started gait guardian

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2026-01-10 14:06:37 -06:00
parent d6eaae947a
commit a7cbe224c7
2 changed files with 12 additions and 2 deletions

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@@ -68,9 +68,10 @@ There was no time to test, hardly any to breathe, and before I knew it, we were
finger hovering over the large play button. Time paused. I heard the buzzer and pressed play. Success.
In two minutes and thirty seconds, we became league champions.
But just seven months back, I didn't know what a variable was. I was fully into music, and programming was not even an afterthought.
It was almost hard to believe that seven months back, I didn't know what a variable was.
I was fully into music, and programming was not even an afterthought.
It was mere coincidence that my neighbor (and good friend) decided to start a robotics team, and given the minimal investment, I
joined. Like nearly all of my endeavors, my FTC learning started with a Google search. I was learning at a snail's pace, and it
joined. Like nearly all of my endeavors, my FTC journey began with a Google search. I was learning at a snail's pace, and it
had taken me two months to simply make a motor move. Soon, I was hooked. Like a sponge, I was absorbing everything I had to learn,
and I had eventually taught myself enough Java to become a functional FTC programmer.
@@ -80,5 +81,14 @@ The joy I experienced wasn't just from our robot picking up and scoring pixels,
was resulting in a tangible output that I could witness. It was that moment where I decided to pursue a STEM career. I was
no longer just a high school student, I was a STEM student, and I was ready to help change the world.
But that readiness was tested in September 2024. In a spur of ambitious insanity,
I had committed to building a machine learning model to predict gait patterns in Parkinson's Disease for my sophomore-year
Science Fair project. The problem: I had no clue how to. And so I learned. Python syntax, NumPy arrays, signal filtering,
feature extraction, model architectures. I had entered a brand new domain, and each concept seemed to confuse me in a different way.
After two months of painfully laborious learning, coding, and debugging, I was finally able to transform raw sensor data into a
functional and accurate classification model. Somewhere between the first error message and the final 96\% accuracy, I
had managed to absorb a new discipline by pushing myself into unfamiliar waters.
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