Remote | Full-time 22th August 2025We are seeking a highly skilled Data Scientist with strong expertise in Computer Vision and AI with 6+ years of experience to join our team. The ideal candidate is hands-on with modern ML/AI frameworks, capable of designing and deploying scalable models, and comfortable working across cloud, DevOps, and visualization ecosystems. You will contribute to end-to-end development — from data preprocessing and model building to production deployment and stakeholder communication. Responsibilities▪ Develop and deploy AI/ML models for Computer Vision and NLP. ▪ Work with large datasets using Python, R, SQL/NoSQL, Hadoop, PySpark.
▪ Build and optimize deep learning models with TensorFlow, PyTorch, Keras, FastAI. ▪ Integrate models into applications via Flask, FastAPI, Django. ▪ Leverage Azure, Databricks, Docker, Kubernetes for scalable ML workflows. ▪ Create insightful dashboards using Tableau, Power BI, Plotly, Seaborn, Matplotlib. ▪ Collaborate in Agile/Lean environments, managing stakeholders and simplifying complex outputs. Requirements▪ Strong programming skills: Python, Java, Django, R (basic), SQL/NoSQL. ▪ Expertise in ML/AI frameworks: TensorFlow, PyTorch, Keras, FastAI, HuggingFace (BERT/Transformers), OpenCV. ▪ Experience with Big Data & ML pipelines: Hadoop, PySpark, MLflow. ▪ Familiarity with Cloud & DevOps: Azure, Docker, Kubernetes, Git. ▪ Proficiency in data visualization:
Tableau, Power BI, Seaborn, Plotly, Matplotlib. ▪ Strong problem-solving, communication, and stakeholder management skills. ▪ Background in Computer Vision projects (classification, detection, segmentation) preferred. How To ApplyIf you are interested and your skills / experience matches our requirements, please share us your CV. Please include "Data Scientist – Computer Vision & AI" in the subject line. Apply below: Apply
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