Skip to content
View primaprashant's full-sized avatar

Organizations

@kouzoh

Block or report primaprashant

Block user

Prevent this user from interacting with your repositories and sending you notifications. Learn more about blocking users.

You must be logged in to block users.

Please don't include any personal information such as legal names or email addresses. Maximum 100 characters, markdown supported. This note will be visible to only you.
Report abuse

Contact GitHub support about this user’s behavior. Learn more about reporting abuse.

Report abuse
primaprashant/README.md

Hey πŸ‘‹, I'm Prashant.

I'm a senior Machine Learning Engineer with 4 years of experience in building scalable, high-performance production ML systems to support a wide range of business needs. Whether it's data analysis, ideation, and experimentation or deployment and maintenance, I'm actively engaged in all aspects of developing ML systems. I have in-depth experience in Machine Learning, with a particular emphasis on Natural Language Processing (NLP) and Large Language Models (LLMs).

I currently work in the Customer Support domain and lead the exploration and application of ML, NLP, and LLMs in this domain. My day-to-day responsibilities include (but are not limited to) the following:

  • Collaborate with stakeholders & TPMs and analyze data to develop hypotheses to solve business problems and validate them through A/B tests.
  • Frame business problems as ML problems and create suitable metrics for ML models and business problems.
  • Build PoCs and prototypes to validate the technical feasibility of the new features and ideas.
  • Create design docs for architecture and technical decisions and guide the technical implementation.
  • Collaborate with the platform and data platform team to set up and maintain the data pipelines that satisfy our team's evolving needs.
  • Build and deploy production-grade microservices in Python and Go with suitable capacity planning, logging, error handling, distributed tracing, monitors with actionable alerts, and auto-scaling.
  • Write design docs for running A/B tests and perform post-test analyses to determine the impact of ML features on the business metrics.
  • Maintenance, enhancement, and retraining of ML models for features running in production.
  • Responsible for incident handling and included in the on-call rotation of the ML and backend microservices owned by my team.
  • Evaluate technical assignments and conduct interviews for hiring mid-career, new grads, and intern ML engineers.

Tech stack that I use for carrying out my day-to-day responsibilities:

  • Data analysis: SQL, BigQuery
  • ML experimentation and model training: Jupyter Notebooks, PyTorch, Hugging Face Transformers, Azure OpenAI, Kubeflow pipelines, MLFlow
  • Model deployment: TorchServe, Kubernetes
  • Microservice development: Python, Go, gRPC, Datadog, Pagerduty, Sentry, Spinnaker, Docker

Find my resume here.

Pinned Loading

  1. llms-in-production llms-in-production Public

    πŸ“š Curated collection of engineering blogs detailing real-world applications of LLMs in solving specific business problems.

    30 2

  2. ml-engineering-blogs ml-engineering-blogs Public

    πŸ“š Curated list of machine learning engineering blogs.

    33 2

  3. ai-customer-support ai-customer-support Public

    πŸ“š Curated collection of blogs and papers on how different companies are using machine learning in production for better customer support.

    19 1

  4. pycon-apac-2023-tech-talk pycon-apac-2023-tech-talk Public

    Repo containing talk video, slides, and proposal for my tech talk at PyCon APAC 2023 about use of AI for efficient routing of customer inquiries at Mercari.

    4

  5. pycon-jp-2024-tech-talk pycon-jp-2024-tech-talk Public

    Repo containing talk video, slides, and proposal for my tech talk at PyCon JP 2024.

    4