Thursday, December 27, 2018

I've not seen a response to a movie like Bird Box in a long time

In the past two days I've encountered a several random people talking about Bird Box on such diverse platforms as Instagram, Facebook and even during a match on CS:GO (an online FPS). It seems to be effecting a great many people. If you haven't seen Bird Box, it appears to be something that you need to see. I've seen it. This movie sticks with you. How Netflix captured this dark gem, I don't know.



Thursday, December 13, 2018

There's a box back there, a stranger tells me from his car

This morning, while walking Toebzilla along a main interior road, a man in his twenties drove his white car out of a rotary in my direction in the far lane.  I only took a glance at this vehicle, then diverted my attention back to the act of walking my dog.

Hmmm, I get a weird feeling, so I look back at the now slowing white car.  The man has his window down and seems as though he's trying to get my attention.  When we make eye contact, he announces to me, "There's a box back there", as he points off into the distance behind his car.

Without missing a beat, I yell back, "Alright!" in a tone that suggests ambivalent interest.  The man appears to be satisfied that he dutifully notified someone of this extremely important information.  He drives on his way.

He has indeed accomplished his mission, as I'm mildly curious regarding the presence of a box.  Is there something in the road that poses a risk to other drivers?  Is it a dropped package on the side of the road that was supposed to be delivered to a neighbor's home?  Why would this man be so concerned about a box "back there"?  

Remembering which way he had entered into the rotary, I turn around to walk in that direction to look for this mystery box.  Toebzilla resisted at first.  He knows our regular route.  After a brief protest, he relents to walk by my side.

I see nothing out-of-the-ordinary.  There's no box on this or that side of the road, nor within the lanes. Then, as I round the corner to walk down another street in the direction of my home, I see it.  I see the only thing out of place.  It's not a box.

It's a lonely shopping cart abandoned on the side of the road, across the street.  I look around with more intent to see if there was anything else even remotely nearby.  Nothing. 

Shopping cart
Now, a thought came into my head that may be a leap in logic, but not necessarily an illogical leap.  Was the object about which this man was so earnestly trying to warn me not a box at all?  Rather, was it this shopping cart?  If so, why would this guy care so much about something so innocuous?  Did he hit it with his vehicle?  Did he already move it out of the way?  Did he have a brainfart, referring to this cart as a box?  

I will never know.  After realizing there really was nothing of interest and no good-citizen task being demanded of me, I lead Toebzilla back home.  One thing is certain.  I am now in possession of a completely useless bit of information.  This is too heavy of a burden to bear on my own.  I must now share this goofy experience with the world.

Saturday, December 01, 2018

Plural of the word "Octopus"? "Octopodes" of course! Well, kinda.

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Plural of the word "Octopus"? "Octopodes" of course! Well, kinda. Most people just say "Octopuses" and some others say "Octopi". Apparently, "Octopus" isof Greek origin, so use of "i" is supposedly incorrect, but "-odes" is correct. In English, we just add "-es" like everything else that ends in "-s". So, "Octopuses" it is!!!

Cacti, Cactuses and Cactus are all correct as plural for the word "Cactus". Same is not true for the word "Octopus".


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Saturday, November 24, 2018

Beary cake #cake #bear #bearcake #parisbaguette #pastry #sweetbearcake #cupertino #cupertinoeats #cupertinoca #norcal #California #southbay #southsanfranciscobay #bayarea #siliconvalley #beareyes #eyes #food #foodporn


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Thursday, November 22, 2018

Tuesday, November 13, 2018

#PalmTree #reflection #car #rearwindow #🌲 #tree #palm #automobiles


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Sunday, November 11, 2018

Delicious Korean Barbecue @ Hansun BBQ


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Tuesday, October 23, 2018

We are all lying to ourselves


"On any given day, 80% of us are lying to ourselves about lying to ourselves", Tasha Eurich

Sunday, October 21, 2018

Machine Learning is artificial, but it's not necessarily intelligent

Machine Learning is "artificial", but it's not really intelligent from a certain point of view. There appears to be a trend going on in the industry right now that uses the terms "Machine Learning" and "Artificial Intelligence" interchangeably (or at least sees Machine Learning is a type of AI).

Intelligence is the often measured as the ability to see connections between different things.  Machine Learning doesn't see connections.  It just uses CPU time for brute-force analysis to find connections based on many iterative cycles of failures and successes in stages.  Early failures are often permanently disregarded, and early successes given too much value, even if they follow deadend paths . Machine Learning typically is not able to see that future success could actually come from pathways where it experienced early failure, unless there is human intervention of some sort.

This video should scare all of us, and not because of the wolves


Amazon learned a similar lesson on its own regarding Machine Learning, as detailed in the following venturebeat.com article. The article describes how Amazon had to scrap their Machine Learning program for hiring people. The program's purpose was to remove gender bias in hiring of new employees. However, their program developed gender bias on its own, despite the development team's best efforts to remove bias. Article: Amazon scrapped a secret AI recruitment tool that showed bias against women [archive.org].

This article on Volt DB (6 Reasons Why Your Machine Learning Project Will Fail to Get Into Production [archive.org]) goes into common problems with Machine Learning projects. It boils down to data quality. The problem is, data from the real world will always be of poor quality.