Client Background: A German autonomous vehicle technology company developing Level 4 self-driving systems required large-scale annotation of multi-sensor datasets combining LiDAR point clouds, camera imagery, and radar data for perception model training.
Challenge: The client needed to annotate 50,000 hours of synchronized multi-sensor driving data with 3D bounding boxes, semantic segmentation, lane markings, and traffic participant tracking while maintaining ISO 26262-compliant quality standards. Previous annotation vendors struggled with temporal synchronization across sensor types and inconsistent labeling taxonomy interpretation.
Solution: Hir Infotech deployed a specialized automotive annotation team of 120 specialists trained in ADAS labeling protocols. We implemented custom annotation tooling for synchronized multi-sensor labeling, comprehensive quality validation with automated consistency checks, and iterative feedback loops with the client’s ML engineering team to refine edge case handling.
Results: Delivered complete annotation of 50,000 hours within 4 months, achieving 98.9% annotation accuracy verified through independent validation. The client reduced perception model training time by 40% and improved object detection mAP scores by 12% compared to previous annotation datasets.
Client Testimonial: “Hir Infotech’s automotive annotation expertise transformed our perception development velocity. Their understanding of autonomous vehicle requirements and commitment to quality standards gave us confidence in our training data.”
Client Background: A USA-based medical imaging startup developing AI-powered diagnostic tools for radiology needed pixel-accurate annotation of chest X-rays, CT scans, and MRI sequences for FDA 510(k) submission.
Challenge: The startup required annotation of 100,000 medical images with anatomical structure segmentation, pathology detection, and diagnostic classification performed by certified medical professionals. FDA validation demanded documented annotation protocols, inter-rater reliability metrics, and comprehensive audit trails—requirements that general annotation services couldn’t support.
Solution: Hir Infotech assembled a HIPAA-compliant annotation team combining certified radiologists for complex case review with trained medical annotators for initial labeling. We implemented multi-tier annotation workflows with consensus-based validation, maintained complete documentation of annotation guidelines and quality metrics, and provided expert testimony support for FDA submission documentation.
Results: Completed annotation of 100,000 medical images with 97.8% inter-rater agreement, meeting FDA validation requirements. The client received 510(k) clearance within 8 months and launched commercial diagnostic AI platform serving 200+ hospitals.
Client Testimonial: “The medical annotation expertise and regulatory compliance understanding Hir Infotech provided was instrumental in our FDA approval. They treated our success as their own mission.”
Client Background: A European e-commerce marketplace with 5 million product listings needed comprehensive product annotation to power visual search, automated categorization, and personalized recommendations across fashion, electronics, and home goods categories.
Challenge: The platform required annotation of product images with hierarchical category labels, detailed attribute tagging (color, material, style, size), brand identification, and visual similarity metadata. Manual product data entry by sellers produced inconsistent taxonomies and incomplete attributes that degraded search relevance and recommendation quality.
Solution: Hir Infotech deployed domain-specialized annotation teams for fashion, electronics, and home goods categories, implementing category-specific attribute taxonomies and brand recognition protocols. We developed custom annotation interfaces integrated with the client’s product database, enabling real-time validation and automated consistency checking across the catalog.
Results: Annotated 5 million products within 3 months, improving catalog completeness from 62% to 96%. The client’s visual search adoption increased 180%, product discovery conversion improved 34%, and customer support tickets related to search quality decreased 47%.
Client Testimonial: “Hir Infotech understood e-commerce product data challenges and delivered annotation quality that directly impacted our business metrics. Their scalability and domain expertise were exceptional.”
Client Background: A UK-based financial services company processing 500,000 mortgage applications annually needed to automate document extraction from loan applications, income verification documents, and property valuations.
Challenge: The firm required NLP annotation of financial documents with named entity recognition for applicant information, document type classification, table structure extraction, and relationship mapping between entities. Financial document variability, handwritten content, and regulatory compliance requirements made annotation particularly complex.
Solution: Hir Infotech established SOC 2-compliant annotation workflows with financial document specialists trained in mortgage industry terminology. We annotated 200,000 financial documents with hierarchical entity taxonomies, relationship annotations, and confidence scoring, implementing quality controls that maintained chain-of-custody documentation for audit compliance.
Results: Achieved 96.4% entity extraction accuracy, enabling 78% straight-through processing of mortgage applications. The client reduced document processing time from 5 days to 6 hours and decreased processing costs by $4.2 million annually.
Client Testimonial: “The attention to detail and compliance rigor Hir Infotech brought to financial document annotation gave us confidence to automate critical business processes. ROI exceeded our projections.”
Client Background: An Australian precision agriculture company providing crop monitoring services to 10,000+ farms needed large-scale annotation of satellite and drone imagery for crop health assessment, disease detection, and yield prediction.
Challenge: The company needed to annotate multi-spectral satellite imagery covering 2 million acres with crop type classification, growth stage identification, disease symptom detection, and field boundary delineation. Agricultural domain expertise was essential for accurate interpretation of spectral signatures and crop phenology.
Solution: Hir Infotech recruited annotation specialists with agronomy backgrounds and trained them on the client’s crop classification taxonomies. We implemented annotation workflows optimized for high-resolution satellite imagery, incorporating temporal sequence labeling for growth stage tracking and change detection across growing seasons.
Results: Annotated 2 million acres of multi-spectral imagery within 5 months, achieving 94.7% crop classification accuracy. The client’s yield prediction model accuracy improved from 81% to 89%, and farmer retention increased 42% due to improved service accuracy.
Client Testimonial: “Hir Infotech’s agricultural annotation expertise was evident in their label quality and understanding of crop science. They became a strategic partner in our platform development.”
Client Background: A USA-based industrial robotics manufacturer developing autonomous warehouse robots needed 3D point cloud annotation for object manipulation, navigation, and collision avoidance in dynamic environments.
Challenge: The company required annotation of 3D sensor data from warehouse environments with object instance segmentation, grasp point identification, surface normal estimation, and dynamic obstacle tracking. 3D annotation complexity and the need for spatial precision created bottlenecks in model training pipelines.
Solution: Hir Infotech deployed 3D annotation specialists using advanced point cloud labeling tools for precise object segmentation and geometric annotation. We implemented quality validation comparing annotated 3D data against ground truth measurements and provided iterative feedback integration with the client’s robotics team.
Results: Delivered 3D annotation for 100,000 warehouse scenes with 97.2% object detection accuracy and 1.2cm average spatial precision. The client reduced robot training time by 55% and improved manipulation success rates from 82% to 93%.
Client Testimonial: “The 3D annotation quality Hir Infotech delivered was critical for our manipulation algorithms. Their technical expertise and responsiveness to our evolving requirements were outstanding.”
Client Background: A social media platform with 50 million monthly active users across Europe needed text annotation for training content moderation AI to detect policy violations, hate speech, and harmful content in multiple languages.
Challenge: The platform required annotation of user-generated content with nuanced classification across 15 violation categories, context-dependent labeling accounting for sarcasm and cultural variations, and multi-language support covering English, German, French, Spanish, and Italian.
Solution: Hir Infotech assembled multilingual annotation teams native in target languages with cultural competency training. We implemented complex annotation guidelines capturing contextual nuance, consensus-based labeling for ambiguous cases, and ongoing calibration sessions to maintain inter-annotator agreement across subjective content categories.
Results: Annotated 2 million text samples across 5 languages with 91.3% inter-annotator agreement. The client’s automated moderation system achieved 87% precision at 94% recall, reducing human moderation workload by 68% while improving platform safety metrics.
Client Testimonial: “Hir Infotech’s multilingual content annotation expertise and sensitivity to cultural context was exactly what we needed. They helped us scale moderation while maintaining community standards.”