You signed in with another tab or window. Reload to refresh your session.You signed out in another tab or window. Reload to refresh your session.You switched accounts on another tab or window. Reload to refresh your session.Dismiss alert
A widget for tracking time during workdays. Can be paused for breaks, and it saves information such as start time, end time and total hours worked for the whole workday as well as the individual work sessions in a local sqlite database, which can be inspected by running "inspect_data.py". I suggest you create a desktop shortcut to "clock_v2.pyw", and then just click it at the start of each day. Close the application when you are finished for the day. I consider 5 hours of actual focused, deep work a workday, so it shows the percentage done below the timer.
Functions and classes that I find useful to me when working with machine learning.
TrainingTracker: A custom class for tracking metrics such as accuracy, loss, and time throughout model training. Usage is as simple as
from ml_tools.training import TrainingTracker
T = TrainingTracker(logdir=".", filename="data.json")
# The epoch loop
T.start()
for epoch in range(10):
T.update(epoch=epoch, metric="loss", value=0.2)
T.stop()
# Then inspect the data in "./data.json"
unique: A custom function that identifies the uniques values in a pandas dataframe, and reports their frequencies. I found myself using this a lot in a recent project.
A python tool I built for automatically creating many todoist tasks of a similar structure, for example "Review lecture 1", "Review lecture 2" etc. Provide your todoist access key an environment variable in a local .env file, and then run main.py and follow the instructions.