马斯克的机器人出租车并不乐观

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Elon Musk's choice of Warner Bros Studios for the long-anticipated launch of his robotaxi on
October 10th is entirely appropriate. Hollywood’s film studios are as much a dream factory as
Tesla, his electric-car company. The vision he served up, accompanied by whoops of delight from
the superfans in the audience, is an autonomous Cybercab so cheap that it will serve as
“individualised mass transit”. But Mr Musk’s promises were, like many Hollywood movies, long on
bombast and short on reality. The road to self-driving taxis will be long, and Tesla will have
tough competition along the way.
The Cybercab, a two-seater without steering wheel or pedals, will be on sale “before 2027”,
according to Mr Musk, though his timelines often slip—he once promised a fleet of 1m robotaxis by
2020. He also showed off a Robovan, which will carry 20 passengers, and pledged that his humanoid
robot will be the “biggest product ever of any kind”. Yet the event, which was light on details,
disappointed investors; Tesla’s share price slumped 9% the following day.
In recent years robotaxi services have popped up in a growing number of cities. Waymo, a division
of Alphabet, has raced ahead in America. After 15 years and perhaps $30bn of investment it now has
a fleet of 700 self-driving cabs running in Los Angeles, San Francisco and Phoenix, and will soon
launch in Atlanta and Austin. Farther back is Cruise, whose biggest investor is General Motors. It
also operates in Phoenix and is resuming tests in San Francisco after regulators put on the brakes
following an accident last year. Zoox, Amazon’s contribution to driverless travel, is testing
vehicles in five locations including Las Vegas and Miami.
China has also become a hotspot for autonomy. Apollo Go, the robotaxi unit of Baidu, a Chinese
tech
giant, launched its service in Wuhan in 2022 and has since expanded to ten other Chinese cities.
It aims to double its Wuhan fleet to 1,000 robotaxis by the end of the year. Other Chinese firms
including Pony.ai, WeRide, and Didi, the country’s biggest ride-hailing firm, are also trying out
robotaxis in several big cities.
But a series of pilots in a handful of cities is far from the go-anywhere vision that Elon Musk
has
espoused, and there is still no guarantee of meaningful profits in the foreseeable future. Waymo
and its competitors so far mostly operate in places where the weather is fine and the roads are
straight and wide. Expanding to trickier cityscapes will take time and money. To deploy its
service in a new city, Waymo has to invest significant sums upfront to compile detailed 3D maps
and build other necessary infrastructure.
The cost of the self-driving cars themselves—around $150,000 a piece for Waymo—also remains a
problem. Around two-thirds of that is estimated to come from hardware. To run their vehicles
autonomously, Waymo and others are relying on a battery of expensive sensors including cameras,
radars and lidars, which use lasers to create a 3D image of the vehicle’s surroundings, as well as
lots of in-car computing power to make sense of it all.
Human drivers account for well over half the fare of ride-hailing services such as Uber and Lyft,
which suggests a big opportunity for self-driving cabs. Yet Waymo still employs remote “safety
drivers” to keep an eye on its vehicles. Significant amounts of real estate are also needed close
to city centres in order to charge, clean and maintain robotaxis. Bernstein, a broker, calculates
that once all costs are considered, self-driving taxi fares will remain higher than human ones for
some time. What is more, replacing the fleet of Uber and Lyft cars in America with robotaxis would
require up to 400,000 vehicles, Bernstein reckons. At the current cost of a Waymo vehicle, that
would mean an investment of around $60bn.
Tesla is betting it can make a cheaper option work. Its “Full-Self Driving” system, which will be
the underlying tech for its robotaxis, relies only on cameras to collect information. Data from
these will go into an “end-to-end neural network”—an algorithmic black box trained on 9bn miles of
driving data from the 6m Teslas already on the road—to produce driving commands. As a result,
Tesla says its robotaxis will cost under $30,000 and will be easier to transfer from one city to
another.
Even if Tesla can make the technology work, it will still need to convince regulators of its
approach. Its neural network will be far less transparent than the modular systems used by Waymo
and others. And regulators may not trust that relying solely on cameras will be sufficient to deal
with rare and unusual “edge cases”. Officials are already wary of safety after Cruise’s accident
last year, in which one of its vehicles dragged along a pedestrian thrown into its path by a human
hit-and-run driver.
Mr Musk believes his approach will gain regulatory approval once it proves it is safer than human
drivers. But any incidents that do occur could still turn off would-be passengers. And some cities
may also resist robotaxis if they are perceived as a threat to public transport and local jobs or
a source of traffic congestion.
Also unresolved is the question of who will own and operate these robotaxis. Ride-hailing firms
are
one possibility. Uber has signed deals with Waymo and Cruise to make their vehicles available on
its platform in some locations. It has also invested in Wayve, a British autonomy startup. But the
company, which has only just begun to turn a profit after years of torching cash, may be reluctant
to pour vast sums into acquiring a self-driving fleet. During his presentation, Mr Musk speculated
that “an Uber or Lyft driver today” could end up operating a fleet of self-driving cabs “like a
shepherd tends their flock”. Such wishful thinking is why JPMorgan Chase, a bank, does not expect
“material revenue generation...for years to come” from Tesla’s robotaxi efforts. Standing
expectantly by the roadside for a driverless lift will, for most people, involve a long wait.
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