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Giorgos Paraskevopoulos georgepar

  • Athens, Greece
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from typing import Dict, Optional
import torch
import torch.nn as nn
from torchcrf import CRF
from transformers import AutoModel
class TransformerSlidingWindower(nn.Module):
"""Apply model on a strided sliding window
@georgepar
georgepar / poetry.lock
Last active April 8, 2021 18:22
Dependencies
[[package]]
name = "absl-py"
version = "0.12.0"
description = "Abseil Python Common Libraries, see https://github.com/abseil/abseil-py."
category = "main"
optional = false
python-versions = "*"
[package.dependencies]
six = "*"
@georgepar
georgepar / README.md
Last active June 12, 2020 14:08
ACL 2020 papers.csv creator

How to run

  • Download this as a tab separated file
  • Run python create_papers_csv.py --inp acl2020_accepted_papers.tsv --out out.csv --n-keywords 5

Create the embeddings and projection files

  • python embeddings.py ../acl-2020-virtual-conference-sitedata/papers.csv
  • python reduce.py ../acl-2020-virtual-conference-sitedata/papers.csv embeddings.torch > ../sitedata_acl2020/papers_projection.json --projection-method [tsne|umap]
@georgepar
georgepar / dataloading.py
Created December 27, 2019 12:25
Dataloading helper for Pattern Recognition Lab 3 in NTUA
import numpy as np
import gzip
import copy
from sklearn.preprocessing import LabelEncoder
from torch.utils.data import Dataset
from torch.utils.data import SubsetRandomSampler, DataLoader
class_mapping = {
'Rock': 'Rock',
@georgepar
georgepar / dataloading.py
Created December 27, 2019 12:25
Dataloading helper for Pattern Recognition Lab 3 in NTUA
import numpy as np
import gzip
import copy
from sklearn.preprocessing import LabelEncoder
from torch.utils.data import Dataset
from torch.utils.data import SubsetRandomSampler, DataLoader
class_mapping = {
'Rock': 'Rock',
import os
import requests
from torch.utils.data import Dataset
from silx.io.dictdump import h5todict
def download_file(url, fname):
resp = requests.get(url, stream=True)
with open(fname, 'wb') as fd:
for datum in resp.iter_content():
@georgepar
georgepar / python.json
Created May 31, 2019 07:54
VS Code snippets
{
"Create Class": {
"prefix": "cls",
"body": [
"class ${1:MyClass}(${2:object}):",
" def __init__(self, ${3:*args}, ${4:**kwargs}):",
" super(${1:MyClass}, self).__init__(${5:*args}, ${6:**kwargs})"
],
"description": "Create Class"
},
import mlflow
import mlflow.pytorch
class MlFlowLogger(object):
def __init__(self,
uri=None,
experiment_name=None,
model_path='models',
**params):
import mlflow
import mlflow.pytorch
class MlFlowLogger(object):
def __init__(self,
uri=None,
experiment_name=None,
model_path='models',
**params):
@georgepar
georgepar / cloudSettings
Last active August 27, 2020 13:06
Visual Studio Code Settings Sync Gist
{"lastUpload":"2020-08-27T13:06:54.146Z","extensionVersion":"v3.4.3"}