Design, develop, and deploy end-to-end Computer Vision solutions using classical and deep learning approaches.
Build and optimize models for image classification, object detection, segmentation, and OCR/document understanding.
Apply CNN architectures (e.g., ResNet, EfficientNet, ConvNeXt) and Vision Transformers (ViT, Swin), including transfer learning and fine-tuning strategies.
Collaborate on data annotation strategies, data augmentation pipelines, and approaches to handle imbalance, noise, and domain shift.
Evaluate model performance using appropriate metrics (mAP, IoU, Dice, ROC) and perform detailed error analysis.
Implement model explainability and interpretability techniques such as Grad-CAM and saliency maps.
Optimize models for production environments, including quantization, pruning, and inference optimization (real-time vs batch).
Work closely with engineering teams on MLOps practices: monitoring drift, data lineage, and retraining loops.
Contribute to multimodal and GenAI initiatives, including vision-language models, vision in RAG systems, and image-based prompting.
Ensure ethical AI practices, considering privacy, PII, dataset bias, and regulatory constraints.
Strong foundations in Computer Vision, including image formation, color spaces, and geometry.
Solid understanding of classical CV methods (filters, edge detection, feature extraction – conceptually).
Hands-on experience with deep learning for vision and modern architectures.
Experience working with production ML systems and MLOps best practices.
Ability to communicate technical concepts clearly to both technical and non-technical stakeholders.
Strong problem-solving skills and ownership mindset.
Experience mentoring or guiding junior team members is a plus.
What about languages?
Advanced English proficiency is required for effective communication with international teams and stakeholders.
Our perks and benefits:
🍔 Every day lunches! (headquarters):
⚖️ Flexible working options to help you strike the right balance.
👨🏽💻 All the equipment you need to harness your talent (Macbook and accessories).
☕ Snacks and beverages available everyday (headquarters).
🎮 After office events, football, tennis and game nights (headquarters).
⚽️ Everyone is welcome to join our football league every Wednesday’s and Friday’s.
Challenge your teammates to a pool game and win the office’s trophy! Tennis courts available for friendly matches.
Not a sports person? Don’t worry, we also have chess championships, game and music nights for you to join!
📚 Learning opportunities:
👩🏫 Mentoring and Development opportunities to shape your career path.
🎁 Anniversary and birthday gifts.
🏡 Great location and even greater teammates!
So what are the next steps?
Our team is eager to learn about you! Send us your resume or LinkedIn profile below and we’ll explore working together!
BLEND360 is an award-winning, new breed Data Science Consultancy focused on powering exceptional results for our Fortune 500/1000 clients and other major organizations. We are a growing company—born at the intersection of advanced analytics, data, and technology.Who we are:People are everything here at BLEND360. We are inspired by advancing our Client’s most critical initiatives, products and projects by matching our clients with the right talent. BLEND360 has been among the Inc. 5000 fastest growing companies 8 years in a row, and we’re very proud of our World Class NPS score. Our success is a direct result of our passion for advancing the careers of the talented people we work with every day. When you work at BLEND360, you will:Collaborate with a smart, passionate group of people who are invested in your success.Partner with an impressive list of clients, who value Blend360’s services and the world class experience we deliver with every engagement. Thrive with a company and leadership team who are committed to growth.
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