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One small step for (a) man

Instructor (Andrew Ng): Okay. Good morning. Welcome to CS229, the machine learning class. So what I wanna do today is just spend a little time going over the logistics of the class, and then we'll start to talk a bit about machine learning.

By way of introduction, my name's Andrew Ng and I'll be instructor for this class. And so I personally work in machine learning, and I've worked on it for about 15 years now, and I actually think that machine learning is the most exciting field of all the computer sciences. So I'm actually always excited about teaching this class. Sometimes I actually think that machine learning is not only the most exciting thing in computer science, but the most exciting thing in all of human endeavor, so maybe a little bias there.

I also want to introduce the TAs, who are all graduate students doing research in or related to the machine learning and all aspects of machine learning. Paul Baumstarck works in machine learning and computer vision. Catie Chang is actually a neuroscientist who applies machine learning algorithms to try to understand the human brain. Tom Do is another PhD student, works in computational biology and in sort of the basic fundamentals of human learning. Zico Kolter is the head TA — he's head TA two years in a row now — works in machine learning and applies them to a bunch of robots. And Daniel Ramage is — I guess he's not here — Daniel applies learning algorithms to problems in natural language processing.

So you'll get to know the TAs and me much better throughout this quarter, but just from the sorts of things the TA's do, I hope you can already tell that machine learning is a highly interdisciplinary topic in which just the TAs find learning algorithms to problems in computer vision and biology and robots and language. And machine learning is one of those things that has and is having a large impact on many applications.

So just in my own daily work, I actually frequently end up talking to people like helicopter pilots to biologists to people in computer systems or databases to economists and sort of also an unending stream of people from industry coming to Stanford interested in applying machine learning methods to their own problems.

So yeah, this is fun. A couple of weeks ago, a student actually forwarded to me an article in "Computer World" about the 12 IT skills that employers can't say no to. So it's about sort of the 12 most desirable skills in all of IT and all of information technology, and topping the list was actually machine learning. So I think this is a good time to be learning this stuff and learning algorithms and having a large impact on many segments of science and industry.

I'm actually curious about something. Learning algorithms is one of the things that touches many areas of science and industries, and I'm just kind of curious. How many people here are computer science majors, are in the computer science department? Okay. About half of you. How many people are from EE? Oh, okay, maybe about a fifth. How many biologers are there here? Wow, just a few, not many. I'm surprised. Anyone from statistics? Okay, a few. So where are the rest of you from?

Questions & Answers

what is phylogeny
Odigie Reply
evolutionary history and relationship of an organism or group of organisms
AI-Robot
ok
Deng
what is biology
Hajah Reply
the study of living organisms and their interactions with one another and their environments
AI-Robot
what is biology
Victoria Reply
HOW CAN MAN ORGAN FUNCTION
Alfred Reply
the diagram of the digestive system
Assiatu Reply
allimentary cannel
Ogenrwot
How does twins formed
William Reply
They formed in two ways first when one sperm and one egg are splited by mitosis or two sperm and two eggs join together
Oluwatobi
what is genetics
Josephine Reply
Genetics is the study of heredity
Misack
how does twins formed?
Misack
What is manual
Hassan Reply
discuss biological phenomenon and provide pieces of evidence to show that it was responsible for the formation of eukaryotic organelles
Joseph Reply
what is biology
Yousuf Reply
the study of living organisms and their interactions with one another and their environment.
Wine
discuss the biological phenomenon and provide pieces of evidence to show that it was responsible for the formation of eukaryotic organelles in an essay form
Joseph Reply
what is the blood cells
Shaker Reply
list any five characteristics of the blood cells
Shaker
lack electricity and its more savely than electronic microscope because its naturally by using of light
Abdullahi Reply
advantage of electronic microscope is easily and clearly while disadvantage is dangerous because its electronic. advantage of light microscope is savely and naturally by sun while disadvantage is not easily,means its not sharp and not clear
Abdullahi
cell theory state that every organisms composed of one or more cell,cell is the basic unit of life
Abdullahi
is like gone fail us
DENG
cells is the basic structure and functions of all living things
Ramadan
What is classification
ISCONT Reply
is organisms that are similar into groups called tara
Yamosa
in what situation (s) would be the use of a scanning electron microscope be ideal and why?
Kenna Reply
A scanning electron microscope (SEM) is ideal for situations requiring high-resolution imaging of surfaces. It is commonly used in materials science, biology, and geology to examine the topography and composition of samples at a nanoscale level. SEM is particularly useful for studying fine details,
Hilary
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Source:  OpenStax, Machine learning. OpenStax CNX. Oct 14, 2013 Download for free at http://cnx.org/content/col11500/1.4
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