@AndyK The universe is a strange place, I was reading that documentation last night actually, what is your question? Maybe I can help. I don't see date__lte in the context the exclude() explanation
I kind of want to know why solder it in though? Why not just secure it in the chasis and make it more effort to get at that one would want to reasonably exert.
I'm just not sure if it's worth investing 250 quid in SSD when the laptop is nearly 4 years old. all works fine, battery will need replacement in.. like a couple of years,. that's another 200+ quid
So you can't change it. They got sued for deliberately having their phone battery only take 100 charges and giving you no way to change it but send the phone away
Yeah cause of the issue with no warnings on the packaging with the Phone's Film Covering and the overall wear and tear a normal person inflicts causes that same Film to deteriorate a crap ton faster than their lab tests predicted.
I mean fair point but its not that they cant a few company's have teased flexible & fold-able devices in the past years. It's that once you hit open market stress tests in labs don't have adequate results.
A robot flexing a phone 10,000 Times a day and swiping it in every angle imaginable plus drop tests and scratch tests doesn't correlate to day-to-day wear
the whole market race every year is good for creating handheld and mobile device technology that is innovative and interesting. The mobile camera industry is also interesting with some people using Mobile Devices to take their photos now exclusively.
The race to make the most powerful device every year does generate some fun stuff.
But I think the trend of making phones cost like $100 more every year is stupid too.
This is a procedurally generated fractal. You start with a list of two unit vectors that are at right angles to each other. You create the next generation of the fractal by iterating over the list and for each pair of vectors, you insert between them the cross product of those vectors.
The result is a list of axis-aligned unit vectors. These vectors represent a walk through 3d space. A point starts at (0,0,0) and moves in the direction of each vector in turn.
Well my only issue is my Supervisor's Macro might be doubling the Transitions. I put a don't increment if row is in my deadrows list and I got half of what he was counting. I'm wondering if I'm off now or if he wants it to be doubled.
This curve has some properties in common with the Dragon Curve. In particular, the first half of the walk is identical to the second half, not taking into account translation and rotation; and the first half of the walk is identical to the entire walk, not taking into account translation, rotation, and scaling.
Or so I assume based on my observation of the image. I haven't formally proven anything.
Mr. God too created a fractal like that (The RNA), gave it some AI with necessary environment to support its reproduction, and boom that fractal gave rise to humans and this room, eventually.
It occurs to me that rather than doing cross-products, I could have written an L system: Start with "forward up", then apply rules such as "forward up -> forward right up" and the other 23 combinations of rules that cover each valid cardinal direction pair
pairs such as "up down" and "left left" will never occur, so we don't need to write rules for those.
@AndyK Sorry I had to step away, that is a filter tag, so something like date__lte=datetieme.now()-timdelta(days=1) would be filtering instances of a given model by the model attribute 'date' where the value is a date sometime before this time yesterday. You can use __[whatever tag] attached to the model attribute in a filter() call
Okay. Cause I noticed in some of my code I can replace having a if-else nested in an if statement with just if it fulfills both conditions increment x and append else increment y
#assuming we are comparing this block:
if a() and b():
print("foo")
else:
print("bar")
#with this block:
if a():
if b():
print("foo")
else:
print("bar")
If a() returns False and b() returns True, then the first block will print "bar", but the second block will print nothing.
I suppose you could do:
if a():
if b():
print("foo")
else:
print("bar")
else:
print("bar")
... And this would have identical behavior to the first block. But it violates DRY principles.
And it's no faster. If you're thinking "but surely this way is fast because it doesn't bother to evaluate b() when a() returns False?" you're correct. But if a() and b():also doesn't bother to evaluate b() when a() returns False.
If you're only ever going to want day precision, then you might want to just use x['date'].date() so your key will be a datetime object converted to just a date instead of a str...
I'm just trying to figure out why my alembic history is all out of flunter. The changes it needs to make to get to the newest version haven't taken, and I'm not sure why
around z you have [[c,-s,0],[s,c,0],[0,0,1]] and around x you have [[1,0,0],[0,c,-s],[0,s,c]] where c and s are the sine and cosine of the angle, respectively
It's not a dealbreaker that numpy won't autogenerate the matrices for me. I'm only creating num_frames+1 rotation matrices over the course of the entire program, so it's not at all a bottleneck
if you have 3-length coordinates in a list of length 2**15 that's an array-like all_points with shape (2**15, 3), for which you can do either or all_points @ rotmat.T` or np.einsum('ab,cb->ca', rotmat, all_points) I think (not tested)
Anything goes in the Wth dimension. Cats and dogs living together, babies having babies,
My current code doesn't have a W component. Without translation I don't have direct control over the point that the model chooses to rotate around. It's a happy coincidence that it currently rotates around its centroid, approximately
When I animated the Stanford Bunny, it rotated around its nose
The only thing I'm not sure will be easy is towards the end when I need to concatenate M array-likes of shape (N, 3) into a single array-like of shape (M*N, 3)
My concern is in two parts. Concern one is that I would be too addled to discover the concatenate function. But you've given it to me here, so that's no problem. Concern two is that it would be computationally expensive. But if numpy scoffs at a million rows, then I won't fret.
Hmm, I planned to replace the cross products in my procedural generation function with an L-system, but that rather hinged on being able to have more than one token on the LHS of each rule...
I can still do it if I'm willing to use twice as much memory.
Ooh, I get to use numpy.cumsum here. I've heard much about it, usually in the form of furtive snickers from immature users.
In which case, you can get the original object from the hash. But you have to live with the one in a quadrillion case that your "coconuts" string will be inaccessible
Strange. When I run the Chapter 2 Part 1 exercise with cat_hash = nlp.vocab.strings["cat"] and cat_string = nlp.vocab.strings[cat_hash], it works for me.
Side note: having the to and from mappings in the same dict is a bit weird. Even though I know it's safe because the domain and the range are different types.
it's a good way to prevent anyone from JSON-encoding your bidirectional mapping ;)
I notice that if I replace the string literal "cat" with the string literal "derp", then the code crashes on cat_string = nlp.vocab.strings[cat_hash].
This makes me suspect that hashes are only reversible if the string appears in the doc object. Oops, you beat me to it.
I thought perhaps that the hash-to-string relation would get automatically added to the doc when you do nlp.vocab.strings["derp"] but I guess this is not the case
@Kevin what you need is broadcasting. The gist of it is that singleton (1-length) dimensions are expanded, and there are an infinite number of implicit leading singleton dimensions on any array-like
(3,1,5) is compatible with (3,2,5) and (3,2,1) and (2,5) and (5,) and a scalar
"expanded" means "imagine the array is repeated like tiles along that dimension"
and you can inject singleton-dimensions with the short-hand arr[:,None,:] for a 2d array (injects a singleton in the middle, gives you a 3d array), or even arr[...,None,:] to inject a penultimate singleton for any ndarray
The output I currently have, while incorrect, is not so mangled that I can't see some glimmer of the desired result. So I think 99% of my assumptions are actually founded.
Success. It's not pixel-for-pixel identical to the previous version, probably because I had a slightly different starting configuration the first time and I'm doing something different with the centroid
At the beginning of this project I was hoping to make a fractal with actual polygons, not just line segments in R^3. I toyed around with the idea of iteratively replacing each of the triangles in a scene with ~3 interlocking triangles in a pyramid shape. But if I want each Nth generation triangle to be similar to its N+1th generation descendants, then I think all triangles have to be equilateral and the only way to make them interlock is to join them up in a tetrahedron.
I haven't written any code to confirm, but I suspect this wouldn't produce any interesting emergent geometry, just an increasingly large pyramid.
You can make pyramids using a base of any shape, but you'll have a hard time making all three sides similar to the base.
Yesterday I was sure it would only be possible with equilateral triangles but now I'm wondering whether there might be some wacky triangle with side lengths 1, sqrt(2), and phi and it just happens to decompose into a self-similar pyramid
Something like the Golden Rectangle except in three dimensions and with triangles
Certainly interesting emergent properties don't necessarily require shapes that are in some way pure or clean or neat. Penrose Tiles can be constructed with 36-36-108 triangles, so maybe Kevin Pyramids can have wacky angles too.
you need to print some shapes for us to be able to help
What is "sample data" and where do you get an out of bounds error?
data = df[['period']] will give you a dataframe with a single column, then you try 2d indexing into that dataframe with two different integer column indices. Is this really what you want? What do you want to achieve?
unless I'm mistaken that .iloc call would say "give me the first 100 rows from the first and third columns", but there's only one column
>>> df = pd.DataFrame({'a': [1,2,3], 'b':[4,5,6], 'c': [7,8,9]})
>>> df
a b c
0 1 4 7
1 2 5 8
2 3 6 9
>>> df.iloc[:2, [0, 2]]
a c
0 1 7
1 2 8
>>> df[['a']].iloc[:2, [0, 2]]
Traceback (most recent call last):
File "<stdin>", line 1, in <module>
so you don't need to print shapes after all...
user6718998
Ah you are right. THen I dont udnerstand this. I was trying to build up a perceptron algorigthm. But the input is a matrix. If I have an array of ones and zeroes, how do I get that matrix ?
I don't know any of the libraries you're using, but the one comment on the question suggests that there may be some missing information (functions that don't have a visible implementation). Is it possible to boil down your code further so that it's sort of self-contained? That being said, your question has only 40 views in 4 days which is probably the real problem, and I don't know if we can do anything about that. The tags are fine, for example.
I'm a bit surprised that something called add_reaction should be able to remove a reaction, but I know absolutely no discord so this might be fine
import discord import requests import json from discord.ext import commands from discord.ext.commands import bot import asyncio from discord.utils import get
the custom emoji works right, add_reaction works right, my only problem is to edit the embed. I need to return to the original embed and the reactions when I click on the custom reaction
def user_add_space(user_id: int, xp: int):
if os.path.isfile("bot/space.json"):
try:
with open('bot/space.json', 'r') as fp:
users = json.load(fp)
users[user_id]['space'] += xp
with open('bot/space.json', 'w') as fp:
json.dump(users, fp, sort_keys=True, indent=4)
except KeyError:
with open('bot/space.json', 'r') as fp:
users = json.load(fp)
users[user_id] = {}
users[user_id]['space'] = xp
@LucasTesch OK, so perhaps you can boil that part down to two simple functions that get and set values in a dict? Because that would make your code runnable (with the aforementioned imports), so who does know discord.py can try it for themselves. My experience is that I'm 90% more likely to help solve a problem if I can drop it into my interpreter and play with it.
(actually, that 90% is off, I meant to say I'm 10 times more likely)
user7437554
9:10 PM
Hello guys, I've got a short question for any of you
user7437554
a = [1, 1, 2, 3, 5, 8, 13, 21, 34, 55, 89]
more_than_five=[]
[more_than_five.append(element) for element in a if element<5]
print(more_than_five)
is the commands that I use to run and check json, this is well summarized everything that is being requested in my help, basically I am not having problems with json, but in editing my embed and returning it
@LucasTesch I understand that. But if you were to put all that code into your question to make it runnable, it would be way too much code and that would also distract (maybe even scare away) potential answerers. You're not obliged to do anything, it's just my suggestion to make it more likely that someone who sees it will also answer it. I can't give technical advice so you'll have to make do with this. You can take it or leave it :)
So apparently there is a whole category of tetrahedrons with congruent sides, and they need not be equilateral. They're called disphenoids. But I suspect it's impossible to construct a tetrahedron with similar but noncongruent sides. My marvellous proof does not fit in this margin.
@LucasTesch that looks much better. Is it runnable if you add the imports? Because if it is, you should definitely update your question with that. The edit will also bump the question to the front page, so new people will probably see it.
So, someone with a lot of rep answered this simple question (stackoverflow.com/questions/55819707/…) and made the answer a community wiki---I don't really understand why? I don't really understand how community wikis work. Any of you care to enlighten me on the philosophy?
Ok, you twisted my arm so I'll try to write the proof. Start with a scalene triangle with side lengths A B and C, where A > B > C. WLOG assume that this triangle will be the smallest of the four triangles composing the tetrahedron. A second triangle will adjoin the first on side C.
It can't be that the second triangle's side C adjoins the first triangle's side C, because then the triangles would be congruent. It also can't be that the second triangle's side B adjoins the first triangle's side C, because B>C so the second triangle would have to be shrunk for the edges to match. We already know the first triangle is the smallest, so that's out. And A can't adjoin C for the same reason.
This proves that a tetrahedron must have at least two sides that are congruent. And with my magic handwave I assert that the other two sides will be congruent also.
my favorite handwavy proofs were always from abstract algebra, where instead of concretely proving something using transitivity, the professor would always say "by the sandwich theorem"
Sandwich theorem: get ten steps into your proof, say "I'm hungry" and go make a sandwich. When you return, you have already forgotten about the problem.
The "no free lunch" theorem is just an emergent law similar to the cosmic censorship hypothesis that prevents the mass of physicists to reach critical values near sources of free food
dear community I have the following practice code solution: Given an integer k and a string s, find the length of the longest substring that contains at most k distinct characters. For example, given s = "abcba" and k = 2, the longest substring with k distinct characters is "bcb".
def longest_substring_with_k_distinct_characters(s, k): if k == 0: return 0
# Keep a running window bounds = (0, 0) h = {} max_length = 0 for i, char in enumerate(s): h[char] = i if len(h) <= k: new_lower_bound = bounds[0] # lower bound remains the same else: # otherwise, pop last occurring char key_to_pop = min(h, key=h.get) new_lower_bound = h.pop(key_to_pop) + 1
I'm not really sure I correctly understand what you're asking, so here's a rubber-duck example: imagine that h = {'apple': 2, 'potato': -1}. Then min(h, key=h.get) tries to take the minimum of ['apple', 'potato'], but based on the values given in the dict: apple is worth 2, potato is worth -1, the minimum of these values is -1, so potato wins, and min(h, key=h.get) returns 'potato'.
it should be the same as min(h.items(), key=operator.itemgetter(1))[0] if that helps
(which is functionally the same as min(h.items(), key=lambda item: item[1])[0])