Andrew Fairless, Ph.D.
/About/Bio
/Projects
/Reposts
/Tags
/Categories
Posts
.
2021-01-13
What I Read: Effort to Stop the Coronavirus in Nursing Homes
2021-01-13
What I Read: Snorkel Tutorial to Predict Multiple Sclerosis
2021-01-12
What I Read: Intro to Data Engineering for Data Scientists
2021-01-12
What I Read: Mitochondria, Anxiety and Mental Health
2021-01-11
What I Read: Making Netflix’s Data Infrastructure Cost-Effective
2021-01-11
What I Read: Patients aren’t being told about AI systems
2021-01-10
What I Read: A winners curse adjustment
2021-01-10
What I Read: This Algorithm Doesnt Replace Doctors
2021-01-09
What I Read: The Cost of AI Training is Improving
2021-01-09
What I Read: the Effort to Stop Maternal Deaths
2021-01-08
What I Read: Count, data notebook
2021-01-08
What I Read: ML For Python Developers
2021-01-07
What I Read: Mathematician’s Guide to Contagion
2021-01-07
What I Read: Running Machine Learning at Scale
2021-01-06
What I Read: Software engineering for Data Scientists
2021-01-06
What I Read: start deploying
2021-01-05
What I Read: making machine learning actually useful
2021-01-05
What I Read: Progress of Natural Language Processing
2021-01-04
What I Read: Symbolic Models from Deep Learning
2021-01-04
What I Read: Who Is Responsible When Autonomous Systems Fail?
2021-01-03
What I Read: Computers Roll Loaded Dice
2021-01-03
What I Read: GPT-3, a Giant Step for NLP
2021-01-02
What I Read: Five Cognitive Biases
2021-01-02
What I Read: Nitpicking ML Technical Debt
2021-01-01
What I Read: data distributions
2021-01-01
What I Read: Differentiable Reasoning over Text
2020-12-31
What I Read: Flows for simultaneous manifold learning and density estimation
2020-12-31
What I Read: Scientists Taught Mice to Smell an Odor That Doesn’t Exist
2020-12-30
What I Read: Learning Neural Causal Models
2020-12-30
What I Read: To Adapt to Tech, We’re Heading Into the Shadows
2020-12-29
What I Read: Fundamental Theorem for Epidemiology
2020-12-29
What I Read: Penrose, Mathematical Notation to Beautiful Diagrams
2020-12-28
What I Read: GPT-3, The New Mighty Language Model
2020-12-28
What I Read: Self Supervised Representation Learning in NLP
2020-12-27
What I Read: ML models in production
2020-12-27
What I Read: Symbolic Mathematics, Neural Networks
2020-12-26
What I Read: Exploring Bayesian Optimization
2020-12-26
What I Read: Possible Alzheimer’s Treatment
2020-12-25
What I Read: Deep Generative Models
2020-12-25
What I Read: Feature Management
2020-12-24
What I Read: Neural Networks to Find Answers in Tables
2020-12-24
What I Read: regularization of linear models
2020-12-23
What I Read: Common Sense Computers
2020-12-23
What I Read: DevOps for ML Data
2020-12-22
What I Read: Coding habits for data scientists
2020-12-22
What I Read: Tonks Multi-Task Model
2020-12-21
What I Read: Developers Databases
2020-12-21
What I Read: Peer Reviewing Data Science Projects
2020-12-20
What I Read: Guide to Graph Neural Networks
2020-12-20
What I Read: Monitoring Machine Learning Models in Production
← Prev
Next →