December 4, 2023 By Parul Mishra 3 min read

The surge in adoption of generative AI is happening in organizations across every industry, and the generative AI market is projected to grow by 27.02% in the next 10 years according to Precedence Research. Advacements in machine learning algorithms, neural networks and the computational power of generative AI, combined with human expertise, intuition and creativity, can unlock new possibilities and achieve levels of innovation that were previously unimaginable. As a result, we are seeing that businesses are recognizing the enormous potential of generative AI, increasing their adoption rates and exploring novel use cases.

There are many ways generative AI can revolutionize businesses and transform AI adoption for developers. These include the automation of creative and content-related tasks, the integration of generative AI into existing technology stacks and the increasing adoption of low-code development platforms. All of these can help organizations save valuable time and resources, while also freeing developers to focus on other priorities.

Generative AI can also help developers improve their skills as they deal with more complex tasks. And the abundance of data available for training models has opened up vast possibilities for experimentation and learning. At this exciting frontier, it’s essential that developers adopt generative AI solutions that are right for them.

When developers consider adopting generative AI, they should assess the technology based on the following criteria:

  1. Problem fit: Developers should evaluate whether generative AI is suitable for addressing their specific problems or use cases. They must consider whether the technology can generate the desired output (such as images, text or audio) that aligns with their specific needs. Understanding the capabilities and limitations of generative AI in relation to the problem at hand is crucial for successful adoption.
  2. Performance and accuracy: As developers assess the performance and accuracy of generative AI models, they should consider metrics such as the quality of the generated outputs, the ability to generalize to different inputs or scenarios, and the consistency of results. Evaluating the performance of generative AI models ensures that they meet desired standards and can provide reliable outputs.
  3. Scalability and resource requirements: When analyzing the scalability and resource requirements of generative AI models, developers should consider factors such as the computational resources, memory and infrastructure needed for training and inference. Scalability is important when it comes to handling large-scale datasets and ensuring efficient deployment across different systems and environments.
  4. Ethical considerations: In order to responsibly adopt generative AI, developers must pay attention to the associated ethical implicaations. They should consider factors such as data privacy, fairness, bias and potentially harmful or unethical uses. Ensuring that generative AI models adhere to ethical guidelines and that adequate processes are in place to mitigate risks and biases is essential.
  5. Development and integration complexity: As developers assess the complexity of developing and integrating generative AI within their existing systems or workflows, they must consider factors such as the availability of tools, frameworks and libraries that support generative AI development. It is also important to consider compatibility with existing codebases, ease of deployment and integration with other technologies to ensure efficient adoption.

These five criteria can guide developers as they begin their generative AI adoption journey, but developers may need to consider additional criteria based on their specific requirements, industry standards or organizational needs. A thorough evaluation process is critical to helping developers make informed decisions to maximize the benefits of adopting generative AI technology.

Generative AI is not just a passing trend; it is a game-changer in the AI landscape. The ability to automate creative tasks, integrated seamlessly into existing processes makes AI and automation capabilities like IBM watsonx.ai, IBM watsonx Orchestrate and IBM watsonx Code Assistant essential tools for organizations across industries. As the market continues to evolve, the adoption of generative AI is positioned to reshape how businesses operate, unlocking new opportunities and transforming industries. Developers who thoughtfully embrace this technology will undoubtedly thrive in a world that is increasingly reliant on AI.

Explore IBM watsonx Orchestrate™ Try the watsonx Orchestrate interactive demo Explore watsonx Code Assistant today
Was this article helpful?
YesNo

More from Automation

Scale enterprise gen AI for code generation with IBM Granite code models, available as NVIDIA NIM inference microservices

3 min read - Many enterprises today are moving from generative AI (gen AI) experimentation to production, deployment and scaling. Code generation and modernization are now among the top enterprise use cases that offer a clear path to value creation, cost reduction and return on investment (ROI). IBM® Granite™ is a family of enterprise-grade models developed by IBM Research® with rigorous data governance and regulatory compliance. Granite currently supports multilingual language and code modalities. And as of the NVIDIA AI Summit in Taiwan this…

Maximizing SaaS application analytics value with AI

5 min read - Software as a service (SaaS) applications have become a boon for enterprises looking to maximize network agility while minimizing costs. They offer app developers on-demand scalability and faster time-to-benefit for new features and software updates.  SaaS takes advantage of cloud computing infrastructure and economies of scale to provide clients a more streamlined approach to adopting, using and paying for software. However, SaaS architectures can easily overwhelm DevOps teams with data aggregation, sorting and analysis tasks. Given the volume of SaaS…

Streamlining digital commerce: Integrating IBM API Connect with ONDC 

3 min read - In the dynamic landscape of digital commerce, seamless integration and efficient communication drive the success of buyers, sellers and logistics providers. The Open Network for Digital Commerce (ONDC) platform stands as a revolutionary initiative to streamline the digital commerce ecosystem in India. When coupled with the robust capabilities of IBM API Connect®, this integration presents a game-changing opportunity for buyers, sellers and logistics partners to thrive in the digital marketplace. Let's delve into its benefits and potential impact on business.…

IBM Newsletters

Get our newsletters and topic updates that deliver the latest thought leadership and insights on emerging trends.
Subscribe now More newsletters