- https://plantuml.com/
- plantuml in VS' marketplace : https://marketplace.visualstudio.com/items?itemName=jebbs.plantuml
- try the following code in this editor https://editor.plantuml.com
@startuml
Alice -> Bob : hello
@enduml
@startuml
Alice -> Bob : hello
@enduml
Superlinear คือ slop เพิ่มขึ้นเรื่อยๆ (โตเร็วกว่า linear)
Sublinear คือ slope ลดลงเรือยๆ (โตช้ากว่า linear)
Example:
Whisper is a general-purpose speech recognition model. It is trained on a large dataset of diverse audio and is also a multitasking model that can perform multilingual speech recognition, speech translation, and language identification.
Collaborative Filtering (finding similar users/items based on past behavior), Content-Based Filtering (recommending items with similar features to what a user liked), and Hybrid Systems (combining both for better results). Other advanced types include Knowledge-Based, Deep Learning, and Demographic systems, which leverage different data points like item attributes, complex patterns, or user demographics to provide personalized suggestions.
Collaborative Filtering (CF):AWS Cloudformation
Terraform (https://developer.hashicorp.com/terraform/tutorials/aws-get-started/infrastructure-as-code)
OR-Tools is an open source software suite for optimization, tuned for tackling the world's toughest problems in vehicle routing, flows, integer and linear programming, and constraint programming.
Online learning (or online machine learning) is a method in machine learning where the model continuously learns from a sequential stream of data, updating its parameters incrementally with each new data instance or small batch of data.
It is a dynamic process that allows a model to adapt to new patterns and changes in the data distribution in real-time.
Online learning is the opposite of the more traditional Batch Learning (or Offline Learning) approach.
Workflow automation tool
https://n8n.io/
AI builder tool
https://www.langflow.org/
https://towardsdatascience.com/evaluating-your-rag-solution/
Notebooklm is RAG as we can add files to let users ask anything about the files.
You can use this plot to make an educated decision when it comes to the classic precision/recall dilemma. Obviously, the higher the recall, the lower the precision. Knowing at which recall your precision starts to fall fast can help you choose the threshold and deliver a better model.
https://neptune.ai/blog/f1-score-accuracy-roc-auc-pr-auc
The precision recall curve is a handy plot to showcase the relationship and tradeoff between precision recall values as we adjust the decision threshold of the classifier. What is the decision threshold? The decision threshold, also called the classification threshold, is a cutoff point used in binary classification to convert the probability score output by a machine learning model into a final class prediction (positive or negative). Most binary classification models (like logistic regression) output a probability between 0 and 1 that an instance belongs to the positive class. The decision threshold determines which probability values map to which class: If the predicted probability is greater than or equal to the threshold, the instance is classified as the positive class. If the predicted probability is less than the threshold, the instance is classified as the negative class. How it Works By default, the threshold is often set to 0.5. A probability of \ge 0.5 \rightarrow Positive Class A probability of < 0.5 \rightarrow Negative Class However, this default isn't always optimal. The threshold is a hyperparameter that can be tuned to balance the trade-off between precision and recall, which is what the precision-recall curve helps to visualize. Threshold and Precision/Recall Trade-off Adjusting the decision threshold directly impacts the number of false positives (FP) and false negatives (FN), which in turn changes the precision and recall values.
A higher AUC-PR value signifies better performance, with a maximum value of 1 indicating perfect precision and recall trade-off. https://www.superannotate.com/blog/mean-average-precision-and-its-uses-in-object-detection
The primary difference is that AI Agents are individual tools that execute pre-defined tasks with limited autonomy, while Agentic AI is a broader concept representing the use of autonomous systems that can independently set goals, make real-time decisions, adapt, and collaborate to solve complex, dynamic problems. Think of AI agents as specific tools or employees, and agentic AI as the system or project manager coordinating them to achieve a larger, more complex goal.