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Model Detail

RekaAI logo

reka-edge-2603

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Provider: RekaAICategory: codePipeline: image-text-to-text
DB Score
1.3
Downloads
1K
Likes
128
Day
+0.0%
Week
+0.0%
Month
+0.0%
Overview

reka-edge-2603 is a code generation model with 3.6B parameters released by RekaAI. The model is registered under the image-text-to-text pipeline tag on Hugging Face, and supports text+image+video->text inputs, distributed under a other license.

Pricing & Throughput

reka-edge-2603 is priced at $0.1/M input tokens and $0.1/M output tokens. Operationally the model offers a 16K-token context window, which matters when sizing it for prompt-heavy or latency-sensitive workloads. At this input rate the model sits in the commodity tier and is suitable for high-volume workloads where per-call cost dominates the decision.

Technical

reka-edge-2603 ships with 3.6B parameters. Total weight footprint is approximately 7.1 GB, which is the relevant figure when planning local-inference VRAM. Distribution is governed by the other license — review the exact terms before commercial deployment.

Use Cases

reka-edge-2603 is best fit for code completion, repository-scale Q&A, and pair-programming integrations, and high-volume batch jobs where per-call cost dominates the budget. It is a less obvious choice for one-shot generation of security-critical code without review. Treat this as a starting matrix rather than a benchmark verdict — the right deployment usually depends on the specific evaluation suite that mirrors your workload.

Download History
Pricing
Input ($/M tokens)
$0.1
Output ($/M tokens)
$0.1
Context Window
16K
Model Info
Licenseother
Modalitytext+image+video->text
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