Come Visit
IFH 2.0
Im Zukunftspark 4, 74076
Heilbronn, Germany 🇩🇪
Robert-Bosch-Straße 42, 74081
Heilbronn, Germany 🇩🇪
Puumiehenkuja 5A, 02150
Espoo, Finland 🇫🇮
AI, GenAI, ML, AIOps, DL
At Ähdus Technology, we are leveraging GenAI to help our customers rapidly develop powerful Proof of Concepts (PoCs) using fully agentic AI solutions. These autonomous agents streamline complex workflows, significantly reducing operational costs and saving valuable time for both our clients and our internal development teams. This advanced approach allows us to deliver smarter, faster, and more efficient results that drive immediate business value.
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– Identify and prepare structured and unstructured data sources through feature engineering and labeling pipelines
– Select, train, and validate appropriate ML models: ranging from classical algorithms to transformer-based architectures
– Integrate AI modules seamlessly into web, mobile, or embedded platforms with robust MLOps infrastructure
– Evaluate AI-readiness and identify high-value use cases through feasibility assessments and risk analysis
– Design bespoke AI strategies aligned with business objectives, regulatory constraints, and market dynamics
– Build phased roadmaps for end-to-end AI transformation—from proof of concept to enterprise-scale deployment
– Integrate retrieval-augmented generation (RAG), vector databases, and environment feedback loops
– Deploy agents for knowledge management, workflow automation, research co-pilots, and ops intelligence
– Implement safety layers, feedback alignment, and fine-grained observability for agent behavior control
– Integrate multi-modal diffusion models for image, animation, and video generation
– Build video summarization, object tracking, and scene understanding pipelines using spatio-temporal AI
– Implement voice cloning, speech synthesis (TTS), and acoustic analytics using generative audio models
– Implement function calling, tool augmentation, and persona modeling for business-centric AI agents
– Apply RAG frameworks for private knowledge retrieval and custom Q&A systems
– Use prompt engineering, few-shot learning, and control tokens to guide model behavior in production environments
– Set up containerized inference (Docker, Kubernetes, Ray Serve) and serverless model endpoints
– Automate CI/CD pipelines for ML workflows with versioning, rollback, and A/B testing
– Implement observability stacks (Prometheus, Grafana, Evidently) to detect drift, bias, and performance anomalies
– Integrate on-device AI with edge inference (Core ML, TensorFlow Lite, ONNX) for low-latency and privacy-preserving experiences
– Build AI-native UX features: predictive search, natural conversation interfaces, vision-based input recognition, and behavioral analytics
– Optimize AI workflows across front-end and backend layers, enabling seamless user-AI collaboration at scale
– Implement intelligent document processing (IDP), invoice classification, and anomaly detection across financial, HR, and supply chain data
– Build AI middleware and APIs that bridge LLM agents with CRM, WMS, and SCM systems for contextual insights and decision support
– Apply RPA + AI for end-to-end intelligent workflows across procurement, compliance, and customer service
– Build offshore pods embedded with DevOps, MLOps, LLMOps, and AI QA for end-to-end delivery ownership
– Operate under robust governance frameworks including ISO 27001, SOC 2, and GDPR-compliance for secure global collaboration
– Provide continuous training and mentorship pipelines to ensure teams stay aligned with evolving AI industry standards and tooling