learning
1.0.0
A running log of things I'm learning to build strong core software engineering skills while also expanding my knowledge of adjacent technologies a little bit everyday.
Updated: Once a month | Current Focus: Generative AI
Resource | Progress |
---|---|
Datacamp: Writing Efficient Python Code | ✅ |
Datacamp: Writing Functions in Python | ✅ |
Datacamp: Object-Oriented Programming in Python | ✅ |
Datacamp: Intermediate Object-Oriented Programming in Python | ✅ |
Datacamp: Importing Data in Python (Part 1) | ✅ |
Datacamp: Importing Data in Python (Part 2) | ✅ |
Datacamp: Intermediate Python for Data Science | ✅ |
Datacamp: Python Data Science Toolbox (Part 1) | ✅ |
Datacamp: Python Data Science Toolbox (Part 2) | ✅ |
Datacamp: Developing Python Packages | ✅ |
Datacamp: Conda Essentials | ✅ |
Youtube: Tutorial: Sebastian Witowski - Modern Python Developer's Toolkit | ✅ |
Datacamp: Working with Dates and Times in Python | ✅ |
Datacamp: Command Line Automation in Python | ⬜ |
Datacamp: Unit Testing for Data Science in Python | ✅ |
Book: Python 201 | ⬜ |
Book: Writing Idiomatic Python 3 | ⬜ |
Book: Test Driven Development with Python | ⬜ |
Article: Python's many command-line utilities | ⬜ |
Article: A Programmer’s Introduction to Unicode | ⬜ |
Article: Introduction to Memory Profiling in Python | ✅ |
Article: Profiling Python code with memory_profiler | ✅ |
Article: How to Use "memory_profiler" to Profile Memory Usage by Python Code? | ✅ |
Resource | Progress |
---|---|
Book: Grokking Algorithms | ✅ |
Book: The Tech Resume Inside Out | ✅ |
Neetcode: Algorithms and Data Structures for Beginners | ✅ |
Udacity: Intro to Data Structures and Algorithms | ✅ |
Resource | Progress |
---|---|
Datacamp: Introduction to Shell for Data Science | ✅ |
Datacamp: Introduction to Bash Scripting | ✅ |
Datacamp: Data Processing in Shell | ✅ |
MIT: The Missing Semester | ✅ |
Udacity: Linux Command Line Basics | ✅ |
Udacity: Shell Workshop | ✅ |
Udacity: Configuring Linux Web Servers | ✅ |
Resource | Progress |
---|---|
Udacity: Version Control with Git | ✅ |
Datacamp: Introduction to Git for Data Science | ✅ |
Udacity: GitHub & Collaboration | ✅ |
Udacity: How to Use Git and GitHub | ✅ |
Resource | Progress |
---|---|
Udacity: Intro to relational database | ✅ |
Udacity: Database Systems Concepts & Design | ⬜ |
Datacamp: Database Design | ⬜ |
Datacamp: Introduction to Databases in Python | ⬜ |
Datacamp: Intro to SQL for Data Science | ✅ |
Datacamp: Intermediate SQL | ⬜ |
Datacamp: Joining Data in PostgreSQL | ⬜ |
Udacity: SQL for Data Analysis | ⬜ |
Datacamp: Exploratory Data Analysis in SQL | ⬜ |
Datacamp: Applying SQL to Real-World Problems | ⬜ |
Datacamp: Analyzing Business Data in SQL | ⬜ |
Datacamp: Reporting in SQL | ⬜ |
Datacamp: Data-Driven Decision Making in SQL | ⬜ |
Datacamp: NoSQL Concepts | ⬜ |
Datacamp: Introduction to MongoDB in Python | ⬜ |
Resource | Progress |
---|---|
Udacity: Authentication & Authorization: OAuth | ⬜ |
Udacity: HTTP & Web Servers | ⬜ |
Udacity: Client-Server Communication | ⬜ |
Udacity: Designing RESTful APIs | ⬜ |
Datacamp: Introduction to APIs in Python | ⬜ |
Udacity: Networking for Web Developers | ⬜ |
Resource | Progress |
---|---|
Book: Designing Machine Learning Systems | ✅ |
Neetcode: System Design for Beginners | ✅ |
Neetcode: System Design Interview | ✅ |
Datacamp: Customer Analytics & A/B Testing in Python | ✅ |
Datacamp: A/B Testing in Python | ⬜ |
Udacity: A/B Testing | ⬜ |
Datacamp: MLOps Concepts | ✅ |
Datacamp: Machine Learning Monitoring Concepts | ✅ |
Resource | Progress |
---|---|
Datacamp: Foundations of Probability in Python | ✅ |
Datacamp: Introduction to Statistics | ✅ |
Datacamp: Introduction to Statistics in Python | ✅ |
Datacamp: Hypothesis Testing in Python | ✅ |
Datacamp: Statistical Thinking in Python (Part 1) | ✅ |
Datacamp: Statistical Thinking in Python (Part 2) | ✅ |
Datacamp: Experimental Design in Python | ✅ |
Datacamp: Practicing Statistics Interview Questions in Python | ⬜ |
edX: Essential Statistics for Data Analysis using Excel | ✅ |
Udacity: Intro to Inferential Statistics | ✅ |
MIT 18.06 Linear Algebra, Spring 2005 | ✅ |
Udacity: Eigenvectors and Eigenvalues | ✅ |
Udacity: Linear Algebra Refresher | ⬜ |
Youtube: Essence of linear algebra | ⬜ |
Resource | Progress |
---|---|
Codecademy: Learn HTML | ✅ |
Codecademy: Make a website | ✅ |
Article: Alternative Text | ⬜ |
Resource | Progress |
---|---|
Pluralsight: CSS Positioning | ✅ |
Pluralsight: Introduction to CSS | ✅ |
Pluralsight: CSS: Specificity, the Box Model, and Best Practices | ✅ |
Pluralsight: CSS: Using Flexbox for Layout | ✅ |
Code School: Blasting Off with Bootstrap | ✅ |
Pluralsight: UX Fundamentals | ✅ |
Codecademy: Learn SASS | ✅ |
CSS for Javascript Developers | ✅ |
Article: Create an illustration in Figma design | ✅ |
Book: Refactoring UI | ⬜ |
Youtube: How to Make Your Website Not Ugly: Basic UX for Programmers | ⬜ |
Resource | Progress |
---|---|
Udacity: ES6 - JavaScript Improved | ✅ |
Udacity: Intro to Javascript | ✅ |
Udacity: Object Oriented JS 1 | ✅ |
Udacity: Object Oriented JS 2 | ✅ |
Udemy: Understanding Typescript | ✅ |
Codecademy: Learn JavaScript | ✅ |
Codecademy: Jquery Track | ✅ |
Pluralsight: Using The Chrome Developer Tools | ✅ |
Resource | Progress |
---|---|
Article: An overview of gradient descent optimization algorithms | ✅ |
Book: Hands-On Machine Learning with Scikit-Learn, Keras, and TensorFlow, 2nd Edition | ⬜ |
Book: A Machine Learning Primer | ✅ |
Book: Make Your Own Neural Network | ✅ |
Book: Grokking Machine Learning | ✅ |
Book: The StatQuest Illustrated Guide To Machine Learning | ✅ |
Fast.ai: Practical Deep Learning for Coder (Part 1) | ✅ |
Fast.ai: Practical Deep Learning for Coder (Part 2) | ⬜ |
Datacamp: Ensemble Methods in Python | ✅ |
Datacamp: Extreme Gradient Boosting with XGBoost | ⬜ |
Datacamp: Clustering Methods with SciPy | ✅ |
Datacamp: Unsupervised Learning in Python | ✅ |
Udacity: Segmentation and Clustering | ✅ |
Datacamp: Intro to Python for Data Science | ✅ |
edX: Implementing Predictive Analytics with Spark in Azure HDInsight | ✅ |
Datacamp: Supervised Learning with scikit-learn | ✅ |
Datacamp: Machine Learning with Tree-Based Models in Python | ✅ |
Datacamp: Linear Classifiers in Python | ✅ |
Datacamp: Convolutional Neural Networks for Image Processing | ✅ |
Datacamp: Model Validation in Python | ✅ |
Datacamp: Hyperparameter Tuning in Python | ✅ |
Datacamp: HR Analytics in Python: Predicting Employee Churn | ✅ |
Datacamp: Predicting Customer Churn in Python | ✅ |
Datacamp: Dimensionality Reduction in Python | ✅ |
Datacamp: Preprocessing for Machine Learning in Python | ✅ |
Datacamp: Data Types for Data Science | ✅ |
Datacamp: Cleaning Data in Python | ✅ |
Datacamp: Feature Engineering for Machine Learning in Python | ✅ |
Datacamp: Predicting CTR with Machine Learning in Python | ✅ |
Datacamp: Intro to Financial Concepts using Python | ✅ |
Datacamp: Fraud Detection in Python | ✅ |
Karpathy: Neural Networks: Zero to Hero | ✅ |
Article: Weight Initialization in Neural Networks: A Journey From the Basics to Kaiming | ⬜ |
Resource | Progress |
---|---|
Book: Natural Language Processing with Transformers | ✅ |
Stanford CS224U: Natural Language Understanding | Spring 2019 | ✅ |
Stanford CS224N: Stanford CS224N: NLP with Deep Learning | Winter 2019 | ✅ |
CMU: Low-resource NLP Bootcamp 2020 | ✅ |
CMU Multilingual NLP 2020 | ✅ |
Datacamp: Feature Engineering for NLP in Python | ✅ |
Datacamp: Natural Language Processing Fundamentals in Python | ✅ |
Datacamp: Regular Expressions in Python | ✅ |
Datacamp: RNN for Language Modeling | ✅ |
Datacamp: Natural Language Generation in Python | ✅ |
Datacamp: Building Chatbots in Python | ✅ |
Datacamp: Sentiment Analysis in Python | ✅ |
Datacamp: Machine Translation in Python | ✅ |
Article: The Unreasonable Effectiveness of Collocations | ⬜ |
Article: FuzzyWuzzy: Fuzzy String Matching in Python | ✅ |
Article: Mamba Explained | ⬜ |
Article: A Visual Guide to Mamba and State Space Models | ⬜ |
Article: Quantization Fundamentals with Hugging Face | ✅ |
Resource | Progress |
---|---|
Article: SolidGoldMagikarp (plus, prompt generation) | ⬜ |
DeepLearning.AI: Pretraining LLMs | ✅ |
DeepLearning.AI: How Diffusion Models Work | ⬜ |
Karpathy: Intro to Large Language Models [1hr ] |
✅ |
Karpathy: Let's build the GPT Tokenizer [2hr13m ] |
✅ |
Karpathy: Let's reproduce GPT-2 (124M) [4hr1m ] |
⬜ |
Youtube: A Hackers' Guide to Language Models [1hr30m ] |
✅ |
Youtube: 5 Years of GPTs with Finbarr Timbers | ⬜ |
Article: Sampling for Text Generation | ⬜ |
DeepLearning.AI: Reinforcement Learning from Human Feedback | ✅ |
Youtube: LLaMA explained: KV-Cache, Rotary Positional Embedding, RMS Norm, Grouped Query Attention, SwiGLU [1h10m ] |
⬜ |
Resource | Progress |
---|---|
Pretrained Transformer Language Models for Search - part 1 | ⬜ |
Pretrained Transformer Language Models for Search - part 2 | ⬜ |
Pretrained Transformer Language Models for Search - part 3 | ⬜ |
Pretrained Transformer Language Models for Search - part 4 | ⬜ |
Understanding LanceDB's IVF-PQ index | ⬜ |
A little pooling goes a long way for multi-vector representations | ✅ |
Fullstack Retrieval Course | |
Article: Levels of Complexity: RAG Applications | ✅ |
Article: Systematically Improving Your RAG | ⬜ |
Article: Stop using LGTM@Few as a metric (Better RAG) | ⬜ |
Article: Low-Hanging Fruit for RAG Search | ⬜ |
Article: What AI Engineers Should Know about Search | ✅ |
Article: Evaluating Chunking Strategies for Retrieval | ⬜ |
Article: Sentence Embeddings. Introduction to Sentence Embeddings | ⬜ |
DeepLearning.AI: Building and Evaluating Advanced RAG Applications | ✅ |
DeepLearning.AI: Vector Databases: from Embeddings to Applications | ✅ |
DeepLearning.AI: Advanced Retrieval for AI with Chroma | ✅ |
DeepLearning.AI: Prompt Compression and Query Optimization | ✅ |
DeepLearning.AI: Large Language Models with Semantic Search [1hr ] |
✅ |
DeepLearning.AI: Building Applications with Vector Databases | ✅ |
DeepLearning.AI: Building Multimodal Search and RAG | ⬜ |
DeepLearning.AI: Knowledge Graphs for RAG | ⬜ |
DeepLearning.AI: Functions, Tools and Agents with LangChain | ⬜ |
DeepLearning.AI: Building Agentic RAG with LlamaIndex | ⬜ |
DeepLearning.AI: Multi AI Agent Systems with crewAI | ⬜ |
DeepLearning.AI: AI Agentic Design Patterns with AutoGen | ⬜ |
DeepLearning.AI: AI Agents in LangGraph | ⬜ |
DeepLearning.AI: Building Your Own Database Agent | ⬜ |
DeepLearning.AI: Preprocessing Unstructured Data for LLM Applications | ⬜ |
DeepLearning.AI: Embedding Models: From Architecture to Implementation | ✅ |
Pinecone: Vector Databases in Production for Busy Engineers | ⬜ |
Pinecone: Retrieval Augmented Generation | ⬜ |
Pinecone: LangChain AI Handbook | ⬜ |
Pinecone: Embedding Methods for Image Search | ⬜ |
Pinecone: Faiss: The Missing Manual | ⬜ |
Pinecone: Vector Search in the Wild | ⬜ |
Pinecone: Natural Language Processing for Semantic Search | ⬜ |
Youtube: Systematically improving RAG applications | ✅ |
Youtube: Back to Basics for RAG w/ Jo Bergum | ✅ |
Youtube: Beyond the Basics of Retrieval for Augmenting Generation (w/ Ben Clavié) | ✅ |
Youtube: RAG From Scratch | 0/14 |
Article: LambdaMART in Depth | ⬜ |
Article: Guided Generation with Outlines | ✅ |
Resource | Progress |
---|---|
Article: OpenAI Prompt Engineering | ⬜ |
Article: Prompting Fundamentals and How to Apply them Effectively | ✅ |
Anthropic Courses | ⬜ |
Article: Prompt Engineering(Liliang Weng) | ✅ |
Article: Prompt Engineering 201: Advanced methods and toolkits | ✅ |
Article: Optimizing LLMs for accuracy | ✅ |
Article: Primers • Prompt Engineering | ⬜ |
Article: Anyscale Endpoints: JSON Mode and Function calling Features | ⬜ |
Article: Guided text generation with Large Language Models | ⬜ |
Article: GPT-4 Vision Alternatives | ⬜ |
DeepLearning.AI: ChatGPT Prompt Engineering for Developers | ⬜ |
DeepLearning.AI: Prompt Engineering for Vision Models | ⬜ |
DeepLearning.AI: Prompt Engineering with Llama 2 & 3 | ⬜ |
Wandb: LLM Engineering: Structured Outputs | ⬜ |
DeepLearning.AI: Function-Calling and Data Extraction with LLMs | ⬜ |
Series: Prompt injection | ⬜ |
Youtube: Prompt Engineering Overview [1hr4m ] |
✅ |
Youtube: Structured Generation with LLMs | ⬜ |
Resource | Progress |
---|---|
Article: Patterns for Building LLM-based Systems & Products | ✅ |
Article: Emerging Architectures for LLM Applications | ✅ |
Article: How to make LLMs go fast | ⬜ |
Article: In the Fast Lane! Speculative Decoding - 10x Larger Model, No Extra Cost | ⬜ |
Article: Harmonizing Multi-GPUs: Efficient Scaling of LLM Inference | ⬜ |
Article: Multi-Query Attention is All You Need | ⬜ |
Article: Transformers Inference Optimization Toolset | ⬜ |
DeepLearning.AI: Efficiently Serving LLMs | ✅ |
DeepLearning.AI: Automated Testing for LLMOps | ✅ |
DeepLearning.AI: Red Teaming LLM Applications | ✅ |
DeepLearning.AI: Evaluating and Debugging Generative AI Models Using Weights and Biases | ⬜ |
DeepLearning.AI: Quality and Safety for LLM Applications | ⬜ |
DeepLearning.AI: LLMOps | ⬜ |
DeepLearning.AI: Serverless LLM apps with Amazon Bedrock | ⬜ |
DeepLearning.AI: Quantization in Depth | ⬜ |
DeepLearning.AI: Introduction to On-Device AI | ⬜ |
Article: A Visual Guide to Quantization | ⬜ |
Article: QLoRA and 4-bit Quantization | ⬜ |
Article: Understanding AI/LLM Quantisation Through Interactive Visualisations | ⬜ |
Article: LLM Inference Series: 3. KV caching explained | ⬜ |
Article: LLM Inference Series: 4. KV caching, a deeper look | ⬜ |
Article: LLM Inference Series: 5. Dissecting model performance | ⬜ |
Youtube: SBTB 2023: Charles Frye, Parallel Processors: Past & Future Connections Between LLMs and OS Kernels | ⬜ |
Article: Transformer Inference Arithmetic | ⬜ |
Resource | Progress |
---|---|
Article: What We’ve Learned From A Year of Building with LLMs | ⬜ |
Article: How to Generate and Use Synthetic Data for Finetuning | ✅ |
Article: Your AI Product Needs Evals | ✅ |
Article: Task-Specific LLM Evals that Do & Don't Work | ✅ |
Article: Data Flywheels for LLM Applications | ⬜ |
Article: LLM From the Trenches: 10 Lessons Learned Operationalizing Models at GoDaddy | ✅ |
Article: Evaluation & Hallucination Detection for Abstractive Summaries | ✅ |
Article: Emerging UX Patterns for Generative AI Apps & Copilots | ✅ |
Article: The Novice's LLM Training Guide | ⬜ |
Article: Pushing ChatGPT's Structured Data Support To Its Limits | ✅ |
Article: GPTed: using GPT-3 for semantic prose-checking | ✅ |
Article: Don't worry about LLMs | ⬜ |
DeepLearning.AI: Finetuning Large Language Models | ✅ |
DeepLearning.AI: Building Systems with the ChatGPT API | ⬜ |
DeepLearning.AI: LangChain for LLM Application Development | ⬜ |
DeepLearning.AI: LangChain: Chat with Your Data | ⬜ |
DeepLearning.AI: Building Generative AI Applications with Gradio | ✅ |
DeepLearning.AI: Open Source Models with Hugging Face | ⬜ |
DeepLearning.AI: Getting Started with Mistral | ⬜ |
Datacamp: Developing LLM Applications with LangChain | ⬜ |
LLMOps: Building with LLMs | ⬜ |
LLM Bootcamp - Spring 2023 | ✅ |
Youtube: A Survey of Techniques for Maximizing LLM Performance | ✅ |
Youtube: Building Blocks for LLM Systems & Products: Eugene Yan | ✅ |
Youtube: Fine Tuning OpenAI Models - Best Practices | ✅ |
Youtube: Course: LLM Fine-Tuning w/Axolotl | 0/4 |
Youtube: Fine-Tuning LLMs | 1/5 |
Youtube: LLM Evals | 0/5 |
Youtube: Building LLM Applications | 0/8 |
Resource | Progress |
---|---|
Udemy: AWS Certified Developer - Associate 2018 | ✅ |
Resource | Progress |
---|---|
Article: Django, HTMX and Alpine.js: Modern websites, JavaScript optional | ✅ |
Resource | Progress |
---|---|
Datacamp: Introduction to Seaborn | ✅ |
Datacamp: Introduction to Matplotlib | ✅ |
Resource | Progress |
---|---|
Datacamp: Introduction to MLFlow | ✅ |
Resource | Progress |
---|---|
Docs: Start building with Next.js |
Resource | Progress |
---|---|
Datacamp: Pandas Foundations | ✅ |
Datacamp: Pandas Joins for Spreadsheet Users | ✅ |
Datacamp: Manipulating DataFrames with pandas | ✅ |
Datacamp: Merging DataFrames with pandas | ✅ |
Datacamp: Data Manipulation with pandas | ✅ |
Datacamp: Optimizing Python Code with pandas | ✅ |
Datacamp: Streamlined Data Ingestion with pandas | ✅ |
Datacamp: Analyzing Marketing Campaigns with pandas | ✅ |
Datacamp: Analyzing Police Activity with pandas | ✅ |
Resource | Progress |
---|---|
Article: PyTorch internals | ⬜ |
Article: Taking PyTorch For Granted | ⬜ |
Datacamp: Introduction to Deep Learning with PyTorch | ✅ |
Datacamp: Intermediate Deep Learning with PyTorch | ⬜ |
Datacamp: Deep Learning for Text with PyTorch | ⬜ |
Datacamp: Deep Learning for Images with PyTorch | ⬜ |
Deeplizard: Neural Network Programming - Deep Learning with PyTorch | ✅ |
Resource | Progress |
---|---|
Codecademy: Learn ReactJS: Part I | ✅ |
Codecademy: Learn ReactJS: Part II | ✅ |
NexxtJS: React Foundations | ⬜ |
Resource | Progress |
---|---|
Datacamp: Advanced NLP with spaCy | ✅ |
Resource | Progress |
---|---|
Datacamp: Introduction to TensorFlow in Python | ✅ |
Datacamp: Deep Learning in Python | ✅ |
Datacamp: Introduction to Deep Learning with Keras | ✅ |
Datacamp: Advanced Deep Learning with Keras | ✅ |
Deeplizard: Keras - Python Deep Learning Neural Network API | ✅ |
Udacity: Intro to TensorFlow for Deep Learning | ✅ |