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Machine Learning Engineer

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Machine Learning Engineer

Experience Required: 1+ Years

Position Open: 1

Job Location: Ahmedabad

Qualification: B.Tech/B.E/MCA

Office Timing: 10.00 AM to 7.00 PM

Work From Home Available: No

Job Description:

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Role and Responsibility:

  • Study and transform data science prototypes and apply appropriate machine learning algorithms and tools
  • Run machine learning tests and experiments, and document findings and results
  • Train, retrain, and monitor machine learning systems and models as needed
  • Construct optimized data pipelines to feed machine learning models
  • Consult with managers to determine and refine machine learning objectives
  • Extend existing machine learning libraries and frameworks

Skill Requirement:

  • Impeccable analytical and problem-solving skills
  • Extensive math and computer skills, with a deep understanding of probability, statistics, and algorithms
  • In-depth knowledge of machine learning frameworks, like Keras or PyTorch
  • Familiarity with data structures, data modeling, and software architecture
  • Excellent time management and organizational skills
  • Desire to learn

Perks and Benefits:

  • Design and develop machine learning algorithms and deep learning applications and systems.
  • Solve complex problems with multilayered data sets, and optimize existing machine learning libraries and frameworks
  • Collaborate with data scientists, administrators, data analysts, data engineers, and data architects on production systems and applications
  • Identify differences in data distribution that could potentially affect model performance in real-world applications
  • Ensure algorithms generate accurate user recommendations
  • Stay up to date with developments in the machine learning industry