Farzad: Autonomous Driving Isn’t the Future; It’s Happening Now

As Farzad puts it on X, "Autonomous driving isn’t the future; it’s happening now, and Tesla is leading the charge." While competitors are still experimenting with simulations, Tesla is leveraging ...
Farzad: Autonomous Driving Isn’t the Future; It’s Happening Now
Written by Rich Ord

Autonomous driving is no longer a distant promise; it’s a reality unfolding today, and Tesla is spearheading this technological revolution. As Farzad puts it on X, “Autonomous driving isn’t the future; it’s happening now, and Tesla is leading the charge.” With over a billion miles of real-world data collected from Tesla’s fleet, the company’s self-driving algorithms are evolving rapidly. While competitors are still experimenting with simulations, Tesla is leveraging data gathered from real-world driving conditions, continuously improving its Full-Self Driving (FSD) software.

Tesla’s advantage lies in its unique approach to data collection and machine learning. Farzad explains, “While others rely on simulations and limited testing, Tesla vehicles are gathering data from diverse driving conditions worldwide.” This method allows the system to learn by doing, making the AI smarter with every mile driven. The vast trove of driving data—from various terrains, weather conditions, and traffic scenarios—gives Tesla an unparalleled edge. Competitors relying solely on simulation models are unable to match this real-world learning, putting Tesla at the forefront of autonomous driving.

Catch our chat on how autonomous driving is already here!

 

The benefits of Tesla’s approach resonate with many of its users. One Tesla owner, @Hoofz, shared on X, “I really enjoy being one of the many real-world testers, when it works perfect and when it doesn’t. When it doesn’t, I try to keep doing it as much as I can so it becomes perfect for the next adopter.” This willingness of users to engage with Tesla’s evolving FSD technology enables rapid feedback and continuous improvement, a critical factor in accelerating its development.

Data-Driven Learning: The Heart of Tesla’s Autonomy

Tesla’s emphasis on data-driven learning is what sets it apart from the rest of the industry. As Farzad noted, Tesla’s real-world data is a game-changer. Teaching its vehicles to navigate through real-world complexities gives the company a learning curve that’s unmatched. Farzad likens the process to teaching a child how to navigate a maze: “You could describe it in words, or let them explore it themselves.” Tesla’s approach is the latter—its cars are constantly learning through experience, allowing them to refine and adapt their responses to challenging driving situations.

This relentless focus on real-world data means that Tesla’s Full-Self Driving system is continuously improving. As @MrGeary08 succinctly put it, “Data is the key to everything.” Tesla’s algorithm learns from a constantly expanding dataset, which allows for swift software updates that enhance the performance of FSD. For instance, FSD 12.5.4, which many users recently received, shows marked improvements. According to @7thGeneration, who recently completed a long road trip with the latest update, “This is the real deal. FSD drove me from Houston to Dallas and back today. I set it to ‘aggressive’ and it was amazing.”

However, challenges persist. As @MikeRayHenry highlighted, “FSD 12.5.4 does a lot right and is smooth and confident! But here’s where it falls short in my area around Tampa,” pointing to specific shortcomings like failing to prep for highway exits. Tesla’s strategy hinges on addressing these incremental challenges with user feedback. The software updates, while not perfect, are continually refined through data from users like Mike and @KeithInKeyWest, who recounted an incident where his FSD tried to pass another car in a risky maneuver, forcing him to take over.

Robotaxis: A New Paradigm for Commuting

Tesla’s autonomous vehicle fleet isn’t just about personal self-driving cars—it’s about redefining the entire transportation paradigm. Tesla’s robotaxi vision is positioned as a game-changer in public and personal transportation. The prospect of autonomous taxis could revolutionize urban planning, making commuting more efficient and freeing up time for passengers to work, relax, or even game during their rides. As Tesla user Mason May highlighted, “An underappreciated aspect of robotaxis is allowing people to escape the cities and live farther away from work. People can work from their taxi, game, do homework, etc. on their commute.”

The long-term implications of Tesla’s robotaxis are profound. With a network of autonomous vehicles operating 24/7, Tesla could significantly lower the cost of transportation. Musk himself has pointed out that private vehicles sit idle 90% of the time, whereas robotaxis could operate almost non-stop, vastly improving utilization rates and reducing costs per mile. This economic shift has the potential to redefine car ownership, pushing more people toward ridesharing and away from traditional car ownership.

However, achieving full autonomy—what’s often referred to as Level 5—remains a critical hurdle. Many Tesla enthusiasts are eagerly awaiting this breakthrough. As @RealtorZeanna pointed out, “Show me a Level 5 car, and I will buy it!” Tesla’s approach, focusing on real-world data and vision-based AI, is steering it closer to that goal, but competitors like Waymo are also making strides. The pressure is mounting, but Tesla’s head start in data collection and AI development gives it an edge.

The LiDAR Debate: Tesla’s Vision-Only Strategy

One of Tesla’s more controversial stances has been its decision to reject LiDAR in favor of a camera-based vision system. In 2019, Elon Musk famously called LiDAR “a crutch.” At the time, this statement was met with skepticism, as many believed LiDAR to be essential for autonomous driving. However, as Farzad reposted from Ray’s X thread, Tesla’s bold approach appears to be paying off. “Now 5 years later, companies like Bosch, Mobileye, and Chinese NAV makers are starting to exit or scale back their LiDAR R&D,” Ray noted, underscoring Tesla’s foresight.

Musk’s rationale is grounded in Tesla’s ability to teach its neural networks to interpret the world using camera-based systems, just like human drivers do. By avoiding LiDAR’s expense and complexity, Tesla has been able to scale its autonomous fleet much more efficiently. “Tesla has proved vision-based end-to-end approaches are the ideal solution to autonomy without the use of LiDAR,” said Ray, highlighting how other automakers like Li, NIO, and XPeng are now adopting similar strategies.

Another X poster added an important insight, suggesting that Musk didn’t come to this conclusion on a whim. “It was likely a conclusion that a lot of extremely intelligent people all came to,” he said. Indeed, Tesla’s decision to abandon LiDAR is part of a larger engineering philosophy that relies on scalable, data-driven solutions to solve complex problems, rather than expensive and niche technologies.

FSD: Progress, Challenges, and Continuous Improvement

Tesla’s Full-Self Driving (FSD) software continues to evolve, with users experiencing both improvements and challenges in the latest versions. Many Tesla users have reported significant advances in FSD 12.5.4, with smoother performance and more decisive maneuvers. @HansCNelson remarked, “Smoothness is improved. Decision-making is improved. It just feels like a much more refined product so far.” These updates demonstrate Tesla’s commitment to iterating and improving its technology based on user feedback and real-world data.

However, challenges remain. Some users still experience phantom braking, where the car abruptly slows down for no apparent reason. As @HunterNewberry8 pointed out, “Use it more, and you realize the phantom braking is catastrophically bad. It’s worse than v11 when it happens.” These incidents, while frustrating, provide critical data for Tesla’s engineers to refine the system further. Additionally, Tesla has introduced features like “Actually Smart Summon” in its latest update, which allows the car to autonomously navigate parking lots—a significant step forward, though users like @HansCNelson advise caution when testing this feature near public roads.

Conclusion: Tesla Leading the Way into the Autonomous Future

Farzad’s assertion that “Autonomous driving isn’t the future; it’s happening now” captures the essence of Tesla’s rapid advancements in the field of self-driving cars. With over a billion miles of real-world data, Tesla’s FSD system continues to improve at an unprecedented rate, while its robotaxi vision promises to redefine urban transportation. Despite the challenges, Tesla’s commitment to learning from real-world data gives it an edge over competitors relying on simulations and LiDAR.

As the technology improves, the prospect of fully autonomous driving is no longer a far-fetched dream. Tesla’s vision-based, data-driven approach is turning that dream into reality, inching closer to a future where self-driving cars dominate our roads. As Farzad and many others in the Tesla community believe, the future of transportation has already arrived—it’s just getting better with every mile.

Get the WebProNews newsletter delivered to your inbox

Get the free daily newsletter read by decision makers

Subscribe
Advertise with Us

Ready to get started?

Get our media kit