TE
科技回声
首页24小时热榜最新最佳问答展示工作
GitHubTwitter
首页

科技回声

基于 Next.js 构建的科技新闻平台,提供全球科技新闻和讨论内容。

GitHubTwitter

首页

首页最新最佳问答展示工作

资源链接

HackerNews API原版 HackerNewsNext.js

© 2025 科技回声. 版权所有。

Artificial-Intelligence Experts Are in High Demand

224 点作者 mwytock大约 10 年前

13 条评论

Daishiman大约 10 年前
This is suspiciously close &quot;data science&quot; and &quot;machine learning&quot; experts.<p>Can&#x27;t we just be honest and say that most of these are applied statistics jobs with a specialty in large volumes of data? Or is &quot;statistics&quot; just not fashionable enough nowadays?
评论 #9484726 未加载
评论 #9485226 未加载
评论 #9486265 未加载
评论 #9484665 未加载
评论 #9486370 未加载
评论 #9484612 未加载
评论 #9485113 未加载
评论 #9485701 未加载
评论 #9484668 未加载
评论 #9487778 未加载
评论 #9485600 未加载
评论 #9484970 未加载
julianpye大约 10 年前
This trend is in most companies business-driven, in others it is technical-driven. Few companies have technical leadership that can manage true AI resources. If you remember the ML courses from Uni and experts in that field, you can imagine why. In many universities AI departments are assigned to schools of psychology and philosophy. Only companies with a deep engineering culture as those mentioned here can build up true AI departments.<p>The other driver is business-driven. And this is where management demands &#x27;AI experts&#x27;, when what they really want is data-miners. And in many cases management prides themselves on &#x27;AI algorithms&#x27;, but we know that this is a term for anything that gets the results that management wants and may be far from intelligent and in most corporate cases a bunch of SQL scripts.
评论 #9484764 未加载
评论 #9485399 未加载
评论 #9497118 未加载
评论 #9484815 未加载
rayalez大约 10 年前
The big thing that prevents me from getting into AI is the lack of practical projects that I can build.<p>It is a very interestimg field, but as a self-taught programmer I&#x27;m used to learning by building things, and it&#x27;s hard for me to come up with some project that would be practically useful and yet doable.<p>Does anyone have any ideas?
评论 #9486007 未加载
评论 #9485664 未加载
评论 #9487314 未加载
评论 #9486175 未加载
评论 #9487259 未加载
nerdy大约 10 年前
AI is very interesting but not very accessible because it&#x27;s so specialized. I have a fairly strong programming background but feel like I&#x27;d need to study theory for a significant amount of time to even get my feet wet with AI.<p>If you have (condensed, especially) AI resources that you think would help bridge that gap, please share! Toy-scale project ideas would also be appreciated.
评论 #9484645 未加载
评论 #9485116 未加载
评论 #9484567 未加载
评论 #9486092 未加载
astrocyte大约 10 年前
When true strong A.I hits, I feel the confusion will quickly lift. You&#x27;ll know because all of the people with weak A.I :<p>&gt; Used mainly to strip information value from people without compensation<p>&gt; Who are dumping money into foundations to prevent the coming of it&#x27;s more true form<p>will be screaming &#x27;It&#x27;s the end of the world&#x27;. Until then, enjoy the algorithms. It&#x27;s the nature of business to over-sell. Don&#x27;t be too upset by it.
lowglow大约 10 年前
I&#x27;m starting an SF-based robotics&#x2F;AI&#x2F;ML workshop&#x2F;meetup&#x2F;club next week. Hit me up at dan@techendo.com if you want an invite -- or join this group: <a href="https:&#x2F;&#x2F;www.facebook.com&#x2F;groups&#x2F;762335743881364&#x2F;?ref=br_rs" rel="nofollow">https:&#x2F;&#x2F;www.facebook.com&#x2F;groups&#x2F;762335743881364&#x2F;?ref=br_rs</a>
peter303大约 10 年前
We went through a round of this in the 1980s. The first commercial graphics workstations happened to be LISP machines. So management confused non-numeric code with A.I. There was demand for workstation experts. Not to loang after this UNIX graphics workstations like Sun, Apollo and MicroVAX came out and the market switch to UNIX&#x2F;Linux.<p>Second was the expert systems boom in the mid-1980s. This was fanned by Stanford professor Fegeinbaum who wrote the infamous book The 5th Generation about expert system computers being the future and Japan was building the best ones. These would either be LISP machines or an interesting French niche language called prologic. Prologic basically traversed a databse &quot;if-then&quot; rules (modus pons). These machines went nowhere and Japan economy tanked in the early 90s. Lot of Silicon Valley VCs lost big on this.<p>Prof Feigenbaum may still be correct, but 40 years early. However the new A.I. is driven by massive database matching possible in modern peta-level computers and not so much logical computing.
评论 #9486415 未加载
评论 #9486615 未加载
评论 #9486371 未加载
评论 #9487751 未加载
100timesthis大约 10 年前
when the wsj writes about it means that the trend is over
tvsaugt大约 10 年前
I wish there were any position like this available in Germany ...
评论 #9488028 未加载
wimagguc大约 10 年前
I wonder what all the AI is going to be used for. Is everyone working on their own Siri and recommendation engine now?<p>(Is anyone building an AI that can come up with its own agenda?)
评论 #9484707 未加载
graycat大约 10 年前
Considering being an employee such as in the OP, I have two reactions:<p>(1) Take statistics, machine learning, neural nets, artificial intelligence (AI), big data, Python, R, SPSS, SAS, SQL Server, Hadoop, etc., set them aside, and ask the organization looking to hire: &quot;What is the real world problem or collection of problems you want solved or progress on?&quot;<p>Or, look at the desired ends, not just the means.<p>(2) Does the hiring organization really know what they want done that is at all doable with current technical tools or only modest extensions of them?<p>Or, since <i>artificial intelligence</i> is such a broad field, really, so far of mostly unanswered research questions, and the list of topics I mentioned is still more broad, I question if many organizations know in useful terms just what those topics would do for their organization.<p>So, for anyone with a lot of technical knowledge in, say, the AI, etc., topics, it is important for them to be able to evaluate the career opportunity. I.e., is there a real career opportunity there, say, one good to put on a resume and worth moving across country, buying a house, supporting a family, getting kids through college, meeting unusual expenses, e.g., special schooling for an ADHD child, providing for retirement, making technical and financial progress in the career, etc.?<p>So, some concerns:<p>(A) If an organization is to pay the <i>big bucks</i> for very long, e.g., for longer than some fashion fad, then they will likely need some valuable results on their real problems for their real bottom line. So, to evaluate the opportunity, should hear about the real problems and not just a list of technical topics.<p>(B) For the opportunity for the <i>big bucks</i> to be realistic, really should know where the money is coming from and why. That is, to evaluate the opportunity, need to know more about the <i>money</i> aspects than a $10&#x2F;hour fast food guy.<p>(C) As just an <i>employee</i>, can get replaced, laid off, fired, etc. So, to evaluate the opportunity, need to evaluate how stable the job will be, and for that need to know about the real business and not just a list of technical topics.<p>(D) For success in projects, problem selection and description and tool selection are part of what is crucial. Is the hiring organization really able to do such work for AI, etc. topics?<p>Or, mostly organizations are still stuck in the model of a factory 100+ years ago where the supervisor knew more and the subordinate was there to add <i>muscle</i> to the work of the supervisor. But in the case of AI, etc., what <i>supervisors</i> really <i>know more</i> or much of anything; what hiring managers know enough to do good problem and tool selection?<p>Or, if the <i>supervisors</i> don&#x27;t know much about the technical topics, then usually the subordinate is in a very bad career position. This is an old problem: One of the more effective solutions is some high, well respected <i>professionalism</i>. E.g., generally a working lawyer is supposed to report only to a lawyer, not a generalist manager. Or there might be professional licensing, peer review, legal liability, etc. Or, being just an AI technical expert working for a generalist business manager promises in a year or so to smell like week old dead fish.<p>(E) If some of the AI, etc., topics do have a lot of business value, then maybe someone with such expertise really should be a founder of a company, <i>harvest</i> most of the value, and not be an employee. So, what are the real problems to be solved. That is, is there a startup opportunity there?<p>Really, my take is that the OP is, net, talking about a short term fad in some <i>topics</i> long surrounded with a lot of hype. Not good, not a good direction for a career.<p>AI and hype? Just why might someone see a connection there?
raverbashing大约 10 年前
However, with the abysmal standards of hiring, I&#x27;m sure a lot of companies would pass on very good candidates because they won&#x27;t write FizzBuzz on the board for you, or companies would pass on Peter Norvig because his code is not Pep8 compliant
评论 #9484582 未加载
评论 #9484572 未加载
GigabyteCoin大约 10 年前
How can there be experts on a subject that doesn&#x27;t yet exist?
评论 #9484872 未加载
评论 #9484586 未加载
评论 #9484659 未加载
评论 #9485247 未加载
评论 #9484711 未加载