- B2B
- Growth StageExpanding market presence
- Top InvestorsThis company has received a significant amount of investment from top investors
- Website
- Locations
- Bengaluru
- Los Altos
- Company size
- 51-200 people
- Company type
- Software Development
- Market
People at Akridata
Improved Productivity:- By automating the manual, time consuming data management tasks, Akridata allows data scientists to spend more time building better AI models faster, and less time on labor-intensive tasks like finding, cleaning, and reorganizing huge amounts of data. Add to that better IT efficiency and lower costs and the result is a 2x improvement in data scientist productivity. Benefits: Access the right data in minutes or hours vs. hours or days Free up time for critical tasks Efficiently handle growing data volumes at scale Lower Costs:- Akridata lowers costs by enabling more efficient reuse of existing infrastructure and software assets, avoiding unnecessary costs in data storage and transfer, and improving data scientist productivity. We call this “smart processing at the edge” because data science teams can immediately focus on the 1%-10% of data that is of value which significantly reduces the time and cost required to access, identify, process, transfer, and store data. Benefits: Avoid moving large amounts of data to the cloud Reduce spend on storage/compute Decrease bandwidth and latency Flexibility:- Akridata allows organizations to extend their existing infrastructure with an Edge to Core to Cloud AI Data Ops platform that retains your hardware investments, processes, and applications. The Akridata platform is also completely customizable to support your unique requirements. Benefits: Frictionless deployment Leverage existing investments Fully customizable Data Protection and Compliance Data tracking is necessary for debugging models and forensic analysis of data. Akridata treats data as code, which gives it the unique ability to track and trace data lineage/versioning from source to AI model to production use in the field. Tracking data lineage provides support for enforcing and verifying regulatory compliance with incidence management and data privacy regulations such as GDPR (EU), CCPA (California) as well as industry standards like HIPA
Santosh Singh
Employee
Naveen N S
Via
MS in Computer Science, worked at EMC, 24/7, CouponDunia , ANI Technolgies(OLA) and Xseed in QA for 7,2, 1 and 1 years, QA Manager - QA Engineer
KEERTHI SAGAR C S
Workings as an sdet in hadoop on cloud and have worked on aws,gcp and azure clouds. Prior to this was working as a perf test engineer in RSA.
Parth Maniyar
Parth is highly motivated and results-oriented software engineer with 3 years of experience in building scalable and efficient systems. Proven expertise in distributed systems, data processing and performance optimization.
Mohd Sadiq
Backend Engineer experienced in Core Java,Python, Algorithms, Problem Solving with a B.Tech in CSE.
Interned at Grab.
Currently working as MTS at Akridata
Martand Javia
Software Engineer @Amazon | CS Enthusiast | Passionate about engineering and system design.
Dilip Chaudhary
Harshita Agarwal
Ajith Kumar Battaje
Santosh Singh
Pratik Padalia
ruchika ajmera