\n",
"\n",
"Be advised that this Text-Fabric version is a test version (proof of concept) and requires further finetuning, especialy with regards of nomenclature and presentation of (sub)phrases and clauses."
]
},
{
"cell_type": "markdown",
"metadata": {
"tags": []
},
"source": [
"## 2. Read LowFat XML data and store in pickle \n",
"##### [Back to TOC](#TOC)\n",
"\n",
"This script harvests all information from the LowFat tree data (XML nodes), puts it into a Panda DataFrame and stores the result per book in a pickle file. Note: pickling (in Python) is serialising an object into a disk file (or buffer). \n",
"\n",
"In the context of this script, 'Leaf' refers to those node containing the Greek word as data, which happen to be the nodes without any child (hence the analogy with the leaves on the tree). These 'leafs' can also be refered to as 'terminal nodes'. Futher, Parent1 is the leaf's parent, Parent2 is Parent1's parent, etc.\n",
"\n",
"For a full description of the source data see document [MACULA Greek Treebank for the Nestle 1904 Greek New Testament.pdf](https://github.com/Clear-Bible/macula-greek/blob/main/doc/MACULA%20Greek%20Treebank%20for%20the%20Nestle%201904%20Greek%20New%20Testament.pdf)"
]
},
{
"cell_type": "markdown",
"metadata": {
"tags": []
},
"source": [
"### Step 1: import various libraries"
]
},
{
"cell_type": "code",
"execution_count": 1,
"metadata": {
"ExecuteTime": {
"end_time": "2022-10-28T02:58:14.739227Z",
"start_time": "2022-10-28T02:57:38.766097Z"
}
},
"outputs": [],
"source": [
"import pandas as pd\n",
"import sys\n",
"import os\n",
"import time\n",
"import pickle\n",
"\n",
"import re #regular expressions\n",
"from os import listdir\n",
"from os.path import isfile, join\n",
"import xml.etree.ElementTree as ET"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"### Step 2: initialize global data\n",
"\n",
"Change BaseDir, XmlDir and PklDir to match location of the datalocation and the OS used."
]
},
{
"cell_type": "code",
"execution_count": 2,
"metadata": {},
"outputs": [],
"source": [
"BaseDir = 'C:\\\\Users\\\\tonyj\\\\my_new_Jupyter_folder\\\\Read_from_lowfat\\\\data\\\\'\n",
"XmlDir = BaseDir+'xml\\\\'\n",
"PklDir = BaseDir+'pkl\\\\'\n",
"XlsxDir = BaseDir+'xlsx\\\\'\n",
"# note: create output directory prior running this part\n",
"\n",
"# key: filename, [0]=book_long, [1]=book_num, [3]=book_short\n",
"bo2book = {'01-matthew': ['Matthew', '1', 'Matt'],\n",
" '02-mark': ['Mark', '2', 'Mark'],\n",
" '03-luke': ['Luke', '3', 'Luke'],\n",
" '04-john': ['John', '4', 'John'],\n",
" '05-acts': ['Acts', '5', 'Acts'],\n",
" '06-romans': ['Romans', '6', 'Rom'],\n",
" '07-1corinthians': ['I_Corinthians', '7', '1Cor'],\n",
" '08-2corinthians': ['II_Corinthians', '8', '2Cor'],\n",
" '09-galatians': ['Galatians', '9', 'Gal'],\n",
" '10-ephesians': ['Ephesians', '10', 'Eph'],\n",
" '11-philippians': ['Philippians', '11', 'Phil'],\n",
" '12-colossians': ['Colossians', '12', 'Col'],\n",
" '13-1thessalonians':['I_Thessalonians', '13', '1Thess'],\n",
" '14-2thessalonians':['II_Thessalonians','14', '2Thess'],\n",
" '15-1timothy': ['I_Timothy', '15', '1Tim'],\n",
" '16-2timothy': ['II_Timothy', '16', '2Tim'],\n",
" '17-titus': ['Titus', '17', 'Titus'],\n",
" '18-philemon': ['Philemon', '18', 'Phlm'],\n",
" '19-hebrews': ['Hebrews', '19', 'Heb'],\n",
" '20-james': ['James', '20', 'Jas'],\n",
" '21-1peter': ['I_Peter', '21', '1Pet'],\n",
" '22-2peter': ['II_Peter', '22', '2Pet'],\n",
" '23-1john': ['I_John', '23', '1John'],\n",
" '24-2john': ['II_John', '24', '2John'],\n",
" '25-3john': ['III_John', '25', '3John'], \n",
" '26-jude': ['Jude', '26', 'Jude'],\n",
" '27-revelation': ['Revelation', '27', 'Rev']}\n",
"\n",
"bo2book = {'01-matthew': ['Matthew', '1', 'Matt']}"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"### step 3: define Function to add parent info to each node of the XML tree\n",
"\n",
"In order to traverse from the 'leafs' (terminating nodes) upto the root of the tree, it is required to add information to each node pointing to the parent of each node.\n",
"\n",
"(concept taken from https://stackoverflow.com/questions/2170610/access-elementtree-node-parent-node)"
]
},
{
"cell_type": "code",
"execution_count": 6,
"metadata": {},
"outputs": [],
"source": [
"def addParentInfo(et):\n",
" for child in et:\n",
" child.attrib['parent'] = et\n",
" addParentInfo(child)\n",
"\n",
"def getParent(et):\n",
" if 'parent' in et.attrib:\n",
" return et.attrib['parent']\n",
" else:\n",
" return None"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"### Step 4: read and process the XML data and store panda dataframe in pickle"
]
},
{
"cell_type": "code",
"execution_count": 48,
"metadata": {
"scrolled": true,
"tags": []
},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"Processing Matthew at C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\xml\\01-matthew.xml\n",
"......................................................................................................................................................................................\n",
"Found 18299 items in 337.3681836128235 seconds\n",
"\n",
"Processing Mark at C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\xml\\02-mark.xml\n",
"................................................................................................................\n",
"Found 11277 items in 144.04719877243042 seconds\n",
"\n",
"Processing Luke at C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\xml\\03-luke.xml\n",
"..................................................................................................................................................................................................\n",
"Found 19456 items in 1501.197922706604 seconds\n",
"\n",
"Processing John at C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\xml\\04-john.xml\n",
"............................................................................................................................................................\n",
"Found 15643 items in 237.1071105003357 seconds\n",
"\n",
"Processing Acts at C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\xml\\05-acts.xml\n",
".......................................................................................................................................................................................\n",
"Found 18393 items in 384.3644151687622 seconds\n",
"\n",
"Processing Romans at C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\xml\\06-romans.xml\n",
".......................................................................\n",
"Found 7100 items in 71.03568935394287 seconds\n",
"\n",
"Processing I_Corinthians at C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\xml\\07-1corinthians.xml\n",
"....................................................................\n",
"Found 6820 items in 58.47511959075928 seconds\n",
"\n",
"Processing II_Corinthians at C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\xml\\08-2corinthians.xml\n",
"............................................\n",
"Found 4469 items in 31.848721027374268 seconds\n",
"\n",
"Processing Galatians at C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\xml\\09-galatians.xml\n",
"......................\n",
"Found 2228 items in 13.850211143493652 seconds\n",
"\n",
"Processing Ephesians at C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\xml\\10-ephesians.xml\n",
"........................\n",
"Found 2419 items in 17.529520511627197 seconds\n",
"\n",
"Processing Philippians at C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\xml\\11-philippians.xml\n",
"................\n",
"Found 1630 items in 9.271572589874268 seconds\n",
"\n",
"Processing Colossians at C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\xml\\12-colossians.xml\n",
"...............\n",
"Found 1575 items in 10.389309883117676 seconds\n",
"\n",
"Processing I_Thessalonians at C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\xml\\13-1thessalonians.xml\n",
"..............\n",
"Found 1473 items in 8.413437604904175 seconds\n",
"\n",
"Processing II_Thessalonians at C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\xml\\14-2thessalonians.xml\n",
"........\n",
"Found 822 items in 4.284915447235107 seconds\n",
"\n",
"Processing I_Timothy at C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\xml\\15-1timothy.xml\n",
"...............\n",
"Found 1588 items in 10.419771671295166 seconds\n",
"\n",
"Processing II_Timothy at C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\xml\\16-2timothy.xml\n",
"............\n",
"Found 1237 items in 7.126454591751099 seconds\n",
"\n",
"Processing Titus at C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\xml\\17-titus.xml\n",
"......\n",
"Found 658 items in 3.1472580432891846 seconds\n",
"\n",
"Processing Philemon at C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\xml\\18-philemon.xml\n",
"...\n",
"Found 335 items in 1.3175146579742432 seconds\n",
"\n",
"Processing Hebrews at C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\xml\\19-hebrews.xml\n",
".................................................\n",
"Found 4955 items in 44.31139326095581 seconds\n",
"\n",
"Processing James at C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\xml\\20-james.xml\n",
".................\n",
"Found 1739 items in 8.570415496826172 seconds\n",
"\n",
"Processing I_Peter at C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\xml\\21-1peter.xml\n",
"................\n",
"Found 1676 items in 10.489561557769775 seconds\n",
"\n",
"Processing II_Peter at C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\xml\\22-2peter.xml\n",
"..........\n",
"Found 1098 items in 6.005697250366211 seconds\n",
"\n",
"Processing I_John at C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\xml\\23-1john.xml\n",
".....................\n",
"Found 2136 items in 10.843079566955566 seconds\n",
"\n",
"Processing II_John at C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\xml\\24-2john.xml\n",
"..\n",
"Found 245 items in 0.9535031318664551 seconds\n",
"\n",
"Processing III_John at C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\xml\\25-3john.xml\n",
"..\n",
"Found 219 items in 1.0913233757019043 seconds\n",
"\n",
"Processing Jude at C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\xml\\26-jude.xml\n",
"....\n",
"Found 457 items in 1.8929190635681152 seconds\n",
"\n",
"Processing Revelation at C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\xml\\27-revelation.xml\n",
"..................................................................................................\n",
"Found 9832 items in 125.92533278465271 seconds\n",
"\n"
]
}
],
"source": [
"# set some globals\n",
"monad=1\n",
"CollectedItems= 0\n",
"\n",
"# process books in order\n",
"for bo, bookinfo in bo2book.items():\n",
" CollectedItems=0\n",
" SentenceNumber=0\n",
" WordGroupNumber=0\n",
" full_df=pd.DataFrame({})\n",
" book_long=bookinfo[0]\n",
" booknum=bookinfo[1]\n",
" book_short=bookinfo[2]\n",
" InputFile = os.path.join(XmlDir, f'{bo}.xml')\n",
" OutputFile = os.path.join(PklDir, f'{bo}.pkl')\n",
" print(f'Processing {book_long} at {InputFile}')\n",
"\n",
" # send xml document to parsing process\n",
" tree = ET.parse(InputFile)\n",
" # Now add all the parent info to the nodes in the xtree [important!]\n",
" addParentInfo(tree.getroot())\n",
" start_time = time.time()\n",
" \n",
" # walk over all the XML data\n",
" for elem in tree.iter():\n",
" if elem.tag == 'sentence':\n",
" # add running number to 'sentence' tags\n",
" SentenceNumber+=1\n",
" elem.set('SN', SentenceNumber)\n",
" if elem.tag == 'wg':\n",
" # add running number to 'wg' tags\n",
" WordGroupNumber+=1\n",
" elem.set('WGN', WordGroupNumber)\n",
" if elem.tag == 'w':\n",
" # all nodes containing words are tagged with 'w'\n",
" \n",
" # show progress on screen\n",
" CollectedItems+=1\n",
" if (CollectedItems%100==0): print (\".\",end='')\n",
" \n",
" #Leafref will contain list with book, chapter verse and wordnumber\n",
" Leafref = re.sub(r'[!: ]',\" \", elem.attrib.get('ref')).split()\n",
" \n",
" #push value for monad to element tree \n",
" elem.set('monad', monad)\n",
" monad+=1\n",
" \n",
" # add some important computed data to the leaf\n",
" elem.set('LeafName', elem.tag)\n",
" elem.set('word', elem.text)\n",
" elem.set('book_long', book_long)\n",
" elem.set('booknum', int(booknum))\n",
" elem.set('book_short', book_short)\n",
" elem.set('chapter', int(Leafref[1]))\n",
" elem.set('verse', int(Leafref[2]))\n",
" \n",
" # folling code will trace down parents upto the tree and store found attributes\n",
" parentnode=getParent(elem)\n",
" index=0\n",
" while (parentnode):\n",
" index+=1\n",
" elem.set('Parent{}Name'.format(index), parentnode.tag)\n",
" elem.set('Parent{}Type'.format(index), parentnode.attrib.get('type'))\n",
" elem.set('Parent{}Appos'.format(index), parentnode.attrib.get('appositioncontainer'))\n",
" elem.set('Parent{}Class'.format(index), parentnode.attrib.get('class'))\n",
" elem.set('Parent{}Rule'.format(index), parentnode.attrib.get('rule'))\n",
" elem.set('Parent{}Role'.format(index), parentnode.attrib.get('role'))\n",
" elem.set('Parent{}Cltype'.format(index), parentnode.attrib.get('cltype'))\n",
" elem.set('Parent{}Unit'.format(index), parentnode.attrib.get('unit'))\n",
" elem.set('Parent{}Junction'.format(index), parentnode.attrib.get('junction'))\n",
" elem.set('Parent{}SN'.format(index), parentnode.attrib.get('SN'))\n",
" elem.set('Parent{}WGN'.format(index), parentnode.attrib.get('WGN'))\n",
" currentnode=parentnode\n",
" parentnode=getParent(currentnode) \n",
" elem.set('parents', int(index))\n",
" \n",
" #this will push all elements found in the tree into a DataFrame\n",
" df=pd.DataFrame(elem.attrib, index={monad})\n",
" full_df=pd.concat([full_df,df])\n",
" \n",
" #store the resulting DataFrame per book into a pickle file for further processing\n",
" df = df.convert_dtypes(convert_string=True)\n",
" \n",
" # sort by s=id\n",
" sortkey='{http://www.w3.org/XML/1998/namespace}id'\n",
" full_df.rename(columns={sortkey: 'id'}, inplace=True)\n",
" full_df.sort_values(by=['id'])\n",
"\n",
" output = open(r\"{}\".format(OutputFile), 'wb')\n",
" pickle.dump(full_df, output)\n",
" output.close()\n",
" print(\"\\nFound \",CollectedItems, \" items in %s seconds\\n\" % (time.time() - start_time)) \n",
" "
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": [
"# just dump some things to test the result\n",
"\n",
"\n",
"for bo in bo2book:\n",
" '''\n",
" load all data into a dataframe\n",
" process books in order (bookinfo is a list!)\n",
" ''' \n",
" InputFile = os.path.join(PklDir, f'{bo}.pkl')\n",
" \n",
" print(f'\\tloading {InputFile}...')\n",
" pkl_file = open(InputFile, 'rb')\n",
" df = pickle.load(pkl_file)\n",
" pkl_file.close()\n",
" \n",
" # not sure if this is needed\n",
" # fill dictionary of column names for this book \n",
" IndexDict = {} # init an empty dictionary\n",
" ItemsInRow=1\n",
" for itemname in df.columns.to_list():\n",
" IndexDict.update({'i_{}'.format(itemname): ItemsInRow})\n",
" print (itemname)\n",
" ItemsInRow+=1\n",
" "
]
},
{
"cell_type": "markdown",
"metadata": {
"toc": true
},
"source": [
"## 3. Nestle1904 Text-Fabric production from pickle input \n",
"##### [Back to TOC](#TOC)\n",
"\n",
"This script creates the Text-Fabric files by recursive calling the TF walker function.\n",
"API info: https://annotation.github.io/text-fabric/tf/convert/walker.html\n",
"\n",
"The pickle files created by step 1 are stored on Github location T.B.D."
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"### Step 1: Load libraries and initialize some data\n",
"\n"
]
},
{
"cell_type": "code",
"execution_count": 6,
"metadata": {
"ExecuteTime": {
"end_time": "2022-10-28T03:01:34.810259Z",
"start_time": "2022-10-28T03:01:25.745112Z"
}
},
"outputs": [],
"source": [
"import pandas as pd\n",
"import os\n",
"import re\n",
"import gc\n",
"from tf.fabric import Fabric\n",
"from tf.convert.walker import CV\n",
"from tf.parameters import VERSION\n",
"from datetime import date\n",
"import pickle\n",
"\n",
"BaseDir = 'C:\\\\Users\\\\tonyj\\\\my_new_Jupyter_folder\\\\Read_from_lowfat\\\\data\\\\'\n",
"XmlDir = BaseDir+'xml\\\\'\n",
"PklDir = BaseDir+'pkl\\\\'\n",
"XlsxDir = BaseDir+'xlsx\\\\'\n",
"\n",
"# key: filename, [0]=book_long, [1]=book_num, [3]=book_short\n",
"bo2book = {'01-matthew': ['Matthew', '1', 'Matt'],\n",
" '02-mark': ['Mark', '2', 'Mark'],\n",
" '03-luke': ['Luke', '3', 'Luke'],\n",
" '04-john': ['John', '4', 'John'],\n",
" '05-acts': ['Acts', '5', 'Acts'],\n",
" '06-romans': ['Romans', '6', 'Rom'],\n",
" '07-1corinthians': ['I_Corinthians', '7', '1Cor'],\n",
" '08-2corinthians': ['II_Corinthians', '8', '2Cor'],\n",
" '09-galatians': ['Galatians', '9', 'Gal'],\n",
" '10-ephesians': ['Ephesians', '10', 'Eph'],\n",
" '11-philippians': ['Philippians', '11', 'Phil'],\n",
" '12-colossians': ['Colossians', '12', 'Col'],\n",
" '13-1thessalonians':['I_Thessalonians', '13', '1Thess'],\n",
" '14-2thessalonians':['II_Thessalonians','14', '2Thess'],\n",
" '15-1timothy': ['I_Timothy', '15', '1Tim'],\n",
" '16-2timothy': ['II_Timothy', '16', '2Tim'],\n",
" '17-titus': ['Titus', '17', 'Titus'],\n",
" '18-philemon': ['Philemon', '18', 'Phlm'],\n",
" '19-hebrews': ['Hebrews', '19', 'Heb'],\n",
" '20-james': ['James', '20', 'Jas'],\n",
" '21-1peter': ['I_Peter', '21', '1Pet'],\n",
" '22-2peter': ['II_Peter', '22', '2Pet'],\n",
" '23-1john': ['I_John', '23', '1John'],\n",
" '24-2john': ['II_John', '24', '2John'],\n",
" '25-3john': ['III_John', '25', '3John'], \n",
" '26-jude': ['Jude', '26', 'Jude'],\n",
" '27-revelation': ['Revelation', '27', 'Rev']}\n",
"\n",
"bo2book_ = {'01-matthew': ['Matthew', '1', 'Matt']}\n"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"## Optional: export to Excel for investigation"
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": [
"# test: sorting the data\n",
"import openpyxl\n",
"import pickle\n",
"\n",
"#if True:\n",
"for bo in bo2book:\n",
" '''\n",
" load all data into a dataframe\n",
" process books in order (bookinfo is a list!)\n",
" ''' \n",
" InputFile = os.path.join(PklDir, f'{bo}.pkl')\n",
" #InputFile = os.path.join(PklDir, '01-matthew.pkl')\n",
" \n",
" print(f'\\tloading {InputFile}...')\n",
" pkl_file = open(InputFile, 'rb')\n",
" df = pickle.load(pkl_file)\n",
" pkl_file.close()\n",
" \n",
" # not sure if this is needed\n",
" # fill dictionary of column names for this book \n",
" IndexDict = {} # init an empty dictionary\n",
" ItemsInRow=1\n",
" for itemname in df.columns.to_list():\n",
" IndexDict.update({'i_{}'.format(itemname): ItemsInRow})\n",
" ItemsInRow+=1\n",
" #print(itemname)\n",
" \n",
" # sort by id\n",
" #print(df)\n",
" df_sorted=df.sort_values(by=['id'])\n",
" df_sorted.to_excel(os.path.join(XlsxDir, f'{bo}.xlsx'), index=False)\n"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"### Step 2 Running the TF walker function\n",
"\n",
"API info: https://annotation.github.io/text-fabric/tf/convert/walker.html\n",
"\n",
"The logic of interpreting the data is included in the director function."
]
},
{
"cell_type": "code",
"execution_count": 8,
"metadata": {
"tags": []
},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"This is Text-Fabric 11.4.10\n",
"55 features found and 0 ignored\n",
" 0.00s Importing data from walking through the source ...\n",
" | 0.00s Preparing metadata... \n",
" | SECTION TYPES: book, chapter, verse\n",
" | SECTION FEATURES: book, chapter, verse\n",
" | STRUCTURE TYPES: book, chapter, verse\n",
" | STRUCTURE FEATURES: book, chapter, verse\n",
" | TEXT FEATURES:\n",
" | | text-orig-full after, word\n",
" | 0.00s OK\n",
" | 0.00s Following director... \n",
"\tWe are loading C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\pkl\\01-matthew.pkl...\n",
"\tWe are loading C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\pkl\\02-mark.pkl...\n",
"\tWe are loading C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\pkl\\03-luke.pkl...\n",
"\tWe are loading C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\pkl\\04-john.pkl...\n",
"\tWe are loading C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\pkl\\05-acts.pkl...\n",
"\tWe are loading C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\pkl\\06-romans.pkl...\n",
"\tWe are loading C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\pkl\\07-1corinthians.pkl...\n",
"\tWe are loading C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\pkl\\08-2corinthians.pkl...\n",
"\tWe are loading C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\pkl\\09-galatians.pkl...\n",
"\tWe are loading C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\pkl\\10-ephesians.pkl...\n",
"\tWe are loading C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\pkl\\11-philippians.pkl...\n",
"\tWe are loading C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\pkl\\12-colossians.pkl...\n",
"\tWe are loading C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\pkl\\13-1thessalonians.pkl...\n",
"\tWe are loading C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\pkl\\14-2thessalonians.pkl...\n",
"\tWe are loading C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\pkl\\15-1timothy.pkl...\n",
"\tWe are loading C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\pkl\\16-2timothy.pkl...\n",
"\tWe are loading C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\pkl\\17-titus.pkl...\n",
"\tWe are loading C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\pkl\\18-philemon.pkl...\n",
"\tWe are loading C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\pkl\\19-hebrews.pkl...\n",
"\tWe are loading C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\pkl\\20-james.pkl...\n",
"\tWe are loading C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\pkl\\21-1peter.pkl...\n",
"\tWe are loading C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\pkl\\22-2peter.pkl...\n",
"\tWe are loading C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\pkl\\23-1john.pkl...\n",
"\tWe are loading C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\pkl\\24-2john.pkl...\n",
"\tWe are loading C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\pkl\\25-3john.pkl...\n",
"\tWe are loading C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\pkl\\26-jude.pkl...\n",
"\tWe are loading C:\\Users\\tonyj\\my_new_Jupyter_folder\\Read_from_lowfat\\data\\pkl\\27-revelation.pkl...\n",
" | 41s \"edge\" actions: 0\n",
" | 41s \"feature\" actions: 267471\n",
" | 41s \"node\" actions: 129692\n",
" | 41s \"resume\" actions: 9629\n",
" | 41s \"slot\" actions: 137779\n",
" | 41s \"terminate\" actions: 277227\n",
" | 27 x \"book\" node \n",
" | 260 x \"chapter\" node \n",
" | 8011 x \"sentence\" node \n",
" | 7943 x \"verse\" node \n",
" | 113451 x \"wg\" node \n",
" | 137779 x \"word\" node = slot type\n",
" | 267471 nodes of all types\n",
" | 41s OK\n",
" | 0.00s checking for nodes and edges ... \n",
" | 0.00s OK\n",
" | 0.00s checking (section) features ... \n",
" | 0.21s OK\n",
" | 0.00s reordering nodes ...\n",
" | 0.03s Sorting 27 nodes of type \"book\"\n",
" | 0.05s Sorting 260 nodes of type \"chapter\"\n",
" | 0.06s Sorting 8011 nodes of type \"sentence\"\n",
" | 0.08s Sorting 7943 nodes of type \"verse\"\n",
" | 0.11s Sorting 113451 nodes of type \"wg\"\n",
" | 0.22s Max node = 267471\n",
" | 0.22s OK\n",
" | 0.00s reassigning feature values ...\n",
" | | 0.00s node feature \"after\" with 137779 nodes\n",
" | | 0.04s node feature \"appos\" with 113451 nodes\n",
" | | 0.08s node feature \"book\" with 27 nodes\n",
" | | 0.08s node feature \"book_long\" with 137779 nodes\n",
" | | 0.13s node feature \"booknumber\" with 137806 nodes\n",
" | | 0.17s node feature \"bookshort\" with 137806 nodes\n",
" | | 0.21s node feature \"case\" with 137779 nodes\n",
" | | 0.26s node feature \"chapter\" with 153939 nodes\n",
" | | 0.32s node feature \"clausetype\" with 113451 nodes\n",
" | | 0.35s node feature \"containedclause\" with 137779 nodes\n",
" | | 0.39s node feature \"degree\" with 137779 nodes\n",
" | | 0.44s node feature \"gloss\" with 137779 nodes\n",
" | | 0.47s node feature \"gn\" with 137779 nodes\n",
" | | 0.52s node feature \"id\" with 137779 nodes\n",
" | | 0.56s node feature \"junction\" with 113451 nodes\n",
" | | 0.60s node feature \"lemma\" with 137779 nodes\n",
" | | 0.64s node feature \"lex_dom\" with 137779 nodes\n",
" | | 0.67s node feature \"ln\" with 137779 nodes\n",
" | | 0.71s node feature \"monad\" with 137779 nodes\n",
" | | 0.74s node feature \"mood\" with 137779 nodes\n",
" | | 0.79s node feature \"morph\" with 137779 nodes\n",
" | | 0.83s node feature \"nodeID\" with 137779 nodes\n",
" | | 0.87s node feature \"normalized\" with 137779 nodes\n",
" | | 0.91s node feature \"nu\" with 137779 nodes\n",
" | | 0.95s node feature \"number\" with 137779 nodes\n",
" | | 0.99s node feature \"orig_order\" with 137779 nodes\n",
" | | 1.03s node feature \"person\" with 137779 nodes\n",
" | | 1.07s node feature \"ref\" with 137779 nodes\n",
" | | 1.12s node feature \"reference\" with 137779 nodes\n",
" | | 1.16s node feature \"roleclausedistance\" with 137779 nodes\n",
" | | 1.20s node feature \"rule\" with 113451 nodes\n",
" | | 1.24s node feature \"sentence\" with 137779 nodes\n",
" | | 1.28s node feature \"sp\" with 137779 nodes\n",
" | | 1.32s node feature \"sp_full\" with 137779 nodes\n",
" | | 1.36s node feature \"strongs\" with 137779 nodes\n",
" | | 1.40s node feature \"subj_ref\" with 137779 nodes\n",
" | | 1.44s node feature \"tense\" with 137779 nodes\n",
" | | 1.48s node feature \"type\" with 137779 nodes\n",
" | | 1.52s node feature \"unicode\" with 137779 nodes\n",
" | | 1.56s node feature \"verse\" with 153733 nodes\n",
" | | 1.61s node feature \"voice\" with 137779 nodes\n",
" | | 1.64s node feature \"wgclass\" with 113451 nodes\n",
" | | 1.68s node feature \"wglevel\" with 113451 nodes\n",
" | | 1.72s node feature \"wgnum\" with 113451 nodes\n",
" | | 1.75s node feature \"wgrole\" with 113451 nodes\n",
" | | 1.79s node feature \"wgrolelong\" with 113451 nodes\n",
" | | 1.82s node feature \"wgtype\" with 113451 nodes\n",
" | | 1.86s node feature \"word\" with 137779 nodes\n",
" | | 1.90s node feature \"wordlevel\" with 137779 nodes\n",
" | | 1.93s node feature \"wordrole\" with 137779 nodes\n",
" | | 1.97s node feature \"wordrolelong\" with 137779 nodes\n",
" | 2.09s OK\n",
" 0.00s Exporting 52 node and 1 edge and 1 config features to ~/my_new_Jupyter_folder/Read_from_lowfat/data:\n",
" 0.00s VALIDATING oslots feature\n",
" 0.02s VALIDATING oslots feature\n",
" 0.02s maxSlot= 137779\n",
" 0.02s maxNode= 267471\n",
" 0.03s OK: oslots is valid\n",
" | 0.13s T after to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.11s T appos to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.00s T book to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.13s T book_long to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.13s T booknumber to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.13s T bookshort to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.13s T case to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.14s T chapter to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n"
]
},
{
"name": "stdout",
"output_type": "stream",
"text": [
" | 0.10s T clausetype to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.13s T containedclause to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.14s T degree to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.14s T gloss to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.14s T gn to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.13s T id to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.11s T junction to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.16s T lemma to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.13s T lex_dom to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.14s T ln to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.13s T monad to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.13s T mood to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.14s T morph to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.14s T nodeID to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.15s T normalized to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.14s T nu to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.15s T number to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.13s T orig_order to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.05s T otype to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.13s T person to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.14s T ref to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.14s T reference to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.12s T roleclausedistance to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.12s T rule to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.13s T sentence to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.13s T sp to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.13s T sp_full to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.13s T strongs to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.14s T subj_ref to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.13s T tense to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.13s T type to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.15s T unicode to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.14s T verse to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.13s T voice to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.12s T wgclass to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.10s T wglevel to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.16s T wgnum to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.11s T wgrole to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.11s T wgrolelong to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.11s T wgtype to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.16s T word to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.12s T wordlevel to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.14s T wordrole to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.13s T wordrolelong to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.42s T oslots to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" | 0.00s M otext to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
" 7.15s Exported 52 node features and 1 edge features and 1 config features to ~/my_new_Jupyter_folder/Read_from_lowfat/data\n",
"done\n"
]
}
],
"source": [
"TF = Fabric(locations=BaseDir, silent=False)\n",
"cv = CV(TF)\n",
"version = \"0.1.8\"\n",
"\n",
"###############################################\n",
"# Common helper functions #\n",
"###############################################\n",
"\n",
"#Function to prevent errors during conversion due to missing data\n",
"def sanitize(input):\n",
" if isinstance(input, float): return ''\n",
" if isinstance(input, type(None)): return ''\n",
" else: return (input)\n",
"\n",
"\n",
"# Function to expand the syntactic categories of words or wordgroup\n",
"# See also \"MACULA Greek Treebank for the Nestle 1904 Greek New Testament.pdf\" \n",
"# page 5&6 (section 2.4 Syntactic Categories at Clause Level)\n",
"def ExpandRole(input):\n",
" if input==\"adv\": return 'Adverbial'\n",
" if input==\"io\": return 'Indirect Object'\n",
" if input==\"o\": return 'Object'\n",
" if input==\"o2\": return 'Second Object'\n",
" if input==\"s\": return 'Subject'\n",
" if input==\"p\": return 'Predicate'\n",
" if input==\"v\": return 'Verbal'\n",
" if input==\"vc\": return 'Verbal Copula'\n",
" if input=='aux': return 'Auxiliar'\n",
" return ''\n",
"\n",
"# Function to expantion of Part of Speech labels. See also the description in \n",
"# \"MACULA Greek Treebank for the Nestle 1904 Greek New Testament.pdf\" page 6&7\n",
"# (2.2. Syntactic Categories at Word Level: Part of Speech Labels)\n",
"def ExpandSP(input):\n",
" if input=='adj': return 'adjective'\n",
" if input=='conj': return 'conjunction'\n",
" if input=='det': return 'determiner' \n",
" if input=='intj': return 'interjection' \n",
" if input=='noun': return 'noun' \n",
" if input=='num': return 'numeral' \n",
" if input=='prep': return 'preposition' \n",
" if input=='ptcl': return 'particle' \n",
" if input=='pron': return 'pronoun' \n",
" if input=='verb': return 'verb' \n",
" return ''\n",
"\n",
"###############################################\n",
"# The director routine #\n",
"###############################################\n",
"\n",
"def director(cv):\n",
" \n",
" ###############################################\n",
" # Innitial setup of data etc. #\n",
" ###############################################\n",
" NoneType = type(None) # needed as tool to validate certain data\n",
" IndexDict = {} # init an empty dictionary\n",
" WordGroupDict={} # init a dummy dictionary\n",
" PrevWordGroupSet = WordGroupSet = []\n",
" PrevWordGroupList = WordGroupList = []\n",
" RootWordGroup = 0\n",
" WordNumber=FoundWords=WordGroupTrack=0\n",
" # The following is required to recover succesfully from an abnormal condition\n",
" # in the LowFat tree data where a | Name | \n", "# of nodes | \n", "# slots/node | \n", "% coverage | \n", "
|---|---|---|---|
| book | \n", "27 | \n", "5102.93 | \n", "100 | \n", "
| chapter | \n", "260 | \n", "529.92 | \n", "100 | \n", "
| verse | \n", "7943 | \n", "17.35 | \n", "100 | \n", "
| sentence | \n", "8011 | \n", "17.20 | \n", "100 | \n", "
| wg | \n", "113451 | \n", "7.58 | \n", "624 | \n", "
| word | \n", "137779 | \n", "1.00 | \n", "100 | \n", "
verse 20"
],
"text/plain": [
" verse 21"
],
"text/plain": [
" verse 1"
],
"text/plain": [
"