Lead Computer Vision Scientist

adani capital pvt ltd

Ahmedabad

Not disclosed

Work from Office

Full Time

Min. 10 years

Job Details

Job Description

Lead - Computer Vision Scientist-AI Labs

Responsibilities

Lead-Computer Vision Scientist-AI Labs

AI Model Development & Deployment:

Deliver high-performing AI-driven computer vision models by leading their design, training, and deployment, ensuring accuracy exceeds predefined benchmarks.

Implement and optimize real-time image processing pipelines, utilizing TensorFlow, PyTorch, and OpenCV, to achieve low-latency, high-precision performance.

Enable AI-driven automation and industrial intelligence by successfully integrating computer vision models into robotics, manufacturing analytics, and process automation systems.

Improve AI model adaptability and accuracy by establishing automated feedback loops, retraining mechanisms, and performance optimization frameworks.

Enhance AI scalability and deployment efficiency by refining inference pipelines for cloud (AWS, Azure, GCP) and edge computing platforms, reducing processing time.

Image Analytics & AI Optimization:

Develop and deploy advanced image recognition solutions for object detection, OCR, and anomaly detection, ensuring X% increase in recognition accuracy.

Enhance real-time object classification and decision-making by incorporating LiDAR, RGB-D, and thermal imaging-based AI models into production workflows.

Reduce AI model inference time and error rates by refining deep learning architectures for low-latency and high-precision analytics in dynamic environments.

Expand AI-driven automation in IoT and surveillance ecosystems by embedding optimized vision models into smart monitoring and predictive maintenance systems.

AI Governance, Risk, and Compliance:

Ensure full compliance with AI ethics, privacy laws, and industry best practices by implementing standardized governance frameworks for AI models.

Establish and enforce model validation processes to eliminate bias, improve interpretability, and enhance explainability by X% across AI deployments.

Strengthen AI security and reliability by developing risk mitigation strategies, anomaly detection protocols, and automated compliance audits for AI models.

Improve model lifecycle management by conducting quarterly audits and performance evaluations, leading to an increase in AI deployment success rates.

Cross-Functional Collaboration & Business Integration:

Integrate AI-driven computer vision models into enterprise applications by collaborating with data scientists, software engineers, and business leaders to deliver AI-driven insights.

Accelerate AI adoption across teams by driving hands-on experimentation, model validation, and successful deployment of AI use cases in business-critical functions.

Optimize AI deployment pipelines by working with DevOps teams to automate model release cycles through CI CD integrations, reducing deployment time

Enhance AI-powered decision intelligence by defining clear business use cases, technical requirements, and impact metrics with product managers and stakeholders.

Team Leadership & Capability Building:

Develop a high-performing AI team by managing, mentoring, and training AI engineers, data scientists, and image processing specialists in deep learning advancements.

Enhance team capabilities by leading structured training programs, ensuring X% improvement in AI proficiency across key technical domains.

Drive research and innovation in AI labs, leading to the development of X new AI solutions per year, enhancing business decision-making.

Expand AI expertise in the organization by leading hiring, workforce planning, and talent acquisition strategies to build a best-in-class AI R&D team.

Key Stakeholders - Internal

Chief Technology Officer (CTO)

Chief Data Officer (CDO)

AI & Data Science Teams

Product & Engineering Teams

Business Units & Operations Teams

Cybersecurity & Compliance Teams

Key Stakeholders - External

AI Research Institutes & Universities

Regulatory Authorities (GDPR, AI Act, ISO AI Compliance)

Industry Partners & AI Consortiums

Technology Vendors & Cloud Providers (AWS, GCP, Azure)

 

Qualifications

Educational Qualification:

Master’s Ph.D. in AI, Computer Science, Machine Learning, or Computer Vision (Preferred from ISI IISc IIT Top AI Universities)

MBA or Business Leadership Programs (Preferred for Business Strategy Integration)

Certification:

(Preferred but Not Mandatory)

AWS GCP Azure AI & Machine Learning Certification

Deep Learning Specialization (Coursera, Stanford, Andrew Ng’s DL Program)

Computer Vision Nanodegree (Udacity, MIT AI)

AI Governance & Ethics Certification (ISO, AI Regulatory Frameworks)

DevOps for AI & MLOps Certification (Google, Kubernetes, TensorFlow Extended – TFX)

Work Experience (Range of years):

10+ years

Job role

Work location

Ahmedabad, Gujarat, India

Department

Research & Development

Role / Category

Imaging & Diagnostics

Employment type

Full Time

Shift

Day Shift

Job requirements

Experience

Min. 10 years

About company

Name

adani capital pvt ltd

Job posted by adani capital pvt ltd

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