Advertising and marketing groups face rising strain to create partaking campaigns shortly whereas sustaining model consistency and inventive high quality. Conventional advertising and marketing marketing campaign creation processes usually contain a number of iterations between inventive groups, stakeholders, and exterior companies, resulting in prolonged timelines and elevated prices.
The arrival and availability of generative fashions (particularly picture and video era ones) has opened the likelihood to shortly iterate via a number of marketing campaign proposals in minutes. However, environment friendly marketing campaign creation aided by generative fashions nonetheless requires a excessive stage of expertise and mastery of generative instruments resembling immediate engineering, parameter fine-tuning, software of guardrails, and so forth. Modifying, scripting, and post-production expertise are additionally essential to create gorgeous tales.
On this put up, the primary of a collection of three, we concentrate on how you should utilize Amazon Nova to streamline, simplify, and speed up advertising and marketing marketing campaign creation via generative AI. We present how Bancolombia, one among Colombia’s largest banks, is experimenting with the Amazon Nova fashions to generate visuals for his or her advertising and marketing campaigns.
The problem of recent advertising and marketing campaigns
The challenges to create partaking advertising and marketing campaigns prolong far past inventive overhead, impacting companies at operational, monetary, and strategic ranges. The traditional method to advertising and marketing marketing campaign creation sometimes entails a fancy technique of interactions between inner groups, exterior companies, and stakeholders—every with their very own priorities, suggestions cycles, and approval processes.
One of the vital ache factors in conventional advertising and marketing marketing campaign creation is the time-intensive nature of the work. From preliminary idea growth to closing asset manufacturing, campaigns usually require weeks and even months to maneuver from ideation to execution. This prolonged timeline would possibly embody a number of rounds of revisions, stakeholder approvals, and asset refinements that may characterize an overhead within the inner course of. Nonetheless, when speaking concerning the advertising and marketing enterprise, the context by which campaigns are launched is what issues. Exterior components like latest information, style developments, new launched merchandise, and season of the yr can impression the person’s acceptance of the campaigns. That’s the reason time is essential for advertising and marketing, and a delayed launch for the marketing campaign can imply lacking essential home windows or permitting opponents to seize viewers consideration first.
The monetary implications of those conventional strategies are equally regarding. Advertising and marketing groups steadily face finances constraints whereas being anticipated to ship refined campaigns throughout a number of channels and supply codecs resembling social media posts, quick movies, touchdown pages, and extra. The prices related to a marketing campaign creation—together with company charges, manufacturing bills, and the chance price of delayed launch—can shortly escalate. In accordance with a Gartner survey, in 2024, corporations lowered their advertising and marketing finances from 9.9% to 7.7% of their whole finances, additional constraining the sources and time allotted for creating advertising and marketing campaigns. This finances crunch is exactly why AI instruments have gotten important reasonably than optionally available for advertising and marketing groups.
Past time and value issues, advertising and marketing groups wrestle with a basic stress. They need to keep constant model id whereas creating recent, partaking content material on the tempo {the marketplace} calls for. This problem will get much more difficult by content material personalization throughout numerous techniques and codecs, every with their very own technical necessities and finest practices. In response, we’re seeing corporations fully rethink how they allocate sources. Many are shifting towards paid media and reducing again on legacy applied sciences, decreasing headcount, and scaling again company relationships. This creates an fascinating state of affairs by which AI instruments are each inflicting finances reductions (by making groups extra environment friendly) and serving to groups survive those self same finances cuts.
The true-world impression is important. Advertising and marketing groups utilizing generative AI can now produce in hours what used to take days or even weeks. These instruments aren’t simply creating effectivity—they’re enabling solely new approaches to content material creation. This technological shift has created good situations for implementing superior generative fashions that may produce high-quality photos, movies, and different visible property at a scale beforehand unattainable with conventional strategies.
Amazon Nova household of basis fashions
Amazon Nova is a household of basis fashions (FMs), out there utilizing APIs via Amazon Bedrock, created by Amazon, and differentiated by its nice price-performance fee.
The household consists of the next subfamilies:
- Amazon Nova Understanding Fashions – Understanding fashions that settle for textual content, picture, and video inputs and generate textual content output. They supply a broad number of functionality, accuracy, velocity, and value operation factors. Composed of 4 fashions: Amazon Nova Micro, Amazon Nova Lite, Amazon Nova Professional, Amazon Nova Premier.
- Amazon Nova Artistic Content material Technology Fashions – Artistic content material era fashions that settle for textual content and picture inputs and produce picture or video outputs. Built-in by two fashions: Amazon Nova Canvas (picture era) and Amazon Nova Reel (video era).
- Amazon Nova Speech-to-Speech Fashions – Contains just one mannequin, Amazon Nova Sonic, a speech-to-speech mannequin that accepts speech as enter and generates speech and textual content as output. The mannequin is designed to ship real-time, humanlike voice conversations with contextual richness.
Picture era with Amazon Nova Canvas
With Amazon Nova Canvas you possibly can generate lifelike, studio-quality photos through the use of textual content prompts. Amazon Nova Canvas is able to producing photos as much as 2K x 2K. Amazon Nova Canvas can be able to picture modifying present photos utilizing textual content prompts to information the version. Confer with the Visible information to Amazon Nova Canvas to discover the probabilities supplied by the Nova Canvas mannequin. To programmatically generate a picture, enter the next code:
Discover extra Amazon Nova examples within the Amazon Nova samples GitHub repository.
You’ll be able to study immediate engineering for Amazon Nova Canvas and Amazon Nova Reel at Picture and video immediate engineering for Amazon Nova Canvas and Amazon Nova Reel within the AWS Synthetic Intelligence Weblog.
Speed up the creation of visible property for advertising and marketing campaigns utilizing Amazon Nova
To streamline the era of promoting marketing campaign visible property we suggest an automatic course of, aided by generative AI, to transition from marketing campaign thought to a set of visible property for the marketing campaign. Our proposed course of is described as follows:
- You present an outline of your marketing campaign
- The system mechanically retrieves earlier marketing campaign photos associated to your present marketing campaign, and you may choose those who higher represents the concepts to your new marketing campaign
- The system will generate a reference immediate (utilizing Amazon Nova Professional) to generate your marketing campaign’s photos utilizing Amazon Nova Canvas. You’ll be able to edit this immediate.
- The system will generate as much as 5 photos to your marketing campaign.
We now discover a few of the key ideas of this answer.
Reference picture advice
After offering the outline of our picture, we seek for photos associated to our marketing campaign inside a picture database. Such a search returns photos carefully associated to the marketing campaign subject that have been utilized in earlier campaigns and have confirmed profitable up to now. The person can choose a few of the reference photos to information the creation of our new visible property. This method is the subject of dialogue of the subsequent installment on this collection. We encourage you to learn it to realize a deeper understanding of how we created an environment friendly search engine utilizing multimodal embeddings fashions and vector databases.
Creating good picture era prompts utilizing giant language fashions (LLMs)
Though Amazon Nova inventive fashions have some understanding of languages resembling Spanish or German, English stays the one absolutely supported language. Due to this fact, customers ought to craft their prompts in English to maximise the capabilities of Amazon Nova inventive fashions. Furthermore, prompting inventive fashions successfully requires a distinct method than when working with understanding fashions. Even skilled immediate engineers might have time to adapt their methods to completely unlock a inventive mannequin’s potential. For newcomers to LLM-based content material era, this studying curve could be significantly steep.
To handle these challenges, we use a approach referred to as metaprompting. This method entails instructing one LLM to generate efficient prompts for different FMs. For instance, we are able to use Amazon Nova Professional to craft high-quality prompts for Amazon Nova Canvas to generate photos.
The next immediate template demonstrates learn how to instruct Amazon Nova Professional to generate optimized text-to-image prompts based mostly on a easy picture description (highlighted in daring):
The reply is:
As you possibly can see, we get a immediate that’s aligned with the necessities of Amazon Nova Canvas, and we get a high-quality picture.
Out metaprompt template has 4 sections:
- We set the persona and the high-level activity (environment friendly immediate creation).
- We set the principles we count on to be adopted when writing the immediate. For instance, we offer the character limits and instruct the mannequin to reply solely in English.
- We set tips that describe how we would like the immediate to be constructed however aren’t necessary. There are additionally some hints about key phrases used within the closing mannequin, so the metaprompt encourages the mannequin to make use of them in its output.
- We establish the ultimate output.
If you wish to discover extra metaprompting concepts, the weblog put up Enhance Amazon Nova migration efficiency with data-aware immediate optimization has good insights. For finest practices for writing prompts for Amazon Nova understanding fashions, consult with the Amazon Nova Person Information.
Resolution structure
We now suggest a reference structure to implement the concepts mentioned above. The structure is as follows:
- Amazon Bedrock is used to invoke the Amazon Nova Professional and Amazon Nova Canvas fashions utilizing a standard API.
- Amazon Lambda capabilities are used to create metaprompts, generate photos, retrieve associated photos and retailer the marketing campaign in a database.
- The marketing campaign’s data is saved in an Amazon DynamoDB database.
- APIs are managed utilizing Amazon API Gateway.
- Amazon Cognito is used to handle the customers of the applying.
The next diagram reveals the structure.
How Bancolombia is utilizing Amazon Nova to streamline their advertising and marketing marketing campaign property era
Bancolombia, one among Colombia’s main banks has been experimenting with this method for over a yr now. Often, strategic advertising and marketing in Bancolombia begins with a short that units out the objectives, audience and important messages. An in depth transient, usually containing visible examples and information evaluation, will help streamline the workflow between the groups and stakeholders.
“There are sometimes many conferences and rounds of modifications wanted between making the transient and getting all of the stakeholders aligned”, mentioned Juan Pablo Duque, Advertising and marketing Scientist Lead at Bancolombia. “That is the place we realized we might herald new applied sciences. The saying ‘an image is price a thousand phrases’ could be very true. It could be nice if advertising and marketing analysts might use generative AI to make visible references. Fairly than simply utilizing textual content, they could draw a transparent illustration of what they’re pondering.”
“We began to experiment, and after each iteration, we discovered extra choices. For instance, what if we checked out data from earlier campaigns? Many earlier initiatives had the identical objectives and the way they carried out can be utilized as helpful data. Utilizing visuals along with confirmed marketing campaign components would give the inventive staff a stronger basis which might assist them save time within the early levels of making concepts.
As generative fashions maintain bettering, they might cowl your entire design course of by producing photos and adjusting them for various digital makes use of. This implies producing content material following our platform’s tips. With this workflow, publishing could be carried out quicker, groups can react to present developments, enhance on content material that isn’t doing properly and supply messages which can be extra constant.”
Implementation finest practices
On this part, we suggest a set of finest practices for readers aspiring to automate the era of promoting campaigns.The next are some technical issues and tips:
- Modular structure – Implement the answer utilizing a modular method, separating the picture search engine and visible era elements. This enables for simple upkeep and future enhancements.
- Serverless first – Use serverless applied sciences resembling AWS Lambda and Amazon API Gateway to cut back operational overhead and enhance scalability.
- Mannequin model management – Hold monitor of the precise variations of Amazon Nova fashions utilized in your implementation. This helps reproducibility and helps in troubleshooting.
For safety finest practices, take into account these tips:
- Least privilege entry – Use AWS Identification and Entry Administration (IAM) roles with the precept of least privilege for all elements, particularly when accessing Amazon Bedrock and different AWS providers.
- Encryption in transit and at relaxation – Be certain that all information, together with marketing campaign descriptions and generated photos, is encrypted each in transit and at relaxation utilizing AWS Key Administration Service (AWS KMS).
- Enter validation – Implement strict enter validation for all person inputs to assist stop potential safety vulnerabilities, particularly within the marketing campaign description and immediate modifying levels.
- Safe API entry – Use Amazon Cognito for person authentication and authorization to safe entry to your API endpoints.
To optimize efficiency, observe these tips:
- Caching technique – Implement a caching layer utilizing Amazon ElastiCache to retailer steadily accessed information, resembling fashionable marketing campaign descriptions or generally used reference photos.
- Asynchronous processing – For picture era duties that may take longer, implement asynchronous processing to enhance person expertise and system responsiveness.
- Auto scaling – Configure auto scaling to your Lambda capabilities and API Gateway to deal with various hundreds effectively.
For error dealing with and monitoring, observe these tips:
- Complete logging – Implement detailed logging utilizing Amazon CloudWatch Logs to seize system occasions, person actions, and mannequin interactions.
- Automated alerts – Arrange CloudWatch alarms to observe key metrics and ship notifications for anomalies or errors.
- Sleek degradation – Design the system to gracefully deal with failures, resembling short-term unavailability of the Amazon Nova fashions, by implementing applicable fallback mechanisms.
- Common audits – Conduct periodic audits of your generated content material to confirm compliance with model tips and moral requirements.
By following these finest practices, you possibly can keep a dependable, safe, and environment friendly implementation of your generative AI advertising and marketing marketing campaign answer. Common monitoring and upkeep will help you establish areas for enchancment and maintain your system optimized as your marketing campaign wants evolve.
Conclusion
On this put up, we demonstrated learn how to use the Amazon Nova household of FMs to revolutionize advertising and marketing marketing campaign creation via an automatic, AI-driven method. By combining Amazon Nova Professional for clever immediate era and Amazon Nova Canvas for high-quality picture creation, we’ve proven how advertising and marketing groups can dramatically scale back the time and sources required to provide compelling visible property whereas sustaining model consistency and inventive high quality.Trying forward, this answer could be prolonged to help further use instances resembling:
- Integration with advertising and marketing automation providers
- Superior personalization utilizing buyer insights
- Multi-channel marketing campaign asset era
- A/B testing automation for visible content material
Within the subsequent installment of this collection, we’ll handle learn how to incorporate data from earlier marketing campaign photos to enhance the inventive course of.
We additionally encourage you to discover the capabilities of the Amazon Nova household of fashions to your advertising and marketing workflows. You will get began by deploying the answer publicly out there within the generative AI ML latam samples GitHub repository.
In regards to the authors
David Laredo is a Prototyping Architect at AWS, the place he helps clients uncover the artwork of the potential via disruptive applied sciences and speedy prototyping methods. He’s enthusiastic about AI/ML and generative AI, for which he writes weblog posts and participates in public talking periods throughout LATAM. He at present leads the AI/ML specialists group in LATAM.
Josué Martínez is Sr Options Architect with +25 years of expertise in IT. Final 10 in Cloud Applied sciences with concentrate on AI/ML options. Josue loves nature an spending time to its household figuring out magic locations. Nonetheless coding for enjoyable.
Dr. José Gardiazabal is a Options Architect at AWS, centered on Healthcare and Life Sciences. He’s enthusiastic about studying new applied sciences, and discovering out learn how to assist clients with them. He’s additionally working with clients utilizing IoT throughout Latin America.
Arturo Minor is a prototyping options architect based mostly in Mexico Metropolis. He enjoys the outside and touring, and is desirous about laptop science, languages, and expertise. He works at AWS serving to shoppers innovate, develop, and visualize new options.
Jorge Lopez is a Sr Options Architect at AWS with over 10 years of expertise in expertise. He’s a technical chief in AI/ML at AWS.
Juan Pablo Duque is a Advertising and marketing Science Lead at Bancolombia, the place he merges science and advertising and marketing to drive effectivity and effectiveness. He transforms advanced analytics into compelling narratives. Obsessed with GenAI in MarTech, he writes informative weblog posts. He leads information scientists devoted to reshaping the advertising and marketing panorama and defining new methods to measure.



