Category: Technology

  • NYT Connections: hints and answers for Saturday, November 30

    Sam Hill

    Connections is the new puzzle game from the New York Times, and it can be quite difficult. If you need a hand with solving today’s puzzle, we’re here to help.

    Go Here to Read this Fast! NYT Connections: hints and answers for Saturday, November 30

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    NYT Connections: hints and answers for Saturday, November 30

  • Wordle Today: Wordle answer and hints for November 30

    Sam Hill

    Trying to solve the Wordle today? If you’re stuck, we’ve got a few hints that will help you keep your Wordle streak alive.

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    Wordle Today: Wordle answer and hints for November 30

  • The best video game deals of Steam Autumn Sale 2024

    Tomas Franzese

    The Steam Autumn Sale runs until December 4, and these deals on games like Helldivers 2 and Kingdom Come: Deliverance are worth capitalizing on.

    Go Here to Read this Fast! The best video game deals of Steam Autumn Sale 2024

    Originally appeared here:
    The best video game deals of Steam Autumn Sale 2024

  • Bluesky implements a ‘more aggressive’ impersonation policy

    Mariella Moon

    Bluesky has updated its impersonation policy to be “more aggressive” after third-party analysis highlighted its verification problem. The Bluesky Safety account said that the social media service is removing accounts that are impersonating other people and those squatting on handles. Bluesky doesn’t have a conventional verification system, so it’s easy for unscrupulous users to pretend to be someone else either for attention or to scam other people. That may not have been a serious problem in the past, but the recent influx of new users threw the issue into stark relief. 

    While users can verify their identities on Bluesky by linking their account to a domain name, the process isn’t as straightforward as paying for a checkmark. They’d have to add a string of text to the DNS record associated with their domain so that they could claim their URL. For instance, we could claim the Engadget.com handle on Bluesky if we go through this self-verification process. Individuals can link their accounts to personal domains or pay for Bluesky’s custom domain service. In its new announcement, the platform say’s it’s working with organizations and high-profile individuals to set up their verified handles.

    That said, when a user verifies their account, their old handle (typically username.bsky.social) gets freed up and becomes available to other people who sign up. Alexios Mantzarlis, the third party from Cornell Tech who analyzed the app’s userbase, found that 44 percent of Bluesky’s 100 most-followed accounts have a doppelganger. That is why Bluesky now requires parody, satire or fan accounts to label themselves as such in both their handles and their bio. If they don’t, or if they only indicate the nature of their account in one of those elements, then they’ll be treated as an impersonator and will be removed from the platform. 

    Bluesky now explicitly prohibits identity churning, as well. Accounts that start as impersonators with the purpose of gaining new users, and who then switch to a different identity in an attempt to circumvent the ban, will still get booted off the app. Finally, it says it’s exploring “additional options to enhance account verification,” though they’re not quite ready for rollout. 

    This article originally appeared on Engadget at https://www.engadget.com/apps/bluesky-implements-a-more-aggressive-impersonation-policy-130047163.html?src=rss

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    Bluesky implements a ‘more aggressive’ impersonation policy

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    Bluesky implements a ‘more aggressive’ impersonation policy

  • Everything leaving Netflix in December 2024

    As the year draws to a close, Netflix waves goodbye to a few more titles, but thankfully there’s not much leaving the streamer in December 2024.

    Go Here to Read this Fast! Everything leaving Netflix in December 2024

    Originally appeared here:
    Everything leaving Netflix in December 2024

  • How shared hosting can kill your online business

    How shared hosting can kill your online business

    Sharing server resources with other users can lead to performance issues which may drive away customers.

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    Originally appeared here:
    How shared hosting can kill your online business

  • Dunder Methods: The Hidden Gems of Python

    Federico Zabeo

    Real-world examples on how actively using special methods can simplify coding and improve readability.

    Dunder methods, though possibly a basic topic in Python, are something I have often noticed being understood only superficially, even by people who have been coding for quite some time.

    Disclaimer: This is a forgivable gap, as in most cases, actively using dunder methods “simply” speeds up and standardize tasks that can be done differently. Even when their use is essential, programmers are often unaware that they are writing special methods that belong to the broader category of dunder methods.

    Anyway, if you code in Python and are not familiar with this topic, or if you happen to be a code geek intrigued by the more native aspects of a programming language like I am, this article might just be what you’re looking for.

    Appearances can deceive… even in Python!

    If there is one thing I learned in my life is that not everything is what it seems like at a first look, and Python is no exception.

    Photo by Robert Katzki on Unsplash

    Let us consider a seemingly simple example:

    class EmptyClass:
    pass

    This is the “emptiest” custom class we can define in Python, as we did not define attributes or methods. It is so empty you would think you can do nothing with it.

    However, this is not the case. For example, Python will not complain if you try to create an instance of this class or even compare two instances for equality:

    empty_instance = EmptyClass()
    another_empty_instance = EmptyClass()

    >>> empty_instance == another_empty_instance
    False

    Of course, this is not magic. Simply, leveraging a standard object interface, any object in Python inherits some default attributes and methods that allow the user to always have a minimal set of possible interactions with it.

    While these methods may seem hidden, they are not invisible. To access the available methods, including the ones assigned by Python itself, just use the dir() built-in function. For our empty class, we get:

    >>> dir(EmptyClass)
    ['__class__', '__delattr__', '__dict__', '__dir__', '__doc__', '__eq__',
    '__format__', '__ge__', '__getattribute__', '__gt__', '__hash__', '__init__',
    '__init_subclass__', '__le__', '__lt__', '__module__', '__ne__', '__new__',
    '__reduce__', '__reduce_ex__', '__repr__', '__setattr__', '__sizeof__',
    '__str__', '__subclasshook__', '__weakref__']

    It is these methods that can explain the behaviour we observed earlier. For example, since the class actually has an __init__ method we should not be surprised that we can instantiate an object of the class.

    Meet the Dunder Methods

    All the methods shown in the last output belongs to the special group of — guess what — dunder methods. The term “dunder” is short for double underscore, referring to the double underscores at the beginning and end of these method names.

    They are special for several reasons:

    1. They are built into every object: every Python object is equipped with a specific set of dunder methods determined by its type.
    2. They are invoked implicitly: many dunder methods are triggered automatically through interactions with Python’s native operators or built-in functions. For example, comparing two objects with == is equivalent to calling their __eq__ method.
    3. They are customizable: you can override existing dunder methods or define new ones for your classes to give them custom behavior while preserving their implicit invocation.

    For most Python developers, the first dunder they encounter is __init__, the constructor method. This method is automatically called when you create an instance of a class, using the familiar syntax MyClass(*args, **kwargs) as a shortcut for explicitly calling MyClass.__init__(*args, **kwargs).

    Despite being the most commonly used, __init__ is also one of the most specialized dunder methods. It does not fully showcase the flexibility and power of dunder methods, which can allow you to redefine how your objects interact with native Python features.

    Make an object pretty

    Let us define a class representing an item for sale in a shop and create an instance of it by specifying the name and price.

    class Item:
    def __init__(self, name: str, price: float) -> None:
    self.name = name
    self.price = price


    item = Item(name="Milk (1L)", price=0.99)

    What happens if we try to display the content of the item variable? Right now, the best Python can do is tell us what type of object it is and where it is allocated in memory:

    >>> item
    <__main__.Item at 0x00000226C614E870>

    Let’s try to get a more informative and pretty output!

    Photo by Shamblen Studios on Unsplash

    To do that, we can override the __repr__ dunder, which output will be exactly what gets printed when typing a class instance in the interactive Python console but also — as soon as the other dunder method __str__ is not override — when attempting a print() call.

    Note: it is a common practice to have __repr__ provide the necessary syntax to recreate the printed instance. So in that latter case we expect the output to be Item(name=”Milk (1L)”, price=0.99).

    class Item:
    def __init__(self, name: str, price: float) -> None:
    self.name = name
    self.price = price

    def __repr__(self) -> str:
    return f"{self.__class__.__name__}('{self.name}', {self.price})"


    item = Item(name="Milk (1L)", price=0.99)

    >>> item # In this example it is equivalent also to the command: print(item)
    Item('Milk (1L)', 0.99)

    Nothing special, right? And you would be right: we could have implemented the same method and named it my_custom_repr without getting indo dunder methods. However, while anyone immediately understands what we mean with print(item) or just item, can we say the same for something like item.my_custom_repr()?

    Define interaction between an object and Python’s native operators

    Imagine we want to create a new class, Grocery, that allows us to build a collection of Item along with their quantities.

    In this case, we can use dunder methods for allowing some standard operations like:

    1. Adding a specific quantity of Item to the Grocery using the + operator
    2. Iterating directly over the Grocery class using a for loop
    3. Accessing a specific Item from the Grocery class using the bracket [] notation

    To achieve this, we will define (we already see that a generic class do not have these methods by default) the dunder methods __add__, __iter__ and __getitem__ respectively.

    from typing import Optional, Iterator
    from typing_extensions import Self


    class Grocery:

    def __init__(self, items: Optional[dict[Item, int]] = None):
    self.items = items or dict()

    def __add__(self, new_items: dict[Item, int]) -> Self:

    new_grocery = Grocery(items=self.items)

    for new_item, quantity in new_items.items():

    if new_item in new_grocery.items:
    new_grocery.items[new_item] += quantity
    else:
    new_grocery.items[new_item] = quantity

    return new_grocery

    def __iter__(self) -> Iterator[Item]:
    return iter(self.items)

    def __getitem__(self, item: Item) -> int:

    if self.items.get(item):
    return self.items.get(item)
    else:
    raise KeyError(f"Item {item} not in the grocery")

    Let us initialize a Grocery instance and print the content of its main attribute, items.

    item = Item(name="Milk (1L)", price=0.99)
    grocery = Grocery(items={item: 3})

    >>> print(grocery.items)
    {Item('Milk (1L)', 0.99): 3}

    Then, we use the + operator to add a new Item and verify the changes have taken effect.

    new_item = Item(name="Soy Sauce (0.375L)", price=1.99)
    grocery = grocery + {new_item: 1} + {item: 2}

    >>> print(grocery.items)
    {Item('Milk (1L)', 0.99): 5, Item('Soy Sauce (0.375L)', 1.99): 1}

    Friendly and explicit, right?

    The __iter__ method allows us to loop through a Grocery object following the logic implemented in the method (i.e., implicitly the loop will iterate over the elements contained in the iterable attribute items).

    >>> print([item for item in grocery])
    [Item('Milk (1L)', 0.99), Item('Soy Sauce (0.375L)', 1.99)]

    Similarly, accessing elements is handled by defining the __getitem__ dunder:

    >>> grocery[new_item]
    1

    fake_item = Item("Creamy Cheese (500g)", 2.99)
    >>> grocery[fake_item]
    KeyError: "Item Item('Creamy Cheese (500g)', 2.99) not in the grocery"

    In essence, we assigned some standard dictionary-like behaviours to our Grocery class while also allowing some operations that would not be natively available for this data type.

    Enhance functionality: make classes callable for simplicity and power.

    Let us wrap up this deep-dive on dunder methods with a final eample showcasing how they can be a powerful tool in our arsenal.

    Photo by Marek Studzinski on Unsplash

    Imagine we have implemented a function that performs deterministic and slow calculations based on a certain input. To keep things simple, as an example we will use an identity function with a built-in time.sleep of some seconds.

    import time 


    def expensive_function(input):
    time.sleep(5)
    return input

    What happens if we run the function twice on the same input? Well, right now calculation would be executed twice, meaning that we twice get the same output waiting two time for the whole execution time (i.e., a total of 10 seconds).

    start_time = time.time()

    >>> print(expensive_function(2))
    >>> print(expensive_function(2))
    >>> print(f"Time for computation: {round(time.time()-start_time, 1)} seconds")
    2
    2
    Time for computation: 10.0 seconds

    Does this make sense? Why should we do the same calculation (which leads to the same output) for the same input, especially if it’s a slow process?

    One possible solution is to “wrap” the execution of this function inside the __call__ dunder method of a class.

    This makes instances of the class callable just like functions — meaning we can use the straightforward syntax my_class_instance(*args, **kwargs) — while also allowing us to use attributes as a cache to cut computation time.

    With this approach we also have the flexibility to create multiple process (i.e., class instances), each with its own local cache.

    class CachedExpensiveFunction:

    def __init__(self) -> None:
    self.cache = dict()

    def __call__(self, input):
    if input not in self.cache:
    output = expensive_function(input=input)
    self.cache[input] = output
    return output
    else:
    return self.cache.get(input)


    start_time = time.time()
    cached_exp_func = CachedExpensiveFunction()

    >>> print(cached_exp_func(2))
    >>> print(cached_exp_func(2))
    >>> print(f"Time for computation: {round(time.time()-start_time, 1)} seconds")
    2
    2
    Time for computation: 5.0 seconds

    As expected, the function is cached after the first run, eliminating the need for the second computation and thus cutting the overall time in half.

    As above mentioned, we can even create separate instances of the class, each with its own cache, if needed.

    start_time = time.time()
    another_cached_exp_func = CachedExpensiveFunction()

    >>> print(cached_exp_func(3))
    >>> print(another_cached_exp_func (3))
    >>> print(f"Time for computation: {round(time.time()-start_time, 1)} seconds")
    3
    3
    Time for computation: 10.0 seconds

    Here we are! A simple yet powerful optimization trick made possible by dunder methods that not only reduces redundant calculations but also offers flexibility by allowing local, instance-specific caching.

    My final considerations

    Dunder methods are a broad and ever-evolving topic, and this writing does not aim to be an exhaustive resource on the subject (for this purpose, you can refer to the 3. Data model — Python 3.12.3 documentation).

    My goal here was rather to explain clearly what they are and how they can be used effectively to handle some common use cases.

    While they may not be mandatory for all programmers all the time, once I got a good grasp of how they work they have made a ton of difference for me and hopefully they may work for you as well.

    Dunder methods indeed are a way to avoid reinventing the wheel. They also align closely with Python’s philosophy, leading to a more concise, readable and convention-friendly code. And that never hurts, right?


    Dunder Methods: The Hidden Gems of Python was originally published in Towards Data Science on Medium, where people are continuing the conversation by highlighting and responding to this story.

    Originally appeared here:
    Dunder Methods: The Hidden Gems of Python

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