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Data preparation isn’t just a part of the MLengineering process — it’s the heart of it. Photo by Myriam Jessier on Unsplash To set the stage, let’s examine the nuances between research-phase data and production-phase data. Data is a key differentiator in ML projects (more on this in my blog post below).
ML Governance: A Lean Approach Ryan Dawson | Principal DataEngineer | Thoughtworks Meissane Chami | Senior MLEngineer | Thoughtworks During this session, you’ll discuss the day-to-day realities of ML Governance. Some of the questions you’ll explore include How much documentation is appropriate?
Topics Include: Agentic AI DesignPatterns LLMs & RAG forAgents Agent Architectures &Chaining Evaluating AI Agent Performance Building with LangChain and LlamaIndex Real-World Applications of Autonomous Agents Who Should Attend: Data Scientists, Developers, AI Architects, and MLEngineers seeking to build cutting-edge autonomous systems.
The first is by using low-code or no-code ML services such as Amazon SageMaker Canvas , Amazon SageMaker Data Wrangler , Amazon SageMaker Autopilot , and Amazon SageMaker JumpStart to help data analysts prepare data, build models, and generate predictions. Conduct exploratory analysis and data preparation.
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.
By the end of this session, you’ll have a practical blueprint to efficiently harness feature stores within ML workflows. Using Graphs for Large Feature Engineering Pipelines Wes Madrigal | MLEngineer | Mad Consulting Feature engineering from raw entity-level data is complex, but there are ways to reduce that complexity.
One of the most prevalent complaints we hear from MLengineers in the community is how costly and error-prone it is to manually go through the ML workflow of building and deploying models. Building end-to-end machine learning pipelines lets MLengineers build once, rerun, and reuse many times. Data preprocessing.
For production deployment, the no-code recipes enable easy assembly of the dataingestion pipeline to create a knowledge base and deployment of RAG or agentic chains. These solutions include two primary components: a dataingestion pipeline for building a knowledge base and a system for knowledge retrieval and summarization.
From gathering and processing data to building models through experiments, deploying the best ones, and managing them at scale for continuous value in production—it’s a lot. As the number of ML-powered apps and services grows, it gets overwhelming for data scientists and MLengineers to build and deploy models at scale.
Data lineage and auditing – Metadata can provide information about the provenance and lineage of documents, such as the source system, dataingestion pipeline, or other transformations applied to the data. This information can be valuable for data governance, auditing, and compliance purposes.
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