Intern - Engineering Services (São Paulo)

Qualcomm is a company of inventors that unlocked 5G, transforming industries and enriching lives through connectivity innovation.
Machine Learning
Software Engineering Intern
In-Person
3+ years of experience
AI

Description For Intern - Engineering Services (São Paulo)

Qualcomm is seeking an Engineering Services Intern in São Paulo to focus on developing innovative machine learning solutions for network optimization. This role presents a unique opportunity to work on cutting-edge technology at a company that's at the forefront of 5G innovation.

The intern will be responsible for developing a Machine Learning model that correlates network Configuration Management with Performance Management to identify optimization opportunities. This involves collecting and analyzing data from radio access network parameters, implementing algorithms, and validating the model's performance.

The ideal candidate should be pursuing a degree in Engineering or Computer Sciences (3rd year or higher), with strong analytical and problem-solving skills. Knowledge of Python, SQL, and machine learning concepts is highly valued. The position offers hands-on experience working with senior engineers and exposure to real-world applications of AI in telecommunications.

Qualcomm offers comprehensive benefits including health coverage, professional development opportunities, and mentorship programs. The company's culture promotes innovation, diversity, and inclusion, making it an ideal environment for learning and growth. This internship provides a unique opportunity to contribute to projects that impact network performance optimization while developing valuable skills in machine learning and data analysis.

Last updated 24 days ago

Responsibilities For Intern - Engineering Services (São Paulo)

  • Data Collection and Analysis of radio access network parameters
  • Develop Machine Learning model correlating network Configuration Management with Performance Management
  • Implement algorithms to process and analyze collected data
  • Validate and test the model using historical data
  • Document the model development process
  • Prepare regular reports on model development progress
  • Work closely with senior engineers and team members

Requirements For Intern - Engineering Services (São Paulo)

Python
  • Currently pursuing a degree in Engineering or Computer Sciences (3rd year or higher)
  • Strong analytical and problem-solving skills
  • Proficiency in English and Spanish
  • Good knowledge of Microsoft Office Suite applications

Benefits For Intern - Engineering Services (São Paulo)

Medical Insurance
Dental Insurance
Vision Insurance
Mental Health Assistance
Education Budget
  • World-class health coverage
  • Financial planning programs
  • Emotional/mental health support
  • Wellbeing programs
  • Continuous learning and development programs
  • Tuition reimbursement
  • Mentorship opportunities

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