N
Nanonets6mo ago

Senior Deep Learning Engineer

IndiaIndiasenior
EngineeringData ScienceDeep Learning Engineer
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Quick Summary

Key Responsibilities

Train & Fine-tune SOTA Architectures : Adapt and optimize transformer-based models, vision-language models,

Requirements Summary

3+ years of hands-on deep learning experience with production deployments Strong PyTorch expertise – ability to implement custom architectures, loss functions,

Technical Tools
EngineeringData ScienceDeep Learning Engineer

More than 10,000 businesses trust Nanonets because we don’t just promise efficiency — we deliver it with unmatched accuracy, seamless integrations.

Join Nanonets to push the boundaries of what's possible with deep learning. We're not just implementing models – we're setting new benchmarks in document AI, with our open-source models achieving nearly 1 million downloads on Hugging Face and recognition from global AI leaders.

Backed by $40M+ in total funding including our recent $29M Series B from Accel, alongside Elevation Capital and Y Combinator, we're scaling our deep learning capabilities to serve enterprise clients including Toyota, Boston Scientific, and Bill.com. You'll work on genuinely challenging problems at the intersection of computer vision, NLP, and generative AI.

Here's a quick 1-minute intro video.

Read about the release here:

Article 1

Article 2

  • Train & Fine-tune SOTA Architectures: Adapt and optimize transformer-based models, vision-language models, and custom architectures for document understanding at scale
  • Production ML Infrastructure: Design high-performance serving systems handling millions of requests daily using frameworks like TorchServe, Triton Inference Server, and vLLM
  • Agentic AI Systems: Build reasoning-capable OCR that goes beyond extraction – models that understand context, chain operations, and provide confidence-grounded outputs
  • Optimization at Scale: Implement quantization, distillation, and hardware acceleration techniques to achieve fast inference while maintaining accuracy
  • Multi-modal Innovation: Tackle alignment challenges between vision and language models, reduce hallucinations, and improve cross-modal understanding using techniques like RLHF and PEFT

Responsibilities

~1 min read
  • Design distributed training pipelines for models with billions of parameters using PyTorch FSDP/DeepSpeed
  • Build comprehensive evaluation frameworks benchmarking against GPT-4V, Claude, and specialized document AI models
  • Implement A/B testing infrastructure for gradual model rollouts in production
  • Create reproducible training pipelines with experiment tracking 
  • Optimize inference costs through dynamic batching, model pruning, and selective computation

We’re on a mission to hire the very best and are committed to creating exceptional employee experiences where everyone is respected and has access to equal opportunity.

Requirements

~1 min read
  • 3+ years of hands-on deep learning experience with production deployments
  • Strong PyTorch expertise – ability to implement custom architectures, loss functions, and training loops from scratch
  • Experience with distributed training and large-scale model optimization
  • Proven track record of taking models from research to production
  • Solid understanding of transformer architectures, attention mechanisms, and modern training techniques
  • B.E./B.Tech from top-tier engineering colleges
  • Experience with model serving frameworks (TorchServe, Triton, Ray Serve, vLLM)
  • Knowledge of efficient inference techniques (ONNX, TensorRT, quantization)
  • Contributions to open-source ML projects
  • Experience with vision-language models and document understanding
  • Familiarity with LLM fine-tuning techniques (LoRA, QLoRA, PEFT)
  • Proven Impact: Our models approaching 1 million downloads – your work will have global reach
  • Real Scale: Your models will process millions of documents daily for Fortune 500 companies
  • Well-Funded Innovation: $40M+ in funding means significant GPU resources and freedom to experiment
  • Open Source Leadership: Publish your work and contribute to models already trusted by nearly a million developers
  • Research-Driven Culture: Regular paper reading sessions, collaboration with research community
  • Rapid Growth: Strong financial backing and Series B momentum mean ambitious projects and fast career progression
  • Nanonets-OCR model: ~1 million downloads on Hugging Face – one of the most adopted document AI models globally
  • Launched industry-first Automation Benchmark defining new standards for AI reliability
  • Published research recognized by leading AI researchers
  • Built agentic OCR systems that reason and adapt, not just extract
  • Secured $40M+ in total funding from Accel, Elevation Capital, and Y Combinator

Listing Details

Posted
October 8, 2025
First seen
March 26, 2026
Last seen
April 17, 2026

Posting Health

Days active
21
Repost count
0
Trust Level
23%
Scored at
April 17, 2026

Signal breakdown

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N
Senior Deep Learning Engineer