Overview
Remote
Depends on Experience
Accepts corp to corp applications
Contract - W2
Contract - Independent
Contract - 24 Month(s)
Unable to Provide Sponsorship
Skills
Machine Learning Vision Engineer
(OCR & Computer Vision)
Python
Object Oriented Programming (OOP)
vision frameworks
OCR
PyTorch
TensorFlow
Tesseract
PaddleOCR
EasyOCR
Microsoft ADO Testing Module
Job Details
Hello Everyone,
Role: Machine Learning Vision Engineer (OCR & Computer Vision) Location :Middletown, PA. Duration: 6+ Months
Job Description Minimum Experience
Strong professional experience with Python (must be clearly demonstrated in resume).
Solid background in software engineering: Object Oriented Programming (OOP), design patterns, clean code, and testable architectures.
Experience with image processing and computer vision frameworks (e.g., OpenCV, Pillow).
Hands-on experience with machine learning frameworks (e.g., PyTorch, TensorFlow).
OCR-related experience (such as Tesseract, PaddleOCR, EasyOCR, or custom models).
Familiarity with object detection (such as YOLO, Faster R-CNN, SSD, etc.).
Knowledge of classification, feature extraction, and evaluation metrics for vision tasks.
Proficient in the Microsoft Office 365 suite of business software including Teams, Word, Excel, and PowerPoint, plus proficient in Microsoft ADO Testing Module.
Desired Skillset
Software Developer grade of engineer who thinks in terms of code quality, maintainability, and design.
Hands-on ML Vision practitioner with applied experience in OCR, classification, and detection.
Demonstrates innovative thinking, with the ability to translate research methods into production.
Comfortable working in a multi-module, distributed system environment.
Strong communicator, able to articulate technical choices and trade-offs.
Additional beneficial skills include:
Enterprise Business Solutions, specifically SAP projects.
ITIL / ITSM practices and methodologies.
Certifications / Education
Bachelor s degree in business management or information systems.
Equivalent combination of education and/or experience may be accepted.
Please Share the Profile to
Role: Machine Learning Vision Engineer (OCR & Computer Vision) Location :Middletown, PA. Duration: 6+ Months
Job Description Minimum Experience
Strong professional experience with Python (must be clearly demonstrated in resume).
Solid background in software engineering: Object Oriented Programming (OOP), design patterns, clean code, and testable architectures.
Experience with image processing and computer vision frameworks (e.g., OpenCV, Pillow).
Hands-on experience with machine learning frameworks (e.g., PyTorch, TensorFlow).
OCR-related experience (such as Tesseract, PaddleOCR, EasyOCR, or custom models).
Familiarity with object detection (such as YOLO, Faster R-CNN, SSD, etc.).
Knowledge of classification, feature extraction, and evaluation metrics for vision tasks.
Proficient in the Microsoft Office 365 suite of business software including Teams, Word, Excel, and PowerPoint, plus proficient in Microsoft ADO Testing Module.
Desired Skillset
Software Developer grade of engineer who thinks in terms of code quality, maintainability, and design.
Hands-on ML Vision practitioner with applied experience in OCR, classification, and detection.
Demonstrates innovative thinking, with the ability to translate research methods into production.
Comfortable working in a multi-module, distributed system environment.
Strong communicator, able to articulate technical choices and trade-offs.
Additional beneficial skills include:
Enterprise Business Solutions, specifically SAP projects.
ITIL / ITSM practices and methodologies.
Certifications / Education
Bachelor s degree in business management or information systems.
Equivalent combination of education and/or experience may be accepted.
Please Share the Profile to
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