Facebook Pixel Product management and analytics: Hand in hand | PCQuest - technology - Les denne historien på Magzter.com
Gå ubegrenset med Magzter GOLD

Gå ubegrenset med Magzter GOLD

Få ubegrenset tilgang til over 9000 magasiner, aviser og premiumhistorier for bare

$149.99
 
$74.99/År

Prøve GULL - Gratis

Product management and analytics: Hand in hand

PCQuest

|

May 2023

Product enhancement is critical to product management, and analytics provide valuable insights for making informed decisions. Without analytics, product development becomes a series of blind shots, leading to sub-optimal outcomes. Data-driven decision-making is becoming increasingly important in product management, and analytics is a crucial component of this approach

- Dr. Mayank Mathur

Product management and analytics: Hand in hand

Why should a product manager worry about product analytics? How does it matter what the past data indicate about the new product features? Is it necessary for product managers to know about the basics of analytics?

Well, to start with, product enhancement is a fundamental reason why analytics are essential to product management. Product teams would not know how effectively their products meet user expectations without analytics, and product development would become a series of blind shots.Product teams can make educated judgements about enhancing product functionality or introducing new capabilities thanks to the measurements obtained by metrics and the insights offered by analytics. They would be operating in the dark if they didn’t measure and analyze the results to determine whether the adjustments they performed were valuable or essential.

DR. MAYANK MATHUR, Academic Director, ISB Institute of Data Science (IIDS)

Whether product managers like it or not, product management is becoming increasingly data-driven. They might not enjoy sorting through enormous amounts of data, yet it is a fact that data are necessary for efficient product management.

Analytics

The word analytics comes from the Greek analytika, which means “science of analysis.” It frequently examines massive commercial data using mathematical, statistical, and technological methods. Some claim that the term was created by fusing “analysis of data” and “statistics.” The word “analytics” conjures up images of numbers (and crunching them).

FLERE HISTORIER FRA PCQuest

PCQuest

PCQuest

When Software Drives the Machine Need for Enterprise-Grade Software

Cars used to fail because of broken parts.Now they fail because of broken code. As vehicles become rolling computers, enterprise-grade software, ruthless testing, and fail-safe architecture decide one thing: whether a car keeps moving safely at 100 km/h

time to read

2 mins

March 2026

PCQuest

PCQuest

AI on the ground Practical use cases of AI in large enterprise operations

AI isn't a side project anymore, it's the quiet operator inside global giants. It reads invoices, senses machine fatigue, tailors every customer moment, flags risk in real time, and feeds leaders sharper instincts. Scale just got smarter

time to read

3 mins

March 2026

PCQuest

PCQuest

From AI experiments in 2025 to enterprise scale in 2026: Why data foundations will decide the winners

Everyone's betting big on Al, but most are burning cash instead of building value. The hidden culprit? Dirty data, clunky processes, and missing context. What if fixing your foundation, not your algorithms, was the real AI game-changer?

time to read

4 mins

March 2026

PCQuest

PCQuest

How automation at the periphery is accelerating digital transformation

Digital transformation is not tearing down the core anymore. It is happening at the edges. With AI and automation layered onto existing systems, companies are cutting costs, boosting productivity by up to 40%, and scaling smarter without risking operational chaos

time to read

2 mins

March 2026

PCQuest

PCQuest

When AI moves from chips to racks

AI performance is no longer just about faster chips. It is about how racks, power, networking, and orchestration work together. As agentic AI grows, infrastructure must become predictable, open, and built for scale from day one

time to read

4 mins

March 2026

PCQuest

PCQuest

Designing enterprise AI systems that stay fair

In 2026, bias is no longer treated as a communications issue or a public relations headache.

time to read

6 mins

March 2026

PCQuest

PCQuest

HALO smart sensor

What if bathrooms, locker rooms, and isolated spaces could become safer without adding cameras?

time to read

2 mins

March 2026

PCQuest

PCQuest

Building enterprise AI that doesn't discriminate

Bias in enterprise AI is not a side issue. It starts in data pipelines, training systems, product design, and engineering workflows. As AI scales, fairness, transparency, and accessibility are becoming core software requirements

time to read

4 mins

March 2026

PCQuest

PCQuest

Bias travels faster than code

Bias in enterprise AI is not a surface issue. It enters through data, features, model training, APIs, and UI logic, then spreads across the stack. The technical response is shifting from audits to architecture, observability, and deployment controls

time to read

6 mins

March 2026

PCQuest

PCQuest

How hospitals can use AI without risking patient data

With the fast pace of adoption of Artificial Intelligence (AI) and digital health systems in Indian hospitals, issues related to the security of patient data are also increasing at an equal rate.

time to read

2 mins

March 2026

Translate

Share

-
+

Change font size