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YZ Sözlüğü

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162
kategoriler
2.032
alt kategoriler
23.060
terimler
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terimler

Distributed Machine Learning

Paradigm for training ML models where computations are distributed across multiple machines to process massive datasets and reduce training time.

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terimler

Parameter Server

Distributed architecture centralizing model parameters on dedicated servers, allowing workers to update and synchronize gradients asynchronously.

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AllReduce

Collective communication algorithm enabling synchronized reduction and broadcasting of gradients between all nodes in a distributed training environment.

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terimler

Data Parallelism

Parallelization strategy where data is partitioned across multiple machines, each training an identical copy of the model with different batches.

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Spark MLlib

Scalable machine learning library built on Apache Spark, offering distributed implementations of classical ML algorithms.

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terimler

TensorFlow Distributed

TensorFlow's distributed training framework using strategies like MirroredStrategy and MultiWorkerMirroredStrategy to scale training.

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terimler

Horovod

Open-source framework developed by Uber using the AllReduce algorithm via MPI for efficient distributed training of deep learning models.

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terimler

Ray

Distributed computing framework optimized for machine learning and AI, providing primitives for parallel execution and large-scale state management.

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Petastorm

Library enabling efficient access to large datasets stored in Apache Parquet for distributed deep learning model training.

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Dask-ML

Dask extension integrating scalable machine learning algorithms and parallelization tools for ML workflows on clusters.

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Kubeflow

Open-source platform based on Kubernetes for deploying and managing complex ML pipelines at scale with containerized orchestration.

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MLflow

Open source platform for managing the complete lifecycle of ML projects, including tracking, model management, and reproducibility at scale.

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Feast

Open source feature store providing an abstraction layer for managing, versioning, and serving features at scale.

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Vertex AI

Google Cloud's unified platform for training, deploying, and managing ML models at scale with integrated AutoML and MLOps.

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SageMaker

Fully managed AWS service for distributed training, deployment, and monitoring of ML models with automatic resource optimization.

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Sharding

Horizontal partitioning of data or model across multiple nodes to enable parallel processing and reduce load per machine.

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terimler

Elastic Training

Ability to dynamically adjust the number of workers during training to optimize resource utilization and reduce costs.

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