I am a PhD student in CS at Carnegie Mellon University advised by Nina Balcan and Ameet Talwalkar. I study foundations and applications of machine learning, with a particular focus on algorithms—from statistical learners to numerical solvers to online policies—that take advantage of multiple datasets or computations.
My work includes fundamental theory for modern meta-learning (scalable methods that "learn-to-learn" using multiple learning tasks as data) and end-to-end guarantees for learning-augmented algorithms (algorithms that incorporate learned predictions about their instances to improve performance). These results are based on a set of theoretical tools that port the idea of surrogate upper bounds from supervised learning to learning algorithmic cost functions. In addition to providing natural measures of task-similarity, this approach often yields effective and practical methods, such as for personalized federated learning and multi-dataset differential privacy. I have also led the push to develop automated ML methods for diverse tasks and have worked on efficient deep learning, neural architecture search, and natural language processing.
I am a TCS Presidential Fellow, a former Facebook PhD Fellow, and have interned at Microsoft Research, Google Research, the Lawrence Livermore National Lab, and the Princeton Plasma Physics Lab. Previously, I received an AB in Mathematics and an MSE in CS from Princeton University, where I was advised by Sanjeev Arora.
I am on the job market this year; here is my CV and research statement. To reach out, please email me at khodak@cmu.edu.
Learning to Relax: Setting Solver Parameters Across a Sequence of Linear System Instances.
Mikhail Khodak, Edmond Chow, Maria-Florina Balcan, Ameet Talwalkar.
[arXiv]
[code]
Hovering over an image reveals a paper summary and retrospective.
Cross-Modal Fine-Tuning: Align then Refine. ICML 2023.
Junhong Shen, Liam Li, Lucio M. Dery, Corey Staten, Mikhail Khodak, Graham Neubig, Ameet Talwalkar.
[paper]
[arXiv]
[code]
[slides]
Learning Predictions for Algorithms with Predictions. NeurIPS 2022.
Mikhail Khodak, Maria-Florina Balcan, Ameet Talwalkar, Sergei Vassilvitskii.
[paper]
[arXiv]
[poster]
[talk]
Federated Hyperparameter Tuning: Challenges, Baselines, and Connections to Weight-Sharing. NeurIPS 2021.
Mikhail Khodak, Renbo Tu, Tian Li, Liam Li, Maria-Florina Balcan, Virginia Smith, Ameet Talwalkar.
[paper]
[arXiv]
[code]
[poster]
[slides]
[talk]
Rethinking Neural Operations for Diverse Tasks. NeurIPS 2021.
Nicholas Roberts*, Mikhail Khodak*, Tri Dao, Liam Li, Christopher RĂ©, Ameet Talwalkar.
[paper]
[arXiv]
[code]
[slides]
[talk]
[Python package]
Adaptive Gradient-Based Meta-Learning Methods. NeurIPS 2019.
Mikhail Khodak, Maria-Florina Balcan, Ameet Talwalkar.
[paper]
[arXiv]
[poster]
[slides]
[code]
[blog]
[talk]
A Theoretical Analysis of Contrastive Unsupervised Representation Learning. ICML 2019.
Sanjeev Arora, Hrishikesh Khandeparkar, Mikhail Khodak, Orestis Plevrakis, Nikunj Saunshi.
[paper]
[arXiv]
[poster]
[slides]
[data]
[blog]
[talk]
A La Carte Embedding: Cheap but Effective Induction of Semantic Feature Vectors. ACL 2018.
Mikhail Khodak*, Nikunj Saunshi*, Yingyu Liang, Tengyu Ma, Brandon Stewart, Sanjeev Arora.
[paper]
[arXiv]
[slides]
[code]
[data]
[blog]
[talk]
[R package]