frontpage.
newsnewestaskshowjobs

Made with ♥ by @iamnishanth

Open Source @Github

fp.

Show HN: Look Ma, No Linux: Shell, App Installer, Vi, Cc on ESP32-S3 / BreezyBox

https://github.com/valdanylchuk/breezydemo
154•isitcontent•7h ago•15 comments

Show HN: I spent 4 years building a UI design tool with only the features I use

https://vecti.com
259•vecti•9h ago•122 comments

Show HN: If you lose your memory, how to regain access to your computer?

https://eljojo.github.io/rememory/
199•eljojo•9h ago•128 comments

Show HN: R3forth, a ColorForth-inspired language with a tiny VM

https://github.com/phreda4/r3
51•phreda4•6h ago•8 comments

Show HN: Smooth CLI – Token-efficient browser for AI agents

https://docs.smooth.sh/cli/overview
78•antves•1d ago•58 comments

Show HN: Slack CLI for Agents

https://github.com/stablyai/agent-slack
40•nwparker•1d ago•11 comments

Show HN: Artifact Keeper – Open-Source Artifactory/Nexus Alternative in Rust

https://github.com/artifact-keeper
147•bsgeraci•1d ago•61 comments

Show HN: Gigacode – Use OpenCode's UI with Claude Code/Codex/Amp

https://github.com/rivet-dev/sandbox-agent/tree/main/gigacode
12•NathanFlurry•15h ago•5 comments

Show HN: Horizons – OSS agent execution engine

https://github.com/synth-laboratories/Horizons
23•JoshPurtell•1d ago•5 comments

Show HN: FastLog: 1.4 GB/s text file analyzer with AVX2 SIMD

https://github.com/AGDNoob/FastLog
3•AGDNoob•3h ago•1 comments

Show HN: Falcon's Eye (isometric NetHack) running in the browser via WebAssembly

https://rahuljaguste.github.io/Nethack_Falcons_Eye/
4•rahuljaguste•6h ago•1 comments

Show HN: I built a directory of $1M+ in free credits for startups

https://startupperks.directory
3•osmansiddique•4h ago•0 comments

Show HN: Daily-updated database of malicious browser extensions

https://github.com/toborrm9/malicious_extension_sentry
13•toborrm9•12h ago•5 comments

Show HN: A Kubernetes Operator to Validate Jupyter Notebooks in MLOps

https://github.com/tosin2013/jupyter-notebook-validator-operator
2•takinosh•4h ago•0 comments

Show HN: BioTradingArena – Benchmark for LLMs to predict biotech stock movements

https://www.biotradingarena.com/hn
23•dchu17•11h ago•11 comments

Show HN: 33rpm – A vinyl screensaver for macOS that syncs to your music

https://33rpm.noonpacific.com/
3•kaniksu•5h ago•0 comments

Show HN: Chiptune Tracker

https://chiptunes.netlify.app
3•iamdan•6h ago•1 comments

Show HN: Micropolis/SimCity Clone in Emacs Lisp

https://github.com/vkazanov/elcity
171•vkazanov•1d ago•48 comments

Show HN: A password system with no database, no sync, and nothing to breach

https://bastion-enclave.vercel.app
10•KevinChasse•12h ago•9 comments

Show HN: Local task classifier and dispatcher on RTX 3080

https://github.com/resilientworkflowsentinel/resilient-workflow-sentinel
25•Shubham_Amb•1d ago•2 comments

Show HN: GitClaw – An AI assistant that runs in GitHub Actions

https://github.com/SawyerHood/gitclaw
7•sawyerjhood•12h ago•0 comments

Show HN: An open-source system to fight wildfires with explosive-dispersed gel

https://github.com/SpOpsi/Project-Baver
2•solarV26•10h ago•0 comments

Show HN: Agentism – Agentic Religion for Clawbots

https://www.agentism.church
2•uncanny_guzus•10h ago•0 comments

Show HN: Disavow Generator – Open-source tool to defend against negative SEO

https://github.com/BansheeTech/Disavow-Generator
5•SurceBeats•15h ago•1 comments

Show HN: Craftplan – I built my wife a production management tool for her bakery

https://github.com/puemos/craftplan
567•deofoo•5d ago•166 comments

Show HN: BPU – Reliable ESP32 Serial Streaming with Cobs and CRC

https://github.com/choihimchan/bpu-stream-engine
2•octablock•12h ago•0 comments

Show HN: Total Recall – write-gated memory for Claude Code

https://github.com/davegoldblatt/total-recall
10•davegoldblatt•1d ago•6 comments

Show HN: Hibana – An Affine MPST Runtime for Rust

https://hibanaworks.dev
3•o8vm•13h ago•0 comments

Show HN: Beam – Terminal Organizer for macOS

https://getbeam.dev/
2•faalbane•13h ago•2 comments

Show HN: Agent Arena – Test How Manipulation-Proof Your AI Agent Is

https://wiz.jock.pl/experiments/agent-arena/
45•joozio•16h ago•47 comments
Open in hackernews

Show HN: I built a deep learning engine from scratch in Python

https://github.com/whitegra/dolphin
30•gmwhitebox_dev•9mo ago
I’ve spent the last few months building a deep learning engine completely from scratch in Python (using only math and random).

What started as a basic linear algebra calculator project grew into a symbolic tensor system with autodiff, custom matrix ops, attention mechanisms, LayerNorm, GELU, and even a text generation demo trained on the Brown corpus.

I'm still an undergrad, so my main goal is to deeply understand how deep learning actually works under the hood - gradients, attention, backpropagation, optimizers - by building it step-by-step with full visibility into everything, and without relying on big frameworks or libraries.

It’s not fast or production-ready, but that’s not the point. As of now, it’s more so aimed at exploration and understanding. I mainly wanted to explore how deep learning works by building it through first principles.

It’s still a work in progress (lots to learn and improve in terms of structure, docs, and performance), but I figured it was worth sharing.

I’d love any feedback, questions, ideas, or even just thoughts about what you’d add, change, or do differently. Thanks for reading!

Comments

benliong78•9mo ago
That’s fantastic. In your opinion what are some of the best books / resources you use to have this kind of understanding of LLM and the underlying deep learning algorithm?
gmwhitebox_dev•9mo ago
Thank you!

To approach it from first principles, I didn’t really follow any one specific tutorial or course. I really just started from the bottom up. Starting with my Tensor module, I familiarized myself with the math operations, backprop, computation graphs, autodiff… etc. That was the hardest part honestly, but it set the foundation for everything else in the system.

Once I had that working, the rest (activations, loss functions, optimizers, layers, transformers) started to make a lot more sense. Writing it all myself gave me full control, removed the abstraction, and helped me to really internalize how each part of the system fits together, and why it works - not just how.

Here’s some resources I found helpful, I also have some links to additional resources in the project readme:

- Deep Learning Foundations and concepts: Book by Christopher Bishop. Mainly covers theory and statistical ML.

- Natural Language Processing with Transformers: Book by Lewis Tunstall, Leandro von Werra, and Thomas Wolf (Hugging Face). Good for understanding real world NLP/ LLMs.

- UvA Deep Learning Tutorials: Website for building and understanding DL modules, has a lot of project-based notebooks (tutorial 7 on GNNs was very helpful).

- Deep Learning: Book by Goodfellow, Bengio & Courville. Covers a lot of foundational theory and math.

- Stanford’s CS231 Course: This is fully available online, with lecture videos and coding walk-throughs. Super helpful for learning about backprop, CNNs, and deep nets, etc.

- The Annotated Transformer: Website by Harvard NLP. This goes over the ‘Attention is All You Need’ paper in an understandable way with example code

- codingvidya.com: A good aggregator for finding ML books and learning resources.

- Andrej Karpathy’s YouTube channel, and his micrograd and tinygrad Repos are super helpful resources, especially when learning by building from scratch.

I’m still learning as I go, but I’m happy to share what’s worked for me so far! Hope this helps!

ultrasounder•9mo ago
Hi I just found this resource. Is this a full-fledged Transformer implementation? If so, I would like to throw GRPO on it to see what happens. I mean what could possibly go wrong :-)