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By Patrick Kulp

There are a lot more AI entities attempting to join your professional network on LinkedIn these days.

From conversational tools for recruiters to newly announced AI-augmented learning features, the Microsoft-owned jobs platform is taking full advantage of its parent company’s AI resources. This week, LinkedIn said it will make its various AI tools generally available to its Premium subscribers.

The rollout comes at a time when it seems like one can’t navigate any online platform without stumbling upon an AI feature freshly jammed into it. Big Tech companies like Meta, Amazon, and Microsoft are all attempting to suss out where the latest wave of generative AI might best play a role in user experience.

But LinkedIn VP of Engineering Prashanthi Padmanabhan told us she sees this latest wave of generative models as an extension of AI that has already governed the updates feed, personalized guidance, and other parts of LinkedIn’s platform in the background for years.

Secret agents: To manage the many hats that LinkedIn’s AI wears, the company has developed a system of behind-the-scenes agents, or generative AI tools, that can perform tasks beyond simple chatbots. It taps a system called retrieval-augmented generation (RAG) to evaluate a user query and route it to one of these agents, which include models dedicated to “job assessment,” “company understanding,” and “takeaways for posts.”

Padmanabhan said the agents-based system and the RAG pipeline can help to add context to, say, a draft message from a recruiter to a job seeker by pulling information from each of their profiles and skills.

“​​We want to make sure that this agent that is acting behind the scenes, which is essentially a model, it takes this information that is contextual to this job seeker and this recruiter, and it’s actually making sure that this message it’s going to produce as a draft message for you is personalized for that interaction,” Padmanabhan said.

Tweak tally: Once LinkedIn has served up a draft message, Padmanabhan said the platform encourages users to review and edit it. The company then measures a stat called “edit distance,” which collects data around how much the user tweaks the message from the AI-produced draft before they send it off. Padmanabhan said this information is used to tune the system.

“In the generative AI space, you can sort of get that first 80% right very quickly. It’s that last 20%, it’s the last mile that actually takes a lot of iteration,” she said. “Using a combination of both human reviews and member feedback is what’s guard railing this experience.”

Anyone who’s recently had a search engine advise them to add glue to their pizza knows how wonky generative AI responses can be without appropriate guardrails. That review process will be especially important as LinkedIn begins pushing AI into its LinkedIn Learning offering as of this week with help from some of the course instructors on the platform, who can now earn royalties based on usage.

“The more this technology becomes powerful, and it gets better in how to control hallucinations and how to improve accuracy of response, it’s just going to open up a lot of avenues for us,” Padmanabhan said.

Feature Image Credit: Francis Scialabba

By Patrick Kulp

Sourced from Tech Brew

By Josh Dorward

Generative AI tools promise to solve digital marketers’ creative challenges, but they fall short on brand consistency and quality, says Josh Dorward (general manager, Creative Automation). Here’s the missing piece of the puzzle.

Imagine that you’re a digital marketer responsible for managing paid media across Facebook, Instagram, Snapchat, and TikTok.

Chances are that at least three of your hair-on-fire problems boil down to not having the video and image assets that you need, on time, at scale.

  • Ad fatigue: The dropoff in performance (and the related increase in cost per result) when your audience has been overexposed to the same creative. This is primarily driven by a shortage of fresh campaign creative. (Meta’s guidance on combating ad fatigue: “Create a new ad with a new video or image that is materially different from the original creative.”)
  • A/B testing limitations: A/B testing is wildly popular – with 77% of companies reporting running A/B tests on their homepages. But it’s less common to see robust A/B testing in digital advertising – with ads missing from the list of most common A/B testing domains (website, landing page, email, and search). That’s because ads are significantly more resource-intensive, as they require tens–if not hundreds–of alternative video and image assets to properly test everything from calls-to-action and headlines to product displays and vfx overlays.
  • Personalization challenges: Every digital marketer dreams about delivering perfectly tailored ads based on everything from the local weather to a user’s next-best action. But it can be time-consuming and impractical to create multiple versions of a creative asset for each granular audience segment.

So, you’re under the gun to deliver ROAS and can’t magically multiply your creative team.

What can you do?

Where generative AI soars – and where it falls short

Generative AI (genAI) tools – like Dall-E and Midjourney – promise to transport digital marketers to a paradise free of creative bottlenecks. (Check out this article for a breathless review of the march of progress and some cool inspiration.)

Here’s the premise: instead of requiring costly photoshoots and dedicated design work, what if genAI tools could enable marketers to automatically specify every element of their ideal digital ad?

Want to alter the look of your model based on the demographic of a customer segment? Easy. Change the background of your photoshoot based on the weather conditions across 50 local markets? Nothing simpler.

It’s a great vision. The problem is that, well, it doesn’t work all that well. (Yet.)

As recapped here, generative AI tools tend to struggle with brand consistency (e.g., making sure that images match your e-commerce brand’s winky, irreverent personality) and quality control (e.g., making sure that all humans have five fingers).

It’s clear that there’s a missing piece in the creative stack for marketers to truly take over.

Marketers need creative “connective tissue”

Digital marketers need a new type of technology to help connect the raw potential of genAI platforms with the practical constraints and needs of digital advertising platforms.

Think of it as creative connective tissue. The translation layer between raw creative assets – whether it’s manually-shot photos or genAI-produced imagery – and the specific requirements for scaling on-brand imagery for digital advertising. The glue that brings together your brand’s creative DNA (look and feel) and the specific requirements (size, resolution, etc.) of your ad platforms.

Platforms like Creative Automation – the latest offering from image and video leader Cloudinary – exist to transform output from generative AI platforms into immediately useful digital ads at massive scale. Creative Automation takes your favourite design and maps each element to a spreadsheet, leaving marketers and creatives to simply add new data rows to quickly generate your new design variations. In the process it offers digital marketers:

  • Brand control: Full control over design elements in templates created in popular Adobe design tools, and the power to determine its placement, size, animation style, and final appearance without dragging and dropping for every variation.
  • Dynamic templates: Creative Automation streamlines tasks such as resizing, substituting, moving, and translating visual elements across different aspect ratios for all your audiences, products, etc.
  • Streamlined quality control processes: Generating and testing on-brand design variations is as easy as editing a spreadsheet, allowing marketers to overcome the back-and-forth with designers that come with scaling to all audiences.

Revolutionizing the digital ad world

GenAI has the potential to unleash digital marketers’ imagination and ultimately deliver ad experiences that are more relevant (and enjoyable) to consumers.

But for now, digital marketers need a creative translation layer to go from raw genAI output to on-brand experiences at scale. Platforms like Creative Automation can unlock immediate performance improvements across your ad landscape by harnessing – and channeling – the power of genAI today.

By Josh Dorward

Sourced from The Drum

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Rask AI

Discover the power of AI with Rask.ai, your one-stop platform for full self-serve video localization. Harnessing the potential of artificial intelligence, Rask.ai streamlines the process of video localization, offering a time-efficient and cost-effective solution for content creators and businesses alike.

Wisecut

Introducing Wisecut: The genius behind captivating video creation. Wisecut, an innovative online tool, employs the brilliance of artificial intelligence and voice recognition to revolutionize how you edit videos. Unleash the limitless potential of AI and effortlessly craft mesmerizing videos with an incredible speed!

AdCreative.ai

Boost your advertising and social media game with AdCreative.ai – the ultimate Artificial Intelligence solution. Say goodbye to hours of creative work and hello to high-converting ad and social media posts generated in mere seconds. Maximize your success and minimize your effort with AdCreative.ai today.

Getimg.ai

Enter the captivating realm of Getimg.ai, where AI wields its magic to create extraordinary art, photos, images, and avatars. Unleash your creativity, generate original visuals, modify photos, expand boundaries, and craft custom AI models effortlessly.

Nuclia

Maximize your product’s potential with Nuclia’s AI-powered search and generative answers. Safeguard your data privacy while unlocking limitless insights. Embrace Nuclia for AI-driven excellence!

SoReal.AI

Introducing SoReal.AI, your gateway to mesmerizing AI-generated images. Unleash your imagination and witness the magic unfold before your eyes. Simply input your desires, and within moments, immerse yourself in a world of personalized, awe-inspiring visuals.

tinyEinstein

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Slayer AI

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Sitekick

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Cogniflow

Unleash Cogniflow’s prowess to skyrocket productivity! Seamlessly integrate AI into your workflow: classify interactions, extract info from text/images, identify objects in visuals, and transcribe audio with precision.

Balsa

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Fig

Introducing Fig: the cutting-edge, futuristic command line. It holds the ultimate knowledge base for your team’s hidden treasures, powerful scripts, and mystical SSH codes.

ProfilePicture.AI

Bid farewell to your unflattering profile image with ProfilePicture.AI, the ultimate AI-powered creator and generator of stunning profile pictures.

Slash Dreamer

Slash Dreamer brings to life AI-generated images exclusively for Notion! Elevate your Notion pages with our remarkable AI image generator, the ultimate tool for effortlessly crafting stunning visuals in mere seconds!

Magic Studio

Step into the extraordinary realm of the Magic Studio, a creation brought to life by your own hands. Discover the mesmerizing wand that has the power to transform your pictures into pure magic.

SaneBox

In today’s digital age, we’re inundated with a constant influx of emails that can prove overwhelming and time-consuming. Enter SaneBox, your trusted partner in email management, designed to simplify your life.

Pictorial.ai

Pictorial.ai: Create graphics effortlessly for your blog, social media, website, and ads. Get inspired and convey your message with reliable, ready-to-use visual masterpieces. No hassle, just captivating visuals.

Helicone

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AI-Surge

AI-Surge ignites productivity with its cutting-edge solution, offering a dependable way to conquer the hurdles of data productivity. Experience the power of a user-friendly, versatile platform that effortlessly tackles data preparation and exploratory analysis in just minutes.

Motion

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BIGVU

Unleash the power of BIGVU: concise, captivating videos with teleprompters, captions, and automatic subtitles. Connect with your audience effortlessly through social media, vlogs, emails, and chat messages.

InterviewMe AI

Introducing InterviewMe AI, an interactive AI platform for honing interview skills. Perfect for aspiring and seasoned Software Engineers alike, it offers the opportunity to practice interviewing in a captivating and immersive way.

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Sourced from aitoolsclub.com

By Bernard Marr

Generative tools like ChatGPT and Stable Diffusion have got everyone talking about artificial intelligence (AI) – but where is it headed next?

It’s already clear that this exciting technology will have a big impact on the way we live and work. UK energy provider Octopus Energy has said that 44% of its customer service emails are now being answered by AI. And the CEO of software firm Freshworks has said that tasks that previously took eight to 10 weeks are now being completed in days as a consequence of adopting AI tools into its workflows.

But we’re still only at the beginning. In the coming weeks, months, and years we will see an acceleration in the pace of development of new forms of generative AI. These will be capable of carrying out an ever-growing number of tasks and augmenting our skills in all manner of ways. Some of them may seem as unbelievable to us today as the rise of ChatGPT and similar tools would have done just a few months back.

So, let’s take a look at some of the ways we can expect generative AI to evolve in the near future and some of the tasks it will be lending a hand with before too long:

Beyond ChatGPT

Text-based generative AI is already pretty impressive, particularly for research, creating first drafts, and planning. You might have had fun getting it to write stories or poems, too, but probably realized it isn’t quite Stephen King or Shakespeare yet, particularly when it comes to coming up with original ideas. Next-generation language models – beyond GPT-4 – will understand factors like psychology and the human creative process in more depth, enabling them to create written copy that’s deeper and more engaging. We will also see models iterating on the progress made by tools such as AutoGPT, which enable text-based generative AI applications to create their own prompts, allowing them to carry out more complex tasks.

As well as text, current generative AI technology is quite good at creating images based on natural language prompts, and there are even some tools that use it to generate video. However, they have some limitations due to the intensive nature of the required data processing. As this domain of generative AI becomes more advanced, it’s likely that it will become easy to create images and videos of just about anything, to the extent that it becomes difficult to distinguish generative AI content from reality. This could lead to issues such as deepfakes becoming problematic, resulting in the spread of fake news and disinformation.

Generative AI in the Metaverse

There are many predictions about how the way we interact with information and each other in the digital domain will involve. Many of these focus on immersive, 3D environments and experiences that can be explored through virtual and augmented reality (VR/AR). Generative AI will speed up the design and development of these environments, which is a time and resource-intensive process, and Meta (formerly Facebook) has indicated that this could play a part in the future of its 3D worlds platforms. Additionally, generative AI can be used to create more lifelike avatars that help to bring these environments to life, capable of more dynamic actions and interactions with other users.

Generative Audio, Music, and Voice AI

AI models are already impressively capable when it comes to generating music and mimicking human voices. In music, generative AI is likely to increasingly become an invaluable tool for songwriters and composers, creating novel compositions that can serve as inspiration or encourage musicians to approach their creative process in new ways. We are also likely to see it being used to create real-time, adaptive soundtracks – for example, in video games or even to accompany live footage of real-world events such as sports. AI voice synthesis will also improve, bringing computer-generated voices closer to the levels of expression, inflection, and emotion conveyed by a human voice. This will open new possibilities for real-time translation, audio dubbing, and automated, real-time voiceovers and narrations.

Generative Design

AI can be used by designers to assist in prototyping and creating new products of many shapes and sizes. Generative design is the term given for processes that use AI tools to do this. Tools are emerging that will allow designers to simply enter the details of the materials that will be used and the properties that the finished product must have, and the algorithms will create step-by-step instructions for engineering the finished item. Airbus engineers used tools like this to design interior partitions for the A320 passenger jet, resulting in a weight reduction of 45% over human-designed versions. In the future, we can expect many more designers to adopt these processes and AI to play a part in the creation of increasingly complex objects and systems.

Generative AI in Video Games

Generative AI has the potential to significantly impact the way video games are designed, built, and played. Designers can use it to help conceptualize and build the immersive environments that games use to challenge players. AI algorithms can be trained to generate landscapes, terrain, and architecture, freeing up time for designers to work on engaging stories, puzzles, and gameplay mechanics. It can also create dynamic content – such as non-player characters (NPCs) that behave in realistic ways and can communicate with players as if they are humans (or orcs or aliens) themselves, rather than being restricted to following scripts. Once game designers get to grips with implementing generative AI into their workflows, we can expect to see games and simulations that react to players’ interactions on the fly, with less need for scripted scenarios and challenges. This could potentially lead to games that are far more immersive and realistic than even the most advanced games available today.

Feature Image Credit: Adobe Stock

By Bernard Marr

Follow me on Twitter or LinkedIn. Check out my website or some of my other work here.

Bernard Marr is an internationally best-selling author, popular keynote speaker, futurist, and a strategic business & technology advisor to governments and companies. He helps organisations improve their business performance, use data more intelligently, and understand the implications of new technologies such as artificial intelligence, big data, blockchains, and the Internet of Things. Why don’t you connect with Bernard on Twitter (@bernardmarr), LinkedIn (https://uk.linkedin.com/in/bernardmarr) or instagram (bernard.marr)?

Sourced from Forbes

Sourced from Global Times.

An artificial intelligence (AI) model which can predict whether a COVID-19 patient will experience a severe illness has been jointly developed by researchers from China and the US. The research was based on 53 patients from China and its findings were 70 to 80 percent accurate.

“The predictive model learns from historical data to help predict who will develop acute respiratory distress syndrome (ARDS), a severe outcome of COVID-19,” read a research article by Jiang Xiangao, Megan Coffee and others published in Computers, Materials & Continua Magazine on Tuesday.

Among all clinical symptoms, “a mildly elevated alanine aminotransferase (ALT) (a liver enzyme), the presence of myalgias (body aches), and elevated hemoglobin (red blood cells), in this order, are the clinical features, on presentation, that are the most predictive,” read the article.

Meanwhile, key diagnosis characteristics including fever, lymphopenia and chest imaging were not as predictive of severity, it said.

The coronavirus pandemic has spread rapidly across the world in recent days, with a total of 857,957 confirmed infections and 42,139 deaths as of 8:58 am (US time), per data from the Johns Hopkins University. The US topped the list with 188,547 confirmed cases.

Given the rapid spread and increasing caseloads, there is an urgent need to develop clinical skills to rapidly identify which mild cases could progress to critical illnesses, according to the research.

Based on 53 patients from two hospitals in Wenzhou, East China’s Zhejiang Province, the research intended to establish an AI framework with predictive analytics (PA) capabilities applied to real patient data, to provide rapid clinical decision-making support.

AI technology has been widely used during the period of virus prevention and treatment in China, including the use of thermo detectors and disinfection robots.

Though the research did not use a large data base, the article noted that overall accuracy among the included cases was 70 to 80 percent.

Feature Image Credit: A researcher works at a laboratory of the disease prevention and control center in Nanyang, central China’s Henan Province, (Xinhua/Hao Yuan)

Sourced from Global Times