Blog
# SAS Viya
# MLOps
# SAS
The Ultimate Must-Have for MLOps: SAS Viya
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.
Sophia Rowland · Dec 10th, 2024
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# MLops
# Machine Learning
# AI
# Machine learning
# Tecton
# Artificial Intelligence
# Generative AI
# MLOps
# LLMs
# Coding Workshop
# Presentation
# ML Orchestration
# Interview
# Monitoring
# Feature Stores
# Open Source
# Analytics
# ML Platform
# Startups
# Observability
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
Demetrios Brinkmann · Nov 21st, 2024
Token prices are falling, but the cost of meaningful answers is rising due to increased system complexity. Advanced tasks now require multiple LLM calls for reasoning, planning, and refinement, driving up operational costs. We do not live in the one LLM call world anymore.
# Token prices
# LLM
# ROI
Pavol Bielik · Nov 8th, 2024
COMPL-AI, developed by LatticeFlow AI in collaboration with ETH Zurich and INSAIT, offers an open-source framework for evaluating generative AI models’ compliance with regulatory standards like the EU AI Act. By translating high-level regulatory requirements into measurable technical standards, COMPL-AI enables AI developers to benchmark large language models (LLMs) for compliance in areas such as safety, transparency, and ethical considerations. This compliance-centered tool supports integration with HuggingFace models and provides detailed reports, making it accessible for stakeholders to ensure model accountability and address societal impacts effectively.
# LLM
# COMPL-AI
# LatticeFlow
Christina Garcia Stein · Nov 1st, 2024
Effective collaboration is crucial for building scalable ML and AI solutions in a rapidly evolving data engineering landscape. YouGot.us, in collaboration with MLOps.community, conducted a survey of over 200 participants in September 2024, revealing key challenges and practices in ML and data pipeline development.
# Effective collaboration
# Survey
# MLOps Community
# You.com
Sergio Ferragut · Oct 28th, 2024
Tecton introduced new GenAI capabilities (in private preview) in the 1.0 release of its SDK that makes it much easier to productionize RAG applications. This post shows how the SDK can enable AI teams to use the SDK to build hyper-personalized chatbots via prompt enrichment and automated knowledge assembly.
# LLMs
# Real-Time
# Tecton
Vishakha Gupta · Sep 10th, 2024
The ability to semantically search for a concept, summarize a response, and point to relevant links is exactly why large language model (LLM) and retrieval augmented generation (RAG) methods have become so popular. Our LangChain-based implementation uses ApertureDB under the covers as the vector store/retriever for high-performance look-up of documents that are semantically similar to the user’s query. Now we can look at the questions that resulted in insufficient or incorrect responses and introduce helpful and accurate information where it belongs. Ultimately, if we can help our users find guidance easily, then it's a win for everyone.
# Vector Database
# RAG
# Usability
# ApertureDB
Jonathan Bennion · Aug 29th, 2024
GraphRAG (by way of Neo4j in this case) enhances faithfulness (a RAGAS metric most similar to precision) when compared to vector-based RAG, but does not significantly lift other RAGAS metrics related to retrieval; may not offer enough ROI to justify the hype of the accuracy benefits given the performance overhead.
# GraphRAG
# Retrieval Database
# Vector Database
# The Objective AI
Médéric Hurier · Aug 12th, 2024
The AI/ML field is advancing rapidly, with MLOps becoming essential for turning innovative ideas into production-ready solutions. The Cookiecutter MLOps Package simplifies this process by providing a robust code template, streamlining the setup and ensuring best practices. It offers a versatile, platform-agnostic foundation that integrates seamlessly with various MLOps environments like Kubernetes, Vertex AI, and AWS SageMaker. Equipped with tools for dependency management, automated testing, Dockerized deployment, and CI/CD workflows, this package enhances efficiency and quality, allowing developers to focus on core problems and improve collaboration and maintainability.
# MLOps
# Template
# Python
# Data Science
# Machine Learning
Mats Eikeland Mollestad · Aug 7th, 2024
Setting up an end-to-end ML project can be time-consuming and difficult. Therefore, I introduce the ML Kickstarter to get you quickly up to speed with a focus on quick iterations.
# ML project
# ML Kickstarter
# Cheffelo
Médéric Hurier · Aug 5th, 2024
This article delves into the essential tools and practices for achieving comprehensive observability in your ML projects. We’ll unravel key concepts, showcase practical code examples from the accompanying MLOps Python Package, and explore the benefits of integrating industry-leading solutions like MLflow.This article delves into the essential tools and practices for achieving comprehensive observability in your AI/ML projects.
# MLOps
# Data Science
# AI
# Machine Learning
# Course
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