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Data4ML Preparation Guidelines (Beyond The Basics)

Towards AI

Data preparation isn’t just a part of the ML engineering process — it’s the heart of it. This post dives into key steps for preparing data to build real-world ML systems. Data ingestion ensures that all relevant data is aggregated, documented, and traceable. This member-only story is on us.

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Dive deep into vector data stores using Amazon Bedrock Knowledge Bases

AWS Machine Learning Blog

Use cases for vector databases for RAG In the context of RAG architectures, the external knowledge can come from relational databases, search and document stores, or other data stores. Knowledge bases are essential for various use cases, such as customer support, product documentation, internal knowledge sharing, and decision-making systems.

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Improve governance of models with Amazon SageMaker unified Model Cards and Model Registry

AWS Machine Learning Blog

You can now register machine learning (ML) models in Amazon SageMaker Model Registry with Amazon SageMaker Model Cards , making it straightforward to manage governance information for specific model versions directly in SageMaker Model Registry in just a few clicks. The Amazon DataZone project ID is captured in the Documentation section.

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Top Artificial Intelligence AI Courses from Google

Marktechpost

Introduction to AI and Machine Learning on Google Cloud This course introduces Google Cloud’s AI and ML offerings for predictive and generative projects, covering technologies, products, and tools across the data-to-AI lifecycle. It includes labs on feature engineering with BigQuery ML, Keras, and TensorFlow.

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Deploy Amazon SageMaker pipelines using AWS Controllers for Kubernetes

AWS Machine Learning Blog

In this post, we introduce an example to help DevOps engineers manage the entire ML lifecycle—including training and inference—using the same toolkit. Solution overview We consider a use case in which an ML engineer configures a SageMaker model building pipeline using a Jupyter notebook.

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Build a robust text-to-SQL solution generating complex queries, self-correcting, and querying diverse data sources

AWS Machine Learning Blog

Structured Query Language (SQL) is a complex language that requires an understanding of databases and metadata. Third, despite the larger adoption of centralized analytics solutions like data lakes and warehouses, complexity rises with different table names and other metadata that is required to create the SQL for the desired sources.

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Top Large Language Models LLMs Courses

Marktechpost

LangChain Chat with Your Data Difficulty Level: Beginner This course teaches Retrieval Augmented Generation and building chatbots that respond based on document content. It covers topics like document loading, splitting, vector stores, embeddings, retrieval techniques, question answering, and chatbot development using LangChain.