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Internship

About

Internship

IACC is offering a virtual summer internship of 6 weeks under the initiative of computing community. The internship will be hosted in two slots. The first slot starts on 11th Mar 2023 and ends on 19th May 2023, the second slot starts on 1st May 2023 and ends on 10th June 2023. During the 6 weeks internship, you will be actively working on a Deep Learning based project. In the first three days of each slot, we will host a crash course for you to cover the basic concepts related to Deep Learning. In the further weeks, you will be engaged with a researcher to work on an end-to-end Deep Learning project.

About
These are some of the broad areas on which you will pursue your Deep Learning projects:
  • Object Recognition and Detection
  • Natural Language Processing
  • Unusual Activity Detection
  • Cyber Fraud Detection
  • Real-time Video Processing
  • Reinforcement Learning
  • Drone Surveillance
  • Object Detection using Humanoid Robot NAO
  • Compression Techniques
About the Internship

Selected intern's day-to-day responsibilities include

  1. Use web-based (or other) APIs to scrape relevant data
  2. Perform preprocessing and curate datasets for machine learning tasks
  3. Use different ML/DL techniques to perform prediction/regression tasks as required by the problem statement
  4. Fine-tune your models and hyper-parameters in order to achieve the best performance as per the defined goals
  5. Put the different pieces of your ML/DL code together to create an end-to-end product
  6. Work with live projects from Industry/startups to contribute to the ongoing AI revolution

Skill(s) required : Proficiency in at least one coding language is necessary. Python is highly preferred, but not mandatory.

Register below for internship
Internship Fee in $
Internship fee (refundable*)
(Note: This is a redundable amount and shall be refunded on successful completion of the workshopp and internship with 70% or more scores achieved in both the evaluation process.)