Data Scientist
Role summary
ATI is seeking a Data Scientist to support business unit-wide data analytics initiatives in Cudahy, WI. The role involves machine learning for material properties, thermal management, characterization, and manufacturing process improvement. A successful candidate will work cross-functionally, possess a strong Continuous Improvement mindset, and map data from various sources. Responsibilities include building models and optimization tools for large-scale projects using diverse data types. A B.S. degree in computer science or engineering with a strong statistical and programming background is required, along with experience in deep learning, predictive modeling, data mining, and time series analysis.
Proven to Perform.
From the edges of space to the bottoms of ocean, our materials are proven to perform - and so is our team. We're hiring high performers as proven as our products. Join us.
ATI is seeking to hire a Data Scientist to support business unit-wide data analytics initiatives. This position will be based in Cudahy, WI.
As a Data Scientist your work may be focused in a variety of areas, including Machine learning predictions of material properties, thermal management of forgings, automated characterization methods, and design and improvement of manufacturing processes.
A successful Data Scientist will work cross-functionally across multiple levels, operate effectively in early-stage development of processes and procedures, and will possess a strong Continuous Improvement mindset.
Additional Responsibilities
- Map data from multiple sources into new structures.
- Work with business subject matter experts to determine best solutions
- Serve as a subject matter expert in the capabilities of Data Science.
- Collaborate with business owners to solve business problems using a broad spectrum of data science tools, packages and visualization techniques.
- Build models and optimization tools to support large scale projects that utilize online, offline data, structured, and unstructured data.
Requirements:
Basic Qualifications
- B.S. degree in computer science, engineering with a strong statistical and programming background.
- Experience in deep learning, predictive modeling, data mining, and time series analysis.
- Knowledge of image segmentation, generative models, convolutional neural networks.
- Experience in applied machine learning.
Preferred Qualifications (in addition to Basic Qualifications)
- Experience in PyTorch, Keras/Tensorflow.
- Experience in explainable AI.
- Experience in SQL data query, data cleaning
- Experience in SAP Data Intelligence and/or Azure cloud computing a plus but not required.
- If you have worked on PINN or used ML for solving materials science problem a big plus.
We thrive when the expectations are great, and the barriers are high. We're solving the world's most difficult challenges through materials science. Our advanced, integrated process technologies and proven performers give us a tremendous competitive advantage. When customers systems need to fly higher, dig deeper, stand stronger, and last longer - anywhere on, above or below the earth - ATI is proven to perform.
- It is ATI's policy to not provide immigration sponsorship for any of the company's positions.
ATI and its subsidiary companies will provide equal employment opportunities to all applicants without regard to applicant's race, color, religion, sex, gender, genetic information, national origin, age, veteran status, disability status, or any other status protected be federal or state law. The company will provide reasonable accommodations to allow an applicant to participate in the hiring process if so requested.
Similar roles
Senior Data ScientistAviva Canada · Toronto, Ontario, Canada · Hybrid- Sr. Data ScientistBurtch Works · Reading, Pennsylvania, United States · Onsite
Data ScientistMANTECH · Ashburn, Virginia, United States · Hybrid
Junior Data ScientistApplied Research Associates, Inc · Fort Belvoir, Virginia, United States · Onsite- Data ScientistBrooksource · Houston, Texas, United States · Onsite