Software Engineer - AI/ML
Full-time Mid-Senior levelJob Overview
Devsinc is hiring a skilled AI/ML Engineer with 2 to 3 years of professional experience in building and fine-tuning Generative AI models (LLMs, Diffusion Models), Vision-Language Models (VLMs), and both classical and deep learning systems, developing solutions from scratch and taking them end-to-end into production.
This role combines modeling and MLOps expertise, involving end-to-end ownership from model training and fine-tuning to optimization, deployment, and serving. You’ll work on diverse, high-impact projects such as Generative AI applications, Stable Diffusion, OCR, theft detection, and recommendation systems , designing, optimizing, and serving custom models for real-world production use.
Key Responsibilities:
- Develop production inference stacks: Convert and optimize models (Torch → ONNX → TensorRT), quantize/prune, profile FLOPs and latency, and deliver low-latency GPU inference with minimal accuracy loss.
- Build robust model-serving infrastructure: Implement FastAPI/gRPC inference services, token or frame-level streaming, model versioning and routing, autoscaling, rollbacks, and A/B testing.
- Create Computer Vision solutions from scratch: Design pipelines for object detection, theft detection, OCR (document parsing, structured extraction), and surveillance analytics; fine-tune Hugging Face pretrained models when beneficial.
- Fine-tune Stable Diffusion and other generative models for brand- or style-consistent image generation and downstream vision tasks.
- Train and fine-tune Vision-Language Models (VLMs) for multimodal tasks (captioning, VQA, multimodal retrieval) using both from-scratch and transfer-learning approaches.
- Design and adapt LLM-based Generative AI systems for conversational agents, summarization, RAG pipelines, and domain-specific fine-tuning.
- Implement MLOps / LLMops / AIOps practices: Automate CI/CD for training and deployment, manage datasets and experiments, maintain model registries, and monitor latency, drift, and performance with alerting and retraining pipelines.
- Develop data acquisition & ingestion pipelines: Build compliant scrapers, collectors, and scalable ingestion systems with proxy rotation and rate-limit handling.
- Integrate third-party models and APIs (Hugging Face, OpenAI, etc.) and design hybrid inference strategies combining local and cloud models for optimal performance.
Requirements
- Education: Bachelor’s or Master’s degree in Computer Science, Artificial Intelligence, or related field.
- Experience: 2 to 3 years of professional experience in AI/ML or relevant domains, with a proven track record of developing, training, and deploying machine learning or deep learning models in real-world environments.
- Strong expertise in Computer Vision: object detection, segmentation, OCR pipelines (training from scratch and transfer learning).
- Deep understanding of model optimization: quantization, pruning, distillation, FLOPs analysis, CUDA profiling, mixed precision, and inference performance trade-offs.
- Proven ability to design and train models from scratch, including architecture design, loss functions, training loops, and evaluation.
- Hands-on experience with LLMs and diffusion-based models (e.g., Stable Diffusion).
- Proficiency with ONNX, TensorRT, TorchScript, and serving frameworks (Triton, TorchServe, or ONNX Runtime).
- Skilled in GPU programming and CUDA optimization (profiling with nvprof/nsight, memory management, multi-GPU setups).
- Strong backend engineering in Python (FastAPI, Flask), async programming, WebSockets/SSE, and RESTful API design.
- Experience with containerization and orchestration (Docker, Kubernetes, Helm) and deploying GPU workloads to AWS/GCP/Azure or on-prem clusters.
- Understanding of classical ML techniques (regression, classification, clustering) and experiment design.
- Solid software engineering discipline: CI/CD, testing, code reviews, reproducibility, and version control.
- Nice-to-Have: Familiarity with privacy-preserving ML (differential privacy, federated learning) and observability tools like Prometheus, Grafana, Sentry, or OpenTelemetry.
- Collaborative – open to knowledge-sharing and teamwork.
- Team Player – willing to support peers and contribute to collective success.
- Growth Minded – eager to learn, improve, and adapt to emerging technologies.
- Adaptable – flexible in dynamic, fast-paced environments.
- Customer-Centric – focused on delivering solutions that create real business value.
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