Remove Algorithm Remove Data Drift Remove DevOps Remove Explainability
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Modernizing data science lifecycle management with AWS and Wipro

AWS Machine Learning Blog

Many organizations have been using a combination of on-premises and open source data science solutions to create and manage machine learning (ML) models. Data science and DevOps teams may face challenges managing these isolated tool stacks and systems.

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How are AI Projects Different

Towards AI

Michael Dziedzic on Unsplash I am often asked by prospective clients to explain the artificial intelligence (AI) software process, and I have recently been asked by managers with extensive software development and data science experience who wanted to implement MLOps. All looks good, but the (numerical) result is clearly incorrect.

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MLOps Landscape in 2023: Top Tools and Platforms

The MLOps Blog

Learn more The Best Tools, Libraries, Frameworks and Methodologies that ML Teams Actually Use – Things We Learned from 41 ML Startups [ROUNDUP] Key use cases and/or user journeys Identify the main business problems and the data scientist’s needs that you want to solve with ML, and choose a tool that can handle them effectively.

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Promote pipelines in a multi-environment setup using Amazon SageMaker Model Registry, HashiCorp Terraform, GitHub, and Jenkins CI/CD

AWS Machine Learning Blog

Building out a machine learning operations (MLOps) platform in the rapidly evolving landscape of artificial intelligence (AI) and machine learning (ML) for organizations is essential for seamlessly bridging the gap between data science experimentation and deployment while meeting the requirements around model performance, security, and compliance.

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Deliver your first ML use case in 8–12 weeks

AWS Machine Learning Blog

Data science – The heart of ML EBA and focuses on feature engineering, model training, hyperparameter tuning, and model validation. MLOps engineering – Focuses on automating the DevOps pipelines for operationalizing the ML use case. Conduct exploratory analysis and data preparation. Monitoring setup (model, data drift).

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How to Build an End-To-End ML Pipeline

The MLOps Blog

Elements of a machine learning pipeline Some pipelines will provide high-level abstractions for these components through three elements: Transformer : an algorithm able to transform one dataset into another. Estimator : an algorithm trained on a dataset to produce a transformer. Data preprocessing. Model deployment.

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