TL;DR
Machine Learning Engineer (AI): Researching, designing, implementing, and optimizing machine learning and deep learning models with an accent on NLP, Computer Vision, Recommendation Systems, and Time-Series Forecasting. Focus on building scalable AI services, managing model deployment and MLOps, and applying cutting-edge AI technologies to enhance product intelligence and user experience.
Location: Kuala Lumpur, Malaysia
Company
hirify.global is a global technology powerhouse with a $69 billion revenue, ranked #196 in the Fortune Global 500, delivering AI-enabled and AI-optimized devices, infrastructure, software, and services worldwide.
What you will do
- Research, design, implement, and optimize machine learning and deep learning models including NLP, Computer Vision, Recommendation Systems, and Time-Series Forecasting.
- Productize algorithms and models by building highly available, scalable AI services and manage model deployment, monitoring, and continuous iteration (MLOps).
- Build and maintain efficient data processing pipelines for data cleaning and feature engineering ensuring high data quality.
- Stay updated with latest AI advancements and conduct proof-of-concept evaluations to apply cutting-edge technologies to real-world projects.
- Collaborate closely with Product Managers, Software Engineers, and Data Engineers to ensure successful delivery and integration of AI solutions.
Requirements
- Proficient in Python with strong programming habits and solid foundation in algorithms and data structures.
- Skilled in at least one mainstream deep learning framework such as PyTorch or TensorFlow.
- In-depth understanding of classical machine learning algorithms (GBDT, SVM) and deep learning models (Transformer, CNN, RNN/LSTM).
- Over 2 years of project experience in the AI/machine learning industry.
- Location: Kuala Lumpur, Malaysia.
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