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MLA 003 Storage: HDF, Pickle, Postgres

Machine Learning Guide

Release Date: 05/24/2018

MLG 035 Large Language Models 2 show art MLG 035 Large Language Models 2

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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MLG 034 Large Language Models 1 show art MLG 034 Large Language Models 1

Machine Learning Guide

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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MLA 024 Code AI MCP Servers, ML Engineering show art MLA 024 Code AI MCP Servers, ML Engineering

Machine Learning Guide

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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MLA 023 Code AI Models & Modes show art MLA 023 Code AI Models & Modes

Machine Learning Guide

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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MLA 022 Code AI: Cursor, Cline, Roo, Aider, Copilot, Windsurf show art MLA 022 Code AI: Cursor, Cline, Roo, Aider, Copilot, Windsurf

Machine Learning Guide

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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MLG 033 Transformers show art MLG 033 Transformers

Machine Learning Guide

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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MLA 021 Databricks: Cloud Analytics and MLOps show art MLA 021 Databricks: Cloud Analytics and MLOps

Machine Learning Guide

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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MLA 020 Kubeflow and ML Pipeline Orchestration on Kubernetes show art MLA 020 Kubeflow and ML Pipeline Orchestration on Kubernetes

Machine Learning Guide

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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MLA 019 Cloud, DevOps & Architecture show art MLA 019 Cloud, DevOps & Architecture

Machine Learning Guide

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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MLA 017 AWS Local Development Environment show art MLA 017 AWS Local Development Environment

Machine Learning Guide

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...

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Practical workflow of loading, cleaning, and storing large datasets for machine learning, moving from ingesting raw CSVs or JSON files with pandas to saving processed datasets and neural network weights using HDF5 for efficient numerical storage. It clearly distinguishes among storage options—explaining when to use HDF5, pickle files, or SQL databases—while highlighting how libraries like pandas, TensorFlow, and Keras interact with these formats and why these choices matter for production pipelines.

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Data Ingestion and Preprocessing

  • Data Sources and Formats:

    • Datasets commonly originate as CSV (comma-separated values), TSV (tab-separated values), fixed-width files (FWF), JSON from APIs, or directly from databases.
    • Typical applications include structured data (e.g., real estate features) or unstructured data (e.g., natural language corpora for sentiment analysis).
  • Pandas as the Core Ingestion Tool:

    • Pandas provides versatile functions such as read_csvread_json, and others to load various file formats with robust options for handling edge cases (e.g., file encodings, missing values).
    • After loading, data cleaning is performed using pandas: dropping or imputing missing values, converting booleans and categorical columns to numeric form.
  • Data Encoding for Machine Learning:

    • All features must be numerical before being supplied to machine learning models like TensorFlow or Keras.
    • Categorical data is one-hot encoded using pandas.get_dummies, converting strings to binary indicator columns.
    • The underlying NumPy array of a DataFrame is accessed via df.values for direct integration with modeling libraries.

Numerical Data Storage Options

  • HDF5 for Storing Processed Arrays:

    • HDF5 (Hierarchical Data Format version 5) enables efficient storage of large multidimensional NumPy arrays.
    • Libraries like h5py and built-in pandas functions (to_hdf) allow seamless saving and retrieval of arrays or DataFrames.
    • TensorFlow and Keras use HDF5 by default to store neural network weights as multi-dimensional arrays for model checkpointing and early stopping, accommodating robust recovery and rollback.
  • Pickle for Python Objects:

    • Python's pickle protocol serializes arbitrary objects, including machine learning models and arrays, into files for later retrieval.
    • While convenient for quick iterations or heterogeneous data, pickle is less efficient with NDarrays compared to HDF5, lacks significant compression, and poses security risks if not properly safeguarded.
  • SQL Databases and Spreadsheets:

    • For mixed or heterogeneous data, or when producing results for sharing and collaboration, relational databases like PostgreSQL or spreadsheets such as CSVs are used.
    • Databases serve as the endpoint for production systems, where model outputs—such as generated recommendations or reports—are published for downstream use.

Storage Workflow in Machine Learning Pipelines

  • Typical Process:

    • Data is initially loaded and processed with pandas, then converted to numerical arrays suitable for model training.
    • Intermediate states and model weights are saved using HDF5 during model development and training, ensuring recovery from interruptions and facilitating early stopping.
    • Final outputs, especially those requiring sharing or production use, are published to SQL databases or shared as spreadsheet files.
  • Best Practices and Progression:

    • Quick project starts may involve pickle for accessible storage during early experimentation.
    • For large-scale, high-performance applications, migration to HDF5 for numerical data and SQL for production-grade results is recommended.
    • Alternative options like Feather and PyTables (an interface on top of HDF5) exist for specialized needs.

Summary

  • HDF5 is optimal for numerical array storage due to its efficiency, built-in compression, and integration with major machine learning frameworks.
  • Pickle accommodates arbitrary Python objects but is suboptimal for numerical data persistence or security.
  • SQL databases and spreadsheets are used for disseminating results, especially when human consumption or application integration is required.
  • The selection of a storage format is determined by data type, pipeline stage, and end-use requirements within machine learning workflows.