In December, Apple published research showing it can make LLM AI models run on-device in a similar way that Qualcomm and MediaTek have done for their chips in Android phones. This may indicate that Siri will get a long-awaited overhaul that iPhone fans have been waiting for, including the ability to chat like ChatGPT.
Only Apple knows what’s next for the iPhone and its other products, but here’s how Siri could change in the iPhone 16.
Siri could improve follow-up requests
Imagine you ask Siri about when the Olympics are taking place. It quickly spits out the correct dates in the summer of this year. But if you follow that up with, “Add it to my calendar,” the virtual assistant tends to respond imperfectly with “What should I call it?” The answer to that question would be obvious to us humans. Even when I responded, “Olympics,” Siri replied, “When should I schedule it for?”
The reason Siri tends to falter is that it lacks contextual awareness. That limits its ability to follow a conversation like a human can. However, that could change in June of this year, when Apple is rumoured to unveil improvements to Siri via iOS 18.
The iPhone maker is training Siri (and the iPhone’s Spotlight search tool) on large language models in order to improve the virtual assistant’s ability to answer more questions accurately, according to the October edition of Mark Gurman’s Bloomberg newsletter PowerOn. A large language model is a specific kind of AI that excels at understanding and producing natural language. With advancements in LLMs, Siri is likely to become more skilled at processing the way people speak. This should not only allow Siri to understand more complex and nuanced questions, but also provide accurate responses. All in all Siri is expected to become a more context-aware and powerful virtual assistant.
Siri may get better at executing multistep tasks
Apart from understanding people better, Siri is also expected to become more capable and efficient in the coming months. Apple plans to use large language models to make Siri smarter, according to a September report from the Information. The article detailed an example explaining how Siri might respond to simple voice commands for more complex tasks, such as turning a set of photos into a GIF and then sending them to one of your contacts, which would be a significant step forward in Siri’s capabilities.
Watch this: iOS 17 Brings Big Changes to Old Habits: Live Voicemail, AirDrop and Siri
Siri may improve its interactions with the Messages app (an other apps)
Apart from answering questions, the next version of Siri could become better at automatically completing sentences, according to a Bloomberg report published in October.
Thanks to LLMs, which are trained on troves of data, Siri is expected to up its predictive text game. Beyond that, Apple is rumored to be planning to add AI to as many Apple apps as possible which could even include a feature in the Messages app to craft complex messages.
Apple never talks specifics about products before they launch. Since Apple usually unveils new iPhone software features at WWDC in June, we’ll likely know more about iPhone AI plans then.
Editors’ note: CNET is using an AI engine to help create some stories. For more, see this post.
I Took 600+ Photos With the iPhone 15 Pro and Pro Max. Look at My Favorites
AI has a long history, going back to a conference at Dartmouth in 1956 that first discussed artificial intelligence as a thing. Milestones along the way include ELIZA, essentially the first chatbot, developed in 1964 by MIT computer scientist Joseph Weizenbaum, and 2004, when Google’s autocomplete first appeared.
Then came 2022 and ChatGPT’s rise to fame. Generative AI developments and product launches have accelerated rapidly since then, including Google Bard (now Gemini), Microsoft Copilot, IBM Watsonx.ai and Meta’s open-source Llama models.
Let’s break down what generative AI is, how it differs from “regular” artificial intelligence and whether gen AI can live up to the hype.
Generative AI in a nutshell
From talking fridges to iPhones, our experts are here to help make the world a little less complicated.
At its core, generative AI refers to artificial intelligence systems that are designed to produce new content based on patterns and data they’ve learned. Instead of just analyzing numbers or predicting trends, these systems generate creative outputs like text, images music, videos and software code.
Foremost among its abilities, ChatGPT can craft human-like conversations or essays based on a few simple prompts. Dall-E and Midjourney create detailed artwork from a short description, while Adobe Firefly focuses on image editing and design.
ChatGPT / Screenshot by CNET
From talking fridges to iPhones, our experts are here to help make the world a little less complicated.
The AI that’s not generative AI
However, not all AI is generative. While gen AI focuses on creating new content, traditional AI excels at analyzing data and making predictions. This includes technologies like image recognition and predictive text. It is also used for novel solutions in science, medical diagnostics, weather forecasting, fraud detection and financial analyses for forecasting and reporting. The AI that beat human grand champions at chess and the board game Go was not generative AI.
These systems might not be as flashy as gen AI, but classic artificial intelligence is a huge part of the technology we rely on every day.
How generative AI works
Behind the magic of generative AI are large language models and advanced machine learning techniques. These systems are trained on massive amounts of data, such as entire libraries of books, millions of images, years of recorded music and data scraped from the internet.
AI developers, from tech giants to startups, are well aware that AI is only as good as the data you feed it. If it’s fed poor-quality data, AI can produce biased results. It’s something that even the biggest players in the field, like Google, haven’t been immune to.
The AI learns patterns, relationships and structures within this data during training. Then, when prompted, it applies that knowledge to generate something new. For instance, if you ask a gen AI tool to write a poem about the ocean, it’s not just pulling prewritten verses from a database. Instead, it’s using what it learned about poetry, oceans and language structure to create a completely original piece.
ChatGPT / Screenshot by CNET
It’s impressive, but it’s not perfect. Sometimes the results can feel a little off. Maybe the AI misunderstands your request, or it gets overly creative in ways you didn’t expect. It might confidently provide completely false information, and it’s up to you to fact-check it. Those quirks, often called hallucinations, are part of what makes generative AI both fascinating and frustrating.
Generative AI’s capabilities are growing. It can now understand multiple data types by combining technologies like machine learning, natural language processing and computer vision. The result is called multimodal AI that can integrate some combination of text, images, video and speech within a single framework, offering more contextually relevant and accurate responses. ChatGPT’s Advanced Voice Mode is an example, as is Google’s Project Astra.
Gen AI comes with challenges
There’s no shortage of generative AI tools out there, each with its unique flair. These tools have sparked creativity, but they’ve also raised many questions besides bias and hallucinations — like, who owns the rights to AI-generated content? Or what material is fair game or off-limits for AI companies to use for training their language models — see, for instance, the The New York Times lawsuit against OpenAI and Microsoft.
Other concerns — no small matters — involve privacy, job displacement, accountability in AI and AI-generated deepfakes. Another issue is the impact on the environment because training large AI models uses a lot of energy, leading to big carbon footprints.
The rapid ascent of gen AI in the last couple of years has accelerated worries about the risks of AI in general. Governments are ramping up AI regulations to ensure responsible and ethical development, most notably the European Union’s AI Act.
Generative AI in everyday life
Many people have interacted with chatbots in customer service or used virtual assistants like Siri, Alexa and Google Assistant — which now are on the cusp of becoming gen AI power tools. That, along with apps for ChatGPT, Claude and other new tools, is putting AI in your hands.
Meanwhile, according to McKinsey’s 2024 Global AI Survey, 65% of respondents said their organizations regularly use generative AI, nearly double the figure reported just 10 months earlier. Industries like health care and finance are using gen AI to streamline business operations and automate mundane tasks.
Generative AI isn’t just for techies or creative people. Once you get the knack of giving it prompts, it has the potential to do a lot of the legwork for you in a variety of daily tasks. Let’s say you’re planning a trip. Instead of scrolling through pages of search results, you ask a chatbot to plan your itinerary. Within seconds, you have a detailed plan tailored to your preferences. (That’s the ideal. Please always fact-check its recommendations.) A small business owner who needs a marketing campaign but doesn’t have a design team can use generative AI to create eye-catching visuals and even ask it to suggest ad copy.
ChatGPT / Screenshot by CNET
Generative AI is here to stay
There hasn’t been a tech advancement that’s caused such a boom since the internet and, later, the iPhone. Despite its challenges, generative AI is undeniably transformative. It’s making creativity more accessible, helping businesses streamline workflows and even inspiring entirely new ways of thinking and solving problems.
But perhaps what’s most exciting is its potential, and we’re just scratching the surface of what these tools can do.
Artificial intelligence is everywhere, whether you realize it or not. It’s behind the chatbots you talk to online, the playlists…