Machine Learning Engineer Intern (Computer Vision & AI)

Singapore 28 days agoInternship External
6k - 8.3k / mo
Company Cynapse Pte Ltd cynapse.ai Designation Machine Learning Engineer Intern (Computer Vision & AI) Date Listed 12 Jan 2026 Job Type Entry Level / Junior Executive Intern/TS Job Period Flexible Start, For At Least 6 Months Profession IT / Information Technology Industry Artificial Intelligence / Smart Automation Location Name 71 Ayer Rajah Crescent, Singapore Address 71 Ayer Rajah Crescent, Singapore 139951 Map Allowance / Remuneration $1,100 - 1,500 monthly Company Profile About Cynapse Cynapse is a leading AI software company specializing in enterprise-grade Video Intelligence Solutions Powered by Generative AI, tailored to meet the unique challenges of various industries. Our vertical-specific solutions empower organizations to enhance safety, operational efficiency, and security in complex environments such as roads, seaports, airports, and cities. By combining advanced Vision AI with Generative AI, we continually push the boundaries of video analytics, delivering insights and automation that transform operations. Led by a global team with a proven track record of scaling startups into market leaders, we foster innovation, collaboration, and diverse perspectives. Headquartered from US, Cynapse serves clients worldwide, redefining what's possible with video intelligence. Job Description The Role We are seeking a hands-on Machine Learning Engineer Intern to join our Model Engineering Team with a focus on Computer Vision and modern AI. This role is designed for builders who are passionate about training deep learning models, refining architectures, and scaling real-world vision systems. You will work closely with experienced engineers on production-grade models, ranging from standard object detectors to cutting-edge zero-shot and open-vocabulary architectures. This is an ideal role for those who enjoy running experiments, analysing model behaviour, and driving measurable performance improvements. What You’ll Do Model Training & Fine-Tuning: Train, evaluate, and improve deep learning models across a variety of tasks, including classification, object detection, segmentation, and action recognition. Architecture & AI Exploration: Research and experiment with CNNs, Transformers, and Foundation Models. You will explore the integration of modern AI to enhance open-vocabulary detection and zero-shot capabilities. Failure Analysis & Data Refinement: Debug model failures (false positives/negatives) and implement solutions through targeted data annotation, cleaning, or improved inference strategies to ensure model robustness. Data & ML Engineering: Manage large-scale datasets, including preprocessing and versioning, to ensure high-fidelity and reproducible experiments. Pipeline Automation: Contribute to the development and optimization of automated training and evaluation pipelines to improve reliability and deployment efficiency. Who This Role Is For Builders: You prefer hands-on engineering and practical implementation over purely theoretical research. Experimenters: You enjoy the iterative process of testing different architectures, hyperparameters, and datasets to maximize performance. Problem Solvers: You are curious about root causes and enjoy the "detective work" required for model debugging and data-driven improvements. Pragmatists: You are excited to see your models and automated systems successfully deployed in real-world production environments. Requirements Pursuing or completed a degree in Computer Science, AI, Machine Learning, or a related technical field. Strong interest in deep learning model training, experimentation, and data-centric AI. Proficiency in Python and experience with PyTorch or TensorFlow. Competency in a Linux environment (SSH, shell scripting, and CLI-based file management). Bonus Points Hands-on Experience: Previous work with specialized CV frameworks or comparing multiple architectures. Modern AI Knowledge: Familiarity with vision-language models or zero-shot detection. MLOps Tools: Experience with Git, Docker, or experiment tracking tools (e.g., Weights & Biases, MLflow). Video Processing: Knowledge of OpenCV, FFmpeg, or handling video streams. Internship Details Duration: Minimum 6 months (flexible). Commitment: 4–5 days per week. Location: Singapore-based. Application Instructions Please apply for this position by submitting your text CV using InternSG. Kindly note that only shortlisted candidates will be notified.