JBL Live 780NC and 680NC review: Great leaps, greater missteps


JBL introduced two new headphones to its Live series lineup and both are fighting to live up to expectations. Don’t get me wrong, the JBL Live 780NC and 680NC are both a solid set of cans, but in a sea of noise-cancelling headphones, one of them definitely has more appeal. The biggest differences between these two headphones are the over-ear and on-ear cups, and surprisingly, their audio quality. Let’s get into what does and doesn’t make them so special.

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JBL

The JBL Live 780NC are a solid set of headphones that are easily lost in the sea of mid-range cans. It’s enough to be a decent companion, but not enough to excel.

Pros

  • Comfortable
  • Lots of features
  • Wide soundstage
  • Solid ANC
Cons

  • Hollow bass
  • Need the app to disable ANC and Ambient modes
  • Middling mic quality
  • So much more expensive
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JBL

With on-ear noise-canceling headphones being a more rare commodity, the JBL Live 680NC fills in a gap that folks definitely need, but it still isn’t the best that it could be.

Pros

  • Comfortable
  • Lots of features
  • Bassy sound
  • Solid ANC
Cons

  • Narrow soundstage
  • Need the app to disable ANC and Ambient modes
  • Middling mic quality

Design and comfort

Outside of varying colors and cup sizes, the JBL Live 780NC and 680NC look practically identical. They have these hockey puck-looking ear cups that are divided from the leatherette pads. The design looks like someone’s idea of headphones from 10 years ago. It’s not necessarily a bad thing, but it feels a bit clunky. Despite that, the metal hinge and leatherette band are more pleasantly minimalist. The cups also fold up neatly in a heart shape so you can slot them easily in the included bag.

There’s a dedicated volume rocker on the left ear cup while the right holds room for a USB Type-C port, the active noise cancelling (ANC) button and a combo power/Bluetooth switch (yes, it’s a switch, not a button). Meanwhile, you get all of the touch controls available on the right cup of each set of headphones.

Both headphones felt a little uncomfortable to wear at first, but it usually takes time for me to get used to new cans. After spending several hours each with them, they eventually grew on me. They’re both a bit snug, but neither one left me aching at the end of the day. I felt more relief when taking off the 680NC because of the added pressure of on-ear cups, but I’m also not used to the on-ear design.

Seamless customizable features

The ANC button and USB-C port on the Live 680NC

The ANC button and USB-C port on the Live 680NC (Rami Tabari for Engadget)

Despite the near $100 price gap, you get the same set of features for the JBL Live 780NC and 680NC, all wrapped up in the JBL Headphones app. It’s easy to set up and you don’t even need to make an account.

The first thing you might want to do is hop over to the settings and add the “disable ANC” function to the rotation. Out of the box, you can either switch between ANC or Ambient mode on the headphones, which is super frustrating — I shouldn’t need an app to enable a basic action. Most headphones these days allow you to cycle between ANC, Ambient mode and off (neither).

At the very least, the app offers a thorough suite of features. You can adjust the strength of the ANC and Ambient modes. Enabling Adaptive ANC allows automatic noise cancellation changes  based on the surrounding noise level, while Personal Sound Amplification makes everything around you sound louder than normal. The latter was incredibly helpful in writing this very headphone review, ironically, as I had to keep an ear out for my child potentially committing a crime (kidding… mostly).

The JBL Live 780NC and 680NC are packed with the features I’d expect from a pair of premium headphones. They offer 360-degree spatial sound, an adaptive EQ, Auracast, automatic pausing and simultaneous Bluetooth connections with automatic switching.

You can also customize all of the controls, from the ANC Button to the Touch Panel, which includes two call shortcuts and four general shortcuts, one of which is already dedicated to native voice assistants like Bixby and Siri. You do need to put a little more pressure than you might expect in order for the touch controls to activate, though. This is a bit of a learning curve, so it would’ve been nice if it was more sensitive.

Sound quality

The Live 780NC (left) and Live 680NC (right)

The Live 780NC (left) and Live 680NC (right) (Rami Tabari for Engadget)

The JBL Live 780NC and 680NC both feature 40mm neodymium drivers, but they offer completely different soundstages. With the 680NC, I noticed the bass hit a lot harder during the DanDaDan soundtrack, but vocals and string instruments weren’t as crisp or bright as they were with the 780NC. I had a similar experience while schmoozing my way through everyday objects in Date Everything!, where vocals seemed more distant with the 680NC. However, when playing Helldivers 2, 680NC captured the bassy intensity of an explosive-intergalactic space war.

Continuing to run through tracks like JVKE’s “her” and “Radio” by Bershy, I noticed a common theme amongst the headphones. The 680NC’s soundstage was narrow and bassy, while the 780NC was wide and hollow. Both reproduced one half of a great couple, but unfortunately, they’re currently separated and seeking lives of their own. No, but seriously, the audio quality on both of them is still decent individually. I can distinguish each instrument from each other, so they aren’t getting muddied in the mix. But I don’t think the 780NC is worth the extra $90 on sound quality alone, since you’re trading one issue for another.

ANC

The ANC system is slightly different in the JBL Live 780NC and 680NC. The former features six microphones that detect and monitor ambient noise while the latter is outfitted with four microphones.

What difference does that actually make, though? Well… not much, at least not practically. If you stuck them in a lab and crunched the numbers, there might be, but in my testing using the JBL Live 780NC and 680NC as everyday headphones, there’s virtually no difference outside of the passive noise isolation you get from over-ear design.

My dog is quite the yapper, so I happened to test the ANC against her with both headphones, and they managed to block out most of her bark, but not all (she is quite loud). Unless you’re actively listening to something, it won’t kill all the sound around you — when everything was quiet, I still heard my fan running in the background. As a passenger, the car’s road noise and the other cars around me faded mostly into the background, but they were still present (when not actively listening to music).

Ambient modes for both headphones kept me alert while walking outside, and while checking to make sure nothing chaotic was happening in my home. I could clearly hear the ruckus my child and dog were causing in the next room, and I got even more of it when I turned up the Sound Amplification.

As I mentioned above, the most annoying thing about the ANC and Ambient mode systems is that you cannot disable both of them at the same time (out of the box); you need the app in order to make the “off” option available via the ANC button.

Calls and voice quality

The volume rocker on the JBL Live 780NC

The volume rocker on the JBL Live 780NC (Rami Tabari for Engadget)

JBL wasn’t lying about calls: Both the JBL Live 780NC and 680NC were great at cancelling out the noise from my surroundings, whether it was busy traffic or me blasting music on my desk. The microphone picked up little things here and there, but it blocked out most background distractions. The problem, however, is the overall microphone quality.

Microphones on both sets were pretty rough. My voice sounded like it was underwater or in another room entirely. And while the microphones were able to cancel out the noise in the background, I noticed that it made me a little more muddied, like it was also cancelling out some of my voice as well. This is likely due to the signal processing to block background noise. My friend said, “You sound like you’re fighting an ocean.” If you’re looking for a great caller, these ain’t it.

Battery life

With a full battery, I didn’t have to charge the JBL Live 780NC or 680NC for the week I tested them. That’s with a combination of ANC on and off, as well as using them to chat with friends. JBL rates both headphones with the same battery life: 80 hours with ANC off (33 hours of talk time) and 50 hours with ANC on (28 hours of talk time). Those numbers lined up with my testing considering how long they lasted. Charging the headphones from empty does take two hours, though.

The competition

If you want a solid pair of over-ear ANC headphones in this price range, I’d recommend the Sony WH-CH720N. The ANC struggles a bit, but the headphones are much cheaper than the 780NC and offer great sound quality. It’s the best option if you want to save some money.

However, if you’re looking for alternative on-ear ANC headphones, you’ll be hard pressed to find premium competitors to the JBL 680NC. On-ear headphones tend to land in the mid-range or budget class. The JBL 680NC aren’t the best pair of headphones out there, but they’re good for what they are in those categories.

Wrap-up

Both of the new Live models fold for easy storage

Both of the new Live models fold for easy storage (Rami Tabari for Engadget)

To bass or not to bass? That’s one of the few questions you’ll need to ask yourself when choosing between the JBL Live 780NC and 680NC. Of course, on-ear and over-ear designs appeal to different consumers, but the fact is that the former sounds hollow and the latter is more bass-heavy. Both headphones are comfortable and offer great ANC and features.

Overall, however, the JBL Live 780NC falls in the middle of the overcrowded market for noise-cancelling wireless headphones, while the 680NC stands just tall enough to make you want to take a closer look. On a sale, I’d say you could grab either of these cans and be satisfied, but at their full price, I’d be wary. If you twist my arm, I could make an argument for the 680NC because there aren’t enough on-ear noise-cancelling headphones available these days.



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What is Big Data Modeling?

Data modeling is the method of constructing a specification for the storage of data in a database. It is a theoretical representation of data objects and relationships between them. The process of formulating data in a structured format in an information system is known as data modeling. It facilitates data analysis, which will aid in meeting business requirements.

Data modeling necessitates data modelers who will work closely with stakeholders and potential users of an information system. The data modeling method ends in developing a data model that supports the business information system’s infrastructure. This method also entails comprehending an organization’s structure and suggesting a solution that allows the organization to achieve its goals. It connects the technological and functional aspects of a project.

Why is Data Modeling necessary?

To ensure that we can easily access all books in a library, we must classify them and place them on racks. Likewise, if we have a lot of info, we’ll need a system or a process to keep it all organized. “Data modeling” refers to the method of sorting and storing data.”

A data model is a system for organizing and storing data. A data model helps us organise data according to service, access, and usage, just like the Dewey Decimal System helps us organise books in a library. Big data can benefit from appropriate models and storage environments in the following ways:

Performance: Good data models will help us quickly query the data we need and lower I/O throughput.

Cost: Good data models can help big data systems save money by reducing unnecessary data redundancy, reusing computing results, and lowering storage and computing costs.

Efficiency: Good data models can significantly enhance user experience and data utilization performance.

Quality: Good data models ensure that data statistics are accurate and that computing errors are minimized.

As a result, a big data system unquestionably necessitates high-quality data modeling methods for organizing and storing data, enabling us to achieve the best possible balance of performance, cost, reliability, and quality.

Why use a Data Model?

Data Model

  • Data interpretation can be improved by using a visual representation of the data. It gives developers a complete image of the data, which they can use to build a physical database.
  • The model correctly depicts all of an organization’s essential data. Data omission is less likely thanks to the data model. Data omission can result in inaccurate results and reports.
  • The data model depicts a clearer picture of market requirements.
  • It aids in developing a tangible interface that unifies an organization’s data on a single platform. It also aids in the detection of redundant, duplicate, and incomplete data.
  • A competent data model aids in ensuring continuity across all of an organization’s projects.
    It enhances the data’s quality.
  • It aids Project Managers in achieving greater reach and quality control. It also boosts overall performance.
  • Relational tables, stored procedures, and primary and foreign keys are all described in it.

Data Model Perspectives

Conceptual, logical, and physical data models are the three types of data models. Data models are used to describe data, how it is organized in a database, and how data components are related to one another.

Data Model Perspective

Conceptual Model

This stage specifies what must be included in the model’s configuration to describe and coordinate market principles. It focuses primarily on business-related entries, characteristics, and relationships. Data Architects and Business Stakeholders are mainly responsible for its development.

The Conceptual Data Model is used to specify the scope of the method. It’s a tool for organizing, scoping, and visualizing company ideas. The aim of developing a computational data model is to develop new entities, relationships, and attributes. Data architects and stakeholders typically create a computational data model.

The Conceptual Data Model is held by three key holders.

  • Entity: A real-life thing
  • Attribute: Properties of an entity
  • Relationship: Association between two entities

Let’s take a look at an illustration of this data model.

Consider the following two entities: product and customer. The Product entity’s attributes are the name and price of the product, while the Customer entity’s attributes are the name and number of customers. Sales is the connection between these two entities.

  • The Conceptual Data Model was created with a corporate audience in mind.
  • It offers an overview of corporate principles for the whole organization.
  • It is created separately, with hardware requirements such as location and data storage space and software requirements such as technology and DBMS vendor.

Conceptual Models

Logical Model

The conceptual model lays out how the model can be put into use. It encompasses all types of data that must be captured, such as tables, columns, and so on. Business Analysts and Data Architects are the most prominent designers of this model.

The Logical Data Model is used to describe the arrangement of data structures as well as their relationships. It lays the groundwork for constructing a physical model. This model aids in the inclusion of extra data to the conceptual data model components. There is no primary or secondary key specified in this model. This model helps users to update and check the connector information for relationships that have been set previously.

The logical data model describes the data requirements for a single project, but it may be combined with other logical data models depending on the project’s scope. Data attributes come with a variety of data types, many of which have exact lengths and precisions.

  • The logical data model is created and configured separately from the database management system.
  • Data Types with accurate dimensions and precisions exist for data attributes.
  • It specifies the data needed for a project but, depending on the project’s complexity, interacts with other logical data models.

Logical Model

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Physical Model

The physical model explains how to use a database management system to execute a data model. It lays out the process in terms of tables, CRUD operations, indexes, partitioning, etc. Database Administrators and Developers build it. 

The Physical Data Model specifies how a data model is implemented in a database. It attracts databases and aids in developing schemas by duplicating database constraints, triggers, column keys, other RDBMS functions, and indexes. This data model aids in visualizing the database layout. Views, access

profiles, authorizations, primary and foreign keys, and so on are all specified in this model.

The majority and minority relationships are defined in the Data Model by the relationship between tables. It is created for a specific version of a database management system, data storage, and project site.

  • The Physical Data Model was created for a database management system (DBMS), data storage, and a project site.
  • It contains table relationships that address the nullability and cardinality of the relationships.
  • Views, access profiles, authorizations, primary and foreign keys, and so on are all specified here.

Physical Model

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Types of Data Models

While there are several different data modeling approaches, the basic principle remains the same with all models. Let’s take a look at some of the most commonly used data models:

Hierarchical Model

This is a database modeling technique that uses a tree-like structure to organise data. Each record in this table has a single root or parent. When it comes to sibling documents, they’re organized in a specific way. This is the physical order in which the information is stored. This method of modeling can be applied to a wide range of real-world model relationships. This database model was popular in the 1960s and 1970s. However, owing to inefficiencies, they are still used infrequently.

The hierarchical model is used to assemble data into a tree-like structure with a single root that connects all of the data. A single root like this evolves like a branch, connecting nodes to the parent nodes, with each child node having just one parent node. The data is structured in a relational system with a one-to-many relationship between two different data types in this model. For example, in a college, a department consists of a set of courses, professors, and students.

Hierarchical Models

Relational Model

In 1970, an IBM researcher suggested this as a possible solution to the hierarchical paradigm. The data path does not need to be defined by developers. Tables are used to merge data segments in this case directly. The program’s complexity has been minimized due to this model. It necessitates a thorough understanding of the organization’s physical data management strategy. This model was quickly merged with Structured Query Language after its introduction (SQL).

A typical field maintains the Relational Model aids in the organization of two-dimensional tables and the interaction. Tables are the data structure of a relational data model. The table’s rows contain all of the information for a given category. In the Relational Model, these tables are referred to as relations.

Relational Models

Network Model

The Network Model is an enhancement of the Hierarchical Model, allowing for various relationships with related records, implying multiple parent records. It will enable users to build models using sets of similar documents following mathematical set theory. A parent record and the number of child records are included in this set. Each record is a member of several sets, allowing the model to define complex relationships. The model can express complex relationships since each record can belong to several sets.

Network Models

Object-oriented Database Model

A set of objects are aligned with methods and functions in the Object-oriented Database. There are characteristics and methods associated with these objects. Multimedia databases, hypertext databases, and other types of object-oriented databases are available. Even if it incorporates tables, this type of database model is known as a post-relational database model since it is not limited to tables. These database models are referred to as hybrid models.

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Entity–Relationship Model

The Entity-Relationship Model (ERM) is a diagram that depicts entities and their relationships. The E-R model generates an entity set, attributes, relationship set, and constraints when constructing a real-world scenario database model. The E-R diagram is a graphical representation of this kind.

An entity may be an object, a concept, or a piece of data stored in relation to the data. It has properties called attributes, and a set of values called domain defines each attribute. A relationship is a logical connection between two or more entities. These connections are mapped to entities in several ways.

Consider a College Database, where a Student is an entity, and the Attributes are Student details such as Name, ID, Age, Address, and so on. As a result, there will be a relation between them.

Entity–Relationship Model

Object-relational Model

The object-relational model can be thought of as a relational model with enhanced object-oriented database model features. This kind of database model enables programmers to integrate functions into a familiar table structure.

An Object-relational Data Model combines the advantages of both an Object-oriented and a Relational database model. It supports classes, objects, inheritance, and other features similar to the Object-oriented paradigm and data types, tabular structures, and other features similar to the Relational database model. Designers may use this model to integrate functions into table structures.

Facts and Dimensions

To understand data modelling, one must first grasp its facts and dimensions.

Fact Table: It’s a table that lists all of the measurements and their granularity. Sales, for example, maybe additive or semi-additive.

Dimension Table: It’s a table containing fields with definitions of market elements and is referenced by several fact tables.

Dimensional Modeling: Dimensional modeling is a data warehouse design methodology. It makes use of validated measurements and facts and aids in navigation. The use of dimensional modeling in performance queries speeds up the process. Star schemas are a colloquial term for dimensional models.

Dimensional Modeling-Related Keys

While learning data modeling, it’s critical to understand the keys. There are five different types of dimensional modelling keys.

  • Business or Natural Keys: It is a field that uniquely defines an individual. Customer ID, employee number, and so on.
  • Primary and Alternate Keys: A primary key is an area that contains a single unique record. The consumer must choose one of the available primary keys, with the others being alternative keys.
  • Composite or Compound Keys: A composite key is one in which more than one field is used to represent a key.
  • Surrogate Keys: It is usually an auto-generated field with no business meaning.
  • Foreign Keys: It is a key that refers to another key in some other table.

The process of data modeling entails the development and design of various data models. A data definition language is then used to convert these data models. A database is created using a data definition language. This database will be referred to as a wholly attributed data model at that stage.

Benefits and Drawbacks of Data Models

Benefits:

  • With data modeling, the functional team’s data objects are appropriately presented.
  • Data modeling enables you to query data from a database and generate various reports from it. With the aid of reports, it indirectly contributes to data analysis. These reports can be used to improve the project’s quality and efficiency.
  • Businesses have a large amount of data in various formats. For such unstructured data, data modeling offers a structured framework.
  • Data modeling enhances business intelligence by requiring data modelers to work closely with the project’s realities, such as data collection from various unstructured sources, reporting specifications, spending patterns, and so on.
  • It improves coordination within the business.
  • The documentation of data mapping is aided during the ETL method.

Drawbacks:

  • The development of a data model is a time-consuming process. Should understand the physical characteristics of data storage.
  • This method necessitates complex application creation as well as biographical truth information.
  • The model isn’t particularly user-friendly. Small improvements in the method require a significant rewrite of the entire application.

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Conclusion

Data models are created to store data in a database. The primary goal of these data models is to ensure that the data objects generated by the functional team are correctly denoted. As previously stated, even the little improvement in the system necessitates improvements to the entire model. Despite the problems, the data modelling concept is the first and most important step of database design since it describes data entities, relationships between data objects, and so on. A data model discusses the data’s market rules, government regulations, and regulatory enforcement in a holistic manner.

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