Notes on metadata of LLMs/GAI/AI to tie accountability, liability and more in legal terms plus study it's evolution and analyze - Part 1
Following up on my thoughts here: https://www.dhirubhai.net/posts/activity-7296196592175321089-jk1B - I asked ChatGPT on metadata to achieve my goals as in the post. Here are it's inputs. My focus is on legal accountability and evolution along with visualization / analysis of this meta-data.
Some notes on metadata for AI/GAI/LLM and it's legal ramifications for accountability:
Wouldn't it be nice if LLMs / GAI when giving us an output also give us sources (many of them already give) and with it give us some parameters/factors/weights that make the decision explainable / interpretable. We can then compare over time how they are evolving, was the decision similar for two different questions in same domain and so on. It can take us to a whole new area of AI which is related to it's evolution and analytics if we visualize it and run statistics / mathematics / time series over it.Just a thought. Food for the next blog.
--> Tagging: Creative, Factual, etc.
--> Explainable output of factors: Built from weights of used nodes and connections / inputs / outputs, etc. like hashing in file integrity
--> Sources
--> Notice for copyrights, etc. specific to LLMs like when was it generated and methodology
--> And so on.
Public meta data for LLMs / GAI can be formed this way leading to accountability. This has legal ramifications as well for liability.
Stay informed at:
Additional reference: https://www.dhirubhai.net/pulse/what-points-can-part-fair-use-disclaimer-generativeai-neil-harwani/
******************
What all can be used as public metadata from LLMs for running statistics, mathematics and time series analysis on that meta data?
Yes! Metadata related to weights and neural network usage in Large Language Models (LLMs) can provide valuable insights for statistics, mathematics, and time series analysis. These metadata fields can be collected and analyzed for model performance optimization, efficiency tracking, interpretability, and trend analysis. Below are some key metadata categories related to weights and neural network usage.
1. Model-Specific Metadata
These fields describe the underlying LLM architecture, useful for hardware optimization, performance tracking, and statistical modeling.
A. Model Weights and Training Metadata
B. Compute and Efficiency Metadata
C. Attention and Transformer-Specific Metadata
For transformer-based LLMs like GPT, BERT, etc.:
2. Statistical & Time-Series Analysis on Model Weights
These metadata fields can be used for various analytical techniques:
A. Descriptive Statistics
B. Time-Series Analysis
C. Mathematical Modeling
D. Machine Learning Applications
3. Practical Use Cases
These metadata fields can be used for:
Would you like me to generate a sample dataset or visualization for any of these metadata categories? ??
*****************
Is there any metadata for weights / neural network usage
What all can be used as public metadata from LLMs for running statistics, mathematics and time series analysis on that meta data?
When working with metadata from Large Language Models (LLMs) for running statistics, mathematics, and time series analysis, you can leverage various public metadata attributes. These metadata fields can be used for analysis depending on the specific application, such as performance evaluation, bias detection, trend analysis, or content summarization.
1. General Metadata Fields
These metadata fields can be collected while running an LLM and can be useful for statistical and time series analysis:
A. Interaction-Based Metadata
B. Content-Based Metadata
C. Statistical and Mathematical Metadata
2. Statistical & Mathematical Applications
Using the metadata fields above, you can apply different mathematical techniques:
A. Descriptive Statistics
B. Time Series Analysis
C. Probability & Machine Learning
D. Graph & Network Analysis
3. Use Cases of Meta-Data Analytics
Would you like me to generate a sample dataset or visualization based on any of these metadata fields? ??