Machine Learning Research Engineer Intern
Texas Instruments
Machine Learning Research Engineer Intern
Job Description
Change the world. Love your job.
We are seeking a highly motivated Machine Learning Research Engineer intern to join our Embedded AI team to work on cutting-edge Large Language Model (LLM) research and development for Edge AI applications. As a key member of our team, you will lead the efforts on advancing the state-of-the-art in LLM architectures, Agentic LLM, and Reasoning LLM. Your work will involve exploring innovative approaches to integrate LLMs with domain knowledge, related tools, and other AI techniques to achieve human-like decision-making capabilities for business impact.
In this machine learning research engineer role, you’ll have the chance to work on the following topics:
- Explore the application of LLMs in code generation, evaluation, and optimization
- Conduct research and development on novel and efficient LLM architectures, training algorithms, and post-training algorithms
- Design and develop new reasoning models with domain-specific knowledge
- Design and implement advanced Agentic LLM system for complex task automations
- Collaborate with system teams and internal business teams to define and implement AI/ML solutions for core business
Qualifications
Minimum Requirements:
- Currently pursuing a doctoral degree in Electrical Engineering, Computer Engineering, Electrical and Computer Engineering or related field
- Cumulative 3.0/4.0 GPA or higher
- Demonstrated analytical and problem solving skills
- Strong written and verbal communication skills
- Ability to work in teams and collaborate effectively with people in different functions
- Strong time management skills that enable on-time project delivery
- Ability to build strong, influential relationships
- Ability to work effectively in a fast-paced and rapidly changing environment
- Ability to take the initiative and drive for results
- Strong background in Natural Language Processing, Large Language Models, and Deep Learning frameworks
- Proven track record of designing, developing, and deploying machine learning models/LLMs that drive business value
- Proficiency in Python, C/C++, and software design, including debugging, performance analysis, and optimization
- Excellent understanding of LLM architectures and transformer-based models
- Experience with popular deep learning frameworks (e.g., PyTorch, JAX, ONNX) and LLM-specific libraries (e.g., transformers, trl, vllm)
- Strong foundation in text processing, tokenization, and embedding techniques
- Knowledge of few-shot learning, transfer learning, and fine-tuning
- Knowledge of LLM performance evaluation
- Knowledge of reinforcement learning for LLM; Experience with LLM post-training implementation, including PPO, DPO, and GRPO
- Experience with LLM agent implementation with tool calling
- Excellent communication and interpersonal skills, with the ability to work in a dynamic and distributed team
About Us
- Engineer your future. We empower our employees to truly own their career and development. Come collaborate with some of the smartest people in the world to shape the future of electronics.
- We're different by design. Diverse backgrounds and perspectives are what push innovation forward and what make TI stronger. We value each and every voice, and look forward to hearing yours. Meet the people of TI
- Benefits that benefit you. We offer competitive pay and benefits designed to help you and your family live your best life. Your well-being is important to us.
Job Info
- Job Identification 25006832
- Job Category Engineering - Product Dev
- Posting Date 08/18/2025, 10:55 PM
- Apply Before 08/25/2025, 08:00 AM
- Degree Level Bachelor's Degree
- Locations EXKI 13560 N. Central Expwy, Dallas, TX, 75243, US
- ECL/GTC Required Yes
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