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# Workflow
# Survey
# Orchestration Systems
A Survey of Workflow Orchestration Systems
This survey examines popular workflow orchestration systems, highlighting their strengths, weaknesses, and key features. It provides insights into how these tools handle automation, scalability, and reliability, helping teams choose the right solution for their needs.
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Alex Miłowski · Feb 13th, 2025
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# MLOps Cycle
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Jessica Michelle Rudd, PhD & MPH · Feb 11th, 2025
This blog post kicks off a delicious deep-dive into ETL pipelines, but instead of boring technical jargon, it's all about cooking up data! Think of it as a multi-course data feast, and Dataform is the cookbook and kitchen. The goal? To transform raw, messy data into beautifully plated, insightful dishes for your customers.
The post breaks down the process, focusing on Dataform, one of the main tools of our ETL meal. Dataform isn't just another tool; it's your digital cookbook, keeping your data transformation recipes organized and error-free. Forget messy spreadsheets – Dataform brings the order and precision of a Michelin-star kitchen to your data.
It dives into why Dataform rocks: modular recipes, version control (think "undo" button for data blunders!), built-in taste testing, and clear documentation. The post then gets hands-on, walking you through creating a Dataform project, writing a basic SQLX recipe, and testing it out before committing to a full-blown transformation. Think of it as prepping your mise en place before firing up the stove. Finally, it stresses the importance of sharing your recipe, using version control and Git.
Basically, Dataform lets you transform your raw data into gourmet insights, and this post is just the appetizer for the complete ETL feast. Stay tuned for the next courses, where they'll tackle orchestration and data governance! Get ready to cook!
# Dataform
# ETL Pipelines
# SQLX Recipe
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Médéric Hurier · Feb 5th, 2025
Poetry to Uv: A faster, simpler way to manage dependencies for MLOps projects
# MLOps
# AI
# Python
# Programming
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Bartosz Mikulski · Jan 28th, 2025
Expert strategies for improving AI agent performance through better data retrieval, query generation, automated decision-making process, and response generation. The article covers data collection, metrics, and techniques to improve the agent's performance.
# AI Agents
# AI
# RAG
# PydanticAI
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Nehil Jain · Jan 20th, 2025
This blog highlights 20 ways generative AI (GenAI) can enhance technical documentation. It covers key use cases like drafting structured documents, generating API examples, ensuring content consistency, improving search functionality, and automating quality control. AI tools can assist in creating templates, summarizing release notes, generating glossary terms, detecting bugs in code snippets, and optimizing search queries. The blog emphasizes that while AI is a powerful tool, it should be used wisely to complement, not replace, the work of technical writers and developers, helping to produce better, more reliable docs that build trust with users.
# Documents
# AI
# Machine Learning
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Ankur Tyagi · Jan 15th, 2025
This blog compares three popular machine learning workflow orchestration tools: ZenML, Flyte, and Metaflow. It explores their features, use cases, and strengths, helping data scientists and engineers choose the best option for building and managing efficient ML pipelines.
# ZenML
# Flyte
# Metaflow
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Steven Jieli Wu · Jan 8th, 2025
This blog explores Retrieval-Augmented Generation (RAG), a technique that enhances large language models (LLMs) by incorporating external data to provide more accurate, up-to-date, and context-specific responses. The author, Steven Wu, shares insights from a year of building RAG-based applications and explains the concept in a simple analogy for beginners.
# RAG
# LLMs
# AI
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Gleb Lukicov · Jan 8th, 2025
In this blog post, Dr Gleb Lukicov, discusses the setup for fast local development and scalable remote deployment of ML projects using pipelines, particularly when working with LLMs. Gleb shares how to implement local testing using Kubeflow Pipelines to shorten the development cycle using Docker cache, multi-stage builds, uv and dynamic user credentials injection. The full end-to-end implementation is available as a self-contained repository, a companion to this blog post, that also includes some infrastructure goodies like GitHub CI/CD & pre-commit config for linting & testing, local scripts with typer, project dependency management with uv, and static checking with mypy.
# LLMs
# ML Pipelines
# Cloud Experiments
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Christina Garcia · Jan 7th, 2025
Part 1 of YouGot.us’ AI Agent study, conducted during the AI Agent in Production Event by Prosus and MLOps.Community, covers the definition of AI Agents, users, and use cases, as well as agent adoption.
# AI Agents
# Generative AI
# YouGot.us
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Sophia Rowland · Dec 10th, 2024
This article highlights SAS Viya as an all-in-one solution for MLOps, offering tools for version control, model registry, orchestration, monitoring, and deployment. It emphasizes features like experiment tracking, compute resource management, and responsible AI practices, aiming to simplify workflows while ensuring transparency and human oversight.
# SAS Viya
# MLOps
# SAS
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Brij Mohan Singh, Travis Thompson & Ritwika Chowdhury · Dec 10th, 2024
This blog underscores the need for robust governance frameworks to balance the efficiency of autonomous AI agents with their associated risks. To mitigate risks and enable safe deployment across domains, a modular and transparent approach, like the use of DDPs, is recommended.
# Governance for AI Agents
# Data Developer Platforms
# DDP
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