DeepInfra seeks early-career Software Engineers to design and scale infrastructure for AI models. Responsibilities include collaboration on AI solutions, coding, testing, and maintaining production systems, alongside learning and growth opportunities.
DeepInfra is looking for early-career Software Engineers (0-2 years of experience, including internships) to join our team. You’ll work closely with our experienced engineers to design, build, and scale infrastructure for serving top open-source AI models. This role is ideal for recent graduates or junior engineers who want to grow quickly while working on high-impact, real production AI systems.
If you’re excited about AI/ML, have taken related courses or built projects, and want to learn how to ship things at scale - we’d love to meet you.
- Collaborate with engineers to design, develop, and test inference solutions for state-of-the-art AI models.
- Implement, optimize, and evaluate AI models using Python, C++, CUDA, and NCCL (previous exposure helpful - deep expertise not required).
- Monitor and maintain production model-serving systems.
- Work on new features, fix bugs, and contribute to code reviews.
- Participate in daily standups, design reviews, and team discussions.
- Explore new AI/ML techniques and tools, and experiment with improving model performance.
- Try new things. Ship stuff.
What You Bring
- Bachelor’s or Master’s degree in Computer Science, Computer Engineering, or a related field (completed or in final year).
- Strong fundamentals in data structures, algorithms, and software design.
- Proficiency in Python, including experience with AI/ML libraries and frameworks (e.g., NumPy, pandas, SciPy, TensorFlow, PyTorch).
- Experience with AI/ML through coursework, research, personal projects, full-time employment, or internships.
- Familiarity with AI models, Transformers and Diffusers.
- Experience with version control systems (e.g., Git) and agile development methodologies.
- Excellent problem-solving skills, with the ability to debug and optimize code.
- Strong communication and collaboration skills.
- Curiosity, willingness to learn, and desire to build real systems.
- Exposure to C++, CUDA, or AI inference.
- Contributions to open-source ML projects.
Why DeepInfra
- Work on cutting-edge AI model serving - the systems that power the next generation of LLMs and multimodal models.
- Small team, huge impact: your work ships directly to customers.
- Opportunity to learn from engineers building high-performance inference at scale.
- Fast-paced environment with ownership, autonomy, and end-to-end responsibility.
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