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Introducing Ambient Context Aware AI on your computer. I have just scraped the whole Discord with it and made a summary of pain points ppl have Features: - Sees the whole screen ( even parts you need to scroll to) - long context window - Has memory Link:

15,383 Aufrufe • vor 1 Jahr •via X (Twitter)

10 Kommentare

Profilbild von Robert Lukoszko — e/acc
Robert Lukoszko — e/accvor 1 Jahr

link:

Profilbild von Robert Lukoszko — e/acc
Robert Lukoszko — e/accvor 1 Jahr

I'll start sending the beta sign up starting tomorrow!

Profilbild von Robert Lukoszko — e/acc
Robert Lukoszko — e/accvor 1 Jahr

account: @ambient_context

Profilbild von Robert Lukoszko — e/acc
Robert Lukoszko — e/accvor 1 Jahr

@ambient_context DM me if you want to join Discord with more frequent updates! I AM SO FUCKING BACK!

Profilbild von Max Brenner
Max Brennervor 1 Jahr

this is sick

Profilbild von Robert Lukoszko — e/acc
Robert Lukoszko — e/accvor 1 Jahr

Thanks man!

Profilbild von Ciobotaru Ionut
Ciobotaru Ionutvor 1 Jahr

Works with Skype also? (don’t ask… :) )

Profilbild von Robert Lukoszko — e/acc
Robert Lukoszko — e/accvor 1 Jahr

Yep

Profilbild von Dan Mac
Dan Macvor 1 Jahr

“Sees the whole screen, even parts you need to scroll too” What? How? What is this sorcery?

Profilbild von Robert Lukoszko — e/acc
Robert Lukoszko — e/accvor 1 Jahr

Years of heavy engineering

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200,729 Aufrufe • vor 1 Jahr