About the Role
We are looking for an AI Engineer with experience in Speech-to-text and Text Generation to solve a Conversational AI challenge for our client based in EMEA. The focus of this project is to transcribe conversations and leverage generative AI-powered text analytics to drive better engagement strategies and decision-making.
The ideal candidate will have deep expertise in Speech-to-Text (STT) Natural Language Processing (NLP) Large Language Models (LLMs) and Conversational AI systems. This role involves working on real-time transcription intent analysis sentiment analysis summarization and decision-support tools.
Key Responsibilities
1. Conversational AI & Call Transcription Development
- Develop and fine-tune automatic speech recognition (ASR) models
- Implement language model fine-tuning for industry-specific language.
- Develop speaker diarization techniques to distinguish speakers in multi-speaker conversations.
2. NLP & Generative AI Applications
- Build summarization models to extract key insights from conversations.
- Implement Named Entity Recognition (NER) to identify key topics.
- Apply LLMs for conversation analytics and context-aware recommendations.
- Design custom RAG (Retrieval-Augmented Generation) pipelines to enrich call summaries with external knowledge.
3. Sentiment Analysis & Decision Support
- Develop sentiment and intent classification models.
- Create predictive models that suggest next-best actions based on call content engagement levels and historical data.
4. AI Deployment & Scalability
- Deploy AI models using tools like AWS GCP Azure AI ensuring scalability and real-time processing.
- Optimize inference pipelines using ONNX TensorRT or Triton for cost-effective model serving.
- Implement MLOps workflows to continuously improve model performance with new call data.
Qualifications :
Technical Skills
- Strong experience in Speech-to-Text (ASR) NLP and Conversational AI.
- Hands-on expertise with tools like Whisper DeepSpeech Kaldi AWS Transcribe Google Speech-to-Text.
- Proficiency in Python PyTorch TensorFlow Hugging Face Transformers.
- Experience with LLM fine-tuning RAG-based architectures and LangChain.
- Hands-on experience with Vector Databases (FAISS Pinecone Weaviate ChromaDB) for knowledge retrieval.
- Experience deploying AI models using Docker Kubernetes FastAPI Flask.
Soft Skills
- Ability to translate AI insights into business impact.
- Strong problem-solving skills and ability to work in a fast-paced AI-first environment.
- Excellent communication skills to collaborate with cross-functional teams including data scientists engineers and client stakeholders.
Preferred Qualifications
- Experience in healthcare pharma or life sciences NLP use cases.
- Background in knowledge graphs prompt engineering and multimodal AI.
- Experience with Reinforcement Learning (RLHF) for improving conversation models.
Remote Work :
No
Employment Type :
Full-time