Beispiel #1
0
    def load_set(self, fname, cache_dir=None):
        # TODO: Make the cache-handling generic,
        # and offer a way to actually pass cache_dir
        save_cache = False
        if cache_dir:
            import os.path
            fname_abs = os.path.abspath(fname)
            from hashlib import md5
            cache_filename = "%s/%s.p" % (cache_dir, md5(fname_abs.encode("utf-8")).hexdigest())
            try:
                with open(cache_filename, "rb") as f:
                    return pickle.load(f)
            except (IOError, TypeError, KeyError):
                save_cache = True

        s0, s1, y = loader.load_hypev(fname)

        if self.vocab is None:
            vocab = Vocabulary(s0 + s1)  # FIXME: lower?
        else:
            vocab = self.vocab

        si0 = vocab.vectorize(s0, spad=self.s0pad)
        si1 = vocab.vectorize(s1, spad=self.s1pad)
        f0, f1 = nlp.sentence_flags(s0, s1, self.s0pad, self.s1pad)
        gr = graph_input_anssel(si0, si1, y, f0, f1, s0, s1)
        gr, y = self.merge_questions(gr)
        if save_cache:
            with open(cache_filename, "wb") as f:
                pickle.dump((s0, s1, y, vocab, gr), f)
                print("save")

        return (gr, y, vocab)
Beispiel #2
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    def load_set(self, fname, cache_dir=None):
        # TODO: Make the cache-handling generic,
        # and offer a way to actually pass cache_dir
        save_cache = False
        if cache_dir:
            import os.path
            fname_abs = os.path.abspath(fname)
            from hashlib import md5
            cache_filename = "%s/%s.p" % (
                cache_dir, md5(fname_abs.encode("utf-8")).hexdigest())
            try:
                with open(cache_filename, "rb") as f:
                    return pickle.load(f)
            except (IOError, TypeError, KeyError):
                save_cache = True

        s0, s1, y = loader.load_hypev(fname)

        if self.vocab is None:
            vocab = Vocabulary(s0 + s1)  # FIXME: lower?
        else:
            vocab = self.vocab

        si0 = vocab.vectorize(s0, spad=self.s0pad)
        si1 = vocab.vectorize(s1, spad=self.s1pad)
        f0, f1 = nlp.sentence_flags(s0, s1, self.s0pad, self.s1pad)
        gr = graph_input_anssel(si0, si1, y, f0, f1, s0, s1)
        gr, y = self.merge_questions(gr)
        if save_cache:
            with open(cache_filename, "wb") as f:
                pickle.dump((s0, s1, y, vocab, gr), f)
                print("save")

        return (gr, y, vocab)
def load_set(fname, vocab=None):
    s0, s1, y = loader.load_hypev(fname)
    # s0=questions, s1=answers

    if vocab is None:
        vocab = Vocabulary(s0 + s1)

    si0 = vocab.vectorize(s0, spad=s0pad)
    si1 = vocab.vectorize(s1, spad=s1pad)
    f0, f1 = nlp.sentence_flags(s0, s1, s0pad, s1pad)
    gr = graph_input_anssel(si0, si1, y, f0, f1, s0, s1)

    return s0, s1, y, vocab, gr
def load_set(fname, vocab=None):
    s0, s1, y = loader.load_hypev(fname)
    # s0=questions, s1=answers

    if vocab is None:
        vocab = Vocabulary(s0 + s1)

    si0 = vocab.vectorize(s0, spad=s0pad)
    si1 = vocab.vectorize(s1, spad=s1pad)
    f0, f1 = nlp.sentence_flags(s0, s1, s0pad, s1pad)
    gr = graph_input_anssel(si0, si1, y, f0, f1, s0, s1)

    return s0, s1, y, vocab, gr
Beispiel #5
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    def load_set(self, fname, cache_dir=None):
        s0, s1, y = loader.load_hypev(fname)

        if self.vocab is None:
            vocab = Vocabulary(s0 + s1)
        else:
            vocab = self.vocab

        si0 = vocab.vectorize(s0, spad=self.s0pad)
        si1 = vocab.vectorize(s1, spad=self.s1pad)
        f0, f1 = nlp.sentence_flags(s0, s1, self.s0pad, self.s1pad)
        gr = graph_input_anssel(si0, si1, y, f0, f1, s0, s1)

        return (gr, y, vocab)
Beispiel #6
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    def load_set(self, fname, cache_dir=None):
        s0, s1, y = loader.load_hypev(fname)

        if self.vocab is None:
            vocab = Vocabulary(s0 + s1)
        else:
            vocab = self.vocab

        si0 = vocab.vectorize(s0, spad=self.s0pad)
        si1 = vocab.vectorize(s1, spad=self.s1pad)
        f0, f1 = nlp.sentence_flags(s0, s1, self.s0pad, self.s1pad)
        gr = graph_input_anssel(si0, si1, y, f0, f1, s0, s1)

        return (gr, y, vocab)
Beispiel #7
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    def load_set(self, fname, cache_dir=None, lists=None):
        # TODO: Make the cache-handling generic,
        # and offer a way to actually pass cache_dir
        save_cache = False
        if cache_dir:
            import os.path
            fname_abs = os.path.abspath(fname)
            from hashlib import md5
            cache_filename = "%s/%s.p" % (
                cache_dir, md5(fname_abs.encode("utf-8")).hexdigest())
            try:
                with open(cache_filename, "rb") as f:
                    return pickle.load(f)
            except (IOError, TypeError, KeyError):
                save_cache = True

        if lists is not None:
            s0, s1, y, qids, xtra, types = lists
        else:
            xtra = None
            if '/mc' in fname:
                s0, s1, y, qids, types = loader.load_mctest(fname)
            else:
                s0, s1, y, qids = loader.load_hypev(fname)
                try:
                    dsfile = re.sub('\.([^.]*)$', '_aux.tsv',
                                    fname)  # train.tsv -> train_aux.tsv
                    with open(dsfile) as f:
                        rows = csv.DictReader(f, delimiter='\t')
                        xtra = loader.load_hypev_xtra(rows)
                        print(dsfile + ' loaded and available')
                except Exception as e:
                    if self.c['aux_r'] or self.c['aux_c']:
                        raise e
                types = None

        if self.vocab is None:
            vocab = Vocabulary(s0 + s1,
                               prune_N=self.c['embprune'],
                               icase=self.c['embicase'])
        else:
            vocab = self.vocab

        # mcqtypes pruning must happen *after* Vocabulary has been constructed!
        if types is not None:
            s0 = [x for x, t in zip(s0, types) if t in self.c['mcqtypes']]
            s1 = [x for x, t in zip(s1, types) if t in self.c['mcqtypes']]
            y = [x for x, t in zip(y, types) if t in self.c['mcqtypes']]
            qids = [x for x, t in zip(qids, types) if t in self.c['mcqtypes']]
            print(
                'Retained %d questions, %d hypotheses (%s types)' %
                (len(set(qids)), len(set([' '.join(s)
                                          for s in s0])), self.c['mcqtypes']))

        si0, sj0 = vocab.vectorize(s0, self.emb, spad=self.s0pad)
        si1, sj1 = vocab.vectorize(s1, self.emb, spad=self.s1pad)
        f0, f1 = nlp.sentence_flags(s0, s1, self.s0pad, self.s1pad)
        gr = graph_input_anssel(si0, si1, sj0, sj1, None, None, y, f0, f1, s0,
                                s1)
        if qids is not None:
            gr['qids'] = qids
        if xtra is not None:
            gr['#'] = xtra['#']
            gr['@'] = xtra['@']
        gr, y = self.merge_questions(gr)
        if save_cache:
            with open(cache_filename, "wb") as f:
                pickle.dump((s0, s1, y, vocab, gr), f)
                print("save")

        return (gr, y, vocab)
Beispiel #8
0
    def load_set(self, fname, cache_dir=None, lists=None):
        # TODO: Make the cache-handling generic,
        # and offer a way to actually pass cache_dir
        save_cache = False
        if cache_dir:
            import os.path
            fname_abs = os.path.abspath(fname)
            from hashlib import md5
            cache_filename = "%s/%s.p" % (cache_dir, md5(fname_abs.encode("utf-8")).hexdigest())
            try:
                with open(cache_filename, "rb") as f:
                    return pickle.load(f)
            except (IOError, TypeError, KeyError):
                save_cache = True

        if lists is not None:
            s0, s1, y, qids, xtra, types = lists
        else:
            xtra = None
            if '/mc' in fname:
                s0, s1, y, qids, types = loader.load_mctest(fname)
            else:
                s0, s1, y, qids = loader.load_hypev(fname)
                try:
                    dsfile = re.sub('\.([^.]*)$', '_aux.tsv', fname)  # train.tsv -> train_aux.tsv
                    with open(dsfile) as f:
                        rows = csv.DictReader(f, delimiter='\t')
                        xtra = loader.load_hypev_xtra(rows)
                        print(dsfile + ' loaded and available')
                except Exception as e:
                    if self.c['aux_r'] or self.c['aux_c']:
                        raise e
                types = None

        if self.vocab is None:
            vocab = Vocabulary(s0 + s1, prune_N=self.c['embprune'], icase=self.c['embicase'])
        else:
            vocab = self.vocab

        # mcqtypes pruning must happen *after* Vocabulary has been constructed!
        if types is not None:
            s0 = [x for x, t in zip(s0, types) if t in self.c['mcqtypes']]
            s1 = [x for x, t in zip(s1, types) if t in self.c['mcqtypes']]
            y = [x for x, t in zip(y, types) if t in self.c['mcqtypes']]
            qids = [x for x, t in zip(qids, types) if t in self.c['mcqtypes']]
            print('Retained %d questions, %d hypotheses (%s types)' % (len(set(qids)), len(set([' '.join(s) for s in s0])), self.c['mcqtypes']))

        si0, sj0 = vocab.vectorize(s0, self.emb, spad=self.s0pad)
        si1, sj1 = vocab.vectorize(s1, self.emb, spad=self.s1pad)
        f0, f1 = nlp.sentence_flags(s0, s1, self.s0pad, self.s1pad)
        gr = graph_input_anssel(si0, si1, sj0, sj1, None, None, y, f0, f1, s0, s1)
        if qids is not None:
            gr['qids'] = qids
        if xtra is not None:
            gr['#'] = xtra['#']
            gr['@'] = xtra['@']
        gr, y = self.merge_questions(gr)
        if save_cache:
            with open(cache_filename, "wb") as f:
                pickle.dump((s0, s1, y, vocab, gr), f)
                print("save")

        return (gr, y, vocab)