Your SlideShare is downloading. ×
0
Big data analytics online training
Big data analytics online training
Big data analytics online training
Big data analytics online training
Big data analytics online training
Big data analytics online training
Big data analytics online training
Upcoming SlideShare
Loading in...5
×

Thanks for flagging this SlideShare!

Oops! An error has occurred.

×
Saving this for later? Get the SlideShare app to save on your phone or tablet. Read anywhere, anytime – even offline.
Text the download link to your phone
Standard text messaging rates apply

Big data analytics online training

96

Published on

or full course details please visit our website www.hadooponlinetraining.net …

or full course details please visit our website www.hadooponlinetraining.net

Duration for course is 30 days or 45 hours and special care will be taken. It is a one to one training with hands on experience.

* Resume preparation and Interview assistance will be provided.
For any further details please

contact India +91-9052666559
Usa : +1-678-693-3475.

visit www.hadooponlinetraining.net

please mail us all queries to info@magnifictraining.com

Published in: Technology, Education
0 Comments
0 Likes
Statistics
Notes
  • Be the first to comment

  • Be the first to like this

No Downloads
Views
Total Views
96
On Slideshare
0
From Embeds
0
Number of Embeds
0
Actions
Shares
0
Downloads
1
Comments
0
Likes
0
Embeds 0
No embeds

Report content
Flagged as inappropriate Flag as inappropriate
Flag as inappropriate

Select your reason for flagging this presentation as inappropriate.

Cancel
No notes for slide

Transcript

  • 1. Big data Analytics online training Magnific training Call : 9052666559 www.hadooponlinetraining.net
  • 2. • Course Contents: • 1. Big Data • The problem space and example applications • Why don’t traditional approaches scale? • Requirements
  • 3. • 2. Hadoop Background • Hadoop History • The ecosystem and stack: HDFS, MapReduce, Hive, Pig… • Cluster architecture overview
  • 4. • 3. Development Environment • Hadoop distribution and basic commands • Eclipse development • 4. HDFS Introduction • The HDFS command line and web interfaces • The HDFS Java API (lab)
  • 5. • 5. MapReduce Introduction • Key philosophy: move computation, not data • Core concepts: Mappers, reducers, drivers • The MapReduce Java API (lab)
  • 6. • 6. Real-World MapReduce • Optimizing with Combiners and Partitioners (lab) • More common algorithms: sorting, indexing and searching (lab) • Relational manipulation: map-side and reduce- side joins (lab) • Chaining Jobs • Testing with MRUnit
  • 7. • 7. Higher-level Tools • Patterns to abstract “thinking in MapReduce” • The Cascading library (lab) • The Hive database (lab)

×