
‘You can make really good stuff – fast': new AI tools a gamechanger for film-makers
To the uninitiated viewer, this could be a cinematic retelling of a geopolitical crisis that unfolded barely weeks ago – hastily shot on location, somewhere in the Middle East.
However, despite its polished production look, it wasn't shot anywhere, there is no location, and the woman feeding stray cats is no actor – she doesn't exist.
The engrossing footage is the 'rough cut' of a 12-minute short film about last month's US attack on Iranian nuclear sites, made by the directors Samir Mallal and Bouha Kazmi. It is also made entirely by artificial intelligence.
The clip is based on a detail the film-makers read in news coverage of the US bombings – a woman who walked the empty streets of Tehran feeding stray cats. Armed with the information, they have been able to make a sequence that looks as if it could have been created by a Hollywood director.
The impressive speed and, for some, worrying ease with which films of this kind can be made has not been lost on broadcasting experts.
Last week Richard Osman, the TV producer and bestselling author, said that an era of entertainment industry history had ended and a new one had begun – all because Google has released a new AI video making tool used by Mallal and others.
'So I saw this thing and I thought, 'well, OK that's the end of one part of entertainment history and the beginning of another',' he said on The Rest is Entertainment podcast.
Osman added: 'TikTok, ads, trailers – anything like that – I will say will be majority AI-assisted by 2027.'
For Mallal, a award-winning London-based documentary maker who has made adverts for Samsung and Coca-Cola, AI has provided him with a new format – 'cinematic news'.
The Tehran film, called Midnight Drop, is a follow-up to Spiders in the Sky, a recreation of a Ukrainian drone attack on Russian bombers in June.
Within two weeks, Mallal, who directed Spiders in the Sky on his own, was able to make a film about the Ukraine attack that would have cost millions – and would have taken at least two years including development – to make pre-AI.
'Using AI, it should be possible to make things that we've never seen before,' he said. 'We've never seen a cinematic news piece before turned around in two weeks. We've never seen a thriller based on the news made in two weeks.'
Spiders in the Sky was largely made with Veo3, an AI video generation model developed by Google, and other AI tools. The voiceover, script and music were not created by AI, although ChatGPT helped Mallal edit a lengthy interview with a drone operator that formed the film's narrative spine.
Google's film-making tool, Flow, is powered by Veo3. It also creates speech, sound effects and background noise. Since its release in May, the impact of the tool on YouTube – also owned by Google – and social media in general has been marked. As Marina Hyde, Osman's podcast partner, said last week: 'The proliferation is extraordinary.'
Quite a lot of it is 'slop' – the term for AI-generated nonsense – although the Olympic diving dogs have a compelling quality.
Mallal and Kazmi aim to complete the film, which will intercut the Iranian's story with the stealth bomber mission and will be six times the length of Spider's two minutes, in August. It is being made by a mix of models including Veo3, OpenAI's Sora and Midjourney.
'I'm trying to prove a point,' says Mallal. 'Which is that you can make really good stuff at a high level – but fast, at the speed of culture. Hollywood, especially, moves incredibly slowly.'
Sign up to TechScape
A weekly dive in to how technology is shaping our lives
after newsletter promotion
He adds: 'The creative process is all about making bad stuff to get to the good stuff. We have the best bad ideas faster. But the process is accelerated with AI.'
Mallal and Kazmi also recently made Atlas, Interrupted, a short film about the 3I/Atlas comet, another recent news event, that has appeared on the BBC.
David Jones, the chief executive of Brandtech Group, an advertising startup using generative AI – the term for tools such as chatbots and video generators – to create marketing campaigns, says the advertising world is about to undergo a revolution due to models such as Veo3.
'Today, less than 1% of all brand content is created using gen AI. It will be 100% that is fully or partly created using gen AI,' he says.
Netflix also revealed last week that it used AI in one of its TV shows for the first time.
However, in the background of this latest surge in AI-spurred creativity lies the issue of copyright. In the UK, the creative industries are furious about government proposals to let models be trained on copyright-protected work without seeking the owner's permission – unless the owner opts out of the process.
Mallal says he wants to see a 'broadly accessible and easy-to-use programme where artists are compensated for their work'.
Beeban Kidron, a cross-bench peer and leading campaigner against the government proposals, says AI film-making tools are 'fantastic' but 'at what point are they going to realise that these tools are literally built on the work of creators?' She adds: 'Creators need equity in the new system or we lose something precious.'
YouTube says its terms and conditions allow Google to use creators' work for making AI models – and denies that all of YouTube's inventory has been used to train its models.
Mallal calls his use of AI to make films 'prompt craft', a phrase that uses the term for giving instructions to AI systems. When making the Ukraine film, he says he was amazed at how quickly a camera angle or lighting tone could be adjusted with a few taps on a keyboard.
'I'm deep into AI. I've learned how to prompt engineer. I've learned how to translate my skills as a director into prompting. But I've never produced anything creative from that. Then Veo3 comes out, and I said, 'OK, finally, we're here.''

Try Our AI Features
Explore what Daily8 AI can do for you:
Comments
No comments yet...
Related Articles


Daily Mail
28 minutes ago
- Daily Mail
Lionel Messi and his wife Antonella look awkward as they are caught on Coldplay kiss cam at Miami concert - but avoid any controversy
Lionel Messi and his wife Antonella were caught in an awkward moment at a Coldplay concert in Miami on Sunday night after being shown on the venue's 'kiss cam'. Messi, 38, was seen attending the show at the Hard Rock Stadium with his wife and children on the final night of Coldplay's Music of the Spheres World Tour in the United States. At one point in the concert, he and Antonella were spotted on the band's 'kiss cam' as they waved while smiling to the crowd. The couple avoided becoming embroiled in a controversial incident, unlike Andy Byron and Kristin Cabot, who were caught with their arms around one another - before trying to avoid the camera on July 15 - in an incident that since went viral. Byron, the former CEO of Astronomer, a technology company that provides services for companies that want to use Artificial Intelligence (AI), opted to resign after being seen with the business' HR chief Cabot. That was confirmed in a statement released by Astronomer on July 19. Coldplay x Messi No words, no interviews — just greatness. #Messi #Coldplay #GOAT #InterMiami #ASkyFullOfStars — Daniel Solana (@DiceElDani) July 28, 2025 Messi, 38, was seen attending the show at the Hard Rock Stadium with his wife and children on the final night of Coldplay's Music of the Spheres World Tour in the United States It read: 'As stated previously, Astronomer is committed to the values and culture that have guided us since our founding. Our leaders are expected to set the standard in both conduct and accountability, and recently, that standard was not met,' the statement said. 'Andy Byron has tendered his resignation, and the Board of Directors has accepted.' 'While awareness of our company may have changed overnight, our product and our work for our customers have not. We're continuing to do what we do best: helping our customers with their toughest data and AI problems.' At the time Coldplay front man Chris Martin, cracked a joke which stirred rumors over the couple's awkward reaction. 'Oh look at these two! Oh what? Either they're having an affair, or they're just very shy,' Martin said to the crowd. Public records suggest both Byron and Cabot are married - but that they live at different addresses to those listed as their spouses. Massachusetts property documents dated in January confirmed that Cabot is currently married to Andrew Cabot, the chief executive of Privateer Rum, a Massachusetts-based booze maker. It is unclear exactly when the pair tied the knot, but the documents confirm that Cabot, whose maiden name is Stanek, was married at the time of selling a $1.8m (£1.3m) property in Watertown, Mass, earlier this year. Privateer Rum's website lists Andrew Cabot as its CEO and COO of the company, and public documents show that he has been married at least twice before, in 1993 and 2014. He shares two children with his first wife Maud, who shared a picture of her ex-husband with Cabot looking loved up at his daughters 25th birthday party on social media in April of last year. Cabot even posed with his son Henry, 30, in the snaps, and was seen wearing a wedding ring at the event - which was missing during her cozy Coldplay date with Byron. Byron is also married, with his wife Megan Byron, removing his last name from her social media accounts shortly after the exchange with Chris Martin went viral.


Geeky Gadgets
an hour ago
- Geeky Gadgets
Qwen 3 Coder Agentic Coder Performance Tested
What if coding wasn't just a skill but a conversation—one where your tools truly understood your intent and worked alongside you? Enter the Qwen 3 Coder, a new model that's reshaping how developers approach software creation. With a staggering 480 billion parameters and a innovative mixture-of-experts architecture, this innovation promises not just speed, but intelligence. Imagine a tool that can autonomously refactor sprawling codebases, generate SaaS prototypes, or even optimize workflows—all while you focus on solving the bigger problems. It's not just another coding assistant; it's a redefinition of what's possible in agentic coding. In this exploration, World of AI uncover how the Qwen 3 Coder and its companion, the Qwen Code CLI, are transforming development workflows. From outperforming industry giants like GPT-4.1 to automating repetitive tasks with natural language commands, this duo offers a glimpse into the future of coding. But how does it achieve such efficiency without sacrificing precision? And what does its open source flexibility mean for developers looking to tailor solutions to their unique needs? By the end, you might find yourself rethinking not just how you code, but how you innovate. Alibaba's Qwen 3 Coder Unveiled Enhancing Agentic Coding Capabilities The Qwen 3 Coder distinguishes itself with its ability to handle agentic coding tasks, tool utilization, and browser-based interactions. It has demonstrated superior performance in industry-standard benchmarks such as SwayBench and Spider Ader, outperforming leading models like Claude Sonnet 4 and OpenAI GPT-4.1. As an open source solution, it not only rivals proprietary models but also offers developers transparency and the flexibility to adapt the model to their specific needs. At the core of the Qwen 3 Coder is its mixture-of-experts architecture, which activates 35 billion parameters during inference to optimize efficiency. This design enables the model to address intricate coding challenges, such as generating complex simulations or refactoring extensive codebases. For instance, the Qwen 3 Coder can autonomously create a SaaS landing page or optimize a large-scale project with minimal user input, significantly reducing the time and effort required for such tasks. By using its advanced architecture, the model enables developers to focus on high-level problem-solving while automating routine processes. This combination of efficiency and adaptability makes it a valuable tool for modern software development. Optimizing Workflows with Qwen Code CLI The Qwen Code CLI is a powerful command-line interface tool that unlocks the full potential of the Qwen 3 Coder. By allowing natural language commands, it simplifies tasks such as code optimization, refactoring, and documentation generation. This tool is particularly effective for automating repetitive workflows, allowing developers to focus on more strategic aspects of their projects. Key features of the Qwen Code CLI include: Support for natural language commands to execute coding tasks with ease. Automation of repetitive workflows, minimizing manual effort and saving time. Advanced analysis and understanding of complex codebases for improved insights. Tools for automated testing and comprehensive documentation generation. The CLI integrates seamlessly with APIs such as Alibaba's ModelScope and OpenRouter, making sure compatibility with existing development environments. Additionally, it supports customization through a ' configuration file, allowing developers to tailor its functionality to meet specific project requirements. This flexibility ensures that the tool can adapt to a wide range of use cases, from small-scale projects to enterprise-level applications. Watch this video on YouTube. Expand your understanding of Qwen 3 Coder with additional resources from our extensive library of articles. Technical Features and Integration Designed with developers in mind, the Qwen 3 Coder and its CLI tool are straightforward to set up and integrate into existing workflows. To begin, developers need to have installed on their systems. Once configured, these tools can handle large codebases, connect to APIs, and provide enhanced functionality for a variety of tasks. The model's open source framework ensures that it remains flexible and adaptable to evolving development needs. Its ability to autonomously create prototypes and simulations further reduces development time, allowing teams to accelerate project timelines without compromising on quality. For example, the Qwen 3 Coder can generate a fully functional prototype or refactor an existing codebase with minimal manual intervention, making sure consistent and high-quality results. By integrating seamlessly into existing workflows, the Qwen 3 Coder enhances productivity and enables developers to achieve their objectives more efficiently. Its technical capabilities make it a versatile tool for addressing a wide range of coding challenges. Real-World Applications and Impact The Qwen 3 Coder has the potential to transform software development workflows by automating complex tasks and enhancing overall efficiency. Its ability to autonomously manage tasks such as creating prototypes, optimizing code, and generating documentation allows developers to focus on higher-level problem-solving and innovation. In practical applications, the Qwen 3 Coder has been used to: Generate functional prototypes for SaaS applications and other software projects. Streamline workflows by automating repetitive coding tasks. Improve code quality through advanced analysis and refactoring capabilities. Produce comprehensive documentation and automated testing frameworks. These capabilities make the Qwen 3 Coder an invaluable tool for developers working on diverse projects, from small-scale applications to large enterprise systems. By automating routine processes and enhancing productivity, it ensures consistent results and reduces the time required to complete complex tasks. Whether you are developing a SaaS application, automating testing, or generating detailed documentation, the Qwen 3 Coder provides the tools and functionality needed to achieve your goals efficiently. Its open source design and advanced architecture make it a versatile solution for addressing the challenges of modern software development. Media Credit: WorldofAI Filed Under: AI, Guides Latest Geeky Gadgets Deals Disclosure: Some of our articles include affiliate links. If you buy something through one of these links, Geeky Gadgets may earn an affiliate commission. Learn about our Disclosure Policy.


Geeky Gadgets
an hour ago
- Geeky Gadgets
Agent Swarm 2.0 : 90% of AI Coding is Now Unnecessary
What if 90% of the coding you do today could simply vanish from your to-do list? It sounds like a bold claim, but with the rise of AI-driven tools like Agent Swarm 2.0, this is no longer a distant dream—it's a reality reshaping how developers approach their craft. At the heart of this transformation lies the concept of sub-agents, specialized AI entities designed to handle specific tasks with precision and independence. Imagine delegating tedious debugging, UI design, or performance optimization to a network of intelligent agents, each working in perfect harmony. The result? A streamlined workflow that eliminates inefficiencies and frees developers to focus on creativity and strategy rather than repetitive grunt work. This overview by AI Labs explores how Agent Swarm 2.0 is redefining the boundaries of AI coding by introducing a new era of task-specific automation. You'll discover how sub-agents operate in isolated contexts to reduce errors, collaborate seamlessly to tackle complex workflows, and adapt to the unique demands of any project. From chaining agents for advanced automation to customizing their roles for precision, this innovation is poised to make traditional coding workflows feel obsolete. But is this the future of development or just another fleeting trend? Let's unpack the possibilities and challenges of this new shift. Sub-Agents in AI Coding Understanding Sub-Agents Sub-agents are purpose-built AI entities designed to handle distinct tasks within a coding workflow. Unlike traditional AI tools that attempt to manage multiple tasks simultaneously within a single context, sub-agents operate independently, each within its own isolated context window. This separation ensures cleaner task execution, reduces the likelihood of errors, and eliminates unnecessary clutter in the primary conversation thread. For instance, you can assign sub-agents to specific roles such as project manager, developer, UI designer, or QA engineer. Each agent focuses exclusively on its designated task, contributing to a more streamlined and cohesive development process. By isolating responsibilities, sub-agents enable developers to maintain clarity and focus throughout the workflow. The Importance of Sub-Agents Sub-agents bring a host of advantages to AI coding workflows, making them an essential tool for modern developers. Their benefits include: Task Specialization: Each sub-agent is optimized for a specific role, making sure precise and efficient task execution. Each sub-agent is optimized for a specific role, making sure precise and efficient task execution. Context Isolation: Isolated context windows prevent cross-task interference, maintaining clarity and reducing errors. Isolated context windows prevent cross-task interference, maintaining clarity and reducing errors. Enhanced Efficiency: Dedicated agents for individual tasks accelerate workflows and eliminate bottlenecks. Dedicated agents for individual tasks accelerate workflows and eliminate bottlenecks. Reusability: Sub-agents can be reused across multiple projects, saving time during setup and configuration. Sub-agents can be reused across multiple projects, saving time during setup and configuration. Controlled Tool Access: Developers can manage the tools and resources each agent uses, improving security and performance. This combination of task specialization, efficiency, and flexibility makes sub-agents a fantastic addition to AI-driven development workflows. Agent Swarm 2.0 Watch this video on YouTube. Explore further guides and articles from our vast library that you may find relevant to your interests in AI Agents. Setting Up Sub-Agents Configuring sub-agents is a straightforward process, offering both manual and autogenerated options. Developers can define agents for specific projects or personal use, depending on their requirements. The key to an effective setup lies in providing clear and detailed task descriptions, which enable the system to optimize each agent for its intended role. For example, if you require a UI design agent, you can specify parameters such as working with applications and integrating Shad CN components. The system will then configure the agent with the necessary tools and expertise to meet these requirements. This level of customization ensures that each sub-agent is perfectly suited to its assigned task, reducing setup time and improving overall efficiency. Practical Applications of Sub-Agents To illustrate the capabilities of sub-agents, consider a scenario where a UI design agent is tasked with creating a application. The agent can seamlessly integrate Shad CN components, apply custom themes using tools like Tweak CN, and connect to MCP servers for smooth execution. This level of automation significantly reduces the need for manual intervention, allowing developers to focus on higher-level tasks such as strategy and innovation. Sub-agents also excel in scenarios requiring collaboration between multiple agents. For instance, a performance analysis agent can work alongside an optimization agent to identify and resolve inefficiencies in a codebase. This collaborative approach ensures precision at every step of the workflow, delivering consistent and reliable results. Chaining Sub-Agents for Complex Workflows One of the most powerful features of sub-agents is their ability to work together in a chained sequence. By integrating custom commands, developers can automate complex workflows involving multiple agents. This approach is particularly useful for tasks that require input from various specialized agents. For example, you might chain a data analysis agent with a visualization agent to process raw data and generate insightful reports. Similarly, a testing agent can be chained with a debugging agent to identify and resolve issues in a software application. This flexibility allows developers to adapt workflows to the specific demands of their projects, making sure both efficiency and accuracy. Advantages of Sub-Agent Integration The adoption of sub-agents in AI coding workflows offers numerous benefits that enhance both productivity and precision: Reduced Manual Effort: Automating repetitive tasks allows developers to focus on strategic objectives and creative problem-solving. Automating repetitive tasks allows developers to focus on strategic objectives and creative problem-solving. Higher Accuracy: Task-specific agents minimize errors, delivering consistent and reliable results. Task-specific agents minimize errors, delivering consistent and reliable results. Flexibility: Sub-agents can be customized to meet the unique demands of each project, making sure optimal performance. Sub-agents can be customized to meet the unique demands of each project, making sure optimal performance. Scalability: The ability to chain multiple agents enables developers to tackle increasingly complex workflows with ease. These advantages make sub-agents an indispensable tool for developers seeking to optimize their workflows and achieve greater efficiency. Getting Started with Sub-Agents Claude Code provides extensive resources to help developers harness the full potential of sub-agents. These include detailed documentation, tutorials, and GitHub collections featuring pre-built agents. Developers can explore examples of chaining sub-agents with custom commands, allowing them to create advanced automation workflows with minimal effort. Whether you're building a application, optimizing performance, or managing complex workflows, sub-agents offer the tools and flexibility needed to succeed in today's fast-paced development landscape. Media Credit: AI LABS Filed Under: AI, Top News Latest Geeky Gadgets Deals Disclosure: Some of our articles include affiliate links. If you buy something through one of these links, Geeky Gadgets may earn an affiliate commission. Learn about our Disclosure Policy.