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Hi, I'm Daniel 👋

Software Engineer at Roche. Previously, I was a Senior Scientist at Pacific Biosciences (PacBio) after earning my PhD at Johns Hopkins University in the department of Computer Science. Before that I was a Bioinformatics Scientist at ARUP Laboratories, where I worked on cell-free circulating tumor DNA (ctDNA) analysis and clinical genomics after my training in Physics [BS] and Biophysics/Computational Biology [MS]. I've worked with biological data (sequence, molecular modeling, metabolomics, transcriptomics, metagenomics), telecommunications data, as well as graph algorithms, machine learning, and numerical optimization.

🔭 I've worked on similarity search, and clustering, and indexing for large-scale biological data, simd/gpu-accelerated and randomized algorithms. Most recently, I've been developing methods for human genetics, including long RNA-seq, VNTRs, and haplotype phasing.

😄 Pronouns: He/Him/His

A quick tour of my interests

  1. Practical randomized algorithms

This ranges from libraries providing sketch data structures and coresets, as well as projects using random projections and DCI.

My work on coresets and clustering is primarily part of the minicore project, with the aims of providing a standard utility for coreset construction and weighted clustering, especially for exponential family models and shortest-paths metrics.

  1. Computational Biology

The bonsai project provides methods for metagenomic analysis, along with k-mer encoding/decoding and I/O, while the Dashing performs scalable sketching and comparison of sequence data.

BMFtools performs molecular demultiplication over sequencing barcoded data, reducing error rates while eliminating redundant information. Designed for ctDNA, this method can reduce error rates by orders of magnitude, allowing confident detection of very rare events.

scavenger has rust implementations using tch-rs for VAEs for count-based data, applied to single-cell transcriptomics.

I also co-developed pbfusion, a fast tool for characterizing transcriptional abnormalities.

  1. General C++

Most of my projects fall into this category, serving as tools I can reuse in various projects.

Some of my favorites:

  • vec provides type-generic abstractions over x86-64 vectorization, making it easy to write fast, portable code.
  • kspp is an RAII-based variant of kstring from klib with extra niceties making appending printf-style formatting easy.
  • aesctr provides STL-style random number generators built on fast aes-ctr and wyhash
  • circularqueue provides a range-based circular queue container that uses power-of-two sizes

Daniel Baker's Projects

sleef icon sleef

SIMD Library for Evaluating Elementary Functions, vectorized libm and DFT

squeakr icon squeakr

Squeakr: An Exact and Approximate k -mer Counting System

stochasticsvm icon stochasticsvm

SVM trained by the PEGASOS Stochastic Subgradient Descent algorithm

sv icon sv

Sparse Vector Implementation

tilt icon tilt

Biased dataloaders for PyTorch and related utilities

tree-test icon tree-test

Evaluating the performance of RB- and AVL-tree

trie icon trie

I can not win but I haz 2 ...

trilinos icon trilinos

Primary repository for the Trilinos Project

trimadap icon trimadap

Fast but inaccurate adapter trimmer for Illumina reads

valptr icon valptr

Stores a pointer and a value using unused bits in the pointer

vec icon vec

Type-generic SIMD library for optimized generic code generation

wmh icon wmh

Weighted Minhash Code

xxhash icon xxhash

Extremely fast non-cryptographic hash algorithm

zipiterator icon zipiterator

Variadic reference-based implementation of a zip iterator in C++(>=17)

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