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Deploying GENERATIVE AI MODELS Efficiently
Electronics For You
|March 2026
Enterprise deployment of Generative AI depends on the seamless optimisation of hardware and software, driving higher performance at lower cost. It highlights the purpose-built hardware powering GenAl and the software methods that help enterprises extract maximum efficiency.
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OpenAl’s launch of ChatGPT powered by GPT-2 in mid-2020, showcased a model with 175 billion parameters, a monumental breakthrough at the time.
By the arrival of GPT-4, parameter counts had surged into the trillions, enabling sophisticated chat assistants, code generation, and creative applications, yet imposing unprecedented strain on compute infrastructure. Organisations are leveraging open source GenAI models, such as LLaMA, to streamline operations, enhance customer interactions, and empower developers. Choosing an LLM optimised for efficiency enables significant savings in inference hardware costs. The subsequent section explores how this is achieved.
As generative AI adoption soars, the significance of LLM parameters becomes clear
Since the public launch of ChatGPT, the adoption of generative AI has skyrocketed, capturing the imagination of consumers and enterprises alike. Its unprecedented accessibility empowered not just developers but also nontechnical users to embed AI into their everyday workflows.
Central to this evolution is a fundamental measure of progress: LLM parameters, the trainable weights that are fine-tuned during learning to determine the model’s capability. In 2017, early generative AI models based on the Transformer architecture featured approximately 65 million trainable parameters.
This explosive growth has reinforced the belief that ‘bigger is better,’ positioning trillion-parameter models as the benchmark for AI success. However, these massive models are typically optimised for broad, consumer-oriented applications rather than specialised needs.
For enterprises that demand domain-specific accuracy and efficiency, blindly pursuing larger parameter counts can be both costly and counterproductive. The key question is whether a model’s scale matches the problem it aims to solve.
Analysing large language models through a technical lens, not marketing spin
This story is from the March 2026 edition of Electronics For You.
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