LLM & prompt engineering expert

Remote, OTHER

John Snow Labs

John Snow Labs is an award-winning AI company that helps healthcare and life science organizations put AI to work faster, providing high-compliance AI platform, state-of-the-art NLP libraries, and data market.

View all jobs at John Snow Labs

Apply now Apply later

Company Description

John Snow Labs is an award-winning AI and NLP company, accelerating progress in data science by providing state-of-the-art software, data, and models. Founded in 2015, it helps healthcare and life science companies build, deploy, and operate AI products and services. John Snow Labs is the winner of the 2018 AI Solution Provider of the Year Award, the 2019 AI Platform of the Year Award, the 2019 International Data Science Foundation Technology award, and the 2020 AI Excellence Award.
John Snow Labs is the developer of Spark NLP - the world’s most widely used NLP library in the enterprise - and is the world’s leading provider of state-of-the-art clinical NLP software, powering some of the world’s largest healthcare & pharma companies. John Snow Labs is a global team of specialists, of which 20% hold a Ph.D. or M.D. and 53% hold at least a Master’s degree in disciplines covering data science, medicine, software engineering, pharmacy, DevOps and SecOps.

Job Description

We are seeking an experienced developer to create a small application that automatically generates professional emails based on customer profiles and past interactions. The app will feature a simple graphical user interface (GUI) and will be deployed on AWS.

Qualifications

Project Requirements:

App Features:

Email Generation: Automatically compose emails using the customer's LinkedIn profile and past conversations from HubSpot (via API).

Inputs:

  • Goal/instructions to generate the email
  • Copy/Paste of the LinkedIn profile of the individual
  • HubSpot past conversations gathered via API
  • (Constant) – knowledge base on use cases – abstracts and transcripts of NLP Summit use cases. https://www.johnsnowlabs.com/customers
  • Release notes https://nlp.johnsnowlabs.com/docs/en/spark_nlp_healthcare_versions/licensed_release_notes
  • Blog posts https://www.johnsnowlabs.com/blog

Output: subject and body of email.

The app will gather the data, formulate the prompt, and connect to an API to generate text.

You will select the most suitable LLM service to deliver the output (OpenAI, Azure, Google, etc.)

Your Responsibilities:

Design and implement the app's GUI.

Ensure seamless integration with the chosen LLM service.

Deploy the application in the AWS cloud.

Optimize the app for performance and user experience.

Qualifications:

Proficiency in Python and experience with Streamlit or comparable frameworks.

Experience with cloud services, specifically AWS.

Familiarity with APIs and integrating third-party services.

Background in building or working with natural language processing (NLP) tools is a plus.

How to Apply:

Please provide examples of similar projects you have completed, along with a brief outline of your approach to this project.

Tracking work:

Contractors are required to use our tracking software, which periodically captures screenshots of their work.

Additional Information

What John Snow Labs offers:

  • A fully virtual company, collaborating across 28 countries
  • Competitive package and compensation plan
  • Industry leader and respected brand name
  • Learning and development
     

We are proud to foster a workplace free from discrimination. Diversity of experience, perspectives, and background create a better work environment and better products. Whatever your identity we will give your application fair consideration.

 

Apply now Apply later

* Salary range is an estimate based on our AI, ML, Data Science Salary Index 💰

Job stats:  1  0  0

Tags: APIs AWS Azure Clinical NLP DevOps Engineering HubSpot LLMs NLP OpenAI Pharma Prompt engineering Python Spark Streamlit

Perks/benefits: Competitive pay

Regions: Remote/Anywhere North America
Country: United States

More jobs like this