Science and Research

mlf-core: a framework for deterministic machine learning

MOTIVATION: Machine learning has shown extensive growth in recent years and is now routinely applied to sensitive areas. To allow appropriate verification of predictive models before deployment, models must be deterministic. Solely fixing all random seeds is not sufficient for deterministic machine learning, as major machine learning libraries default to the usage of nondeterministic algorithms based on atomic operations. RESULTS: Various machine learning libraries released deterministic counterparts to the nondeterministic algorithms. We evaluated the effect of these algorithms on determinism and runtime. Based on these results, we formulated a set of requirements for deterministic machine learning and developed a new software solution, the mlf-core ecosystem, which aids machine learning projects to meet and keep these requirements. We applied mlf-core to develop deterministic models in various biomedical fields including a single-cell autoencoder with TensorFlow, a PyTorch-based U-Net model for liver-tumor segmentation in computed tomography scans, and a liver cancer classifier based on gene expression profiles with XGBoost. AVAILABILITY AND IMPLEMENTATION: The complete data together with the implementations of the mlf-core ecosystem and use case models are available at https://github.com/mlf-core.

  • Heumos, L.
  • Ehmele, P.
  • Kuhn Cuellar, L.
  • Menden, K.
  • Miller, E.
  • Lemke, S.
  • Gabernet, G.
  • Nahnsen, S.

Keywords

  • *Ecosystem
  • *Software
  • Machine Learning
  • Algorithms
  • Tomography, X-Ray Computed
Publication details
DOI: 10.1093/bioinformatics/btad164
Journal: Bioinformatics
Number: 4
Work Type: Original
Location: CPC-M
Disease Area: PLI
Partner / Member: HMGU
Access-Number: 37004171

DZL Engagements

chevron-down