CSE Internship By Nvidia India
CSE Internship By Nvidia India
The CSE Intern at Nvidia, Bangalore provides an exciting opportunity to work at the forefront of accelerated computing technology. Nvidia, a global leader in GPU-driven AI, gaming, and data center solutions, is looking for talented interns to join their team in Bangalore. This role involves collaborating with experts in the field to optimize compiler performance, innovate new technologies, and contribute to groundbreaking projects that redefine the future of computing. The internship offers a hands-on learning experience, fostering technical growth and providing exposure to cutting-edge advancements in deep learning, GPU architecture, and compiler technology.
Documents Required
Applicants submit the following documents: Resume/CV Valid Email ID Mobile No. Study Mark Sheets Certificates (If you have) Cover letter (If applicable)
Eligibility Criteria
Applicants must meet the following criteria: Currently pursuing a B.S, M.S, or Ph.D. in Computer Science, Computer Engineering, or related fields. Strong understanding of compiler optimizations such as loop optimizations, inter-procedural optimizations, and global optimizations. Excellent C++ programming skills. Experience with LLVM, MLIR, and/or Clang compiler development. Understanding of processor architectures (knowledge of GPU ISA is a plus). Strong communication and documentation skills. Self-motivated with the ability to work independently and as part of a team. Note: This internship is exclusively available in India. Specifically, in Bangalore (Karnataka).
Storage Software Internship By Seagate Technology India
Seagate Technology India
Stipend
25 March
Engineering
Bachelors
Credit And Collect Apprenticeship By American Express India
American Express India
Stipend
25 March
Bachelors
Storage Software Internship By Seagate Technology India
Seagate Technology India
Stipend
25 March
Engineering
Bachelors
Credit And Collect Apprenticeship By American Express India
American Express India
Stipend
25 March
Bachelors
Responsibilities
As an intern, you will: Identify and implement performance improvements in the LLVM-based compiler middle-end optimizer. Design and develop new compiler analysis passes and optimizations. Collaborate with cross-functional teams working on deep-learning compiler technology, spanning architecture design, programming languages, and hardware support. Contribute to projects that enhance Nvidia’s leadership in AI and parallel computing.
How To Apply
Follow the below steps to apply for the program: 1. Visit Our Official Website. 2. Read carefully all the information about the program details. 3. Click on the "Register" to complete the registration with required details. 4. After successful registration, Use the received credentials to log into your account. 5. Once logged in, Click on the "Apply" button. 6. You will be directed to the application form. Fill in all the required details accurately. 7. Prepare the necessary documents as specified in the application requirements. 8. Upload these documents in the designated sections of the application form. 9. Before submitting, review all the information you have provided. 10. After that, Click on the "Submit” button to submit your application. Note: "As a free user," →'You're encouraged to share this valuable information with your friends to access the link properly'.
Refer a Friend & Earn
Spread the word about our platform and
earn INR 6,000 for 120 successful referrals.
Start sharing today!
The CSE Intern at Nvidia, Bangalore provides an exciting opportunity to work at the forefront of accelerated computing technology. Nvidia, a global leader in GPU-driven AI, gaming, and data center solutions, is looking for talented interns to join their team in Bangalore. This role involves collaborating with experts in the field to optimize compiler performance, innovate new technologies, and contribute to groundbreaking projects that redefine the future of computing. The internship offers a hands-on learning experience, fostering technical growth and providing exposure to cutting-edge advancements in deep learning, GPU architecture, and compiler technology.