In today’s day and age, nothing seems impossible for technology as breakthroughs are introduced every now and then. These groundbreaking technological advancements are known to make their way into our daily lives, becoming essential tools before we even know them. The same applies to large language and image AI models, also known as generative AI or foundation models, that are taking the world by storm with what they can do. These models have opened up a new world of possibilities for organisations and individuals involved in content creation. Generative AI and other foundation models are revolutionising the Artificial Intelligence game by elevating assistive technology, shortening application development time, and providing significant capabilities to nontechnical users.
Generative AI models for businesses have the potential to completely transform the world of content production, with significant implications for marketing, software, design, entertainment, and interpersonal relationships. These models are designed and trained to generate text and graphics such as blog posts, program code, poetry, and artwork. Today, it is crucial for businesses to comprehend how these technologies function and in what ways they might provide value to their organisation. Generative AI models for companies in various sectors can drastically improve the output by making the workforce more efficient, thanks to the simplicity and ease they provide.
Interaction labour, such as customer service, has had the least mature technological interventions up until lately. Generative AI is ready to change that by performing interaction labour in a way that invisibly approximates human behaviour. Not to forget, these tools are not designed to function without human input or intervention. Instead, they are most effective when combined with humans, increasing their capabilities and allowing them to complete tasks more quickly and efficiently.
Generative AI is also advancing technology into a previously thought-to-be human-only domain: creativity. To develop wholly new material, the technology uses its inputs (the data it has consumed and a user prompt) and experiences (exchanges with users that help it “learn” new knowledge and what is correct/incorrect). While discussions over whether this genuinely equals creativity will persist for the foreseeable future, most would likely agree that these tools have the potential to release more creativity into the world by prompting humans with initial ideas.
What is Generative AI?
The term Generative Artificial Intelligence (AI) refers to algorithms (such as ChatGPT) that can be used to generate new content in the form of audio, code, images, text, simulations, and movies. Recent advancements in the sector of Artificial Intelligence have the potential to alter how we approach content development radically. The program employs complex Machine Learning models to predict the following word based on previous word sequences or the subsequent image based on words describing previous photos.
Machine Learning has had an influence on a variety of industries in the years since its widespread adoption, achieving feats such as medical imaging analysis and high-resolution weather forecasting. According to a McKinsey 2022 poll, AI adoption has increased more than two times in the last five years, and investment in AI is expanding rapidly. It is apparent that generative AI tools such as ChatGPT and DALL-E (an AI-generated art tool) have the potential to revolutionise the way a variety of tasks are conducted. The exact extent of the impact that generative AI applications will have, however, remains unknown, as are the hazards.
To use generative AI efficiently, humans must be involved at both the beginning and finish of the process. To begin, a human must enter a prompt into a generative model in order for it to generate content. In general, creative prompts produce innovative results. Another article from hbr.org says “Prompt engineer” is likely to become a well-known job title, at least until the next generation of even better AI arises.
Difference between AI & Generative AI?
Artificial Intelligence (AI) is a broad phrase that encompasses any technology capable of intelligent behaviour. This can involve a wide range of technologies, from simple algorithms for data sorting to more complex systems for simulating human-like brain processes.
On the other hand, Generative AI (Gen-AI) is a sort of AI that is focused on creating new content, such as literature, graphics, or music. These systems utilise Machine Learning techniques to generate fresh material that is similar to the training data after being trained on massive datasets. This can be beneficial in a multitude of applications, including the creation of art, music, and even text for chatbots.
Generative AI employs Generative Adversarial Networks (GANs), a kind of Deep Learning to generate fresh content. A GAN is made up of two neural networks: a generator for creating new data and a discriminator for evaluating the data. The generator and discriminator collaborate, with the generator refining its outputs depending on the discriminator’s feedback until it generates material that is indistinguishable from real data. In essence, Artificial Intelligence (AI) is a comprehensive word that incorporates many distinct technologies, but generative AI is a subset of AI that focuses on creating new content.
Various AI Generators
Image Generators
Disruptive innovation always starts at the bottom of a market with simple applications and works its way up until it disrupts an industry. Artificial intelligence (AI) has made inroads into the creative and visual production industries in recent years. We should expect creative or generative AI’s impact to rise in the coming years as technology advances. With these innovative technologies revolutionising the way a variety of tasks are carried out, let us look at the different generators and what these generative AI examples include.
Video Generators
The power of videos is undeniable as they are highly effective when it comes to conveying any message to a massive audience and have become an essential part of digital marketing and online learning, among others. However, creating videos can be difficult, time-consuming, and incur incredibly high costs. And, even with all these, things can go completely wrong and cause delays. But this has changed with the innovation of AI video generators that help create professional videos for YouTube channels, documentaries, sales presentations, etc., such that they look like experts have worked on them.
AI video generators are designed and trained to convert written text into high-quality videos in a short time at a fraction of the cost you would pay for the entire video-creating process.
The AI video generator Synthesia has a human presenter to convey messages to the audience in up to 40 languages, creating an intimate experience. Using a script this can be used for digital marketing, corporate communications, and employee training. Another robust AI tool with numerous features is Synthesys. This tool not only creates videos with an AI presenter purely from the lines of a text but can also create and manage voiceovers.
Voice Generators
As advanced AI and speech synthesis technology has improved, many computer voice generators have become available on the market. These rapid advancements have also rendered the use of massive numbers of speech samples or highly specialised equipment unnecessary. In today’s AI world, you can replicate any style of voice you can think of, and the procedure is relatively simple.
Synthesis is a popular and powerful AI voice generator that allows anyone to create a professional AI voiceover or AI movie in only a few clicks. This platform is at the forefront of creating commercial text-to-voiceover and video algorithms. Murf, yet another generator, allows anyone to convert text to speech, voiceovers, and dictation. It is highly beneficial to product creators, podcasters, instructors, and business professionals.
Music Generators
AI has been used to create music and assist composers for quite some time. One must feed software massive amounts of source material encompassing various types of music. The data is then analysed by the software to uncover patterns such as chords, tempo, length, and how notes relate to one another, and it can write its own melodies by learning from all of the input.
The AI music generator Soundraw.io allows you to modify a song using the phrases the AI created. The combination of AI in a music-generating tool helps generate music easily while customizing for innovative melodies. Another tool, Amper AI, is the easiest for AI music composers as it does not require coding knowledge, unpacking developer language on GitHub, composition, or music theory.
Text Generator
Generative AI can generate articles, real-time chats, blog posts, and product descriptions, as well as summarise textual content. These text-generator applications are used in social media, advertising, research, and communication.
Large language and text-to-image models have proliferated at leading technology companies like as Google (BERT and LaMDA), Facebook (OPT-175B, BlenderBot), and OpenAI, a charity in which Microsoft is a major investor (GPT-3 for text).
Once trained, a generative model can be “fine-tuned” for a certain content domain with considerably less input. This has resulted in specialised BERT models — for biomedical material (BioBERT), legal content (Legal-BERT), and French text (CamemBERT) — as well as GPT-3 for a wide range of specific applications.
Impact on Graphic Designing
With technological advancements, professional designers are fearful that Artificial Intelligence will overtake their jobs. The concern is legitimate — if robots are capable of art and are readily available and come for cheap, what will the future hold for artists?
However, those fears are based on myth. Designers will learn to co-create using AI technology as they have adapted to other design technologies, such as picture editing software and 3D architecture tools.
The truth is that a world ruled by robots is not the future of design. On the contrary, we live in a world where professional designers employ AI to streamline the design process and create a broader range of more sophisticated images.
So, let us understand how AI is assisting the design industry.
Understanding Visual Context
Conventional machines must be given a series of commands and follow them step by step. In design, this implies declaring which elements must be included in a specific graphic. However, AI designers work differently. They do not just generate graphics based on a series of orders; instead, they produce a design based on its context, just like a human would.
AI designers can recognise various forms, colours, patterns, and text kinds and save this information for later use. They can utilise this information to create aesthetically connect images, determine which logo colours fit the general colour scheme of a website, or choose fonts that fit a company’s brand image. This way, designers can decide if a given look is aesthetically appealing or inspires the appropriate atmosphere.
Customising the user Experience
Generative AI technology can collect massive amounts of market data about various businesses and target consumers. It can detect which graphics are most appealing to target consumers within specific industries by combining market data with design data. AI technology reduces the effort required for A/B testing website designs and advertising campaigns by making recommendations based on this data. AI is also at the heart of adaptive design technologies, which change the look of websites or online marketing materials based on who is browsing.
Generating additional Design options
Before AI, art had to be created on an individual basis. Marketing graphics and brand logos that needed small changes had to be designed by hand until they were flawless. And, if a client wanted variations of a comparable graphic, designers had to hand-create each one.
AI-assisted design is evident in the logo area with a thriving market of online AI-powered logo design tools that have revolutionized the industry. AI also helps with marcom design, as businesses can now release numerous distinct but linked designs as part of a single marketing campaign. Nutella, for example, outfitted an AI design tool with a customised algorithm to generate multiple variations of a specific visual concept, which was significantly more appealing to users than a single new label.
Organising tasks for Professional Designers
Designers nowadays spend a significant amount of time executing time-consuming activities such as cropping, scaling, and colour correction. Using AI to automate these processes completes the task in a single click, enabling designers to concentrate on more meaningful areas of their work and assisting them in being more effective at their employment.
Throughout the design process, AI design tools can engage with human designers, responding to their directions and providing feedback on their work. As designers generate new ideas, they can verbally dictate them to an AI design tool, which will also show them several other possibilities based on the original concept of their sketches. On completing the design, the tool can suggest changes and enhancements based on industry and target audience data for human designers to monitor and modify as needed.
While these technologies are still in their initial stages, they provide a clear glimpse of how human designers and robots will cohabit.
Generative AI and the Future
These few instances of commercial applications clarify that we are only scraping the surface of what generative AI can accomplish for businesses and their employees. Undoubtedly, developing such skills would have profound and unexpected ramifications for content ownership and intellectual property protection, but they would also change knowledge and creative labour. We can hardly anticipate all of the prospects and ramifications that these AI models may engender if they continue to grow at their current rate.
Rahul Shevde