
Dorota Rozniecka developed an end-to-end TensorFlow-to-ONNX conversion workflow within the IBM/watsonx-ai-samples repository, targeting seamless integration with IBM Watson Machine Learning. She designed a Jupyter Notebook that guides users through downloading models, converting them to ONNX format, and deploying them for scoring, thereby streamlining the productionization of machine learning models in Watson ML pipelines. Her work expanded support for both TensorFlow and PyTorch models, enhancing cross-framework interoperability and reuse. Utilizing Python, ONNX, and Jupyter Notebook, Dorota demonstrated depth in machine learning workflow automation, focusing on reducing manual steps and enabling more efficient deployment processes for data science teams.

Delivered an end-to-end TensorFlow-to-ONNX conversion notebook within IBM/watsonx-ai-samples to enable seamless IBM Watson Machine Learning integration. The workflow covers model download, ONNX conversion, and deployment for scoring, reducing manual steps and accelerating productionization of ML models in Watson ML pipelines. The work also includes expanded multi-framework support (PyTorch and TensorFlow) via additional notebooks, broadening interoperability and reuse across teams.
Delivered an end-to-end TensorFlow-to-ONNX conversion notebook within IBM/watsonx-ai-samples to enable seamless IBM Watson Machine Learning integration. The workflow covers model download, ONNX conversion, and deployment for scoring, reducing manual steps and accelerating productionization of ML models in Watson ML pipelines. The work also includes expanded multi-framework support (PyTorch and TensorFlow) via additional notebooks, broadening interoperability and reuse across teams.
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