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Work at the forefront of automotive innovation with ZF,
one of the world’s leading automotive suppliers.

AI, Deep Learning, Reinforcement Learning


Hyderabad, TG, IN, 500032

Req ID [[10843]] [[Hyderabad]], India


Your Profile:


  • Excellent degree (Master) in computer science, mathematics, physics, engineering, or related fields with excellent grades
  • 3-8 years of Experience in Python and implement fast, reliable code in C++ and Rust. Experience in supervised, semi-supervised, and unsupervised machine learning algorithms and architectures
  • Proficient with Reinforcement Learning, Physics, Control theory, Game theory.
  • An Expert with TensorFlow or PyTorch
  • Theoretical and practical knowledge with the fundamentals of Deep Learning, eg. CNNs, LSTMs, Transformers, Regularization Techniques, etc.
  • Proficient in developing Deep Learning Model Pipelines and Experience in working with multi-dimensional data and Top-notch communication skills to convey key insights from complex analysis, both oral and written


Your Tasks:


  • Select and develop highly performant architecture, design, flow control, fault-tolerant, resilient systems.
  • At the intersection between software engineering and data science.
  • Can produce algorithms to deploy into machines and robots and enables these to use AI.
  • Write production-level code. Do code reviews and focus on coding and deploying complex, large-scale ML products.


Be part of our ZF team as [[Senior Engineer]] and apply now!


[[Sriram Adluri]]


Our Commitment to Diversity

ZF is an Equal Opportunity and Affirmative Action Employer and is committed to ensuring equal employment opportunities for all job applicants and employees. Employment decisions are based upon job-related reasons regardless of an applicant's race, color, religion, sex, sexual orientation, gender identity, age, national origin, disability, marital status, genetic information, protected veteran status, or any other status protected by law.

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