Florian Hartmann
I work on collaborative learning with LLMs at Google DeepMind. Previously, I wrote my master's thesis on federated learning, spent a few wonderful months at Mozilla working on a Firefox implementation, and then continued to work on federated learning at Google Research for a few years. I also did some work on Differential Privacy and recommender systems at Mozilla, and on NLP at Amazon.
I occasionally like to develop apps, such as a clipboard manager or a Hacker News client. Before I got into machine learning, I published several popular JavaScript libraries.
2024
- 
          
            
            What I read in 2024
            Some notes on the books I read the past year
- 
          
            
            Social Learning
            Towards collaborative learning with large language models
- 
          
            
            LLMs Understand Base64
            Learning is compression
2023
- 
          
            
            What I read in 2023
            Some notes on the books I read the past year
- 
          
            
            Distributed Differential Privacy for Federated Learning
            Distributed training with formal privacy guarantees that hold end-to-end
2022
- 
          
            
            What I read in 2022
            Some notes on the 52 books I read the last 52 weeks
- 
          
            
            Working on Federated Learning
            Why working on federated learning is interesting, meaningful and fun
2021
- 
          
            
            What I read in 2021
            Some notes on the books I read this year
- 
          
            
            Federated Smart Text Selection
            What I worked on at Google the past couple of years
2020
- 
          
            
            What I read in 2020
            Some notes on the books I read this year
- 
          
            
            Diffing
            Using the longest common subsequence to compute diffs
- 
          
            
            That XOR Trick
            Solving problems creatively with XOR
2019
- 
          
            
            What I read in 2019
            Some notes on the books I read this year
- 
          
            
            Reservoir Sampling
            Sampling from streams
- 
          
            
            Count-Min Sketch
            A probabilistic data structure for data stream summaries
2018
- 
          
            
            What I read in 2018
            Some notes on the books and papers I read this year
- 
          
            
            TensorFlow
            A bottom-up guide to computational graphs and tensors
- 
          
            
            Quines
            Self-reproducing programs
- 
          
            
            Federated Learning for Firefox
            Distributed machine learning for the Firefox URL bar
- 
          
            
            Estimation Theory and Machine Learning
            Formalizing what it means to compute good estimates
- 
          
            
            Federated Learning
            An introduction to collaborative machine learning
- 
          
            
            RProp
            Gradient descent without using gradient magnitudes
- 
          
            
            Probabilistic Quantization
            A probabilistic compression technique for Federated Learning