I am no longer abe to monitor this post , I have decided to move everything to my personal blog for better monitoring.
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I am no longer abe to monitor this post , I have decided to move everything to my personal blog for better monitoring.
Please click here to access the full post
# single prediction on last classifier | |
learn.load('clas_2') | |
m = learn.model | |
#set batch size to 1 | |
m[0].bs=1 | |
#turn off dropout | |
m.eval() | |
#reset hidden state | |
m.reset() |
import asyncio | |
from concurrent import futures | |
import functools | |
import inspect | |
import threading | |
from grpc import _server | |
def _loop_mgr(loop: asyncio.AbstractEventLoop): |
/**------------------------------------------------- | |
* Simple Captcha System | |
* @package Code Snippets | |
* @link http://rhythmshahriar.com/codes/ | |
* @author Rhythm Shahriar <[email protected]> | |
* @link http://rhythmshahriar.com | |
* @copyright Copyright © 2017, Rhythm Shahriar | |
---------------------------------------------------*/ | |
body { | |
background-color: #2d2d2d; |
https://realpython.com/blog/python/asynchronous-tasks-with-django-and-celery/
$ pip install celery
$ sudo apt-get install rabbitmq-server
I have collected and moderated these ideas from various public sources and put into one place so that problem solvers and solution developers may find inspirations. Because I wish to update it regularly, I have setup as a single page wiki. You may try these ideas on hackathons/competitions/research; some are quite intense problems and some are not. Many of the problems were prepared keeping Dhaka/Bangladesh in mind, but of course can be applied to just about any underdeveloped/developing and sometimes developed countries.
""" | |
Minimal character-level Vanilla RNN model. Written by Andrej Karpathy (@karpathy) | |
BSD License | |
""" | |
import numpy as np | |
# data I/O | |
data = open('input.txt', 'r').read() # should be simple plain text file | |
chars = list(set(data)) | |
data_size, vocab_size = len(data), len(chars) |