import argparse import numpy as np import connexion from flask_cors import CORS from flask import render_template, redirect, send_from_directory import utils.path_fixes as pf from utils.f import ifnone from data_processing import from_model from transformer_details import from_pretrained app = connexion.FlaskApp(__name__, static_folder="client/dist", specification_dir=".") flask_app = app.app CORS(flask_app) parser = argparse.ArgumentParser(formatter_class=argparse.ArgumentDefaultsHelpFormatter) parser.add_argument("--debug", action="store_true", help=" Debug mode") parser.add_argument("--port", default=5050, help="Port to run the app. ") # Flask main routes @app.route("/") def hello_world(): return redirect("client/exBERT.html") # send everything from client as static content @app.route("/client/") def send_static_client(path): """ serves all files from ./client/ to ``/client/`` :param path: path from api call """ return send_from_directory(str(pf.CLIENT_DIST), path) # ====================================================================== ## CONNEXION API ## # ====================================================================== def get_model_details(**request): model = request['model'] deets = from_pretrained(model) info = deets.model.config nlayers = info.num_hidden_layers nheads = info.num_attention_heads payload_out = { "nlayers": nlayers, "nheads": nheads, } return { "status": 200, "payload": payload_out, } def get_attention_and_meta(**request): model = request["model"] details = from_pretrained(model) sentence = request["sentence"] layer = int(request["layer"]) deets = details.att_from_sentence(sentence) payload_out = deets.to_json(layer) return { "status": 200, "payload": payload_out } def update_masked_attention(**request): """ Return attention information from tokens and mask indices. Object: {"a" : {"sentence":__, "mask_inds"}, "b" : {...}} """ payload = request["payload"] model = payload['model'] details = from_pretrained(model) tokens = payload["tokens"] sentence = payload["sentence"] mask = payload["mask"] layer = int(payload["layer"]) MASK = details.aligner.mask_token mask_tokens = lambda toks, maskinds: [ t if i not in maskinds else ifnone(MASK, t) for (i, t) in enumerate(toks) ] token_inputs = mask_tokens(tokens, mask) deets = details.att_from_tokens(token_inputs, sentence) payload_out = deets.to_json(layer) return { "status": 200, "payload": payload_out, } def nearest_embedding_search(**request): """Return the token text and the metadata in JSON""" model = request["model"] corpus = request["corpus"] try: details = from_pretrained(model) except KeyError as e: return {'status': 405, "payload": None} try: cc = from_model(model, corpus) except FileNotFoundError as e: return { "status": 406, "payload": None } q = np.array(request["embedding"]).reshape((1, -1)).astype(np.float32) layer = int(request["layer"]) heads = list(map(int, list(set(request["heads"])))) k = int(request["k"]) out = cc.search_embeddings(layer, q, k) payload_out = [o.to_json(layer, heads) for o in out] return { "status": 200, "payload": payload_out } def nearest_context_search(**request): """Return the token text and the metadata in JSON""" model = request["model"] corpus = request["corpus"] print("CORPUS: ", corpus) try: details = from_pretrained(model) except KeyError as e: return {'status': 405, "payload": None} try: cc = from_model(model, corpus) except FileNotFoundError as e: return {'status': 406, "payload": None} q = np.array(request["context"]).reshape((1, -1)).astype(np.float32) layer = int(request["layer"]) heads = list(map(int, list(set(request["heads"])))) k = int(request["k"]) out = cc.search_contexts(layer, heads, q, k) payload_out = [o.to_json(layer, heads) for o in out] return { "status": 200, "payload": payload_out, } app.add_api("swagger.yaml") # Setup code if __name__ != "__main__": print("SETTING UP ENDPOINTS") # Then deploy app else: args, _ = parser.parse_known_args() print("Initiating app") app.run(port=args.port, use_reloader=False, debug=args.debug)