Tesla stock fell while the market rallied on Friday, which makes Monday’s gain a relief for investors watching the stock after its recent surge. Still, no one should mistake Tesla ’s recent moves for anything based on the fundamental factors driving the business.
Let’s back up. Tesla’s stock has been on a tear of late, which makes Friday’s move something of a puzzle. Shares of the electric-vehicle maker dropped 3.5% on Friday, closing at $421.06, while the S&P 500 rose 1.1%.
There wasn’t a great reason for the divergence. “To me, [Tesla stock] was wildly overbought and long hedge funds needed a reason to take some profits,” says Future Fund Active exchange-traded fund co-founder and Tesla shareholder Gary Black .
“Overbought” is a trading term that essentially means the stock has gone up a lot quickly. When that happens, it can be a sign a lot of good news is reflected in the price and that there aren’t many buyers left to fuel more gains.
Some profit-taking in Tesla shares is natural—especially considering the rally. Coming into Monday, Tesla stock had risen 69% this year and 67% since the Nov. 5 election . Shares have declined 12% from a record closing high of $479.86 on Dec. 17.
Tesla stock closed up 2.3% at $430.60, while the S&P 500 and Dow Jones Industrial Average were up 0.7% and 0.2%, respectively.
One thing helping shares was a report from Barclays analyst Dan Levy . He expects the company to deliver 515,000 vehicles this quarter. Wall Street expects Tesla to deliver roughly 510,00 vehicles, according to various consensus aggregators, a record for any quarter.
Better-than-expected results can help any stock, but Levy’s number is important for another reason. Tesla needs to deliver about 515,000 vehicles to increase deliveries in 2024 compared with 2023. While Tesla delivered 1,808,581 vehicles in 2023, it shipped 1,293,656 in the first three quarters of 2023, down about 7% year over year.
Levy isn’t a Tesla bull. He rates shares Hold and has a $270 price target on the stock. A “beat could keep narrative momentum strong,” wrote Levy. “But [a] focus on fundamentals [is] limited overall.”
Tesla stock has added about $170 a share since the election, boosting Tesla’s market value by more than $550 billion, even though the car business hasn’t changed all that much.
Investors, however, are thinking about earnings. They believe Tesla’s self-driving robo-taxi business will drive significant value. That business is slated to begin in late 2025.
Levy is less optimistic, though. He even used the word “meme” in his report, referring to stocks that go wild for little reason.
Overall, about 46% of analysts covering Tesla stock rate shares Buy. The average Buy-rating ratio for stocks in the S&P 500 is about 55%. The average analyst price target for Tesla stock is about $296 a share, up about $60 sine the election.
No matter what happens in the last few days of the trading year, 2024 will have turned out quite well for Tesla investors. It is their reward for enduring volatility. Don’t forget, Tesla stock bottomed out below $$140 a share in April.
A divide has opened in the tech job market between those with artificial-intelligence skills and everyone else.
A 30-metre masterpiece unveiled in Monaco brings Lamborghini’s supercar drama to the high seas, powered by 7,600 horsepower and unmistakable Italian design.
A divide has opened in the tech job market between those with artificial-intelligence skills and everyone else.
There has rarely, if ever, been so much tech talent available in the job market. Yet many tech companies say good help is hard to find.
What gives?
U.S. colleges more than doubled the number of computer-science degrees awarded from 2013 to 2022, according to federal data. Then came round after round of layoffs at Google, Meta, Amazon, and others.
The Bureau of Labor Statistics predicts businesses will employ 6% fewer computer programmers in 2034 than they did last year.
All of this should, in theory, mean there is an ample supply of eager, capable engineers ready for hire.
But in their feverish pursuit of artificial-intelligence supremacy, employers say there aren’t enough people with the most in-demand skills. The few perceived as AI savants can command multimillion-dollar pay packages. On a second tier of AI savvy, workers can rake in close to $1 million a year .
Landing a job is tough for most everyone else.
Frustrated job seekers contend businesses could expand the AI talent pipeline with a little imagination. The argument is companies should accept that relatively few people have AI-specific experience because the technology is so new. They ought to focus on identifying candidates with transferable skills and let those people learn on the job.
Often, though, companies seem to hold out for dream candidates with deep backgrounds in machine learning. Many AI-related roles go unfilled for weeks or months—or get taken off job boards only to be reposted soon after.
Playing a different game
It is difficult to define what makes an AI all-star, but I’m sorry to report that it’s probably not whatever you’re doing.
Maybe you’re learning how to work more efficiently with the aid of ChatGPT and its robotic brethren. Perhaps you’re taking one of those innumerable AI certificate courses.
You might as well be playing pickup basketball at your local YMCA in hopes of being signed by the Los Angeles Lakers. The AI minds that companies truly covet are almost as rare as professional athletes.
“We’re talking about hundreds of people in the world, at the most,” says Cristóbal Valenzuela, chief executive of Runway, which makes AI image and video tools.
He describes it like this: Picture an AI model as a machine with 1,000 dials. The goal is to train the machine to detect patterns and predict outcomes. To do this, you have to feed it reams of data and know which dials to adjust—and by how much.
The universe of people with the right touch is confined to those with uncanny intuition, genius-level smarts or the foresight (possibly luck) to go into AI many years ago, before it was all the rage.
As a venture-backed startup with about 120 employees, Runway doesn’t necessarily vie with Silicon Valley giants for the AI job market’s version of LeBron James. But when I spoke with Valenzuela recently, his company was advertising base salaries of up to $440,000 for an engineering manager and $490,000 for a director of machine learning.
A job listing like one of these might attract 2,000 applicants in a week, Valenzuela says, and there is a decent chance he won’t pick any of them. A lot of people who claim to be AI literate merely produce “workslop”—generic, low-quality material. He spends a lot of time reading academic journals and browsing GitHub portfolios, and recruiting people whose work impresses him.
In addition to an uncommon skill set, companies trying to win in the hypercompetitive AI arena are scouting for commitment bordering on fanaticism .
Daniel Park is seeking three new members for his nine-person startup. He says he will wait a year or longer if that’s what it takes to fill roles with advertised base salaries of up to $500,000.
He’s looking for “prodigies” willing to work seven days a week. Much of the team lives together in a six-bedroom house in San Francisco.
If this sounds like a lonely existence, Park’s team members may be able to solve their own problem. His company, Pickle, aims to develop personalised AI companions akin to Tony Stark’s Jarvis in “Iron Man.”
Overlooked
James Strawn wasn’t an AI early adopter, and the father of two teenagers doesn’t want to sacrifice his personal life for a job. He is beginning to wonder whether there is still a place for people like him in the tech sector.
He was laid off over the summer after 25 years at Adobe , where he was a senior software quality-assurance engineer. Strawn, 55, started as a contractor and recalls his hiring as a leap of faith by the company.
He had been an artist and graphic designer. The managers who interviewed him figured he could use that background to help make Illustrator and other Adobe software more user-friendly.
Looking for work now, he doesn’t see the same willingness by companies to take a chance on someone whose résumé isn’t a perfect match to the job description. He’s had one interview since his layoff.
“I always thought my years of experience at a high-profile company would at least be enough to get me interviews where I could explain how I could contribute,” says Strawn, who is taking foundational AI courses. “It’s just not like that.”
The trouble for people starting out in AI—whether recent grads or job switchers like Strawn—is that companies see them as a dime a dozen.
“There’s this AI arms race, and the fact of the matter is entry-level people aren’t going to help you win it,” says Matt Massucci, CEO of the tech recruiting firm Hirewell. “There’s this concept of the 10x engineer—the one engineer who can do the work of 10. That’s what companies are really leaning into and paying for.”
He adds that companies can automate some low-level engineering tasks, which frees up more money to throw at high-end talent.
It’s a dynamic that creates a few handsomely paid haves and a lot more have-nots.
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