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About DataNimbus
At DataNimbus, we are on a mission to redefine how organizations leverage Data and AI to drive growth, innovation, and efficiency. Our pioneering products, such as DataNimbus Designer (a cloud-native ETL designer), datanimbus.io (a comprehensive data and integration platform), FinHub.ai (payment modernization platform) empower businesses to simplify complex workflows, adopt cutting-edge technology, and achieve sustainable scalability.
With headquarters in the U.S. and offices in India and Canada, DataNimbus operates globally, fostering a culture of responsible innovation, adaptability, and customer-centricity. We pride ourselves on being a trusted partner for customers navigating the complexities of Data+AI and payment modernization.
Why Join DataNimbus
At DataNimbus, we believe in shaping a sustainable, AI-driven future while offering an environment that prioritizes learning, innovation, and growth. Our core values—Customer-Centricity, Simplicity, Curiosity, Responsibility, and Adaptability—are the foundation of our workplace, ensuring every team member can make a meaningful impact. Joining DataNimbus means being part of a dynamic team where you can:
If you're passionate about innovation, ready to solve complex challenges with simplicity, and eager to make a difference, DataNimbus is the place for you.
Key Responsibilities:
Required Qualifications:
Interested
Send in your CV to [Confidential Information] ASAP!
Job ID: 141159677
Skills:
MLops, Databricks, Python, Pandas, XGBoost, Spark, LIME, LightGBM, MLflow, scikit-learn, SHAP
Skills:
Pytorch, Tensorflow, Python, XGBoost, Machine Learning, Data Pipelines, Data Processing, Experimentation Methodologies, scikit-learn
Skills:
Pyspark, Tensorflow, Numpy, Git, Pandas, Pytorch, XGBoost, Keras, Python, scikit-learn, LightGBM, TensorFlow Serving, TensorRT, MLflow, ONNX, Azure ML Pipelines, Kubeflow, TorchServe, CatBoost
Skills:
C, Lvm, Design Patterns, Windows, Cuda, Pytorch, Linux, Os Concepts, Opencl, Python, MLC, Fixed-point representations, Quantization concepts, llama.cpp, Llm, TFLite, ONNX Runtime, Optimizing algorithms for AI hardware accelerators, MLX, Generative AI models, Kernel development for SIMD architectures, SIMD processor architecture
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