Since neither numpy nor pandas io are asyncio aware, this might be a better use case for threads than for asyncio. (Also, asyncio based solutions will use threads behind the scenes anyway.)
For example, this code spawns a writer thread to which you submit work using a queue:
import threading, queue
to_write = queue.Queue()
# Call to_write.get() until it returns None
for df in iter(to_write.get, None):
with open('result.csv', 'a') as f:
df.to_csv(f, header=False, index=False)
for name, group in data.groupby('Date'):
df = lot_of_numpy_calculations(group)
# enqueue None to instruct the writer thread to exit
Note that, if writing turns out to be consistently slower than the calculation, the queue will keep accumulating data frames, which might end up consuming a lot of memory. In that case be sure to provide a maximum size for the queue by passing the
maxsize argument to the constructor.
Also, consider that re-opening the file for each write can slow down writing. If the amount of data written is small, perhaps you could get better performance by opening the file beforehand.