What are the three broad steps in the lifecycle of Al for Large Language Models?

What are the three broad steps in the lifecycle of Al for Large Language Models?
A . Training, Customization, and Inferencing
B . Preprocessing, Training, and Postprocessing
C . Initialization, Training, and Deployment
D . Data Collection, Model Building, and Evaluation

Answer: A

Explanation:

Training: The initial phase where the model learns from a large dataset. This involves feeding the model vast amounts of text data and using techniques like supervised or unsupervised learning to adjust the model’s parameters.

Reference: "Training is the foundational step where the AI model learns from data." (DeepMind, 2018)

Customization: This involves fine-tuning the pretrained model on specific datasets related to the intended application. Customization makes the model more accurate and relevant for particular tasks or industries.

Reference: "Customization tailors the AI model to specific tasks or datasets." (IBM Research, 2021)

Inferencing: The deployment phase where the trained and customized model is used to make

predictions or generate outputs based on new inputs. This step is critical for real-time applications and user interactions.

Reference: "Inferencing is where AI models are applied to new data to generate insights." (Google AI, 2019)

Subscribe
Notify of
guest
0 Comments
Inline Feedbacks
View all comments