Exemplo n.º 1
0
def get_associated_words(pages, words, sections=None):
    """Get all words in the words parameter
    
    Arguments:
        pages {list} -- list of pages
        words {list} -- list of words
    
    Returns:
        dict -- Dictionary containing the results of the query in the foramt {Word:DataFrame}
    """
    words = [w.strip().lower() for w in words]
    outputs = {}
    for word in words:
        all_matches = []

        for page_ind, page in enumerate(pages):
            clean_page = clean_pdf_page(page)
            for sentance in clean_page:
                if word in sentance.lower():
                    sentance_words = [
                        i for i in sentance.lower().split()
                        if i != word and i not in stop
                    ]
                    all_matches.extend(sentance_words)

        outputs[word] = pd.Series(all_matches).value_counts()

    return outputs
Exemplo n.º 2
0
def get_words_in_sentances(pages, words, sections=None):
    """Get all words in the words parameter
    
    Arguments:
        pages {list} -- list of pages
        words {list} -- list of words
    
    Returns:
        dict -- Dictionary containing the results of the query in the foramt {Word:DataFrame}
    """
    words = [w.strip().lower() for w in words]
    outputs = {}
    for word in words:
        all_matches = []

        for page_ind, page in enumerate(pages):
            clean_page = clean_pdf_page(page)
            for sentance in clean_page:
                if word in sentance.lower():
                    d = {"Sentance": sentance, "Page": page_ind + 1}

                    if sections is not None:
                        d["Section"] = sections[page_ind + 1]
                    all_matches.append(d)

        outputs[word] = pd.DataFrame(all_matches)

    return outputs
def get_headers(pages):
    """Find Section headers and sub headers in a dataframe

    
    Arguments:
        pages {list} -- list of pages to extract headers from
    
    Returns:
        list -- list of all header titles
    """
    results = []
    page_nums = []
    page_num = 0
    for page in pages:
        clean_page = clean_pdf_page(page)
        for i in clean_page:
            if (
                i.startswith("Section") and "page" not in i
            ):  # If the sentence starts with Secion X.
                results.append(i)
                page_nums.append(page_num + 1)
            elif re.findall("^(\d+\.\d+\.*)(?![\d\.])", i) and not re.findall(
                "\.\.\.", i
            ):  # Else if the sentence begins with a section id (3.2.1, 1.1, etc)
                results.append(i)
                page_nums.append(page_num + 1)
        page_num += 1

    last_num = 1
    cleaned_results = []
    cleaned_page_nums = []
    for ind, val in enumerate(results):
        if str(val).lower() == "section.":
            continue

        if "section" in str(val).lower() or int(val.split(".")[0]) == last_num:
            cleaned_results.append(val)
            cleaned_page_nums.append(page_nums[ind])
        elif int(val.split(".")[0]) == last_num + 1:
            cleaned_results.append(val)
            cleaned_page_nums.append(page_nums[ind])
            last_num += 1

    df = pd.DataFrame(
        [cleaned_page_nums, cleaned_results], index=["Page Number", "Header"]
    ).T
    return df
Exemplo n.º 4
0
def get_money(pages, sections=None):
    all_matches = []

    for word in ["$", "dollar", "money"]:
        all_matches = []

        for page_ind, page in enumerate(pages):
            clean_page = clean_pdf_page(page)
            for sentance in clean_page:
                if word.lower() in sentance.lower():
                    d = {"Sentance": sentance, "Page": page_ind + 1}

                    if sections is not None:
                        d["Section"] = sections[page_ind + 1]
                    all_matches.append(d)

    return pd.DataFrame(all_matches)
Exemplo n.º 5
0
def run_query(pages, sections, all_queries):
    section_scores = {}
    specific_section_scores = {}
    for page_ind, page in enumerate(pages):
        section = sections[page_ind + 1]
        specific_section_scores.setdefault(section, {})
        clean_page = clean_pdf_page(page)
        for sentance in clean_page:
            for qw, qs in all_queries:
                if qw.lower() in sentance.lower():
                    specific_section_scores[section].setdefault(qw, 0)
                    specific_section_scores[section][qw] += qs
                    section_scores.setdefault(section, 0)
                    section_scores[section] += qs

    return pd.Series(section_scores).to_frame(
        "Weight"), specific_section_scores
Exemplo n.º 6
0
def get_figures_tables(pages, sections=None):
    outputs = {}

    for word in ["Table", "Figure"]:
        all_matches = []

        for page_ind, page in enumerate(pages):
            clean_page = clean_pdf_page(page)
            for sentance in clean_page:
                if re.findall(f"{word.lower()} \d", sentance.lower()) and all([
                        i not in sentance.lower()
                        for i in [" in ", " refer ", " according ", " to "]
                ]):
                    d = {"Sentance": sentance, "Page": page_ind + 1}

                    if sections is not None:
                        d["Section"] = sections[page_ind + 1]
                    all_matches.append(d)

        outputs[word] = pd.DataFrame(all_matches)

    return outputs