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SSP - R&D AI ML DEVELOPER INTERN - 463646

El Qahera El Gididaa, EGY

Siemens Digital Industries Software is driving transformation to enable a digital enterprise where engineering, manufacturing and electronics design meet tomorrow. Our solutions help companies of all sizes create and leverage digital twins that provide organizations with new insights, opportunities and levels of automation to drive innovation.


Based: Cairo, Egypt. Hybrid

Siemens Digital Industries Software is a leading provider of solutions for the design, simulation, and manufacture of products across many different industries. Formula 1 cars, skyscrapers, ships, space exploration vehicles, and many of the objects we see in our daily lives are being conceived and manufactured using our Product Lifecycle Management (PLM) software. We offer a role with responsibility, independence, and the possibility to give proactively, by encouraging a collaboration culture with room for individual development.

The R&D team is looking for a summer intern to work as a AI ML Development Engineer.

Start your career with the Strategic Student Program (SSP)!

The SSP is our formal internship programs at SIEMENS Software. You will be mentored by guides and work directly with costumers to create direct business impact and again invaluable professional experience!

The program is a 2 months summer internship (July & August) 2025. There will be opportunity to learn and contribute in a variety of areas of the software development process, with emphasis on a number of achievable projects to both encourage your development and deliver something useful.

Main responsibilities:

  • Design and develop scalable Al-driven applications using Python.
  • Build, train, and optimize machine learning models using tools like TensorFlow, PyTorch, Keras, ...etc.
  • Process and analyze large datasets to extract valuable insights.
  • Design and implement machine learning algorithms tailored to specific business needs.
  • Research and implement LLM based techniques (RAG, fine tuning, ...etc.).
  • Optimize data flow and processing pipelines to support efficient model inference and training.
  • Continuously monitor, troubleshoot, and improve system performance.
  • Work closely with engineers, and other stakeholders to ensure Al solutions are aligned with business objectives.
  • Document Al models, algorithms, and application workflows.

Qualifications:

  • 3rd and 4rth year Computer Engineering or Computer Science undergraduates.
  • Computer Science fundamentals in object-oriented design, data structures, algorithm design and analysis.
  • Strong knowledge of Python and relevant libraries and frameworks commonly used in Al development.
  • Extensive experience with machine learning algorithms (supervised, unsupervised, and reinforcement learning).
  • Experience with building, maintaining, and deploying production ready Al/LLM based applications.
  • Experience in data preprocessing, including cleaning, transformation, and feature engineering to prepare datasets for training
  • Good knowledge of (LLM)/GenAl technologies like OpenAl APl, ChatGPT, GPT-4, Bard, Langchain, HuggingFace Transformers, PyTorch and similar.
  • Knowledge of Agentic AI approaches.
  • Excellent problem-solving and communication skills.
  • Ability to work independently and as part of a team.
  • Good written and verbal communication skills.

Why Working at Siemens Software?

We are an equal opportunity employer and value diversity at our company. We do not discriminate based on race, religion, color, national origin, sex, gender, gender expression, sexual orientation, age, marital status, veteran status, or disability status.

We are Siemens

A collection of over 377,000 minds building the future, one day at a time in over 200 countries. We're dedicated to equality, and we welcome applications that reflect the diversity of the communities we work in. All employment decisions at Siemens are based on qualifications, merit, and business need.

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