Data Scientist

Year    UL, IN, India

Job Description

We're looking for a

mid-to-senior AI Engineer

with strong backend skills and experience in either

LLM-based systems

or

physiological signal processing

to join our team full-time in Dehradun. You'll help us build production-ready AI solutions that serve both our mobile app and our health monitoring tools.

You'll work alongside a focused and collaborative team to build tools that power AI features for real-time insights, personalized recommendations, and health predictions. This is a research-heavy, hands-on engineering role requiring the ability to read papers, design prototypes, build robust APIs, and ship features into production.

What You'll Work On



LLM-Focused Workstreams

Build Python-based tools the LLM can call to:
- Analyze user health data (metrics, goals, activity)
- Recommend content from our health library (videos, articles)
- Generate structured meal plans

Design APIs and integrate AWS serverless infrastructure for our mobile app Develop RAG pipelines or vector DB-based solutions if applicable
Computer Vision & Signal Processing Workstreams

Improve and expand our physiological signal extraction models (e.g., rPPG for heart rate) Build ML models to predict health vitals and risk markers from video data Validate models using appropriate metrics (AUC, ROC, sensitivity, etc.) Maintain reproducibility through experiment tracking and rigorous documentation

Tech Stack



Languages/Tools:

Python, Jupyter, GitHub, JSON, REST APIs

Frameworks:

scikit-learn, NumPy, pandas, OpenCV, (Optional: PyTorch/Keras)

Cloud & Infra:

AWS Lambda, S3, (Optional: Bedrock, LangChain, Vector DBs)

What We Are Looking For:



Must-Haves:



3-4+ years of backend or applied ML development using Python Experience with LLMs (e.g., LangChain, Bedrock, OpenAI APIs) or computer vision/signal processing Familiarity with structured data handling (REST, JSON) and serverless architectures (AWS Lambda) Strong grasp of ML model evaluation and ability to translate messy real-world data into clean pipelines Collaborative mindset with strong communication skills Comfortable working night shifts and from our Dehradun office

Nice to Have:



Experience with physiological signal extraction or biomedical ML Knowledge of RAG pipelines, vector databases Contributions to peer-reviewed research or healthcare AI projects Interest in healthcare, nutrition, or wellness industries
We are looking for individuals who are not just technically skilled, but also aligned with our work culture and values:

Work from Office:

Willing to work full-time from our Dehradun office (No remote option).

Night Shift Commitment:

Comfortable working 5:00 PM to 2:00 AM IST, Monday to Friday (US Shift).

Discipline & Responsibility:

Punctuality and personal ownership of deliverables are non-negotiable.

Team Collaboration:

Must be proactive in communication, open to feedback, and collaborative in approach.

Learning Attitude:

Open to reading papers, exploring new techniques, and improving continuously.

Confidentiality & Integrity:

Must handle sensitive healthcare data with the utmost care and confidentiality.

Professionalism:

Able to work with focus, follow task timelines, and deliver clean, well-documented work.
Job Type: Full-time

Pay: ?1,000,000.00 - ?1,500,000.00 per year

Schedule:

Monday to Friday Night shift US shift
Application Question(s):

Do you have experience with LLMs (e.g., LangChain, Bedrock, OpenAI APIs) or computer vision/signal processing?
Education:

Bachelor's (Required)
Experience:

Work: 3 years (Required)
Language:

English (Required)
Shift availability:

* Night Shift (Required)

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Job Detail

  • Job Id
    JD3736246
  • Industry
    Not mentioned
  • Total Positions
    1
  • Job Type:
    Contract
  • Salary:
    Not mentioned
  • Employment Status
    Permanent
  • Job Location
    UL, IN, India
  • Education
    Not mentioned
  • Experience
    Year