HBM149: The Daily Blast [Neutrinowatch]

Neutrinowatch logo. Designed by Jeff Emtman

 

Please note: This is a dynamically generated podcast episode. It changes every day.

This is a short episode from the new show Neutrinowatch: A Daily Generative Podcast.  Each episode of Neutrinowatch changes a lil’ bit every day.  

This episode, The Daily Blast, features two computerized voices (Wendy and Ivan), who share the day’s news. 

To get new versions of this episode, you’ll need to either stream the audio in your podcast app/web browser, or just delete and re-download the episode.  It’s updated every 24 hours.  Note: Due to Spotify’s policy of downloading and rehosting podcast audio, this episode won’t work very well on Spotify.  Most other podcast apps should handle it well though. 

Neutrinowatch is a project of Jeff Emtman (Here Be Monsters’ host), and Martin Zaltz Austick (Answer Me This, Song By Song, Pale Bird and others). 

If you’d like to know more about generative podcasting and the story of Neutrinowatch, listen to So What Exactly is Episode 149? and Jeff’s blog post called The Start of Generative Podcasting?

Neutrinowatch is available on most podcast apps, and as of publish date, there’s currently 6.5 episodes available.  Each updates daily. 

Producers: Jeff Emtman and Martin Zaltz Austwick

Music:The Black Spot

 

HBM146: Theodora

Computer generated text projected on a computer generated waves. Image by Jeff Emtman.

 

How does a computer learn to speak with emotion and conviction? 

Language is hard to express as a set of firm rules.  Every language rule seems to have exceptions and the exceptions have exceptions etcetera.  Typical, “if this then that” approaches to language just don’t work.  There’s too much nuance. 

But each generation of algorithms gets closer and closer. Markov chains were invented in the 1800’s and rely on nothing more than basic probabilities.  It’s a simple idea, just look at an input (like a book), and learn the order in which words tend to appear.  With this knowledge, it’s possible to generate new text in the same style of the input, just by looking up the probability of words that are likely to follow each other.  It’s simple and sometimes half decent, but not effective for longer outputs as this approach tends to lack object permanence and generate run-on sentences. Markov models are  used today in predictive text phone keyboards, but can also be used to predict weather, stock prices, etc. 

There’ve been plenty of other approaches to language generation (and plenty of mishaps as well).  A notable example is CleverBot, which chats with humans and heavily references its previous conversations to generate its results.  Cleverbot’s chatting can sometimes be eerily human, perfectly regurgitating slang, internet abbreviations, obscure jokes.  But it’s kind of a sly trick at the end of the day, and, as with Markov chains, Cleverbot’s AI still doesn’t always grasp grammar and object permanence. 

In the last decade or two, there’s been an explosion in the abilities of a different kind of AI, the Artificial Neural Network.  These “neural nets” are modelled off the way that brains work, running stimuli through their “neurons” and reinforcing paths that yield the best results. 

The outputs are chaotic until they are properly “trained.” But as the training reaches its optimal point, a model emerges that can efficiently process incoming data and spit out output that incorporates the same kinds of nuance, strangeness, and imperfection that you expect to see in the natural world.  Like Markov chains, neural nets have a lot of applications outside language too. 

But these neural networks are complicated, like a brain.  So complicated, in fact, that few try to dissect these trained models to see how they’re actually working.  And tracing it backwards is difficult, but not impossible

If we temporarily ignore the real risk that sophisticated AI language models pose for societies attempting to separate truth from fiction these neural net models allow for some interesting possibilities, namely extracting the language style of a large body of text and using that extracted style to generate new text that’s written in the voice of the original text. 

In this episode, Jeff creates an AI and names it “Theodora.”  She’s trained to speak like a presenter giving a Ted Talk.  The result varies from believable to utter absurdity and causes Jeff to reflect on the continued inability of individuals, AI, and large nonprofits to distinguish between good ideas and absolute madness

 

Three bits of raw output from Theodora. These were text files were sent to Google Cloud’s TTS service for voicing.

 

On the creation of Theodora:  Jeff used a variety of free tools to generate Theodora in the episode.  OpenAI’s Generative Pre-trained Transformer 2 (GPT-2) was turned into the Python library GPT2 Simple by Max Woolf, who also created a tutorial demonstrating how to train the model for free using Google Colab.  Jeff used this tutorial to train Theodora on a corpus of about 900 Ted Talk transcripts for 5,000 training steps. Jeff then downloaded the model locally and used JupyterLab (Python) to generate new text.  That text was then sent to Google Cloud’s Text-To-Speech (TTS) service where it was converted to the voice heard on the episode. 

Producer: Jeff Emtman
Music: Liance

 
 

James Li aka. “Liance.” Photo by Alex Kozobolis

This Painting Doesn't Dry album art (4000 x 4000).jpg

Sponsor: Liance

Independent musician James Li has just released This Painting Doesn’t Dry, an album about the relationship between personal experiences and the story of humanity as a whole.

James made this album while he anxiously watched his homeland of Hong Kong fall into political crisis.

HBM066: What Jacob Heard

Jacob Sutton.

Jacob Sutton.

 

Jacob Sutton loved going to church when he was a little boy. He sang in the choir, and when he got older he led Bible studies and helped teach Sunday school classes. Eventually he learned to speak in tongues. Jacob grew up Pentecostal, the oldest son of a deacon. His father used to work with people who believed they were possessed by demons, and would use prayer and Bible readings to cast the wicked spirits out. All of his life, Jacob knew that demons and The Devil were very real, and that they could possess his body, if he allowed them.

Content Note: Explicit Content

Jacob felt deeply connected to his male friends when he was young.  As a teenager, he realized that what he felt was more than friendship. But Jacob’s church was, like most Pentecostal congregations, staunchly against homosexuality. Jacob’s parents, pastor, and peers all talked about homosexuality as if it was a terrible disease that could only be cured by God. For years Jacob tried to hide his attraction to other boys, and became increasingly involved in his church in the hopes that he could just work through ‘the problem’.

 

Jacob's senior picture.

Jacob at a school dance.

 

In his freshman year of high school, Jacob was feeling helpless against his gay attractions. Exasperated, he asked aloud for a demon to come into his body. He figured he was already evil, so he might as well “get something out of it”.

A few months later, just as he was about to fall asleep, he heard a voice in his ear. Jacob was frozen in fear. He could not speak. The voice was dark, gravelly, and spoke a language he’d never heard before. Jacob knew in that moment that it was the demon he’d invited into his body.  It left only once he spoke the word “Jesus.” He woke up his father and they prayed together.

"Father God, my son was visited by a demon tonight. 
We need your protection, so that he can go to sleep...
We ask that you give him the rest of the righteous."

 The next day, Jacob signed up for “spiritual boot camp”. It was a three day retreat for members of the congregation who hoped to make a life change, led by Jacob’s father. For three days, Jacob joined fellow congregants in prayer and worship, hoping this would be the beginning of his healing from gayness. After the weekend, Jacob didn’t feel “cured”, but he did feel like he was closer to becoming the man God intended him to be.

That was 13 years ago. Jacob has since stopped going to church and believing in God and Satan. He eventually came out to his family once and for all, and this time, he was met with open arms. Today he lives in Seattle and studies fashion design. And as of the time of this episode release, Jacob and his boyfriend have been together for almost three years.

This episode was produced by Bethany Denton.

Music: Serocell, AHEE

 

ABC Report on Pentecostalism and speaking in tongues.