User blogs
Tag Search
Simulating Artificial
Intelligence to Enhance Productivity
AI technology
is implemented in businesses to accelerate the productivity of big data users
by providing Informatica
Training to the personnel of the organization. Even knowing the
growth of IT budgets is slow; IT Managers must know to improve productivity.
When you are on your way to managing the complex business data environments,
these three approaches will help you to achieve that:
1. Deploy data
lakes
2.
Facilitate self-service analytics
3. Leverage
Machine Learning
The above
use cases assist by implementing AI to big data providing data-driven
automation and intelligence that benefits operations, enhances data
accessibility and availability and assigned and distribute data structures.
Informatica
is the pioneer in providing better data management and integration service.
Today, you will explore how the productivity of big data users is improved by
using AI and Machine Learning and moreover, how will get specified solutions
for digital transformation. Let’s discuss various use cases and some machine
learning methodologies and algorithms for data integration.
CLAIRE
(Cloud-scale AI-powered Real-time Engine) by Informatica uses AI and Machine
Learning strategies to significantly boost productivity by solving big data
challenges of the enterprises.
Check
out here how CLAIRE is used to automate operations in data lake management with
Machine Learning Methodologies:
1.
Ingestion
and Streaming (ML -A* Genetic Algorithm)
Informatica’s
CLAIRE builds an intelligent structure to ingest and streamline semi-structured
data; it acquires structure from messed and logged files by making it easier to
understand and work. It adapts quickly transforming without affecting file
processing with a content-based approach to parsing files.
CLAIRE percepts “evolution”
to promote better results and a genetic algorithm approach for automation. For
finding the correct solution, each set of property it checked, edited and
tested specifically. It illustrates the file structure without any requirement
of input by the user. Structures are initially derived on delimiter-based
parsing and then scored by evaluating its derived domains and input coverage. It
provides considerable changes to the top-scored data in "mutation"
phase and then adjourns process after achieving the right structure.
2.
Integration
For
step integration, CLAIRE is used in different ways;
- On
the basis of Performance, use smart optimizer for running big data
workload.
- Get
recommendations of mapping-level based on past user activities.
- According
to Cost and heuristics, changes join order smartly.
- Work
as per Heuristics to leverage a cost-based optimizer.
3.
Enriching
Parsing and Entity Extraction(ML:
NLP as per Stanford’s NER)
For extracting entities
from strings, normally users need to write parsing rules from Reference tables
and Regular Expressions. The complexity of data is increasing steadily, so it
is not possible to match every input. Hence, it uses pre-trained models to
extract files. The natural language processing (NLP) is Stanford’s Named Entity
Recognizer (NER) based; it identifies and extracts entities from strings.
Text
Classification (ML: Naive-Bayes and MaxEnt)
Supervised learning with
Naive-Bayes and MaxEnt is used to train models and accredit tags. After that,
the trained models are deployed to tag, streamline and operate various sections
of input during data processing. It helps in differentiating usage of various
words having the same sort of meanings.
4.
Preparation
Based on other user's
activities, like Amazon, Informatica’s CLAIRE also suggests smart
recommendations.
Informatica has introduced
CLAIRE as an advanced technology in the field of data lake management. If you
are not known to this technology, join in Informatica Training to acknowledge
the implementation of Artificial Intelligence and Machine Learning. ExistBI are authorized Informatica Partners
and offer training and consulting in the US, UK and Europe.