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MLOps Dictionary
Comprehensive terminology guide for ML solutions and feature stores.
A
B
C
D
E
F
G
H
I
K
L
M
N
O
P
Q
R
S
T
U
V
A
AI Lakehouse
AI Pipeline
Auto-regressive Models
AutoML
B
Backfill features
Backfill training data
Backpressure for feature stores
Batch Inference Pipeline
C
CI/CD for MLOps
Compound AI Systems
Context Window for LLMs
D
DAG Processing Model
Data Compatibility
Data Contract
Data Lakehouse
Data Leakage
Data Modeling
Data Partitioning
Data Pipelines
Data Quality
Data Transformation
Data Type (for features)
Data Validation (for features)
Data Warehouse
Data-Centric ML
Dimensional Modeling and Feature Stores
Downstream
E
ELT
Embedding
Encoding (for Features)
Entity
ETL
F
Feature
Feature Data
Feature Engineering
Feature Freshness
Feature Function
Feature Groups
Feature Logic
Feature Monitoring
Feature Pipeline
Feature Platform
Feature Reuse
Feature Selection
Feature Service
Feature Store: The Definitive Guide
Feature Type
Feature Value
Feature Vector
Feature View
Filtering
Fine-Tuning LLMs
Flash Attention
Function Calling with LLMs
G
Generative AI
Gradient Accumulation
Grouped Query Attention
H
Hallucinations in LLMs
Hyperparameter
Hyperparameter Tuning
I
Idempotent Machine Learning Pipelines
In Context Learning (ICL)
Inference Data
Inference Logs
Inference Pipeline
Instruction Datasets for Fine-Tuning LLMs
K
KServe
L
Lagged features
LangChain
Latent Space
LLM Code Interpreter
LLM Temperature
LLMOps
LLMs - Large Language Models
M
Machine Learning Infrastructure
Machine Learning Logs
Machine Learning Observability
Machine Learning Pipeline
Machine Learning Systems
ML
ML Artifacts (ML Assets)
MLOps
MLOps Platform
Model Architecture
Model Bias
Model Context Protocol
Model Deployment
Model Development
Model Evaluation (Model Validation)
Model Governance
Model Inference
Model Interpretability
Model Monitoring
Model Performance
Model Quantization
Model Registry
Model Serving
Model Training
Model-Centric ML
Model-Dependent Transformations
Model-Independent Transformations
Monolithic Machine Learning Pipeline
MVPS
N
Natural Language Processing (NLP)
O
Offline Store
On-Demand Features
On-Demand Transformation
Online Inference Pipeline
Online Store
Online-Offline Feature Skew
Online-Offline Feature Store Consistency
Orchestration
P
PagedAttention
Pandas UDF
Parameter-Efficient Fine-Tuning (PEFT) of LLMs
Point-in-Time Correct Joins
Precomputed Features
Prompt Engineering
Prompt Store
Prompt Tuning
Python UDF
Q
Query Engines
R
Real-Time Machine Learning
Recommender System
Representation Learning
Retrieval Augmented Generation (RAG) for LLMs
RLHF - Reinforcement Learning from Human Feedback
RoPE Scaling
S
Sample Packing
Schema
Similarity Search
Skew
Sovereign AI
Splitting Training Data
SQL UDF in Python
Streaming Feature Pipeline
Streaming Inference Pipeline
T
Test Set
Theory-of-Mind Tasks
Time travel (for features)
Train (Training) Set
Training Data
Training Pipeline
Training-Inference Skew
Transformation
Two-Tower Embedding Model
Types of Machine Learning
U
Upstream
V
Validation Set
Vector Database
Versioning (of ML Artifacts)
vLLM