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This article lists the common ModelOps terminology that is used within the industry and ModelOp Center software.

List of Terminology

ModelOp Center is the the leading enterprise-grade ModelOps software, helping large companies organize their enterprise AI efforts.

Term

Definition

Abstraction

The art of replacing specific details about a model with generic ones.

Artificial intelligence (AI)

A computer engineering discipline using mathematical or logic-based techniques to uncover, capture, or code knowledge and sophisticated techniques to arrive at inferences or predictions to solve business problems.

Asset

Any individual component that is used and required during a model’s life cycle, such as model source code, schemas, dependencies, serialized objects, training artifacts, etc.

Associated Model

A model that is linked to another model. An associated model may be a model implementation of a use case, or another model as part of an ensemble, or it may be a monitoring model.

Data drift

The evolution of data over time, potentially introducing previously unseen variety and/or new categories of data that deviates from a baseline data, which is often the training data set.

Deployment (aka Productionization or Operationalization)

The process of making a model available for use by the business.

Enterprise AI

Enterprise AI encompasses the end-to-end business processes by which organizations incorporate AI into 24x7 business functions that are accountable, manageable and governable at enterprise scale.

Governance

The processes and policies to manage and mitigate risk in the usage of analytical models across the enterprise.

Inferences

Descriptions of the relationship between the independent variables and the outcomes in a data set.

Interpretability

The ability of a human to retrace how a model generates its inferences or predictions.

Lineage

All human and system interactions (code changes, testing, promotions, approvals, etc) that have occurred throughout a model’s entire life cycle.

Machine learning (ML)

A subset of AI that uses algorithms to parse data, capture knowledge, and develop predictions or determinations. ML models are first trained on data sets; then, once in production, use a closed-loop process to “learn” from experience and improve the accuracy of their predictions or determinations. Some ML models are both complex and opaque, making it difficult to explain how the models arrive at specific predictions or determinations.

Model

A set of code that represents functions, actions, and predictions important to the business.

Model debt

The implied cost of undeployed models and/or models deployed without proper monitoring and governance.

Model decay

A change in model performance that makes it less accurate in its inferences or predictions.

Model life cycle (MLC)

A model's journey from use case inception, to development, independent validation, productionization, monitoring, iteration, and ultimately retirement.

ModelOps

The key strategic capability for operationalizing enterprise AI. ModelOps encompasses the systems and processes that streamline the orchestration, monitoring, governance, and continuous improvement of data science models, but its fundamental role is to improve business results.

Monitoring

The act of observing statistical, technical, and ethical aspects of a model's performance in operation.

Predictions

Descriptions of the relationship between the independent variables and the outcomes in a data set which are used to estimate outcomes for new data points.

Reference (Base) Model

Typically the primary (base) model that is providing business-decisioning. The Reference model may have 1 or more associated models that refer to the Reference model.

Schema

The definition of a model’s expected data inputs or outputs expressed in a standard way.

Shadow AI

The implied cost and risk of deployment of AI initiatives and models in production with no accountability to IT or governance organizations. It is expected to be the biggest risk to effective and ethical decision.

Training

Tuning model parameters to optimize performance on a particular data set, with the typical output being a trained model artifact.

(AI) Use Case

A business problem that can be addressed by AI, ML, or Advanced Analytics

Model-Specific Metadata:

For a given Model registered in ModelOp Center, ModelOp Center stores a substantial amount of metadata about the model. The details can be found in this article.

Specifically within the ModelOp Center model metadata, there are a few elements that do not have industry standard terminology. Therefore, the purpose of these elements within the ModelOp Center platform have been defined here:

modelName

The user-supplied name of the model

description

The user-supplied description of the model

group

The LDAP group to which the model is registered

modelOrganization

The name of the “organization” or “team” that owns the model.

modelCategory

The technical type of model: BUSINESS_MODEL, MODEL_MONITORING_MODEL

modelUseCategory

The “class” or “type” of model, such as “credit”, “fraud”, “marketing”, etc.

modelMethodology

The methodology used for the model (e.g. OLS, WLS, Arima, CNN, etc)

modelRisk

The risk classification of the model, such as “high risk”, “medium risk”, or “low risk”.

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