Machine Learning Guide
At inference, large language models use in-context learning with zero-, one-, or few-shot examples to perform new tasks without weight updates, and can be grounded with Retrieval Augmented Generation (RAG) by embedding documents into vector databases for real-time factual lookup using cosine similarity. LLM agents autonomously plan, act, and use external tools via orchestrated loops with persistent memory, while recent benchmarks like GPQA (STEM reasoning), SWE Bench (agentic coding), and MMMU (multimodal college-level tasks) test performance alongside prompt engineering techniques such as...
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Explains language models (LLMs) advancements. Scaling laws - the relationships among model size, data size, and compute - and how emergent abilities such as in-context learning, multi-step reasoning, and instruction following arise once certain scaling thresholds are crossed. The evolution of the transformer architecture with Mixture of Experts (MoE), describes the three-phase training process culminating in Reinforcement Learning from Human Feedback (RLHF) for model alignment, and explores advanced reasoning techniques such as chain-of-thought prompting which significantly improve complex...
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Tool use in code AI agents allows for both in-editor code completion and agent-driven file and command actions, while the Model Context Protocol (MCP) standardizes how these agents communicate with external and internal tools. MCP integration broadens the automation capabilities for developers and machine learning engineers by enabling access to a wide variety of local and cloud-based tools directly within their coding environments. Links Notes and resources at stay healthy & sharp while you learn & code Tool Use in Code AI Agents Code AI agents offer two primary modes of...
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Gemini 2.5 Pro currently leads in both accuracy and cost-effectiveness among code-focused large language models, with Claude 3.7 and a DeepSeek R1/Claude 3.5 combination also performing well in specific modes. Using local open source models via tools like Ollama offers enhanced privacy but trades off model performance, and advanced workflows like custom modes and fine-tuning can further optimize development processes. Links Notes and resources at stay healthy & sharp while you learn & code Model Current Leaders According to the (as of April 12, 2025), leading...
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Vibe coding is using large language models within IDEs or plugins to generate, edit, and review code, and has recently become a prominent and evolving technique in software and machine learning engineering. The episode outlines a comparison of current code AI tools - such as Cursor, Copilot, Windsurf, Cline, Roo Code, and Aider - explaining their architectures, capabilities, agentic features, pricing, and practical recommendations for integrating them into development workflows. Links Notes and resources at stay healthy & sharp while you learn & code Definition and...
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Links: Notes and resources at 3Blue1Brown videos: stay healthy & sharp while you learn & code audio/video editing with AI power-tools Background & Motivation RNN Limitations: Sequential processing prevents full parallelization—even with attention tweaks—making them inefficient on modern hardware. Breakthrough: “Attention Is All You Need” replaced recurrence with self-attention, unlocking massive parallelism and scalability. Core Architecture Layer Stack: Consists of alternating self-attention and feed-forward (MLP) layers, each wrapped...
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Databricks is a cloud-based platform for data analytics and machine learning operations, integrating features such as a hosted Spark cluster, Python notebook execution, Delta Lake for data management, and seamless IDE connectivity. Raybeam utilizes Databricks and other ML Ops tools according to client infrastructure, scaling needs, and project goals, favoring Databricks for its balanced feature set, ease of use, and support for both startups and enterprises. Links Notes and resources at stay healthy & sharp while you learn & code Raybeam and Databricks Raybeam is a...
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Machine learning pipeline orchestration tools, such as SageMaker and Kubeflow, streamline the end-to-end process of data ingestion, model training, deployment, and monitoring, with Kubeflow providing an open-source, cross-cloud platform built atop Kubernetes. Organizations typically choose between cloud-native managed services and open-source solutions based on required flexibility, scalability, integration with existing cloud environments, and vendor lock-in considerations. Links Notes and resources at stay healthy & sharp while you learn & code - Data Scientist...
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The deployment of machine learning models for real-world use involves a sequence of cloud services and architectural choices, where machine learning expertise must be complemented by DevOps and architecture skills, often requiring collaboration with professionals. Key concepts discussed include infrastructure as code, cloud container orchestration, and the distinction between DevOps and architecture, as well as practical advice for machine learning engineers wanting to deploy products securely and efficiently. Links Notes and resources at stay healthy & sharp while you learn...
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AWS development environments for local and cloud deployment can differ significantly, leading to extra complexity and setup during cloud migration. By developing directly within AWS environments, using tools such as Lambda, Cloud9, SageMaker Studio, client VPN connections, or LocalStack, developers can streamline transitions to production and leverage AWS-managed services from the start. This episode outlines three primary strategies for treating AWS as your development environment, details the benefits and tradeoffs of each, and explains the role of infrastructure-as-code tools such as...
info_outlineSageMaker is an end-to-end machine learning platform on AWS that covers every stage of the ML lifecycle, including data ingestion, preparation, training, deployment, monitoring, and bias detection. The platform offers integrated tools such as Data Wrangler, Feature Store, Ground Truth, Clarify, Autopilot, and distributed training to enable scalable, automated, and accessible machine learning operations for both tabular and large data sets.
Links
- Notes and resources at ocdevel.com/mlg/mla-15
- Try a walking desk stay healthy & sharp while you learn & code
Amazon SageMaker: The Machine Learning Operations Platform
MLOps is deploying your ML models to the cloud. See MadeWithML for an overview of tooling (also generally a great ML educational run-down.)
Introduction to SageMaker and MLOps
- SageMaker is a comprehensive platform offered by AWS for machine learning operations (MLOps), allowing full lifecycle management of machine learning models.
- Its popularity provides access to extensive resources, educational materials, community support, and job market presence, amplifying adoption and feature availability.
- SageMaker can replace traditional local development environments, such as setups using Docker, by moving data processing and model training to the cloud.
Data Preparation in SageMaker
- SageMaker manages diverse data ingestion sources such as CSV, TSV, Parquet files, databases like RDS, and large-scale streaming data via AWS Kinesis Firehose.
- The platform introduces the concept of data lakes, which aggregate multiple related data sources for big data workloads.
- Data Wrangler is the entry point for data preparation, enabling ingestion, feature engineering, imputation of missing values, categorical encoding, and principal component analysis, all within an interactive graphical user interface.
- Data wrangler leverages distributed computing frameworks like Apache Spark to process large volumes of data efficiently.
- Visualization tools are integrated for exploratory data analysis, offering table-based and graphical insights typically found in specialized tools such as Tableau.
Feature Store
- Feature Store acts as a centralized repository to save and manage transformed features created during data preprocessing, ensuring different steps in the pipeline access consistent, reusable feature sets.
- It facilitates collaboration by making preprocessed features available to various members of a data science team and across different models.
Ground Truth: Data Labeling
- Ground Truth provides automated and manual data labeling options, including outsourcing to Amazon Mechanical Turk or assigning tasks to internal employees via a secure AWS GUI.
- The system ensures quality by averaging multiple annotators’ labels and upweighting reliable workers, and can also perform automated label inference when partial labels exist.
- This flexibility addresses both sensitive and high-volume labeling requirements.
Clarify: Bias Detection
- Clarify identifies and analyzes bias in both datasets and trained models, offering measurement and reporting tools to improve fairness and compliance.
- It integrates seamlessly with other SageMaker components for continuous monitoring and re-calibration in production deployments.
Build Phase: Model Training and AutoML
- SageMaker Studio offers a web-based integrated development environment to manage all aspects of the pipeline visually.
- Autopilot automates the selection, training, and hyperparameter optimization of machine learning models for tabular data, producing an optimal model and optionally creating reproducible code notebooks.
- Users can take over the automated pipeline at any stage to customize or extend the process if needed.
Debugger and Distributed Training
- Debugger provides real-time training monitoring, similar to TensorBoard, and offers notifications for anomalies such as vanishing or exploding gradients by integrating with AWS CloudWatch.
- SageMaker’s distributed training feature enables users to train models across multiple compute instances, optimizing for hardware utilization, cost, and training speed.
- The system allows for sharding of data and auto-scaling based on resource utilization monitored via CloudWatch notifications.
Summary Workflow and Scalability
- The SageMaker pipeline covers every aspect of machine learning workflows, from ingestion, cleaning, and feature engineering, to training, deployment, bias monitoring, and distributed computation.
- Each tool is integrated to provide either no-code, low-code, or fully customizable code interfaces.
- The platform supports scaling from small experiments to enterprise-level big data solutions.