data or not
dfMatrix_gh, dfLanduses_gh, attributeMapperDict_gh, landuseMapperDict_gh, alpha, threshold = getDataFromGrasshopper(
inputJson = inputs,
inputNameMatrix = "matrix",
inputNameLanduse = "landuse_areas",
inputNameAttributeMapper = "attributeMapperDict",
inputNameLanduseMapper = "landuseMapperDict",
inputNameAlpha = "alpha",
inputNameThreshold = "threshold"
)
dfMatrix = dfMatrix_gh
dfLanduses = dfLanduses_gh
if useNotionData != True:
attributeMapperDict = attributeMapperDict_gh
landuseMapperDict = landuseMapperDict_gh
"""
matrix = inputs['input']["matrix"]
landuses = inputs['input']["landuse_areas"]
dfLanduses = pd.DataFrame(landuses).T
dfLanduses = dfLanduses.apply(pd.to_numeric, errors='coerce')
dfLanduses = dfLanduses.replace([np.inf, -np.inf], 0).fillna(0) # cleaning function?
dfLanduses = dfLanduses.round(0).astype(int)
dfMatrix = pd.DataFrame(matrix).T
dfMatrix = dfMatrix.apply(pd.to_numeric, errors='coerce')
dfMatrix = dfMatrix.replace([np.inf, -np.inf], 10000).fillna(0)
dfMatrix = dfMatrix.round(0).astype(int)
attributeMapperDict_gh = inputs['input']["attributeMapperDict"]
landuseMapperDict_gh = inputs['input']["landuseMapperDict"] # if fetch notion data or not, def
"""
else:
dfMatrix_gh, dfLanduses_gh, attributeMapperDict_gh, landuseMapperDict_gh, alpha, threshold = getDataFromGrasshopper(
inputJson = inputs,
inputNameMatrix = None,
inputNameLanduse = None,
inputNameAttributeMapper = None,
inputNameLanduseMapper = None,
inputNameAlpha = "alpha",
inputNameThreshold = "threshold"
)
dfLanduses = df_lu.copy() # fetch speckl data or not
dfMatrix = df_dm.copy()
landuseMapperDict = lu_mapperDict
livabilityMapperDict = subdomain_mapperDict
"""
valid_indexes = [idx for idx in mask_connected if idx in dfLanduses.index]
# Identify and report missing indexes
missing_indexes = set(mask_connected) - set(valid_indexes)
if missing_indexes:
print(f"Error: The following indexes were not found in the DataFrame: {missing_indexes}, length: {len(missing_indexes)}")
# Apply the filtered mask
dfLanduses_filtered = dfLanduses.loc[valid_indexes]
from imports_utils import findUniqueDomains
from imports_utils import findUniqueSubdomains
from imports_utils import landusesToSubdomains
from imports_utils import FindWorkplacesNumber
from imports_utils import computeAccessibility
from imports_utils import computeAccessibility_pointOfInterest
from imports_utils import remap
from imports_utils import accessibilityToLivability
domainsUnique = findUniqueDomains(livabilityMapperDict)
subdomainsUnique = findUniqueSubdomains(landuseMapperDict)
LivabilitySubdomainsWeights = landusesToSubdomains(dfMatrix,df_lu_filtered,landuseMapperDict,subdomainsUnique)
WorkplacesNumber = FindWorkplacesNumber(dfMatrix,livabilityMapperDict,LivabilitySubdomainsWeights,subdomainsUnique)
# prepare an input weights dataframe for the parameter LivabilitySubdomainsInputs
LivabilitySubdomainsInputs =pd.concat([LivabilitySubdomainsWeights, WorkplacesNumber], axis=1)
subdomainsAccessibility = computeAccessibility(dfMatrix,LivabilitySubdomainsInputs,alpha,threshold)
#artAccessibility = computeAccessibility_pointOfInterest(df_art_matrix,'ART',alpha,threshold)
#gmtAccessibility = computeAccessibility_pointOfInterest(df_gmt_matrix,'GMT+HSR',alpha,threshold)
#AccessibilityInputs = pd.concat([subdomainsAccessibility, artAccessibility,gmtAccessibility], axis=1)
livability = accessibilityToLivability(dfMatrix,subdomainsAccessibility,livabilityMapperDict,domainsUnique)
livability_dictionary = livability.to_dict('index')
LivabilitySubdomainsInputs_dictionary = LivabilitySubdomainsInputs.to_dict('index')
subdomainsAccessibility_dictionary = subdomainsAccessibility.to_dict('index')
LivabilitySubdomainsWeights_dictionary = LivabilitySubdomainsWeights.to_dict('index')
"""
df_lu_dict = dfLanduses.to_dict('index')
dm_dictionary = dfMatrix.to_dict('index')
# Prepare the output
output = {
#"subdomainsAccessibility_dictionary": subdomainsAccessibility_dictionary,
#"livability_dictionary": livability_dictionary,
#"subdomainsWeights_dictionary": LivabilitySubdomainsInputs_dictionary,
"luDomainMapper": landuseMapperDict,
"attributeMapper": livabilityMapperDict,
"mask_connected": mask_connected,
"dm_an": dm_dictionary,
"landuses":df_lu_dict,
"constants": [alpha, threshold]
}
return json.dumps(output)
# Define the Gradio interface with a single JSON input
iface = gr.Interface(
fn=test,
inputs=gr.Textbox(label="Input JSON", lines=20, placeholder="Enter JSON with all parameters here..."),
outputs=gr.JSON(label="Output JSON"),
title="testspace"
)
iface.launch()