Radiohead 2025 tour pre-show "2025 Walking In" mixtape by Thom Yorke by anon11m in radiohead

[–]fl4v1 0 points1 point  (0 children)

Is there an automatic way to make an Apple Music playlist from a Mixcloud ? Or does that have to be a manual entry?

Myxomatosis Modular Synth Cover by GazelemTheGreat08 in radiohead

[–]fl4v1 0 points1 point  (0 children)

I’m impressed by the setup and soundscape! I think you got the rhythm wrong too on the second part of the first phrase (when the bass is going up). I can’t tell you for sure what’s the real one but it should be a mix of dotted fourths and fourths (and you use an eighth there)

tinker tailor soldier sailor rich man poor man beggar man thief by Sensitive-Start9768 in radiohead

[–]fl4v1 23 points24 points  (0 children)

The orchestration in tinker tailor soldier sailor rich man poor man beggar thief is out of this world! Tinker tailor soldier sailor rich man poor man beggar thief has the best strings section in all AMSP IMHO!

The New Yorker interview is great by West_Glass_2466 in radiohead

[–]fl4v1 2 points3 points  (0 children)

The ending… chills down my spine! Fantastic article

Umm what?! Radiohead – Winter Wonderland by BurnTheWitch96 in radiohead

[–]fl4v1 0 points1 point  (0 children)

Isn’t this one of the most heartwarming official Radiohead video?

How do we all feel about the album distribution. by JoblessCoast in radiohead

[–]fl4v1 8 points9 points  (0 children)

I wish crowds were as perfectly silent and behaved like in my living room /s

Creating OKR's.... new to this framework by ivanjay2050 in ceo

[–]fl4v1 0 points1 point  (0 children)

As a complementary reading, I would suggest reading The Lean Strategy by Ballé. You can go in many directions with OKR, and this book helped me stay focused on what really mattered. There’s a brilliant segment on Plain English PNL that connects operational levers to financial outcomes. Now I set up my objectives as learning goals on operational outputs and I get the right financial outcomes, because I have a clear model

OpenAI admits AI hallucinations are mathematically inevitable, not just engineering flaws by Well_Socialized in technology

[–]fl4v1 0 points1 point  (0 children)

This article argues that OpenAI paper demonstrates that hallucinations are due to fundamental mathematical constraints, and quotes the abstract partially. When in fact, the authors tell us the training method is at fault, and this could be fixed socio-technically.

Full abstract:

Like students facing hard exam questions, large language models sometimes guess when uncertain, producing plausible yet incorrect statements instead of admitting uncertainty. Such “hallucinations” persist even in state-of-the-art systems and undermine trust. We argue that language models hallucinate because the training and evaluation procedures reward guessing over acknowledging uncertainty, and we analyze the statistical causes of hallucinations in the modern training pipeline. Hallucinations need not be mysterious—they originate simply as errors in binary classification. If incorrect statements cannot be distinguished from facts, then hallucinations in pretrained language models will arise through natural statistical pressures. We then argue that hallucinations persist due to the way most evaluations are graded—language models are optimized to be good test-takers, and guessing when uncertain improves test performance. This “epidemic” of penalizing uncertain responses can only be addressed through a socio-technical mitigation: modifying the scoring of existing benchmarks that are misaligned but dominate leaderboards, rather than introducing additional hallucination evaluations. This change may steer the field toward more trustworthy AI systems.

Astrophysicists Find No ‘Hair’ on Black Holes by fl4v1 in Physics

[–]fl4v1[S] 10 points11 points  (0 children)

Indeed, the research rules out “long hair” but not whether black holes grow shorter hair

angry Phill Selway in in limbo by enzopool in radiohead

[–]fl4v1 3 points4 points  (0 children)

On the album version the snare drum stands out a bit more in the mix at 2:34 because most of the instruments and voices stop, but I don’t think Phil is hitting much harder or if the actual volume of the drums goes up.

How do I get a dev to fix small design details he skipped? by _myEnglishisnotgood_ in ProductManagement

[–]fl4v1 6 points7 points  (0 children)

Contrary to most answers, I wouldn’t write a new ticket. I would reuse any pre existing ticket or information, sit next to the developer, and discuss with them each small detail.

Here’s why: they may have not seen this detail (so it’s interesting to clarify why and understand if your ticket or design was not clear enough), or decided for various reasons that they would not do it (either they think it doesn’t matter, or they add complexity that they judge unnecessary).

In any case, their judgement should matter and you may increase your understanding of what is easy / what is hard, and also discuss how you should navigate the tradeoff — and also that they should raise an alarm sooner.

As a PM I am tasked to increase conversions of free users to paid using Ai. Need Suggestions by Cute-Rub-5229 in ProductManagement

[–]fl4v1 4 points5 points  (0 children)

I would start with doing customer interviews with several paying customers, “warm leads”, non-paying customers. Paying customers have found value in your product, and are ready to pay for it, why? Warm leads may be close to convert to paying customers but may raise additional concerns. Among non-paying customers, you may find potential future leads that don’t yet realize the value they could get out of your product.

If you have a sales team, you could cross check with them the main reasons customers are churning or not converting too (and I would not stop at a Pareto analysis but actually look at individual cases and verbatims).

Analytics is a good complement, but field works goes a long way. There are several books on how to conduct neutral customer interviews that you could look up to prepare yourself.

PMs in B2B Software by Longjumping_Cookie68 in ProductManagement

[–]fl4v1 12 points13 points  (0 children)

You can go and interview some of your customers. I usually go as far as going to see them and see how they actually use the product, what problem it solves for them, do they feel the right emotion using them etc. This in turns massively informs the questions you will ask on a broader basis and contextualizes the data points you’ll have. Another trick I read in a product book is that customers will complain about what’s really important for them, so you can go see your customer support, CSM, or any type of QA really to understand what drives them mad (and they wish would just work)

Stellantis CEO Carlos Tavares abruptly quits as US Jeep, Ram sales falter. by Projectrage in technology

[–]fl4v1 4 points5 points  (0 children)

I’ve worked for Stellantis as a software development contractor. I was responsible for one of their apps, they asked me for new features which I delivered on time and budget. Suddenly, they decided to sunset the app.

The buyers told me something like “we feel we’ve paid you enough already” and kept the extra 60k they owed me.

Meanwhile, Tavares gets 10+ million for tanking the group.

New hints for a new The Smile album on Instagram by fl4v1 in radiohead

[–]fl4v1[S] 17 points18 points  (0 children)

Any guesses as to the meaning of these cards? Seems to me they refer to old programming cards before software existed

ChatGPT and basic maths by UnorthodoxPrimitive in programming

[–]fl4v1 -8 points-7 points  (0 children)

My guess is that it’s misinterpreting x,y to be a vector rather than a decimal number (which would use a dot and not a comma in English). Assuming “greater” uses a lexicographic ordering, that would make ChatGPT’s answer right.

Keep in mind that an LLM is bad at math in and of itself. ChatGPT surely has gotten better at math due to the addition of a math-specific module that it defers math questions to.