Archive by Author

Father John Misty – Chateau Lobby #4 (in C for Two Virgins)

29 Jul

“Chateau Lobby #4” is the second single from I Love You, Honeybear, following “Bored in the USA.” Like most of the album, it is inspired by his wife.

[It’s] about Emma and I running around L.A. when we first met. This mariachi band [on the song] is part of the atmosphere here in L.A. You just hear it in the air.

In addition to referencing an iconic Hollywood touchstone, the track’s title winks towards Leonard Cohen’s song “Chelsea Hotel No. 2”, which also describes a sexual liaison in a storied hotel famous for its artistic guests.

Additionally, the song’s subtitle references Unfinished Music No. 1: Two Virgins, the debut album by Beatle John Lennon and his future wife, Yoko Ono, recorded the night they became a couple and right before they had sex with each other for the first time. The couple was also known for their antics in hotels, having conducted two week-long “bed-ins” in 1969, in peaceful protest for the Vietnam War.

Who’s Bad // O.B.F

22 Jul

I am a dub fundamentalist //
I experience this feeling like some people enjoy a fresh shower !

// please, enjoy this gem from OBF Sound System, Album Wild

O.B.F : https://www.facebook.com/pages/OBF-So…
WWW.OBFDUB.NET /// TWITTER @OBFsoundsystem /// INSTAGRAM @OBFsoundsystem
VENI VIDI VJ : http://www.venividivj.com /// https://www.facebook.com/venividivj
We d like to thanks the VENI VIDI VJ CREW FOR THEIR WORK! THEY VE BEEN WORKING FOR A COUPLE OF MONTH ON THIS PROJECT !RESPECT TO THEM!

Clarence Clarity – Buck-Toothed Particle Smashers

15 Jul

A glitchy trippy one !

Journey through the layers of the mind // Memo Akten

8 Jul

A visualisation of what’s happening inside the mind of an artificial neural network.

In non-technical speak:

An artificial neural network can be thought of as analogous to a brain (immensely, immensely, immensely simplified. nothing like a brain really). It consists of layers of neurons and connections between neurons. Information is stored in this network as ‘weights’ (strengths) of connections between neurons. Low layers (i.e. closer to the input, e.g. ‘eyes’) store (and recognise) low level abstract features (corners, edges, orientations etc.) and higher layers store (and recognise) higher level features. This is analogous to how information is stored in the mammalian cerebral cortex (e.g. our brain).

Here a neural network has been ‘trained’ on millions of images – i.e. the images have been fed into the network, and the network has ‘learnt’ about them (establishes weights / strengths for each neuron).

Then when the network is fed a new unknown image (e.g. me), it tries to make sense of (i.e. recognise) this new image in context of what it already knows, i.e. what it’s already been trained on.

This can be thought of as asking the network “Based on what you’ve seen / what you know, what do you think this is?”, and is analogous to you recognising objects in clouds or ink / rorschach tests etc.

The effect is further exaggerated by encouraging the algorithm to generate an image of what it ‘thinks’ it is seeing, and feeding that image back into the input. Then it’s asked to reevaluate, creating a positive feedback loop, reinforcing the biased misinterpretation.

This is like asking you to draw what you think you see in the clouds, and then asking you to look at your drawing and draw what you think you are seeing in your drawing etc,

That last sentence was actually not fully accurate. It would be accurate, if instead of asking you to draw what you think you saw in the clouds, we scanned your brain, looked at a particular group of neurons, reconstructed an image based on the firing patterns of those neurons, based on the in-between representational states in your brain, and gave *that* image to you to look at. Then you would try to make sense of (i.e. recognise) *that* image, and the whole process will be repeated.

We aren’t actually asking the system what it thinks the image is, we’re extracting the image from somewhere inside the network. From any one of the layers. Since different layers store different levels of abstraction and detail, picking different layers to generate the ‘internal picture’ hi-lights different features.

All based on the google research by Alexander Mordvintsev, Software Engineer, Christopher Olah, Software Engineering Intern and Mike Tyka, Software Engineer

Coda

1 Jul

A lost soul stumbles drunken through the city. In a park, Death finds him and shows him many things.

RP Boo – Freezaburn

24 Jun

‘Freezaburn’ written and produced by Kavain Space.
From the album “Fingers, Bank Pads & Shoe Prints” (Planet Mu, 29th June 2015)

Lightspeed // Darren Pearson

17 Jun

Cinematographer/Editor: Darren Pearson
Sound editor: Ryan Gerle
Sound re-recording mixer: Brennan Gerle
Music: Dead Horse Beats “Clouds” – Single People

Adavi Donga /Tegulu Movie

10 Jun

A  bit of Indian Bollywood psychedelia !

1985 Starring : Chiranjeevi, Radha, Rao Gopal Rao, Sharada, Jaggayya, Allu Rama Lingaiah,Directed by K. Raghavendra Rao, Produced by Gopi Chalasani, Music by K. Chakravarthy

Clap! Clap! – “Kuj Yato”

3 Jun

drop an ear and an eye to this Neo Shamanik Vaudoo electro style !

Toddla T Sound – “Acid”

27 May