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WalkWater Technologies

Data Scientist

📍
United States
🧪
Mid-Senior level

REQ ID – 33441791

ROLE – ML Data Scientist

LOCATION – Cupertino

MAIN SKILLS – 1-2 years as data scientist or machine learning engineer, Working knowledge and experience with big data, Familiar with machine learning algorithm, machine learning solutions using Python and its associated ecosystem — numpy, pandas, TensorFlow, PyTorch, etc., Experience working with large-scale time series data processing and image recognition pipelines


Key Qualifications:

· 1-2 years as data scientist or machine learning engineer.

· Working knowledge and experience with big data.

· Familiar with machine learning algorithm and capable to use proper metrics to evaluate model results.

· Proficiency developing machine learning solutions using Python and its associated ecosystem — numpy, pandas, TensorFlow, PyTorch, etc.

· Experience working with large-scale time series data processing and image recognition pipelines is a good plus.


Job Description:

· Deliver high quality analytic insights from a large data warehouse, especially time series data.

· Implement Deep Learning algorithms in time series data and computer vision.

· Experience working in a cloud-native environment such as AWS.

· Demonstrated abilities in problem formulation, algorithm design, and model building, including statistical analysis and evaluation.

· Compare the results of predicted values and actual values, based on historical data availability.

· Drive development of data products in collaboration with data scientists and analysts. Automate reporting where possible to make team more efficient

· Maintain software traceability through GitHub

Key informations

🧳
Contract
📅
Posted 3 months ago

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