Genie 1022, 1024 manual Securely fasten wires, Do not install rear cover yet, Mounting

Page 15
Insulated
Staple

3.Securely fasten wires.

Securely fasten wires to ceiling and wall using insulated staples provided.

– Use insulated staples.

– Staples should be snug only.

• If rear cover is attached to power head, remove it.

• On power head:

– Route wall control wires through wire guide.

– Split and strip ends of wire (Fig. 3-2 on previous page).

– Insert wire into terminal holes and lightly press in the orange locking clips above each terminal hole. (You can use a pencil or small screwdriver to comfortably press in locking clips.) The white wire into #2 terminal hole and striped wire into the #1 terminal hole.

– Confirm wire lock by lightly tugging on the wire. The wire should remain in the terminal hole.

Do NOT install rear cover yet.

Locking

 

 

 

 

 

 

 

 

 

Clips

 

 

 

Terminal

 

 

 

 

 

 

 

 

 

 

Holes

 

 

 

 

 

6

5

4

3

2

1

 

 

 

 

 

 

 

 

 

 

6

5

4

3

2

1

 

 

 

 

 

 

 

 

 

+ –

 

 

 

 

 

 

 

 

 

P

B

 

 

 

 

 

InfaredSensor

 

 

 

(Power Head With Rear Cover Removed) FIG. 3-3 Insert wires.

4.Mounting.

• Fasten wall control to wall with 2 screws

(provided) (Fig. 3-4).

• Remove protective backing from "Entrapment" warning label (Fig. 3-5). The "Entrapment" label is located in the center of this manual.

– Stick label on wall near wall control.

FIG. 3-4 Mounting wall control.

FIG. 3-5 Mounting Entrapment warning label.

PN# 3642036212, 8/09/2007

15

 

Image 15
Contents Model 1022/1024 High Spring Tension Safety InformationMoving Door Electrical ShockTable of Contents Operator FeaturesSafety Features Do not USE Alternate Power Supplies Do not USE AN Extension CordSection Typical Sectional Door Installation ApproxMAX MIN Parts Identification Not Shown Full Size Recommended ToolsDo not Return to Point of Purchase Chain tensioner Piece Rail Hardware Assembled ViewBox Label Example Internal boxes Operator AssemblySplit Rail sections Split Rail assemblyExtend Installation Header and Door Mounting BracketsFinding header bracket mounting location Do not move door spring Mounting the header bracketUnfinished or Open Beam Mounting the assemblyMounting the Operator Angle Iron on Finished CeilingDoor Bracket Install Door ArmsWall Control location Wall Control Installation2a. Wiring If pre-wired 2b. Wiring If not pre-wiredMounting Securely fasten wiresDo not install rear cover yet Power Head With Rear Cover Removed -3 Insert wiresMounting Safety Beam Source Red LED and Sensor Green LED 3a. Wiring If not pre-wiredAs you go -6 on next Power Head With Rear Cover Not Shown Cover clips 3b. Wiring pre-wiredRoute wire from ceiling to power head Do not install the white lamp cover at this timeWith Grounded Plug Connecting to PowerWith Permanent Wiring With Power SuppliedClose Travel Limit Limit Controls location on power headDoor Limits Engage Chain to CarriageContact Reverse Test Carriage LockUP/DOWN Force Erase OPEN/CLOSE Travel LimitLost or Stolen Remote Programming Remote ControlsLight bulb Light BULB/LENS InstallationBattery replacement Visor clipDoor balance MaintenanceRoutine Monthly Maintenance Safety Beam SystemCircuit Wiring Diagram Power CordTroubleshooting Guide Operation Possible Problem Solution Troubleshooting Guide Power Head LEDTransmitter Compliance Statement For Answers Call Limited Warranty
Related manuals
Manual 1 pages 40.03 Kb

1022, 1024 specifications

Genie 1024 is a cutting-edge generative AI model that has gained attention for its remarkable capabilities in producing coherent and contextually relevant text. As a significant advancement in natural language processing (NLP), Genie 1024 represents a leap forward in AI technology, allowing for more nuanced understanding and generation of human-like text.

One of the main features of Genie 1024 is its impressive size, denoted by its name. The model boasts 1024 parameters, enabling it to grasp a broad range of linguistic patterns and contextual relationships. This extensive parameter count allows Genie 1024 to generate text that is not only coherent but also stylistically varied, making it suitable for diverse applications, from creative writing to technical documentation.

The architecture of Genie 1024 is based on transformer technology, which has become the de facto standard in NLP due to its ability to handle large datasets and complex relationships in language. This model utilizes self-attention mechanisms, allowing it to weigh the importance of different words in a sentence relative to one another. This capability enhances the model's comprehension and allows it to produce context-aware responses.

Another standout characteristic of Genie 1024 is its training regimen, which incorporates extensive datasets from various domains, including literature, science, and social media. This diverse training corpus equips the model with a rich understanding of language nuances, idioms, and cultural references, thus enabling it to generate responses that resonate with users from different backgrounds.

In terms of usability, Genie 1024 is designed with user-friendliness in mind. Developers and businesses can easily integrate the model into their applications through user-friendly APIs or dedicated platforms. This accessibility paves the way for innovative applications across industry sectors, enhancing customer engagement and automating content creation processes.

Moreover, Genie 1024 places a significant emphasis on ethical and responsible AI use. The team behind the model has implemented guidelines for bias mitigation, promoting fairness and inclusivity in its responses. Users can benefit from comprehensive usage guidelines and support resources that encourage effective deployment while navigating potential challenges.

In summary, Genie 1024 stands out as a remarkable generative AI model that combines advanced transformer architecture, extensive parameters, and diverse training data. With a focus on both functionality and ethical considerations, it opens up new horizons for applications in natural language processing, benefiting both developers and end-users alike.