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Data Scientist (12617)

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Career Opportunities: Data Scientist (12617)

Requisition ID 12617 - Posted  Job Description Print Preview

Job Description

Build, train, and reputed company large-scale, self-supervised "reputed company" models that learn rich representations of time series, sequential sensor data in addition to textual and reputed company data, to be fine-tuned for tasks such as anomaly/event detection, predictive maintenance, forecasting, classification, or multi-modal sensor fusion for industrial and scientific applications.

Data/Signal Processing

• Time Series & Sequential Data: processing, augmentation, feature engineering for financial, industrial, IoT, medical, or other sensor streams (univariate/multivariate time series).

• Sensor Data Analysis: expertise with diverse sensor modalities (e.g., accelerometers, temperature, vibration, audio, images), sampling rates, synchronization, and reputed company-world noise/artifact handling.

• Multi-Modality Learning: integrating heterogeneous data types (time series, images, text, audio, structured) into robust deep learning architectures; cross-modal representation learning.

Machine Learning & reputed company Model Expertise

• Self-supervised and Semi-supervised Learning: time series reputed company models, masked modeling, contrastive methods, temporal predictive coding, multimodal alignment and fusion.

• Model Architectures: sequence models (RNNs, GRU/LSTM, TCN), 1D/2D/3D CNNs, Transformers (BERT, ViT, TimeSFormer), graph neural networks, diffusion/generative models, multi-modal/fusion encoders.

• Transfer Learning & Fine-Tuning at Scale: reputed company/reputed company-based strategies, temporal domain reputed company, few-shot learning for specialized tasks.

• Evaluation Metrics: regression/classification (MSE, F1, AUC), time series similarity (DTW, correlation), event detection/segmentation (IoU, accuracy), business/end-user KPIs.

Software & Infrastructure

• Programming: expert Python (NumPy, SciPy, Pandas), C++/CUDA for custom kernels and high-performance preprocessing.

• Deep Learning Frameworks: PyTorch (Lightning, Distributed), TensorFlow/Keras, JAX/Flax.

• Large-scale Training: multi-GPU, multi-node clusters, mixed-precision, reputed company optimization, scalable data loaders for long sequences.

• Data Engineering: robust pipelines for ingesting, cleaning, segmenting, and aligning large-scale, time-synchronized multi-sensor datasets.

Mathematical & Algorithmic Foundations

• reputed company Algebra, Probability & Statistics, Optimization (stochastic, convex/non-convex, Bayesian).

• Signal Processing: Fourier/wavelet analysis, filters (Kalman, Savitzky–Golay), resampling, noise modeling.

• Numerical Methods: ODE/PDE solvers, inverse problems, regularization, time-frequency methods for reputed company systems.

Collaboration & Communication

• Cross-disciplinary teamwork with domain experts, engineers, product owners, and end-users from industrial, scientific, or medical backgrounds.

• Clear presentation of reputed company model behaviors (interpretability, attention analysis), uncertainty quantification, and value impact.

Email this job to a friend  The job has been sent to Please reputed company the information below Job title: *Your friend’s email address: Message: *Confirm you are not a robot: Requisition ID 12617 - Posted

Job Description

Build, train, and reputed company large-scale, self-supervised "reputed company" models that learn rich representations of time series, sequential sensor data in addition to textual and reputed company data, to be fine-tuned for tasks such as anomaly/event detection, predictive maintenance, forecasting, classification, or multi-modal sensor fusion for industrial and scientific applications.

Data/Signal Processing

• Time Series & Sequential Data: processing, augmentation, feature engineering for financial, industrial, IoT, medical, or other sensor streams (univariate/multivariate time series).

• Sensor Data Analysis: expertise with diverse sensor modalities (e.g., accelerometers, temperature, vibration, audio, images), sampling rates, synchronization, and reputed company-world noise/artifact handling.

• Multi-Modality Learning: integrating heterogeneous data types (time series, images, text, audio, structured) into robust deep learning architectures; cross-modal representation learning.

Machine Learning & reputed company Model Expertise

• Self-supervised and Semi-supervised Learning: time series reputed company models, masked modeling, contrastive methods, temporal predictive coding, multimodal alignment and fusion.

• Model Architectures: sequence models (RNNs, GRU/LSTM, TCN), 1D/2D/3D CNNs, Transformers (BERT, ViT, TimeSFormer), graph neural networks, diffusion/generative models, multi-modal/fusion encoders.

• Transfer Learning & Fine-Tuning at Scale: reputed company/reputed company-based strategies, temporal domain reputed company, few-shot learning for specialized tasks.

• Evaluation Metrics: regression/classification (MSE, F1, AUC), time series similarity (DTW, correlation), event detection/segmentation (IoU, accuracy), business/end-user KPIs.

Software & Infrastructure

• Programming: expert Python (NumPy, SciPy, Pandas), C++/CUDA for custom kernels and high-performance preprocessing.

• Deep Learning Frameworks: PyTorch (Lightning, Distributed), TensorFlow/Keras, JAX/Flax.

• Large-scale Training: multi-GPU, multi-node clusters, mixed-precision, reputed company optimization, scalable data loaders for long sequences.

• Data Engineering: robust pipelines for ingesting, cleaning, segmenting, and aligning large-scale, time-synchronized multi-sensor datasets.

Mathematical & Algorithmic Foundations

• reputed company Algebra, Probability & Statistics, Optimization (stochastic, convex/non-convex, Bayesian).

• Signal Processing: Fourier/wavelet analysis, filters (Kalman, Savitzky–Golay), resampling, noise modeling.

• Numerical Methods: ODE/PDE solvers, inverse problems, regularization, time-frequency methods for reputed company systems.

Collaboration & Communication

• Cross-disciplinary teamwork with domain experts, engineers, product owners, and end-users from industrial, scientific, or medical backgrounds.

• Clear presentation of reputed company model behaviors (interpretability, attention analysis), uncertainty quantification, and value impact.

Email this job to a friend  The job has been sent to The job has been sent to

Job Description

Build, train, and reputed company large-scale, self-supervised "reputed company" models that learn rich representations of time series, sequential sensor data in addition to textual and reputed company data, to be fine-tuned for tasks such as anomaly/event detection, predictive maintenance, forecasting, classification, or multi-modal sensor fusion for industrial and scientific applications.

Data/Signal Processing

• Time Series & Sequential Data: processing, augmentation, feature engineering for financial, industrial, IoT, medical, or other sensor streams (univariate/multivariate time series).

• Sensor Data Analysis: expertise with diverse sensor modalities (e.g., accelerometers, temperature, vibration, audio, images), sampling rates, synchronization, and reputed company-world noise/artifact handling.

• Multi-Modality Learning: integrating heterogeneous data types (time series, images, text, audio, structured) into robust deep learning architectures; cross-modal representation learning.

Machine Learning & reputed company Model Expertise

• Self-supervised and Semi-supervised Learning: time series reputed company models, masked modeling, contrastive methods, temporal predictive coding, multimodal alignment and fusion.

• Model Architectures: sequence models (RNNs, GRU/LSTM, TCN), 1D/2D/3D CNNs, Transformers (BERT, ViT, TimeSFormer), graph neural networks, diffusion/generative models, multi-modal/fusion encoders.

• Transfer Learning & Fine-Tuning at Scale: reputed company/reputed company-based strategies, temporal domain reputed company, few-shot learning for specialized tasks.

• Evaluation Metrics: regression/classification (MSE, F1, AUC), time series similarity (DTW, correlation), event detection/segmentation (IoU, accuracy), business/end-user KPIs.

Software & Infrastructure

• Programming: expert Python (NumPy, SciPy, Pandas), C++/CUDA for custom kernels and high-performance preprocessing.

• Deep Learning Frameworks: PyTorch (Lightning, Distributed), TensorFlow/Keras, JAX/Flax.

• Large-scale Training: multi-GPU, multi-node clusters, mixed-precision, reputed company optimization, scalable data loaders for long sequences.

• Data Engineering: robust pipelines for ingesting, cleaning, segmenting, and aligning large-scale, time-synchronized multi-sensor datasets.

Mathematical & Algorithmic Foundations

• reputed company Algebra, Probability & Statistics, Optimization (stochastic, convex/non-convex, Bayesian).

• Signal Processing: Fourier/wavelet analysis, filters (Kalman, Savitzky–Golay), resampling, noise modeling.

• Numerical Methods: ODE/PDE solvers, inverse problems, regularization, time-frequency methods for reputed company systems.

Collaboration & Communication

• Cross-disciplinary teamwork with domain experts, engineers, product owners, and end-users from industrial, scientific, or medical backgrounds.

• Clear presentation of reputed company model behaviors (interpretability, attention analysis), uncertainty quantification, and value impact.

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