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Neeli Krishna Dheeraj

student
A person who wonders about AI and tries to make it more amazing . i am supportive and often creative while working with team, love to code in free times and try to understand things from basics even if it's time consuming . I can say i have some good knowledge in machine learning and deep learning and wish to explore and improve my knowledge in AI. I can be a very good team member and supportive leader and do the best to support my organization
CISCO
PES univerisity
Bengaluru, Karnataka, India

職場能力評價

專業背景

  • 目前狀態
    就學中
  • 專業
  • 產業
    軟體
  • 工作年資
    小於 1 年 (1 到 2 年相關工作經驗)
  • 管理經歷
    我有管理 1~5 人的經驗
  • 技能
    Algorithms
    Matlab
    C
    C++
    Python
    Web Development
    Web Design
    Machine Learning
    Design Patterns
    my-sql
    Flask(Python)
    html + css + javascript
    Tableau Software
  • 語言能力
    English
    中階
  • 最高學歷
    大學

求職偏好

  • 預期工作模式
    全職
    對遠端工作有興趣
  • 希望獲得的職位
  • 期望的工作地點
    Bengaluru, Karnataka, India
  • 接案服務
    兼職接案者

工作經驗

Undergraduate Intern

CISCO
實習生
2022年1月 - 現在
Bengaluru, Karnataka, India
Developed a Webex Bot to generate new incidents , update incidents, create and update subrooms . Automated weekly major incidents report creation , designed an architecture to send and receive major updates through kafka .

Intern Data Science

2021年6月 - 2021年12月
7 個月
Project : Tracking Model training with MLflow This project falls under the jurisdiction of AUTODESK CONSTRUCTION SOLUTIONS intelligence team. The project is about the ability to track model training and means to trigger training a new model when new data is available. This project makes the newly available labelled data available for training new model. This project entailed the use of technologies like python as coding language , mlflow services like mlflow tracking , mlflow ui, mlflow models, mflow model registry for training and tracking the runs and storing artefacts and aws services like aws ec2, aws ecr, aws s3 , aws fargate , aws vpc , aws iam, aws cloudformation , aws sagemaker training jobs for creating mlflow deployment server. Docker services like docker images , docker containers to create images , shell scripting to create DockerFile . Html , css, javascript , bootstrap for front end user interface to run training job and Flask to run the web application. Git for continuous integration. Main Phases Implemented Logging local training runs to local MLFlow tracking server: Already existing ML model is integrated with mlflow python sdk and the run details , parameters , metrics and artefacts are recorded using the mlflow module and run locally. Logging local training runs to hosted MLFlow tracking server : Mlflow server is hoisted in aws fargete services using docker mlflow server image stored in aws ecr and making run data stored in aws s3. Creating training job: After hoisting the mlflow server we created a sagemaker training job using a self -built docker image which contains all the ML code . The way the model works is it takes s3 path to new data from container environment variables and the model version that we want to take old data which is stored as an artefact and combine both data and send them for training. The model versioning is achieved by storing the current model as an artefact and registering the model with some version . MLflow also supports the features of keeping models in staging and in production. Additional Step: As part of an additional step we created a web application using html , css , python, and flask for the demonstration of the project. Though the trigger is implemented as a web service for now it can be implemented as a lambda or can be a part of a bigger training pipeline.

學歷

Bachelor of Engineering (BEng)
Computer science
2018 - 2022
8.8/10 GPA
Other
mpc
2016 - 2018
98/100 GPA
Other
high school
2006 - 2016
10/10 GPA