Google Gemini Models
Crafting marketing campaigns is complicated and time-consuming. Businesses strive to promote sales with personalised, real-time campaigns that meet customer needs. To do this, segmentation, real-time data analysis, and the capacity to quickly develop and implement campaigns are needed. Businesses gain a substantial competitive edge when they can achieve this high degree of personalisation and adaptability.
Creative and data-driven marketing efforts have always worked. Generative AI is boosting both of these characteristics and could revolutionise marketing campaigns. Generative AI uses real-time data to produce personalised content at scale, including social media adverts, emails, and website material that is tailored to the user’s location and the images that are accessible. This is in contrast to the existing situation, in which marketers are limited in their ability to be creative and are bound by manual processes.
Although there is a place for traditional marketing strategies, the sheer amount of material required in today’s environment necessitates a more intelligent strategy. Marketing teams may now develop campaigns more rapidly, effectively, and personalizedly than ever before thanks to generative AI, which will boost customer happiness, engagement, and conversion rates.
Google Gemini LLM
Google Cloud will walk readers through the process of using multimodal large language models (LLMs) in BigQuery to generate and implement more clever and successful marketing strategies. For this example, Google Cloud uses Data Beans, a made-up tech startup that offers coffee shops a SaaS platform based on BigQuery. Data Beans speeds up creative workflows and produces customised ads at scale by utilising BigQuery’s interface with Vertex AI to access Google’s AI models, such as Gemini Pro 1.0 and Gemini Vision Pro 1.0.
Overview of the demonstration
The three parts of Data Beans’ marketing launch process are illustrated in this example, which uses Gemini models to produce aesthetically pleasing, locally relevant marketing campaigns for particular coffee menu items. In order to ensure that the photographs faithfully depict the genuine coffee things, Google Cloud first uses Gemini models to brainstorm and generate high-quality images from the selected menu item. Then, Google Cloud uses the same models to create customised marketing copy in each city’s local tongue. The campaign as a whole is then saved in BigQuery for monitoring and analysis after this text has been incorporated into formatted HTML email templates.
Formulate the query and produce a picture
Using Imagen 2, Google Cloud creates the initial picture prompt and the related image to kick off the marketing campaign. Since Google Cloud hasn’t yet provided the prompt with all the information it needs, this creates a quite simplistic visual that might not be entirely relevant.
Make the prompt better
After establishing the initial impression, Google Cloud is now concentrating on enhancing that impression by developing a better prompt. In order to enhance Google Cloud’s previous Imagen 2 prompt, this can be accomplished with Gemini Pro 1.0.
Check pictures and carry out quality assurance
Google Cloud will now check the generated output using LLMs. In essence, Google Cloud requests that the LLM verify whether every created image includes the meal components that Google Cloud requested. Does the image, for instance, contain the food or coffee from the prompt from Google Cloud? This will assist us in both confirming the existence of anything abstract and confirming the image’s quality. Google Cloud can also determine whether the image is visually appealing, which is important for a marketing effort.
Sort Photos
After undergoing quality assurance and verification, Google Cloud is now able to select the ideal image for their requirements. Google Cloud can utilise Gemini Pro 1.0 once more to accomplish this task for us, thanks to ingenious prompting, for the thousands of photographs that Google Cloud has produced. Google Cloud has asked Gemini Models to rate each image according to its visual impact, messaging clarity, and relevancy to the Google Cloud Data Beans brand in order to accomplish this. The candidate with the best score will thereafter be chosen by Google Cloud.
Create a campaign text in step five
Let’s create the greatest marketing copy now that Google Cloud has chosen the best image. Since Google Cloud stores all of the created data in BigQuery, JSON-formatted text is produced by Google Cloud. Text is being generated by Google Cloud to include promotions and other pertinent content.
Observe also how Google Cloud can utilise Gemini Pro 1.0 to localise marketing messages for the native languages of various nations.
Develop an email campaign using HTML
A web application incorporates the created artefacts for presentation. Google Cloud must develop an HTML email with embedded formatting and Google Cloud’s image to make distribution easier. Once more, using the graphics and text that Google Cloud generated in the preceding steps, Google Cloud uses Gemini Pro 1.0 to author Google Cloud’s marketing material as HTML.
Conclusions and Attachments
Creative professions are undergoing a change thanks to the incorporation of Learning Management Systems (LMSs) into workflows. By brainstorming and producing a lot of content, LLMs speed up automatically localised text development, analyse a lot of data, and give artists a range of high-quality imagery for their ads. Additionally, AI-powered quality checks guarantee that produced material satisfies required requirements.
Although the ingenuity of LLMs can occasionally yield irrelevant visuals, the “taste test” feature of Gemini Pro Vision 1.0 allows you to select the results that you find most pleasing. Furthermore, Gemini Pro Vision 1.0 offers illuminating justifications for its selection procedure. With support for code generation and the ability to generate content in local languages, Gemini Pro 1.0 increases audience engagement without requiring knowledge of HTML.
News source: Gemini Models
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